Doctor of Philosophy in Data Science
Developing future pioneers in data science
The School of Data Science at the University of Virginia is committed to educating the next generation of data science leaders. The Ph.D. in Data Science is designed to impart the skills and knowledge necessary to enable research and discovery in data science methods. Because the end goal is to extract knowledge and enable discovery from complex data, the program also boasts robust applied training that is geared toward interdisciplinary collaboration. Doctoral candidates will master the computational and mathematical foundations of data science, and develop competencies in data engineering, software development, data policy and ethics.
Doctoral students in our program apprentice with faculty and pursue advanced research in an interdisciplinary, collaborative environment that is often focused on scientific discovery via data science methods. By serving as teaching assistants for the School’s undergraduate and graduate programs, they learn to be adroit educators and hone their critical thinking and communication skills.
Learning Outcomes
Pursuing a Ph.D. in Data Science will prepare you to become an expert in the field and work at the cutting edge of a new discipline. According to LinkedIn’s most recent Emerging Jobs Report, data science is booming and data scientist is one of the top three fastest growing jobs. A Ph.D. in Data Science from the University of Virginia opens career paths in academia, industry or government. Graduates of our program will:
- Understand data as a generic concept, and how data encodes and captures information
- Be fluent in modern data engineering techniques, and work with complex and large data sets
- Recognize ethical and legal issues relevant to data analytics and their impact on society
- Develop innovative computational algorithms and novel statistical methods that transform data into knowledge
- Collaborate with research teams from a wide array of scientific fields
- Effectively communicate methods and results to a variety of audiences and stakeholders
- Recognize the broad applicability of data science methods and models
Graduates of the Ph.D. in Data Science will have contributed novel methodological research to the field of data science, demonstrated their work has impactful interdisciplinary applications and defended their methods in an open forum.
A Week in the Life: First-Year Ph.D. Student
Ph.D. Student Profile: Jade Preston
Ph.D. Student Profile: Beau LeBlond
Ph.D. Student Profile: Zoë Gray
Ph.D. Student Profile: Gia Smith
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Top 10 Universities in USA Offering Ph.D In Data Science
In 2011, McKinsey Global Institute called Big Data as the Next Frontier. From then to now, data science has evolved to form an integral part of digital transformation and technological innovation for the next futuristic world. This implies that not only is the demand for data scientists is growing everyday but also they receive lucrative salaries due to high market demand. Every industry from the fields of business, finance, government, healthcare, social networking, and technology, are looking for minds with a data science degree and complementary skills. Further, earning a Post-Doctoral degree in this field is beneficial because it can give students the research skills needed to make an impact in their field of choice. Depending on the university attended, a student might have to take classes such as machine learning and computational statistics, big data, probability and statistics for data science, and inference and representation along with major in data science.
Below is a list of top 10 of universities in the USA that have some excellent data science programs and courses .
Brown University – Providence, Rhode Island
Course: PhD in Computer Science – Concentration in Data Science
Brown University's database group is a world leader in systems-oriented database research; they seek PhD candidates with strong system-building skills who are interested in researching TupleWare, MLbase, MDCC, Crowd DB, or PIQL. To gain entrance, applicants should consider first doing a research internship at Brown with this group. Other ways to boost an application are to take and do well at massive open online courses, do an internship at a large company, and get involved in a large open-source software project. Coding well in C++ is preferred. All students must also train as teaching assistants for at least one semester.
2019-2020 Tuition: $66,702 per year
Length: 6 Credit Hours
Indiana University-Purdue University Indianapolis – Indianapolis, Indiana
Course: PhD in Data Science PhD Minor in Applied Data Science
Doctoral candidates pursuing the PhD in data science at Indiana University-Purdue must display competency in research, data analytics, and at management and infrastructure to earn the degree. The PhD is comprised of 24 credits of a data science core, 18 credits of methods courses, 18 credits of a specialization, written and oral qualifying exams, and 30 credits of dissertation research. All requirements must be completed within seven years. Applicants are generally expected to have a master's in social science, health, data science, or computer science. Currently, a majority of the PhD students at IUPUI are funded by faculty grants and two are funded by the federal government. All students receive scholarships. IUPUI also offers a PhD Minor in Applied Data Science that is 12-18 credits. The minor is open to students enrolled at IUPUI or IU Bloomington in a doctoral program other than Data Science.
2019-2020 Tuition: $368 per credit (Indiana Resident), $1,006 per credit (Non-resident)
Length: 60 credits
New York University – New York, New York
Course: PhD in Data Science
Doctoral candidates in data science at New York University must complete 72 credit hours, pass a comprehensive and qualifying exam, and defend a dissertation with ten years of entering the program. Required courses include an introduction to data science, probability and statistics for data science, machine learning and computational statistics, big data, and inference and representation.
2019-2020 Tuition: $1,856 per unit
Length: 72 Credits
Yale University – New Haven, Connecticut
Course: PhD Program – Department of Stats and Data Science
The PhD in statistics and data science at Yale University offers broad training in the areas of statistical theory, probability theory, stochastic processes, asymptotics, information theory, machine learning, data analysis, statistical computing, and graphical methods. Students need to complete 12 courses in the first year on these topics. Students are required to teach one course each semester of their third and fourth years. Most students complete and defend their dissertations in their fifth year.
2019-2020 Tuition: $43,300 per year
The University Of Maryland, College Park, Maryland
Course: PhD in Information Studies – Concentration in Big Data/Data Science
PhD students can take part in research in a variety of areas, including big data, data science, and informatics. The program is designed for students who want a research-oriented career, and faculty members mentor students in a variety of disciplines. The program does not list any specific prerequisites for the doctoral program, and the interdisciplinary program accepts students with varied academic backgrounds. Students can go for either Full-time or part-time program.
2019-2020 Tuition: $731 per credit (Maryland Resident), $1,625 per credit (Non-resident)
Length: 27 Credit Hours
Kennesaw State University – Kennesaw, Georgia
Course: PhD in Analytics and Data Science
Students pursuing a PhD in analytics and data science at Kennesaw State University must complete 78 credit hours: 48-course hours and six electives (spread over four years of study), a minimum 12 credit hours for dissertation research, and a minimum 12 credit-hour internship. Before dissertation research, a comprehensive examination will cover material from the three areas of study: computer science, mathematics, and statistics. Successful applicants will have a master's degree in a computational field, calculus I and II, programming experience, modeling experience, and are encouraged to have a base SAS certification.
2019-2020 Tuition: $1,066 per credit
Length: 4 years
University of Massachusetts Boston – Boston, Massachusetts
Course: PhD in Business Administration – Information Systems for Data Science Track
The University of Massachusetts – Boston offers a PhD in information systems for data science. As this is a business degree, students must complete coursework in their first two years with a focus on data for business; for example, taking courses such as business in context: markets, technologies, and societies. Students must take and pass qualifying exams at the end of year 1, comprehensive exams at the end of year 2, and defend their theses at the end of year 4. Those with a degree in statistics, economics, math, computer science, management sciences, information systems, and other related fields are especially encouraged, though a quantitative degree is not necessary. Students accepted by the program are ordinarily offered full tuition credits and a stipend ($25,000 per year) to cover educational expenses and help defray living costs for up to three years of study. During the first two years of coursework, they are assigned to a faculty member as a research assistant; for the third year, students will be engaged in instructional activities. Funding for the fourth year is merit-based from a limited pool of program funds.
2019-2020 Tuition: $768 per credit (Massachusetts Resident), $1,499 per credit (Non-resident)
California Institute of Technology, Pasadena, California
Course: PhD in Computing and Mathematical Science focusing on Data Sciences
Caltech has a PhD in Computing and Mathematical Sciences that is multidisciplinary and brings together faculty and students from fields including computer science, electrical engineering, applied math, operations research, economics, and the physical sciences. In their first year, all students take courses in math and computing fundamentals, and each student must take three courses in a focus area and meet breadth requirements. All candidates must complete a dissertation.
Tuition: $54,537 per year
Length: 3 Years
University At Buffalo, Buffalo, New York
Course: PhD in Computational and Data-Enabled Science and Engineering
The curriculum for the University of Buffalo's PhD in computational and data-enabled science and engineering centers around three areas: data science, applied mathematics and numerical methods, and high performance and data-intensive computing. Nine credit course of courses must be completed in each of these three areas. Altogether, the program consists of 72 credit hours and should be completed in 4-5 years. A master's degree is required for admission; courses taken during the master's may be able to count toward some of the core coursework requirements.
Tuition: $5,655 per semester (New York Resident), $11,550 per semester (Non-resident)
Length: 72 Credits
Clemson University / Medical University of South Carolina (MUSC) – Joint Program– Clemson, South Carolina & Charleston, South Carolina
Course: Doctor of Philosophy in Biomedical Data Science and Informatics – Clemson
Students can choose one of three tracks to pursue: precision medicine, population health, and clinical and translational informatics. Students can take courses in each of 5 areas: biomedical informatics foundations and applications; computing/math/statistics/engineering; population health, health systems, and policy; biomedical/medical domain; and lab rotations, seminars, and doctoral research. Applicants must have a bachelor's in health science, computing, mathematics, statistics, engineering, or a related field, and it is recommended to also have competency in a second of these areas. Program requirements include a year of calculus and college biology, as well as experience in computer programming.
2019-2020 Tuition: $668 per credit (South Carolina Resident), $995 per credit (Non-resident)
Length: 65-68 credit hours
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PhD in Data Science
The PhD in Data Science is designed to be completed fully in-person at UChicago’s Hyde Park campus. There are no online options at this time. Newly admitted students are guaranteed full-funding for up to 5 years and provided with an annual stipend, contingent on satisfactory progress towards the degree.
First-Year Requirements
The standard first-year program requires students to complete nine courses: four required courses (1-4 below); one elective either in mathematical foundations or scalability and computing (pick from either 5 or 6); and four graduate electives that can come from proposed courses in data science as well as existing courses in Computer Science or Statistics. Some students, after consulting with the graduate committee advisor, might decide to take the nine courses over the first two years:
Required Courses:
- Foundations of Machine Learning and AI Part 1
- Responsible Use of Data and Algorithms
- Data Interaction
- Systems for Data and Computers/Data Design
- Foundations of Machine Learning and AI Part 2
- Data Engineering and Scalable Computing
Synthesis project
Students will take courses during the first two years after which they focus primarily on their research. A milestone in this transition is completion of a synthesis project before the end of the second year in the program. Thesis projects can be done in partnership with any of DSI affiliates and aims to meaningfully connect PhD students to their chosen focus areas.
Thesis Advisor and Dissertation Committee
Students typically select a thesis advisor by the beginning of their second year. By the end of the third year, each PhD student, after consultation with their advisor, shall establish a thesis committee of at least three faculty members, including the advisor, with at least half of the members coming from the Committee on Data Science (CODAS) .
Proposal Presentation and Admission to Candidacy
By the end of the third year, students should have scheduled and completed a proposal presentation to their committee in order to be advanced to candidacy. The proposal presentation is typically an hour-long meeting that begins with a 30-minute presentation by the student followed by a question and discussion period with the committee.
Dissertation Defense
The PhD degree will be awarded to candidates following a successful defense and the electronic submission of the final version of the dissertation to the University’s Dissertation Office.
Ph.D. Specialization in Data Science
The ph.d. specialization in data science is an option within the applied mathematics, computer science, electrical engineering, industrial engineering and operations research, and statistics departments..
Only students already enrolled in one of these doctoral programs at Columbia are eligible to participate in this specialization. Students should fulfill the requirements below in addition to those of their respective department's Ph.D. program. Students should discuss this specialization option with their Ph.D. advisor and their department's director for graduate studies.
Applied Mathematics Doctoral Program
Computer Science Doctoral Program
Decision, Risk, and Operations (DRO) Program
Electrical Engineering Doctoral Program
Industrial Engineering and Operations Research Doctoral Program
Statistics Doctoral Program
The specialization consists of either five (5) courses from the lists below, or four (4) courses plus one (1) additional course approved by the curriculum committee. All courses must be taken for a letter grade and students must pass with a B+ or above. At least three (3) of the courses should come from outside the student’s home department. At least one (1) course has to come from each of the three (3) thematic areas listed below.
Specialization Requirements
- COMS 4231 Analysis of Algorithms I
- COMS 6232 Analysis of Algorithms II
- COMS 4111 Introduction to Databases
- COMS 4113 Distributed Systems Fundamentals
- EECS 6720 Bayesian Models for Machine Learning
- COMS 4771 Machine Learning
- COMS 4772 Advanced Machine Learning
- IEOR E6613 Optimization I
- IEOR E6614 Optimization II
- IEOR E6711 Stochastic Modeling I
- EEOR E6616 Convex Optimization
- STAT 6301 Probability Theory I
- STAT 6201 Theoretical Statistics I
- STAT 6101 Applied Statistics I
- STAT 6104 Computational Statistics
- STAT 5224 Bayesian Statistics
- STCS 6701 Foundations of Graphical Models (joint with Computer Science)
Information Request Form
Ph.d. specialization committee.
- View All People
- Faculty of Arts and Sciences Professor of Statistics
- The Fu Foundation School of Engineering and Applied Science Professor of Computer Science
Richard A. Davis
- Faculty of Arts and Sciences Howard Levene Professor of Statistics
Vineet Goyal
- The Fu Foundation School of Engineering and Applied Science Associate Professor of Industrial Engineering and Operations Research
Garud N. Iyengar
- Data Science Institute Avanessians Director of the Data Science Institute
- The Fu Foundation School of Engineering and Applied Science Professor of Industrial Engineering and Operations Research
Gail Kaiser
Rocco a. servedio, clifford stein.
- The Fu Foundation School of Engineering and Applied Science Wai T. Chang Professor of Industrial Engineering and Operations Research and Professor of Computer Science
John Wright
- The Fu Foundation School of Engineering and Applied Science Associate Professor of Electrical Engineering
- Data Science Institute Associate Director for Research
DiscoverDataScience.org
PhD in Data Science – Your Guide to Choosing a Doctorate Degree Program
Created by aasif.faizal
Professional opportunities in data science are growing incredibly fast. That’s great news for students looking to pursue a career as a data scientist. But it also means that there are a lot more options out there to investigate and understand before developing the best educational path for you.
A PhD is the most advanced data science degree you can get, reflecting a depth of knowledge and technical expertise that will put you at the top of your field.
This means that PhD programs are the most time-intensive degree option out there, typically requiring that students complete dissertations involving rigorous research. This means that PhDs are not for everyone. Indeed, many who work in the world of big data hold master’s degrees rather than PhDs, which tend to involve the same coursework as PhD programs without a dissertation component. However, for the right candidate, a PhD program is the perfect choice to become a true expert on your area of focus.
If you’ve concluded that a data science PhD is the right path for you, this guide is intended to help you choose the best program to suit your needs. It will walk through some of the key considerations while picking graduate data science programs and some of the nuts and bolts (like course load and tuition costs) that are part of the data science PhD decision-making process.
Data Science PhD vs. Masters: Choosing the right option for you
If you’re considering pursuing a data science PhD, it’s worth knowing that such an advanced degree isn’t strictly necessary in order to get good work opportunities. Many who work in the field of big data only hold master’s degrees, which is the level of education expected to be a competitive candidate for data science positions.
So why pursue a data science PhD?
Simply put, a PhD in data science will leave you qualified to enter the big data industry at a high level from the outset.
You’ll be eligible for advanced positions within companies, holding greater responsibilities, keeping more direct communication with leadership, and having more influence on important data-driven decisions. You’re also likely to receive greater compensation to match your rank.
However, PhDs are not for everyone. Dissertations require a great deal of time and an interest in intensive research. If you are eager to jumpstart a career quickly, a master’s program will give you the preparation you need to hit the ground running. PhDs are appropriate for those who want to commit their time and effort to schooling as a long-term investment in their professional trajectory.
For more information on the difference between data science PhD’s and master’s programs, take a look at our guide here.
Topics include:
- Can I get an Online Ph.D in Data Science?
- Overview of Ph.d Coursework
Preparing for a Doctorate Program
Building a solid track record of professional experience, things to consider when choosing a school.
- What Does it Cost to Get a Ph.D in Data Science?
- School Listings
Data Science PhD Programs, Historically
Historically, data science PhD programs were one of the main avenues to get a good data-related position in academia or industry. But, PhD programs are heavily research oriented and require a somewhat long term investment of time, money, and energy to obtain. The issue that some data science PhD holders are reporting, especially in industry settings, is that that the state of the art is moving so quickly, and that the data science industry is evolving so rapidly, that an abundance of research oriented expertise is not always what’s heavily sought after.
Instead, many companies are looking for candidates who are up to date with the latest data science techniques and technologies, and are willing to pivot to match emerging trends and practices.
One recent development that is making the data science graduate school decisions more complex is the introduction of specialty master’s degrees, that focus on rigorous but compact, professional training. Both students and companies are realizing the value of an intensive, more industry-focused degree that can provide sufficient enough training to manage complex projects and that are more client oriented, opposed to research oriented.
However, not all prospective data science PhD students are looking for jobs in industry. There are some pretty amazing research opportunities opening up across a variety of academic fields that are making use of new data collection and analysis tools. Experts that understand how to leverage data systems including statistics and computer science to analyze trends and build models will be in high demand.
Can You Get a PhD in Data Science Online?
While it is not common to get a data science Ph.D. online, there are currently two options for those looking to take advantage of the flexibility of an online program.
Indiana University Bloomington and Northcentral University both offer online Ph.D. programs with either a minor or specialization in data science.
Given the trend for schools to continue increasing online offerings, expect to see additional schools adding this option in the near future.
Overview of PhD Coursework
A PhD requires a lot of academic work, which generally requires between four and five years (sometimes longer) to complete.
Here are some of the high level factors to consider and evaluate when comparing data science graduate programs.
How many credits are required for a PhD in data science?
On average, it takes 71 credits to graduate with a PhD in data science — far longer (almost double) than traditional master’s degree programs. In addition to coursework, most PhD students also have research and teaching responsibilities that can be simultaneously demanding and really great career preparation.
What’s the core curriculum like?
In a data science doctoral program, you’ll be expected to learn many skills and also how to apply them across domains and disciplines. Core curriculums will vary from program to program, but almost all will have a core foundation of statistics.
All PhD candidates will have to take a qualifying exam. This can vary from university to university, but to give you some insight, it is broken up into three phases at Yale. They have a practical exam, a theory exam and an oral exam. The goal is to make sure doctoral students are developing the appropriate level of expertise.
Dissertation
One of the final steps of a PhD program involves presenting original research findings in a formal document called a dissertation. These will provide background and context, as well as findings and analysis, and can contribute to the understanding and evolution of data science. A dissertation idea most often provides the framework for how a PhD candidate’s graduate school experience will unfold, so it’s important to be thoughtful and deliberate while considering research opportunities.
Since data science is such a rapidly evolving field and because choosing the right PhD program is such an important factor in developing a successful career path, there are some steps that prospective doctoral students can take in advance to find the best-fitting opportunity.
Join professional associations
Even before being fully credentials, joining professional associations and organizations such as the Data Science Association and the American Association of Big Data Professionals is a good way to get exposure to the field. Many professional societies are welcoming to new members and even encourage student participation with things like discounted membership fees and awards and contest categories for student researchers. One of the biggest advantages to joining is that these professional associations bring together other data scientists for conference events, research-sharing opportunities, networking and continuing education opportunities.
Leverage your social network
Be on the lookout to make professional connections with professors, peers, and members of industry. There are a number of LinkedIn groups dedicated to data science. A well-maintained professional network is always useful to have when looking for advice or letters of recommendation while applying to graduate school and then later while applying for jobs and other career-related opportunities.
Kaggle competitions
Kaggle competitions provide the opportunity to solve real-world data science problems and win prizes. A list of data science problems can be found at Kaggle.com . Winning one of these competitions is a good way to demonstrate professional interest and experience.
Internships
Internships are a great way to get real-world experience in data science while also getting to work for top names in the world of business. For example, IBM offers a data science internship which would also help to stand out when applying for PhD programs, as well as in seeking employment in the future.
Demonstrating professional experience is not only important when looking for jobs, but it can also help while applying for graduate school. There are a number of ways for prospective students to gain exposure to the field and explore different facets of data science careers.
Get certified
There are a number of data-related certificate programs that are open to people with a variety of academic and professional experience. DeZyre has an excellent guide to different certifications, some of which might help provide good background for graduate school applications.
Conferences
Conferences are a great place to meet people presenting new and exciting research in the data science field and bounce ideas off of newfound connections. Like professional societies and organizations, discounted student rates are available to encourage student participation. In addition, some conferences will waive fees if you are presenting a poster or research at the conference, which is an extra incentive to present.
It can be hard to quantify what makes a good-fit when it comes to data science graduate school programs. There are easy to evaluate factors, such as cost and location, and then there are harder to evaluate criteria such as networking opportunities, accessibility to professors, and the up-to-dateness of the program’s curriculum.
Nevertheless, there are some key relevant considerations when applying to almost any data science graduate program.
What most schools will require when applying:
- All undergraduate and graduate transcripts
- A statement of intent for the program (reason for applying and future plans)
- Letters of reference
- Application fee
- Online application
- A curriculum vitae (outlining all of your academic and professional accomplishments)
What Does it Cost to Get a PhD in Data Science?
The great news is that many PhD data science programs are supported by fellowships and stipends. Some are completely funded, meaning the school will pay tuition and basic living expenses. Here are several examples of fully funded programs:
- University of Southern California
- University of Nevada, Reno
- Kennesaw State University
- Worcester Polytechnic Institute
- University of Maryland
For all other programs, the average range of tuition, depending on the school can range anywhere from $1,300 per credit hour to $2,000 amount per credit hour. Remember, typical PhD programs in data science are between 60 and 75 credit hours, meaning you could spend up to $150,000 over several years.
That’s why the financial aspects are so important to evaluate when assessing PhD programs, because some schools offer full stipends so that you are able to attend without having to find supplemental scholarships or tuition assistance.
Can I become a professor of data science with a PhD.? Yes! If you are interested in teaching at the college or graduate level, a PhD is the degree needed to establish the full expertise expected to be a professor. Some data scientists who hold PhDs start by entering the field of big data and pivot over to teaching after gaining a significant amount of work experience. If you’re driven to teach others or to pursue advanced research in data science, a PhD is the right degree for you.
Do I need a master’s in order to pursue a PhD.? No. Many who pursue PhDs in Data Science do not already hold advanced degrees, and many PhD programs include all the coursework of a master’s program in the first two years of school. For many students, this is the most time-effective option, allowing you to complete your education in a single pass rather than interrupting your studies after your master’s program.
Can I choose to pursue a PhD after already receiving my master’s? Yes. A master’s program can be an opportunity to get the lay of the land and determine the specific career path you’d like to forge in the world of big data. Some schools may allow you to simply extend your academic timeline after receiving your master’s degree, and it is also possible to return to school to receive a PhD if you have been working in the field for some time.
If a PhD. isn’t necessary, is it a waste of time? While not all students are candidates for PhDs, for the right students – who are keen on doing in-depth research, have the time to devote to many years of school, and potentially have an interest in continuing to work in academia – a PhD is a great choice. For more information on this question, take a look at our article Is a Data Science PhD. Worth It?
Complete List of Data Science PhD Programs
Below you will find the most comprehensive list of schools offering a doctorate in data science. Each school listing contains a link to the program specific page, GRE or a master’s degree requirements, and a link to a page with detailed course information.
Note that the listing only contains true data science programs. Other similar programs are often lumped together on other sites, but we have chosen to list programs such as data analytics and business intelligence on a separate section of the website.
Boise State University – Boise, Idaho PhD in Computing – Data Science Concentration
The Data Science emphasis focuses on the development of mathematical and statistical algorithms, software, and computing systems to extract knowledge or insights from data.
In 60 credits, students complete an Introduction to Graduate Studies, 12 credits of core courses, 6 credits of data science elective courses, 10 credits of other elective courses, a Doctoral Comprehensive Examination worth 1 credit, and a 30-credit dissertation.
Electives can be taken in focus areas such as Anthropology, Biometry, Ecology/Evolution and Behavior, Econometrics, Electrical Engineering, Earth Dynamics and Informatics, Geoscience, Geostatistics, Hydrology and Hydrogeology, Materials Science, and Transportation Science.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $7,236 total (Resident), $24,573 total (Non-resident)
View Course Offerings
Bowling Green State University – Bowling Green, Ohio Ph.D. in Data Science
Data Science students at Bowling Green intertwine knowledge of computer science with statistics.
Students learn techniques in analyzing structured, unstructured, and dynamic datasets.
Courses train students to understand the principles of analytic methods and articulating the strengths and limitations of analytical methods.
The program requires 60 credit hours in the studies of Computer Science (6 credit hours), Statistics (6 credit hours), Data Science Exploration and Communication, Ethical Issues, Advanced Data Mining, and Applied Data Science Experience.
Students must also complete 21 credit hours of elective courses, a qualifying exam, a preliminary exam, and a dissertation.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $8,418 (Resident), $14,410 (Non-resident)
Brown University – Providence, Rhode Island PhD in Computer Science – Concentration in Data Science
Brown University’s database group is a world leader in systems-oriented database research; they seek PhD candidates with strong system-building skills who are interested in researching TupleWare, MLbase, MDCC, Crowd DB, or PIQL.
In order to gain entrance, applicants should consider first doing a research internship at Brown with this group. Other ways to boost an application are to take and do well at massive open online courses, do an internship at a large company, and get involved in a large open-source software project.
Coding well in C++ is preferred.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $62,680 total
Chapman University – Irvine, California Doctorate in Computational and Data Sciences
Candidates for the doctorate in computational and data science at Chapman University begin by completing 13 core credits in basic methodologies and techniques of computational science.
Students complete 45 credits of electives, which are personalized to match the specific interests and research topics of the student.
Finally, students complete up to 12 credits in dissertation research.
Applicants must have completed courses in differential equations, data structures, and probability and statistics, or take specific foundation courses, before beginning coursework toward the PhD.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $37,538 per year
Clemson University / Medical University of South Carolina (MUSC) – Joint Program – Clemson, South Carolina & Charleston, South Carolina Doctor of Philosophy in Biomedical Data Science and Informatics – Clemson
The PhD in biomedical data science and informatics is a joint program co-authored by Clemson University and the Medical University of South Carolina (MUSC).
Students choose one of three tracks to pursue: precision medicine, population health, and clinical and translational informatics. Students complete 65-68 credit hours, and take courses in each of 5 areas: biomedical informatics foundations and applications; computing/math/statistics/engineering; population health, health systems, and policy; biomedical/medical domain; and lab rotations, seminars, and doctoral research.
Applicants must have a bachelor’s in health science, computing, mathematics, statistics, engineering, or a related field, and it is recommended to also have competency in a second of these areas.
Program requirements include a year of calculus and college biology, as well as experience in computer programming.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $10,858 total (South Carolina Resident), $22,566 total (Non-resident)
View Course Offerings – Clemson
George Mason University – Fairfax, Virginia Doctor of Philosophy in Computational Sciences and Informatics – Emphasis in Data Science
George Mason’s PhD in computational sciences and informatics requires a minimum of 72 credit hours, though this can be reduced if a student has already completed a master’s. 48 credits are toward graduate coursework, and an additional 24 are for dissertation research.
Students choose an area of emphasis—either computer modeling and simulation or data science—and completed 18 credits of the coursework in this area. Students are expected to completed the coursework in 4-5 years.
Applicants to this program must have a bachelor’s degree in a natural science, mathematics, engineering, or computer science, and must have knowledge and experience with differential equations and computer programming.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $13,426 total (Virginia Resident), $35,377 total (Non-resident)
Harrisburg University of Science and Technology – Harrisburg, Pennsylvania Doctor of Philosophy in Data Sciences
Harrisburg University’s PhD in data science is a 4-5 year program, the first 2 of which make up the Harrisburg master’s in analytics.
Beyond this, PhD candidates complete six milestones to obtain the degree, including 18 semester hours in doctoral-level courses, such as multivariate data analysis, graph theory, machine learning.
Following the completion of ANLY 760 Doctoral Research Seminar, students in the program complete their 12 hours of dissertation research bringing the total program hours to 36.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $14,940 total
Icahn School of Medicine at Mount Sinai – New York, New York Genetics and Data Science, PhD
As part of the Biomedical Science PhD program, the Genetics and Data Science multidisciplinary training offers research opportunities that expand on genetic research and modern genomics. The training also integrates several disciplines of biomedical sciences with machine learning, network modeling, and big data analysis.
Students in the Genetics and Data Science program complete a predetermined course schedule with a total of 64 credits and 3 years of study.
Additional course requirements and electives include laboratory rotations, a thesis proposal exam and thesis defense, Computer Systems, Intro to Algorithms, Machine Learning for Biomedical Data Science, Translational Genomics, and Practical Analysis of a Personal Genome.
Delivery Method: Campus GRE: Not Required 2022-2023 Tuition: $31,303 total
Indiana University-Purdue University Indianapolis – Indianapolis, Indiana PhD in Data Science PhD Minor in Applied Data Science
Doctoral candidates pursuing the PhD in data science at Indiana University-Purdue must display competency in research, data analytics, and at management and infrastructure to earn the degree.
The PhD is comprised of 24 credits of a data science core, 18 credits of methods courses, 18 credits of a specialization, written and oral qualifying exams, and 30 credits of dissertation research. All requirements must be completed within 7 years.
Applicants are generally expected to have a master’s in social science, health, data science, or computer science.
Currently a majority of the PhD students at IUPUI are funded by faculty grants and two are funded by the federal government. None of the students are self funded.
IUPUI also offers a PhD Minor in Applied Data Science that is 12-18 credits. The minor is open to students enrolled at IUPUI or IU Bloomington in a doctoral program other than Data Science.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $9,228 per year (Indiana Resident), $25,368 per year (Non-resident)
Jackson State University – Jackson, Mississippi PhD Computational and Data-Enabled Science and Engineering
Jackson State University offers a PhD in computational and data-enabled science and engineering with 5 concentration areas: computational biology and bioinformatics, computational science and engineering, computational physical science, computation public health, and computational mathematics and social science.
Students complete 12 credits of common core courses, 12 credits in the specialization, 24 credits of electives, and 24 credits in dissertation research.
Students may complete the doctoral program in as little as 5 years and no more than 8 years.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $8,270 total
Kennesaw State University – Kennesaw, Georgia PhD in Analytics and Data Science
Students pursuing a PhD in analytics and data science at Kennesaw State University must complete 78 credit hours: 48 course hours and 6 electives (spread over 4 years of study), a minimum 12 credit hours for dissertation research, and a minimum 12 credit-hour internship.
Prior to dissertation research, the comprehensive examination will cover material from the three areas of study: computer science, mathematics, and statistics.
Successful applicants will have a master’s degree in a computational field, calculus I and II, programming experience, modeling experience, and are encouraged to have a base SAS certification.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $5,328 total (Georgia Resident), $19,188 total (Non-resident)
New Jersey Institute of Technology – Newark, New Jersey PhD in Business Data Science
Students may enter the PhD program in business data science at the New Jersey Institute of Technology with either a relevant bachelor’s or master’s degree. Students with bachelor’s degrees begin with 36 credits of advanced courses, and those with master’s take 18 credits before moving on to credits in dissertation research.
Core courses include business research methods, data mining and analysis, data management system design, statistical computing with SAS and R, and regression analysis.
Students take qualifying examinations at the end of years 1 and 2, and must defend their dissertations successfully by the end of year 6.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $21,932 total (New Jersey Resident), $32,426 total (Non-resident)
New York University – New York, New York PhD in Data Science
Doctoral candidates in data science at New York University must complete 72 credit hours, pass a comprehensive and qualifying exam, and defend a dissertation with 10 years of entering the program.
Required courses include an introduction to data science, probability and statistics for data science, machine learning and computational statistics, big data, and inference and representation.
Applicants must have an undergraduate or master’s degree in fields such as mathematics, statistics, computer science, engineering, or other scientific disciplines. Experience with calculus, probability, statistics, and computer programming is also required.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $37,332 per year
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Northcentral University – San Diego, California PhD in Data Science-TIM
Northcentral University offers a PhD in technology and innovation management with a specialization in data science.
The program requires 60 credit hours, including 6-7 core courses, 3 in research, a PhD portfolio, and 4 dissertation courses.
The data science specialization requires 6 courses: data mining, knowledge management, quantitative methods for data analytics and business intelligence, data visualization, predicting the future, and big data integration.
Applicants must have a master’s already.
Delivery Method: Online GRE: Required 2022-2023 Tuition: $16,794 total
Stevens Institute of Technology – Hoboken, New Jersey Ph.D. in Data Science
Stevens Institute of Technology has developed a data science Ph.D. program geared to help graduates become innovators in the space.
The rigorous curriculum emphasizes mathematical and statistical modeling, machine learning, computational systems and data management.
The program is directed by Dr. Ted Stohr, a recognized thought leader in the information systems, operations and business process management arenas.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $39,408 per year
University at Buffalo – Buffalo, New York PhD Computational and Data-Enabled Science and Engineering
The curriculum for the University of Buffalo’s PhD in computational and data-enabled science and engineering centers around three areas: data science, applied mathematics and numerical methods, and high performance and data intensive computing. 9 credit course of courses must be completed in each of these three areas. Altogether, the program consists of 72 credit hours, and should be completed in 4-5 years. A master’s degree is required for admission; courses taken during the master’s may be able to count toward some of the core coursework requirements.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $11,310 per year (New York Resident), $23,100 per year (Non-resident)
University of Colorado Denver – Denver, Colorado PhD in Big Data Science and Engineering
The University of Colorado – Denver offers a unique program for those students who have already received admission to the computer science and information systems PhD program.
The Big Data Science and Engineering (BDSE) program is a PhD fellowship program that allows selected students to pursue research in the area of big data science and engineering. This new fellowship program was created to train more computer scientists in data science application fields such as health informatics, geosciences, precision and personalized medicine, business analytics, and smart cities and cybersecurity.
Students in the doctoral program must complete 30 credit hours of computer science classes beyond a master’s level, and 30 credit hours of dissertation research.
The BDSE fellowship requires students to have an advisor both in the core disciplines (either computer science or mathematics and statistics) as well as an advisor in the application discipline (medicine and public health, business, or geosciences).
In addition, the fellowship covers full stipend, tuition, and fees up to ~50k for BDSE fellows annually. Important eligibility requirements can be found here.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $55,260 total
University of Marylan d – College Park, Maryland PhD in Information Studies
Data science is a potential research area for doctoral candidates in information studies at the University of Maryland – College Park. This includes big data, data analytics, and data mining.
Applicants for the PhD must have taken the following courses in undergraduate studies: programming languages, data structures, design and analysis of computer algorithms, calculus I and II, and linear algebra.
Students must complete 6 qualifying courses, 2 elective graduate courses, and at least 12 credit hours of dissertation research.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $16,238 total (Maryland Resident), $35,388 total (Non-resident)
University of Massachusetts Boston – Boston, Massachusetts PhD in Business Administration – Information Systems for Data Science Track
The University of Massachusetts – Boston offers a PhD in information systems for data science. As this is a business degree, students must complete coursework in their first two years with a focus on data for business; for example, taking courses such as business in context: markets, technologies, and societies.
Students must take and pass qualifying exams at the end of year 1, comprehensive exams at the end of year 2, and defend their theses at the end of year 4.
Those with a degree in statistics, economics, math, computer science, management sciences, information systems, and other related fields are especially encouraged, though a quantitative degree is not necessary.
Students accepted by the program are ordinarily offered full tuition credits and a stipend ($25,000 per year) to cover educational expenses and help defray living costs for up to three years of study.
During the first two years of coursework, they are assigned to a faculty member as a research assistant; for the third year students will be engaged in instructional activities. Funding for the fourth year is merit-based from a limited pool of program funds
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $18,894 total (in-state), $36,879 (out-of-state)
University of Nevada Reno – Reno, Nevada PhD in Statistics and Data Science
The University of Nevada – Reno’s doctoral program in statistics and data science is comprised of 72 credit hours to be completed over the course of 4-5 years. Coursework is all within the scope of statistics, with titles such as statistical theory, probability theory, linear models, multivariate analysis, statistical learning, statistical computing, time series analysis.
The completion of a Master’s degree in mathematics or statistics prior to enrollment in the doctoral program is strongly recommended, but not required.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $5,814 total (in-state), $22,356 (out-of-state)
University of Southern California – Los Angles, California PhD in Data Sciences & Operations
USC Marshall School of Business offers a PhD in data sciences and operations to be completed in 5 years.
Students can choose either a track in operations management or in statistics. Both tracks require 4 courses in fall and spring of the first 2 years, as well as a research paper and courses during the summers. Year 3 is devoted to dissertation preparation and year 4 and/or 5 to dissertation defense.
A bachelor’s degree is necessary for application, but no field or further experience is required.
Students should complete 60 units of coursework. If the students are admitted with Advanced Standing (e.g., Master’s Degree in appropriate field), this requirement may be reduced to 40 credits.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $63,468 total
University of Tennessee-Knoxville – Knoxville, Tennessee The Data Science and Engineering PhD
The data science and engineering PhD at the University of Tennessee – Knoxville requires 36 hours of coursework and 36 hours of dissertation research. For those entering with an MS degree, only 24 hours of course work is required.
The core curriculum includes work in statistics, machine learning, and scripting languages and is enhanced by 6 hours in courses that focus either on policy issues related to data, or technology entrepreneurship.
Students must also choose a knowledge specialization in one of these fields: health and biological sciences, advanced manufacturing, materials science, environmental and climate science, transportation science, national security, urban systems science, and advanced data science.
Applicants must have a bachelor’s or master’s degree in engineering or a scientific field.
All students that are admitted will be supported by a research fellowship and tuition will be included.
Many students will perform research with scientists from Oak Ridge national lab, which is located about 30 minutes drive from campus.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $11,468 total (Tennessee Resident), $29,656 total (Non-resident)
University of Vermont – Burlington, Vermont Complex Systems and Data Science (CSDS), PhD
Through the College of Engineering and Mathematical Sciences, the Complex Systems and Data Science (CSDS) PhD program is pan-disciplinary and provides computational and theoretical training. Students may customize the program depending on their chosen area of focus.
Students in this program work in research groups across campus.
Core courses include Data Science, Principles of Complex Systems and Modeling Complex Systems. Elective courses include Machine Learning, Complex Networks, Evolutionary Computation, Human/Computer Interaction, and Data Mining.
The program requires at least 75 credits to graduate with approval by the student graduate studies committee.
Delivery Method: Campus GRE: Not Required 2022-2023 Tuition: $12,204 total (Vermont Resident), $30,960 total (Non-resident)
University of Washington Seattle Campus – Seattle, Washington PhD in Big Data and Data Science
The University of Washington’s PhD program in data science has 2 key goals: training of new data scientists and cyberinfrastructure development, i.e., development of open-source tools and services that scientists around the world can use for big data analysis.
Students must take core courses in data management, machine learning, data visualization, and statistics.
Students are also required to complete at least one internship that covers practical work in big data.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $17,004 per year (Washington resident), $30,477 (non-resident)
University of Wisconsin-Madison – Madison, Wisconsin PhD in Biomedical Data Science
The PhD program in Biomedical Data Science offered by the Department of Biostatistics and Medical Informatics at UW-Madison is unique, in blending the best of statistics and computer science, biostatistics and biomedical informatics.
Students complete three year-long course sequences in biostatistics theory and methods, computer science/informatics, and a specialized sequence to fit their interests.
Students also complete three research rotations within their first two years in the program, to both expand their breadth of knowledge and assist in identifying a research advisor.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $10,728 total (in-state), $24,054 total (out-of-state)
Vanderbilt University – Nashville, Tennessee Data Science Track of the BMI PhD Program
The PhD in biomedical informatics at Vanderbilt has the option of a data science track.
Students complete courses in the areas of biomedical informatics (3 courses), computer science (4 courses), statistical methods (4 courses), and biomedical science (2 courses). Students are expected to complete core courses and defend their dissertations within 5 years of beginning the program.
Applicants must have a bachelor’s degree in computer science, engineering, biology, biochemistry, nursing, mathematics, statistics, physics, information management, or some other health-related field.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $53,160 per year
Washington University in St. Louis – St. Louis, Missouri Doctorate in Computational & Data Sciences
Washington University now offers an interdisciplinary Ph.D. in Computational & Data Sciences where students can choose from one of four tracks (Computational Methodologies, Political Science, Psychological & Brain Sciences, or Social Work & Public Health).
Students are fully funded and will receive a stipend for at least five years contingent on making sufficient progress in the program.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $59,420 total
Worcester Polytechnic Institute – Worcester, Massachusetts PhD in Data Science
The PhD in data science at Worcester Polytechnic Institute focuses on 5 areas: integrative data science, business intelligence and case studies, data access and management, data analytics and mining, and mathematical analysis.
Students first complete a master’s in data science, and then complete 60 credit hours beyond the master’s, including 30 credit hours of research.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $28,980 per year
Yale University – New Haven, Connecticut PhD Program – Department of Stats and Data Science
The PhD in statistics and data science at Yale University offers broad training in the areas of statistical theory, probability theory, stochastic processes, asymptotics, information theory, machine learning, data analysis, statistical computing, and graphical methods. Students complete 12 courses in the first year in these topics.
Students are required to teach one course each semester of their third and fourth years.
Most students complete and defend their dissertations in their fifth year.
Applicants should have an educational background in statistics, with an undergraduate major in statistics, mathematics, computer science, or similar field.
Delivery Method: Campus GRE: Required 2022-2023 Tuition: $46,900 total
- Related Programs
PhD in Data Science
Students conduct research on cutting edge problems alongside preeminent faculty at UChicago and explore the emerging field of Data Science. As an emerging discipline, Data Science addresses foundational problems across the entire data life cycle. Tackling issues of inequity, climate change, and sustainability will require cutting edge research in artificial intelligence and data usage combined with innovative educational programs to train students in the concepts of information systems. Students of Data Science will not only immerse themselves in a rapidly evolving field; they will help redefine it altogether.
Research Excellence:
As a PhD student in Data Science, you will learn from faculty who have developed research programs that span a wide variety of data science and AI topics, from theory to applications, with a focus on making a societal impact.
Research Topics:
- Artificial Intelligence
- Data, AI, and Society
- Data Systems
- Human-Centered Data Science
- Machine Learning and Statistics
- Use-Inspired Data Science
For more information, including a link to the application, see the Committee on Data Science website .
Data Science, Analytics and Engineering, PhD
- Program description
- At a glance
- Degree requirements
- Admission requirements
- Tuition information
- Application deadlines
- Program learning outcomes
- Career opportunities
- Contact information
Analytics, Big Data, Data Engineering, Data Science, approved for STEM-OPT extension, computing, statistics
Learn to meet the need for data-driven discovery of new knowledge and decision-making, which enhances enterprise performance as well as scientific investigation.
The PhD program in data science, analytics and engineering engages students in fundamental and applied research.
The program's educational objective is to develop each student's ability to perform original research in the development and execution of data-driven methods for solving major societal problems. This includes the ability to identify research needs, adapt existing methods and create new methods as needed. This is accomplished through a rigorous education with research and educational experiences.
Students complete a foundational core covering database management, information assurance, statistical learning and statistical theory before choosing to focus on data analytics or data engineering. The program culminates in the production of a dissertation.
This program may be eligible for an Optional Practical Training extension for up to 24 months. This OPT work authorization period may help international students gain skills and experience in the U.S. Those interested in an OPT extension should review ASU degrees that qualify for the STEM-OPT extension at ASU's International Students and Scholars Center website.
The OPT extension only applies to students on an F-1 visa and does not apply to students completing a degree through ASU Online.
- College/school: Ira A. Fulton Schools of Engineering
- Location: Tempe
- STEM-OPT extension eligible: Yes
84 credit hours, a written comprehensive exam, an oral comprehensive exam, a prospectus and a dissertation
Required Core (12 credit hours) CSE 511 Data Processing at Scale (3) CSE 543 Information Assurance and Security (3) CSE 572 Data Mining (3) or IEE 520 Statistical Learning for Data Mining (3) or EEE 549 Statistical Machine Learning: From Theory to Practice (3) IEE 670 Mathematical Statistics (3) or STP 502 Theory of Statistics II: Inference (3) or EEE 554 Probability and Random Processes (3)
Electives and Additional Research (39 credit hours)
Research (12 credit hours) DSE 792 Research (12)
Other Requirements (9 credit hours) data engineering coursework or data analytics coursework
Culminating Experience (12 credit hours) DSE 799 Dissertation (12)
Additional Curriculum Information All students must take qualifying exams covering the required core courses within one year of matriculation into the program.
The dissertation prospectus should be submitted and its oral defense completed no later than one year following completion of the 60th credit hour and also no later than the fourth year in the program.
Students must select coursework from either the data engineering or the data analytics requirements. Students should see the academic unit for the approved course list.
Students cannot take a data engineering or data analytics course and have it meet an elective requirement at the same time. Students need to take a different elective course to reach the number of credit hours required for the program. Other coursework may be used with the approval of the academic unit to fulfill these requirements.
Twelve credit hours of DSE 792 Research are required, and up to 24 credit hours are allowed on the plan of study. Students with research hours in excess of 12 will add these credit hours to their electives and additional research.
Electives include:
- additional DSE 792 Research credit hours (up to 12 credit hours allowed beyond the required 12)
- approved elective courses, of which up to three credit hours of DSE 790: Reading and Conference are permitted, with approval.
When approved by the student's supervisory committee and the Graduate College, this program allows 30 credit hours from a previously awarded master's degree to be used for this degree. If students do not have a previously awarded master's degree, the 30 hours of coursework are to be made up of electives to reach the required 84 credit hours.
Applicants must fulfill the requirements of both the Graduate College and the Ira A. Fulton Schools of Engineering.
Applicants are eligible to apply to the program if they have earned a bachelor's or master's degree in engineering, computer science, mathematics, statistics or a related field from a regionally accredited institution.
Applicants must have a minimum cumulative GPA of 3.00 (scale is 4.00 = "A") in the last 60 hours of their first bachelor's degree program or a minimum cumulative GPA of 3.00 (scale is 4.00 = "A") in an applicable master's degree program.
Applicants are required to submit:
- graduate admission application and application fee
- official transcripts
- two letters of recommendation
- letter of intent or written statement
- proof of English proficiency
Additional Application Information An applicant whose native language is not English must provide proof of English proficiency regardless of their current residency.
ASU does not accept the GRE® General Test at home edition.
If the student is assigned any deficiency coursework upon admission, those classes must be completed with a grade of "B" (scale is 4.00 = "A") or higher within two semesters of admission to the program. Deficiency courses do not apply to the total credit hours required to complete the degree program.
Deficiency courses are: CSE 205 Object-oriented Programming and Data Structures IEE 380 Probability and Statistics for Engineering Problem Solving MAT 242 Elementary Linear Algebra or MAT 342 Linear Algebra or MAT 343 Applied Linear Algebra MAT 267 Calculus for Engineers III
Session | Modality | Deadline | Type |
---|---|---|---|
Session A/C | In Person | 01/15 | Priority |
Session | Modality | Deadline | Type |
---|---|---|---|
Session A/C | In Person | 09/15 | Priority |
Program learning outcomes identify what a student will learn or be able to do upon completion of their program. This program has the following program outcomes:
- Apply the tools and methods from industrial statistics, operations research, machine learning, computer science and computer engineering on solving data analytic problems.
- Manage large, heterogeneous data sets for knowledge discovery.
- Conduct research resulting in an original contribution to knowledge in data sciences.
Graduates demonstrate proficiency with existing methodology and significant accomplishment at advancing the state of the art in their chosen area, enabling them to pursue careers in the following fields:
- advanced research
Computer Science and Engineering Program | CTRPT 105 [email protected] 480-965-3199
DEPARTMENT OF STATISTICS AND DATA SCIENCE
Phd program, phd program overview.
The doctoral program in Statistics and Data Science is designed to provide students with comprehensive training in theory and methodology in statistics and data science, and their applications to problems in a wide range of fields. The program is flexible and may be arranged to reflect students' interests and career goals. Cross-disciplinary work is encouraged. The PhD program prepares students for careers as university teachers and researchers as well as research statisticians and data scientists in industry, government and the non-profit sector.
Requirements
Students are required to fulfill the Department requirements in addition to those specified by The Graduate School (TGS).
From the Graduate School’s webpage outlining the general requirements for a PhD :
In order to receive a doctoral degree, students must:
- Complete all required coursework. .
- Gain admittance to candidacy.
- Submit a prospectus to be approved by a faculty committee.
- Present a dissertation with original research. Review the Dissertation Publication page for more information.
- Complete the necessary teaching requirement
- Submit necessary forms to file for graduation
- Complete degree requirements within the approved timeline
PhD degrees must be approved by the student's academic program. Consult with your program directly regarding specific degree requirements.
The Department requires that students in the Statistics and Data Science PhD program:
- Meet the department minimum residency requirement of 2 years
- STAT 344-0 Statistical Computing
- STAT 350-0 Regression Analysis
- STAT 353-0 Advanced Regression
- STAT 415-0 I ntroduction to Machine Learning
- STAT 420-1,2,3 Introduction to Statistical Theory and Methodology 1, 2, 3
- STAT 430-1, 2 Probability for Statistical Inference 1, 2
- STAT 440 Applied Stochastic Processes for Statistics
- STAT 457-0 Applied Bayesian Inference
Students generally complete the required coursework during their first two years in the PhD program. *note that required courses changed in the 2021-22 academic year, previous required courses can be found at the end of this page.
- Pass the Qualifying Exam. This comprehensive examination covers basic topics in statistics and data science and and is typically taken in fall quarter of the second year.
Pass the Prospectus presentation/examination and be admitted for PhD candidacy by the end of year 3 . The department requires that students must complete their Prospectus (proposal of dissertation topic) before the end of year 3, which is earlier than The Graduate School deadline of the end of year 4. The prospectus must be approved by a faculty committee comprised of a committee chair and a minimum of 2 other faculty members. Students usually first find an adviser through independent studies who will then typically serve as the committee chair. When necessary, exceptions may be made upon the approval of the committee chair and the director of graduate studies, to extend the due date of the prospectus exam until the end of year 4.
- Successfully complete and defend a doctoral dissertation. After the prospectus is approved, students begin work on the doctoral dissertation, which must demonstrate an original contribution to a chosen area of specialization. A final examination (thesis defense) is given based on the dissertation. Students typically complete the PhD program in 5 years.
- Attend all seminars in the department and participate in other research activities . In addition to these academic requirements, students are expected to participate in other research activities and attend all department seminars every year they are in the program.
Optional MS degree en route to PhD
Students admitted to the Statistics and Data Science PhD program can obtain an optional MS (Master of Science) degree en route to their PhD. The MS degree requires 12 courses: STAT 350-0 Regression Analysis, STAT 353 Advanced Regression, STAT 420-1,2,3 Introduction to Statistical Theory and Methodology 1, 2, 3, STAT 415-0 I ntroduction to Machine Learning , and at least 6 more courses approved by the department of which two must be 400 level STAT elective courses, no more than 3 can be approved non-STAT courses.
*Prior to 2021-2022, the course requirements for the PhD were:
- STAT 351-0 Design and Analysis of Experiments
- STAT 425 Sampling Theory and Applications
- MATH 450-1,2 Probability 1, 2 or MATH 450-1 Probability 1 and IEMS 460-1,2 Stochastic Processes 1, 2
- Six additional 300/400 graduate-level Statistics courses, at least two must be 400 -level
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PhD in Computing & Data Sciences
For more information and to get in touch, please visit the Faculty of Computing & Data Sciences website .
The PhD program in Computing & Data Sciences (CDS) at Boston University prepares its graduates to make significant contributions to the art, science, and engineering of computational and data-driven processes that are woven into all aspects of society, economy, and public discourse, leading to solutions of problems and synthesis of knowledge related to the methodical, generalizable, and scalable extraction of insights from data as well as the design of new information systems and products that enable actionable use of those insights to advance scholarly as well as practical pursuits in a wide range of application domains.
Applicants to the PhD program in CDS are expected to have earned a bachelor’s or master’s degree in one of the methodological or applied disciplines relating to the computational and data-driven areas of scholarship in CDS. They are expected to possess basic mathematical and computational competencies, and demonstrable propensity for cross-disciplinary work. To accommodate a diversity of student backgrounds and preparations, a holistic admission review is utilized. As such, GRE tests and scores are not required, but could be optionally provided and considered as part of the applicant’s portfolio, which may also include evidence of prior, relevant preparation, including creative works, software code repositories, etc. Special attention will be paid to applicants from underrepresented backgrounds in computing and data science disciplines.
Completion of the PhD degree in CDS requires coursework covering breadth and depth topics spanning the foundational, applied, and sociotechnical dimensions of computing and data science; completion of research rotations that expose students to ongoing projects; completion of a cohort-based training on ethical and responsible computing; and successful proposal and defense of a doctoral thesis.
For their thesis work, and in preparation for careers in academia, industry, and government, CDS PhD students are expected to pursue theoretical, applied, or empirical studies leading to solution of new problems and synthesis of new knowledge in a topic area determined in consultation with their mentors and collaborators, which may include external researchers and practitioners in industrial and academic research laboratories.
Upon completion of the program, students will be prepared to pursue careers in which they lead independent cutting-edge research and development agendas, whether in academia (by teaching, mentoring, and supervising teams of students engaged in scholarly pursuits) or in industry (by collaborating, directing, and effectively managing diverse teams of practitioners working at the forefront of industrial R&D).
Learning Outcomes
The following learning outcomes explain what you will be able to do at the end of your time as a CDS PhD candidate, as a result of earning your degree.
- Exhibit a strong grasp of the principles governing the design and implementation of the methodological approaches for computational and data-driven inquiry.
- Identify the literature and demonstrate mastery of the compendium of works relevant to a well-defined area of research inquiry in computing and data sciences.
- Show capacity to engage meaningfully in and materially contribute to multidisciplinary research and development endeavors.
- Evidence a strong sense of social and professional responsibility for decisions related to the development and deployment of computational and data-driven technologies.
- Assess and argue the merits, limitations, and possibilities of new research work in a specialized area at the level commensurate with standards of scholarly venues in that area.
- Formulate and pursue a research agenda leading to solution of new problems and to synthesis of new knowledge shared through peer-reviewed publications.
Course Requirements
Sixteen term courses (64 units) are required for post-BA/BS students and 12 term courses (48 units) are required for post-MA/MS students. Students with prior graduate work (including master’s degrees) may be able to transfer up to two courses (8 units) as long as these units were not used to fulfill matriculation requirements, upon the recommendation of the student’s academic advisor, and subject to approval by the Associate Provost for CDS.
Of the 16 courses, up to 3 undergraduate courses (12 units) may be counted as background courses, selected in consultation with the student’s academic advisor and subject to approval by the Associate Provost for CDS. Other than these remedial courses, all other courses must be graduate-level courses or directed studies offered by CDS or by other BU departments in order to satisfy the following degree requirements.
The methodology core requirement ensures that students possess foundational knowledge and competencies in a subset of the following eight methodological areas of CDS:
- Mathematical Foundations of Data Science
- Statistical Modeling and Inference
- Efficient and Scalable Algorithms
- Predictive Analytics and Machine Learning
- Combinatorial Optimization and Algorithms
- Computational Complexity
- Programming and Software Design
- Large-scale Data Management
A list of courses that can be used to satisfy these competencies will be maintained on the website for CDS. Students who start their PhD program in CDS are expected to satisfy at least six of these competencies. Students who complete the course requirement for the PhD program in a cognate discipline are expected to satisfy at least four of these competencies.
The subject core requirement ensures that students establish depth in one area of inquiry that is aligned with either the methodological or applied dimensions of CDS. Subject areas are defined by groups of CDS faculty members working in related disciplinary and/or interdisciplinary areas of research who expect their prospective students to have enough depth in the subset of topics to enable them to tackle doctoral-level research in these topics. The set of subject areas as well as a list of preapproved graduate-level courses offered in CDS or elsewhere at BU that can be used to satisfy each subject area will be maintained on the website for CDS.
During the first two years in the program, all PhD candidates in CDS must complete three cohort-based requirements; namely, a two-term training course (4 units) covering various aspects of the responsible and ethical conduct of computational and data-driven research, a two-term doctoral seminar (4 units) that introduces them to the research portfolios of CDS faculty members as well as to the skills and capacities needed for success as scholars, and at least two research or lab rotations (8 units) that expose them to real-world computational and data-driven applications that must be tackled through effective multidisciplinary teamwork.
A cumulative GPA not less than 3.3 must be maintained for all non-Pass/Fail courses taken to satisfy the methodology core requirement and the subject core requirement of the degree, excluding any background courses and excluding any transferred units. Students who receive grades of B– or lower in any three courses taken at BU will be withdrawn from the program.
Language Requirement
There is no foreign language requirement for the PhD degree in CDS.
Qualifying Examinations
No later than the end of the sixth term (third year), all PhD candidates in CDS must pass a public oral examination administered by a committee of three faculty members, chaired by the student’s research (and presumptive thesis) advisor or coadvisors. The oral area exam is meant to establish the student mastery of a well-defined area of scholarship and preparedness to pursue original research in that area. The oral area examination may require completion of a survey paper or completion of a pilot project ahead of the examination. The scope as well as any additional requirements needed for the examination should be developed in consultation with and approval of the research advisor(s), at least one term prior to the exam.
Dissertation and Final Oral Examination
Candidates shall demonstrate their abilities for independent study in a dissertation representing original research or creative scholarship. A prospectus for the dissertation must be successfully defended no later than the end of the eighth term (fourth year) of study.
Candidates must undergo a final oral examination no later than the end of the 10th term (fifth year) of study in which they defend their dissertation as a valuable contribution to knowledge in their field and demonstrate a mastery of their field of specialization in relation to their dissertation.
Both the prospectus and final dissertation must be administered by a dissertation committee of at least three readers (including the dissertation advisor or coadvisors) and chaired by a CDS faculty member who is not one of the readers.
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Department of Data Science
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Ph.D. in Data Science
(Qualifying students may be eligible for an application fee waiver. Contact Dr. Hai Phan, program director, at [email protected] for further information.)
Considering the Ph.D. in Data Science
Why pursue a ph.d..
You are the master of your professional destiny.
The NJIT Advantage
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The world is waiting for people like you. Take the next step ahead.
The Ph.D. in Data Science is jointly administered by the Department of Data Science in the Ying Wu College of Computing and the Department of Mathematical Sciences in the College of Science and Liberal Arts. To accommodate different interest profiles of students, the program offers two options. There is significant overlap between the two options.
Computing Option
Explore the path to innovation
Statistics Option
Formulate the solution for transformation
Contact the Program Director
Students graduating with a PhD degree in Data Science should anticipate the acquisition of skills, knowledge, and professional training that will enable them to pursue data science careers such as data scientist, data analyst, data engineer, data miner, and academic data science researcher in a broad range of industrial sectors, startups, academia, and government institutions. The primary goal of the PhD degree in Data Science is to educate students who have the necessary skills and knowledge to pursue competitive professional and academic careers, swiftly advancing to leadership positions and to contribute to the creation of novel insights and knowledge in the field.
Application deadlines are October 15 for spring and December 15 for fall. However, we will continue to accept applications after the deadline for qualified candidates.
Prospective applicants are expected to have software development experience, computational skills, and an understanding of statistical methods. The minimum requirements for admission to the PhD program are within the guidelines and policies approved by the University and include:
- A Bachelor’s degree in data science, computer science, informatics, mathematics/statistics, engineering, or another closely related discipline (as approved by the PhD directors) from a college or university accredited in the United States, or its equivalent, with an expected overall GPA of 3.5 out of 4.0.
- GRE scores are required. They will be evaluated in agreement with other Ph.D. programs at NJIT.
- Prepared students shall have a good background in programming and data structures (corresponding to NJIT CS 280 and CS 435), multivariate calculus (e.g. NJIT Math 211), and Probability and Statistics (e.g. Math 333/341). Admitted students lacking competencies in one or more of these areas shall consult with the academic advisor to take relevant preparatory courses.
- International student applicants shall demonstrate proficiency in English if it is not their first language, following the NJIT admission standard. Exemptions can be granted to applicants who have earned (or will earn, before enrolling at NJIT) a Bachelor’s, Master’s, or Doctoral degree from a university of recognized standing in a country in which all instruction is provided in English.
Progression of Students
To continue in the Ph.D. program, a student must fulfill the following requirements/milestones:
Maintain a cumulative GPA of 3.0 or better. Students will need a cumulative GPA of 3.5 if they wish to be considered for financial support of any kind.
End of year one: Students must take the written part of the Ph.D. qualifying exam.
Every student (in both options) will have to pass qualifying exams in these two courses:
CS 675 Machine Learning
MATH 644 Regression
- CS 644 Introduction to Big Data OR IS 650 Data Visualization & Interpretation
- MATH 631 Linear Algebra
Upon the approval of the PhD program director, students must file a program of study that lists the courses to be taken and the timeline of study.
Dissertation
Students are recommended to choose a dissertation advisor as soon as possible, but no later than 3 months after passing the qualifying exam. A student needs to inquire who among the tenured/tenure track faculty is closest to their area of research interest. The Ph.D. program director should be consulted for this purpose, unless the student has already determined who they wish to work with, e.g., based on class offerings or publication records.
Students will have to pass the oral part of the qualifying exam, followed by registering for research credits. They have to present, orally and in writing, a Dissertation Proposal and, before graduating, have to write and orally defend a state-of-the-art research dissertation in front of a committee of faculty members. Individual professors will impose publication requirements in conferences and/or academic journals as a condition for graduating.
“Data is the new oil. Like oil, data is valuable, but if unrefined it cannot really be used. It has to be changed into gas, plastic, chemicals, etc. to create a valuable entity that drives profitable activity. So must data be broken down, analyzed for it to have value.” - The British mathematician Clive Humbly
PhD in Data Science: Admissions Requirements
Fall 2025 application now open.
- The Fall 2025 application deadline is Thursday, December 5, 2024, 5pm EST.
- The Fall 2025 PhD Admissions Information Session is Thursday, October 17, 2024, 9:30am-11:30am EDT. The second half of the information session will be focused on the Medical School Track .
On this page: Information Session Recording (for Fall 2024) • Admissions Details
The application deadline for Fall 2024 Admissions was Tuesday, December 5, 2023, 5pm ET. Applications for Fall 2025 Admissions will open in late September 2024.
Our Fall 2024 PhD Admissions Information Session took place on Thursday, October 26 at 1pm. A video recording of the session can be found below.
Information Session Recording (for Fall 2024)
Admission Details
- The Committee welcomes applications from candidates with relevant undergraduate or master’s degrees, as well as those with work or research experience in data science.
- Relevant degrees include mathematics, statistics, computer science, engineering, and other scientific disciplines that develop skills in drawing inferences or making predictions using data.
- Coursework or equivalent experience in calculus, probability, statistics, and programming are required.
For more information on the application process, please visit the GSAS Application Resource Center . For additional details, see our FAQs page .
For a list of all our faculty research areas, please review our Areas and Faculty page.
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PhD Program
Requirements for doctor of philosophy (ph.d.) in data science.
The goal of the doctoral program is to create leaders in the field of Data Science who will lay the foundation and expand the boundaries of knowledge in the field. The doctoral program aims to provide a research-oriented education to students, teaching them knowledge, skills and awareness required to perform data driven research, and enabling them to, using this shared background, carry out research that expands the boundaries of knowledge in Data Science. The doctoral program spans from foundational aspects, including computational methods, machine learning, mathematical models and statistical analysis, to applications in data science.
Course Requirements
https://datascience.ucsd.edu/graduate/phd-program/phd-course-requirements/
Research Rotation Program
https://datascience.ucsd.edu/graduate/phd-program/research-rotation/
Preliminary Assessment Examination
The goal of the preliminary assessment examination is to assess students’ preparation for pursuing a PhD in data science, in terms of core knowledge and readiness for conducting research. The preliminary assessment is an advisory examination.
The preliminary assessment is an oral presentation that must be completed before the end of Spring quarter of the second academic year. Students must have a GPA of 3.0 or above to qualify for the assessment and have completed three of four core required courses . The student will choose a committee consisting of three members, one of which will be the HDSI academic advisor of the student. The other two committee members must be HDSI faculty members with 0% or more appointments; we encourage the student to select the second faculty member based on compatibility of research interests and topic of the presentation. The student is responsible for scheduling the meeting and making a room reservation.
The student may choose to be evaluated based on (A) a scientific literature survey and data analysis or (B) based on a previous rotation project. The student will propose the topic of the presentation.
- If the student chooses the survey theme, they should select a broad area that is well represented among HDSI faculty members, such as causal inference, responsible AI, optimization, etc. The student should survey at least 10 peer-reviewed conference or journal papers representative of the last (at least) 5 years of the field. The student should present a novel and rigorous original analysis using publicly available data from the surveyed literature: this analysis may aim to answer a related or new research question.
- If the student chooses the rotation project theme, they should prepare to discuss the motivation for the project, the analysis undertaken, and the outcome of the rotation.
For both themes, the student will describe their topic to the committee by writing a 1-2 page proposal that must be then approved by the committee. We emphasize that this is not a research proposal. The student will have 50 minutes to give an oral presentation which should include a comprehensive overview of previous work, motivation for the presented work or state-of-the-art studies, a critical assessment of previous work and of their own work, and a future outlook including logical next steps or unanswered questions. The presentation will then be followed by a Q&A session by the committee members; the entire exam is expected to finish within two hours.
The committee will assess both the oral presentation as well as the student’s academic performance so far (especially in the required core courses). The committee will evaluate preparedness, technical skills, comprehension, critical thinking, and research readiness. Students who do not receive a satisfactory evaluation will receive a recommendation from the Graduate Program Committee regarding ways to remedy the lacking preparation or an opportunity to receive a terminal MS in Data Science degree provided the student can meet the degree requirements of the MS program . If the lack of preparation is course-based, the committee can require that additional course(s) be taken to pass the exam. If the lack of preparation is research-based, the committee can require an evaluation after another quarter of research with an HDSI faculty member; the faculty member will provide this evaluation. The preliminary assessment must be successfully completed no later than completion of two years (or sixth quarter enrollment) in the Ph.D. program.
The oral presentation must be completed in-person. We recommend the following timeline so that students can plan their preliminary assessments:
- Middle of winter quarter of second year: Student selects committee and proposes preliminary exam topic.
- Beginning of spring quarter of second year: Scheduling of exam is completed.
- End of spring quarter of second year: Exam.
Research Qualifying Examination and Advancing to Candidacy
A research qualifying examination (UQE) is conducted by the dissertation committee consisting of five or more members approved by the graduate division as per senate regulation 715(D). One senate faculty member must have a primary appointment in the department outside of HDSI. Faculty with 25% or less partial appointment in HDSI may be considered for meeting this requirement on an exceptional basis upon approval from the graduate division.
The goal of UQE is to assess the ability of the candidate to perform independent critical research as evidenced by a presentation and writing a technical report at the level of a peer-reviewed journal or conference publication. The examination is taken after the student and his or her adviser have identified a topic for the dissertation and an initial demonstration of feasible progress has been made. The candidate is expected to describe his or her accomplishments to date as well as future work. The research qualifying examination must be completed no later than fourth year or 12 quarters from the start of the degree program; the UQE is tantamount to the advancement to PhD candidacy exam.
A petition to the Graduate Committee is required for students who take UQE after the required 12 quarters deadline. Students who fail the research qualifying examination may file a petition to retake it; if the petition is approved, they will be allowed to retake it one (and only one) more time. Students who fail UQE may also petition to transition to a MS in Data Science track.
Dissertation Defense Examination and Thesis Requirements
Students must successfully complete a final dissertation defense oral presentation and examination to the Dissertation Committee consisting of five or more members approved by the graduate division as per senate regulation 715(D). One senate faculty member in the Dissertation Committee must have a primary appointment in a department outside of HDSI. Partially appointed faculty in HDSI (at 25% or less) are acceptable in meeting this outside-department requirement as long as their main (lead) department is not HDSI.
A dissertation in the scope of Data Science is required of every candidate for the PhD degree. HDSI PhD program thesis requirements must meet Regulation 715(D) requirements. The final form of the dissertation document must comply with published guidelines by the Graduate Division.
The dissertation topic will be selected by the student, under the advice and guidance of Thesis Adviser and the Dissertation Committee. The dissertation must contain an original contribution of quality that would be acceptable for publication in the academic literature that either extends the theory or methodology of data science, or uses data science methods to solve a scientific problem in applied disciplines.
The entire dissertation committee will conduct a final oral examination, which will deal primarily with questions arising out of the relationship of the dissertation to the field of Data Science. The final examination will be conducted in two parts. The first part consists of a presentation by the candidate followed by a brief period of questions pertaining to the presentation; this part of the examination is open to the public. The second part of the examination will immediately follow the first part; this is a closed session between the student and the committee and will consist of a period of questioning by the committee members.
Special Requirements: Generalization, Reproducibility and Responsibility A candidate for doctoral degree in data science is expected to demonstrate evidence of generalization skills as well as evidence of reproducibility in research results. Evidence of generalization skills may be in the form of — but not limited to — generalization of results arrived at across domains, or across applications within a domain, generalization of applicability of method(s) proposed, or generalization of thesis conclusions rooted in formal or mathematical proof or quantitative reasoning supported by robust statistical measures. Reproducibility requirement may be satisfied by additional supplementary material consisting of code and data repository. The dissertation will also be reviewed for responsible use of data.
Special Requirements: Professional Training and Communications
All graduate students in the doctoral program are required to complete at least one quarter of experience in the classroom as teaching assistants regardless of their eventual career goals. Effective communications and ability to explain deep technical subjects is considered a key measure of a well-rounded doctoral education. Thus, Ph.D. students are also required to take a 1-unit DSC 295 (Academia Survival Skills) course for a Satisfactory grade.
Obtaining an MS in Data Science
PhD students may obtain an MS Degree in Data Science along the way or a terminal MS degree, provided they complete the requirements for the MS degree.
Course Exceptions: Students with MS in Data Science (or similar field)
If a student has already been granted a Master’s degree in Data Science (or a related field, as determined by the Graduate Program Committee) before entering the HDSI PhD program, the student can submit a “Requirement Substitution” petition for up to 2 courses to be substituted by DSC 299 (up to 8 units).
Further leniency may be granted in exceptional cases in which both the student and their faculty advisor must separately appeal to the Graduate Program Committee. It is up to the Graduate Program Committee to decide whether the appeal is rejected or granted in part or in its entirety.
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PhD in Data Science and Analytics
Degrees & Programs
- Doctoral Degree in Data Science and Analytics
- Certificates
We launched the first formal PhD program in Data Science in 2015. Our program sits at the intersection ofcomputer science, statistics, mathematics, and business. Our students engage in relevant research with faculty from across our eleven colleges. As one of the institutions on the forefront of the development of data science as an academic discipline, we are committed to developing the next generation of Data Science leaders, researchers, and educators. Culturally, we are committed to the discipline of Data Science, through ethical practices, attention to fairness, to a diverse student body, to academic excellence, and research which makes positive contributions to our local, regional, and global community.
Herman Ray , Director, Ph.D. in Data Science and Analytics
About the Doctoral Degree in Data Science and Analytics
This degree will train individuals to translate and facilitate new innovative research, structured and unstructured, complex data into information to improve decision making. This curriculum includes heavy emphasis on programming, data mining, statistical modeling, and the mathematical foundations to support these concepts. Importantly, the program also emphasizes communication skills – both oral and written – as well as application and tying results to business and research problems.
Because this degree is a Ph.D., it creates flexibility. Graduates can either pursue a position in the private or public sector as a "practicing" Data Scientist – where continued demand is expected to greatly outpace the supply - or pursue a position within academia, where they would be uniquely qualified to teach these skills to the next generation.
Information Sessions for Fall 2025 Admission
To be announced
Data Science and Analytics PhD Curriculum
Stage One: Pre-Program Requirements
- Successful applicants will have completed a masters degree in a computational field (e.g., engineering, computer science, statistics, economics, finance, etc.)
- Applicants are expected to have deep proficiency in at least one analytical programming language (e.g., SAS, R, Python). SQL and Java are helpful but not required.
- Interested applicants who have earned an undergraduate degree are encouraged to apply to the Ph.D. Program with the embedded MS in Computer Science or with the MS in Applied Statistics.
Stage Two: Coursework
The Ph.D. in Data Science and Analytics requires 78 total credit hours spread over four years of study. Example Program of Study:
- CS 8265 - Big Data Analytics
- CS 8267 - Machine Learning
- MATH 8010 - Theory of Linear Models (optional)
- MATH 8020 - Graph Theory
- MATH 8030 - Applied Discrete and Combinatorial Mathematics
- STAT 8240 - Data Mining I
- STAT 8250 - Data Mining II
- Comprehensive Exam
- 21 credit hours of electives/concentration
Students take up to 9 credit hours of 6000- or 7000-level courses in DS, STAT, or CS with permission of the program director. Students take any 8000- or 9000-level course in DS, STAT, MATH, CS or IT, or the HHS courses in the mHealth concentration.
- at least 15 credit hours in CS courses at 8000 or 9000 levels (except CS 9900)
- at least 15 credit hours in STAT courses at 8000 or 9000 levels
- HHS 8000 - Introduction to mHealth
- HHS 8010 - Ethical Issues in mHealth, Healthcare and Human Subjects Research
- STAT 8235 - Advanced Longitudinal Data Analysis
- HHS 8050 - Advanced Research in mHealth
- HHS 8020 - mHealth Applications or HHS 8030 - Advanced Special Topics in mHealth
- Develop Dissertation Research Proposal
- DS 9700 Doctoral Internship/Research Lab
- DS 9900 Dissertation
- Dissertation Proposal Defense
- DS 9900 DissertationFinal Dissertation Defense
Stage Three: Project Engagement and Research/Dissertation
Relevant, interdisciplinary research forms the foundation of the Ph.D. in Data Science and Analytics. While students are encouraged to engage in research from their first semester, the last two years of the program are structured to help students transition into becoming independent, lead researchers. In this last stage of the program, students will work with research faculty, including their advisor, in one of our data science research labs.
Program Student Learning Outcomes
At the end of the program, students will be able to:
- Demonstrate their understanding of the research process
- Demonstrate mastery of core concepts relevant to three key areas in mathematics, statistics and computer science
- Develop themselves as professionals prepared for work as a doctoral-educated individual beyond graduation
Admission Requirements and Application
Frequently Asked Questions (FAQ)
How long will the program take?
How much does the program cost?
Who would be successful in the program?
Where do these graduates work after graduation?
What are the publication/research requirements?
What did Science Doctoral Students Study?
- Applied Computer Science
- Applied Economics and Statistics
- Applied Statistics
- Applied Mathematics
- Bioinformatics
- Business Analytics
- Chemical Biology
- Computer Science
- Data Science
- Forecasting & Strategic Management
- Integrative Biology
- Public Admin in Economic Policy Mgmt
- Mathematics
- Mechanical Engineering
- Software Engineering
What is the Project Engagement requirement?
Can I pursue the program part- time while I am working full-time?
Can I live on campus?
Are the courses online?
Do I have to have a masters degree to apply?
Where did Data Doctoral Students Study?
- Ajou University, South Korea
- Albert-Ludwigs University of Freiburg
- Auburn University
- Bowling Green State University
- Clemson University
- Columbia University
- Columbus State University
- Florida State University
- Georgia Southern University
- Georgia State
- Georgia Tech
- Iran University of Science and Technology
- Kennesaw State University
- Marshall University
- Michigan State University
- Murray State University
- North Carolina State University
- St. Petersburg State University, Russia
- University of KwaZulu-Natal, South Africa
- University of Michigan
- University of North Carolina
- University of Toledo
Ph.D. in Data Science and Analytics Student Cohorts
2024 - 2025
Sharanya Dv
Bachelor's Degree: Physics, Computer Science and Mathematics, St. Aloysius College, Mangalore, India
Master's Degree: Data Science, VIT-AP University, Amaravati, Andhra Pradesh, India
Work History: Data Modernization Team Intern, Google Cloud Partner, Niveus Solutions Pvt. Ltd.
Professional Objective: My goal is to contribute effectively to data-driven decision-making processes and to continuously develop my expertise in the ever-evolving field of data science.
Charles Fanning
Bachelor's Degree: Mathematics, Lewis University
Master's Degree: Data Science from Lewis University
Professional Objective: to make meaningful contributions to a wide breadth of interdisciplinary fields through the medium of data science, both in academia and industry. Right now, I am interested in the applications of deep learning on medical imaging data across various modalities and in topological data analysis.
Mohsin Md Abdul Karim
Bachelor's Degree: Mathematics, Jahangirnagar University, Dhaka, Bangladesh
Master's Degrees: Mathematics, Jahangirnagar University, Dhaka, Bangladesh; Mathematics, Eastern Illinois University; Mathematics, University of Louisiana at Lafayette
Work History: Export Officer, Jamuna Bank Ltd., Dhaka, Bangladesh; Business Intelligence Team, Nagad Ltd., Dhaka, Bangladesh
Professional Objective: Create a distinct value for myself in an organization so that I can be treated as an asset to them.
Faruk Muritala
Bachelor's Degree: Mathematics, Federal University of Technology, Minna, Niger State Nigeria
Master's Degrees: Mathematics, Kwara State University, Malete, Nigeria; Data Science and Analytics, Kennesaw State University
Work History:
- Graduate Research Assistant and Teacher of Record, Kennesaw State University
- Mathematics Instructor, Al-Ihsan Group of School, Offa Kwara Nigeria
- Data Entry Officer, National Examination Council (NECo), Niger State Nigeria
Courses Taught: Introduction to Data Science
Publications:
- Muritala, F., Olayiwola, R.O., Oyedeji, A.A., Akande, S.O. (2021). “ Mathematical Modeling of Heat Transfer in Micro-channels ”. Journal of Science, Technology, Mathematics, and Education (JOSTMED), 17(3), September 2021.
- Muritala, F. (2022). K-Step Block Hybrid Method for Numerical Solution of Fourth Order Ordinary Differential Equations (Accessed ProQuest). Kwara State University, Malete, Nigeria.
- Muritala, F., Kolawole, M.K., Oyedeji A.A., Lawal, J.O., Alaje A.I., “ Development of an Order (K+3) Block-Hybrid Linear Multistep Method for Direct Solution of General Second Order Initial Value Problems ”, UNIOSUN Journal of Engineering and Environmental Sciences. Vol. 4 No. 2. Sept. 2022. DOI: 10.36108/ujees/2202.40.0230.
- Muritala F., Jimoh A.K., Ogunniran M.O., Oyedeji A.A., Lawal J.O., “ Coherent Hybrid Block Method for Approximating Fourth-Order Ordinary Differential Equation”, Journal of Amasya University the Institute of Sciences and Technology 2023, DOI: 10.54559/jauist.1262994.
- Lawal J., Zhiri A., Muritala F., Ibrahim R., Lukonde A., “Mathematical Modeling for Mycobacterium Tuberculosis” Journal of Balkan Science and Technology 2024. DOI: 10.55848/jbst.2024.41
- Austin. R.B., Muritala F., “A Nonparametric Process Capability Index for Multiple Stream Processes”. 2024 Joint Statistical Meeting Conference Paper, August 2024, Portland, Oregon.
Award: J. Stephen and Jennifer Lewis Priestley Doctoral Endowed Scholarship, Kennesaw State University. August 2024.
Professional Objective: to utilize my mathematics, data science, and educational skills to become a leading data scientist and researcher and make a positive impact. I am open to exploring opportunities in academia and industry and eager to learn, relearn, and grow in a dynamic research environment.
Joseph Richardson
Bachelor's Degree: Actuarial Science (Statistics), University of West GA
Master's Degree: Analytics, Georgia Tech
Professional Objective: I aim to teach and conduct research at an academic institution while also consulting privately.
David Stabler
Bachelor's Degree: Computer Science, Southern Polytechnic State University
Master's Degree: Computer Science, Southern Polytechnic State University/Kennesaw State University
Work History: Four decades of IT, currently in the Research Division of the Federal Reserve Bank of Atlanta
Professional Objective: prepare to be a more effective professor
Benjamin Watson
Bachelor's Degree: Mathematics, Morehouse College
Master's Degrees: Mathematics Education, Georgia State University; Data Science and Analytics, Kennesaw State University (in progress)
- Limited Term Instructor, Kennesaw State University
- Reporting Business Analyst, Northeast Georgia Health System
- Virtual Mathematics and Computer Science Instructor, Imagine Learning
- Mathematics Instructor, Dekalb County School District
Professional Objective: I am seeking to apply combinatorial data analysis to drive innovation in healthcare through patient subtyping, drug discovery, and generative AI. I am also committed to advancing data science research and contributing to academic instruction.
Qiuyuan Zhang
Bachelor's Degree: Electronic Information Engineering, Xidian University, China
Master's Degree: Data Science, Georgia State University
Work History: Graduate Research Assistant, Georgia State University
Professional Objective: to evolve into a research-oriented professional contributing significantly to academia or industry
Venkata Abhiram Chitty
Bachelor's Degree: Mathematics, Statistics and Computer Science, Osmania University, Telangana, India
Master's Degree: Data Science, VIT-AP University, Amaravati, Andhra Pradesh, India
Professional Objective: To apply my Data Science skills in public health domain and help the society
Caleb Greski
Bachelor's Degree:
Master's Degree:
Courses Taught:
Publications:
Professional Objective:
Bachelor's Degree: Civil Engineering, Huazhong University of Science and Technology, China
Master's Degree: Business Analytics, Syracuse University
Work History:
- Credit Modeling Analyst, Agricultural Development Bank of China
- Research Assistant, Changjiang Securities
- Graduate Assistant, Syracuse University
Courses Taught: Calculus I, Marketing Analytics, Data Mining
Awards: Merit-Based Scholarship, Syracuse University
Professional Objective: To secure a challenging position in a reputable organization to expand myself within the field of Artificial Intelligence.
Kausar Perveen
Bachelor's Degree: Bachelor in Engineering Software Engineering, National University of Sciences and Technology, Pakistan
Master's Degree: Masters in Data Science, Illinois Institute of Technology, Chicago
- Fullstack Developer at ItRunsInMyFamily, Charleston, South Carolina
- Software Engineer II , Xgrid Pakistan
- Senior Research Coordinator, Aga Khan University Pakistan
- Machine Learning Engineer, Agoda Thailand
Publications: National cervical cancer burden estimation through systematic review and analysis of publicly available data in Pakistan
Service and Awards:
- Fulbright Scholarship award for Master’s degree in Data Science
- Aga Khan Education Service Pakistan, merit cumulative need based scholarship for Bachelors in Software Engineering
Professional Objective: My main motivation behind getting a degree in Data Science is to receive and perform qualified research experience in Data Science and public health
Bachelor's Degree: Statistics, University of Dhaka, Dhaka, Bangladesh
Master's Degree: Mathematics (Statistics Concentration), University of Toledo, Ohio
- Analytics Engineer Intern, Cooper Smith, Toledo, Ohio
- Business AnalystAkij Food and Beverage Limited, Dhaka, Bangladesh
Courses Taught: Introduction to Statistics
Professional Objective: I am interested to work as a data scientist in the industry
Ayomide Isaac Afolabi
Bachelor's Degree: Chemical Engineering, Ladoke Akintola University of Technology
Master's Degree: Data Science, Auburn University
Work History: Graduate Research Assistant, Auburn University
Courses Taught: Python Programming
Publications: Larson EA, Afolabi A, Zheng J, Ojeda AS. Sterols and sterol ratios to trace fecal contamination: pitfalls and potential solutions. Environ Sci Pollut Res Int. 2022 Jul;29(35):53395-53402. doi: 10.1007/s11356-022-19611-2 . Epub 2022 Mar 14. PMID: 35287190
Professional Objective: To work as a research data scientist in the industry
Dinesh Chowdary Attota
Bachelor's Degree: Computer Science, Jawaharlal Nehru Technological University Kakinada (JNTUK), India
Master's Degree: Computer Science, Kennesaw State University
Work History: Associate Consultant, SL Techknow Solutions India Pvt Ltd, India 2018 - 2020
- An Ensemble Multi-View Federated Learning Intrusion Detection for IoT
- A Conversational Recommender System for Exploring Pedagogical Design Patterns
- An Ensembled Method For Diabetic Retinopathy Classification using Transfer Learning
Professional Objective: I'd like to be a faculty member at a university so that I can continue to do research.
Nzubechukwu Ohalete
Bachelor's Degree: Mathematics,University of Nigeria, Nsukka
Master's Degree: Applied Statistics, Bowling Green State University
Work History: Graduate Assistant/Data Analyst, Federal University of Technology, Owerri - Mathematics Department
Courses Taught: Elementary Mathematics, Mathematical Methods
Awards: James A. Sullivan Outstanding Graduate Student Award, Applied Statistics and Operations Research Department, April 2022
Professional Objective: To use data science techniques to solve problems which makes our lives better and also makes our world a better place
Ryan Parker
Bachelor's Degree: Microbiology, University of Tennessee - Knoxville
Master's Degree: Integrative Biology, Kennesaw State University
Work History: Instructor of Biology, Kennesaw State University
Courses Taught: Nursing Microbiology Lectures and Labs, Introductory Biology Labs, Biotechnology Lectures and Labs
- Parker RA, Gabriel KT, Graham K, Cornelison CT. Validation of methylene blue viability staining with the emerging pathogen Candida auris. J Microbiol Methods. 2020 Feb;169:105829. doi: 10.1016/j.mimet.2019.105829 . Epub 2019 Dec 27. PMID: 31884053.
- Parker RA, Gabriel KT, Graham KD, Butts BK, Cornelison CT. Antifungal Activity of Select Essential Oils against Candida auris and Their Interactions with Antifungal Drugs. Pathogens. 2022 Jul 22;11(8):821. doi: 10.3390/pathogens11080821 . PMID: 35894044; PMCID: PMC9331469.
Awards: Best Graduate Poster: Symposium for Student Scholars hosted by Kennesaw State University (Fall 2018) for Poster: "Antifungal Activity of Select Essential Oils and Synergism with Antifungal Drugs against Candida auris"
Professional Objective : To apply Data Science techniques to large scientific datasets, such as genomic and astronomical data, and to help bridge the gap between disparate fields by working in an interdisciplinary space to offer integrative and data-driven solutions to the increasingly complex problems presented to the traditional Sciences.
Askhat Yktybaev
Bachelor's Degree: Forecasting and Strategic Management, Saint-Petersburg State University of Economics and Finance, Russia
Master's Degree: Forecasting and Strategic Management, Saint-Petersburg State University of Economics and Finance, Russia; Public Administration in Economic Policy Management, School of International and Public Affairs, Columbia University
Work History:
- from Data Analyst to Head of Research Unit, Central Bank of Kyrgyz Republic
- Sr. Data Scientist in OJSC, Aiyl Bank, Kyrgyzstan
- Consultant, The World Bank, Washington D.C.
Courses Taught: Financial Programing in the Central Bank, Monetary Policy Transmission Mechanism
Service and Awards: Winner of the Joint Japan/World Bank Graduate Scholarship Program, National Bank Silver Medal for Best Forecast
Professional Objective: I want to found a successful Fintech startup one day.
Sanad Biswas
Bachelor's Degree: Statistics, Biostatistics and Informatics, University of Dhaka, Bangladesh
Master's Degree: Statistics, University of Toledo, OH
- Research Assistant: US Army Research Lab, Kennesaw State University
- Consultant, Statistical Consulting Service, University of Toledo
- Graduate Teaching Assistant, University of Toledo
Courses Taught: Calculus and Business Calculus, Facilitated students’ study of Statistics courses at the University of Toledo.
Professional Objective: To work as a researcher in the industry or as a faculty. I am primarily interested in the application of machine learning in different fields.
Mallika Boyapati
Bachelor's Degree: Electronics and Computer Engineering, K L University, India
Master's Degree: Applied Computer Science, Columbus State University
- T-Mobile, Seattle, WA, USA: Sr. Data analyst, 2018- 2021
- UITS, Columbus State University, Columbus, GA, USA: Data Analyst -Graduate assistant, 2016-2018
- Menlo Technologies, India: Jr. Data Analyst, Intern, 2014- 2016
Courses Taught: DATA 4310 - Statistical Data Mining
Publications:
- Anti-Phishing Approaches in the Era of the Internet of Things. In: Pathan, AS.K. (eds) Towards a Wireless Connected World: Achievements and New Technologies. Springer, Cham - https://doi.org/10.1007/978-3-031-04321-5_3
- An empirical analysis of image augmentation against model inversion attack in federated learning - https://doi.org/10.1007/s10586-022-03596-1
- M. Boyapati and R. Aygun, "Phishing Web Page Detection using Web Scraping," SoutheastCon 2023, Orlando, FL, USA, 2023, pp. 167-174, doi: 10.1109/SoutheastCon51012.2023.10115148.
- M. Boyapati and R. Aygun, "Default Prediction on Commercial Credit Big Data Using Graph-based Variable Clustering," 2023 IEEE 17th International Conference on Semantic Computing (ICSC), Laguna Hills, CA, USA, 2023, pp. 139-142, doi: 10.1109/ICSC56153.2023.00029.
- Boyapati, M., Aygun, R. (2023) Explainable Machine Learning for Default Prediction on Commercial Credit Big Data Using Graph-based Variable Clustering. In Encyclopedia with Semantic Computing and Robotic Intelligence VOL. 0 https://doi.org/10.1142/S2529737623500119
- Winners of Dataiku March Madness Bracket-thon, 2021 in predicting the NBA bracket
- Winners of 2021 Analytics Day Ph.D. level research poster presentation
Professional Objective: To leverage strong analytical and technical abilities to research and develop effective data models, visualize data, and uncover insights that makes an impact in field of data science
Nina Grundlingh
Bachelor's Degree: Applied Mathematics and Statistics, University of KwaZulu-Natal, South Africa
Master's Degree: Statistics, University of KwaZulu-Natal, South Africa
Courses Taught: Introduction to Statistics, University of KwaZulu-Natal
- Grundlingh, N., Zewotir, T., Roberts, D. & Manda, S. Modelling diabetes in South Africa. The 61st conference of the South African Statistical Association, 27-29 November 2019, Nelson Mandela University, South Africa.
- Grundlingh, N., Zewotir, T., Roberts, D. & Manda, S. Modelling diabetes in the South African population. College of Agriculture, Engineering and Science Postgraduate Research & Innovation Symposium 2019, 17 October 2019, University of KwaZulu-Natal, Westville, South Africa (the award for best MSc presentation was also received for this).
- Grundlingh, N., Zewotir, T., Roberts, D. & Manda, S. Modelling risk factors of diabetes and pre-diabetes in South Africa. IBS SUSAN-SSACAB 2019 Conference, 8-11 September 2019, Cape Town, South Africa.
- University of KwaZulu-Natal Postgraduate Research & Innovation Symposium 2019 – Best Masters oral presentation
- South African Statistical Association Honours Project Competition 2018/2019 – 2nd place and special prize for best use of SAS
Professional Objective: To work in a teaching position – sharing how data science can be applied to different fields and the positive impact it could have. I would like to use my theological background and passion to bring insight, clarity, and wisdom to data science problems.
Namazbai Ishmakhametov
Bachelor's Degree: Specialist in Mathematical Methods in Economics, Kyrgyz-Russian Slavic University
Master's Degree: Analytics, Institute for Advanced Analytics at North Carolina State University
- Expert at the Centre for Economic Research, National bank of the Kyrgyz Republic
- Consultant in World Bank project dedicated to strengthening the regulatory practices in Kyrgyz Republic
- Consultant at Deloitte Consulting LLP, Science Based Services group, Analytics & Cognitive offering
- Macroeconomic modeling expert in the Economic Department, National bank of the Kyrgyz Republic
Courses Taught: Introductory statistics and econometrics (cross-sections, times series and panels) lecturer at Ata-Turk Alatoo International University, Kyrgyzstan
- Ishmakhametov Namazbai, Abdygulov Tolkunbek, Jenish Nurbek. 2020. “ Impact of 2014-2015 shocks on economic behavior of the households in the Kyrgyz Republic ". Working Paper of the National Bank of the Kyrgyz Republic
- Sherrill W. Hayes, Jennifer L. Priestley, Namazbai Ishmakhametov, Herman E. Ray. 2020. “ I’m not Working from Home, I’m Living at Work ”: Perceived Stress and Work-Related Burnout before and during COVID-19”. PsyArxiv Preprints
- Ishmakhametov Namazbai, Arykov Ruslan. 2016. “ Credit Risk Model on the Example of the Commercial Banks of the Kyrgyz Republic ”. Working Paper of the National Bank of the Kyrgyz Republic
- Namazbai Ishmakhametov, Anvar Muratkhanov.2015. “Modeling strategy of the Bank of the Kyrgyz Republic”. National bank of Poland – Swiss National bank joint seminar. Zurich, Switzerland
Professional Objective: To apply my quantitative skills in the field of biotech either in corporate or government sector
Symon Kimitei
Bachelor's Degrees: Mathematics, Kennesaw State University, and Computer Science, Kennesaw State University
Master's Degree: Mathematics (Scientific Computing Concentration), Georgia State University
Work History: Senior Lecturer and Math Department Coordinator of Supplemental Instruction, Kennesaw State University
Courses Taught: Calculus 1, Precalculus, Applied Calculus & College Algebra
- Haskin, S., Kimitei, S., Chowdhury, M., Rahman, F., Longitudinal Predictive Curves of Health-Risk Factors for American Adolescent Girls. Journal of Adolescent Health. JAH-2021-00601R1
- Symon K Kimitei, Algorithms for Toeplitz Matrices with Applications to Image Deblurring . 2008. Georgia State University, Masters thesis. ScholarWorks
Poster Presentations:
- Kimitei, Symon & Sammie Haskin. "Nadaraya-Watson Kernel Regression Longitudinal Analysis of Healthcare Risk Factors of African American and Caucasian American Girls." Kennesaw State University R Day Presentation. 11 Nov. 2019. Poster presentation.
- Kimitei, Symon. " Social Network Analysis in Supreme Court Case Rulings by Precedence Using SAS Optgraph/Python." 23rd Annual Symposium of Scholars. Kennesaw State University. 19 April. 2018. Poster presentation.
Professional Objective: As a Ph.D. student in Analytics & Data Science, I hope to gain skills in the program that will propel me into a Data Scientist / Machine Learning Engineer with a specialization in the design and implementation of deep learning & machine learning algorithms.
Jitendra Sai Kota
Bachelor's Degree: Computer Science & Engineering, Amrita Vishwa Vidyapeetham, India
Master's Degree: Computer Science, Florida State University
Work History: Teaching Assistant Professor in Computer Science at an Engineering College in India
Courses Taught: Problem Solving & Program Design through C, Artificial Intelligence, Data Mining
Publications: Kota, Jitendra Sai, Vayelapelli, Mamatha. 2020. "Predicting the Outcome of a T20 Cricket Game Based on the Players' Abilities to Perform Under Pressure". IEIE Transactions on Smart Processing and Computing 9(3):230-237. DOI: 10.5573/IEIESPC.2020.9.3.230
Professional Objective: to work in Data Science in a Corporate Environment
ResearchGate
Catrice Taylor
Bachelor's Degree: Economics, Clemson University
Master's Degrees: Applied Economics and Statistics, Clemson University, and Applied Statistics, Kennesaw State University
Professional Objective: To work as an industry data scientist in a corporate environment
Sahar Yarmohammadtoosky
Bachelor's Degree: Applied Mathematics, Sheikh Bahaei University, Isfahan, Iran
Master's Degree: Applied Mathematics, Iran University of Science & Technology, Tehran, Iran
Courses Taught: Numerical Analysis and Linear Algebra, Iran University of Science & Technology
Publications: Noah, G., Sahar, Y., Anthony P. & Hung, C.C. "ISODS: An ISODATA-Based Initial Centroid Algorithm". Accepted to: 10th International Conference on Information, March 6 - 8, 2021, Hosei University, Tokyo, Japan
Professional Objective: My goal is to become a competent Data Science specialist capable of using my skills to bring meaning to data, getting a faculty position at a university
Martin Brown
Graduation Date: Spring 2024
Dissertation: A Holistic and Collaborative Behavioral Health Detection Framework Using Sensitive Police Narratives
Dissertation Advisors: Dr. Dominic Thomas and Dr. Md Abdullah Al Hafiz Khan
Inchan Hwang
Graduation Date: Summer 2024
Dissertation: Next-Generation Medical Imaging Dataset Management Leveraging Deep Learning Frameworks in Breast Cancer Screening
Dissertation Advisor: Dr. MinJae Woo
Current Position: Assistant Professor of Cybersecurity, Montreat College
Duleep Prasanna Rathgamage Don
Bachelor's degree: Physics and Mathematics, The Open University of Sri Lanka
Master's degree: Mathematics, Georgia Southern University
- Graduate Teaching Assistant, Georgia Southern University, 2016 - 2018
- Graduate Teaching Assistant, University of Wyoming, 2019 - 2020
Courses Taught: Trigonometry, and Calculus I & II
Publications/Presentations:
- Don, R. D. and Iacob, I. E., ‘DCSVM: Fast Multi-class Classification using Support Vector Machines’, International Journal of Machine Learning and Cybernetics .
- Rathgamage Don, D., Iacob, E., ‘Divide and Conquer Support Vector Machine for Multiclass Classification’, Research Symposium (2018), Georgia Southern University.
- Rathgamage Don, D., Iacob, E., ‘Multiclass Classification using Support Vector Machines’, MAA Southeastern Section Meeting (2018), Clemson University.
Professional Objective: To work in big data analytics, and research and development of machine learning in engineering, and medicine
Linglin Zhang
Graduation Date: Summer 2024
Dissertation: Innovative Approaches for Identifying and Reducing Disparity in Machine Learning Model Performance – Bridging the Gap in Binary Classification for Health Informatics
Current Position: Data and Analytics RDP Associate, Equifax
Yihong Zhang
Bachelor’s Degree: Psychology Mathematics Interdisciplinary, Chatham University
Master’s Degree: Mathematics and Statistics Allied with Computer Science, Georgia State University
- Research Assistant - Collaborated with biomedical department to analyze and visualize microarray gene expression data, Facilitated in data pre-processing and machine learning modeling of clinical liver cirrhosis image data, Assisted in feature engineering of image analysis in deep learning for pathology diagnosis with Mayo Clinic’s pilot project.
- Graduate Lab Assistant - Tutored students with statistics and math subjects.
Professional Objective: Make better use of data in healthcare and bioinformatic industry as a data scientist.
2019 - 2020
Trent Geisler
Graduation Date: Summer 2022
Dissertation: Novel Instance-Level Weighted Loss Function for Imbalanced Learning
Dissertation Advisor: Dr. Herman Ray
Current Position: Assistant Professor, Department of Systems Engineering, United States Military Academy West Point
Srivatsa Mallapragada
Dissertation: Multi-Modality Transformer for E-Commerce: Inferring User Purchase Intention to Bridge the Query-Product Gap
Dissertation Advisor: Dr. Ying Xie
Current Position: Data Scientist, Rue Gilt Groupe (RGG)
Sudhashree Sayenju
Graduation Date: Spring 2023
Dissertation: Quantification and Mitigation of Various Types of Biases in Deep NLP Models
Dissertation Advisor: Dr. Ramazan Aygun
Current Position: Lecturer, Data Science and Analytics, Kennesaw State University
Christina Stradwick
Bachelor’s Degree: Music Performance and Mathematics, Marshall University
Master’s Degree: Mathematics with Emphasis in Statistics, Marshall University
Courses Taught: Prep for College Algebra at Marshall University
Selected Presentations:
- Stradwick, C. Exploring the Variance of the Sample Variance. Spring Meeting of the Mathematical Association of America Ohio Section, University of Akron, 2019.
- Stradwick, C., Vaughn, L., Hanan Khan, A. Data Modeling on Insurance Beneficiary Dataset. College of Science Research Expo 2018, Marshall University, 2018. Poster Presentation.
- Stradwick, C. Disease modeling on networks. The 13th Annual UNCG Regional Mathematics and Statistics Conference, University of North Carolina at Greensboro, 2017. Poster Presentation.
Professional Objectives: To work as a researcher in industry or in a laboratory setting. I would like to use my background in mathematics and statistics to develop novel solutions that address limitations in current data science techniques and to apply known data science methods to solve real-world problems.
2018 - 2019
Md Shafiul Alam
Graduation Date: Fall 2022
Dissertation: Appley: App roximate Shap ley Values for Model Explainability in Linear Time
Dissertation Advisor: Dr. Ying Xie
Current Position: AI Framework Engineer, Intel Corporation
Jonathan Boardman
Dissertation: Ethical Analytics: A Framework for a Practically-Oriented Sub-Discipline of AI Ethics
Current Position: Data Scientist, Equifax
Tejaswini Mallavarapu
Bachelor’s Degree: Pharmacy, Acharya Nagarjuna University, India
Master’s Degree: Computer Science, Kennesaw State University
- Graduate Research Assistant, Kennesaw State University, 2017-present
- Research Analyst, Divis Laboratories, 2013-2014
Selected Publications:
- T. Mallavarapu, Y. Kim, J.H. Oh, and M. Kang, "R-PathCluster: Identifying Cancer Subtype of Glioblastoma Multiforme Using Pathway-Based Restricted Boltzmann Machine," Proceedings of IEEE International Conference on Bioinformatics & Biomedicine (IEEE BIBM 2017), International Workshop on Deep Learning in Bioinformatics, Biomedicine, and Healthcare Informatics, Accepted, 2017.
- M.R. Shivalingam, K.S.G. Arul Kumaran, D. Jeslin, Ch. MadhusudhanaRao, M. Tejaswini, "Design and Evaluation of Binding Properties of Cassia roxburghii Seed Galacto mannan and Moringa oleifera Gum in the Formulation of Paracetamol Tablets," Research Journal of Pharmacy and Technology(RJPT). 3(1): Jan.-Mar. 2010; Page 254-256.
- M.R. Shivalingam, K.S.G. Arul Kumaran, D. Jeslin, Y.V. Kishore Reddy, M. Tejaswini, Ch. MadhusudhanaRao, V. Tejopavan, "Cassia roxburghii Seed Galacto manna— a potential binding agent in the tablet formulation," Journal of Biomedical Science and Research(JBSR), Vol 2 (1), 2010, 18-22
Professional Objective: To be a data scientist in the field of health care or bioinformatics where I can leverage my analytical skills and knowledge towards the advancement of the research field.
Seema Sangari
Dissertation: Debiasing Cyber Incidents - Correcting for Reporting Delays and Under-reporting
Dissertation Advisor: Dr. Michael Whitman
Current Position: Principal Modeler, HSB
Srivarna Settisara Janney
Bachelor’s Degree: Mechanical Engineering, Visveswaraiah Technological University, India
- Graduate Research Assistant, Kennesaw State University, 2016-2018
- Senior Software Engineer, Torry Harris Business Solutions (THBS), United Kingdom, 2010-2012 and India, 2012-2014
- Software Engineer, Torry Harris Business Solutions (THBS), India, 2007-2010
Selected Publications/Presentations:
- S.S. Janney, S. Chakravarty, “New Algorithms for CS – MRI: WTWTS, DWTS, WDWTS”, One-page research paper, 40th International Conference of IEEE Engineering in Medicine and Biology Society (IEEE EMBC), Jul 2018
- Master thesis presented at Southeast Symposium on Contemporary Engineering Topics (SSCET), UAH Engineering Forum, Alabama, Aug 2018
- Master thesis poster is accepted to be presented at Biomedical Engineering Society (BMES) 2018 Annual Meeting, Oct 2018
- Submitted draft copy for book chapter contribution on “Bioelectronics and Medical Devices”, Elsevier Publisher, May 2018
- Showcased 3MT, Georgia Council of Graduate Schools (GCGS), Apr 2018
- Master thesis presented in workshop for “Medical Signal and Image Processing” at Department of Biotechnology & Medical Engineering, NIT Rourkella, Feb 2018
- S.S. Janney, I. Karim, J. Yang, C.C Hung, Y. Wang, “Monitoring and Assessing Traffic Safety Using Live Video Images”, GDOT project showcase, 4th Annual Transportation Research Expo, Sept 2016
- 1st Place Winner, Graduate Research Project, C-day Poster Presentation, Kennesaw State University, Spring 2018
- People's Choice Award, 3 Minute Thesis (3MT), Apr 2018
- CCSE Dean’s 4.0 Club, Jan 2018
- 3rd Place Winner, Hackathon 2017 - HPCC Systems Big Data
- Foundation of Computer Science, Certified by Kennesaw State University, Jun 2016
- Fundamental of RESTful API Design, Certified by APIGEE, Nov 2014
- Member of HandsOnAtlanta, since 2014
- SOA Associate, Certified by IBM, Jun 2008
Professional Objective: I would like to be a researcher in Data Science and Analytics in medical imaging technologies contributing to advancements that would help medical and healthcare professionals provide value-based and personalized health care. I would like to look at career opportunities in industry and academia that fuel my interest in research.
2017 - 2018
Andrew M. Henshaw
Bachelor’s Degree: Electrical Engineering, Georgia Tech
Master’s Degree: Electrical Engineering, Georgia Tech
Master’s Degree: Business Administration, Georgia State University
- Georgia Tech Research Institute, Sr. Research Engineer, 2001-
- APower Solutions, Vice President, 1999-2001
- Georgia Tech Research Institute, Research Engineer II, 1990-1999
- Georgia Tech, School of Electrical Engineering, Research Engineer I, 1986-1990
Courses Taught: Software-Defined Radio Development with GNU Radio: Theory and Application, Georgia Tech Professional Education
Selected Publications/Presentations: Python Cookbook, Vol 1, 2002, “Sorting Objects Using SQL’s ORDER BY Syntax”
Triangulation Clustering
Lyrical: Complexity Analysis of Pop Song Lyrics
Service and Awards: International Test and Evaluation Association (ITEA) Atlanta Chapter, President, 1995
Graduation Date: Summer 2021
Dissertation: Incentive-based Data Sharing and Exchanging Mechanism Design
Dissertation Advisor: Dr. Meng Han
Current Position: Assistant Professor, Saint Joseph's University - Erivan K. Haub School of Business
Mohammad Masum
Dissertation: Integrated Machine Learning Approaches to Improve Classification Performance and Feature Extraction Process for EEG Dataset
Dissertation Advisor: Dr. Hossain Shahriar
Current Position: Assistant Professor, San Jose State University
Lauren Staples
Graduation Date: Fall 2021
Dissertation: A Distance-Based Clustering Framework for Categorical Time Series: A Case Study in the Episodes of Care Healthcare Delivery System
Dissertation Advisor: Dr. Joseph DeMaio
Current Position: Senior Data Scientist, Microsoft
2016 - 2017
Shashank Hebbar
Dissertation: Tree-BERT - Advanced Representation Learning for Relation Extraction
Current Position: Data Scientist, Credigy
Jessica Rudd
Graduation Date: Summer 2020
Dissertation: Quantitatively Motivated Model Development Framework: Downstream Analysis Effects of Normalization Strategies
Dissertation Advisor: Dr. Herman Ray
Current Position: Senior Data Engineer, Intuit Mailchimp
Graduation Date: Spring 2020
Dissertation: Data-driven Investment Decisions in P2P Lending: Strategies of Integrating Credit Scoring and Profit Scoring
Dissertation Advisor: Dr. Sherry NI
Current Position: Applied Scientist II, Amazon
Dissertation: A Novel Penalized Log-likelihood Function for Class Imbalance Problem
Current Position: Data Scientist/Research Engineer, Hewlett Packard Enterprise
Dissertation: Attack and Defense in Security Analytics
Dissertation Advisor: Dr. Selena He
Current Position: NLP Data Scientist, NBME
2015 - 2016
Edwin Baidoo
Graduation Date: Spring 2020
Dissertation: A Credit Analysis of the Unbanked and Underbanked: An Argument for Alternative Data
Dissertation Advisor: Dr. Stefano Mazzotta
Current Position: Assistant Professor, Business Analytics, Tennessee Technological University
Bogdan Gadidov
Graduation Date: Summer 2019
Dissertation: One- and Two-Step Estimation of Time Variant Parameters and Nonparametric Quantiles
Dissertation Advisor: Dr. Mohammed Chowdhury
Current Position: Data Scientist, Variant
Dissertation: Biologically Interpretable, Integrative Deep Learning for Cancer Survival Analysis
Dissertation Advisor: Dr. Mingon Kang
Current Position: Assistant Professor, Chinese Academy of Medical Sciences, Peking Union Medical College
Graduation Date: Spring 2019
Dissertation: Deep Embedding Kernel
Current Position: Assistant Professor, Information Technology, Kennesaw State University
Bob Venderheyden
Graduation Date: Fall 2019
Dissertation: Ordinal Hyperplane Loss
Dissertation Advisor: Dr. Ying Xie
Current Position: Principal Data Scientist, Microsoft
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Statistics & Data Science
Dietrich college of humanities and social sciences, ph.d. programs, our ph.d. programs enable students to pursue a wide range of research opportunities, including constructing and implementing advanced methods of data analysis to address crucial cross-disciplinary questions, along with developing the fundamental theory that supports these methods..
Unique opportunities for our Ph.D. students include:
- We host four cross-disciplinary joint Ph.D. programs for students who want to specialize in machine learning , public policy , neuroscience , and the link between engineering and policy .
- Our faculty have deep involvement in a range of important, data-rich scientific collaborations, including in the areas of genetics, neuroscience, astronomy, and the social sciences. This allows students to have easy access to both the crucial questions in these fields, and to the data that can provide the answers.
- Students begin work on their Advanced Data Analysis Project in the second semester. This year-long, faculty/student collaboration, distinct from the thesis, provides an immediate intensive research experience.
- Carnegie Mellon is home to the first Machine Learning Department . Many of our faculty maintain joint appointments with this Department and they (and our students) have strong connections to this exciting and growing area of research.
The programs leading to the degree of Doctor of Philosophy in Statistics seek to strike a balance between theoretical and applied statistics. The Ph.D. program prepares students for university teaching and research careers, and for industrial and governmental positions involving research in new statistical methods. Four to five years are usually needed to complete all requirements for the Ph.D. degree.
These pages present the requirements for each of our Ph.D. programs.
The page "Core Ph.D. Requirements" lays out the requirements for all Ph.D. students, while each of the four joint programs are described under the Joint Ph.D. Degrees pages. Our Ph.D. students can also earn a Master of Science in Statistics as an intermediate step towards their ultimate goal.
Joint Ph.D. Programs
Statistics/machine learning, statistics/public policy, statistics/engineering and public policy, statistics/neural computation .
Doctoral Degree Data Sciences Ph.D.
Doctorate education focuses on enabling the student to make original contributions to their respective fields of study.
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The mission of the program is to create scientifically minded and technically proficient professionals with a comprehensive background in the methodological diversity of the data sciences and the intellectual depth to offer influential perspectives to analytical teams across disciplines.
There are two phases of the doctoral program at HU: a learning phase that includes coursework, seminars, research, and fieldwork that contributes to the student’s knowledge in the program of study; and a research phase that focuses on the student’s original research culminating in their final examination. Upon a student’s successful completion of all required course work, defense of the dissertation, and completion of all milestones, the student is awarded the doctoral degree in the program of study.
Program Goals
The Data Sciences Program will produce Ph.D. graduates who will have:
- Applied diverse data science methodologies using a scientific process individually or in teams to provide impactful insights from large sets of data;
- Used effective communications to explain insights from analytical processes on data to diverse audiences; and,
- Grown professionally through self-study, continuing education, and professional development.
Doctorate Program Admissions Process
Doctorate program applicants are encouraged to apply at least six months prior to the start of any semester. This application process allows ample time for an admissions decision and development of an academic schedule. The Admission Committee reviews all documents and will request an interview with the applicant prior to making an admission decision for a limited number of applicants to become resident or non-resident candidates for the degree.
Learn More: Graduate Admissions
“This hot new field promises to revolutionize industries from businesses to government, healthcare to academia.”
– The New York Times
Program Lead
Kayden Jordan Assistant Professor of Social Analytics
View Profile
Full Time Faculty
Kevin Huggins, Ph.D., CISSP
Professor of Computer and Data Science
- 717-901-5100, ext. 1619
- [email protected]
Program Courses
The following courses comprise the 36 semester hours required for the Ph.D. in Data Sciences. Complete 18 semester hours in upper level courses, 6 semester hours of Doctoral Research Seminars and defend dissertation proposal, and complete 12 hours to complete the dissertation process and defend the dissertation.
ANLY 705 – Modeling for Data Science (3 credits)
This course provides a more in depth presentation of the theory behind linear statistical models, segmentation models, and production level modeling. Further emphasis is placed on practical application of these methods when applied to massive data sources and appropriate and accurate reporting of results.
ANLY 710 – Appld Expmntal & Quasi-Expmnt Des (3 credits)
Methods and approaches used for the construction and analysis of experiments and quasi-experiments are presented, including the concepts of the design and analysis of completely randomized, randomized complete block, incomplete block, Latin square, split-plot, repeated measures, factorial and fractional factorial designs will be covered along with methods for proper analysis and interpretation in quasi-experiments.
ANLY 715 – Applied Multivariate Data Analysis (3 credits)
This course provides hands-on experience in understanding when and how to utilize the primary multivariate methods Data Reduction techniques, including Principal Components Analysis and Exploratory and Confirmatory Factor Analyses, ANOVA/MANOVA/MANCOVA, Cluster Analysis, Survival Analysis and Decision Trees.
ANLY 720 – Data Science from an Ethical Perspe (3 credits)
This course introduces the power and pitfalls of handling user information in an ethical manner. The student is offered a historical and current perspective and will gain an understanding of their role in assuring the ethical use of data.
ANLY 725 – Research Seminar in Unstructured (3 credits)
This course follows a research seminar format. Students and faculty develop research proposals, analyses, and reporting in the domain of Unstructured Data. Topics of special interest in Unstructured Data analysis are presented by faculty and students under faculty direction. Topics of special interest vary from semester to semester.
ANLY 730 – Research Seminar in Forecasting (3 credits)
This course follows a research seminar format. Students and faculty develop research proposals, analyses, and reporting in the domain of Forecasting. Topics of special interest in Forecasting Data analysis are presented by faculty and students under faculty direction. Topics of special interest vary from semester to semester.
ANLY 735 – Research Seminar in Machine (3 credits)
This course follows a research seminar format. Students and faculty develop research proposals, analyses, and reporting in the domain of Machine Learning. In addition, topics of special interest in Machine Learning are presented by faculty and students under faculty direction. Topics of special interest vary from semester to semester.
ANLY 740 – Graph Theory (3 credits)
This course introduces standard graph theory, algorithms, and theoretical terminology. Including graphs, trees, paths, cycles, isomorphisms, routing problems, independence, domination, centrality, and data structures for representing large graphs and corresponding algorithms for searching and optimization.
ANLY 745 – Functional Prog Mthds for Data Sci (3 credits)
This course is designed to build on the Functional Programming Methods for Analytics course. The student works to extend programming skills to write the student’s own versions of popular statistical functions using a current programming language.
ANLY 755 – Advanced Topics in Big Data (3 credits)
Topics include the design of advanced algorithms that are scalable to Big Data, high performance computing technologies, supercomputing, grid computing, cloud computing, and Parallel and Distributed Computing, and issues in data warehousing.
ANLY 760 – Doctoral Research Seminar (3 credits)
This seminar provides support to doctoral students within their specific domains of research. Led by the faculty advisor for that domain, the course is designed to provide a forum where faculty and students can come together to discuss, support, and share the experiences of working in research.
ANLY 761 – Research Seminar in Unstructured (3 credits)
ANLY 762 – Research Seminar in Forecasting (3 credits)
This course follows a research seminar format. Students and faculty develop research proposals, analyses, and reporting in the domain of Forecasting. Topics of special interest in Forecasting are presented by faculty and students under faculty direction. Topics of special interest vary from semester to semester.
ANLY 763 – Research Seminar in Machine (3 credits)
This course follows a research seminar format. Students and faculty develop research proposals, analyses, and reporting in the domain of Machine Learning. Topics of special interest in Machine Learning are presented by faculty and students under faculty direction. Topics of special interest vary from semester to semester.
ANLY 799 – Doctorial Studies (6 credits)
Advancement to candidacy is a prerequisite of this course. This is an individual study course for doctoral students. Content to be determined by the student and the student’s Doctoral Committee. May be repeated for credit.
2024–2025 Academic Course Catalogs
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Cornell University does not offer a separate Masters of Science (MS) degree program in the field of Statistics. Applicants interested in obtaining a masters-level degree in statistics should consider applying to Cornell's MPS Program in Applied Statistics.
Choosing a Field of Study
There are many graduate fields of study at Cornell University. The best choice of graduate field in which to pursue a degree depends on your major interests. Statistics is a subject that lies at the interface of theory, applications, and computing. Statisticians must therefore possess a broad spectrum of skills, including expertise in statistical theory, study design, data analysis, probability, computing, and mathematics. Statisticians must also be expert communicators, with the ability to formulate complex research questions in appropriate statistical terms, explain statistical concepts and methods to their collaborators, and assist them in properly communicating their results. If the study of statistics is your major interest then you should seriously consider applying to the Field of Statistics.
There are also several related fields that may fit even better with your interests and career goals. For example, if you are mainly interested in mathematics and computation as they relate to modeling genetics and other biological processes (e.g, protein structure and function, computational neuroscience, biomechanics, population genetics, high throughput genetic scanning), you might consider the Field of Computational Biology . You may wish to consider applying to the Field of Electrical and Computer Engineering if you are interested in the applications of probability and statistics to signal processing, data compression, information theory, and image processing. Those with a background in the social sciences might wish to consider the Field of Industrial and Labor Relations with a major or minor in the subject of Economic and Social Statistics. Strong interest and training in mathematics or probability might lead you to choose the Field of Mathematics . Lastly, if you have a strong mathematics background and an interest in general problem-solving techniques (e.g., optimization and simulation) or applied stochastic processes (e.g., mathematical finance, queuing theory, traffic theory, and inventory theory) you should consider the Field of Operations Research .
Residency Requirements
Students admitted to PhD program must be "in residence" for at least four semesters, although it is generally expected that a PhD will require between 8 and 10 semesters to complete. The chair of your Special Committee awards one residence unit after the satisfactory completion of each semester of full-time study. Fractional units may be awarded for unsatisfactory progress.
Your Advisor and Special Committee
The Director of Graduate Studies is in charge of general issues pertaining to graduate students in the field of Statistics. Upon arrival, a temporary Special Committee is also declared for you, consisting of the Director of Graduate Studies (chair) and two other faculty members in the field of Statistics. This temporary committee shall remain in place until you form your own Special Committee for the purposes of writing your doctoral dissertation. The chair of your Special Committee serves as your primary academic advisor; however, you should always feel free to contact and/or chat with any of the graduate faculty in the field of Statistics.
The formation of a Special Committee for your dissertation research should serve your objective of writing the best possible dissertation. The Graduate School requires that this committee contain at least three members that simultaneously represent a certain combination of subjects and concentrations. The chair of the committee is your principal dissertation advisor and always represents a specified concentration within the subject & field of Statistics. The Graduate School additionally requires PhD students to have at least two minor subjects represented on your special committee. For students in the field of Statistics, these remaining two members must either represent (i) a second concentration within the subject of Statistics, and one external minor subject; or, (ii) two external minor subjects. Each minor advisor must agree to serve on your special committee; as a result, the identification of these minor members should occur at least 6 months prior to your A examination.
Some examples of external minors include Computational Biology, Demography, Computer Science, Economics, Epidemiology, Mathematics, Applied Mathematics and Operations Research. The declaration of an external minor entails selecting (i) a field other than Statistics in which to minor; (ii) a subject & concentration within the specified field; and, (iii) a minor advisor representing this field/subject/concentration that will work with you in setting the minor requirements. Typically, external minors involve gaining knowledge in 3-5 graduate courses in the specified field/subject, though expectations can vary by field and even by the choice of advisor. While any choice of external minor subject is technically acceptable, the requirement that the minor representative serve on your Special Committee strongly suggests that the ideal choice(s) should share some natural connection with your choice of dissertation topic.
The fields, subjects and concentrations represented on your committee must be officially recognized by the Graduate School ; the Degrees, Subjects & Concentrations tab listed under each field of study provides this information. Information on the concentrations available for committee members chosen to represent the subject of Statistics can be found on the Graduate School webpage .
Statistics PhD Travel Support
The Department of Statistics and Data Science has established a fund for professional travel for graduate students. The intent of the Department is to encourage travel that enhances the Statistics community at Cornell by providing funding for graduate students in statistics that will be presenting at conferences. Please review the Graduate Student Travel Award Policy website for more information.
Completion of the PhD Degree
In addition to the specified residency requirements, students must meet all program requirements as outlined in Program Course Requirements and Timetables and Evaluations and Examinations, as well as complete a doctoral dissertation approved by your Special Committee. The target time to PhD completion is between 4 and 5 years; the actual time to completion varies by student.
Students should consult both the Guide to Graduate Study and Code of Legislation of the Graduate Faculty (available at www.gradschool.cornell.edu ) for further information on all academic and procedural matters pertinent to pursuing a graduate degree at Cornell University.
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PhD Program
Wharton’s PhD program in Statistics provides the foundational education that allows students to engage both cutting-edge theory and applied problems. These include problems from a wide variety of fields within Wharton, such as finance, marketing, and public policy, as well as fields across the rest of the University such as biostatistics within the Medical School and computer science within the Engineering School.
Major areas of departmental research include: analysis of observational studies; Bayesian inference, bioinformatics; decision theory; game theory; high dimensional inference; information theory; machine learning; model selection; nonparametric function estimation; and time series analysis.
Students typically have a strong undergraduate background in mathematics. Knowledge of linear algebra and advanced calculus is required, and experience with real analysis is helpful. Although some exposure to undergraduate probability and statistics is expected, skills in mathematics and computer science are more important. Graduates of the department typically take positions in academia, government, financial services, and bio-pharmaceutical industries.
Apply online here .
Department of Statistics and Data Science
The Wharton School, University of Pennsylvania Academic Research Building 265 South 37th Street, 3rd & 4th Floors Philadelphia, PA 19104-1686
Phone: (215) 898-8222
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Data Science Doctoral Program
Program details.
Gain in-demand skills in emerging areas like artificial intelligence, machine learning and language processing in a Ph.D. program designed with input from industry leaders.
An interdisciplinary degree program of the Schaefer School of Engineering and Science and the Stevens School of Business, the data science Ph.D. curriculum drives students to master the bedrock principles, methods and systems for extracting insights from rich data sets. Then, you’ll apply those theories, techniques and applications in practical research alongside Stevens faculty who are working at the forefront of the data science field. Our graduates go on to pursue research careers in academia and secure important positions in industries like business, financial services and life sciences.
The Department of Computer Science offers dynamic opportunities to explore leading-edge research within a close community of faculty mentors. You'll be able to study under a faculty mentor in the area that you find most exciting:
Theoretical underpinnings of data science, including machine learning and artificial intelligence
Applications of data science to financial services
Applications of data science to the life sciences
Areas of Focus
Mathematical and statistical modelling including multivariate analytics, financial time series and dynamic programming techniques
Machine learning and artificial intelligence applications for statistical learning and financial analytics
Computational systems, exploring advanced algorithm design, distributed systems and cloud technologies
Data management at scale, involving a deeper dive into data technologies, mobile systems and data management
The Stevens Advantage: Widen Your Career Options
Learn more about what makes graduate education from Stevens a unique experience:
Graduate Cooperative Education Program : Available with two tracks, your co-op experience can serve as a starting point for a research project or augment your on-campus research with complimentary experience.
International Student Experience : Tap into our expanding worldwide network of research, academic and alumni partners and mentor with our expert faculty in a number of federally-designated STEM degree programs. Optional Practical Training (OPT) or Curricular Practical Training (CPT) is available to gain work experience in your major/field of study.
State-of-the-Art Research Labs and Facilities : Build, tinker and test your designs in Stevens' MakerCenter, Prototype and Object Fabrication Lab, or numerous other research facilities.
Research Opportunities : Renowned faculty, labs and research centers – as well as industry partnerships and funding from leading national agencies – support strategic and interdisciplinary research in engineering and science.
Assistantships and Fellowships: Stevens offers funding to select graduate students in the form of teaching assistantships, research assistantships and fellowships. Limited in number, these highly competitive opportunities are awarded to exceptional candidates based on merit.
Expanded Learning Options : The Schaefer School offers new opportunities for doctoral students to do coursework at universities in the New York City area – and around the world – through our growing list of academic partnerships with other prestigious universities. Learn more about our latest partnerships.
Computer Science Research
The computer science department at Stevens offers you a maximum amount of flexibility to pursue research opportunities in cutting-edge, competitive areas of exploration like secure systems, machine learning, cryptography and visual computing. You’ll work with recognized leaders in the field, gain exposure to top industry labs and learn sought-after principles that will help propel your career. Learn more about research in the Department of Computer Science.
Program Admission Requirements
We welcome applicants with a master’s degree in a technical discipline (such as computer science, business intelligence and analytics, financial analytics, financial engineering or biomedical engineering and chemical biology). However, exceptional applicants with a bachelor’s degree and relevant work experience will also be considered.
Students may begin this Ph.D. program in the fall semester only. Therefore, applications must be submitted by February 1 for admission the following fall. Applicants are generally notified of their admission status around February 15.
Prerequisite courses in calculus, statistics, probability, algebra and database management
Fluency in at least one programming language, like C++ or Java
Transcripts from all post-secondary institutions attended
Two letters of recommendation (academic or professional only; Select Ph.D. programs require a third letter of recommendation)
Statement of Purpose
$60 non-refundable Application Fee
Proof of English language proficiency
A competitive GRE or GMAT score (required for both part-time and full-time applicants)
Writing sample(s). All applicants are encouraged to submit a lab report (preferable) or paper that they wrote, individually, for an engineering course. Applicants who have published a journal article are also encouraged to submit a copy of their article.
For more complete details, visit our General Admissions Requirements page .
Apply Online >
View objectives, outcomes, and other Ph.D. curriculum details in the most recent academic catalog.
View Academic Catalog >
Each Ph.D. curriculum must also adhere to the institute wide standards listed in the doctoral handbook.
View Doctoral Handbook >
If you have existing graduate credits or experience in this area of study, contact [email protected] to discuss opportunities to include it in the curriculum.
Information about assistantships and fellowships can be found here .
The four fields comprising STEM – science, technology, engineering and mathematics – offer a wide variety of professions that are classified as some of the highest-growing and highest-paying jobs right now and in the future. And for international students, the demand for STEM-related professionals in the United States can open the door for an extended stay. An ever-growing list of eligible programs across all levels is available here .
A Tech Forward Education
An expert in data mining and deep learning, Dr. Lappas is an authority in the business impact of fake reviews in social media.
Data Science Faculty
A former chief scientist at AT&T Labs, Dr. Belanger has earned more than 30 patents related to data science and business analytics.
David Belanger
A highly cited business researcher investigating applications of machine learning and social network algorithms to solve finance problems.
Germán Creamer
Dr. Florescu is an expert in creating stochastic models for practical application. He leads an international conference on high frequency in finance.
Ionut Florescu
Related Programs
Computer science doctoral program.
Prepare to make an enduring impact in fields like machine learning, artificial intelligence and cybersecurity with a Ph.D. in computer science from Stevens.
Interdisciplinary Programs
The challenges facing today's scientists and engineers often exist at the intersection between various disciplines–whether between engineering and science or fields within individual disciplines. At Stevens, engineering and science come together under one roof, fostering a proactive, interdisciplinary environment that encourages results-driven collaboration and unique, innovative problem solving.
PhD Handbook
PhD in Data Science in USA: Best Universities, Requirements, Cost, Scholarships & More for PhD in Data Science USA
If you want to get more advanced knowledge in computational speed and data available along with the development of data analytics, then pursuing phd in data science USA is the perfect choice for you. The country stands tall among other destinations for its research-intensive universities across the world. The stellar academic infrastructure and excellent research outcomes contribute a lot to building new research scholars in the data science field.
The United States data science PhD programs have rapidly received global recognition and are considered among the top and most selective across the world. The data science PhD in USA develops a methodology and harnesses statistical tools to get answers which transcend the boundaries of the traditional academic disciplines. Want to know more about the course, keep reading as this blog will help you to get information about the type of best universities for PhD in data science in USA with other essential information.
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Why Study PhD in Data Science in USA?
PhD data science programs in the USA seek to produce researchers who are fluent in this emerging field of data science and can develop a native environment for their training and education. Apart from this, some other reasons why should you study data science in USA are:
- PhD in data science USA can introduce you to an advanced understanding of big data analytics. It provides you with an in-depth understanding of several areas of data science such as big data management, data analytics, data mining, statistical techniques etc.
- USA universities offering PhD programs in data science impart you with the skills and knowledge necessary to enable research and development methods in data science. It boasts you with robust applied training that is geared towards interdisciplinary collaboration.
- Data science graduates from US universities have a very high employment rate. Completing it from the top universities will land you a job within three months of completion with an average pay of more than 90,000 USD.
- The opportunities for data scientists in USA are great as there is currently a huge shortage of qualified and skilled data professionals in the USA. And it is projected that the demand for experienced and informed data scientists will grow by 27.9% by 2026, with an increase in employment of 27.9%.
- Data scientists in the USA can earn an annual median pay of around 98,230 USD last year. The best 25 percent earned over 130,370 USD that year, and the lower 25 percent made 71,790 USD per annum.
Suggested: Know About Best Data Science Universities in USA
Course Curriculum of PhD in Data Science in USA
The PhD programs in data science in USA nurture the new generation of data scientists by designing and building an environment for data science where methodological innovations can be developed and translated successfully to the domain applications both scientifically and socially. It combines the fundamental research on the principles of data science with translational projects involving domain experts creating a virtuous cycle. The curriculum of this program includes subjects like:
- Integrative Data Science
- Business Intelligence and Case Studies
- Data Access and Management
- Data Analytics and Mining
- Mathematical Analytics
- Big Data Management
- Applied Multivariate Analysis
Suggested: Masters in Data Science in USA
List of Top Universities in USA For PhD in Data Science
The USA being a top destination offering high standards in the field of research, has been preferred by international students. Most of its universities are renowned for their stellar research-oriented outputs. Here we have curated a list of the best universities for PhD in data science in USA for you below:
- Stevens Institute of Technology
New York University
- University of Virginia
- Indiana University
- The University of Texas El Paso
Let's discuss each university in detail below:
1. New York University
The doctorate in data science courses at NYU helps develop methodology and harness statistical tools to find answers to questions that transcend the boundaries of traditional academic disciplines. It trains the students to clearly communicate to extract crisp questions from big, heterogeneous, uncertain data. This program effectively translates fundamental research insights into data science practice in the sciences, medicine, industry, and government.
| 38 |
Type of University | Private |
Average Annual Fees | 50,926 USD |
Program Offered | PhD in Data Science |
2. University of Virginia
The University of Virginia data science program is committed to educating the next generation of data science leaders with the skills and knowledge necessary to enable research and discovery in data science methods. Students learn to master the computational and mathematical foundations of data science, and develop competencies in data engineering, software development, data policy and ethics.
| 260 |
Type of University | Public |
Average Annual Fees | 30,790 USD |
Program Offered | PhD in Data Science |
3. Stevens Institute of Technology
Data science programs at Stevens Institute of Technology prepares inquisitive students to be pioneers in this space through a rigorous curriculum emphasising mathematical and statistical modelling, machine learning, computational systems and data management. This program is administered through both the Schaefer School of Engineering and Science and the School of Business at Stevens, which respond to the demand for data scientists with extensive knowledge of the theories, techniques and applications associated with data and artificial intelligence.
| 621-630 |
Type of University | Private |
Average Annual Fees | 40,940 USD |
Program Offered | PhD in Data Science |
4. Indiana University
The PhD program at Indiana University is offered by the School of Informatics and Computing and prepares the students to make research contributions that advance the theory and practice of data science. It will provide deep thinking skills and the ability to formulate and test hypotheses using massive and heterogeneous data to provide the foundation for students to be a researcher in academic settings or in industrial research and development laboratories.
| #=313 |
Type of University | Public |
Average Annual Fees | 26,449 USD |
Program Offered | PhD in Data Science |
5. The University of Texas, El Paso
The Department of Mathematical Sciences at the University of Texas offers a PhD program in data science that will prepare and train the students to obtain a position in the industry using data to guide decision-making. It is an interdisciplinary field open to individuals of a variety of backgrounds. Applicants must have a good command of principles of mathematics, analysis, probability and statistical inference or equivalent for this course.
| 1001-1200 |
Type of University | Public |
Average Annual Fees | 24,952 USD |
Program Offered | PhD in Data Science |
Suggested: PhD in Finance in USA
Eligibility Criteria for PhD in Data Science in USA
The eligibility and admission requirements for the admission to data science PhD programs in USA vary between the universities. However, there are some basic requirements that every university must follow. Here we have given the following requirements:
- Educational Qualifications
- English Language Proficiency
- GRE or GMAT
- Work Experience
- Passport and Student Visa
Let's discuss them one by one:
1. Educational Qualifications
The first PhD in Data Science in USA requirements is to have a valid bachelor's and master's degree from an accredited institution. A master's degree in business intelligence & analytics, computer science, financial analytics, financial engineering etc is preferred for the data science doctoral programs.
Prerequisite courses in statistics, calculus, probability, algebra and data management etc. Also, a minimum grade of B is considered best for admission to the best universities .
2. English Language Proficiency
If you are not a native language speaker and don't have an academic background. You are required to provide proof of English language proficiency by submitting any one of the test scores. The two popular test scores are:
- IELTS : 6.0 - 7.0
- TOEFL : 90 - 105
- Duolingo : 105
3. GRE or GMAT
Some of the PhD data science universities in the USA also ask for either a GRE or GMAT score in order to complete the application form. The minimum average score should be 280 or above on GRE and 650 on GMAT . However, some universities offer admissions without these scores too.
4. Work Experience
For a PhD in data science in USA, universities may ask for work experience. So, having 2 or more years' experience will be effective. A relevant work experience will be factored into the admission decision but is not a mandatory requirement for entry into this program.
5. Passport and Student Visa
A copy of your passport and your US student visa are also mandatory for studying for a PhD degree in Data Science in the USA for international students. If you don't have one, make sure to apply for it at least three months before your travel date.
Read: Know About DS-160 Form
Documents Required for PhD in Data Science in USA
Before applying for a fully funded phd in data science USA, make sure you have the following set of documents to submit in the application form. These documents include:
- Higher secondary education certificate
- Academic transcripts
- Letter of recommendation
- Statement of Purpose
- Academic achievements certificate
- Scholarship certificate
- Proof of your finances
- US student visa
Suggested: Tips to Draft SOP for USA
Admission Process for PhD in Data Science in USA
The application process for applying to the PhD admission in Data Science programs in USA is quite simple. Here we have given some steps which you can refer to for the application:
- First, make a list of some best universities for PhD in Data Science in USA or go through the above-mentioned ones.
- Shortlist those universities based on their entry requirements and costs.
- Fill in the available application along with paying the fees.
- Gather all documents and requirements asked in the application form.
- Submit those scanned documents and wait for the admission decision.
- You can also check the status of the application form.
- Once you get the acceptance letter, acknowledge it by paying the deposit fees.
Suggested: Guide to Study in USA
Now that you get an idea of the application process along with the phd in data science USA eligibility. Let's now look at the costs required to pursue a doctorate in the USA.
Cost of Studying PhD in Data Science in USA
The cost of studying at PhD universities in USA for Data Science is impacted by two factors, one is its tuition fees and the cost of studying. Both of these factors are discussed below:
Tuition Fees
The tuition fees of these universities for PhD in Data Science mainly depend on the type of university. The average tuition fees will range from 26,400 USD to 60,000 USD per year. However, the fees may be slightly lower for public universities.
Cost of Living
Your living costs are also a factor in the cost of studying for a PhD in the USA. On average, the living costs in the country should range between 1,200 USD to 2,500 per month. A major part of these expenses is from your rent, location, food, materials, transportation etc.
Suggested: Cost of Living in USA
Scholarships For PhD in Data Science in USA
There are many universities in USA offering PhD scholarships to their students. Some also offer fully funded PhD in data science USA. These scholarships can be from government and external sources too. To help you get the best, here are some scholarships you can look for to study a PhD in data science in USA:
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HHMI International Student Research Fellowships | Students pursuing a PhD program at an accredited American institution. Eligible students must enter into their third, fourth and fifth year of PhD major. | Upto 43,000 USD |
Fulbright Scholarship | International students with good academic excellence, competitive GRE scores and three letters of recommendation. | Tuition Fees waiver |
USF Presidential Doctoral Fellowship | Available for new doctoral students with an exceptional academic credentials | 32,000 USD |
Campbell Fellowships for Transformative Research | International female students pursuing PhD scholar with good academic achievement. | 4,500 USD |
Suggested: Scholarships to Study in USA
Career Opportunities After PhD in Data Science in USA
Though the cost of PhD data science in USA is quite high so is the return on investment. PhD data science graduates from USA have seen performing very well in commercial research. Completing a doctorate equips you with the skills to thrive in different careers related to computer science, engineering, data analytics and management etc.
Some of the job profiles of a Phd degree holder in data science are:
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Computer and Information Research Scientist | 100,337 USD |
Machine Learning Engineer | 87,952 USD |
Data Scientist | 98,230 USD |
Big Data Developer | 100,771 USD |
Unity Developer | 91,000 USD |
Director of Data Science | 145,453 USD |
Suggested: High-Paying Jobs in USA
With a tremendous package and career prospects, there's no doubt that it is one of the top study destinations for data science PhD in USA. Not only because of its high return on investment, but you also get hold of PhD scholarships in the USA easily. So, if you are in search of a promising career ahead, then the USA is definitely a great choice. In case you need any assistance related to universities in USA, reach out to our Yocket Counsellors for an extra hand.
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Frequently Asked Questions About PhD in Data Science in USA
Is PhD in data science worth it?
Yes. It is one of the PhDs that are exceptionally useful in both academics and industry. In fact, the data science jobs actually prefers to have a PhD, since a real data scientist is an applied researcher in the industry.
What is a good GPA for data science PhD?
When applying for a PhD degree in a data science course, you must have a grade in maths and engineering classes to be about 3.5 out of 4.0 scale.
How much does it cost to get a PhD in data science?
The costs of a PhD in data science typically range between 400 USD to 1,000 USD credit basis. You can expect to pay between 27,000 USD to 60,000 USD per year.
Is work experience needed to pursue data science PhD programs in USA?
No. Work experience is not mandatory to study a PhD in data science in US universities.
What is an expected GRE score for a PhD in data science?
There are no minimum GRE scores for admission, but an average score for admitted students is typically 150 verbal, 165 quantitative, and 3.0 analytical.
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Phd in big data analytics.
The PhD in Big Data Analytics is an interdisciplinary STEM PhD program focusing on systems and technologies for processing data and information. Unlike pure data science programs, this program includes the human and social implications of information and technology, bringing in critical components of cognition, ethics, biases and storytelling into a strong, big data analytics curriculum.
This program will graduate advanced big data practitioners, researchers and scientists who can work with large data, write code, develop models and build systems, and do so while acutely aware of potential biases and ethical uses issues. Students will develop theoretical and applied skills, including how to design, implement and evaluate information-focused big data technologies that support decision-making across social and organizational contexts.
Why the focus on an interdisciplinary program? Many existing PhD programs offer training in all of the stand-alone scientific fields such as statistics, mathematics, computer science, or information systems, but they do not unify the salient ideas from these fields.
In that sense, graduates become experts in a relatively narrow area in, for example, statistical modeling of data, but are inexperienced and unaware of how to parse and store data or how to code “apps” and develop solutions that automatically make decisions based on the data models or how to evaluate the human and societal impact of the developed data solutions and systems.
This PhD program combines human and technical skills with analytical abilities required to support decision-making by today’s leaders and innovators. A big data analytics PhD will introduce students to a truly interdisciplinary program and diverse perspective to important problems and opportunities for society that are driven by the availability of big data.
Why now? An increasing number of companies are looking for professionals with experience in big data analytics, and they are hard to find, especially in the educational spectrum, i.e. at the expert/PhD level. In addition, there is an increasing demand for faculty with PhDs in this field. This program is timely as we are seeing deep problems in society (polarization of society, fake news, algorithmic bias) where analytics-driven solutions alone struggle to be sufficient — problems where the broader perspective of building intelligent systems by being aware of broader issues and human aspects becomes increasingly important as well.
Programs that bring together curriculum and faculty expertise from multiple areas (such as information systems, mathematics, psychology, computer science, etc.) will play a critical role in this broader context.
Application deadline is February 1.
Data Science, BS
Undergraduate admissions, related resources.
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- Computer and Information Science
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Become the Go-To Person for Answers
The volume, variety, and velocity of today’s data and future data streams pose unique challenges and create unique opportunities. They require unprecedented levels of knowledge and skill in programming, mathematics and statistics, modeling, and more–all of which you can gain in our interdisciplinary program.
Where a Data Science Degree Will Take You
A degree in data science from UM-Dearborn opens a wealth of opportunities. Fields such as health care, business analytics, social sciences, and engineering are clamoring for professionals who can make data-driven decisions. With a proficient understanding of statistical techniques and a facility to handle big data sets, our graduates are well-equipped to meet these demands. They’re also prepared to keep learning and growing through continuing professional development, including pursuit of advanced degrees like the Master of Science in data science that we offer at UM-Dearborn.
Career and Salary Outlook
The information in this table is meant to give you an idea of career opportunities with this degree. All information is pulled from the Bureau of Labor Statistics and is meant to be averages across the United States in 2022. Please note that these figures reflect overall averages and may not represent entry-level salaries.
Data Scientists
$108,020 Median Salary
Employment of data scientists is projected to grow 35 percent from 2022 to 2032, much faster than the average for all occupations. About 17,700 openings for data scientists are projected each year, on average, over the decade. Many of those openings are expected to result from the need to replace workers who transfer to different occupations or exit the labor force, such as to retire.
Database Administrators and Architects
$117,450 Median Salary
Overall employment of database administrators and architects is projected to grow 8 percent from 2022 to 2032, faster than the average for all occupations. About 10,200 openings for database administrators and architects are projected each year, on average, over the decade. Many of those openings are expected to result from the need to replace workers who transfer to different occupations or exit the labor force, such as to retire.
Operations Research Analysts
$83,640 Median Salary
Employment of operations research analysts is projected to grow 23 percent from 2022 to 2032, much faster than the average for all occupations. About 9,800 openings for operations research analysts are projected each year, on average, over the decade. Many of those openings are expected to result from the need to replace workers who transfer to different occupations or exit the labor force, such as to retire.
$120,000 Median Salary
Employment of actuaries is projected to grow 23 percent from 2022 to 2032, much faster than the average for all occupations. About 2,300 openings for actuaries are projected each year, on average, over the decade. Many of those openings are expected to result from the need to replace workers who transfer to different occupations or exit the labor force, such as to retire.
Survey Researchers
$60,960 median salary.
Survey Researchers
Employment of survey researchers is projected to decline 4 percent from 2022 to 2032. Despite declining employment, about 700 openings for survey researchers are projected each year, on average, over the decade. All of those openings are expected to result from the need to replace workers who transfer to other occupations or exit the labor force, such as to retire. (master’s usually required)
Program Details
What you’ll study.
You’ll explore fields like programming, mathematics and statistics, and modeling. Our curriculum focuses on practical understanding and application of analytical methods including linear regression, logistic regression, and data visualization–all taught using real-world data.
Practical Skills You’ll Gain
Our internship , research , and study abroad programs offer a wealth of hands-on experiences for data science students. Check out the pages for these programs, and talk to your professors to learn more.
Accreditation
Education objectives.
1. Our graduates will be qualified for employment in Data Science related fields or other career paths, including industrial, academic, governmental, and non-governmental organizations, or will be successful graduate students in a program preparing them for such employment.
2. Our graduates will be qualified to lead and participate in culturally diverse and inclusive teams, becoming global and ethical collaborators.
3. Our graduates will be qualified to participate in continuing professional development through, for example, obtaining continuing education credits, professional registration or certifications, or post-graduate study credits or degrees.
Student Outcomes
Graduates of the BS in data science program will have the ability to:
- Analyze a complex computing problem and to apply principles of computing and other relevant disciplines to identify solutions.
- Design, implement, and evaluate a computing-based solution to meet a given set of computing requirements in the context of the program’s discipline.
- Communicate effectively in a variety of professional contexts.
- Recognize professional responsibilities and make informed judgments in computing practices based on legal and ethical principles.
- Function effectively as a member or leader of a team engaged in activities appropriate to the program’s discipline.
- Apply theory, techniques, and tools throughout the data analysis lifecycle and employ the resulting knowledge to satisfy stakeholders' needs.
Enrollments and Degrees Granted
For information on the number of students enrolled and degrees granted in the BS in Data Science program, please visit the Enrollment Data and Degrees Awarded page.
Ready to Apply?
Application deadlines.
UM-Dearborn has rolling admissions throughout the year, and deadlines depend on your student type. Apply early, priority consideration for financial aid and scholarships may be given to earlier applicants.
Get started early on your financial planning for college. Complete the net price calculator to get an estimate of your cost to attend UM-Dearborn.
Go Blue Guarantee
Students at UM-Dearborn are eligible for the Go Blue Guarantee - University of Michigan’s landmark promise of free tuition for high-achieving in-state undergraduate students from qualifying backgrounds. Major financial support is available for students who do not fully qualify.
How to Get Involved
You can join the Society of Women Engineers , Upsilon Pi Epsilon , other organizations aimed at students in the College of Engineering and Computer Science like the Association for Computing Machinery , or general student organizations devoted to a wide range of interests and topics. And be sure to attend seminars and workshops sponsored by the College of Engineering and Computer Science.
Related Programs
Computer and information science and data science, dual bs, computer and information science and cybersecurity and information assurance, dual bs, applied statistics, ba/bs.
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Intern Program: PhD Data Science Intern
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PhD Data Science Intern
How You’ll Make an Impact
Epsilon is seeking a Data Science Intern. As a Data Science Intern, you’ll be part of a team that focuses on researching and building machine learning applications to extend our personalization platform. Epsilon’s personalization is based on analysis of anonymized data at internet scale and is used in evaluating 1 trillion advertising opportunities per month – in real-time. As an Intern you will be able to apply your field of study to real problems with an opportunity to directly impact our business, gaining experience with internet-scale data and state-of-the-art computing clusters.
- Work together to win together: . Collaborate with other Decision Sciences teams to integrate your solution into Epsilon’s platform.
- Innovate with purpose: Use your machine learning expertise to research and recommend the best approaches to solving one of our technology and business problems.
- What You’ll Achieve
- Impact: . Implament and validate your solution. Present your findings and approach to the entire Decision Sciences department.
- Career Growth: Develop a basic understanding of Epsilon’s personalization platform.
Epsilon’s Internship Program
As an intern you’ll participate in a formal Intern Program , which is a 12-week summer program that aims to create a meaningful early career experience for university students. The program offers professional development & hands-on training, networking opportunities with people throughout the business including multiple projects & social events, and the consideration for full-time employment.
Who You Are
What you’ll bring with you:
- Required: PhD level candidates pursuing Data Science, Statistics, Computer Science, Mathematics, Engineering, Linguistics, or related field
- Research experience and coursework in data science, machine learning, graph theory, optimization, or language processing.
- Desire to work in a highly collaborative environment
- Desire to apply your expert knowledge to grow a business
Why you might stand out from other talent :
- Fluent in programming (Scala, SQL, Python, or R)
- Experience with Large Data Sets (Hadoop, Spark, Cassandra, or MPP)
Epsilon at Our CORE
Epsilon is a global advertising and marketing technology company positioned at the center of Publicis Groupe. Our products accelerate our clients’ ability to harness the power of their first-party data to activate campaigns across channels and devices, with an unparalleled ability to prove outcomes. For decades, we’ve been helping marketers from the world’s top brands personalize experiences for millions of people with our cutting-edge technology, solutions and services. Our best-in-class identity gives brands a clear, privacy-safe view of their customers, which they can use across our suite of digital media, messaging and loyalty solutions. We process 400+ billion consumer actions each day and hold many patents of proprietary technology, including real-time modeling languages and consumer privacy advancements. Thanks to the work of every employee, Epsilon has been consistently recognized as industry-leading by Forrester, Adweek and the MRC.
Curious about life at Epsilon ? Explore Our Culture, DE&I initiatives, and our commitment to our communities .
Epsilon has a core set of 5 values that define our culture and guide us to create value for our clients, our people and consumers. We are seeking candidates that align with our company values, demonstrate them and make them meaningful in their day-to-day work:
- Act with integrity. We are transparent and have the courage to do the right thing.
- Work together to win together. We believe collaboration is the catalyst that unlocks our full potential.
- Innovate with purpose. We shape the market with big ideas that drive big outcomes.
- Respect all voices. We embrace differences and foster a culture of connection and belonging.
- Empower with accountability. We trust each other to own and deliver on common goals.
Because You Matter
As an Epsilon employee, you deserve perks and benefits that put you, your family and your finances first. Our benefits encompass a wide range of offerings, including but not limited to the following:
- Time to Recharge : Flexible time off (FTO), 14 paid holidays, paid sick time
- Family Well-Being : Parental/new child leave, childcare & elder care assistance, adoption assistance
- Extra Perks : Comprehensive health coverage, 401(k), tuition assistance, commuter benefits, professional development, employee recognition, charitable donation matching, health coaching and counseling
Epsilon benefits are subject to eligibility requirements and other terms.
Epsilon is an Equal Opportunity Employer
Epsilon’s policy is not to discriminate against any applicant or employee based on actual or perceived race, age, sex or gender (including pregnancy), marital status, national origin, ancestry, citizenship status, mental or physical disability, religion, creed, color, sexual orientation, gender identity or expression (including transgender status), veteran status, genetic information, or any other characteristic protected by applicable federal, state or local law. Epsilon also prohibits harassment of applicants and employees based on any of these protected categories. Please contact [email protected] should you require any accommodations to complete our application process.
Data Science Institute
Master's programs, master's programs.
Our Master’s Programs in Data Science and prepare students from a wide range of disciplinary backgrounds for distinctive careers in data science.
Master's Programs in Data Science
Master of science in data science, fifth-year master’s degree, online master's in data science: policy, governance & society.
2025 Graduate Data Science Summer Internship Program
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- You possess proven statistical, mathematical, computational, and analytical skills, which you are acquiring through the pursuit of a Master's degree or Ph.D. in Mathematics, Statistics, Economics, Operational Research, Computer Science, or a related field.
- You have completed doctoral qualifying exams (preferred).
- You have a record of academic achievement.
- You demonstrate solid oral, written, communication, and interpersonal skills.
- You are a whiz at statistical software, such as R, Python, and SAS. Programming skills are highly desirable.
- San Francisco
- Los Angeles
- Philadelphia
Perks and Benefits
Health and wellness.
- Long-Term Disability
- HSA With Employer Contribution
- Health Insurance
- Dental Insurance
- Vision Insurance
- Life Insurance
- Short-Term Disability
- Mental Health Benefits
Parental Benefits
- Birth Parent or Maternity Leave
- Non-Birth Parent or Paternity Leave
- Fertility Benefits
- Adoption Assistance Program
- Family Support Resources
Work Flexibility
- Flexible Work Hours
- Remote Work Opportunities
- Hybrid Work Opportunities
Office Life and Perks
- Commuter Benefits Program
- Happy Hours
- Company Outings
- On-Site Cafeteria
Vacation and Time Off
- Personal/Sick Days
- Paid Holidays
- Paid Vacation
- Volunteer Time Off
Financial and Retirement
- Performance Bonus
- 401(K) With Company Matching
- Financial Counseling
Professional Development
- Mentor Program
- Promote From Within
- Learning and Development Stipend
- Tuition Reimbursement
- Internship Program
- Leadership Training Program
- Associate or Rotational Training Program
- Access to Online Courses
- Lunch and Learns
Diversity and Inclusion
- Diversity, Equity, and Inclusion Program
- Employee Resource Groups (ERG)
Company Videos
Hear directly from employees about what it is like to work at Liberty Mutual Insurance.
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PhD position in data-driven modeling of ocean-based renewable energy systems
Electrification and digitalisation are among the largest areas for the future in the conversion to sustainable societies. The Department of Electrical Engineering conducts successful research and education in the areas - renewable energy sources, electric vehicles, industrial IoT, 5G communication and wireless sensor networks as well as smart electronic sensors and medical systems. The Department of Electrical Engineering is an international workplace with around 160 employees, out of which more than half are PhD students. The department contributes to important technical energy and health challenges at the Ångström Laboratory.
Come and work with us!
Securing future electricity supply while minimizing climate and environmental impact is one of today's foremost challenges. The position will be at the Division of Electricity, at the Department of Electrical Engineering. Here you will find a friendly work environment with a lively doctoral network and a variety of projects. The Division of Electricity works in collaboration with Swedish companies - public and private - and stakeholders in the different fields of research. We look forward to receiving your application. Join us and build the future with us!
Project description
Securing future electricity supply while minimizing climate and environmental impact is one of today's foremost challenges. Offshore renewable energy systems (RES) offer significant potential to meet the electricity demand, with emerging technologies such as floating offshore wind and wave power
devices showing promise. However, there are knowledge gaps on the reliability of these technologies in the offshore environment. Non-linear dynamics can give rise to dynamical instabilities and extreme loads on critical components. These challenges are a threat not only to a secure electricity supply, but also constitute potential vulnerabilities in our society.
The PhD project will model and develop offshore renewable energy systems, with a focus on wave power and floating offshore wind. The project will develop methods to predict non-linear dynamics and vulnerabilities based on data-driven methods, computational fluid dynamics simulations and machine learning. We offer a varied and exciting work that is designed by the PhD candidates together with the research team. The PhD student will be supervised by at least two supervisors and the research group consists of several seniors and PhD students working on different aspects of renewable energy and the electric grid. The Department of Electrical Engineering also gives a salary supplement to the doctoral students at the department.
This PhD position is part of the eSSENCE graduate school in data-intensive science and is a collaboration between eSSENCE, SciLifeLab, and STandUP. The school addresses the challenge of data-intensive science both from the foundational methodological perspective and from the perspective of data-driven science applications. It is an arena where experts in computational science, data science and data engineering (systems and methodology) work closely together with researchers in (data-driven) sciences, industry and society to accelerate data-intensive scientific discovery. eSSENCE is a strategic collaborative research programme in e-science between three Swedish universities with a strong tradition of excellent e-science research: Uppsala University, Lund University and Umeå University. STandUP focuses on long-term sustainable energy supply, one of the greatest global challenges in the next decades. The groups within STandUP envision a future society that is provided with renewable, highly reliable and cost-efficient energy for all its needs.
The PhD student will use numerical simulations and data-driven methods to carry out research about offshore renewable energy systems and their dynamics and reliability. One part of the work as a PhD student is to write research papers and to orally present the research results in different forums such as project group meetings as well as international research conferences. The main duties for PhD students are to devote themselves to their research studies which include participating in research projects and third cycle courses. The courses should comprise 60 credits and the majority of the courses are optional and can be spread out throughout the doctoral period. The work duties also include educational tasks, for example giving tutorials or supervising labs / project work. Teaching and other department duties can take up a maximum of 20% of the working time.
Requirements
- The applicant must hold a master degree in in engineering or science, with focus on energy systems, electrical engineering, engineering physics, or similar.
- Very good oral and written proficiency in English.
- We value your personal qualities and motivation. You should be purposeful, structured and be able to work effectively both individually and in groups. Good collaborations and communication skills with other researchers is required.
Additional qualifications
Rules governing PhD students are set out in the Higher Education Ordinance chapter 5, §§ 1-7 and in Uppsala University's rules and guidelines .
Application
Please use the link below. You should include a brief description of your research interests and relevant experience, a CV, copies of diplomas and certificates, thesis (or a draft thereof) and other relevant documents. We ask you to provide contact information to references.
About the employment
The employment is a temporary position according to the Higher Education Ordinance chapter 5 § 7 . Scope of employment 100 %. Starting date as agreed. Placement: Uppsala
For further information about the position, please contact: Malin Göteman, 018-471 5875, malin.goteman @angstrom.uu.se
Please submit your application by November 15th, 2024 , UFV-PA 2024/3201.
Are you considering moving to Sweden to work at Uppsala University? Find out more about what it´s like to work and live in Sweden .
Uppsala University is a broad research university with a strong international position. The ultimate goal is to conduct education and research of the highest quality and relevance to make a difference in society. Our most important asset is all of our 7,600 employees and 53,000 students who, with curiosity and commitment, make Uppsala University one of Sweden’s most exciting workplaces.
Read more about our benefits and what it is like to work at Uppsala University https://uu.se/om-uu/jobba-hos-oss/
The position may be subject to security vetting. If security vetting is conducted, the applicant must pass the vetting process to be eligible for employment.
Please do not send offers of recruitment or advertising services.
Submit your application through Uppsala University's recruitment system.
- ST/TCO [email protected]
- Seko Universitetsklubben [email protected]
- Saco-rådet [email protected]
Distribution Data and IT Graduate Programme
- Closing at: Oct 27 2024 at 23:55 GMT
Locations: Reading
Base Salary: circa £33,500 + a range of other benefits to support your family, finances and wellbeing.
Degree Disciplines : Maths, Physics, Computer Science, Data Analytics, Software Engineering
Working Pattern : Permanent | Full Time
What is the Role?
We have ambitious net zero targets, and our business is growing to help us achieve our strategy. We're looking for graduates who can bring fresh ideas, new skills and creative thinking, to deliver innovative solutions to help us reach net zero.
Data and IT graduates joining SSEN Distribution will be at the forefront of building a better world of energy for future generations. Our programme provides real hands-on experience. You will follow a specialist pathway, working with specialists in your field to gain a depth of knowledge and exposure to equip you for a substantive post in SSEN Distribution at the end of your programme.
As graduate in the Asset Analysis team, you will become an expert in using SSEN Distribution asset information systems, to drive insights and analysis to manage the risk, cost and performance of assets in our network. Our team is responsible for tracking network asset risk management, work order origination and asset intervention models which span the entire asset lifecycle.
What do I need to join?
At SSE we're proud to celebrate difference. We all have different skills, experience and backgrounds and we strive to have a friendly and inclusive culture where you can be yourself. Safety is at the heart of everything we do at SSE, and we live by the mantra 'if it's not safe, we don't do it'. You should show alignment with our core values and have a genuine passion and interest in the energy sector.
You’ll have a minimum of a 2:2 in the desired degree discipline listed above. We are looking for someone with a keen interest in data analysis and insights, to drive investigations and discover efficiency opportunities throughout the asset lifecycle of our asset base.
As the organisations grows, our graduates need to be highly flexible in order to embrace the changes and keep up with the fast-paced evolution of the business. Our graduates are agile in their thinking and seek to address knowledge gaps. You should be comfortable working to and setting stretching individual targets and using your own initiative to overcome challenges.
You can find out more about what to expect during the recruitment process here .
About our Business
SSEN Distribution powers 3.8 million homes and businesses in communities across central southern England and the north of Scotland. Our team of more than 3,500 people keep customers connected to a safe and reliable supply of electricity whilst developing the flexible networks that are vital to achieving net-zero. By enabling a smarter, more resilient electricity network we're ensuring our local communities continue to receive the power they need, both now and in the future. We are consistently investing and innovating to improve network resilience and future-proof power supplies for life's changing demands, from rolling out large scale EV charging schemes to supporting small community generation projects.
What’s in it for you?
An excellent package with 34 days holiday entitlement, enhanced maternity/paternity leave, discounted healthcare, salary sacrifice car leasing and much more, view our full benefits package on our careers site. As an equal opportunity employer we encourage diversity and are committed to creating an inclusive environment for all employees. We actively encourage applicants from all protected characteristics and commit to providing any reasonable adjustments required during the application, assessment and upon joining SSE. Search for ‘Inclusion & Diversity at SSE’ to find out more.
Next Steps
All applications should be submitted online.
If you would like to discuss any working differently requirements or adjustments you may require throughout the recruitment and selection process, please contact [email protected] . If you would prefer a call to discuss adjustments let us know by email and we are arrange a call with you at a time that suits you.
Before commencing employment with SSE, you'll be required to fully complete our pre-employment screening process consisting of a basic criminal records and credit check.
Due to immigration rule changes to the Skilled Worker route in April 2024, this role falls below the minimum salary threshold/new entrant level for the relevant SOC code and therefore does not meet the requirements to allow for sponsorship.
Please note that any successful candidate must be able to evidence a valid right to work prior to commencement of employment.
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Our Benefits
- Sharesave Scheme
- 34 days of annual leave
- Option to purchase up to 10 days holiday
- Interest-free technology loans
- 24/7 free and confidential employee counselling service
- Private healthcare discounts
- Subsidised gym memberships
- 21 weeks full pay maternity leave
- Cycle to Work scheme with generous £2500 limit
- Interest-free salary advance to cover transport season tickets
Explore our full list of benefits:
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A Ph.D. in Data Science from the University of Virginia opens career paths in academia, industry or government. Graduates of our program will: Understand data as a generic concept, and how data encodes and captures information. Be fluent in modern data engineering techniques, and work with complex and large data sets.
Discover NYU's PhD in Data Science, a top-ranked program offering rigorous training, cross-disciplinary research, and guaranteed funding. Learn more today.
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The PhD program in Computing & Data Sciences (CDS) at Boston University prepares its graduates to make significant contributions to the art, science, and engineering of computational and data-driven processes that are woven into all aspects of society, economy, and public discourse, leading to solutions of problems and synthesis of knowledge related to the methodical, generalizable, and ...
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We launched the first formal PhD program in Data Science in 2015. Our program sits at the intersection ofcomputer science, statistics, mathematics, and business. Our students engage in relevant research with faculty from across our eleven colleges. As one of the institutions on the forefront of the development of data science as an academic ...
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Statistics PhD Travel Support. The Department of Statistics and Data Science has established a fund for professional travel for graduate students. The intent of the Department is to encourage travel that enhances the Statistics community at Cornell by providing funding for graduate students in statistics that will be presenting at conferences.
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The United States data science PhD programs have rapidly received global recognition and are considered among the top and most selective across the world. The data science PhD in USA develops a methodology and harnesses statistical tools to get answers which transcend the boundaries of the traditional academic disciplines. Want to know more about the course, keep reading as this blog will help ...
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A degree in data science from UM-Dearborn opens a wealth of opportunities. Fields such as health care, business analytics, social sciences, and engineering are clamoring for professionals who can make data-driven decisions. With a proficient understanding of statistical techniques and a facility to handle big data sets, our graduates are well ...
PhD Data Science Intern How You'll Make an Impact . ... Find Us. WESTCHESTER MAIN CAMPUS. 1 LMU Drive Los Angeles, CA 90045 310.338.2700 DOWNTOWN LAW CAMPUS. 919 Albany Street Los Angeles, CA 90015 213.736.1000 PLAYA VISTA CAMPUS. 12105 E. Waterfront Drive, Suite 200
Our Master's Programs in Data Science and prepare students from a wide range of disciplinary backgrounds for distinctive careers in data science.
5,326 PhD Ai Data Science jobs available on Indeed.com. Apply to Data Scientist, Research Scientist, Product Manager and more! ... Utilise data science expertise to design data solutions that address commerce operations and ... We have some of the most forward-thinking and hardworking people in the world working for us. Our goal is to craft an ...
The Data Science Graduate Level Internship may be your first step toward pursuing a rewarding career at Liberty Mutual, one of the leading property and casualty insurers in the United States. Our interns often transition into full-time opportunities at our Boston office.
This PhD position is part of the eSSENCE graduate school in data-intensive science and is a collaboration between eSSENCE, SciLifeLab, and STandUP. The school addresses the challenge of data-intensive science both from the foundational methodological perspective and from the perspective of data-driven science applications.
Distribution Data and IT Graduate Programme Locations: Reading Base Salary: circa £33,500 + a range of other benefits to support your family, finances and wellbeing. Degree Disciplines: Maths, Physics, Computer Science, Data Analytics, Software Engineering Working Pattern: Permanent | Full Time What is the Role? We have ambitious net zero targets, and our business is growing to help us ...