Online Doctorate Degree in Comp Sci - Big Data Analytics
Doctor of Computer Science - Big Data Analytics
As the importance of data continues to rise, the need for professionals who can structure and interpret it will be important. You can utilize your experience and develop expertise with a Doctor of Computer Science degree in Big Data Analytics from Colorado Technical University. In this program, you can study tools, like XML and Hadoop, and techniques, like AI and data visualization, to analyze huge amounts of distributed, unstructured data in order to produce meaningful insights.
As the importance of data continues to rise, the need for professionals who can structure and interpret it will be important. You can utilize your experience and develop expertise with a Doctor of Computer Science degree in Big Data Analytics from Colorado Technical University. In this program, you can study tools, like XML and Hadoop, and techniques, like AI and data visualization, to analyze huge amounts of distributed, unstructured data in order to produce meaningful insights.
Program Overview
The Doctor of Computer Science with a concentration in Big Data Analytics (DCS-BDA) program includes a combination of core and elective courses, as well as doctoral symposium and research-related courses. The research element will culminate in a dissertation.
The DCS-BDA program is designed to aid leaders, data analysts, and data scientists in the development and use of tools and techniques to analyze large amounts of distributed, unstructured data in order to produce meaningful insight and automation for their respective organizations.
This program does not lead to additional licensure or certification. As such, CTU has made no determination regarding prerequisites for licensure or certification in any state or jurisdiction.
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Courses
Courses: Core | Credits | |
---|---|---|
AI870 | Artificial Intelligence in Real World Problem Solving | 4 |
CS818 | Current Topics in Computer Science and Information Technology | 4 |
CS834 | Advanced Topics in Database Systems | 4 |
CS857 | Business Intelligence | 4 |
CS871 | Advanced Quantitative Analysis | 4 |
CS875 | Futuring and Innovation | 4 |
CS877 | Introduction to Big Data Analytics | 4 |
CS879 | Advanced Topics in Big Data Analytics | 4 |
CS881 | Analytics for Big Data | 4 |
CS882 | Tools for Big Data Analytics | 4 |
RES804 | Principles of Research Methods and Design | 4 |
RES812 | Qualitative Research Methods | 4 |
RES814 | Quantitative Research Methods | 4 |
RES863 | Doctoral Research III: Dissertation Literature Review | 4 |
RES864 | Doctoral Research IV: Dissertation Methods | 4 |
RES865 | Doctoral Research V: Dissertation Introduction | 4 |
RES866 | Doctoral Research VI: Dissertation Findings | 4 |
RES867 | Doctoral Research VII: Dissertation Discussion and Conclusion | 4 |
RES868 | Doctoral Research VIII: Dissertation Conclusion | 4 |
RSCH860 | Doctoral Research I: Principles of Research and Writing | 4 |
RSCH861 | Dissertation Process I | 4 |
RSCH862 | Dissertation Process II | 4 |
Select two 4- credit courses from 800-level CS or EM or EIS courses | 8 | |
SYMP801 | Doctoral Symposium I | 2 |
SYMP802 | Doctoral Symposium II | 2 |
Total Credit Hours: 100
Learning Outcomes
Doctor of Computer Science Outcomes
- Assess the evolution of knowledge within the chosen computer science discipline in addressing a technical real-world technical problem.
- Contribute to the body of knowledge within the computer science industry through ethical research, scholarly writing, dissemination of research and real-world innovations in evolving, diverse environments.
- Develop analytical and critical thinking proficiencies that clearly articulate applying computer science principles and models in solving real-world technical problems.
Big Data Analytics Concentration Outcomes
- Assess advanced big data analytical tools to address industrial problems.
- Apply tested, advanced big data analytic tools for organizational decision-making.
- Contribute to the body of knowledge by enhancing big data tools and models in support of the mission of an organization.
Faculty
Dr. Yanzhen Qu
University DeanDr. Yanzhen Qu is the University Dean and Professor at the College of Computer Science, Engineering and Technology at Colorado Technical University (CTU). During his tenure at CTU, Dr. Qu has taken a leadership role in modernizing the curricula of CTU’s CS, IT and Cybersecurity degree programs, ranging from Associate to Doctoral levels.
Dr. Richard Cai
Executive Program DirectorDr. Richard Cai is CTU’s Executive Program Director for the College of Computer Science, Engineering & Technology. In this role, Dr. Cai supervises curriculum design, development and revision for the degree programs offered in the college. He also plays a key role in the program assessment and accreditation.
For more faculty profiles please visit our Leadership and Faculty page.
For more information visit Security Studies.
Admission Requirements
Program Areas of Focus
The DCS program is designed to provide candidates with theoretical, research, and application capabilities in the field. The areas of focus are described below.
Foundations
The program provides a focus on computer science and information systems topics and an orientation to research and writing at the doctoral level. Coursework covers current topics in the disciplines as well as research methods and qualitative techniques. The research component results in a broad overview of the student’s area of concentration in order to put the research into context and inform the student’s selection of a research topic.
Acquisition of Knowledge
Once the foundations are in place, the focus is on student development of an in-depth understanding of the knowledge and research methods in his or her chosen area of study. While most of the focus is on developing a richer understanding of the discipline, the research courses include quantitative methods and the dissertation process.
Leadership and Professional Advancement
The program includes the two remaining concentration courses plus the final six doctoral research courses that are designed to help students to complete the research and dissertation.
Symposium
Doctor of Computer Science (DCS) students are required to attend a symposium even two times during their enrollment in the program. Additional information about CTU's doctoral symposium can be viewed in the Doctoral Symposium section of this catalog.
Graduation Requirements
In addition to the successful completion of the above 100 credits with an acceptable GPA, students must also satisfactorily complete their research proposal and final dissertation. The research proposal must be approved by the student’s Research Supervisor and University Reviewer. The dissertation, which must be approved by the student’s dissertation committee, is an extensive document that includes the research study. In addition, graduation requires presentation of the final dissertation.
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FAQs
CTU’s Doctor of Computer Science (DCS) with a concentration in Big Data Analytics Degree Program is designed to provide candidates with theoretical, research, and application capabilities in the field. The program’s coursework provides a focus on computer science and information systems topics including those related to big data analytics, as well as an orientation to research and writing at the doctoral level. Coursework may cover current topics in the disciplines as well as various types of research methods.
As you work to complete your DCS with a concentration in Big Data Analytics, you will be immersed in courses where you will study these topics and much more: analytical techniques for big data; quantitative and qualitative methods within the context of research designs; and uses tools including artificial intelligence and machine learning for big data analytics.p>
Courses for the DCS with a concentration in Big Data Analytics degree program start online approximately every five weeks. Completion of the CTU admissions process will depend on how quickly you complete the steps in the CTU online application process. You may complete the application process over the phone with an advisor or you may go online. Once you’ve completed the online application, you may hear from an advisor within the following 24 hours to discuss the next steps toward starting your degree program. Master’s programs may have additional entrance requirements that take additional processing time.
The DCS with a concentration in Big Data Analytics degree program consists of 100 credits. You may be eligible for transfer credit, which is evaluated on an individual basis.
As you study topics in computer science and data analytics that are always being evaluated and updated to reflect industry-relevant trends, you will experience a curriculum through classroom learning and hands-on experience that aligns to industry standards and helps you work to develop skills that are applicable to the needs of the digital economy.
In addition to the successful completion of the program’s 100 credits with an acceptable GPA, students must also satisfactorily complete their research proposal and final dissertation. The research proposal must be approved by the student’s research supervisor and university reviewer. The dissertation, which must be approved by the student’s dissertation committee, is an extensive document that includes the research study. Graduation also requires students’ presentation of the final dissertation.
What Students Are Saying About Their CTU Experience
Colorado Technical University provides students with a commendable degree of flexibility, allowing them to effectively balance the demands of work, academic pursuits, and family commitments.
Dr. Seme., Former Student 2023 Graduate, Doctor of Computer Science
The professors really want you to succeed and they will do everything they can to make sure they give great direction and feedback.
Cheryl C., Former Student 2021 Graduate, Doctor of Computer Science
Everyone at CTU was instrumental to my success. The faculty are always accommodating and hold themselves to the highest standards.
Guy P., Former Student 2021 Graduate, Doctor of Computer Science