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Engineering Artificial Intelligence MS Program

Link to ApplyProgram descriptionThe Master of Science in Engineering of Artificial Intelligence (EAI) prepares specialists with comprehensive knowledge in all areas of this new disruptive and revolutionary technology. The program provides interdisciplinary foundations and practical experience in algorithms, sensors, hardware, control, and applications. The program consists of a three-semester course sequence which covers the fundamentals of Artificial Intelligence, probabilistic reasoning, machine learning, deep learning algorithms, sensor electronics, digital systems design and acceleration hardware, control theory and practice, convex optimization, natural language processing, and computer vision and applications in mobile, health, and other domains. The holistic nature of the program allows students to specialize in any sub-field of Artificial Intelligence (AI) and solve real world problems, many of which go beyond just algorithms and software.Education and Career ObjectivesThis program’s educational objectives are: advocating and teaching a comprehensive approach to engineering AI systems and applications. Students in the program will gain and master holistic hardware/software knowledge and skills beyond algorithms and software. Students will obtain a critical computer engineering background, which includes knowledge in sensors, hardware, control, and applications, enabling them to solve real world AI problems. This background is essential and yet, it is missing from many algorithm- and software-focused programs. The program aims to bridge this critical gap in current AI education.

Career objectives: AI knowledge and skills are hotly pursued in industry and business these days. Many students with basic algorithms and software backgrounds in deep learning can secure high-paying job offers in finance and high-tech industries around the globe. Our program is designed to further strengthen the skill sets of students with important computer engineering background frequently needed to solve AI problems. We believe that this will make our students more competitive and help them secure excellent job offers, greatly improving their future career prospects and possibilities.Admission requirements

  • Bachelor degree or equivalent in Electrical or Computer Engineering or in a related discipline.
  • GPA above 3.3
  • GRE V150, Q159, WA3 (if required by the graduate school; waived for Fall 2024 for now).
  • TOEFL 80, IELTS 7
  • 3 recommendation letters.

These are the minimum requirements, similar to the CE and EE M.S. programs.

Degree RequirementsThe EAI M.S. program offers both thesis and non-thesis options. A non-thesis option is expected to be finished in three semesters, while a thesis one typically takes four semesters. In general, at least 30 graduate credits with a cumulative and departmental grade point average of 3.0 or better are needed. The details of the program structures and course/credit requirements in different subareas are given below:

Subarea

Minimum # of credits needed

List of courses in the subarea

Foundations

6 credits

ESE 503 (Stochastic Systems, 3 credits);

ESE 561 (Theory of Artificial Intelligence, 3 credits);

Methods

6 credits

ESE 577 (Deep Learning Algorithms and Software, 3 credits);

ESE 588 (Fundamentals of Machine Learning, 3 credits);

Applications

3 credits

ESE 564 (Artificial Intelligence for Robotics, 3 credits);

ESE 589 (Learning Systems for Eng. Appl., 3 credits);

ESE 590 (Practical Machine Learning & Artificial Intelligence, 3 credits);

Hardware

3 credits

ESE 507 (Advanced Dig. Sys. Design & Generation, 3 credits);

ESE 525 (Modern Sensors in Artificial Intelligence Applications, 3 credits);

ESE 587 (Hardware Architectures for Deep Learning, 3 credits);

Elective

6 credits for non-Thesis option

 

 

 

3 credits for Thesis option

ESE 502 (Linear Systems, 3 credits);    

ESE 507 (Advanced Dig. Sys. Design & Generation, 3 credits);

ESE 525 (Modern Sensors in Artificial Intelligence Appl., 3 credits);

ESE 533 (Convex Optimization & Eng. Appl., 3 credits);

ESE 537 (Mobile Sensing Systems & Appl., 3 credits);

ESE 543 (Mobile Cloud Computing, 3 credits);

ESE 558 (Digital Image Processing, 3 credits);

ESE 562 (AI Driven Smart Grids, 3 credits);
ESE 564 (Artificial Intelligence for Robotics, 3 credits);

ESE 568 (Computer and Robot Vision, 3 credits);

ESE 587 (Hardware Architectures for Deep Learning, 3 credits);

ESE 589 (Learning Systems for Eng. Appl., 3 credits);

ESE 590 (Practical Machine Learning & Artificial Intelligence, 3 credits);

ESE 592 (Distributed Computation, Control & Learning over Networks, 3 credits);

ESE 670* (Topics in Electrical Sciences, 3 credits)

AMS 580 (Statistical Learning, 3 credits);

MEC 529 (Introduction to Robotics, 3 credits);

CSE 538 (Natural Language Processing, 3 credits).

Any ESE or non-ESE course not listed above but approved by Graduate Program Director (3 credit max.; approval must be obtained before enrollment).

 

 

Thesis Option

Industrial experience

at least 1 but not more than 3 credits

ESE 597 (Practicum in Engineering [Internship], variable credit);

 

In exceptional circumstances, the Graduate Program Director can approve a replacement of ESE 597 credits by ESE 599 (Research for MS students) or ESE 698 (Practicum in teaching) credits.

 

Students who choose to take one credit of industrial experience may consult with their advisor on how to complete the remaining two credits for their degree.

Research experience

at least 6 credits

ESE 599 (Research for M.S. students, variable and repetitive credit);

Teaching experience

not required but can be used (maximum 3 credits)

ESE 698 (Practicum in teaching, variable credits);

 

Non-Thesis Option

Industrial experience

3 credits

ESE 597 (Practicum in Engineering [Internship], variable credit);

 

In exceptional circumstances, the Graduate Program Director can approve a replacement of ESE 597 credits by ESE 599 (Research for MS students) or ESE 698 (Practicum in teaching) credits.

To meet the 30-credit minimum for the program, non-thesis students may take one of the following:

Research experience

 Maximum 3 credits

ESE 599 (Research for M.S. students, variable and repetitive credit);

Teaching experience

Maximum 3 credits

ESE 698 (Practicum in teaching, variable credits);

Additional Elective

3 credits

Any course listed above not already used to fulfill another program requirement OR Any ESE or non-ESE course not listed above but approved by Graduate Program Director (3 credit max.; approval must be obtained before enrollment).

* ESE 670 – Topics in Electrical Sciences (3 credits) is the course with variable content, and it can be approved by the Graduate Program Director as an elective course for the EAI MS degree when the course topic corresponds to the program area.