Course Name: Reinforcement Learning

Course abstract

Reinforcement learning is a paradigm that aims to model the trial-and-error learning process that is needed in many problem situations where explicit instructive signals are not available. It has roots in operations research, behavioral psychology and AI. The goal of the course is to introduce the basic mathematical foundations of reinforcement learning, as well as highlight some of the recent directions of research.


Course Instructor

Media Object

Dr. Balaraman Ravindran

Prof. Balaraman Ravindran completed his Ph.D. at the Department of Computer Science, University of Massachusetts, Amherst. He worked with Prof. Andrew G. Barto on an algebraic framework for abstraction in Reinforcement Learning. Dr. Ravindrans current research interests spans the broader area of machine learning, ranging from Spatiotemporal Abstractions in Reinforcement Learning to social network analysis and Data/Text Mining
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Teaching Assistant(s)

PRIYATOSH MISHRA

 Course Duration : Jul-Oct 2016

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 Syllabus

 Enrollment : 23-May-2016 to 18-Jul-2016

 Exam registration : 25-Jul-2016 to 20-Sep-2016

 Exam Date : 16-Oct-2016, 23-Oct-2016

Enrolled

1230

Registered

6

Certificate Eligible

3

Certified Category Count

Gold

0

Elite

0

Successfully completed

3

Participation

1

Success

Elite

Gold





Legend

>=90 - Elite + Gold
60-89 - Elite
40-59 - Successfully Completed
<40 - No Certificate

Final Score Calculation Logic

  • Assignment Score = Average of best 8 out of 12 assignments.
  • FINAL SCORE (Score on Certificate) = 75% of Exam Score + 25% of Assignment Score.
  • NOTE:Assignmnet 0 has not been been considered for calculation of assignment score which is been instructed by Professor
Reinforcement Learning - Toppers list

THIAGARAJAN SRIDHAR 75%

SRI SIVASUBRAMANIYA NADAR COLLEGE OF ENGINEERING

Assignment

Exam score

Final score

Score Distribution Graph - Legend

Assignment Score: Distribution of average scores garnered by students per assignment.
Exam Score : Distribution of the final exam score of students.
Final Score : Distribution of the combined score of assignments and final exam, based on the score logic.