Course Name: Neural Networks for Signal Processing - I

Course abstract

This will be an introductory graduate level course in neural networks for signal processing. It would be part-I of a III part series on neural networks and learning systems that the instructor intends to introduce and cover neural networks at the graduate level. The course starts with a motivation of how the human brain is inspirational to building artificial neural networks. The neural networks are viewed as directed graphs with various network topologies towards learning tasks driven by optimization techniques. The course deals with Rosenblatt’s perceptron, regression modeling, multilayer perceptron (MLP), kernel methods and radial basis functions (RBF), support vector machines (SVM), regularization theory and principal component analysis (Hebbian and kernel based). Towards the end, topics such as convolutive neural networks etc. that are based on the MLP basic topics will be touched upon. The course will have assignments that are theoretical and computer based working with actual data.


Course Instructor

Media Object

Prof. Shayan Srinivasa Garani

Dr. Shayan Garani Srinivasa received his Ph.D. in Electrical and Computer Engineering from Georgia Institute of Technology \u2013 Atlanta, M.S. from the University of Florida \u2013 Gainesville and B.E. from Mysore University. Dr. Srinivasa has held senior engineering positions within Broadcom Corporation, ST Microelectronics and Western Digital. Prior to joining IISc, Dr. Srinivasa was leading various research activities, managing and directing research and external university research programs within Western Digital. He was the chairman for signal processing for the IDEMA-ASTC and a co-chair for the overall technological committee. He is the author of a book, several journal and conference publications, holds U.S patents in the area of data storage. Dr. Srinivasa is a senior member of the IEEE, OSA and the chairman for the Photonic Detection group within the Optical Society of America. His research interests include broad areas of applied mathematics, physical modeling, coding, signal processing and VLSI systems architecture for novel magnetic/optical recording channels, quantum information processing, neural nets and math modeling of complex systems.


Teaching Assistant(s)

Zitha Sasindran

P.hD

Prayag Gowgi

P.hD

Machireddy Amrutha

P.hD

 Course Duration : Jul-Oct 2019

  View Course

 Enrollment : 15-May-2019 to 05-Aug-2019

 Exam registration : 01-Jun-2019 to 30-Sep-2019

 Exam Date : 17-Nov-2019

Enrolled

2201

Registered

57

Certificate Eligible

20

Certified Category Count

Gold

0

Silver

1

Elite

10

Successfully completed

9

Participation

6

Success

Elite

Silver

Gold





Legend

AVERAGE ASSIGNMENT SCORE >=10/25 AND EXAM SCORE >= 30/75 AND FINAL SCORE >=40
BASED ON THE FINAL SCORE, Certificate criteria will be as below:
>=90 - Elite + Gold
75-89 -Elite + Silver
>=60 - Elite
40-59 - Successfully Completed

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.
Neural Networks for Signal Processing - I - Toppers list

DR SUDARSHAN PATILKULKARNI 75%

SRI JAYACHAMARAJENDRA COLLEGE OF ENGINEERING

KAMALAKANNAN SUBRAMANI 73%

Saankhya Labs Private Limited

Enrollment Statistics

Total Enrollment: -1

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Registration Statistics

Total Registration : 57

Assignment Statistics




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.