Course Name: Deep Learning

Course abstract

The availability of huge volume of Image and Video data over the internet has made the problem of data analysis and interpretation a really challenging task. Deep Learning has proved itself to be a possible solution to such Computer Vision tasks. Not only in Computer Vision, Deep Learning techniques are also widely applied in Natural Language Processing tasks. In this course we will start with traditional Machine Learning approaches, e.g. Bayesian Classification, Multilayer Perceptron etc. and then move to modern Deep Learning architectures like Convolutional Neural Networks, Autoencoders etc. On completion of the course students will acquire the knowledge of applying Deep Learning techniques to solve various real life problems.


Course Instructor

Media Object

Prof. Prabir Kumar Biswas

Dr. Prabir Kr. Biswas completed his B.Tech(Hons), M.Tech and Ph.D from the Department of Electronics and Electrical Communication Engineering, IIT Kharagpur, India in the year 1985, 1989 and 1991 respectively. From 1985 to 1987 he was with Bharat Electronics Ltd. Ghaziabad as a deputy engineer. Since 1991 he has been working as a faculty member in the department of Electronics and Electrical Communication Engineering, IIT Kharagpur, where he is currently holding the position of Professor and Head of the Department. Prof. Biswas visited University of Kaiserslautern, Germany under the Alexander von Humboldt Research Fellowship during March 2002 to February 2003. Prof. Biswas has more than a hundred research publications in international and national journals and conferences and has filed seven international patents. His area of interest are image processing, pattern recognition, computer vision, video compression, parallel and distributed processing and computer networks. He is a senior member of IEEE and was the chairman of the IEEE Kharagpur Section, 2008.
More info

Teaching Assistant(s)

Manashi Chakraborty

P.hD

Sutanu Bera

P.hD

 Course Duration : Jul-Oct 2019

  View Course

 Syllabus

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

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

 Exam Date : 16-Nov-2019, 16-Nov-2019

Enrolled

8745

Registered

440

Certificate Eligible

287

Certified Category Count

Gold

5

Silver

67

Elite

123

Successfully completed

92

Participation

66

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.
Deep Learning - Toppers list
Top 1 % of Certified Candidates

ANKIT 92%

INDIAN INSTITUTE OF TECHNOLOGY,ROORKEE

AJAY 92%

INDIAN INSTITUTE OF INFORMATION TECHNOLOGY, DESIGN AND MANUFACTURING, KANCHEEPURAM

NILARUN MUKHERJEE 91%

BENGAL INSTITUTE OF TECHNOLOGY


Top 2 % of Certified Candidates

KSHITIJ PHULARE 90%

BHARATIYA VIDYA BHAVANS SARDAR PATEL INSTITUTE OF TECHNOLOGY

VIJAYAKUMAR PONNUSAMY 90%

S.R.M. INSTITUTE OF SCIENCE AND TECHNOLOGY

KISHORE KUMAR DESETTI 88%

TCS


Top 5 % of Certified Candidates

TAMMALI DEEPAK 87%

SASTRA DEEMED TO BE UNIVERSITY

DNYANESHWAR DAMODAR BASALGE 87%

Skoda Auto India Private Limited

KUNKALA NAGARJUNA REDDY 86%

MREC

BALAJI B 85%

INDIAN INSTITUTE OF TROPICAL METEOROLOGY

RAJ CHANDVANIYA 84%

BHARATIYA VIDYA BHAVANS SARDAR PATEL INSTITUTE OF TECHNOLOGY

SHIVANI BUTALA 84%

BHARATIYA VIDYA BHAVANS SARDAR PATEL INSTITUTE OF TECHNOLOGY

DAMNIK MAHENDRAKUMAR JAIN 83%

BHARATIYA VIDYA BHAVANS SARDAR PATEL INSTITUTE OF TECHNOLOGY

ASHISHKUMAR KIRITBHAI GOR 83%

DHARMSINH DESAI UNIVERSITY,NADIAD

DEEPANKAR ACHARYYA 83%

TEZPUR UNIVERSITY

ADITYA MEHTA 83%

BHARATIYA VIDYA BHAVANS SARDAR PATEL INSTITUTE OF TECHNOLOGY

Enrollment Statistics

Total Enrollment: 8745

Registration Statistics

Total Registration : 440

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.