left
right



Prasanta Kumar Ghosh
PhD Graduate

Signal Analysis and Interpretation Laboratory (SAIL),
Ming Hsieh Dept. of Electrical Engineering,
University of Southern California, Viterbi School of Engineering (USC),
3740 McClintock Ave. - EEB 405,
Los Angeles, CA 90089-2565
.


 
prasanta



CONTACT :
sendmail prasanta.uscatgmaildotcom
prasantgatuscdotedu


Welcome to my homepage!  I have graduated with PhD from Speech Analysis and Interpretation Laboratory (SAIL)in Electrical Engineering in Auguest 2011 under Prof. Shrikanth Narayanan.

I have been in IBM India Research Lab (IRL) in Delhi, India till December 2012.



I am an INSPIRE faculty fellow at Indian Institute of Science (IISc), Bangalore, India. Here is my new homepage



Publications
Teaching
Courses
Resume





















Teaching


I was Teaching Assistant for the following courses at Electrical Engineering at the University of Southern California (USC):

Introduction to Probability and Statistics for Electrical Engineering (EE 364) in Fall 2006
Probability Theory for Engineers (EE 464) in Spring 2007 [See students' feedback]
Random Processes in Engineering (EE 562A) in Fall 2007 [See students' feedback]
Random Processes in Engineering (EE 562A) in Spring 2008 [See students' feedback]



Top






































Courses

At Indian Institute of Science, Bangalore, India
during Masters' of Science (MSc)

At University of Southern California
during PhD
  1. SPEECH INFORMATION PROCESSING
  2. NEURAL NETWORK
  3. COMPUTER VISION
  4. MATHEMATICAL METHODS
  5. ADVANCED DIGITAL SIGNALPROCESSING                                                                    
  6. SPECTRUM ANALYSIS
  1. PROBABILITY THEORY FOR ENGINEERS (EE 464)
  2. WAVELETS (EE 596)
  3. MATHEMATICAL PATTERN RECOGNITION (EE 559)
  4. RANDOM PROCESSES FOR ENGINEERS (EE 562A)
  5. EMPIRICAL METHODS IN NATURAL LANGUAGE PROCESSING (CSCI 562)
  6. ADAPTIVE SIGNAL PROCESSING (EE 583)
  7. STATISTICS FOR ENGINEERS (EE 517)
  8. NEURAL COMPUTATION WITH ARTIFICIAL NEURAL NETWORKS (CS 542)
  9. SELECTED TOPICS IN MACHINE LEARNING (CS 599)



Top