Machine Learning from Data

CSCI-6100

Introduction to the theory, algorithms, and applications of machine learning (supervised, reinforcement, and unsupervised) from data: What is learning? Is learning feasible? How can it be done? How can it be done well? The course offers a mix of theory, technique, and application with additional selected topics chosen from Pattern Recognition, Decision Trees, Neural Networks, RBF's, Bayesian Learning, PAC Learning, Support Vector Machines, Gaussian processes, and Hidden Markov Models.

4 credits
Prereqs:
none

Past Term Data

Offered
Not Offered
Offered as Cross-Listing Only
No Term Data
Spring Summer Fall
(Session 1) (Session 2)
2023
2022
Machine Learning From Data (4c)
  • Uzma Mushtaque
Seats Taken: 14/40
2021
Machine Learning From Data (4c)
  • Uzma Mushtaque
Seats Taken: 19/20
Machine Learning From Data (4c)
  • Malik Magdon-Ismail
Seats Taken: 37/30
2020
Machine Learning From Data (4c)
  • Uzma Mushtaque
  • Malik Magdon-Ismail
Seats Taken: 38/50
2019
Machine Learning From Data (4c)
  • Malik Magdon-Ismail
Seats Taken: 37/0
2018
Machine Learning From Data (4c)
  • Malik Magdon-Ismail
Seats Taken: 28/0
2017
Machine Learning From Data (3c)
  • Malik Magdon-Ismail
Seats Taken: 43/100
2016
Machine Learning From Data (3c)
  • Malik Magdon-Ismail
Seats Taken: 48/100
2015
Machine Learning From Data (3c)
  • Malik Magdon-Ismail
Seats Taken: 42/50
2014
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 40/30
2013
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 29/20
2012
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 22/60
2011
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 26/60
2010
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 20/60
2009
Machine Learning (3c)
  • Malik Magdon-Ismail
Seats Taken: 22/60
2008
Machine Learning (3c)
  • Sanmay Das
Seats Taken: 12/30
2007
Machine Learning (3c)
  • Sanmay Das
Seats Taken: 8/30