Search Results
DSCI 471 Applied Deep Learning 3.0 Credits
The goals of this course are to introduce basic theory of deep learning in data science applications, to understand how deep learning algorithms work at a high level, and to apply deep learning algorithms to key data science problems in different disciplines. The course introduces all relevant topics in deep learning: neural networks, backpropagation, convolution neural networks, recurrent neural networks and deep reinforcement learning. Students will be exposed to various representative algorithms in the concept level and learn their trade-offs. Students will gain hands-on experiences with assignments and a term project. Students will be prepared to attack new problems using various deep learning methods.
Repeat Status: Not repeatable for credit
Prerequisites: INFO 213 [Min Grade: D] and MATH 201 [Min Grade: D]
Computer Science BSCS
https://catalog.drexel.edu/undergraduate/collegeofcomputingandinformatics/computerscience/
...or any of the following courses: DSCI 351 , DSCI 471 , INFO 310 , INFO 323 , ECE...
Computer Science BA
https://catalog.drexel.edu/undergraduate/collegeofcomputingandinformatics/computerscienceba/
...or any of the following courses: DSCI 351 , DSCI 471 , INFO 310 , INFO 323 , ECE...
Computer Science BS / Computer Science MS
https://catalog.drexel.edu/undergraduate/collegeofcomputingandinformatics/computersciencebs-ms/
...or any of the following courses: DSCI 351 , DSCI 471 , INFO 310 , INFO 323 ECE...