Description
Deep learning approaches have obtained very high performance across many different natural language processing tasks. This course provides a deep excursion from early models to cutting-edge research to help you implement, train, debug, visualize and potentially invent your own neural network models for a variety of language understanding tasks.
Prerequisites
Programming abilities (python), linear algebra, Math21 or equivalent, machine learning background (CS229 or similar).
CS224N, EE364A, or CS231N are recommended.
Topics include
- Common programming frameworks
- Complex neural network models
- Large scale NLP problems
- Machine translation
- Sentiment analysis
- Speech tagging