Overview
Explore a keynote presentation from the Haskell 2023 conference that delves into the intersection of Haskell programming and choice-based machine learning. Discover how combining algebraic effects, handlers, and the selection monad can create powerful languages for decision-making models and optimization-driven techniques. Learn about a prototype Haskell library implementation and examine programming examples for stochastic gradient descent, hyperparameter tuning, generative adversarial networks, and reinforcement learning. Gain insights into the potential of Haskell for advancing machine learning programming paradigms, presented by Ningning Xie from Google DeepMind and the University of Toronto.
Syllabus
[Haskell'23] Haskell for choice-based learning
Taught by
ACM SIGPLAN