HuwCampbell/grenade
Deep Learning in Haskell
This is a machine learning tool that helps Haskell developers build and specify deep learning models, particularly recurrent neural networks. It takes network architecture definitions in Haskell code and outputs a functional, type-safe neural network. It is designed for Haskell developers who need to integrate machine learning capabilities into their applications.
1,453 stars. No commits in the last 6 months.
Use this if you are a Haskell developer looking to implement deep learning models, especially recurrent neural networks, with strong type safety and composability.
Not ideal if you are not familiar with Haskell or if you need a machine learning framework that focuses on ease of use for non-developers.
Stars
1,453
Forks
82
Language
Haskell
License
BSD-2-Clause
Category
Last pushed
Dec 08, 2023
Commits (30d)
0
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