mgl

ML library

A machine learning library for building and training neural networks and other models.

Common Lisp machine learning library.

GitHub

591 stars
40 watching
39 forks
Language: Common Lisp
last commit: over 1 year ago
Linked from 2 awesome lists


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
hshindo/merlin.jl A Julia-based framework for building and training neural networks 144
modern-fortran/neural-fortran A parallel framework for building neural networks in Fortran 406
erfanzar/easydel A flexible framework for training and serving machine learning models with JAX/Flax 206
quantumliu/matdl A lightweight MATLAB deeplearning toolbox for efficient neural network training and prediction. 54
mmaul/clml A high-performance statistical machine learning library written in Common Lisp 261
fedml-ai/spreadgnn A framework for decentralized multi-task learning of graph neural networks on molecular data with guaranteed convergence 44
xamber/varis A Go-based neural network library for building and training artificial neural networks. 55
zcemycl/matlab-gan A collection of MATLAB implementations for Generative Adversarial Networks (GANs) and related deep learning techniques 186
gianlucabertani/machinelearning A machine learning framework for native code on Macs with support for neural networks and natural language processing. 37
melisgl/mgl-gpr A comprehensive library of generational optimization algorithms using evolutionary techniques 63
google-research/tf-slim A lightweight library for defining and training neural networks in TensorFlow. 372
millionintegrals/vel A collection of modular deep learning components that can be easily configured and reused in various applications. 276
pluskid/mocha.jl A deep learning framework for Julia inspired by Caffe, providing an efficient and modular way to train neural networks. 1,287
molcik/python-neuron A Python library for implementing and training various neural network architectures 40
juliaai/mlj.jl A toolbox providing common interfaces and meta-algorithms for machine learning models in Julia. 1,800