Torch | Scientific computing for LuaJIT.

A scientific computing framework for LuaJIT

What is Torch?

Torch is a scientific computing framework with wide support for machine learning algorithms that puts GPUs first. It is easy to use and efficient, thanks to an easy and fast scripting language, LuaJIT, and an underlying C/CUDA implementation.

A summary of core features:

  • a powerful N-dimensional array
  • lots of routines for indexing, slicing, transposing, …
  • amazing interface to C, via LuaJIT
  • linear algebra routines
  • neural network, and energy-based models
  • numeric optimization routines
  • Fast and efficient GPU support
  • Embeddable, with ports to iOS and Android backends

Why Torch?

The goal of Torch is to have maximum flexibility and speed in building your scientific algorithms while making the process extremely simple. Torch comes with a large ecosystem of community-driven packages in machine learning, computer vision, signal processing, parallel processing, image, video, audio and networking among others, and builds on top of the Lua community.

At the heart of Torch are the popular neural network and optimization libraries which are simple to use, while having maximum flexibility in implementing complex neural network topologies. You can build arbitrary graphs of neural networks, and parallelize them over CPUs and GPUs in an efficient manner.

Using Torch

Start with our Getting Started guide to download and try Torch yourself. Torch is open-source, so you can also start with the code on the GitHub repo.

Torch is constantly evolving: it is already used within Facebook, Google, Twitter, NYU, IDIAP, Purdue and several other companies and research labs.

Torch7 maintained by Ronan, Clément, Koray and Soumith.