×

Lightning is a way to organize your PyTorch code to decouple the science code from the engineering. It's more of a style-guide than a framework. In Lightning, you organize your code into 3 distinct categories: 1. Research code (goes in the LightningModule). 2. Engineering code (you delete, and is handled by the Trainer). 3. Non-essential research code (logging, etc. this goes in Callbacks). Although your research/production project might start simple, once you add things like GPU AND TPU training, 16-bit precision, etc, you end up spending more time engineering than researching. Lightning automates AND rigorously tests those parts for you. Overall, Lightning guarantees rigorously tested, correct, modern best practices for the automated parts.

Uploaded Mon Mar 31 23:51:20 2025
md5 checksum db1e850306847f159a308f5378c1ee8a
arch x86_64
build py311h06a4308_0
depends fsspec >=2022.5.0, lightning-utilities >=0.8.0, numpy >=1.17.2,<2.0a0, packaging >=20.0, python >=3.11,<3.12.0a0, pytorch >=2.0.0, pyyaml >=5.4, torchmetrics >=0.7.0, tqdm >=4.57.0, typing-extensions >=4.4.0
license Apache-2.0
license_family Apache
md5 db1e850306847f159a308f5378c1ee8a
name pytorch-lightning
platform linux
sha1 1fae678cf8fb0b111b63b4c1298027c7c93014ba
sha256 effb9f57c110a4de4244ab45a67fd33d81e863be94bae6a27c45da7d84202803
size 1147343
subdir linux-64
timestamp 1719924349436
version 2.3.0