The lightweight PyTorch wrapper for ML researchers. Scale your models. Write less boilerplate.
Simple installation from PyPI
pip install pytorch-lightning
Here's a minimal example without a validation or test loop.
# this is just a plain nn.Module with some structure
class LitClassifier(pl.LightningModule):
def __init__(self):
super().__init__()
self.l1 = torch.nn.Linear(28 * 28, 10)
def forward(self, x):
return torch.relu(self.l1(x.view(x.size(0), -1)))
def training_step(self, batch, batch_nb):
x, y = batch
loss = F.cross_entropy(self(x), y)
tensorboard_logs = {'train_loss': loss}
return {'loss': loss, 'log': tensorboard_logs}
def configure_optimizers(self):
return torch.optim.Adam(self.parameters(), lr=0.02)
# train!
train_loader = DataLoader(MNIST(os.getcwd(), train=True, download=True, transform=transforms.ToTensor()), batch_size=32)
model = LitClassifier()
trainer = pl.Trainer(gpus=8, precision=16)
trainer.fit(model, train_loader)
Other examples:
GAN
BERT
DQN
MNIST on TPUs
Lightning is a way to organize your PyTorch code to decouple the science code from the engineering. It's more of a PyTorch style-guide than a framework.
In Lightning, you organize your code into 3 distinct categories:
- Research code (goes in the LightningModule).
- Engineering code (you delete, and is handled by the Trainer).
- Non-essential research code (logging, etc... this goes in Callbacks).
Here's an example of how to refactor your research code into a LightningModule.
The rest of the code is automated by the Trainer!
All the automated code by the Trainer is tested rigorously with every new PR.
In fact, we also train a few models using a vanilla PyTorch loop and compare with the same model trained using the Trainer to make sure we achieve the EXACT same results. Check out the parity tests here.
Overall, Lightning guarantees rigorously tested, correct, modern best practices for the automated parts.
As you see, you're just organizing your PyTorch code - there's no abstraction.
And for the stuff that the Trainer abstracts out, you can override any part you want to do things like implement your own distributed training, 16-bit precision, or even a custom backward pass.
For example, here you could do your own backward pass
class LitModel(LightningModule):
def optimizer_step(self, current_epoch, batch_idx, optimizer, optimizer_idx,
second_order_closure=None):
optimizer.step()
optimizer.zero_grad()
For anything else you might need, we have an extensive callback system you can use to add arbitrary functionality not implemented by our team in the Trainer.
- Professional researchers
- Ph.D. students
- Corporate production teams
If you're just getting into deep learning, we recommend you learn PyTorch first! Once you've implemented a few models, come back and use all the advanced features of Lightning :)
Everything in Blue! This is how lightning separates the science (red) from engineering (blue).
If your code is not a huge mess you should be able to organize it into a LightningModule in less than 1 hour. If your code IS a mess, then you needed to clean up anyhow ;)
Check out this step-by-step guide.
Or watch this video.
Use our seed-project aimed at reproducibility!
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.
- 8 core contributors who are all a mix of professional engineers, Research Scientists, Ph.D. students from top AI labs.
- 100+ community contributors.
Lightning is also part of the PyTorch ecosystem which requires projects to have solid testing, documentation and support.
- How do I use it
- What lightning automates
- Tensorboard integration
- Lightning features
- Examples
- Tutorials
- Asking for help
- Contributing
- Bleeding edge install
- Lightning Design Principles
- Lightning team
- FAQ
Here's how you would organize a realistic PyTorch project into Lightning.
The LightningModule defines a system such as seq-2-seq, GAN, etc... It can ALSO define a simple classifier.
In summary, you:
- Define a LightningModule
class LitSystem(pl.LightningModule):
def __init__(self):
super().__init__()
# not the best model...
self.l1 = torch.nn.Linear(28 * 28, 10)
def forward(self, x):
return torch.relu(self.l1(x.view(x.size(0), -1)))
def training_step(self, batch, batch_idx):
...
- Fit it with a Trainer
from pytorch_lightning import Trainer
model = LitSystem()
# most basic trainer, uses good defaults
trainer = Trainer()
trainer.fit(model)
Anything! Remember, that this is just organized PyTorch code. The Training step defines the core complexity found in the training loop.
# define what happens for training here
def training_step(self, batch, batch_idx):
x, y = batch
# define your own forward and loss calculation
hidden_states = self.encoder(x)
# even as complex as a seq-2-seq + attn model
# (this is just a toy, non-working example to illustrate)
start_token = '<SOS>'
last_hidden = torch.zeros(...)
loss = 0
for step in range(max_seq_len):
attn_context = self.attention_nn(hidden_states, start_token)
pred = self.decoder(start_token, attn_context, last_hidden)
last_hidden = pred
pred = self.predict_nn(pred)
loss += self.loss(last_hidden, y[step])
#toy example as well
loss = loss / max_seq_len
return {'loss': loss}
# define what happens for validation here
def validation_step(self, batch, batch_idx):
x, y = batch
# or as basic as a CNN classification
out = self(x)
loss = my_loss(out, y)
return {'loss': loss}
And without changing a single line of code, you could run on CPUs
trainer = Trainer(max_epochs=1)
Or GPUs
# 8 GPUs
trainer = Trainer(max_epochs=1, gpus=8)
# 256 GPUs
trainer = Trainer(max_epochs=1, gpus=8, num_nodes=32)
Or TPUs
# Distributes TPU core training
trainer = Trainer(tpu_cores=8)
# Single TPU core training
trainer = Trainer(tpu_cores=[1])
When you're done training, run the test accuracy
trainer.test()
Lightning has out-of-the-box integration with the popular logging/visualizing frameworks
- GPU training
- Distributed GPU (cluster) training
- TPU training
- EarlyStopping
- Logging/Visualizing
- Checkpointing
- Experiment management
- Full list here
Check out this awesome list of research papers and implementations done with Lightning.
- Contextual Emotion Detection (DoubleDistilBert)
- Generative Adversarial Network
- Hyperparameter optimization with Optuna
- Image Inpainting using Partial Convolutions
- MNIST on TPU
- NER (transformers, TPU, huggingface)
- NeuralTexture (CVPR)
- Recurrent Attentive Neural Process
- Siamese Nets for One-shot Image Recognition
- Speech Transformers
- Transformers transfer learning (Huggingface)
- Transformers text classification
- VAE Library of over 18+ VAE flavors
Check out our introduction guide to get started. Or jump straight into our tutorials.
Welcome to the Lightning community!
If you have any questions, feel free to:
- read the docs.
- Search through the issues.
- Ask on stackoverflow with the tag pytorch-lightning.
- Join our slack.
How do I use Lightning for rapid research?
Here's a walk-through
Why was Lightning created?
Lightning has 3 goals in mind:
- Maximal flexibility while abstracting out the common boilerplate across research projects.
- Reproducibility. If all projects use the LightningModule template, it will be much much easier to understand what's going on and where to look! It will also mean every implementation follows a standard format.
- Democratizing PyTorch power-user features. Distributed training? 16-bit? know you need them but don't want to take the time to implement? All good... these come built into Lightning.
How does Lightning compare with Ignite and fast.ai?
Here's a thorough comparison.
Is this another library I have to learn?
Nope! We use pure Pytorch everywhere and don't add unnecessary abstractions!
Are there plans to support Python 2?
Nope.
Are there plans to support virtualenv?
Nope. Please use anaconda or miniconda.
conda activate my_env
pip install pytorch-lightning
Which PyTorch versions do you support?
- PyTorch 1.1.0
# install pytorch 1.1.0 using the official instructions # install test-tube 0.6.7.6 which supports 1.1.0 pip install test-tube==0.6.7.6 # install latest Lightning version without upgrading deps pip install -U --no-deps pytorch-lightning
- PyTorch 1.2.0+
pip install pytorch-lightning
If you can't wait for the next release, install the most up to date code with:
- using GIT (locally clone whole repo with full history)
pip install git+https://github.com/PytorchLightning/pytorch-lightning.git@master --upgrade
- using instant zip (last state of the repo without git history)
pip install https://github.com/PytorchLightning/pytorch-lightning/archive/master.zip --upgrade
You can also install any past release 0.X.Y
from this repository:
pip install https://github.com/PytorchLightning/pytorch-lightning/archive/0.X.Y.zip --upgrade
- William Falcon (williamFalcon) (Lightning founder)
- Jirka Borovec (Borda) (ghost :)
- Ethan Harris (ethanwharris) (Torchbearer founder)
- Matthew Painter (MattPainter01) (Torchbearer founder)
- Justus Schock (justusschock) (Former Core Member PyTorch Ignite)
- Nick Eggert (neggert)
- Jeff Ling (jeffling)
- Jeremy Jordan (jeremyjordan)
- Tullie Murrell (tullie)
- Adrian Wälchli (awaelchli)
Building open-source software with only a few part-time people is hard! We've secured funding to make sure we can hire a full-time staff, attend conferences, and move faster through implementing features you request.
Our goal is to build an incredible research platform and a big supportive community. Many open-source projects have gone on to fund operations through things like support and special help for big corporations!
If you are one of these corporations, please feel free to reach out to will@pytorchlightning.ai!
If you want to cite the framework feel free to use this (but only if you loved it 😊):
@article{falcon2019pytorch,
title={PyTorch Lightning},
author={Falcon, WA},
journal={GitHub. Note: https://github. com/williamFalcon/pytorch-lightning Cited by},
volume={3},
year={2019}
}