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README.md |
README.md
This library strives to serve as a comprehensive deep learning framework, offering exceptional flexibility and written in Rust. Our objective is to cater to both researchers and practitioners by simplifying the process of experimenting, training, and deploying models.
Disclamer Burn is currently in active development, and there will be breaking changes. While any resulting issues are likely to be easy to fix, there are no guarantees at this stage.
Sections
Features
- Customizable and user-friendly neural network module 🔥
- Comprehensive training capabilities, including
metrics
,logging
, andcheckpointing
📈 - Versatile Tensor crate with pluggable backends 🔧
- Dataset crate with a variety of utilities and sources 📚
- Import crate for seamless integration of pretrained models 📦
Get Started
The best way to get started with burn
is to clone the repo and play with the examples.
This may also be a good idea to take a look the main components of burn
to get a quick overview of the fundamental building blocks.
If you're interested in how the framework works, you can read our architecture document.
Examples
- MNIST train a model on CPU/GPU using different backends.
- MNIST Inference Web run trained model in the browser for inference.
- Text Classification train a transformer encoder from scratch on GPU.
- Text Generation train an autoregressive transformer from scratch on GPU.
Components
Understanding the key components and philosophy of burn
can greatly help when beginning to work with the framework.
Backend
Nearly everything in burn
is based on the Backend
trait, which enables you to run tensor operations using different implementations without having to modify your code.
While a backend may not necessarily have autodiff capabilities, the ADBackend
trait specifies when autodiff is needed.
This trait not only abstracts operations but also tensor, device and element types, providing each backend the flexibility they need.
It's worth noting that the trait assumes eager mode since burn
fully supports dynamic graphs.
However, we may create another API to assist with integrating graph-based backends, without requiring any changes to the user's code.
Tensor
At the core of burn lies the Tensor
struct, which encompasses multiple types of tensors, including Float
, Int
, and Bool
.
The element types of these tensors are specified by the backend and are usually designated as a generic argument (e.g., NdArrayBackend<f32>
).
Although the same struct is used for all tensors, the available methods differ depending on the tensor kind.
You can specify the desired tensor kind by setting the third generic argument, which defaults to Float
.
The first generic argument specifies the backend, while the second specifies the number of dimensions.
use burn::tensor::backend::Backend;
use burn::tensor::{Tensor, Int};
fn function<B: Backend>(tensor_float: Tensor<B, 2>) {
let _tensor_bool = tensor_float.clone().equal_elem(2.0); // Tensor<B, 2, Bool>
let _tensor_int = tensor_float.argmax(1) // Tensor<B, 2, Int>
}
As demonstrated in the previous example, nearly all operations require owned tensors as parameters, which means that calling Clone
explicitly is necessary when reusing the same tensor multiple times.
However, there's no need to worry since the tensor's data won't be copied, it will be flagged as readonly when multiple tensors use the same allocated memory.
This enables backends to reuse tensor data when possible, similar to a copy-on-write pattern, while remaining completely transparent to the user.
Autodiff
The 'Backend' trait is highly flexible, enabling backpropagation to be implemented using a simple backend decorator, which makes any backend differentiable.
use burn::tensor::backend::{ADBackend, Backend};
use burn::tensor::{Distribution, Tensor};
use burn_autodiff::ADBackendDecorator;
use burn_ndarray::NdArrayBackend;
fn linear<B: Backend>(x: Tensor<B, 2>, weight: Tensor<B, 2>, bias: Tensor<B, 2>) -> Tensor<B, 2> {
x.matmul(weight) + bias
}
fn main() {
type Backend = NdArrayBackend<f32>;
let weight = Tensor::random([3, 3], Distribution::Standard);
let bias = Tensor::zeros([1, 3]);
let x = Tensor::random([3, 3], Distribution::Standard);
let y = linear::<Backend>(x.clone(), weight.clone(), bias.clone());
// y.backward() // Method backward doesn't exist
let y = linear::<ADBackendDecorator<Backend>>(
Tensor::from_inner(x),
Tensor::from_inner(weight).require_grad(),
Tensor::from_inner(bias).require_grad(),
);
let grads = y.backward(); // Method exists
}
Module
The Module
derive allows you to create your own neural network modules, similar to PyTorch.
The derive function only generates the necessary methods to essentially act as a parameter container for your type, it makes no assumptions about how the forward pass is declared.
use burn::nn;
use burn::module::Module;
use burn::tensor::backend::Backend;
#[derive(Module, Debug)]
pub struct PositionWiseFeedForward<B: Backend> {
linear_inner: Linear<B>,
linear_outer: Linear<B>,
dropout: Dropout,
gelu: GELU,
}
impl<B: Backend> PositionWiseFeedForward<B> {
pub fn forward<const D: usize>(&self, input: Tensor<B, D>) -> Tensor<B, D> {
let x = self.linear_inner.forward(input);
let x = self.gelu.forward(x);
let x = self.dropout.forward(x);
self.linear_outer.forward(x)
}
}
Note that all fields declared in the struct must also implement the Module
trait.
The Tensor
struct doesn't implement Module
, but Param<Tensor<B, D>>
does.
Config
The Config
derive lets you define serializable and deserializable configurations or hyper-parameters for your modules or any components.
use burn::config::Config;
#[derive(Config)]
pub struct PositionWiseFeedForwardConfig {
pub d_model: usize,
pub d_ff: usize,
#[config(default = 0.1)]
pub dropout: f64,
}
The derive also adds useful methods to your config, similar to a builder pattern.
fn main() {
let config = PositionWiseFeedForwardConfig::new(512, 2048);
println!("{}", config.d_model); // 512
println!("{}", config.d_ff); // 2048
println!("{}", config.dropout); // 0.1
let config = config.with_dropout(0.2);
println!("{}", config.dropout); // 0.2
}
Learner
The Learner
is the main struct
that let you train a neural network with support for logging
, metric
, checkpointing
and more.
In order to create a learner, you must use the LearnerBuilder
.
use burn::train::LearnerBuilder;
use burn::train::metric::{AccuracyMetric, LossMetric};
use burn::record::DefaultRecordSettings;
fn main() {
let dataloader_train = ...;
let dataloader_valid = ...;
let model = ...;
let optim = ...;
let learner = LearnerBuilder::new("/tmp/artifact_dir")
.metric_train_plot(AccuracyMetric::new())
.metric_valid_plot(AccuracyMetric::new())
.metric_train(LossMetric::new())
.metric_valid(LossMetric::new())
.with_file_checkpointer::<DefaultRecordSettings>(2)
.num_epochs(10)
.build(model, optim);
let _model_trained = learner.fit(dataloader_train, dataloader_valid);
}
See this example for a real usage.
no_std support
Burn supports no_std
with alloc
for the inference mode with the NDArray backend.
Simply disable the default features of the burn
and burn-ndarray
crates (minimum required to run the inference mode).
See the burn-no-std-tests example as a reference implementation.
Additionally burn-core
and burn-tensor
crates support no_std
with alloc
if needed to direclty include them as dependencies (the burn
crates reexports burn-core
and burn-tensor
).
Note, under the no_std
mode, a random seed is generated during the build time if the seed is not initialized by Backend::seed
method.
Additionally, spin::mutex::Mutex is used in place of std::sync::Mutex under the no_std
mode.
Contributing
Before contributing, please take a moment to review our code of conduct. It's also highly recommended to read our architecture document, which explains our architectural decisions.
Sponsors
You can sponsor the founder of Burn from his GitHub Sponsors profile. The Burn-rs organization doesn't yet have a fiscal entity, but other sponsor methods might become available as the project grows.
Thanks to all current sponsors 🙏.
License
Burn is distributed under the terms of both the MIT license and the Apache License (Version 2.0). See LICENSE-APACHE and LICENSE-MIT for details. Opening a pull request is assumed to signal agreement with these licensing terms.