* WIP: Stable diffusion WebGPU port * Load whole model: split safetensor to avoid Chrome allocation limit * Gitignore .DS_Store, remove debug print * Clip tokenizer in JS * WIP: Compile model in parts (text model, diffusor, get_x_prev_and_pred_x0, decoder), and recreate forward logic in JS * e2e stable diffusion flow * Create initial random latent tensor in JS * SD working e2e * Log if some weights were not loaded properly * Remove latent_tensor.npy used for debugging * Cleanup, remove useless logs * Improve UI * Add progress bar * Remove .npy files used for debugging * Add clip tokenizer as external dependency * Remove alphas_cumprod.js and load it from safetensors * Refactor * Simplify a lot * Dedup base when limiting elementwise merge (webgpu) * Add return type to safe_load_metadata * Do not allow run when webgpu is not supported * Add progress bar, refactor, fix special names * Add option to chose from local vs huggingface weights * lowercase tinygrad :) * fp16 model dl, decompression client side * Cache f16 model in browser, better progress * Cache miss recovery --------- Co-authored-by: George Hotz <72895+geohot@users.noreply.github.com>
tinygrad: For something between PyTorch and karpathy/micrograd. Maintained by tiny corp.
Homepage | Documentation | Examples | Showcase | Discord
This may not be the best deep learning framework, but it is a deep learning framework.
Due to its extreme simplicity, it aims to be the easiest framework to add new accelerators to, with support for both inference and training. If XLA is CISC, tinygrad is RISC.
tinygrad is still alpha software, but we raised some money to make it good. Someday, we will tape out chips.
Features
LLaMA and Stable Diffusion
tinygrad can run LLaMA and Stable Diffusion!
Laziness
Try a matmul. See how, despite the style, it is fused into one kernel with the power of laziness.
DEBUG=3 python3 -c "from tinygrad.tensor import Tensor;
N = 1024; a, b = Tensor.rand(N, N), Tensor.rand(N, N);
c = (a.reshape(N, 1, N) * b.permute(1,0).reshape(1, N, N)).sum(axis=2);
print((c.numpy() - (a.numpy() @ b.numpy())).mean())"
And we can change DEBUG to 4 to see the generated code.
Neural networks
As it turns out, 90% of what you need for neural networks are a decent autograd/tensor library. Throw in an optimizer, a data loader, and some compute, and you have all you need.
Neural network example (from test/models/test_mnist.py)
from tinygrad.tensor import Tensor
import tinygrad.nn.optim as optim
class TinyBobNet:
def __init__(self):
self.l1 = Tensor.uniform(784, 128)
self.l2 = Tensor.uniform(128, 10)
def forward(self, x):
return x.dot(self.l1).relu().dot(self.l2).log_softmax()
model = TinyBobNet()
optim = optim.SGD([model.l1, model.l2], lr=0.001)
# ... complete data loader here
out = model.forward(x)
loss = out.mul(y).mean()
optim.zero_grad()
loss.backward()
optim.step()
Accelerators
tinygrad already supports numerous accelerators, including:
And it is easy to add more! Your accelerator of choice only needs to support a total of 26 (optionally 27) low level ops. More information can be found in the documentation for adding new accelerators.
Installation
The current recommended way to install tinygrad is from source.
From source
git clone https://github.com/tinygrad/tinygrad.git
cd tinygrad
python3 -m pip install -e .
Don't forget the . at the end!
Documentation
Documentation along with a quick start guide can be found in the docs/ directory.
Quick example comparing to PyTorch
from tinygrad.tensor import Tensor
x = Tensor.eye(3, requires_grad=True)
y = Tensor([[2.0,0,-2.0]], requires_grad=True)
z = y.matmul(x).sum()
z.backward()
print(x.grad.numpy()) # dz/dx
print(y.grad.numpy()) # dz/dy
The same thing but in PyTorch:
import torch
x = torch.eye(3, requires_grad=True)
y = torch.tensor([[2.0,0,-2.0]], requires_grad=True)
z = y.matmul(x).sum()
z.backward()
print(x.grad.numpy()) # dz/dx
print(y.grad.numpy()) # dz/dy
Contributing
There has been a lot of interest in tinygrad lately. Here are some basic guidelines for contributing:
- Bug fixes are the best and always welcome! Like this one.
- If you don't understand the code you are changing, don't change it!
- All code golf PRs will be closed, but conceptual cleanups are great.
- Features are welcome. Though if you are adding a feature, you need to include tests.
- Improving test coverage is great, with reliable non-brittle tests.
Additional guidelines can be found in CONTRIBUTING.md.
Running tests
For more examples on how to run the full test suite please refer to the CI workflow.
Some examples:
python3 -m pip install -e '.[testing]'
python3 -m pytest
python3 -m pytest -v -k TestTrain
python3 ./test/models/test_train.py TestTrain.test_efficientnet
