* qcom: driver init
* autogen stubs for msm_kgsl also fixup ioctls to show numbers instead of _IOW macros
* autogen: add adreno commands and registers
* ops_qcom: QcomAllocator + signals
* fix EDEADLK in hwqueue, init timestamps, use opencl compiler for qcom
* qcom: we do not really need all these constants input/output is enough
* qcom: perfctr for CS (do not really need all the rest)
* qcom: HALFREGFOOTPRINT and FULLREGFOOTPRINT are set to be around max
* qcom: explicitly set instruction len based on the shader size
* ops_qcom: Program init
extracts shader from open cl binary
sets input/output buffers
allocates stack
sets cs mode
runs shader
* use data64_le from helpers
* ops_qcom: use fill_kernargs for filling i/o buffers
* ops_qcom: add QcomCopyQueue just for api & set kernargs_args_offset
* new signals & fix exec
* add QCOM to the list of supported devices
* correct QcomComputeQueue._wait using CP_WAIT_REG_MEM
* fix exec, synchronize before copyout
* correct setting num_units for ST_SHADER
* fix gpu hangs on sigs with CP_MEM_WRITE, it is uncached mem anyway
* extract offsets to kernel arguments from opencl binary
* extract constants values and offsets from opencl binary
* handle KGSL_MEMFLAGS_USE_CPU_MAP correctly
* align kernel name to 4 bytes when skipping kernel opencl struct
* skip to consts directly using an offset from opencl binary header
* fix alloc
* get halfreg and fullreg from opencl bin
* set unmultipled global sizes as kernel group in HLSQ_CS_NDRANGE
* parse prg offset from open cl binary
* save loc with HLSQ_CS_CNTL. set this with HLSQ_CONTROL_2_REG
* support for vals in _fill_kernargs
* support 16-bit constants
* use KGSL_CONTEXT_NO_FAULT_TOLERANCE for contexts
this helps to not fall down when executing big kernels
/* Don't time out if the context has disabled it */
if (drawobj->context->flags & KGSL_CONTEXT_NO_FAULT_TOLERANCE)
return;
* minor changes of _exec
* QCOMRenderer
* disable HCQGraph for demo. TOOD: support HCQ update api
* support HCQ
- remove copy queue
- add updates
- add strides for buffs and vars for QCOM
* bufs_stride
* clean ups
* linter
* call super().__init__(value) in QcomSignal
* disable=unused-import
* mypy
* type ignore when queue is on the device
* fix
* query gpu_id.
Will be useful for selecting commands e.g. CP_EVENT_WRITE vs
CP_EVENT_WRITE7
* working timestamps
* free context after device is done
* move gpu stack to the device
* reserve some space with lib_gpu for gpu to write to
this fixes test_interpolate_bilinear
* exclude tests that fails with GPU=1 on qualcomm
* lint
* unmap mem in _gpu_free
* ctxt priority and preemtion policy
* remove old qcom
* pass size to self.device.allocator.free
* skip tests only on qcom
* use kgsl and adreno defines instead of numeric vals
* use allocator for allocating lib_gpu
* update to QcomArgsState from master
* intermediate commit while conquering images
* enable image tests on qcom
* fix shader disasm size, dump textures stuff
* working images
* allow signals to be 0
* set branchstack from OpenCL binary
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* set shared memory size from OpenCL binary
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* update images in QcomArgsState & less loc for images
* set stack sizes from OpenCL binary
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* stack allocation based on OpenCL binary
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* better autogen for kgsl and adreno. no more bitshifts
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* cleanup commit for parse cl lib
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* dont forget actual generated files
* refactor + less loc
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* device.py back
* lint
* ruff
* timestamp divisor
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* fix tex fmt & round global size
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
* dtypes
* 19.2MHz
* -1 loc in _update_exec
* remove noqa
---------
Co-authored-by: George Hotz <72895+geohot@users.noreply.github.com>
Co-authored-by: nimlgen <138685161+nimlgen@users.noreply.github.com>
tinygrad: For something between PyTorch and karpathy/micrograd. Maintained by tiny corp.
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 import Tensor;
N = 1024; a, b = Tensor.rand(N, N), Tensor.rand(N, N);
c = (a.reshape(N, 1, N) * b.T.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.
from tinygrad import Tensor, nn
class LinearNet:
def __init__(self):
self.l1 = Tensor.kaiming_uniform(784, 128)
self.l2 = Tensor.kaiming_uniform(128, 10)
def __call__(self, x:Tensor) -> Tensor:
return x.flatten(1).dot(self.l1).relu().dot(self.l2)
model = LinearNet()
optim = nn.optim.Adam([model.l1, model.l2], lr=0.001)
x, y = Tensor.rand(4, 1, 28, 28), Tensor([2,4,3,7]) # replace with real mnist dataloader
with Tensor.train():
for i in range(10):
optim.zero_grad()
loss = model(x).sparse_categorical_crossentropy(y).backward()
optim.step()
print(i, loss.item())
See examples/beautiful_mnist.py for the full version that gets 98% in ~5 seconds
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 ~25 low level ops.
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 .
Direct (master)
python3 -m pip install git+https://github.com/tinygrad/tinygrad.git
Documentation
Documentation along with a quick start guide can be found on the docs website built from the docs/ directory.
Quick example comparing to PyTorch
from tinygrad 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. Following these guidelines will help your PR get accepted.
We'll start with what will get your PR closed with a pointer to this section:
- No code golf! While low line count is a guiding light of this project, anything that remotely looks like code golf will be closed. The true goal is reducing complexity and increasing readability, and deleting
\ns does nothing to help with that. - All docs and whitespace changes will be closed unless you are a well-known contributor. The people writing the docs should be those who know the codebase the absolute best. People who have not demonstrated that shouldn't be messing with docs. Whitespace changes are both useless and carry a risk of introducing bugs.
- Anything you claim is a "speedup" must be benchmarked. In general, the goal is simplicity, so even if your PR makes things marginally faster, you have to consider the tradeoff with maintainablity and readablity.
- In general, the code outside the core
tinygrad/folder is not well tested, so unless the current code there is broken, you shouldn't be changing it. - If your PR looks "complex", is a big diff, or adds lots of lines, it won't be reviewed or merged. Consider breaking it up into smaller PRs that are individually clear wins. A common pattern I see is prerequisite refactors before adding new functionality. If you can (cleanly) refactor to the point that the feature is a 3 line change, this is great, and something easy for us to review.
Now, what we want:
- Bug fixes (with a regression test) are great! This library isn't 1.0 yet, so if you stumble upon a bug, fix it, write a test, and submit a PR, this is valuable work.
- Solving bounties! tinygrad offers cash bounties for certain improvements to the library. All new code should be high quality and well tested.
- Features. However, if you are adding a feature, consider the line tradeoff. If it's 3 lines, there's less of a bar of usefulness it has to meet over something that's 30 or 300 lines. All features must have regression tests. In general with no other constraints, your feature's API should match torch or numpy.
- Refactors that are clear wins. In general, if your refactor isn't a clear win it will be closed. But some refactors are amazing! Think about readability in a deep core sense. A whitespace change or moving a few functions around is useless, but if you realize that two 100 line functions can actually use the same 110 line function with arguments while also improving readability, this is a big win. Refactors should pass process replay.
- Tests/fuzzers. If you can add tests that are non brittle, they are welcome. We have some fuzzers in here too, and there's a plethora of bugs that can be found with them and by improving them. Finding bugs, even writing broken tests (that should pass) with
@unittest.expectedFailureis great. This is how we make progress. - Dead code removal from core
tinygrad/folder. We don't care about the code in extra, but removing dead code from the core library is great. Less for new people to read and be confused by.
Running tests
You should install the pre-commit hooks with pre-commit install. This will run the linter, mypy, and a subset of the tests on every commit.
For more examples on how to run the full test suite please refer to the CI workflow.
Some examples of running tests locally:
python3 -m pip install -e '.[testing]' # install extra deps for testing
python3 test/test_ops.py # just the ops tests
python3 -m pytest test/ # whole test suite
Process replay tests
Process replay compares your PR's generated kernels against master. If your PR is a refactor or speedup without any expected behavior change, It should include [run_process_replay] in the PR title, example. Note that you should keep your branch up-to-date with master.