George Hotz b8c94a67c9 Simple chonker (#431)
* chonker will make llvm fast

* work

* better speed tests, we will make them fast

* with the cache add is the same speed

* relu and neg are fast

* fix sum speed

* maximum maxnum?

* hack for gemm opt

* gemm very slow

* zeros like

* test_permute

* shapetracker returns self

* fix shapetracker factorization

* err, int strides

* permutes are faster now in tinygrad than pytorch

* support -1 in expand

* gemm unrolled

* improve final test case

* WIP GEMM

* why isn't GEMM fast?

* revert cache dim

* ffp contract works on clang, not llvm?

* ignore llvm ir

* this makes fma work at least, but no faster

* USE_4x4

* 63 GFLOPS

* 87 GFLOPS

* that wasn't matmul, 44 GFLOPS now

* 82 GFLOPS permuted

* this permute too

* a little speed for the convs

* 45 GFLOPS

* speed tests pass again

* clean up prints

* fix FMA WHAT A WASTE OF TIME

* colors

* moar fair

* GPU

* useless on chonker

* cleanups

* improve factorized shapetracker

* better threshold

* label conv

* work

* ops test pass again

* hot load the index

* run the last view, no need to create

* ZeroView needs a repr for the key to work

* fix segfault on out of bounds

* one more test

* start amx, and llvm.initialize_native_asmparser

* amx works

* nice AMX class

* nicer AMX class

* refactor get_idxs

* amx working

* is slower...

* useless flip

* cache

* SZ_X

* AMX_SZ_X/Y work alone

* Contiguous mlop

* test gemm packed

* PREPARE in packed

* use_amx factor

* prefetch isn't faster

* loop

* same 3ms

* 2.24 ms

* allow double on store in TG

* amx reduce is the same speed as non amx reduce

* include memory bandwidth

* clean up shapetracker

* flip returns stride

* prepare for upstream

* Update ops_llvm.py (#426)

* permutes are yellow and green now

* faster conv

* llvm cleanups

* Show optimised IR under debug 4 (#428)

* ASTKernel class

* Make tinygrad work with older python version (#427)

* Make tinygrad work with older python version

* Use partialmethod instead of partial

* smiple chonker is chonking

* remove junk from test speed vs torch

* fix linker and types

* AMX is only here now

* add LLVM tests, it's a valid backend now

* oops, run llvm test

* contiguous_op

* fix loadops compare

* dedup reduceops

Co-authored-by: calledit <1573053+calledit@users.noreply.github.com>
2022-11-10 23:17:09 -08:00
2022-11-10 23:17:09 -08:00
2022-11-10 23:17:09 -08:00
2021-11-29 12:40:52 -05:00
2022-09-25 12:50:28 -04:00
2022-09-05 18:51:56 -07:00
2022-11-10 23:17:09 -08:00
2022-09-28 14:23:01 -07:00
2022-11-10 23:17:09 -08:00
2022-11-10 23:17:09 -08:00
2022-09-12 09:20:12 -07:00
2022-09-06 08:06:11 -07:00
2022-08-18 07:41:00 -07:00
2020-10-18 11:27:37 -07:00
2020-10-27 08:13:15 -07:00
2022-11-08 19:14:37 -08:00
2022-11-10 23:17:09 -08:00


Unit Tests

For something in between a pytorch and a karpathy/micrograd

This may not be the best deep learning framework, but it is a deep learning framework.

The sub 1000 line core of it is in tinygrad/

Due to its extreme simplicity, it aims to be the easiest framework to add new accelerators to, with support for both inference and training. Support the simple basic ops, and you get SOTA vision models/efficientnet.py and language models/transformer.py models.

We are working on support for the Apple Neural Engine and the Google TPU in the accel/ folder. Eventually, we will build custom hardware for tinygrad, and it will be blindingly fast. Now, it is slow.

Installation

git clone https://github.com/geohot/tinygrad.git
cd tinygrad
python3 setup.py develop

Contributing

There's a lot of interest in tinygrad lately. Here's some guidelines for contributing:

  • Bugfixes 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.

Example

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)  # dz/dx
print(y.grad)  # dz/dy

Same example in torch

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)  # dz/dx
print(y.grad)  # dz/dy

Neural networks?

It turns out, a decent autograd tensor library is 90% of what you need for neural networks. Add an optimizer (SGD, RMSprop, and Adam implemented) from tinygrad.nn.optim, write some boilerplate minibatching code, and you have all you need.

Neural network example (from test/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).logsoftmax()

model = TinyBobNet()
optim = optim.SGD([model.l1, model.l2], lr=0.001)

# ... and complete like pytorch, with (x,y) data

out = model.forward(x)
loss = out.mul(y).mean()
optim.zero_grad()
loss.backward()
optim.step()

GPU and Accelerator Support

tinygrad supports GPUs through PyOpenCL.

from tinygrad.tensor import Tensor
(Tensor.ones(4,4).gpu() + Tensor.ones(4,4).gpu()).cpu()

ANE Support?! (broken)

If all you want to do is ReLU, you are in luck! You can do very fast ReLU (at least 30 MEGAReLUs/sec confirmed)

Requires your Python to be signed with ane/lib/sign_python.sh to add the com.apple.ane.iokit-user-access entitlement, which also requires sudo nvram boot-args="amfi_get_out_of_my_way=1 ipc_control_port_options=0". Build the library with ane/lib/build.sh

In order to set boot-args and for the AMFI kext to respect that arg, run csrutil enable --without-kext --without-nvram in recovery mode.

from tinygrad.tensor import Tensor

a = Tensor([-2,-1,0,1,2]).ane()
b = a.relu()
print(b.cpu())

Warning: do not rely on the ANE port. It segfaults sometimes. So if you were doing something important with tinygrad and wanted to use the ANE, you might have a bad time.

hlops (in tensor.py)

hlops are syntactic sugar around mlops. They support most things torch does.

mlops

mlops are mid level ops, there's 15 of them. They understand memory allocation and derivatives

Relu, Log, Exp                          # unary ops
Sum, Max                                # reduce ops (with axis argument)
Add, Sub, Mul, Pow                      # binary ops (no broadcasting, use expand)
Reshape, Permute, Slice, Expand, Flip   # movement ops
Conv2D(NCHW)                            # processing op (Matmul is also Conv2D)

You no longer need to write mlops for a new accelerator

Adding an accelerator (llops)

The autodiff stuff is all in mlops now so you can focus on the raw operations

Buffer                                                     # class of memory on this device
unary_op  (RELU, EXP, LOG, NEG, SIGN)                      # A -> A
reduce_op (SUM, MAX)                                       # A -> B (smaller size, B has 1 in shape)
binary_op (ADD, SUB, MUL, DIV, POW, CMPEQ)                 # A + B -> C (all the same size)
movement_op (RESHAPE, PERMUTE, PAD, SHRINK, EXPAND, FLIP)  # A -> B (different size)
processing_op (CONV)                                       # A + B -> C

When tinygrad moves to lazy evaluation, optimizations will happen here.

ImageNet inference

Despite being tiny, tinygrad supports the full EfficientNet. Pass in a picture to discover what it is.

ipython3 examples/efficientnet.py https://media.istockphoto.com/photos/hen-picture-id831791190

Or, if you have a webcam and cv2 installed

ipython3 examples/efficientnet.py webcam

PROTIP: Set "GPU=1" environment variable if you want this to go faster.

PROPROTIP: Set "DEBUG=1" environment variable if you want to see why it's slow.

tinygrad supports Stable Diffusion!

Run TORCH=1 python3 examples/stable_diffusion.py

(or without torch: OPT=2 OPENCL=1 python3 examples/stable_diffusion.py)

"a horse sized cat eating a bagel"

tinygrad supports GANs

See examples/mnist_gan.py

tinygrad supports yolo

See examples/yolov3.py

The promise of small

tinygrad will always be below 1000 lines. If it isn't, we will revert commits until tinygrad becomes smaller.

Drawing Execution Graph

  • Nodes are Tensors
  • Black edge is a forward pass
  • Blue edge is a backward pass
  • Red edge is data the backward pass depends on
  • Purple edge is intermediates created in the forward
GRAPH=1 python3 test/test_mnist.py TestMNIST.test_sgd_onestep
# requires dot, outputs /tmp/net.svg

Running tests

python3 -m pytest
Description
No description provided
Readme MIT 267 MiB
Languages
Python 70.1%
C 17.9%
Cuda 4.8%
Assembly 2.5%
Metal 2.1%
Other 2.5%