mirror of
https://github.com/tinygrad/tinygrad.git
synced 2026-04-29 03:00:14 -04:00
95 lines
4.7 KiB
Python
95 lines
4.7 KiB
Python
import unittest
|
|
from tinygrad import Tensor, Device, dtypes, Context
|
|
from tinygrad.device import is_dtype_supported
|
|
from tinygrad.helpers import getenv
|
|
from extra.gemm.asm.cdna.gemm import asm_gemm
|
|
from test.helpers import needs_second_gpu
|
|
|
|
# On non CDNA4 it will only validate the Tensor.custom_kernel integration
|
|
# Use NULL=1 EMULATE=AMD_CDNA4 to also test the assembly
|
|
def is_cdna4(): return getattr(Device[Device.DEFAULT].renderer, "arch", "").startswith("gfx950")
|
|
|
|
def run_asm_gemm(a_shape, b_shape, dtype=dtypes.float16, a_shard=None, b_shard=None, gpus:int=1) -> None:
|
|
Tensor.manual_seed(0)
|
|
a_rand = Tensor.randn(a_shape, dtype=dtypes.float).sub(0.5).cast(dtype)
|
|
b_rand = Tensor.randn(b_shape, dtype=dtypes.float).sub(0.5).cast(dtype)
|
|
with Context(DEBUG=0):
|
|
Tensor.realize(a_rand, b_rand)
|
|
|
|
devs = tuple(f"{Device.DEFAULT}:{i}" for i in range(gpus)) if (multi:=gpus>1) else None
|
|
|
|
a, b = Tensor(a_rand.numpy(), requires_grad=True).cast(dtype), Tensor(b_rand.numpy(), requires_grad=True).cast(dtype)
|
|
if multi: a, b = a.shard(devs, axis=a_shard), b.shard(devs, axis=b_shard)
|
|
with Context(ASM_GEMM=1):
|
|
tst = asm_gemm(a, b)
|
|
tst.sum().backward()
|
|
Tensor.realize(tst, a.grad, b.grad)
|
|
|
|
a_ref, b_ref = Tensor(a_rand.numpy(), requires_grad=True).cast(dtype), Tensor(b_rand.numpy(), requires_grad=True).cast(dtype)
|
|
if multi: a_ref, b_ref = a_ref.shard(devs, axis=a_shard), b_ref.shard(devs, axis=b_shard)
|
|
with Context(ASM_GEMM=0):
|
|
ref = asm_gemm(a_ref, b_ref)
|
|
ref.sum().backward()
|
|
Tensor.realize(ref, a_ref.grad, b_ref.grad)
|
|
|
|
# no validation on the NULL device
|
|
if a_rand.device.startswith("NULL"): return None
|
|
atol, rtol = (1e-2, 1e-3)
|
|
with Context(DEBUG=0):
|
|
assert tst.allclose(ref, atol=atol, rtol=rtol), "forward mismatch"
|
|
assert a.grad.allclose(a_ref.grad, atol=atol, rtol=rtol), "grad_a mismatch"
|
|
assert b.grad.allclose(b_ref.grad, atol=atol, rtol=rtol), "grad_b mismatch"
|
|
|
|
|
|
def verify_asm_gemm(batch:int, M:int, N:int, K:int, dtype=dtypes.float16, gpus:int=1) -> None:
|
|
run_asm_gemm((batch, M, K), (K, N), dtype=dtype, a_shard=0, b_shard=None, gpus=gpus)
|
|
|
|
def verify_asm_gemm_k_sharded(M:int, N:int, K:int, dtype=dtypes.float16, gpus:int=8) -> None:
|
|
run_asm_gemm((M, K), (K, N), dtype=dtype, a_shard=1, b_shard=0, gpus=gpus)
|
|
|
|
# 128x smaller than usual
|
|
# uses the UOp GEMM, runs on non CDNA4 and CI
|
|
@unittest.skipUnless(is_dtype_supported(dtypes.half), "need half")
|
|
class TestGemm(unittest.TestCase):
|
|
def setUp(self):
|
|
if is_cdna4(): self.skipTest("shapes are too small for the assembly GEMM")
|
|
def test_simple(self): verify_asm_gemm(1, N:=getenv("N", 32), N, N, dtype=dtypes.half)
|
|
def test_gemm(self): verify_asm_gemm(1, 64, 32, 112)
|
|
def test_gemm_batched(self): verify_asm_gemm(2, 64, 32, 32)
|
|
@needs_second_gpu
|
|
def test_gemm_multi(self): verify_asm_gemm(2, 64, 32, 32, gpus=2)
|
|
@needs_second_gpu
|
|
def test_gemm_k_sharded(self): verify_asm_gemm_k_sharded(64, 64, 2*64, gpus=2)
|
|
|
|
# uses the Asm GEMM on CDNA4 only for speed reasons
|
|
class TestGemmLarge(unittest.TestCase):
|
|
def setUp(self):
|
|
if not is_cdna4():
|
|
self.skipTest("very slow on non mi350x")
|
|
|
|
def test_simple(self): verify_asm_gemm(1, N:=getenv("N", 4096), N, N, dtype=dtypes.half)
|
|
def test_gemm(self): verify_asm_gemm(1, 8192, 4096, 14336)
|
|
def test_gemm_batched(self): verify_asm_gemm(2, 8192, 4096, 4096)
|
|
|
|
def test_gemm1(self): verify_asm_gemm(8, 8192, 4096, 14336, dtype=dtypes.bfloat16, gpus=8)
|
|
@unittest.skip("disabled, asm in this shape is slower than tinygrad")
|
|
def test_gemm2(self): verify_asm_gemm(8, 8192, 128256, 4096, dtype=dtypes.bfloat16, gpus=8)
|
|
def test_gemm3(self): verify_asm_gemm(8, 8192, 14336, 4096, dtype=dtypes.bfloat16, gpus=8)
|
|
def test_gemm4(self): verify_asm_gemm(8, 4096, 14336, 4096, dtype=dtypes.bfloat16, gpus=8)
|
|
def test_gemm5(self): verify_asm_gemm(8, 4096, 4096, 14336, dtype=dtypes.bfloat16, gpus=8)
|
|
def test_gemm6(self): verify_asm_gemm(16, 4096, 4096, 14336, dtype=dtypes.bfloat16, gpus=8)
|
|
@unittest.skip("disabled, asm in this shape is slower than tinygrad")
|
|
def test_gemm7(self): verify_asm_gemm(1, 8192, 128256, 4096)
|
|
def test_gemm8(self): verify_asm_gemm(1, 4096, 14336, 8192)
|
|
def test_gemm9(self): verify_asm_gemm(8, 4096, 14336, 8192, dtype=dtypes.bfloat16, gpus=8)
|
|
def test_gemm10(self): verify_asm_gemm(1, 4096, 8192, 4096)
|
|
def test_k_sharded_1(self): verify_asm_gemm_k_sharded(14336, 4096, 8*8192, gpus=8)
|
|
def test_k_sharded_2(self): verify_asm_gemm_k_sharded(4096, 14336, 8*8192, gpus=8)
|
|
def test_k_sharded_3(self): verify_asm_gemm_k_sharded(4096, 4096, 8*8192, gpus=8)
|
|
def test_gemm_unsupported(self):
|
|
with self.assertRaisesRegex(AssertionError, "shape not supported"):
|
|
verify_asm_gemm(8, 1024, 1024, 4096, gpus=8)
|
|
|
|
if __name__ == "__main__":
|
|
unittest.main()
|