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example_gemm_schedule.py
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69 lines (48 loc) · 1.94 KB
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import tilelang
import tilelang.language as T
@tilelang.jit(out_idx=[-1])
def matmul(M, N, K, block_M, block_N, block_K, dtype="float16", accum_dtype="float"):
@T.prim_func
def gemm_schedule(
A: T.Tensor((M, K), dtype),
B: T.Tensor((K, N), dtype),
C: T.Tensor((M, N), dtype),
):
with T.Kernel(T.ceildiv(N, block_N), T.ceildiv(M, block_M), threads=128) as (bx, by):
A_shared = T.alloc_shared((block_M, block_K), dtype)
B_shared = T.alloc_shared((block_K, block_N), dtype)
C_local = T.alloc_fragment((block_M, block_N), accum_dtype)
# Enable rasterization for better L2 Cache Locality
T.use_swizzle(panel_size=10)
# Clear the local buffer
T.clear(C_local)
# Auto pipeline the computation
for ko in T.Pipelined(T.ceildiv(K, block_K), num_stages=3):
T.copy(A[by * block_M, ko * block_K], A_shared)
# Instead of using
# T.copy(B[k * block_K, bx * block_N], B_shared)
# we can also use Parallel to auto map the thread
# bindings and vectorize the copy operation.
for k, j in T.Parallel(block_K, block_N):
B_shared[k, j] = B[ko * block_K + k, bx * block_N + j]
T.gemm(A_shared, B_shared, C_local)
T.copy(C_local, C[by * block_M, bx * block_N])
return gemm_schedule
def main():
kernel = matmul(1024, 1024, 1024, 128, 128, 32)
import torch
a = torch.randn(1024, 1024).cuda().half()
b = torch.randn(1024, 1024).cuda().half()
c = kernel(a, b)
ref_c = a @ b
print("c:")
print(c)
print("ref_c:")
print(ref_c)
torch.testing.assert_close(c, ref_c, rtol=1e-2, atol=1e-2)
print("All check passed.")
# Get CUDA Source
print("CUDA Source:")
print(kernel.get_kernel_source())
if __name__ == "__main__":
main()