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- import time
- import torch
- import torch.utils.benchmark as benchmark
- from triton.testing import do_bench
- def benchmark_forward(fn, *inputs, repeats=10, desc='', verbose=True, **kwinputs):
- """Use Pytorch Benchmark on the forward pass of an arbitrary function."""
- if verbose:
- print(desc, '- Forward pass')
- t = benchmark.Timer(
- stmt='fn(*inputs, **kwinputs)',
- globals={'fn': fn, 'inputs': inputs, 'kwinputs': kwinputs},
- num_threads=torch.get_num_threads(),
- )
- m = t.timeit(repeats)
- if verbose:
- print(m)
- return t, m
- torch.manual_seed(0)
- repeats = 30
- dtype = torch.float16
- device = 'cuda'
- verbose = False
- m, n = 8192, 8192
- tflops_matmul = {}
- tflops_matmul1 = {}
- for k in [512, 1024, 1536, 2048, 2560, 3072, 3584, 4096, 4608, 5120, 5632, 6144, 6656, 7168, 7680, 8192]:
- a = torch.randn(m, k, device=device, dtype=dtype)
- b = torch.randn(n, k, device=device, dtype=dtype).transpose(-1, -2)
- nFLOPS_matmul = 2 * m * n * k
- time.sleep(2) # to reduce power throttling
- timing = benchmark_forward(torch.matmul, a, b, desc='cuBLAS', verbose=verbose, repeats=repeats)[1]
- tflops_matmul[k] = nFLOPS_matmul / timing.mean * 1e-12
- print(f'[torch.utils.benchmark] cuBLAS, {m = }, {n = }, {k = }: {timing.mean * 1e3:.3f}ms, {tflops_matmul[k]:.1f} TFLOPS')
- time.sleep(2) # to reduce power throttling
- ms = do_bench(lambda: torch.matmul(a, b), warmup=10, rep=repeats)
- tflops_matmul1[k] = nFLOPS_matmul / ms * 1e-9
- print(f'[triton.test.do_bench] cuBLAS, {m = }, {n = }, {k = }: {ms:.3f}ms, {tflops_matmul1[k]:.1f} TFLOPS')
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