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Signed-off-by: Edward Z. Yang <ezyang@meta.com> Pull Request resolved: https://github.com/pytorch/pytorch/pull/105928 Approved by: https://github.com/albanD
69 lines
1.7 KiB
Python
69 lines
1.7 KiB
Python
import numpy as np
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from . import benchmark
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class MatMulBench(benchmark.Benchmark):
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def __init__(self, mode, device, dtype, B, M, N, K):
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super().__init__(mode, device, dtype)
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self.B = B
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self.M = M
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self.N = N
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self.K = K
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self.d1 = self.rand(
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[B, M, N], device=device, dtype=dtype, requires_grad=self.requires_grad
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)
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self.d2 = self.rand(
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[B, N, K], device=device, dtype=dtype, requires_grad=self.requires_grad
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)
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self.inputs = [self.d1, self.d2]
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def forward(self, d1, d2):
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y = self.matmul(d1, d2)
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return y
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def reference(self):
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return np.matmul(self.numpy(self.d1), self.numpy(self.d2))
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def config(self):
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return [self.B, self.M, self.N, self.K]
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@staticmethod
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def module():
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return "batch_matmul"
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def memory_workload(self):
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if self.mode == "fwd":
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sol_count = 1
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algorithmic_count = 1
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else:
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sol_count = 1 + 1
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algorithmic_count = 1 + (1 + 1)
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buffer_size = (
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self.B * self.M * self.N
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+ self.B * self.M * self.N
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+ self.B * self.N * self.K
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)
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return {
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"sol": buffer_size * sol_count,
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"algorithmic": buffer_size * algorithmic_count,
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}
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def compute_workload(self):
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if self.mode == "fwd":
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count = 1
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else:
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count = 1 + (1 + 1)
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op_count = 2 * self.B * self.M * self.N * self.K
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return op_count * count
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@staticmethod
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def default_configs():
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return [[128, 64, 128, 256]]
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benchmark.register_benchmark_class(MatMulBench)
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