Usage of torch benchmark suite
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74
benches.py
74
benches.py
@@ -12,7 +12,7 @@ from config import Statistics, Configuration
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device = torch.device("cuda:0")
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ITERATIONS = 100_000
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ITERATIONS = 10_000
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def run_gemv_bench(workload, level):
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@@ -43,17 +43,19 @@ def run_gemv_bench(workload, level):
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)
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input_vector = torch.rand(COLUMNS, dtype=torch.float16, device=device)
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start = torch.cuda.Event(enable_timing=True)
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end = torch.cuda.Event(enable_timing=True)
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start.record()
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for _ in range(ITERATIONS):
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def bench_callback(matrix, input_vector):
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torch.matmul(matrix, input_vector)
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end.record()
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torch.cuda.synchronize()
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timer = benchmark.Timer(
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"bench_callback(matrix, input_vector)",
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globals={
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"bench_callback": bench_callback,
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"matrix": matrix,
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"input_vector": input_vector,
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},
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)
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runtime = int(timer.timeit(ITERATIONS).mean * 1e12)
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runtime = int(start.elapsed_time(end) * 1e9 / ITERATIONS)
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return runtime
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@@ -75,21 +77,21 @@ def run_gemv_layers_bench(workload, level):
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)
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input_vector = torch.rand(DIMENSIONS, dtype=torch.float16, device=device)
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start = torch.cuda.Event(enable_timing=True)
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end = torch.cuda.Event(enable_timing=True)
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start.record()
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for _ in range(ITERATIONS):
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def bench_callback(matrix, input_vector):
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for _ in range(5):
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input_vector = torch.matmul(matrix, input_vector)
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input_vector.relu()
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end.record()
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timer = benchmark.Timer(
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"bench_callback(matrix, input_vector)",
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globals={
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"bench_callback": bench_callback,
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"matrix": matrix,
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"input_vector": input_vector,
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},
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)
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runtime = int(timer.timeit(ITERATIONS).mean * 1e12)
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torch.cuda.synchronize()
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runtime = int(start.elapsed_time(end) * 1e9 / ITERATIONS)
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return runtime
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@@ -109,25 +111,29 @@ def run_vector_bench(workload, level):
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func = getattr(wl, workload)
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start = torch.cuda.Event(enable_timing=True)
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end = torch.cuda.Event(enable_timing=True)
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match workload:
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case "vadd":
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bench_callback = lambda vector_a, vector_b: torch.add(vector_a, vector_b)
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case "vmul":
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bench_callback = lambda vector_a, vector_b: torch.mul(vector_a, vector_b)
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case "haxpy":
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bench_callback = lambda vector_a, vector_b: torch.add(
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vector_a, vector_b, alpha=2
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)
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start.record()
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for _ in range(ITERATIONS):
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match workload:
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case "vadd":
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torch.add(vector_a, vector_b)
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case "vmul":
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torch.mul(vector_a, vector_b)
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case "haxpy":
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torch.add(vector_a, vector_b, alpha=2)
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end.record()
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timer = benchmark.Timer(
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"bench_callback(vector_a, vector_b)",
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globals={
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"bench_callback": bench_callback,
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"vector_a": vector_a,
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"vector_b": vector_b,
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},
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)
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runtime = int(timer.timeit(ITERATIONS).mean * 1e12)
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torch.cuda.synchronize()
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runtime = int(start.elapsed_time(end) * 1e9 / ITERATIONS)
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return runtime
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workloads = [
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("vadd", run_vector_bench),
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("vmul", run_vector_bench),
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