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import torch |
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import math |
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import triton |
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from typing import Optional |
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import torch.nn.functional as F |
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if not torch.cuda.is_available(): |
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raise RuntimeError("CUDA is not available. This benchmark requires a CUDA-enabled GPU.") |
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DEVICE = torch.device("cuda:0") |
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torch.cuda.set_device(DEVICE) |
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def alloc_fn(size: int, align: int, stream: Optional[int]): |
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assert align == 128 |
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assert stream == 0 |
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return torch.empty(size, dtype=torch.int8, device=DEVICE) |
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triton.set_allocator(alloc_fn) |
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torch.manual_seed(0) |
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try: |
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torch.cuda.manual_seed_all(0) |
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except Exception: |
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pass |
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assert triton.runtime.driver.active.get_current_target().backend == "cuda", "This benchmark only supports CUDA backend." |
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def _bench_ms(fn): |
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out = triton.testing.do_bench(fn, quantiles=[0.5]) |
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if isinstance(out, (tuple, list)): |
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return float(out[0]) |
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return float(out) |
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def _is_close(x: torch.Tensor, y: torch.Tensor, rtol=1e-2, atol=0.5): |
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return torch.allclose(x, y, rtol=rtol, atol=atol) |
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def _pt_fused_linear_ce(X, W, B, targets): |
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logits = (X @ W).float() + B.float() |
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return F.cross_entropy(logits, targets, reduction='none') |
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def _cpu_fused_linear_ce(X, W, B, targets): |
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X_cpu = X.cpu().float() |
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W_cpu = W.cpu().float() |
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B_cpu = B.cpu().float() |
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targets_cpu = targets.cpu() |
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logits_cpu = (X_cpu @ W_cpu) + B_cpu |
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result_cpu = F.cross_entropy(logits_cpu, targets_cpu, reduction='none') |
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return result_cpu.to(DEVICE) |
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def _bench_pair(M, N, K, answer_fused_linear_ce, baseline_fused_linear_ce=_pt_fused_linear_ce): |
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X = torch.randn(M, K, device=DEVICE, dtype=torch.float16) |
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W = torch.randn(K, N, device=DEVICE, dtype=torch.float16) |
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B = torch.randn(N, device=DEVICE, dtype=torch.float32) |
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targets = torch.randint(high=N, size=(M,), device=DEVICE, dtype=torch.int64) |
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torch.cuda.synchronize() |
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import time |
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cpu_times = [] |
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for _ in range(10): |
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start = time.perf_counter() |
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_cpu_fused_linear_ce(X, W, B, targets) |
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torch.cuda.synchronize() |
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cpu_times.append((time.perf_counter() - start) * 1000) |
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cpu_baseline_ms = sorted(cpu_times)[len(cpu_times)//2] |
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gpu_baseline_ms = _bench_ms(lambda: baseline_fused_linear_ce(X, W, B, targets)) |
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answer_ms = _bench_ms(lambda: answer_fused_linear_ce(X, W, B, targets)) |
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ref = baseline_fused_linear_ce(X, W, B, targets) |
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out = answer_fused_linear_ce(X, W, B, targets) |
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passed = _is_close(out, ref) |
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if not passed: |
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print(f"\n[DEBUG] Correctness failure for M={M}, N={N}, K={K}") |
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print(f"[DEBUG] Reference shape: {ref.shape}, Output shape: {out.shape}") |
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print(f"[DEBUG] Reference dtype: {ref.dtype}, Output dtype: {out.dtype}") |
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print(f"[DEBUG] Reference min/max/mean: {ref.min().item():.6f} / {ref.max().item():.6f} / {ref.mean().item():.6f}") |
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print(f"[DEBUG] Output min/max/mean: {out.min().item():.6f} / {out.max().item():.6f} / {out.mean().item():.6f}") |
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diff = torch.abs(out - ref) |
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max_diff_idx = torch.argmax(diff) |
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print(f"[DEBUG] Max absolute difference: {diff.max().item():.6f} at index {max_diff_idx.item()}") |
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print(f"[DEBUG] Reference value at max diff: {ref[max_diff_idx].item():.6f}") |
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print(f"[DEBUG] Output value at max diff: {out[max_diff_idx].item():.6f}") |
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print(f"[DEBUG] Relative error at max diff: {(diff[max_diff_idx] / (torch.abs(ref[max_diff_idx]) + 1e-8)).item():.6f}") |
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ref_nan = torch.isnan(ref).sum().item() |
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ref_inf = torch.isinf(ref).sum().item() |
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out_nan = torch.isnan(out).sum().item() |
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out_inf = torch.isinf(out).sum().item() |
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print(f"[DEBUG] Reference NaN count: {ref_nan}, Inf count: {ref_inf}") |
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print(f"[DEBUG] Output NaN count: {out_nan}, Inf count: {out_inf}") |
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print(f"[DEBUG] First 5 reference values: {ref[:5].cpu().tolist()}") |
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print(f"[DEBUG] First 5 output values: {out[:5].cpu().tolist()}") |
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return { |
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"M": M, "N": N, "K": K, |
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"cpu_baseline_ms": cpu_baseline_ms, |
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"gpu_baseline_ms": gpu_baseline_ms, |
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"answer_ms": answer_ms, |
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"baseline_ms": cpu_baseline_ms, |
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"close_passed": passed, |
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"rtol": 1e-2, "atol": 0.5, "passed": passed, |
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} |
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def _warmup_gpu(iters: int = 10): |
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try: |
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M, N, K = 256, 8192, 4096 |
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X = torch.randn(M, K, device=DEVICE, dtype=torch.float16) |
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W = torch.randn(K, N, device=DEVICE, dtype=torch.float16) |
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B = torch.randn(N, device=DEVICE, dtype=torch.float32) |
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targets = torch.randint(high=N, size=(M,), device=DEVICE, dtype=torch.int64) |
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for _ in range(max(1, int(iters))): |
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_ = _pt_fused_linear_ce(X, W, B, targets) |
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torch.cuda.synchronize() |
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except Exception: |
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pass |
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def summarize_speedup(answer_fused_linear_ce, baseline_fused_linear_ce=None, print_output=False, metadata=None): |
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_warmup_gpu(10) |
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if metadata is None: |
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metadata = {} |
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shapes = metadata.get("shapes", None) |
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if shapes is None: |
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M_list = metadata.get("M_list", [128, 256, 512]) |
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N = metadata.get("N", 8192) |
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K = metadata.get("K", 4096) |
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shapes = [(M, N, K) for M in M_list] |
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rows = [] |
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for (M, N, K) in shapes: |
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r = _bench_pair(M, N, K, answer_fused_linear_ce, _pt_fused_linear_ce) |
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rows.append(r) |
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if print_output: |
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print("\n=== Answer vs Baseline: Speedup for each shape (based on median time) ===") |
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speedups_cpu = [] |
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speedups_gpu = [] |
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for r in rows: |
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answer_time = r["answer_ms"] |
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cpu_time = r.get("cpu_baseline_ms") |
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gpu_time = r.get("gpu_baseline_ms") |
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if cpu_time is not None and answer_time is not None: |
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sp_cpu = cpu_time / answer_time |
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speedups_cpu.append(sp_cpu) |
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if gpu_time is not None and answer_time is not None: |
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sp_gpu = gpu_time / answer_time |
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speedups_gpu.append(sp_gpu) |
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status = "OK" if r["close_passed"] else "FAIL" |
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if print_output: |
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print( |
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f"M={r['M']:4d} N={r['N']:4d} K={r['K']:4d} " |
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f"CPU={cpu_time:7.3f} ms GPU={gpu_time:7.3f} ms answer={answer_time:7.3f} ms " |
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f"[Passed: {status} " |
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f"rtol={r['rtol']:.1e} atol={r['atol']:.1e}]" |
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) |
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if speedups_cpu: |
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geo_mean_cpu = math.exp(sum(math.log(s) for s in speedups_cpu) / len(speedups_cpu)) |
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else: |
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geo_mean_cpu = 0.0 |
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if speedups_gpu: |
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geo_mean_gpu = math.exp(sum(math.log(s) for s in speedups_gpu) / len(speedups_gpu)) |
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else: |
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geo_mean_gpu = 0.0 |
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if print_output: |
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print("\n--- Summary ---") |
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print(f"Geometric mean speedup vs CPU: {geo_mean_cpu:.3f}x") |
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print(f"Geometric mean speedup vs GPU: {geo_mean_gpu:.3f}x") |
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return rows, geo_mean_cpu, geo_mean_gpu, geo_mean_gpu |
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def run_benchmark(answer_fused_linear_ce, baseline_fused_linear_ce=None, print_output=False, metadata=None): |
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rows, geo_mean_cpu, geo_mean_gpu, _ = summarize_speedup(answer_fused_linear_ce, baseline_fused_linear_ce, print_output=print_output, metadata=metadata) |
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cpu_times = [r["cpu_baseline_ms"] for r in rows if r.get("cpu_baseline_ms") is not None] |
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gpu_times = [r["gpu_baseline_ms"] for r in rows if r.get("gpu_baseline_ms") is not None] |
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answer_times = [r["answer_ms"] for r in rows if r.get("answer_ms") is not None] |
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geo_mean_cpu_time = math.exp(sum(math.log(t) for t in cpu_times) / len(cpu_times)) if cpu_times else 0.0 |
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geo_mean_gpu_time = math.exp(sum(math.log(t) for t in gpu_times) / len(gpu_times)) if gpu_times else 0.0 |
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geo_mean_answer_time = math.exp(sum(math.log(t) for t in answer_times) / len(answer_times)) if answer_times else 0.0 |
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return { |
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"rows": rows, |
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"geometric_mean_speedup_cpu": geo_mean_cpu, |
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"geometric_mean_speedup_gpu": geo_mean_gpu, |
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"geometric_mean_speedup": geo_mean_gpu, |
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"arithmetic_mean_speedup": geo_mean_gpu, |
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"median_speedup": geo_mean_gpu, |
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"geo_mean_cpu_time": geo_mean_cpu_time, |
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"geo_mean_gpu_time": geo_mean_gpu_time, |
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"geo_mean_answer_time": geo_mean_answer_time, |
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"pass_all": all(r["close_passed"] for r in rows), |
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} |
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