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"""Roofline benchmark for FP8 GEMM.
For each shape: times eager reference, compiled reference, SOTA (if available),
and the agent's solution. Reports achieved TFLOPS, GB/s, and peak_fraction.
Output lines the harness picks up:
shape=<idx> variant=<name> tflops=<N> gbps=<N> ms=<N>
peak_fraction: <N> (geomean over shapes of solution's peak_fraction)
"""
import sys
from math import exp, log
from pathlib import Path
import torch
import yaml
REPO_ROOT = Path(__file__).resolve().parents[2]
sys.path.insert(0, str(REPO_ROOT))
from src.eval.roofline import compute_gbps, compute_tflops, peak_fraction # noqa: E402
from src.eval.timing import time_fn # noqa: E402
from src.hardware import get as get_hw # noqa: E402
def _eval_formula(expr: str, vars: dict) -> float:
# Very small eval: only names from `vars` are valid.
return float(eval(expr, {"__builtins__": {}}, vars))
def main():
import reference
import shapes
import solution
meta = yaml.safe_load(Path("problem.yaml").read_text())
hw = get_hw(meta["hardware"][0])
peak_tflops = hw.peak_tflops_dense.get(meta["peak_tflops_key"], 0.0)
peak_gbps = hw.peak_bandwidth_gb_s
regime = meta.get("regime", "compute")
flops_formula = meta["flops_formula"]
bytes_formula = meta["bytes_formula"]
num_perf_trials = int(meta.get("num_perf_trials", 30))
device = torch.device("cuda:0")
# Optional SOTA
try:
import sota as sota_mod
has_sota = sota_mod.is_available()
except Exception:
has_sota = False
sol_fractions: list[float] = []
for shape_idx, shape in enumerate(shapes.SHAPES):
reference.M = shape["M"]
reference.N = shape["N"]
reference.K = shape["K"]
init_args = reference.get_init_inputs()
ref_model = reference.Model(*init_args).to(device).eval()
sol_model = solution.Model(*init_args).to(device).eval()
sd = ref_model.state_dict()
try:
sol_model.load_state_dict(sd, strict=True)
except RuntimeError:
pass
torch.manual_seed(2026)
inputs = [t.to(device) for t in reference.get_inputs()]
# Theoretical work per call
flops = _eval_formula(flops_formula, shape)
bytes_moved = _eval_formula(bytes_formula, shape)
# Eager
ms_eager = time_fn(ref_model, inputs, iters=num_perf_trials)
# Compiled (best-effort)
try:
comp = torch.compile(ref_model, mode="reduce-overhead")
ms_comp = time_fn(comp, inputs, iters=num_perf_trials)
except Exception as e:
print(f" [compile fallback] {type(e).__name__}: {e}")
ms_comp = None
# SOTA
ms_sota = None
if has_sota:
try:
def sota_fn(x, _w=ref_model.weight):
return sota_mod.sota_forward(x, _w)
ms_sota = time_fn(sota_fn, inputs, iters=num_perf_trials)
except Exception as e:
print(f" [sota unavailable] {type(e).__name__}: {e}")
# Solution
ms_sol = time_fn(sol_model, inputs, iters=num_perf_trials)
for variant, ms in [
("eager", ms_eager),
("compiled", ms_comp),
("sota", ms_sota),
("solution", ms_sol),
]:
if ms is None:
continue
tflops = compute_tflops(flops, ms)
gbps = compute_gbps(bytes_moved, ms)
print(f"shape={shape_idx} variant={variant} tflops={tflops:.3f} gbps={gbps:.3f} ms={ms:.3f}")
# Score: peak_fraction depends on regime
sol_tflops = compute_tflops(flops, ms_sol)
sol_gbps = compute_gbps(bytes_moved, ms_sol)
if regime == "compute":
frac = peak_fraction(sol_tflops, peak_tflops)
else:
frac = peak_fraction(sol_gbps, peak_gbps)
sol_fractions.append(frac)
print(f"shape={shape_idx} solution_peak_fraction={frac:.4f}")
gmean = exp(sum(log(max(f, 1e-9)) for f in sol_fractions) / len(sol_fractions))
print(f"peak_fraction: {gmean:.4f}")
print(f"RESULT: {'OK' if gmean >= 0.1 else 'LOW'}")
if __name__ == "__main__":
main()