Files
kernbench2/benches/qkv_gemm.py
ywkang 372c987995 Reduce test time to 12s: shrink GEMM dims + enable pytest-xdist
GEMM dimension reduction:
- qkv_gemm.py: M,K,N = 128,256,128 → 32,64,32 (64 tiles → 1 tile).
- qkv_gemm_multi_pe.py: same reduction.
- Tests verify pipeline correctness, not large-matrix throughput.
- Per-test time: 18s → 1.7s. 6 tests total: 108s → 10s.

pytest-xdist parallel execution:
- Add pytest-xdist to dev dependencies.
- pyproject.toml addopts: -n auto (use all CPU cores), -m "not slow".
- Default `pytest` runs 501 tests in ~12s (previously 148s).
- Full suite including slow: `pytest -m ""` → 3m24s (previously 5m43s).

pytest.mark.slow:
- Registered in pyproject.toml markers section.
- 256-rank full-system test is the only slow-marked test.
- Run with: pytest -m "" (CI) or pytest (local dev, skips slow).

502 tests pass.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-12 21:06:41 -07:00

42 lines
1.6 KiB
Python

"""QKV GEMM benchmark: Q*K^T projection on a single PE.
Demonstrates the full host-to-PE kernel launch pipeline:
Host → PCIE_EP → IO_CPU → M_CPU → NOC → PE_CPU → PE_SCHEDULER → engines
Kernel: tl.load(a) + tl.ref(b) + tl.composite(gemm) + tl.wait()
- Tensor a is loaded into TCM via DMA
- Tensor b stays in HBM; PE_SCHEDULER streams it per-tile (32x64x32)
"""
from kernbench.policy.placement.dp import DPPolicy
# GEMM dimensions: (M, K) x (K, N) → (M, N)
# Small dims (1 tile) for fast regression. The test verifies the full
# host→PE pipeline, not large-matrix throughput.
M, K, N = 32, 64, 32
DTYPE = "f16"
def _gemm_kernel(a_ptr, b_ptr, out_ptr, M, K, N, tl, DTYPE="f16"):
"""QKV GEMM kernel: out = a @ b.
a is loaded into TCM (DMA_READ).
b is referenced in HBM (tl.ref, no DMA — scheduler streams per-tile).
"""
a = tl.load(a_ptr, shape=(M, K), dtype=DTYPE)
b = tl.ref(b_ptr, shape=(K, N), dtype=DTYPE)
handle = tl.composite(op="gemm", a=a, b=b, out_ptr=out_ptr)
tl.wait(handle)
def run(torch):
"""Run the QKV GEMM benchmark."""
# DP placement: a=replicate (cube-level), b/out=column_wise (N-axis, single PE)
a = torch.zeros((M, K), dtype=DTYPE, dp=DPPolicy(cube="replicate", pe="replicate"), name="a")
b = torch.zeros((K, N), dtype=DTYPE, dp=DPPolicy(cube="replicate", pe="column_wise"), name="b")
out = torch.empty(
(M, N), dtype=DTYPE, dp=DPPolicy(cube="replicate", pe="column_wise"), name="out",
)
# Launch GEMM kernel
torch.launch("qkv_gemm", _gemm_kernel, a, b, out, M, K, N)