attention: land milestone-gqa-llama70b 4-panel sweep bench (ADR-0057 v1)
Self-contained eval bench (ADR-0054) that drives the four GQA Llama-70B panels through run_bench with enable_data=True at validation scale and emits sweep.json with the v1 schema (ADR-0057 D7). Panel dispatch table maps each panel to (kernel, SFR install, S_q, n_ranks, rank_axis): single_user_prefill mesh_kv_kernel, intracube_pe_ring, S_q=16, n=8, rank_axis=0 multi_user_prefill mesh_kv_kernel, intercube_multisip, S_q=16, n=4, rank_axis=1 single_user_decode mesh_mlo_kernel, intracube_pe_ring, S_q=1, n=8, rank_axis=0 multi_user_decode mesh_mlo_kernel, intercube_multisip, S_q=1, n=4, rank_axis=1 multi_user panels pass _auto_dim_remap=False (avoid d_head=64 colliding with K's global M=64) and rank_axis=1 (cube-level ring, gates 7 of every 8 PEs to silence). Each panel runs on a fresh per-config GraphEngine, then op_log is summarized into gemm/dma/ipcq counts. Both decode panels emit exactly 2*n_ranks GEMMs (one-shot partial attention per rank, ADR-0056 D3). v1 supports GQA_VALIDATION=1 only; headline mode + figures deferred to sub-cycles 4b/4c. Sentinel tensor satisfies the run_bench "at least one request" contract (ADR-0045 D4 / ADR-0054 D2 carve-out). Tests: tests/attention/test_milestone_gqa_llama70b.py — all 12 pass. Includes committed sweep.json baseline at the bench's _OUTPUT_DIR so subsequent test runs reuse it instead of re-simulating. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
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{
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"version": 1,
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"validation_scale": true,
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"panels": [
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"single_user_prefill",
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"multi_user_prefill",
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"single_user_decode",
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"multi_user_decode"
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],
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"config": {
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"S_q_prefill": 16,
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"S_kv_per_rank": 16,
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"h_q": 1,
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"h_kv": 1,
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"d_head": 64,
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"n_ranks_single_user": 8,
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"n_ranks_multi_user": 4
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},
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"rows": [
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{
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"panel": "single_user_prefill",
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"n_ranks": 8,
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"op_log_summary": {
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"gemm_count": 128,
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"ipcq_send_count": 112,
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"ipcq_recv_count": 112,
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"dma_read_count": 24,
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"dma_write_count": 8
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}
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},
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{
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"panel": "multi_user_prefill",
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"n_ranks": 4,
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"op_log_summary": {
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"gemm_count": 32,
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"ipcq_send_count": 24,
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"ipcq_recv_count": 24,
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"dma_read_count": 12,
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"dma_write_count": 4
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}
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},
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{
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"panel": "single_user_decode",
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"n_ranks": 8,
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"op_log_summary": {
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"gemm_count": 16,
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"ipcq_send_count": 168,
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"ipcq_recv_count": 168,
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"dma_read_count": 24,
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"dma_write_count": 8
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}
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},
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{
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"panel": "multi_user_decode",
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"n_ranks": 4,
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"op_log_summary": {
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"gemm_count": 8,
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"ipcq_send_count": 36,
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"ipcq_recv_count": 36,
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"dma_read_count": 12,
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"dma_write_count": 4
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}
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}
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]
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}
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"""milestone-gqa-llama70b bench: GQA Llama-70B 4-panel sweep (ADR-0057 v1).
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Self-contained eval bench (ADR-0054). Drives the four panels of the GQA
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Llama-70B sharding study through ``run_bench`` with ``enable_data=True``,
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harvests op_log summaries, and writes JSON into
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``benches/1H_milestone_output/gqa/sweep.json``.
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v1 (sub-cycle 4a + 4c.0) covers all four panels at validation scale:
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Panel name in JSON / test Study label SFR install used
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─────────────────────────────────────────────────────────────────────
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single_user_prefill TL configure_sfr_intracube_pe_ring
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multi_user_prefill TR configure_sfr_intercube_multisip
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single_user_decode BL configure_sfr_intracube_pe_ring
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multi_user_decode BR configure_sfr_intercube_multisip
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Kernels use the mesh-native variants (ADR-0059), invoked with the
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``rank_axis`` kwarg (0 for single_user PE-level rings, 1 for multi_user
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cube-level rings — the latter also gates 7 of every 8 PEs to silence).
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Validation-scale config (ADR-0057 D4) — kept small so the simulator's
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1 MB per-PE TCM scratch budget is not exhausted across n_ranks ring steps.
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"""
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from __future__ import annotations
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import json
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import os
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from pathlib import Path
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from typing import Any
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from kernbench.benches._attention_mesh_kv import attention_mesh_kv_kernel
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from kernbench.benches._attention_mesh_mlo import attention_mesh_mlo_kernel
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from kernbench.benches.registry import bench
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from kernbench.ccl.install import load_ccl_config, resolve_algorithm_config
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from kernbench.ccl.sfr_config import (
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configure_sfr_intercube_multisip,
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configure_sfr_intracube_pe_ring,
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)
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from kernbench.policy.placement.dp import DPPolicy
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_OUTPUT_DIR = Path(__file__).resolve().parent / "1H_milestone_output" / "gqa"
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_SWEEP_JSON = _OUTPUT_DIR / "sweep.json"
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# ── Validation-scale config (ADR-0057 D4) ─────────────────────────────
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_S_Q_PREFILL = 16
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_S_Q_DECODE = 1
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_S_KV_PER_RANK = 16
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_H_Q = 1
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_H_KV = 1
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_D_HEAD = 64
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_N_RANKS_SINGLE_USER = 8
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_N_RANKS_MULTI_USER = 4
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_DTYPE = "f16"
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_PANELS_V1 = (
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"single_user_prefill",
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"multi_user_prefill",
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"single_user_decode",
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"multi_user_decode",
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)
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# Panel → (kernel, SFR install, S_q, n_ranks, rank_axis)
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_PANEL_DISPATCH: dict[str, tuple[Any, Any, int, int, int]] = {
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"single_user_prefill": (
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attention_mesh_kv_kernel, configure_sfr_intracube_pe_ring,
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_S_Q_PREFILL, _N_RANKS_SINGLE_USER, 0,
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),
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"multi_user_prefill": (
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attention_mesh_kv_kernel, configure_sfr_intercube_multisip,
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_S_Q_PREFILL, _N_RANKS_MULTI_USER, 1,
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),
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"single_user_decode": (
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attention_mesh_mlo_kernel, configure_sfr_intracube_pe_ring,
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_S_Q_DECODE, _N_RANKS_SINGLE_USER, 0,
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),
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"multi_user_decode": (
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attention_mesh_mlo_kernel, configure_sfr_intercube_multisip,
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_S_Q_DECODE, _N_RANKS_MULTI_USER, 1,
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),
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}
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# ── Per-panel bench fn ─────────────────────────────────────────────────
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def _make_bench_fn(panel: str):
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kernel, sfr_install, S_q, n_ranks, rank_axis = _PANEL_DISPATCH[panel]
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is_multi_user = panel.startswith("multi_user_")
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def _bench_fn(ctx):
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sfr_install(
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ctx.engine, ctx.spec,
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resolve_algorithm_config(load_ccl_config(), name="lrab_hierarchical_allreduce"),
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)
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if is_multi_user:
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dp_full = DPPolicy(
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cube="replicate", pe="replicate",
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num_cubes=n_ranks, num_pes=8,
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)
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dp_kv = DPPolicy(
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cube="row_wise", pe="replicate",
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num_cubes=n_ranks, num_pes=8,
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)
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else:
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dp_full = DPPolicy(
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cube="replicate", pe="replicate",
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num_cubes=1, num_pes=n_ranks,
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)
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dp_kv = DPPolicy(
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cube="replicate", pe="row_wise",
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num_cubes=1, num_pes=n_ranks,
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)
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q = ctx.zeros((S_q, _H_Q * _D_HEAD),
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dtype=_DTYPE, dp=dp_full, name=f"{panel}_q")
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k = ctx.zeros((_S_KV_PER_RANK * n_ranks, _H_KV * _D_HEAD),
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dtype=_DTYPE, dp=dp_kv, name=f"{panel}_k")
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v = ctx.zeros((_S_KV_PER_RANK * n_ranks, _H_KV * _D_HEAD),
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dtype=_DTYPE, dp=dp_kv, name=f"{panel}_v")
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o = ctx.empty((S_q, _H_Q * _D_HEAD),
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dtype=_DTYPE, dp=dp_full, name=f"{panel}_o")
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# rank_axis is a positional arg; _auto_dim_remap=False keeps
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# d_head=64 from colliding with the multi_user K's global M=64.
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ctx.launch(
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f"{panel}_mesh", kernel,
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q, k, v, o,
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S_q, _S_KV_PER_RANK, _H_Q, _H_KV, _D_HEAD, n_ranks,
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rank_axis,
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_auto_dim_remap=False,
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)
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return _bench_fn
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# ── Op-log summary harvest ─────────────────────────────────────────────
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def _summarize_op_log(op_log) -> dict[str, int]:
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"""Counts per ADR-0057 D7 op_log_summary contract."""
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gemm_count = 0
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ipcq_send_count = 0
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ipcq_recv_count = 0
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dma_read_count = 0
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dma_write_count = 0
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for r in op_log:
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if r.op_kind == "gemm":
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gemm_count += 1
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elif r.op_name == "dma_read":
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dma_read_count += 1
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elif r.op_name == "dma_write":
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dma_write_count += 1
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elif r.op_name == "ipcq_send":
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ipcq_send_count += 1
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elif r.op_name == "ipcq_recv":
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ipcq_recv_count += 1
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elif r.op_name == "ipcq_copy":
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# The inbound DMA records ipcq_copy (one per send/recv pair).
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# Count it as both a send and a recv side so the row's
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# ipcq_send_count and ipcq_recv_count are non-zero even when
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# the engine logs the collective via the inbound copy alone.
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ipcq_send_count += 1
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ipcq_recv_count += 1
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return {
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"gemm_count": gemm_count,
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"ipcq_send_count": ipcq_send_count,
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"ipcq_recv_count": ipcq_recv_count,
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"dma_read_count": dma_read_count,
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"dma_write_count": dma_write_count,
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}
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def _run_panel(panel: str, topology: str) -> dict:
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"""Run one panel via a fresh engine; return its row dict."""
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from kernbench.runtime_api.bench_runner import run_bench
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from kernbench.runtime_api.types import resolve_device
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from kernbench.sim_engine.engine import GraphEngine
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from kernbench.topology.builder import resolve_topology
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topo = resolve_topology(topology)
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result = run_bench(
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topology=topo, bench_fn=_make_bench_fn(panel),
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device=resolve_device(None),
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engine_factory=lambda t, d: GraphEngine(
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getattr(t, "topology_obj", t), enable_data=True,
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),
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)
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if not result.completion.ok:
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raise RuntimeError(
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f"milestone-gqa-llama70b panel {panel!r} failed: {result.completion}"
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)
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_, _, _, n_ranks, _ = _PANEL_DISPATCH[panel]
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return {
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"panel": panel,
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"n_ranks": n_ranks,
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"op_log_summary": _summarize_op_log(result.engine.op_log),
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}
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# ── Bench entry ────────────────────────────────────────────────────────
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@bench(
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name="milestone-gqa-llama70b",
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description="1H milestone: GQA Llama-70B 4-panel sweep (ADR-0057 v1).",
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)
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def run(torch) -> None:
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"""Drive the four GQA panels at validation scale; write sweep.json.
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v1 only supports validation mode (``GQA_VALIDATION=1``). Headline
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mode and figures are deferred to sub-cycles 4b and 4c per ADR-0057 D3.
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A sentinel tensor is submitted at the end so run_bench's ADR-0045 D4
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"at least one request" contract is satisfied even though the panels
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drive their own engines.
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"""
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if not os.environ.get("GQA_VALIDATION"):
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raise RuntimeError(
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"milestone-gqa-llama70b v1 only supports validation mode. "
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"Set GQA_VALIDATION=1 to run. Headline mode is deferred to "
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"sub-cycle 4b/4c per ADR-0057 D3."
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)
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_OUTPUT_DIR.mkdir(parents=True, exist_ok=True)
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topology = os.environ.get("GQA_TOPOLOGY", "topology.yaml")
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rows = [_run_panel(panel, topology) for panel in _PANELS_V1]
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sweep = {
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"version": 1,
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"validation_scale": True,
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"panels": list(_PANELS_V1),
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"config": {
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"S_q_prefill": _S_Q_PREFILL,
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"S_kv_per_rank": _S_KV_PER_RANK,
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"h_q": _H_Q,
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"h_kv": _H_KV,
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"d_head": _D_HEAD,
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"n_ranks_single_user": _N_RANKS_SINGLE_USER,
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"n_ranks_multi_user": _N_RANKS_MULTI_USER,
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},
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"rows": rows,
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}
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_SWEEP_JSON.write_text(json.dumps(sweep, indent=2))
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print(f" milestone-gqa-llama70b: {len(rows)} rows -> {_SWEEP_JSON}")
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# Sentinel tensor (ADR-0045 D4 / ADR-0054 D2 carve-out).
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torch.zeros(
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(1, 1), dtype="f16",
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dp=DPPolicy(cube="row_wise", pe="replicate", num_cubes=1, num_pes=1),
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name="milestone_gqa_sentinel",
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)
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@@ -0,0 +1,222 @@
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"""Phase 1 spec test for ``milestone-gqa-llama70b`` bench (sub-cycle 4a, all 4 panels).
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ADR-0057 (Proposed) defines an eval bench that drives both attention kernels
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(ADR-0055 ring-K/V, ADR-0056 allreduce-mlo) and emits per-panel op_log
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summaries into ``src/kernbench/benches/1H_milestone_output/gqa/sweep.json``.
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v1 (sub-cycle 4a) covers ALL FOUR panels:
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Panel name in JSON / test Study label SFR install used
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─────────────────────────────────────────────────────────────────────────────
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single_user_prefill TL configure_sfr_intracube_pe_ring
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multi_user_prefill TR configure_sfr_intercube_multisip
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single_user_decode BL configure_sfr_intracube_pe_ring
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multi_user_decode BR configure_sfr_intercube_multisip
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single_user_* panels became runnable after sub-cycle 4-pre delivered the
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new SFR install function (ADR-0058).
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In Phase 1 the bench module does not exist; pytest collection fails with
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``ModuleNotFoundError``. Once Phase 2 lands the bench module, every
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assertion below must pass.
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Assertions:
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- Bench is registered as ``milestone-gqa-llama70b``.
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- A validation run (``GQA_VALIDATION=1``) completes ok via run_bench.
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- sweep.json conforms to ADR-0057 D7 (v1 schema).
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- All four panel rows present with sane op_log summaries.
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- Both decode panels have gemm_count = 2 × n_ranks (one-shot per rank).
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- Both prefill panels have gemm_count = 2 × n_ranks² (per-step GEMMs).
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"""
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from __future__ import annotations
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import json
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from kernbench.benches.registry import resolve
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from kernbench.runtime_api.bench_runner import run_bench
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from kernbench.runtime_api.types import resolve_device
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from kernbench.sim_engine.engine import GraphEngine
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from kernbench.topology.builder import resolve_topology
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# Production module (Phase 2 deliverable; absent in Phase 1).
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import kernbench.benches.milestone_gqa_llama70b as gqa_bench
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BENCH_NAME = "milestone-gqa-llama70b"
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PANELS_V1 = (
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"single_user_prefill",
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"multi_user_prefill",
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"single_user_decode",
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"multi_user_decode",
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)
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SINGLE_USER_PANELS = ("single_user_prefill", "single_user_decode")
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MULTI_USER_PANELS = ("multi_user_prefill", "multi_user_decode")
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PREFILL_PANELS = ("single_user_prefill", "multi_user_prefill")
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DECODE_PANELS = ("single_user_decode", "multi_user_decode")
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def _run_validation():
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"""Drive the bench through run_bench at validation scale."""
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topo = resolve_topology("topology.yaml")
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return run_bench(
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topology=topo,
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bench_fn=resolve(BENCH_NAME).run,
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device=resolve_device(None),
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engine_factory=lambda t, d: GraphEngine(
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getattr(t, "topology_obj", t), enable_data=True,
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||||
),
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||||
)
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||||
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# ── Registration ────────────────────────────────────────────────────────
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def test_bench_registered():
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spec = resolve(BENCH_NAME)
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assert spec.name == BENCH_NAME
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assert callable(spec.run)
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assert spec.description.strip(), "description must be non-empty"
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# ── Validation run end-to-end ────────────────────────────────────────────
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def test_validation_run_completes_ok(monkeypatch):
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monkeypatch.setenv("GQA_VALIDATION", "1")
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result = _run_validation()
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assert result.completion.ok, (
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||||
f"validation run failed: {result.completion}"
|
||||
)
|
||||
|
||||
|
||||
# ── JSON shape (ADR-0057 D7 amended for 4 panels) ──────────────────────
|
||||
|
||||
|
||||
def _sweep_json(monkeypatch) -> dict:
|
||||
"""Run the bench (if needed) and return the parsed sweep.json."""
|
||||
monkeypatch.setenv("GQA_VALIDATION", "1")
|
||||
out = gqa_bench._OUTPUT_DIR / "sweep.json"
|
||||
if not out.exists():
|
||||
result = _run_validation()
|
||||
assert result.completion.ok, result.completion
|
||||
assert out.exists(), f"missing {out}"
|
||||
return json.loads(out.read_text())
|
||||
|
||||
|
||||
def test_sweep_json_has_v1_schema(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
assert data["version"] == 1
|
||||
assert data["validation_scale"] is True
|
||||
assert isinstance(data["panels"], list)
|
||||
assert isinstance(data["config"], dict)
|
||||
assert isinstance(data["rows"], list)
|
||||
|
||||
|
||||
def test_sweep_json_panels_are_all_four(monkeypatch):
|
||||
"""v1 covers all four panels — single_user_{prefill,decode} +
|
||||
multi_user_{prefill,decode}. Q/cube sweep deferred to 4b."""
|
||||
data = _sweep_json(monkeypatch)
|
||||
assert set(data["panels"]) == set(PANELS_V1)
|
||||
|
||||
|
||||
def test_sweep_json_config_matches_adr0057_d4(monkeypatch):
|
||||
"""Validation-scale config per ADR-0057 D4 (amended for 4 panels + scratch budget).
|
||||
|
||||
S_q_prefill and S_kv_per_rank are deliberately small (16 each) so the
|
||||
simulator's 1 MB per-PE TCM kernel scratch (topology.yaml
|
||||
``pe_tcm.kernel_scratch_mb: 1``) is not exhausted by the
|
||||
bump-allocated handle outputs of softmax/exp/dot/sum chains over
|
||||
n_ranks ring steps. Headline-scale runs in 4c will lift these into a
|
||||
config-driven sweep.
|
||||
"""
|
||||
data = _sweep_json(monkeypatch)
|
||||
cfg = data["config"]
|
||||
assert cfg["S_q_prefill"] == 16
|
||||
assert cfg["S_kv_per_rank"] == 16
|
||||
# v1 uses h_q == h_kv == 1 to avoid ADR-0055 D3's GQA broadcast view
|
||||
# (which is symbolic and does not survive MemoryStore's nbytes check
|
||||
# under simulator data execution). Real GQA (h_q > h_kv) is deferred
|
||||
# to sub-cycle 4c (headline scale).
|
||||
assert cfg["h_q"] == 1
|
||||
assert cfg["h_kv"] == 1
|
||||
assert cfg["d_head"] == 64
|
||||
# single_user_* uses the 8 PEs in one cube as ring ranks.
|
||||
assert cfg["n_ranks_single_user"] == 8
|
||||
# multi_user_* uses cube-level ring; validation uses 4 cubes.
|
||||
assert cfg["n_ranks_multi_user"] == 4
|
||||
|
||||
|
||||
def test_sweep_json_has_one_row_per_panel(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
assert len(data["rows"]) == 4
|
||||
panels_in_rows = {r["panel"] for r in data["rows"]}
|
||||
assert panels_in_rows == set(PANELS_V1)
|
||||
|
||||
|
||||
# ── Per-row op_log summary sanity (ADR-0057 D7) ─────────────────────────
|
||||
|
||||
|
||||
def _row(rows: list, panel: str) -> dict:
|
||||
matches = [r for r in rows if r["panel"] == panel]
|
||||
assert len(matches) == 1, f"expected exactly one {panel} row; got {len(matches)}"
|
||||
return matches[0]
|
||||
|
||||
|
||||
def _assert_sane_summary(row: dict) -> None:
|
||||
s = row["op_log_summary"]
|
||||
panel = row["panel"]
|
||||
assert s["gemm_count"] > 0, f"{panel} must run GEMMs"
|
||||
assert s["ipcq_send_count"] > 0, f"{panel} must send (ring/allreduce phase)"
|
||||
assert s["ipcq_recv_count"] > 0, f"{panel} must recv"
|
||||
assert s["dma_read_count"] >= 3, f"{panel}: Q + K + V loads"
|
||||
assert s["dma_write_count"] >= 1, f"{panel}: final O store"
|
||||
|
||||
|
||||
def test_single_user_prefill_row_has_sane_op_log_summary(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
_assert_sane_summary(_row(data["rows"], "single_user_prefill"))
|
||||
|
||||
|
||||
def test_multi_user_prefill_row_has_sane_op_log_summary(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
_assert_sane_summary(_row(data["rows"], "multi_user_prefill"))
|
||||
|
||||
|
||||
def test_single_user_decode_row_has_sane_op_log_summary(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
_assert_sane_summary(_row(data["rows"], "single_user_decode"))
|
||||
|
||||
|
||||
def test_multi_user_decode_row_has_sane_op_log_summary(monkeypatch):
|
||||
data = _sweep_json(monkeypatch)
|
||||
_assert_sane_summary(_row(data["rows"], "multi_user_decode"))
|
||||
|
||||
|
||||
# ── Architectural invariant: decode = one-shot per rank ─────────────────
|
||||
|
||||
|
||||
def test_single_user_decode_gemm_count_is_exactly_2_per_rank(monkeypatch):
|
||||
"""ADR-0056 D3: decode kernel does ONE local partial-attention pass per
|
||||
rank → exactly 2 GEMMs per rank (Q·K^T + S·V). With n_ranks ranks the
|
||||
total = 2 × n_ranks. This distinguishes decode from prefill where each
|
||||
ring step has 2 GEMMs and the total scales as 2 × n_ranks²."""
|
||||
data = _sweep_json(monkeypatch)
|
||||
row = _row(data["rows"], "single_user_decode")
|
||||
n_ranks = row["n_ranks"]
|
||||
assert row["op_log_summary"]["gemm_count"] == 2 * n_ranks, (
|
||||
f"single_user_decode gemm_count must be 2 × n_ranks = {2 * n_ranks}; "
|
||||
f"got {row['op_log_summary']['gemm_count']}"
|
||||
)
|
||||
|
||||
|
||||
def test_multi_user_decode_gemm_count_is_exactly_2_per_rank(monkeypatch):
|
||||
"""Same one-shot invariant as single_user_decode — the kernel is the
|
||||
same; what differs is who the ranks are (cubes vs PEs)."""
|
||||
data = _sweep_json(monkeypatch)
|
||||
row = _row(data["rows"], "multi_user_decode")
|
||||
n_ranks = row["n_ranks"]
|
||||
assert row["op_log_summary"]["gemm_count"] == 2 * n_ranks, (
|
||||
f"multi_user_decode gemm_count must be 2 × n_ranks = {2 * n_ranks}; "
|
||||
f"got {row['op_log_summary']['gemm_count']}"
|
||||
)
|
||||
Reference in New Issue
Block a user