04c912f53e
Refactor the latency sweep from one giant test into 36 parametrized cases that run in parallel under xdist (~6-8x faster: 1:49 instead of ~10 min). Each case writes a JSON row to a staging dir; conftest sessionfinish hook aggregates rows on the controller node into summary.csv and the per-topology + overview plots. Aggregator gains a CSV fallback so plot-only tweaks no longer require re-running the sweep. Overview plot updates: - 96 KB explicit x-axis marker with vertical dotted line - horizontal theoretical 2D-torus reference (10600 ns) - annotation showing both theoretical and simulated values at 96 KB - drop overlapping 128 KB tick New topology.png: 2x2 panel diagram showing device-level topology (ring, torus 2x3, mesh 2x3) and the cube-level reduction inside SIP 0. Wrap arrows anchor on box edges and arc outside rows/columns so they do not overlap any SIP. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
851 lines
30 KiB
Python
851 lines
30 KiB
Python
"""Config-driven multi-device allreduce test application.
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Reads ``ccl.yaml`` + ``topology.yaml``, dynamically loads the kernel
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module from ``ccl.yaml → module``, and picks the inter-SIP exchange
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pattern from ``topology.yaml → system.sips.topology``.
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Run directly::
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python -m pytest tests/allreduce_app.py -v -s
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"""
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from __future__ import annotations
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import importlib
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import math
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from pathlib import Path
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from typing import Any
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import numpy as np
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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 configure_sfr_intercube_multisip
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from kernbench.policy.placement.dp import DPPolicy
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def _sip_topo_dims(
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sip_topo: str, n_sips: int,
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spec_w: int | None = None, spec_h: int | None = None,
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) -> tuple[int, int]:
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if sip_topo == "ring_1d":
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return (0, 0)
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if spec_w is not None and spec_h is not None:
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if spec_w * spec_h != n_sips:
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raise ValueError(
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f"sip layout {spec_w}x{spec_h} != n_sips ({n_sips})"
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)
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return (spec_w, spec_h)
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side = int(round(math.sqrt(n_sips)))
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if side * side != n_sips:
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raise ValueError(
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f"SIP topology '{sip_topo}' requires square n_sips or "
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f"explicit w/h in spec, got {n_sips}"
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)
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return (side, side)
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def run_allreduce(
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ctx: Any,
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engine: Any,
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spec: dict,
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*,
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algorithm: str | None = None,
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ccl_yaml: str | None = None,
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) -> dict:
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"""Config-driven allreduce: read yaml, load kernel, run.
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Everything is resolved from config — no hardcoded kernel imports.
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"""
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cfg_all = load_ccl_config(ccl_yaml)
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cfg = resolve_algorithm_config(cfg_all, algorithm)
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# Dynamic import from ccl.yaml → module
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algo_module = importlib.import_module(cfg["module"])
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kernel_fn = algo_module.kernel
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topo_name_to_kind = algo_module.TOPO_NAME_TO_KIND
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n_elem = int(cfg.get("n_elem", 8))
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sips_cfg = spec.get("system", {}).get("sips", {})
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n_sips = int(sips_cfg.get("count", 1))
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sip_topo = str(sips_cfg.get("topology", "ring_1d"))
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spec_sip_w = sips_cfg.get("w")
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spec_sip_h = sips_cfg.get("h")
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spec_sip_w = int(spec_sip_w) if spec_sip_w is not None else None
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spec_sip_h = int(spec_sip_h) if spec_sip_h is not None else None
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cm = spec["sip"]["cube_mesh"]
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cube_w = int(cm["w"])
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cube_h = int(cm["h"])
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n_cubes = cube_w * cube_h
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sip_topo_kind = topo_name_to_kind.get(sip_topo, 0)
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sip_topo_w, sip_topo_h = _sip_topo_dims(
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sip_topo, n_sips, spec_w=spec_sip_w, spec_h=spec_sip_h,
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)
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algo_name = cfg.get("algorithm", "allreduce")
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print(f"\n{'=' * 60}")
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print(f"algorithm: {algo_name}")
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print(f"module: {cfg['module']}")
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print(f"sip_topology: {sip_topo}")
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print(f"kernel: {kernel_fn.__name__}")
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print(f"n_sips: {n_sips}")
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print(f"n_cubes: {n_cubes}")
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print(f"n_elem: {n_elem}")
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print(f"{'=' * 60}")
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configure_sfr_intercube_multisip(engine, spec, cfg)
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dp = DPPolicy(
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cube="row_wise", pe="replicate",
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num_pes=1, num_cubes=n_cubes,
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)
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tensors = []
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for sip in range(n_sips):
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ctx.ahbm.set_device(sip)
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t = ctx.zeros(
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(n_cubes, n_elem), dtype="f16", dp=dp,
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name=f"sip{sip}",
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)
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t.copy_(ctx.from_numpy(
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np.full((n_cubes, n_elem), float(sip + 1), dtype=np.float16)
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))
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tensors.append(t)
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for sip in range(n_sips):
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arr = tensors[sip].numpy()
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print(f"[SIP {sip}] input cube0[:4] = {arr[0][:4].tolist()} "
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f"cube{n_cubes - 1}[:4] = {arr[-1][:4].tolist()}")
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t_start = engine._env.now
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all_pending = []
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for sip_rank, t in enumerate(tensors):
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pending = ctx.launch(
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algo_name, kernel_fn, t,
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n_elem, cube_w, cube_h, n_sips, sip_rank,
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sip_topo_kind, sip_topo_w, sip_topo_h,
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_defer_wait=True,
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)
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all_pending.extend(pending)
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for h, sip_id, meta in all_pending:
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ctx.wait(h, _meta=meta)
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t_end = engine._env.now
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latency_ns = t_end - t_start
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print(f"\n[{algo_name} ws={n_sips}] sim latency = "
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f"{latency_ns:.1f} ns ({latency_ns / 1000:.3f} us)")
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for key, (_, trace) in engine._results.items():
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if not isinstance(trace, dict):
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continue
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total = trace.get("total_ns", 0.0)
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pe_exec = trace.get("pe_exec_ns", 0.0) or 0.0
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network = total - pe_exec
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print(f" [{key}] total={total:.1f} ns "
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f"pe_exec={pe_exec:.1f} ns network={network:.1f} ns")
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expected = float(n_cubes * sum(range(1, n_sips + 1)))
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print()
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for sip in range(n_sips):
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arr = tensors[sip].numpy()
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print(f"[SIP {sip}] output cube0[:4] = {arr[0][:4].tolist()}")
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print(f"[SIP {sip}] output cube{n_cubes - 1}[:4] = {arr[-1][:4].tolist()}")
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ok_cubes = 0
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for sip in range(n_sips):
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arr = tensors[sip].numpy()
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for cube_id in range(n_cubes):
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assert np.allclose(
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arr[cube_id], expected, rtol=1e-1, atol=1e-1,
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), (
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f"SIP{sip} cube {cube_id}: "
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f"got {arr[cube_id][:4]}, expected {expected}"
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)
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ok_cubes += 1
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print(f"\n {algo_name} (ws={n_sips}): {ok_cubes} OK")
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return {
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"expected": expected,
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"latency_ns": latency_ns,
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"ok_cubes": ok_cubes,
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}
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# ── pytest entry point ───────────────────────────────────────────────
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import pytest
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import yaml
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from kernbench.runtime_api.context import RuntimeContext
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from kernbench.runtime_api.types import DeviceSelector
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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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TOPOLOGY_PATH = Path(__file__).parent.parent / "topology.yaml"
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CONFIGS = [
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pytest.param(
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"intercube_allreduce", "ring_1d", 6, None, None,
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id="ring_6sip",
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),
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pytest.param(
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"intercube_allreduce", "torus_2d", 6, 2, 3,
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id="torus_6sip_2x3",
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),
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pytest.param(
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"intercube_allreduce", "mesh_2d_no_wrap", 6, 2, 3,
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id="mesh_6sip_2x3",
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),
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]
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def _write_temp_configs(
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tmp_path, sip_topology, n_sips, algorithm, n_elem_override=None,
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sip_w=None, sip_h=None,
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):
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"""Write temp topology.yaml and ccl.yaml with the given overrides."""
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with open(TOPOLOGY_PATH) as f:
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topo_cfg = yaml.safe_load(f)
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topo_cfg["system"]["sips"]["count"] = n_sips
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topo_cfg["system"]["sips"]["topology"] = sip_topology
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if sip_w is not None and sip_h is not None:
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topo_cfg["system"]["sips"]["w"] = int(sip_w)
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topo_cfg["system"]["sips"]["h"] = int(sip_h)
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else:
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topo_cfg["system"]["sips"].pop("w", None)
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topo_cfg["system"]["sips"].pop("h", None)
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topo_path = tmp_path / "topology.yaml"
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with open(topo_path, "w") as f:
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yaml.dump(topo_cfg, f, default_flow_style=False)
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ccl_path = Path(__file__).parent.parent / "ccl.yaml"
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with open(ccl_path) as f:
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ccl_cfg = yaml.safe_load(f)
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ccl_cfg["defaults"]["algorithm"] = algorithm
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if n_elem_override is not None:
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ccl_cfg.setdefault("algorithms", {}).setdefault(
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algorithm, {},
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)["n_elem"] = int(n_elem_override)
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# Ensure IPCQ slot is big enough for the per-message payload.
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per_msg_bytes = int(n_elem_override) * 2 # f16
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default_slot = int(ccl_cfg["defaults"].get("slot_size", 4096))
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if per_msg_bytes > default_slot:
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ccl_cfg["defaults"]["slot_size"] = per_msg_bytes
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tmp_ccl = tmp_path / "ccl.yaml"
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with open(tmp_ccl, "w") as f:
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yaml.dump(ccl_cfg, f, default_flow_style=False)
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return str(topo_path), str(tmp_ccl)
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@pytest.mark.parametrize(
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"algorithm,sip_topology,n_sips,sip_w,sip_h", CONFIGS,
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)
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def test_allreduce(
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tmp_path, algorithm, sip_topology, n_sips, sip_w, sip_h,
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):
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topo_path, ccl_path = _write_temp_configs(
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tmp_path, sip_topology, n_sips, algorithm,
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sip_w=sip_w, sip_h=sip_h,
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)
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topo = resolve_topology(topo_path)
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engine = GraphEngine(topo.topology_obj, enable_data=True)
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spec = topo.topology_obj.spec
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with RuntimeContext(
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engine=engine,
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target_device=DeviceSelector("all"),
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correlation_id=f"test_{algorithm}_{sip_topology}",
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spec=spec,
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) as ctx:
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result = run_allreduce(
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ctx, engine, spec,
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algorithm=algorithm, ccl_yaml=ccl_path,
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)
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assert result["ok_cubes"] > 0
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# ── Latency sweep (parametrized + xdist-friendly) ─────────────────────
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# avoid 16 (== n_cubes, dim_map collision). Goes up to 96 KB per PE:
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# bytes_per_pe = n_elem * 2 (f16). 49152 elem * 2 = 96 KB / PE.
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_SWEEP_N_ELEM = [
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8, 32, 64, 128, 512, 1024, 2048,
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4096, 8192, 16384, 32768, 49152,
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]
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_ELEM_BYTES_F16 = 2
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_SWEEP_TOPOLOGIES = [
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("intercube_allreduce", "ring_1d", 6, None, None),
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("intercube_allreduce", "torus_2d", 6, 2, 3),
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("intercube_allreduce", "mesh_2d_no_wrap", 6, 2, 3),
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]
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# Shared on-disk staging dir for parametrized sweep rows. Each
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# parametrized invocation writes one JSON file here; the aggregator
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# (run from conftest.pytest_sessionfinish) reads them and emits the
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# combined CSV + PNG plots.
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_SWEEP_OUT_DIR = Path(__file__).parent / "allreduce_latency_plots"
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_SWEEP_ROWS_DIR = _SWEEP_OUT_DIR / "_rows"
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def _sweep_params():
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out = []
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for algorithm, sip_topology, n_sips, sip_w, sip_h in _SWEEP_TOPOLOGIES:
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for n_elem in _SWEEP_N_ELEM:
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out.append(pytest.param(
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algorithm, sip_topology, n_sips, sip_w, sip_h, n_elem,
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id=f"{sip_topology}-n_elem{n_elem}",
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))
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return out
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@pytest.mark.parametrize(
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"algorithm,sip_topology,n_sips,sip_w,sip_h,n_elem", _sweep_params(),
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)
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def test_allreduce_latency_one(
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tmp_path, algorithm, sip_topology, n_sips, sip_w, sip_h, n_elem,
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):
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"""One config of the latency sweep. xdist parallelizes across params.
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Writes a single JSON row to ``_SWEEP_ROWS_DIR``. The conftest
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sessionfinish hook aggregates rows into CSV + plots after all
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parametrized cases finish.
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"""
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import json
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topo_path, ccl_path = _write_temp_configs(
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tmp_path, sip_topology, n_sips, algorithm,
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sip_w=sip_w, sip_h=sip_h,
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n_elem_override=n_elem,
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)
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topo = resolve_topology(topo_path)
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engine = GraphEngine(topo.topology_obj, enable_data=True)
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spec = topo.topology_obj.spec
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with RuntimeContext(
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engine=engine,
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target_device=DeviceSelector("all"),
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correlation_id=f"sweep_{algorithm}_{sip_topology}_{n_elem}",
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spec=spec,
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) as ctx:
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result = run_allreduce(
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ctx, engine, spec,
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algorithm=algorithm, ccl_yaml=ccl_path,
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)
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assert result["ok_cubes"] > 0
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pe_exec_vals = [
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float(tr.get("pe_exec_ns", 0.0) or 0.0)
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for _, (_, tr) in engine._results.items()
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if isinstance(tr, dict)
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]
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crit_ns = max(pe_exec_vals) if pe_exec_vals else 0.0
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cm = spec["sip"]["cube_mesh"]
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n_cubes = int(cm["w"]) * int(cm["h"])
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bytes_per_sip = n_cubes * n_elem * _ELEM_BYTES_F16
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bytes_per_pe = n_elem * _ELEM_BYTES_F16
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record = {
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"algorithm": algorithm,
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"sip_topology": sip_topology,
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"n_sips": n_sips,
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"n_elem": n_elem,
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"bytes_per_pe": bytes_per_pe,
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"bytes_per_sip": bytes_per_sip,
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"latency_ns": crit_ns,
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}
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_SWEEP_ROWS_DIR.mkdir(parents=True, exist_ok=True)
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row_path = _SWEEP_ROWS_DIR / f"{sip_topology}_{n_elem}.json"
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with open(row_path, "w", encoding="utf-8") as f:
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json.dump(record, f)
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def _aggregate_sweep_plots() -> bool:
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"""Read all per-config rows and emit CSV + PNG plots.
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Called by ``conftest.pytest_sessionfinish`` (controller node only).
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Returns True if any rows were aggregated, False otherwise.
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"""
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import csv
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import json
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row_files = sorted(_SWEEP_ROWS_DIR.glob("*.json")) \
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if _SWEEP_ROWS_DIR.exists() else []
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records: list[dict] = []
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if row_files:
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for p in row_files:
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with open(p, encoding="utf-8") as f:
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records.append(json.load(f))
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else:
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# Fallback: replot from existing summary.csv (skip sweep re-run).
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summary_path = _SWEEP_OUT_DIR / "summary.csv"
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if not summary_path.exists():
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return False
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with open(summary_path, encoding="utf-8") as f:
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for row in csv.DictReader(f):
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records.append({
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"algorithm": row["algorithm"],
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"sip_topology": row["sip_topology"],
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"n_sips": int(row["n_sips"]),
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"n_elem": int(row["n_elem"]),
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"bytes_per_pe": int(row["bytes_per_pe"]),
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"bytes_per_sip": int(row["bytes_per_sip"]),
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"latency_ns": float(row["latency_ns"]),
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})
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if not records:
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return False
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import matplotlib.pyplot as plt
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from matplotlib.ticker import FuncFormatter
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def _fmt_bytes(x, _pos):
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if x <= 0:
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return "0"
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if x >= 1024 * 1024:
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return f"{x / (1024 * 1024):.0f} MB"
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if x >= 1024:
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return f"{x / 1024:.0f} KB"
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return f"{x:.0f} B"
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_bytes_fmt = FuncFormatter(_fmt_bytes)
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_SWEEP_OUT_DIR.mkdir(parents=True, exist_ok=True)
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with open(_SWEEP_OUT_DIR / "summary.csv", "w",
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newline="", encoding="utf-8") as f:
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w = csv.DictWriter(f, fieldnames=[
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"algorithm", "sip_topology", "n_sips", "n_elem",
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"bytes_per_pe", "bytes_per_sip", "latency_ns",
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])
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w.writeheader()
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for r in sorted(records, key=lambda r: (
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r["sip_topology"], r["bytes_per_pe"],
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)):
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w.writerow(r)
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topologies = sorted({r["sip_topology"] for r in records})
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for topo_name in topologies:
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rs = sorted(
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[r for r in records if r["sip_topology"] == topo_name],
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key=lambda r: r["bytes_per_pe"],
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)
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if not rs:
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continue
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xs = [r["bytes_per_pe"] for r in rs]
|
||
ys = [r["latency_ns"] for r in rs]
|
||
title = (
|
||
f"Allreduce latency — {topo_name} "
|
||
f"(n_sips={rs[0]['n_sips']})"
|
||
)
|
||
fig, ax = plt.subplots(figsize=(8, 5))
|
||
ax.plot(xs, ys, marker="o", color="tab:blue")
|
||
ax.set_xscale("log", base=2)
|
||
ax.set_xlabel("Bytes per PE (log scale)")
|
||
ax.set_ylabel("max pe_exec_ns (critical path)")
|
||
ax.set_title(title)
|
||
ax.grid(True, alpha=0.3)
|
||
ax.xaxis.set_major_formatter(_bytes_fmt)
|
||
fig.tight_layout()
|
||
fig.savefig(_SWEEP_OUT_DIR / f"{topo_name}.png", dpi=120)
|
||
plt.close(fig)
|
||
|
||
colors = {"ring_1d": "tab:blue", "torus_2d": "tab:orange",
|
||
"mesh_2d_no_wrap": "tab:green"}
|
||
THEORETICAL_TORUS_2D_6SIP_NS = 10600.0
|
||
fig, ax = plt.subplots(figsize=(9, 6))
|
||
for topo_name in topologies:
|
||
rs = sorted(
|
||
[r for r in records if r["sip_topology"] == topo_name],
|
||
key=lambda r: r["bytes_per_pe"],
|
||
)
|
||
if not rs:
|
||
continue
|
||
ax.plot(
|
||
[r["bytes_per_pe"] for r in rs],
|
||
[r["latency_ns"] for r in rs],
|
||
marker="o",
|
||
label=f"{topo_name} (n_sips={rs[0]['n_sips']})",
|
||
color=colors.get(topo_name),
|
||
)
|
||
ax.axhline(
|
||
y=THEORETICAL_TORUS_2D_6SIP_NS,
|
||
color="tab:red", linestyle="--", linewidth=1.5,
|
||
label=f"theoretical torus_2d (6 SIPs) = "
|
||
f"{THEORETICAL_TORUS_2D_6SIP_NS:.0f} ns",
|
||
)
|
||
BYTES_96KB = 96 * 1024
|
||
ax.axvline(
|
||
x=BYTES_96KB, ymin=0, ymax=1,
|
||
color="tab:red", linestyle=":", linewidth=1.2,
|
||
)
|
||
ax.plot(
|
||
[BYTES_96KB], [THEORETICAL_TORUS_2D_6SIP_NS],
|
||
marker="x", color="tab:red", markersize=10, markeredgewidth=2,
|
||
)
|
||
# Find simulated torus_2d latency at 96 KB (if present) for direct
|
||
# comparison with the theoretical value.
|
||
sim_torus_at_96kb = next(
|
||
(r["latency_ns"] for r in records
|
||
if r["sip_topology"] == "torus_2d" and r["bytes_per_pe"] == BYTES_96KB),
|
||
None,
|
||
)
|
||
if sim_torus_at_96kb is not None:
|
||
ax.plot(
|
||
[BYTES_96KB], [sim_torus_at_96kb],
|
||
marker="o", color="tab:orange",
|
||
markersize=10, markeredgecolor="black", markeredgewidth=1.2,
|
||
)
|
||
ax.annotate(
|
||
f"96 KB\n"
|
||
f"theoretical = {THEORETICAL_TORUS_2D_6SIP_NS:.0f} ns\n"
|
||
f"simulated = {sim_torus_at_96kb:.0f} ns",
|
||
xy=(BYTES_96KB, sim_torus_at_96kb),
|
||
xytext=(10, -20), textcoords="offset points",
|
||
color="tab:red", fontsize=9,
|
||
)
|
||
else:
|
||
ax.annotate(
|
||
f"96 KB\n→ theoretical {THEORETICAL_TORUS_2D_6SIP_NS:.0f} ns",
|
||
xy=(BYTES_96KB, THEORETICAL_TORUS_2D_6SIP_NS),
|
||
xytext=(8, -20), textcoords="offset points",
|
||
color="tab:red", fontsize=9,
|
||
)
|
||
ax.set_xscale("log", base=2)
|
||
ax.set_xlabel("Bytes per PE (log scale)")
|
||
ax.set_ylabel("max pe_exec_ns (critical path)")
|
||
ax.set_title("Multi-device allreduce latency by topology")
|
||
ax.grid(True, alpha=0.3)
|
||
|
||
# Drop 128 KB tick (overlaps visually with the explicit 96 KB marker)
|
||
# and add 96 KB.
|
||
BYTES_128KB = 128 * 1024
|
||
existing_ticks = [t for t in ax.get_xticks() if int(t) != BYTES_128KB]
|
||
if BYTES_96KB not in existing_ticks:
|
||
existing_ticks.append(BYTES_96KB)
|
||
ax.set_xticks(sorted(existing_ticks))
|
||
ax.set_xlim(left=min(r["bytes_per_pe"] for r in records) / 2,
|
||
right=BYTES_96KB * 1.5)
|
||
ax.legend()
|
||
ax.xaxis.set_major_formatter(_bytes_fmt)
|
||
fig.tight_layout()
|
||
fig.savefig(_SWEEP_OUT_DIR / "overview.png", dpi=120)
|
||
plt.close(fig)
|
||
|
||
# Cleanup row staging dir so a partial future run doesn't pick up
|
||
# stale rows.
|
||
for p in row_files:
|
||
try:
|
||
p.unlink()
|
||
except OSError:
|
||
pass
|
||
try:
|
||
_SWEEP_ROWS_DIR.rmdir()
|
||
except OSError:
|
||
pass
|
||
|
||
print(f"\nWrote {_SWEEP_OUT_DIR / 'overview.png'} "
|
||
f"from {len(records)} rows")
|
||
return True
|
||
|
||
|
||
# ── Topology diagram (device-level + cube-level reduction) ────────────
|
||
|
||
# Convention: "rows × cols" everywhere, row-major rank assignment
|
||
# (rank = row * n_cols + col). For the 2×3 inter-SIP grid, this means
|
||
# 2 rows × 3 columns: SIP 0 1 2 / SIP 3 4 5.
|
||
|
||
_PALETTE_BG = "#fafbfd"
|
||
_PALETTE_FRAME = "#3a3f4a"
|
||
_PALETTE_BLUE = "#2c6fb6"
|
||
_PALETTE_GREEN = "#2e8a4e"
|
||
_PALETTE_TEXT = "#1f2530"
|
||
_PALETTE_BOX_FILL = "#eaf2fb"
|
||
_PALETTE_BOX_EDGE = "#2c4a78"
|
||
_PALETTE_ROOT_FILL = "#ffd9b8"
|
||
_PALETTE_ROOT_EDGE = "#bd5a14"
|
||
|
||
|
||
def _arrow(ax, xy_from, xy_to, color="black", lw=1.4, alpha=1.0,
|
||
style="-|>", curve=0.0):
|
||
from matplotlib.patches import FancyArrowPatch
|
||
arrow = FancyArrowPatch(
|
||
xy_from, xy_to,
|
||
arrowstyle=style, mutation_scale=12,
|
||
color=color, lw=lw, alpha=alpha,
|
||
connectionstyle=f"arc3,rad={curve}",
|
||
)
|
||
ax.add_patch(arrow)
|
||
|
||
|
||
def _draw_sip_box(ax, cx, cy, w, h, label, *, fill=_PALETTE_BOX_FILL,
|
||
edge=_PALETTE_BOX_EDGE, text_color=_PALETTE_TEXT,
|
||
font=10):
|
||
from matplotlib.patches import FancyBboxPatch
|
||
box = FancyBboxPatch(
|
||
(cx - w / 2, cy - h / 2), w, h,
|
||
boxstyle="round,pad=0.02,rounding_size=0.10",
|
||
linewidth=1.4, edgecolor=edge, facecolor=fill,
|
||
)
|
||
ax.add_patch(box)
|
||
ax.text(cx, cy, label, ha="center", va="center",
|
||
color=text_color, fontsize=font, fontweight="bold")
|
||
|
||
|
||
def _frame_panel(ax, title, lim_x=10.0, lim_y=6.0):
|
||
"""Set up a square-ish panel with a visible outer border."""
|
||
from matplotlib.patches import FancyBboxPatch
|
||
ax.set_xlim(0, lim_x)
|
||
ax.set_ylim(0, lim_y)
|
||
ax.set_aspect("equal")
|
||
ax.axis("off")
|
||
ax.set_facecolor(_PALETTE_BG)
|
||
border = FancyBboxPatch(
|
||
(0.05, 0.05), lim_x - 0.10, lim_y - 0.10,
|
||
boxstyle="round,pad=0.01,rounding_size=0.12",
|
||
linewidth=1.4, edgecolor=_PALETTE_FRAME, facecolor=_PALETTE_BG,
|
||
zorder=0,
|
||
)
|
||
ax.add_patch(border)
|
||
ax.set_title(title, fontsize=12, fontweight="bold",
|
||
color=_PALETTE_TEXT, pad=8)
|
||
|
||
|
||
def _draw_ring_topology(ax):
|
||
_frame_panel(ax, "ring_1d (6 SIPs)", lim_x=10.0, lim_y=6.0)
|
||
|
||
xs = [1.2, 2.7, 4.2, 5.7, 7.2, 8.7]
|
||
y = 3.1
|
||
box_w, box_h = 1.05, 0.9
|
||
for i, x in enumerate(xs):
|
||
_draw_sip_box(ax, x, y, box_w, box_h, f"SIP {i}")
|
||
# Forward ring (global_E) — adjacent neighbours, anchored to box edges.
|
||
for i in range(5):
|
||
_arrow(ax, (xs[i] + box_w / 2, y),
|
||
(xs[i + 1] - box_w / 2, y),
|
||
color=_PALETTE_BLUE, lw=1.6)
|
||
# Wrap (SIP 5 → SIP 0). Anchor at right-CENTER of SIP 5 and
|
||
# left-CENTER of SIP 0; arc OUTSIDE (above) the row so it does not
|
||
# overlap any of the SIP boxes in between.
|
||
_arrow(
|
||
ax,
|
||
(xs[5] + box_w / 2, y),
|
||
(xs[0] - box_w / 2, y),
|
||
color=_PALETTE_BLUE, lw=1.6, curve=-0.40,
|
||
)
|
||
ax.text(5.0, y + 2.0, "global_E (ring)", ha="center",
|
||
color=_PALETTE_BLUE, fontsize=10, style="italic")
|
||
ax.text(5.0, y - 1.5,
|
||
"(global_W = reverse direction, used by the algorithm)",
|
||
ha="center", color="gray", fontsize=8, style="italic")
|
||
|
||
|
||
def _draw_grid_topology(ax, kind, *, n_rows=2, n_cols=3):
|
||
"""kind ∈ {'torus', 'mesh'}. Lays out as n_rows × n_cols (row-major).
|
||
|
||
For the sweep we use 2 rows × 3 cols → SIP layout::
|
||
|
||
row 0: SIP 0 SIP 1 SIP 2
|
||
row 1: SIP 3 SIP 4 SIP 5
|
||
"""
|
||
title = f"torus_2d ({n_rows}×{n_cols}, 6 SIPs)" if kind == "torus" \
|
||
else f"mesh_2d_no_wrap ({n_rows}×{n_cols}, 6 SIPs)"
|
||
_frame_panel(ax, title, lim_x=10.0, lim_y=6.0)
|
||
|
||
col_xs = [2.0, 5.0, 8.0] # 3 cols
|
||
row_ys = [4.3, 1.8] # 2 rows
|
||
box_w, box_h = 1.3, 0.95
|
||
pos: dict[tuple[int, int], tuple[float, float]] = {}
|
||
for r in range(n_rows):
|
||
for c in range(n_cols):
|
||
rank = r * n_cols + c
|
||
x, y = col_xs[c], row_ys[r]
|
||
pos[(r, c)] = (x, y)
|
||
_draw_sip_box(ax, x, y, box_w, box_h, f"SIP {rank}")
|
||
|
||
# Row edges (E↔W) — between adjacent columns within each row.
|
||
for r in range(n_rows):
|
||
for c in range(n_cols - 1):
|
||
x0, y0 = pos[(r, c)]
|
||
x1, y1 = pos[(r, c + 1)]
|
||
_arrow(ax, (x0 + box_w / 2, y0 + 0.10),
|
||
(x1 - box_w / 2, y1 + 0.10),
|
||
color=_PALETTE_BLUE, lw=1.5)
|
||
_arrow(ax, (x1 - box_w / 2, y1 - 0.10),
|
||
(x0 + box_w / 2, y0 - 0.10),
|
||
color=_PALETTE_BLUE, lw=1.5)
|
||
# Col edges (N↔S) — between adjacent rows within each column.
|
||
for c in range(n_cols):
|
||
for r in range(n_rows - 1):
|
||
x0, y0 = pos[(r, c)]
|
||
x1, y1 = pos[(r + 1, c)]
|
||
_arrow(ax, (x0 - 0.12, y0 - box_h / 2),
|
||
(x1 - 0.12, y1 + box_h / 2),
|
||
color=_PALETTE_GREEN, lw=1.5)
|
||
_arrow(ax, (x1 + 0.12, y1 + box_h / 2),
|
||
(x0 + 0.12, y0 - box_h / 2),
|
||
color=_PALETTE_GREEN, lw=1.5)
|
||
# Wrap arrows for torus only — anchor to the centre of the OUTER
|
||
# edge of the end SIPs and arc OUTSIDE the row/column so they do
|
||
# not overlap the SIPs in between.
|
||
if kind == "torus":
|
||
# Row wrap: last col → first col. Top row arcs UP, bottom row
|
||
# arcs DOWN, so each wrap sits clearly outside its own row.
|
||
for r in range(n_rows):
|
||
x0, y0 = pos[(r, 0)]
|
||
x1, y1 = pos[(r, n_cols - 1)]
|
||
curve = -0.45 if r == 0 else 0.45
|
||
_arrow(
|
||
ax,
|
||
(x1 + box_w / 2, y1),
|
||
(x0 - box_w / 2, y0),
|
||
color=_PALETTE_BLUE, lw=1.5,
|
||
curve=curve, alpha=0.9,
|
||
)
|
||
# Col wrap: last row → first row. Leftmost col arcs LEFT,
|
||
# rightmost col arcs RIGHT. Middle col(s) get a small inline
|
||
# marker + legend note (drawing them through the panel would
|
||
# collide with the row arrows).
|
||
for c in range(n_cols):
|
||
x0, y0 = pos[(0, c)]
|
||
x1, y1 = pos[(n_rows - 1, c)]
|
||
if c == 0:
|
||
curve = 0.55
|
||
elif c == n_cols - 1:
|
||
curve = -0.55
|
||
else:
|
||
continue # skip middle col — see legend note
|
||
_arrow(
|
||
ax,
|
||
(x1, y1 - box_h / 2),
|
||
(x0, y0 + box_h / 2),
|
||
color=_PALETTE_GREEN, lw=1.5,
|
||
curve=curve, alpha=0.9,
|
||
)
|
||
|
||
ax.text(0.7, 5.6, "global_E/W (row)", color=_PALETTE_BLUE,
|
||
fontsize=9, style="italic", fontweight="bold")
|
||
ax.text(0.7, 5.25, "global_N/S (col)", color=_PALETTE_GREEN,
|
||
fontsize=9, style="italic", fontweight="bold")
|
||
ax.text(0.7, 4.92,
|
||
"wrap = torus" if kind == "torus" else "no wrap = mesh",
|
||
color="gray", fontsize=8, style="italic")
|
||
if kind == "torus" and n_cols > 2:
|
||
ax.text(0.7, 0.3,
|
||
"(middle-col wrap omitted for clarity — every row "
|
||
"and every column wraps)",
|
||
color="gray", fontsize=7.5, style="italic")
|
||
|
||
|
||
def _draw_cube_reduction(ax):
|
||
"""4×4 cube grid inside SIP 0 — compact layout with phase legend."""
|
||
from matplotlib.patches import Rectangle
|
||
_frame_panel(ax, "Cube-level reduction inside SIP 0 (4×4 cubes)",
|
||
lim_x=10.0, lim_y=6.0)
|
||
|
||
cube_w = 0.65
|
||
cube_gap = 0.18
|
||
# Center the 4×4 grid in the left half of the panel.
|
||
grid_total = 4 * cube_w + 3 * cube_gap
|
||
grid_x0 = 0.7
|
||
grid_y0 = 0.7
|
||
centers: dict[tuple[int, int], tuple[float, float]] = {}
|
||
for r in range(4):
|
||
for c in range(4):
|
||
cx = grid_x0 + c * (cube_w + cube_gap) + cube_w / 2
|
||
cy = grid_y0 + (3 - r) * (cube_w + cube_gap) + cube_w / 2
|
||
centers[(r, c)] = (cx, cy)
|
||
cube_id = r * 4 + c
|
||
is_root = (r == 3 and c == 3)
|
||
face = _PALETTE_ROOT_FILL if is_root else _PALETTE_BOX_FILL
|
||
edge = _PALETTE_ROOT_EDGE if is_root else _PALETTE_BOX_EDGE
|
||
rect = Rectangle(
|
||
(cx - cube_w / 2, cy - cube_w / 2), cube_w, cube_w,
|
||
linewidth=1.2, edgecolor=edge, facecolor=face,
|
||
)
|
||
ax.add_patch(rect)
|
||
label = f"c{cube_id}"
|
||
ax.text(cx, cy, label, ha="center", va="center",
|
||
fontsize=7.5, fontweight="bold",
|
||
color=_PALETTE_ROOT_EDGE if is_root
|
||
else _PALETTE_TEXT)
|
||
|
||
# Phase 1: row reduce W→E.
|
||
for r in range(4):
|
||
for c in range(3):
|
||
x0, y0 = centers[(r, c)]
|
||
x1, y1 = centers[(r, c + 1)]
|
||
_arrow(ax, (x0 + cube_w / 2, y0), (x1 - cube_w / 2, y1),
|
||
color=_PALETTE_BLUE, lw=1.5)
|
||
# Phase 2: col reduce N→S along rightmost column.
|
||
for r in range(3):
|
||
x0, y0 = centers[(r, 3)]
|
||
x1, y1 = centers[(r + 1, 3)]
|
||
_arrow(ax, (x0, y0 - cube_w / 2), (x1, y1 + cube_w / 2),
|
||
color=_PALETTE_GREEN, lw=1.7)
|
||
|
||
# Phase legend on the right side.
|
||
legend_x = grid_x0 + grid_total + 0.55
|
||
ax.text(legend_x, 5.0, "Phase 1: row reduce (W → E)",
|
||
color=_PALETTE_BLUE, fontsize=10, fontweight="bold")
|
||
ax.text(legend_x, 4.55, "Phase 2: col reduce (N → S, rightmost col)",
|
||
color=_PALETTE_GREEN, fontsize=10, fontweight="bold")
|
||
ax.text(legend_x, 4.10, "Phase 3: inter-SIP exchange at root cube",
|
||
color=_PALETTE_ROOT_EDGE, fontsize=10, fontweight="bold")
|
||
ax.text(legend_x, 3.65, "Phase 4: col broadcast (S → N)",
|
||
color=_PALETTE_GREEN, fontsize=10, style="italic")
|
||
ax.text(legend_x, 3.20, "Phase 5: row broadcast (E → W)",
|
||
color=_PALETTE_BLUE, fontsize=10, style="italic")
|
||
ax.text(legend_x, 2.55,
|
||
"(broadcast phases reverse phases 2 & 1)",
|
||
color="gray", fontsize=8.5, style="italic")
|
||
ax.text(legend_x, 1.7,
|
||
"Root cube (c15, bottom-right) is the only\n"
|
||
"cube that performs the inter-SIP exchange.",
|
||
color=_PALETTE_ROOT_EDGE, fontsize=9, style="italic")
|
||
|
||
|
||
def emit_topology_diagram() -> str:
|
||
"""Emit a 2×2-panel topology diagram into allreduce_latency_plots/.
|
||
|
||
Top row: ring_1d | torus_2d (2×3)
|
||
Bot row: mesh_2d_no_wrap (2×3) | cube-level reduction in SIP 0
|
||
"""
|
||
import matplotlib.gridspec as gridspec
|
||
import matplotlib.pyplot as plt
|
||
|
||
_SWEEP_OUT_DIR.mkdir(parents=True, exist_ok=True)
|
||
fig = plt.figure(figsize=(16, 10), facecolor="white")
|
||
gs = gridspec.GridSpec(2, 2, figure=fig, hspace=0.30, wspace=0.10)
|
||
ax_ring = fig.add_subplot(gs[0, 0])
|
||
ax_torus = fig.add_subplot(gs[0, 1])
|
||
ax_mesh = fig.add_subplot(gs[1, 0])
|
||
ax_cube = fig.add_subplot(gs[1, 1])
|
||
|
||
_draw_ring_topology(ax_ring)
|
||
_draw_grid_topology(ax_torus, "torus", n_rows=2, n_cols=3)
|
||
_draw_grid_topology(ax_mesh, "mesh", n_rows=2, n_cols=3)
|
||
_draw_cube_reduction(ax_cube)
|
||
|
||
fig.suptitle(
|
||
"Allreduce topology — device-level (top: ring, torus, mesh) "
|
||
"and cube-level reduction in SIP 0",
|
||
fontsize=14, fontweight="bold", color=_PALETTE_TEXT, y=0.98,
|
||
)
|
||
out_path = _SWEEP_OUT_DIR / "topology.png"
|
||
fig.savefig(out_path, dpi=130, bbox_inches="tight",
|
||
facecolor=fig.get_facecolor())
|
||
plt.close(fig)
|
||
return str(out_path)
|
||
|
||
|
||
def test_emit_topology_diagram():
|
||
"""Emit topology.png alongside the sweep plots. Pure plotting; no sim."""
|
||
out = emit_topology_diagram()
|
||
assert Path(out).exists()
|