Files
kernbench2/tests/test_runtime_api_tensor.py
T
ywkang 10b33b44ba Add Tensor indexing + hierarchical 3-level all-reduce kernel
Tensor.__setitem__ / __getitem__:
- Shard-aligned slice assignment and read on deployed tensors.
- Scalar broadcast and numpy array assignment supported.
- Cross-shard slices raise NotImplementedError (use copy_ for that).
- 3 new tests: single-PE, multi-PE, cross-shard error case.

Hierarchical all-reduce kernel (src/kernbench/ccl/algorithms/):
- 3-level reduce: intra-cube (E/W) → inter-cube (N/S) → inter-SIP (parent).
- Bidirectional ring reduce at each level: ceil((N-1)/2) rounds.
  Left half sends via dir_dec, right half via dir_inc (wrap).
  Representative receives from both sides.
- Chain broadcast for reverse path: cube 0 PE 0 → all PE 0s → all PEs.
- Registered in ccl.yaml as "hierarchical_allreduce" with topology: none
  (neighbors() override builds the full 3-level neighbor map).
- kernel_args derives pes_per_cube/cubes_per_sip/num_sips from world_size.
- Mock-verified at 8/16/32/64/128 ranks.

Mock runtime fixes:
- Direction pairing: explicit N↔S, E↔W, parent↔parent instead of
  "first matching reverse". Fixes 2-element rings where N and S both
  point to the same peer.
- Deadlock detection: send-counter based (not just queue-depth-total)
  to catch chain reductions where send+recv pairs net to zero.
- Multi-cube program_id: pes_per_cube parameter enables
  program_id(axis=0) = PE within cube, program_id(axis=1) = cube id.
  Legacy single-cube tests unaffected (default = world_size).

504 tests pass in 12s.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-12 23:52:04 -07:00

207 lines
7.4 KiB
Python

"""Tests for the pytorch-compat Tensor API extensions.
Covers the new ``torch.from_numpy`` factory and ``Tensor.numpy``,
``Tensor.copy_`` methods used by the unified ``ccl_allreduce`` bench.
"""
from __future__ import annotations
import numpy as np
import pytest
from kernbench.policy.placement.dp import DPPolicy
from kernbench.runtime_api.bench_runner import run_bench
from kernbench.runtime_api.types import resolve_device
from kernbench.sim_engine.engine import GraphEngine
from kernbench.topology.builder import resolve_topology
def _engine_factory(topology, device):
return GraphEngine(getattr(topology, "topology_obj", topology), enable_data=True)
def _run_with(bench_body):
topo = resolve_topology("topology.yaml")
return run_bench(
topology=topo,
bench_fn=bench_body,
device=resolve_device("all"),
engine_factory=_engine_factory,
)
# ── from_numpy ──────────────────────────────────────────────────────
def test_from_numpy_creates_host_tensor():
"""torch.from_numpy returns a kernbench Tensor with the array stored
in its host buffer (not deployed to any PE)."""
def body(torch):
arr = np.arange(8, dtype=np.float16).reshape(1, 8)
h = torch.from_numpy(arr)
# Host tensor has shape/dtype matching the array.
assert h.shape == (1, 8)
assert h.dtype == "f16"
# numpy() round-trips the host buffer.
assert np.array_equal(h.numpy(), arr)
# No deploy → no real shards.
assert h._handle is None
# Submit a no-op so run_bench has at least one handle.
torch.zeros((1, 8), dtype="f16",
dp=DPPolicy(sip="replicate", cube="replicate", pe="replicate",
num_sips=1, num_cubes=1, num_pes=1),
name="dummy")
_run_with(body)
# ── single-PE replicated tensor ─────────────────────────────────────
def test_copy_and_numpy_single_pe():
"""copy_ from a numpy array, then numpy() round-trips correctly on
a single-PE (no real sharding) tensor."""
def body(torch):
dp = DPPolicy(sip="replicate", cube="replicate", pe="replicate",
num_sips=1, num_cubes=1, num_pes=1)
t = torch.zeros((1, 16), dtype="f16", dp=dp, name="t")
src = np.arange(16, dtype=np.float16).reshape(1, 16)
t.copy_(torch.from_numpy(src))
gathered = t.numpy()
assert gathered.shape == (1, 16)
assert np.array_equal(gathered, src)
_run_with(body)
# ── multi-PE column-wise sharding (1 cube) ──────────────────────────
def test_copy_and_numpy_multi_pe_column_wise():
"""copy_ splits across 8 PEs in one cube, numpy() reassembles."""
def body(torch):
n_pe = 8
dp = DPPolicy(sip="replicate", cube="replicate", pe="column_wise",
num_sips=1, num_cubes=1, num_pes=n_pe)
t = torch.zeros((1, n_pe * 4), dtype="f16", dp=dp, name="t")
src = np.arange(n_pe * 4, dtype=np.float16).reshape(1, n_pe * 4)
t.copy_(torch.from_numpy(src))
gathered = t.numpy()
assert gathered.shape == (1, n_pe * 4)
assert np.array_equal(gathered, src)
# Sanity: there really were 8 shards.
assert len(t._handle.shards) == n_pe
_run_with(body)
# ── multi-cube sharding ─────────────────────────────────────────────
def test_copy_and_numpy_multi_cube():
"""copy_ across 2 cubes (16 PEs total), numpy() reassembles."""
def body(torch):
n_pe_per_cube = 8
n_cubes = 2
total = n_cubes * n_pe_per_cube # 16
dp = DPPolicy(sip="replicate", cube="column_wise", pe="column_wise",
num_sips=1, num_cubes=n_cubes)
t = torch.zeros((1, total * 4), dtype="f16", dp=dp, name="t")
src = np.arange(total * 4, dtype=np.float16).reshape(1, total * 4)
t.copy_(torch.from_numpy(src))
gathered = t.numpy()
assert np.array_equal(gathered, src)
assert len(t._handle.shards) == total
_run_with(body)
# ── shape mismatch raises ───────────────────────────────────────────
def test_copy_shape_mismatch_raises():
"""copy_ with mismatched shapes raises ValueError."""
def body(torch):
dp = DPPolicy(sip="replicate", cube="replicate", pe="replicate",
num_sips=1, num_cubes=1, num_pes=1)
t = torch.zeros((1, 8), dtype="f16", dp=dp, name="t")
src = np.zeros((1, 16), dtype=np.float16)
with pytest.raises(ValueError, match="copy_ shape mismatch"):
t.copy_(torch.from_numpy(src))
_run_with(body)
# ── __setitem__ / __getitem__ (shard-aligned) ───────────────────────
def test_setitem_getitem_single_pe():
"""Scalar and slice assignment on a single-PE tensor round-trips."""
def body(torch):
dp = DPPolicy(sip="replicate", cube="replicate", pe="replicate",
num_sips=1, num_cubes=1, num_pes=1)
t = torch.zeros((1, 8), dtype="f16", dp=dp, name="t")
# Scalar broadcast
t[0, 0:4] = 3.0
assert np.allclose(t[0, 0:4], 3.0)
assert np.allclose(t[0, 4:8], 0.0) # untouched
# Array assignment
t[0, 4:8] = np.array([10, 20, 30, 40], dtype=np.float16)
assert np.array_equal(t[0, 4:8], [10, 20, 30, 40])
# Full read-back via numpy()
expected = np.array([[3, 3, 3, 3, 10, 20, 30, 40]], dtype=np.float16)
assert np.array_equal(t.numpy(), expected)
_run_with(body)
def test_setitem_getitem_multi_pe_shard_aligned():
"""Shard-aligned slice assignment on an 8-PE column-wise tensor."""
def body(torch):
n_pe = 8
n_elem = 4 # per shard
dp = DPPolicy(sip="replicate", cube="replicate", pe="column_wise",
num_sips=1, num_cubes=1, num_pes=n_pe)
t = torch.zeros((1, n_pe * n_elem), dtype="f16", dp=dp, name="t")
# Write each shard with its rank value
for r in range(n_pe):
t[0, r * n_elem : (r + 1) * n_elem] = float(r + 1)
# Read back each shard
for r in range(n_pe):
expected = float(r + 1)
arr = t[0, r * n_elem : (r + 1) * n_elem]
assert np.allclose(arr, expected), f"shard {r}: {arr} != {expected}"
# Full gather
full = t.numpy().reshape(-1)
for r in range(n_pe):
assert np.allclose(full[r * n_elem : (r + 1) * n_elem], float(r + 1))
_run_with(body)
def test_setitem_cross_shard_raises():
"""Slice spanning two shards raises NotImplementedError."""
def body(torch):
n_pe = 4
n_elem = 4
dp = DPPolicy(sip="replicate", cube="replicate", pe="column_wise",
num_sips=1, num_cubes=1, num_pes=n_pe)
t = torch.zeros((1, n_pe * n_elem), dtype="f16", dp=dp, name="t")
with pytest.raises(NotImplementedError, match="spans multiple shards"):
t[0, 2:6] = 1.0 # crosses shard 0 (0:4) and shard 1 (4:8)
_run_with(body)