Files
sglang/sgl-kernel/tests/test_amd_nccl_allreduce_determinism.py
Bingxu Chen 50a2e4345a [AMD CI] Add 2-GPU sgl-kernel Tests (#17555)
Co-authored-by: YC Tseng <yctseng@amd.com>
2026-01-22 21:48:52 -08:00

209 lines
6.6 KiB
Python

"""
Test to confirm non-determinism of default NCCL all-reduce with batch size invariance.
This test uses the default torch.distributed.all_reduce (NCCL) which can be
NON-DETERMINISTIC due to tree-based reduction algorithms that don't guarantee
fixed accumulation order for bfloat16/float16.
This test compares:
1. Default all-reduce (same batch size) - should be DETERMINISTIC
2. Default all-reduce (different batch size) - typically NON-DETERMINISTIC for bfloat16
Usage:
pytest test_amd_nccl_allreduce_determinism.py
"""
import multiprocessing as mp
import socket
import pytest
import torch
import torch.distributed as dist
def get_open_port():
with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
s.bind(("127.0.0.1", 0))
return s.getsockname()[1]
def worker(world_size, rank, port):
device = torch.device(f"cuda:{rank}")
torch.cuda.set_device(device)
dist.init_process_group(
backend="nccl",
init_method=f"tcp://localhost:{port}",
rank=rank,
world_size=world_size,
)
num_trials = 10
# Matrix sizes similar to real model layers
# Format: (batch_size, hidden_dim) - typical tensor shape for all-reduce
BS = 50 # max batch_size (1..BS)
hidden_dim = 16384 # hidden dimension / intermediate dimension
# Different seed per rank - each GPU has DIFFERENT input
torch.manual_seed(42 + rank)
# Create fixed inputs for all trials
# Single request: (hidden_dim,)
base_input = torch.randn(hidden_dim, dtype=torch.bfloat16, device=device)
base_input_rand = torch.randn(hidden_dim, dtype=torch.bfloat16, device=device)
dist.barrier()
# =========================================================================
# TEST 1: Default all-reduce (same batch size) - should be DETERMINISTIC
# =========================================================================
if rank == 0:
print(f"\n{'='*70}")
print("TEST 1: Default NCCL all_reduce (same batch size)")
print(f"{'='*70}")
dist.barrier()
results_allreduce_only = []
for trial in range(num_trials):
# Clone the same input
inp = base_input.clone()
# Use default NCCL all-reduce
dist.all_reduce(inp)
torch.cuda.synchronize()
# Store checksum
checksum = inp.view(-1).sum().item()
first_vals = inp.view(-1)[:5].clone()
results_allreduce_only.append((checksum, first_vals))
if rank == 0:
print(
f" Trial {trial+1:2d}: sum={checksum:.6f}, first5={first_vals.tolist()}"
)
# Check determinism
if rank == 0:
ref_sum, ref_vals = results_allreduce_only[0]
all_match = True
for i, (s, vals) in enumerate(results_allreduce_only[1:], 1):
if abs(ref_sum - s) > 1e-3 or not torch.allclose(ref_vals, vals, rtol=1e-3):
all_match = False
print(f" Trial {i+1} DIFFERS! ref_sum={ref_sum:.6f}, got={s:.6f}")
if all_match:
print(" ✓ DEFAULT ALL_REDUCE (fixed BS): DETERMINISTIC (as expected)")
else:
print(" ✗ DEFAULT ALL_REDUCE (fixed BS): NON-DETERMINISTIC (unexpected!)")
dist.barrier()
# =========================================================================
# TEST 2: Default all-reduce (different batch size) - typically NON-DETERMINISTIC
# [a], [a, x], [a, x, x], ...
# =========================================================================
if rank == 0:
print(f"\n{'='*70}")
print("TEST 2: Default NCCL all_reduce (different batch size)")
print("Batches: [a], [a,x], [a,x,x], ...")
print(f"{'='*70}")
dist.barrier()
results_allreduce_only = {trial: [] for trial in range(num_trials)}
for trial in range(num_trials):
for bs in range(1, BS + 1):
# Construct batch: (batch_size, hidden_dim)
# First element is base_input, rest are base_input_rand
batch = torch.stack([base_input] + [base_input_rand] * (bs - 1), dim=0)
# Shape: (bs, hidden_dim)
# Flatten for all-reduce: (bs * hidden_dim,)
batch_flat = batch.view(-1)
# Use default NCCL all-reduce
dist.all_reduce(batch_flat)
torch.cuda.synchronize()
# Reshape back to (bs, hidden_dim)
batch_out = batch_flat.view(bs, hidden_dim)
# Only compare output corresponding to first request
out_first_req = batch_out[0].clone()
checksum = out_first_req.sum().item()
first_vals = out_first_req[:5].clone()
results_allreduce_only[trial].append((bs, checksum, first_vals))
if rank == 0:
print(
f" Batch size {bs:2d}: sum={checksum:.6f}, first5={first_vals.tolist()}"
)
# Check determinism
if rank == 0:
for trial in range(num_trials):
results = results_allreduce_only[trial]
_, ref_sum, ref_vals = results[0]
all_match = True
for _, s, vals in results[1:]:
if abs(ref_sum - s) > 1e-3 or not torch.allclose(
ref_vals, vals, rtol=1e-3
):
all_match = False
if all_match:
print(" ✓ DEFAULT ALL_REDUCE (variant BS): DETERMINISTIC")
else:
print(" ✗ DEFAULT ALL_REDUCE (variant BS): NON-DETERMINISTIC")
dist.barrier()
dist.destroy_process_group()
def main():
world_size = 8
available_gpus = torch.cuda.device_count()
print("=" * 70)
print("Default NCCL All-Reduce Determinism Test")
print("=" * 70)
print(f"Available GPUs: {available_gpus}")
print(f"Using world_size: {world_size}")
if available_gpus < world_size:
print(
f"WARNING: Only {available_gpus} GPUs available, using {available_gpus} instead"
)
world_size = available_gpus
if world_size < 2:
print("ERROR: Need at least 2 GPUs for this test")
return
mp.set_start_method("spawn", force=True)
port = get_open_port()
procs = []
for rank in range(world_size):
p = mp.Process(target=worker, args=(world_size, rank, port))
p.start()
procs.append(p)
for p in procs:
p.join()
@pytest.mark.skipif(
not torch.cuda.is_available() or torch.cuda.device_count() < 2,
reason="Requires at least 2 CUDA GPUs",
)
def test_nccl_allreduce_determinism():
"""Test NCCL all-reduce determinism behavior with varying batch sizes."""
main()
if __name__ == "__main__":
main()