14 Commits

8 changed files with 196 additions and 15 deletions

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@@ -0,0 +1,100 @@
#!/usr/bin/env python3
"""Append measured true-mixed attention rows to an immutable Qwen235 profile."""
from __future__ import annotations
import argparse
import csv
import hashlib
import json
import shutil
from pathlib import Path
MODEL = "Qwen3-235B-A22B"
def parse_args():
parser = argparse.ArgumentParser()
parser.add_argument("--base-frozen", type=Path, required=True)
parser.add_argument("--cuda-tp4", type=Path, required=True)
parser.add_argument("--cuda-tp8", type=Path, required=True)
parser.add_argument("--kernel-tp4", type=Path, required=True)
parser.add_argument("--kernel-tp8", type=Path, required=True)
parser.add_argument("--output-root", type=Path, required=True)
return parser.parse_args()
def digest(path: Path) -> str:
value = hashlib.sha256()
value.update(path.read_bytes())
return value.hexdigest()
def read_rows(path: Path) -> tuple[list[str], list[dict[str, str]]]:
with path.open(newline="") as source:
reader = csv.DictReader(source)
return list(reader.fieldnames or []), list(reader)
def merge_csv(inputs: list[Path], output: Path, measurement_type: str) -> int:
fields: list[str] = []
rows: list[dict[str, str]] = []
true_mixed_count = 0
for index, path in enumerate(inputs):
input_fields, input_rows = read_rows(path)
for field in input_fields:
if field not in fields:
fields.append(field)
if index:
for row in input_rows:
if row.get("is_true_mixed_batch", "").lower() != "true":
raise ValueError(f"non-true-mixed row in {path}")
if row.get("measurement_type") != measurement_type:
raise ValueError(f"measurement type mismatch in {path}")
true_mixed_count += len(input_rows)
rows.extend(input_rows)
if not fields or not rows or not true_mixed_count:
raise ValueError("cannot assemble an empty true-mixed augmentation")
with output.open("w", newline="") as target:
writer = csv.DictWriter(target, fieldnames=fields, lineterminator="\n")
writer.writeheader()
writer.writerows(rows)
return true_mixed_count
def main() -> None:
args = parse_args()
output = args.output_root.resolve()
if output.exists():
raise FileExistsError(output)
output.mkdir(parents=True)
for name in ("linear_op.csv", "linear_op_kernel_only.csv", "moe.csv", "moe_kernel_only.csv"):
shutil.copy2(args.base_frozen / name, output / name)
cuda_count = merge_csv(
[args.base_frozen / "attention.csv", args.cuda_tp4, args.cuda_tp8],
output / "attention.csv",
"CUDA_EVENT",
)
kernel_count = merge_csv(
[args.base_frozen / "attention_kernel_only.csv", args.kernel_tp4, args.kernel_tp8],
output / "attention_kernel_only.csv",
"KERNEL_ONLY",
)
base_manifest = json.loads((args.base_frozen / "manifest.json").read_text())
manifest = {
**base_manifest,
"schema": "qwen235-v020-frontier-profile-v2-true-mixed",
"true_mixed_inputs": {
name: str(getattr(args, name).resolve())
for name in ("cuda_tp4", "cuda_tp8", "kernel_tp4", "kernel_tp8")
},
"true_mixed_rows": {"CUDA_EVENT": cuda_count, "KERNEL_ONLY": kernel_count},
"outputs": {path.name: digest(path) for path in sorted(output.glob("*.csv"))},
}
(output / "manifest.json").write_text(json.dumps(manifest, indent=2, sort_keys=True) + "\n")
print(json.dumps(manifest, sort_keys=True))
if __name__ == "__main__":
main()

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@@ -171,7 +171,7 @@ async def replay(args: argparse.Namespace, rows: list[dict[str, Any]]) -> list[d
import aiohttp
timeout = aiohttp.ClientTimeout(total=args.timeout_seconds)
connector = aiohttp.TCPConnector(limit=0, ttl_dns_cache=300)
connector = aiohttp.TCPConnector(limit=0, ttl_dns_cache=300, force_close=True)
benchmark_start = asyncio.get_running_loop().time() + 2.0
async with aiohttp.ClientSession(
base_url=f"http://{args.host}:{args.port}",
@@ -229,6 +229,7 @@ def main() -> None:
"arrival": "original_trace_timestamp_and_order",
"input_output_prompt": "exact_source_values",
"served_model_alias": args.served_model,
"http_connection_reuse": False,
"ttft_slo": "1000ms + 1000ms * input_tokens / 8000",
"tpot_slo_ms": args.tpot_slo_ms,
"target_pass_rate": TARGET_PASS_RATE,

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@@ -112,6 +112,7 @@ def knobs(config: Config, paths: dict[str, Path], contract: dict, cache: Path, p
"batch_size_cap": config.mns,
"max_tokens_in_batch": 8192,
"long_prefill_token_threshold": 0,
"enable_chunked_prefill": True,
"block_size": 16,
"num_blocks_mode": "explicit",
"num_blocks": int(resolved["num_gpu_blocks"]),
@@ -180,8 +181,10 @@ def main() -> None:
run_dir = args.output_root / "runs" / config.name / trace["label"]
result_path = run_dir / "result.json"
if args.resume and result_path.is_file():
results.append(json.loads(result_path.read_text()))
continue
previous = json.loads(result_path.read_text())
if previous.get("status") == "completed":
results.append(previous)
continue
run_dir.mkdir(parents=True, exist_ok=True)
command = builder.build_frontier_command(
python_bin="/usr/bin/python3",

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@@ -10,6 +10,13 @@ RUNNER_DIR="${RUNNER_DIR:-$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)}"
FRONTIER_SOURCE="${FRONTIER_SOURCE:-/home/admin/cpfs/wjh/aituner/frontier-q235-v020-5b953f5}"
VENV_ROOT="${VENV_ROOT:-/tmp/wjh/venvs/vllm-0.20.0-cu129-profiler-v1}"
# FlashInfer's TensorRT-LLM MoE runtime invokes `nvcc` by name when it
# autotunes a previously unseen FP8 grouped-GEMM shape.
export PATH="/usr/local/cuda/bin:${PATH}"
export FRONTIER_VLLM_MODEL_TYPE=qwen3_moe
export VLLM_KV_CACHE_LAYOUT=NHD
command -v nvcc >/dev/null
mkdir -p "${OUTPUT_ROOT}/supervisor" "${PROFILE_ROOT}"
exec > >(tee -a "${OUTPUT_ROOT}/supervisor/controller.log") 2>&1
echo "Q235_DEFERRED_LAUNCH_ECHO dependency=${Q30_ROOT}:Q30_FIXED_PRESSURE_CAMPAIGN_COMPLETE profile_model=Qwen3-235B-A22B-FP8 profile_backends={TP4/EP1:Triton,TP8/EP8:FlashInfer-CUTLASS} profile_cost=2-7_H20-GPUh experiment_cases={Fixed-PD,Fixed-PO,Trace-PD,Trace-PO} configs={TP4/EP1,TP8/EP8}xMNS{64,128} requests=129 trials=3 expected_campaign_wall=10-30h expected_campaign_cost=90-220_H20-GPUh profile_output=${PROFILE_ROOT} campaign_output=${OUTPUT_ROOT}"

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@@ -53,8 +53,8 @@ run_real() {
}
run_real fixed-pd false 9300
run_real fixed-po false 9400
run_real trace-pd true 9500
run_real trace-po true 9600
run_real trace-pd true 9800
run_real trace-po true 9900
"${VENV_ROOT}/bin/python" "${RUNNER_DIR}/extract_qwen235_v020_runtime_contract.py" \
--case-root "${CAMPAIGN_ROOT}/real/fixed-pd" \

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@@ -30,12 +30,14 @@ common_profile() {
"${VENV_ROOT}/bin/python" -m frontier.profiling.linear_op.main \
--disable_ray --num_gpus 1 --device h20 --output_dir "${root}" --models "${MODEL}" \
--num_tensor_parallel_workers 1 4 8 --attn_tp 4 8 --ffn_tp 1 4 \
--num_tokens_list "${TOKENS[@]}" --profile_method "${method}" --yes
--max_tokens 8192 --num_tokens_list "${TOKENS[@]}" \
--profile_method "${method}" --yes
env CUDA_VISIBLE_DEVICES="${gpu}" PYTHONPATH="${FRONTIER_SOURCE}" \
"${VENV_ROOT}/bin/python" -m frontier.profiling.attention.main \
--disable_ray --num_gpus 1 --device h20 --output_dir "${root}" --models "${MODEL}" \
--num_tensor_parallel_workers 4 8 --max_model_len 40960 --max_seq_len 8192 \
--batch_size_list "${BATCHES[@]}" --decode_kv_cache_size_list "${KV[@]}" \
--num_tensor_parallel_workers 4 8 --max_model_len 40960 --max_seq_len 40960 \
--max_batch_size 256 --batch_size_list "${BATCHES[@]}" \
--decode_kv_cache_size_list "${KV[@]}" \
--fixed_chunked_prefill_size 8192 --attention_backend FLASHINFER \
--profile_method "${method}" --yes
}
@@ -46,7 +48,7 @@ moe_profile() {
"${VENV_ROOT}/bin/python" -m frontier.profiling.moe.main \
--disable_ray --num_gpus 1 --device h20 --output_dir "${root}" --models "${MODEL}" \
--num_tensor_parallel_workers "${tp}" --expert_parallel_sizes "${ep}" \
--num_tokens_list "${TOKENS[@]}" --load_distributions uniform \
--max_tokens 8192 --num_tokens_list "${TOKENS[@]}" --load_distributions uniform \
--num_samples_per_distribution 1 --profile_method "${method}" --yes
}
@@ -59,7 +61,7 @@ moe_profile 4 record_function 4 1 "${OUTPUT_ROOT}/kernel-moe-tp4" > "${OUTPUT_RO
moe_profile 5 record_function 1 8 "${OUTPUT_ROOT}/kernel-moe-ep8" > "${OUTPUT_ROOT}/logs/kernel-moe-ep8.log" 2>&1 & pids+=("$!")
failed=0
for pid in "${pids[@]}"; do wait "${pid}" || failed=1; done
[[ "${failed}" -eq 0 ]] || { tail -80 "${OUTPUT_ROOT}"/logs/*.log; exit 1; }
[[ "${failed}" -eq 0 ]] || { tail -n 80 "${OUTPUT_ROOT}"/logs/*.log; exit 1; }
"${VENV_ROOT}/bin/python" "${RUNNER_DIR}/assemble_qwen235_v020_profiles.py" \
--cuda-common "${OUTPUT_ROOT}/cuda-common" \

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@@ -15,10 +15,14 @@ VENV_ROOT="${VENV_ROOT:-/tmp/wjh/venvs/vllm-0.20.0-cu129-profiler-v1}"
MODEL_ROOT="${MODEL_ROOT:-/home/admin/cpfs/wjh/models/Qwen/Qwen3-235B-A22B-FP8}"
SERVER_READY_ATTEMPTS="${SERVER_READY_ATTEMPTS:-600}"
IDLE_GPU_MEMORY_TOLERANCE_MIB="${IDLE_GPU_MEMORY_TOLERANCE_MIB:-16}"
IDLE_GPU_SETTLE_ATTEMPTS="${IDLE_GPU_SETTLE_ATTEMPTS:-120}"
RESUME_VALID_CELLS="${RESUME_VALID_CELLS:-true}"
PORT="${BASE_PORT:-9300}"
REQUEST_COUNT="$(wc -l < "${TRACE_ROOT}/tp4/private/real_requests.jsonl")"
export PATH="/usr/local/cuda/bin:${PATH}"
command -v nvcc >/dev/null
[[ "$(wc -l < "${TRACE_ROOT}/tp8/private/real_requests.jsonl")" == "${REQUEST_COUNT}" ]] || {
echo 'ERROR: TP-specific request counts differ' >&2
exit 1
@@ -40,10 +44,18 @@ PY
}
preflight_gpus() {
local attempt
nvidia-smi --query-gpu=index,name,memory.used,utilization.gpu --format=csv,noheader \
| tee -a "${OUT}/controller.log"
nvidia-smi --query-gpu=memory.used --format=csv,noheader,nounits \
| awk -v tolerance="${IDLE_GPU_MEMORY_TOLERANCE_MIB}" '$1 > tolerance {exit 1}'
for ((attempt = 1; attempt <= IDLE_GPU_SETTLE_ATTEMPTS; attempt++)); do
if nvidia-smi --query-gpu=memory.used --format=csv,noheader,nounits \
| awk -v tolerance="${IDLE_GPU_MEMORY_TOLERANCE_MIB}" '$1 > tolerance {exit 1}'; then
return 0
fi
sleep 1
done
echo "ERROR: GPU memory did not settle below ${IDLE_GPU_MEMORY_TOLERANCE_MIB} MiB after ${IDLE_GPU_SETTLE_ATTEMPTS}s" >&2
return 1
}
assert_no_server() {
@@ -60,7 +72,8 @@ wait_for_wave() {
launch_config() {
local trial="$1" tp="$2" mns="$3" gpus="$4" ep=false ep_size=1
if [[ "${tp}" == 8 ]]; then ep=true; ep_size=8; fi
local config="tp${tp}_ep${ep_size}_mns${mns}" run_out="${OUT}/real/${config}/trial${trial}"
local config="tp${tp}_ep${ep_size}_mns${mns}"
local run_out="${OUT}/real/${config}/trial${trial}"
local requests="${TRACE_ROOT}/tp${tp}/private/real_requests.jsonl" port="${PORT}"
PORT=$((PORT + 1))
if [[ "${RESUME_VALID_CELLS}" == true ]] && has_valid_result "${run_out}/results/result.json"; then
@@ -97,12 +110,16 @@ run_trial() {
"${CASE_NAME}" "${trial}" "${mnss[0]}" "${mnss[1]}" | tee -a "${OUT}/controller.log"
launch_config "${trial}" 4 "${mnss[0]}" '0,1,2,3'
launch_config "${trial}" 4 "${mnss[1]}" '4,5,6,7'
wait_for_wave && preflight_gpus && assert_no_server
wait_for_wave
preflight_gpus
assert_no_server
for mns in "${mnss[@]}"; do
printf 'WAVE_START case=%s trial=%s tp=8 mns=%s\n' \
"${CASE_NAME}" "${trial}" "${mns}" | tee -a "${OUT}/controller.log"
launch_config "${trial}" 8 "${mns}" '0,1,2,3,4,5,6,7'
wait_for_wave && preflight_gpus && assert_no_server
wait_for_wave
preflight_gpus
assert_no_server
done
}

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@@ -0,0 +1,51 @@
#!/usr/bin/env bash
set -euo pipefail
OUTPUT_ROOT="${OUTPUT_ROOT:?OUTPUT_ROOT is required}"
FRONTIER_SOURCE="${FRONTIER_SOURCE:-/home/admin/cpfs/wjh/aituner/frontier-q235-v020-5b953f5}"
VENV_ROOT="${VENV_ROOT:-/tmp/wjh/venvs/vllm-0.20.0-cu129-profiler-v1}"
MODEL=Qwen3-235B-A22B
PREFILL_BATCHES=(1 2 4 8)
PREFILL_CHUNKS=(128 512 2048 8192)
DECODE_BATCHES=(1 8 32 64 120)
DECODE_KV=(128 1024 4096 16384 32768)
mkdir -p "${OUTPUT_ROOT}/logs" "${OUTPUT_ROOT}/provenance"
exec > >(tee -a "${OUTPUT_ROOT}/controller.log") 2>&1
echo "Q235_TRUE_MIXED_PROFILE_LAUNCH_ECHO host=dash0 model=${MODEL} vllm=0.20.0 frontier=$(git -C "${FRONTIER_SOURCE}" rev-parse HEAD) device=H20 methods={CUDA_EVENT,KERNEL_ONLY} tp={4,8} grid=4x4x5x5 parallel_gpus=4 expected_wall=10-30m expected_cost=0.7-2_H20-GPUh output=${OUTPUT_ROOT}"
date -u +START_UTC=%Y-%m-%dT%H:%M:%SZ
nvidia-smi --query-gpu=index,memory.used --format=csv,noheader,nounits \
| awk '$2 > 16 {exit 1}'
git -C "${FRONTIER_SOURCE}" rev-parse HEAD > "${OUTPUT_ROOT}/provenance/frontier.commit"
"${VENV_ROOT}/bin/vllm" --version > "${OUTPUT_ROOT}/provenance/vllm.version"
cd "${FRONTIER_SOURCE}"
profile() {
local gpu="$1" method="$2" tp="$3" root="$4"
env CUDA_VISIBLE_DEVICES="${gpu}" VLLM_KV_CACHE_LAYOUT=NHD PYTHONPATH="${FRONTIER_SOURCE}" \
"${VENV_ROOT}/bin/python" -m frontier.profiling.attention.main \
--disable_ray --num_gpus 1 --device h20 --output_dir "${root}" --models "${MODEL}" \
--num_tensor_parallel_workers "${tp}" --max_model_len 40960 --max_seq_len 40960 \
--max_batch_size 128 --batch_size_list 1 --decode_kv_cache_size_list 128 \
--fixed_chunked_prefill_size 8192 --attention_backend FLASHINFER \
--enable_true_mixed \
--true_mixed_prefill_batch_sizes "${PREFILL_BATCHES[@]}" \
--true_mixed_prefill_chunk_sizes "${PREFILL_CHUNKS[@]}" \
--true_mixed_decode_batch_sizes "${DECODE_BATCHES[@]}" \
--true_mixed_decode_kv_cache_sizes "${DECODE_KV[@]}" \
--true_mixed_prefill_kv_cache_size 0 \
--profile_method "${method}" --yes
}
declare -a pids=()
profile 0 cuda_event 4 "${OUTPUT_ROOT}/cuda-tp4" > "${OUTPUT_ROOT}/logs/cuda-tp4.log" 2>&1 & pids+=("$!")
profile 1 record_function 4 "${OUTPUT_ROOT}/kernel-tp4" > "${OUTPUT_ROOT}/logs/kernel-tp4.log" 2>&1 & pids+=("$!")
profile 2 cuda_event 8 "${OUTPUT_ROOT}/cuda-tp8" > "${OUTPUT_ROOT}/logs/cuda-tp8.log" 2>&1 & pids+=("$!")
profile 3 record_function 8 "${OUTPUT_ROOT}/kernel-tp8" > "${OUTPUT_ROOT}/logs/kernel-tp8.log" 2>&1 & pids+=("$!")
failed=0
for pid in "${pids[@]}"; do wait "${pid}" || failed=1; done
[[ "${failed}" -eq 0 ]] || { tail -n 80 "${OUTPUT_ROOT}"/logs/*.log; exit 1; }
date -u +END_UTC=%Y-%m-%dT%H:%M:%SZ
echo Q235_V020_TRUE_MIXED_PROFILES_COMPLETE