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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

541 lines
17 KiB
Python

from dataclasses import dataclass
from types import SimpleNamespace
from typing import List, Optional, Tuple
from sglang.srt.utils import kill_process_tree
from sglang.test.run_eval import run_eval
from sglang.test.test_utils import (
DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH,
DEFAULT_URL_FOR_TEST,
ModelLaunchSettings,
dump_metric,
popen_launch_server,
write_github_step_summary,
)
@dataclass
class AccuracyTestParams:
"""Parameters for accuracy testing."""
dataset: str # e.g., "mgsm_en", "gsm8k", "mmmu", "gpqa"
baseline_accuracy: float # Required: minimum accuracy threshold
num_examples: Optional[int] = None
num_threads: Optional[int] = None
max_tokens: Optional[int] = None
return_latency: bool = False
# Extended parameters for special evaluations (e.g., GPQA with thinking mode)
thinking_mode: Optional[str] = None # e.g., "deepseek-v3"
temperature: Optional[float] = None
top_p: Optional[float] = None
top_k: Optional[int] = None
repeat: Optional[int] = None
api: Optional[str] = None # "chat" or "completion"; defaults to "chat" in run_eval
@dataclass
class AccuracyTestResult:
"""Result of an accuracy test."""
model: str
dataset: str
passed: bool
score: Optional[float]
baseline_accuracy: float
error: Optional[str]
latency: Optional[float] = None
variant: Optional[str] = None
def write_accuracy_github_summary(
test_name: str,
dataset: str,
results: List[AccuracyTestResult],
) -> None:
"""Write accuracy test results to GitHub step summary.
Args:
test_name: Name of the test
dataset: Dataset name used for evaluation
results: List of AccuracyTestResult objects
"""
summary = f"#### {test_name} - Accuracy ({dataset})\n"
summary += "| config | status | score | baseline | error |\n"
summary += "| ------ | ------ | ----- | -------- | ----- |\n"
for result in results:
status_emoji = "✅" if result.passed else "❌"
score_str = f"{result.score:.4f}" if result.score is not None else "N/A"
baseline_str = f"{result.baseline_accuracy:.4f}"
error_str = result.error if result.error else "-"
# Use variant name if available, otherwise use model path
config_name = result.variant if result.variant else result.model
summary += f"| {config_name} | {status_emoji} | {score_str} | {baseline_str} | {error_str} |\n"
write_github_step_summary(summary)
def _run_simple_eval(
model: ModelLaunchSettings,
base_url: str,
dataset: str,
num_examples: Optional[int] = None,
num_threads: Optional[int] = None,
max_tokens: Optional[int] = None,
return_latency: bool = False,
thinking_mode: Optional[str] = None,
temperature: Optional[float] = None,
top_p: Optional[float] = None,
top_k: Optional[int] = None,
repeat: Optional[int] = None,
api: Optional[str] = None,
) -> Tuple[bool, Optional[str], Optional[dict]]:
"""Run evaluation using simple_eval backend (run_eval.py).
Returns:
Tuple of (success, error_message, metrics_dict)
"""
process = None
try:
process = popen_launch_server(
model.model_path,
base_url,
other_args=model.extra_args,
timeout=model.launch_timeout or DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH,
env=model.env,
)
args = SimpleNamespace(
base_url=base_url,
model=model.model_path,
eval_name=dataset,
num_examples=num_examples,
num_threads=num_threads or 1024,
)
if api is not None:
args.api = api
if max_tokens is not None:
args.max_tokens = max_tokens
if return_latency:
args.return_latency = True
if thinking_mode is not None:
args.thinking_mode = thinking_mode
if temperature is not None:
args.temperature = temperature
if top_p is not None:
args.top_p = top_p
if top_k is not None:
args.top_k = top_k
if repeat is not None:
args.repeat = repeat
result = run_eval(args)
# Handle result format (run_eval can return metrics or (metrics, latency))
if return_latency and isinstance(result, tuple):
metrics, latency = result
metrics["latency"] = round(latency, 4)
else:
metrics = result
return True, None, metrics
except Exception as e:
return False, f"Accuracy test exception: {str(e)}", None
finally:
if process:
kill_process_tree(process.pid)
# Cached uv venv for NeMo Skills (persists across variants within a process).
_nemo_venv_dir: Optional[str] = None
_nemo_data_prepared: set = set()
def _get_nemo_venv() -> Tuple[str, dict]:
"""Get or create a uv venv with nemo_skills installed.
Returns (venv_python_path, env_dict) reusable across calls.
"""
import os
import subprocess
import tempfile
global _nemo_venv_dir
if _nemo_venv_dir is not None:
venv_python = f"{_nemo_venv_dir}/venv/bin/python"
env = {
**dict(os.environ),
"NEMO_SKILLS_DISABLE_UNCOMMITTED_CHANGES_CHECK": "1",
"OPENAI_API_KEY": "dummy",
"VIRTUAL_ENV": f"{_nemo_venv_dir}/venv",
"PATH": f"{_nemo_venv_dir}/venv/bin:" + os.environ.get("PATH", ""),
}
return venv_python, env
_nemo_venv_dir = tempfile.mkdtemp(prefix="nemo_skills_")
print(f"Creating NeMo Skills venv in {_nemo_venv_dir}...")
# Create venv
result = subprocess.run(
["uv", "venv", f"{_nemo_venv_dir}/venv", "--python", "3.12"],
capture_output=True,
text=True,
)
if result.returncode != 0:
subprocess.run(
["uv", "venv", f"{_nemo_venv_dir}/venv"],
capture_output=True,
text=True,
)
# Install nemo_skills.
# Pinned: NeMo-Skills main after PR #1433 pins litellm==1.83.14 (httpx==0.28.1),
# which is unsatisfiable against nemo-run's transitive leptonai dep.
nemo_skills_ref = "589294c"
print(f"Installing nemo_skills (pinned to {nemo_skills_ref})...")
pip_result = subprocess.run(
[
"uv",
"pip",
"install",
"--python",
f"{_nemo_venv_dir}/venv/bin/python",
f"git+https://github.com/NVIDIA/NeMo-Skills.git@{nemo_skills_ref}",
],
capture_output=True,
text=True,
timeout=300,
)
if pip_result.returncode != 0:
raise RuntimeError(f"Failed to install nemo_skills: {pip_result.stderr[-500:]}")
print("NeMo Skills installed successfully")
return _get_nemo_venv()
def _ensure_nemo_data_prepared(
venv_python: str, env: dict, dataset: str
) -> Tuple[bool, Optional[str]]:
"""Prepare NeMo Skills dataset data if not already done.
Uses the venv python so data lands inside the venv's nemo_skills package.
"""
import subprocess
if dataset in _nemo_data_prepared:
return True, None
print(f"Preparing {dataset} data (this may take a few minutes for VLM datasets)...")
result = subprocess.run(
[venv_python, "-m", "nemo_skills.dataset.prepare", dataset],
text=True,
timeout=600,
env=env,
)
if result.returncode != 0:
return False, f"Failed to prepare {dataset} data (exit {result.returncode})"
_nemo_data_prepared.add(dataset)
return True, None
def _run_nemo_skills_eval(
model: ModelLaunchSettings,
base_url: str,
dataset: str,
max_tokens: Optional[int] = None,
repeat: Optional[int] = None,
temperature: Optional[float] = None,
top_p: Optional[float] = None,
) -> Tuple[bool, Optional[str], Optional[dict]]:
"""Run evaluation using NeMo Skills (ns eval) for benchmarks like mmmu-pro.
Uses an isolated uv venv (shared across variants) so nemo_skills dependencies
don't interfere with the system python / sglang server.
Returns:
Tuple of (success, error_message, metrics_dict)
"""
import subprocess
import tempfile
process = None
try:
# Get or create the shared venv (once per process)
venv_python, env = _get_nemo_venv()
# Prepare dataset (once per process, cached)
ok, err = _ensure_nemo_data_prepared(venv_python, env, dataset)
if not ok:
return False, err, None
process = popen_launch_server(
model.model_path,
base_url,
other_args=model.extra_args,
timeout=model.launch_timeout or DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH,
env=model.env,
)
port = int(base_url.split(":")[-1])
server_address = f"http://127.0.0.1:{port}/v1"
repeat_val = repeat or 1
max_tokens_val = max_tokens or 32768
benchmark_spec = f"{dataset}:{repeat_val}"
# Build ns eval command using venv python
# Note: nemo_skills.pipeline.eval requires the "eval" subcommand
output_dir = tempfile.mkdtemp(prefix="ns_eval_output_")
cmd = [
venv_python,
"-m",
"nemo_skills.pipeline.eval",
"eval",
f"--benchmarks={benchmark_spec}",
"--server_type=sglang",
f"--model={model.model_path}",
f"--server_address={server_address}",
f"--output_dir={output_dir}",
f"++inference.tokens_to_generate={max_tokens_val}",
]
if temperature is not None:
cmd.append(f"++inference.temperature={temperature}")
if top_p is not None:
cmd.append(f"++inference.top_p={top_p}")
# Add VLM-specific config
if dataset in ("mmmu-pro", "mmmu_pro"):
cmd.append("++prompt_config=vlm/mmmu-pro")
cmd.append("++max_concurrent_requests=512")
cmd.append("++max_samples=500")
print(f"Running: {' '.join(cmd)}")
eval_result = subprocess.run(
cmd,
capture_output=True,
text=True,
timeout=7200,
env=env,
)
print(eval_result.stdout[-2000:] if eval_result.stdout else "(no stdout)")
if eval_result.stderr:
print(eval_result.stderr[-1000:])
if eval_result.returncode != 0:
return (
False,
f"ns eval failed (exit {eval_result.returncode}): {eval_result.stderr[-500:]}",
None,
)
# Parse results
summarize_result = subprocess.run(
[
venv_python,
"-m",
"nemo_skills.pipeline.summarize_results",
f"{output_dir}/eval-results",
],
capture_output=True,
text=True,
timeout=60,
env=env,
)
output = summarize_result.stdout + "\n" + eval_result.stdout
print(f"Summary: {summarize_result.stdout[:1000]}")
# Parse accuracy from output (format varies, look for common patterns)
import re
score = None
for line in output.split("\n"):
match = re.search(r"(?:accuracy|score)[:\s]+([0-9.]+)", line, re.IGNORECASE)
if match:
score = float(match.group(1))
if score is None:
# Try to find it in eval-results directory
import glob
import json
for result_file in glob.glob(
f"{output_dir}/eval-results/**/*.json", recursive=True
):
try:
with open(result_file) as f:
data = json.load(f)
if isinstance(data, dict):
score = (
data.get("accuracy")
or data.get("score")
or data.get("mean_score")
)
if score is not None:
break
except (json.JSONDecodeError, KeyError):
continue
if score is None:
# Last resort: compute accuracy directly from JSONL output
import glob
import json
for jsonl_file in sorted(
glob.glob(f"{output_dir}/eval-results/**/*.jsonl*", recursive=True)
):
correct = 0
total = 0
try:
with open(jsonl_file) as f:
for line in f:
line = line.strip()
if not line:
continue
entry = json.loads(line)
expected = entry.get("expected_answer", "")
generation = entry.get("generation", "")
# Extract "Answer: X" from the end of generation
answer_match = re.search(
r"Answer:\s*([A-J])", generation, re.IGNORECASE
)
if answer_match:
predicted = answer_match.group(1).upper()
if predicted == expected.upper():
correct += 1
total += 1
except (json.JSONDecodeError, KeyError, OSError):
continue
if total > 0:
score = correct / total
print(
f"Computed accuracy from {jsonl_file}: "
f"{correct}/{total} = {score:.4f}"
)
break
if score is None:
return False, "Could not parse accuracy from ns eval output", None
dump_metric(
f"{dataset}_score",
score,
labels={"model": model.model_path, "eval": dataset, "api": "nemo-skills"},
)
return True, None, {"score": score}
except subprocess.TimeoutExpired:
return False, "NeMo Skills eval timed out", None
except Exception as e:
return False, f"NeMo Skills eval exception: {str(e)}", None
finally:
if process:
kill_process_tree(process.pid)
def run_accuracy_test(
model: ModelLaunchSettings,
params: AccuracyTestParams,
base_url: Optional[str] = None,
) -> AccuracyTestResult:
"""Run accuracy test for a single model.
Args:
model: ModelLaunchSettings with model config
params: AccuracyTestParams with dataset, baseline, and optional settings
base_url: Server base URL (default: DEFAULT_URL_FOR_TEST)
Returns:
AccuracyTestResult with test outcome
"""
base_url = base_url or DEFAULT_URL_FOR_TEST
print(f"\n{'='*60}")
print(f"Running ACCURACY test for {model.model_path}")
print(f" Dataset: {params.dataset}")
print(f" Baseline: {params.baseline_accuracy}")
print(f"{'='*60}\n")
# Run evaluation based on dataset type
# - NeMo Skills: mmmu-pro (and other VLM evals needing ns eval)
# - simple_eval: everything else (gsm8k, gpqa, mmlu, mmmu, etc.)
if params.dataset in ("mmmu-pro", "mmmu_pro"):
success, error, metrics = _run_nemo_skills_eval(
model=model,
base_url=base_url,
dataset="mmmu-pro",
max_tokens=params.max_tokens,
repeat=params.repeat or 1,
temperature=params.temperature,
top_p=params.top_p,
)
else:
success, error, metrics = _run_simple_eval(
model=model,
base_url=base_url,
dataset=params.dataset,
num_examples=params.num_examples,
num_threads=params.num_threads,
max_tokens=params.max_tokens,
return_latency=params.return_latency,
thinking_mode=params.thinking_mode,
temperature=params.temperature,
top_p=params.top_p,
top_k=params.top_k,
repeat=params.repeat,
api=params.api,
)
if not success:
print(f"✗ Accuracy test failed for {model.model_path}: {error}")
return AccuracyTestResult(
model=model.model_path,
dataset=params.dataset,
passed=False,
score=None,
baseline_accuracy=params.baseline_accuracy,
error=error,
variant=model.variant,
)
# Validate against baseline
# Handle different metric key names: "score", "mean_score" (for GPQA with repeat), "accuracy"
score = (
metrics.get("score")
or metrics.get("mean_score")
or metrics.get("accuracy", 0.0)
)
passed = score >= params.baseline_accuracy
latency = metrics.get("latency")
if passed:
print(f"✓ Accuracy {score:.3f} >= baseline {params.baseline_accuracy:.3f}")
else:
error = f"Accuracy {score:.3f} below baseline {params.baseline_accuracy:.3f}"
print(f"✗ {error}")
return AccuracyTestResult(
model=model.model_path,
dataset=params.dataset,
passed=passed,
score=score,
baseline_accuracy=params.baseline_accuracy,
error=error if not passed else None,
latency=latency,
variant=model.variant,
)