"""Utilities for running nightly performance benchmarks with profiling.""" import json import os import subprocess import time from typing import List, Optional, Tuple import requests from sglang.srt.utils import kill_process_tree from sglang.test.nightly_bench_utils import BenchmarkResult, generate_markdown_report from sglang.test.test_utils import ( DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH, is_in_ci, popen_launch_server, write_github_step_summary, ) class NightlyBenchmarkRunner: """Helper class for running nightly performance benchmarks with profiling. This class encapsulates common patterns used across nightly performance tests, including profile directory management, benchmark command construction, result parsing, and report generation. """ def __init__( self, profile_dir: str, test_name: str, base_url: str, gpu_config: str = None, ): """Initialize the benchmark runner. Args: profile_dir: Directory to store performance profiles test_name: Name of the test (used for reporting) base_url: Base URL for the server gpu_config: Optional GPU configuration string (e.g., "2-gpu-h100", "8-gpu-b200") """ self.profile_dir = profile_dir self.test_name = test_name self.base_url = base_url self.gpu_config = gpu_config or os.environ.get("GPU_CONFIG", "") # Include GPU config in report header if available header = f"## {test_name}" if self.gpu_config: header += f" ({self.gpu_config})" header += "\n" self.full_report = header + BenchmarkResult.help_str() def setup_profile_directory(self) -> None: """Create the profile directory if it doesn't exist.""" os.makedirs(self.profile_dir, exist_ok=True) def generate_profile_filename( self, model_path: str, variant: str = "" ) -> Tuple[str, str]: """Generate unique profile filename and path for the model. Args: model_path: Path to the model (e.g., "deepseek-ai/DeepSeek-V3.1") variant: Optional variant suffix (e.g., "basic", "mtp", "dsa") Returns: Tuple of (profile_path_prefix, json_output_file) """ timestamp = int(time.time()) model_safe_name = model_path.replace("/", "_") # Build filename with optional variant if variant: profile_filename = f"{model_safe_name}_{variant}_{timestamp}" json_filename = f"results_{model_safe_name}_{variant}_{timestamp}.json" else: profile_filename = f"{model_safe_name}_{timestamp}" json_filename = f"results_{model_safe_name}_{timestamp}.json" profile_path_prefix = os.path.join(self.profile_dir, profile_filename) return profile_path_prefix, json_filename def build_benchmark_command( self, model_path: str, batch_sizes: List[int], input_lens: Tuple[int, ...], output_lens: Tuple[int, ...], profile_path_prefix: str, json_output_file: str, extra_args: Optional[List[str]] = None, server_args: Optional[List[str]] = None, enable_profile: bool = True, ) -> List[str]: """Build the benchmark command with all required arguments. Args: model_path: Path to the model batch_sizes: List of batch sizes to test input_lens: Tuple of input lengths to test output_lens: Tuple of output lengths to test profile_path_prefix: Prefix for profile output files json_output_file: Path to JSON output file extra_args: Optional extra arguments to append to command server_args: Optional server launch arguments to record in metrics enable_profile: Whether to enable profiling (default True for NVIDIA) Returns: List of command arguments ready for subprocess.run() """ command = [ "python3", "-m", "sglang.bench_one_batch_server", "--model", model_path, "--base-url", self.base_url, "--batch-size", *[str(x) for x in batch_sizes], "--input-len", *[str(x) for x in input_lens], "--output-len", *[str(x) for x in output_lens], "--show-report", f"--pydantic-result-filename={json_output_file}", "--no-append-to-github-summary", "--trust-remote-code", ] # Add profiling flags only if enabled (disabled for AMD tests) if enable_profile and profile_path_prefix: command.extend( [ "--profile", "--profile-by-stage", "--profile-output-dir", profile_path_prefix, ] ) if extra_args: command.extend(extra_args) # Record server launch arguments in metrics for tracking configurations if server_args: command.append("--server-args-for-metrics") command.extend(server_args) return command def run_benchmark_command( self, command: List[str], model_description: str = "" ) -> Tuple[subprocess.CompletedProcess, bool]: """Execute the benchmark command and return the result. Args: command: Command to execute model_description: Description for logging (e.g., "model_name (variant)") Returns: Tuple of (CompletedProcess, success_bool) """ print(f"Running command: {' '.join(command)}") result = subprocess.run(command, capture_output=True, text=True) if result.returncode != 0: desc = model_description or "benchmark" print(f"Error running benchmark for {desc}:") print(result.stderr) return result, False return result, True def load_benchmark_results( self, json_output_file: str, model_description: str = "" ) -> Tuple[List[BenchmarkResult], bool]: """Load and parse benchmark results from JSON file. Args: json_output_file: Path to JSON output file model_description: Description for logging Returns: Tuple of (list of BenchmarkResult objects, success_bool) """ benchmark_results = [] if not os.path.exists(json_output_file): desc = model_description or "model" print(f"Warning: JSON output file {json_output_file} not found for {desc}") return benchmark_results, False try: with open(json_output_file, "r") as f: json_data = json.load(f) # Convert JSON data to BenchmarkResult objects for data in json_data: benchmark_result = BenchmarkResult(**data) benchmark_results.append(benchmark_result) print( f"Loaded {len(benchmark_results)} benchmark results from {json_output_file}" ) # Note: JSON files are preserved for metrics collection by CI scripts # They will be collected by scripts/ci/utils/save_metrics.py return benchmark_results, True except Exception as e: desc = model_description or "model" print(f"Error loading benchmark results for {desc}: {e}") return benchmark_results, False def run_benchmark_for_model( self, model_path: str, batch_sizes: List[int], input_lens: Tuple[int, ...], output_lens: Tuple[int, ...], other_args: Optional[List[str]] = None, variant: str = "", extra_bench_args: Optional[List[str]] = None, enable_profile: bool = True, timeout: Optional[int] = None, env: Optional[dict] = None, ) -> Tuple[List[BenchmarkResult], bool, Optional[float]]: """Run a complete benchmark for a single model with server management. This method handles: - Server launch and cleanup - Profile filename generation - Benchmark command construction and execution - Result loading and parsing - Fetching speculative decoding accept length (for MTP/EAGLE) Args: model_path: Path to the model batch_sizes: List of batch sizes to test input_lens: Tuple of input lengths output_lens: Tuple of output lengths other_args: Arguments to pass to server launch variant: Optional variant suffix (e.g., "basic", "mtp") extra_bench_args: Extra arguments for the benchmark command enable_profile: Whether to enable profiling (default True for NVIDIA) timeout: Optional timeout for server launch (defaults to DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH) env: Environment dict for subprocess Returns: Tuple of (list of BenchmarkResult objects, success_bool, avg_spec_accept_length or None) """ benchmark_results = [] avg_spec_accept_length = None model_description = f"{model_path}" + (f" ({variant})" if variant else "") process = None try: # Launch server process = popen_launch_server( model=model_path, base_url=self.base_url, other_args=other_args or [], timeout=( timeout if timeout is not None else DEFAULT_TIMEOUT_FOR_SERVER_LAUNCH ), env=env, ) # Generate filenames profile_path_prefix, json_output_file = self.generate_profile_filename( model_path, variant ) # Build and run benchmark command # Prepare extra args with run_name if variant is specified bench_args = list(extra_bench_args) if extra_bench_args else [] if variant: bench_args.extend(["--run-name", variant]) command = self.build_benchmark_command( model_path, batch_sizes, input_lens, output_lens, profile_path_prefix, json_output_file, extra_args=bench_args, server_args=other_args, enable_profile=enable_profile, ) result, cmd_success = self.run_benchmark_command(command, model_description) if not cmd_success: return benchmark_results, False, None # Load results benchmark_results, load_success = self.load_benchmark_results( json_output_file, model_description ) # Fetch speculative decoding accept length before killing server avg_spec_accept_length = self._get_spec_accept_length() return benchmark_results, load_success, avg_spec_accept_length finally: # Always clean up server process if process is not None: kill_process_tree(process.pid) def _get_spec_accept_length(self) -> Optional[float]: """Query the server for avg_spec_accept_length metric. Returns: The average speculative decoding accept length, or None if not available. """ try: response = requests.get(f"{self.base_url}/server_info", timeout=10) if response.status_code == 200: server_info = response.json() internal_states = server_info.get("internal_states", []) if internal_states and len(internal_states) > 0: accept_length = internal_states[0].get("avg_spec_accept_length") if accept_length is not None: print(f" avg_spec_accept_length={accept_length:.2f}") return accept_length except Exception as e: print(f" Warning: Could not fetch spec accept length: {e}") return None def add_report( self, results: List[BenchmarkResult], variant: Optional[str] = None ) -> None: """Add benchmark results to the full report. Args: results: List of BenchmarkResult objects to add to report """ if results: report_part = generate_markdown_report(self.profile_dir, results, variant) self.full_report += report_part + "\n" def write_final_report(self) -> None: """Write the final report to GitHub summary if in CI.""" if is_in_ci(): write_github_step_summary(self.full_report) print(self.full_report) def get_full_report(self) -> str: """Get the accumulated full report. Returns: The full markdown report as a string """ return self.full_report