Some checks failed
		
		
	
	Docs CI / lint-and-preview (push) Has been cancelled
				
			- Implemented RustFsArtifactObjectStore for managing artifacts in RustFS. - Added unit tests for RustFsArtifactObjectStore functionality. - Created a RustFS migrator tool to transfer objects from S3 to RustFS. - Introduced policy preview and report models for API integration. - Added fixtures and tests for policy preview and report functionality. - Included necessary metadata and scripts for cache_pkg package.
		
			
				
	
	
		
			55 lines
		
	
	
		
			3.2 KiB
		
	
	
	
		
			Markdown
		
	
	
	
	
	
			
		
		
	
	
			55 lines
		
	
	
		
			3.2 KiB
		
	
	
	
		
			Markdown
		
	
	
	
	
	
| # Scanner Analyzer Microbench Harness
 | ||
| 
 | ||
| The bench harness exercises the language analyzers against representative filesystem layouts so that regressions are caught before they ship.
 | ||
| 
 | ||
| ## Layout
 | ||
| - `StellaOps.Bench.ScannerAnalyzers/` – .NET 10 console harness that executes the real language analyzers (and fallback metadata walks for ecosystems that are still underway).
 | ||
| - `config.json` – Declarative list of scenarios the harness executes. Each scenario points at a directory in `samples/`.
 | ||
| - `baseline.csv` – Reference numbers captured on the 4 vCPU warm rig described in `docs/12_PERFORMANCE_WORKBOOK.md`. CI publishes fresh CSVs so perf trends stay visible.
 | ||
| 
 | ||
| ## Current scenarios
 | ||
| - `node_monorepo_walk` → runs the Node analyzer across `samples/runtime/npm-monorepo`.
 | ||
| - `java_demo_archive` → runs the Java analyzer against `samples/runtime/java-demo/libs/demo.jar`.
 | ||
| - `python_site_packages_walk` → temporary metadata walk over `samples/runtime/python-venv` until the Python analyzer lands.
 | ||
| 
 | ||
| ## Running locally
 | ||
| 
 | ||
| ```bash
 | ||
| dotnet run \
 | ||
|   --project bench/Scanner.Analyzers/StellaOps.Bench.ScannerAnalyzers/StellaOps.Bench.ScannerAnalyzers.csproj \
 | ||
|   -- \
 | ||
|   --repo-root . \
 | ||
|   --out bench/Scanner.Analyzers/baseline.csv \
 | ||
|   --json out/bench/scanner-analyzers/latest.json \
 | ||
|   --prom out/bench/scanner-analyzers/latest.prom \
 | ||
|   --commit "$(git rev-parse HEAD)"
 | ||
| ```
 | ||
| 
 | ||
| The harness prints a table to stdout and writes the CSV (if `--out` is specified) with the following headers:
 | ||
| 
 | ||
| ```
 | ||
| scenario,iterations,sample_count,mean_ms,p95_ms,max_ms
 | ||
| ```
 | ||
| 
 | ||
| Additional outputs:
 | ||
| - `--json` emits a deterministic report consumable by Grafana/automation (schema `1.0`, see `docs/12_PERFORMANCE_WORKBOOK.md`).
 | ||
| - `--prom` exports Prometheus-compatible gauges (`scanner_analyzer_bench_*`), which CI uploads for dashboards and alerts.
 | ||
| 
 | ||
| Use `--iterations` to override the default (5 passes per scenario) and `--threshold-ms` to customize the failure budget. Budgets default to 5 000 ms (or per-scenario overrides in `config.json`), aligned with the SBOM compose objective. Provide `--baseline path/to/baseline.csv` (defaults to the repo baseline) to compare against historical numbers—regressions ≥ 20 % on the `max_ms` metric or breaches of the configured threshold will fail the run.
 | ||
| 
 | ||
| Metadata options:
 | ||
| - `--captured-at 2025-10-23T12:00:00Z` to inject a deterministic timestamp (otherwise `UtcNow`).
 | ||
| - `--commit` and `--environment` annotate the JSON report for dashboards.
 | ||
| - `--regression-limit 1.15` adjusts the ratio guard (default 1.20 ⇒ +20 %).
 | ||
| 
 | ||
| ## Adding scenarios
 | ||
| 1. Drop the fixture tree under `samples/<area>/...`.
 | ||
| 2. Append a new scenario entry to `config.json` describing:
 | ||
|    - `id` – snake_case scenario name (also used in CSV).
 | ||
|    - `label` – human-friendly description shown in logs.
 | ||
|    - `root` – path to the directory that will be scanned.
 | ||
|    - For analyzer-backed scenarios, set `analyzers` to the list of language analyzer ids (for example, `["node"]`).
 | ||
|    - For temporary metadata walks (used until the analyzer ships), provide `parser` (`node` or `python`) and the `matcher` glob describing files to parse.
 | ||
| 3. Re-run the harness (`dotnet run … --out baseline.csv --json out/.../new.json --prom out/.../new.prom`).
 | ||
| 4. Commit both the fixture and updated baseline.
 |