Agent skill
performance-benchmark-suite
SDK performance benchmarking and regression detection
Install this agent skill to your Project
npx add-skill https://github.com/a5c-ai/babysitter/tree/main/library/specializations/sdk-platform-development/skills/performance-benchmark-suite
SKILL.md
Performance Benchmark Suite Skill
Overview
This skill implements comprehensive SDK performance benchmarking, tracking latency, throughput, memory usage, and detecting performance regressions across versions.
Capabilities
- Measure latency percentiles (p50, p95, p99)
- Track memory usage and allocation patterns
- Detect performance regressions automatically
- Generate visual benchmark reports
- Compare performance across SDK versions
- Implement microbenchmarks for critical paths
- Configure continuous benchmarking in CI
- Support load testing scenarios
Target Processes
- Performance Benchmarking
- SDK Testing Strategy
- SDK Versioning and Release Management
Integration Points
- k6 for load testing
- Artillery for HTTP benchmarking
- hyperfine for CLI benchmarking
- Benchmark.js for JavaScript
- pytest-benchmark for Python
- Continuous benchmark systems (Bencher)
Input Requirements
- Performance requirements (SLOs)
- Benchmark scenarios
- Baseline versions for comparison
- Environment specifications
- Reporting requirements
Output Artifacts
- Benchmark test suite
- Performance baseline data
- Regression detection rules
- Visual benchmark reports
- CI benchmark configuration
- Historical trend analysis
Usage Example
skill:
name: performance-benchmark-suite
context:
tool: k6
scenarios:
- name: basic-crud
operations: ["create", "read", "update", "delete"]
vus: 10
duration: "30s"
- name: high-load
vus: 100
duration: "5m"
slos:
p95_latency: "100ms"
p99_latency: "500ms"
error_rate: "0.1%"
compareWith: "v1.0.0"
regressionThreshold: "10%"
Best Practices
- Establish baselines before optimization
- Track percentiles, not just averages
- Run benchmarks in consistent environments
- Automate regression detection in CI
- Monitor memory alongside latency
- Document benchmark methodology
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
gsd-tools
Central utility skill for GSD operations. Provides config parsing, slug generation, timestamps, path operations, and orchestrates calls to other specialized skills. Acts as the unified entry point that the original gsd-tools.cjs provided via its lib/ modules (commands, config, core, init).
model-profile-resolution
Resolve model profile (quality/balanced/budget) at orchestration start and map agents to specific models. Enables cost/quality tradeoffs by selecting appropriate AI models for each agent role.
verification-suite
Plan structure validation, phase completeness checks, reference integrity verification, and artifact existence confirmation. Provides the structured verification layer ensuring GSD artifacts are well-formed and complete.
state-management
STATE.md reading, writing, and field-level updates. Provides cross-session state persistence via .planning/STATE.md with structured fields for current task, completed phases, blockers, decisions, and quick tasks.
git-integration
Git commit patterns, formats, and conventions for GSD methodology. Provides atomic commits per task, structured commit messages, planning file commits, branch management, and milestone tag operations.
frontmatter-parsing
YAML frontmatter parsing and manipulation for .planning/ documents. Provides read, write, update, query, and validation operations on frontmatter blocks in GSD markdown artifacts.
Didn't find tool you were looking for?