Skip to main content
ClaudeWave
Skill188 estrellas del repoactualizado today

golden-dataset

Golden dataset lifecycle patterns for curation, versioning, quality validation, and CI integration. Use when building evaluation datasets, managing dataset versions, validating quality scores, or integrating golden tests into pipelines.

Instalar en Claude Code
Copiar
git clone --depth 1 https://github.com/yonatangross/orchestkit /tmp/golden-dataset && cp -r /tmp/golden-dataset/plugins/ork/skills/golden-dataset ~/.claude/skills/golden-dataset
Después abre una sesión nueva de Claude Code; el skill carga automáticamente.

SKILL.md

# Golden Dataset

Comprehensive patterns for building, managing, and validating golden datasets for AI/ML evaluation. Each category has individual rule files in `rules/` loaded on-demand.

## Quick Reference

| Category | Rules | Impact | When to Use |
| -------- | ----- | ------ | ----------- |
| [Curation](#curation) | 3 | HIGH | Content collection, annotation pipelines, diversity analysis |
| [Management](#management) | 3 | HIGH | Versioning, backup/restore, CI/CD automation |
| [Validation](#validation) | 3 | CRITICAL | Quality scoring, drift detection, regression testing |
| [Add Workflow](#add-workflow) | 1 | HIGH | 9-phase curation, quality scoring, bias detection, silver-to-gold |

Total: 10 rules across 4 categories

## Curation

Content collection, multi-agent annotation, and diversity analysis for golden datasets.

| Rule | File | Key Pattern |
| ---- | ---- | ----------- |
| Collection | `rules/curation-collection.md` | Content type classification, quality thresholds, duplicate prevention |
| Annotation | `rules/curation-annotation.md` | Multi-agent pipeline, consensus aggregation, Langfuse tracing |
| Diversity | `rules/curation-diversity.md` | Difficulty stratification, domain coverage, balance guidelines |

## Management

Versioning, storage, and CI/CD automation for golden datasets.

| Rule | File | Key Pattern |
| ---- | ---- | ----------- |
| Versioning | `rules/management-versioning.md` | JSON backup format, embedding regeneration, disaster recovery |
| Storage | `rules/management-storage.md` | Backup strategies, URL contract, data integrity checks |
| CI Integration | `rules/management-ci.md` | GitHub Actions automation, pre-deployment validation, weekly backups |

## Validation

Quality scoring, drift detection, and regression testing for golden datasets.

| Rule | File | Key Pattern |
| ---- | ---- | ----------- |
| Quality | `rules/validation-quality.md` | Schema validation, content quality, referential integrity |
| Drift | `rules/validation-drift.md` | Duplicate detection, semantic similarity, coverage gap analysis |
| Regression | `rules/validation-regression.md` | Difficulty distribution, pre-commit hooks, full dataset validation |

## Add Workflow

Structured workflow for adding new documents to the golden dataset.

| Rule | File | Key Pattern |
| ---- | ---- | ----------- |
| Add Document | `rules/curation-add-workflow.md` | 9-phase curation, parallel quality analysis, bias detection |

## Quick Start Example

```python
from app.shared.services.embeddings import embed_text

async def validate_before_add(document: dict, source_url_map: dict) -> dict:
    """Pre-addition validation for golden dataset entries."""
    errors = []

    # 1. URL contract check
    if "placeholder" in document.get("source_url", ""):
        errors.append("URL must be canonical, not a placeholder")

    # 2. Content quality
    if len(document.get("title", "")) < 10:
        errors.append("Title too short (min 10 chars)")

    # 3. Tag requirements
    if len(document.get("tags", [])) < 2:
        errors.append("At least 2 domain tags required")

    return {"valid": len(errors) == 0, "errors": errors}
```

## Key Decisions

| Decision | Recommendation |
| -------- | -------------- |
| Backup format | JSON (version controlled, portable) |
| Embedding storage | Exclude from backup (regenerate on restore) |
| Quality threshold | >= 0.70 quality score for inclusion |
| Confidence threshold | >= 0.65 for auto-include |
| Duplicate threshold | >= 0.90 similarity blocks, >= 0.85 warns |
| Min tags per entry | 2 domain tags |
| Min test queries | 3 per document |
| Difficulty balance | Trivial 3, Easy 3, Medium 5, Hard 3 minimum |
| CI frequency | Weekly automated backup (Sunday 2am UTC) |

## Common Mistakes

1. Using placeholder URLs instead of canonical source URLs
2. Skipping embedding regeneration after restore
3. Not validating referential integrity between documents and queries
4. Over-indexing on articles (neglecting tutorials, research papers)
5. Missing difficulty distribution balance in test queries
6. Not running verification after backup/restore operations
7. Testing restore procedures in production instead of staging
8. Committing SQL dumps instead of JSON (not version-control friendly)

## Evaluations

See `test-cases.json` for 9 test cases across all categories.

## Related Skills

- `ork:rag-retrieval` - Retrieval evaluation using golden dataset
- `langfuse-observability` - Tracing patterns for curation workflows
- `ork:testing-unit` - Unit testing patterns and strategies
- `ai-native-development` - Embedding generation for restore

## Capability Details

### curation

**Keywords:** golden dataset, curation, content collection, annotation, quality criteria

**Solves:**

- Classify document content types for golden dataset
- Run multi-agent quality analysis pipelines
- Generate test queries for new documents

### management

**Keywords:** golden dataset, backup, restore, versioning, disaster recovery

**Solves:**

- Backup and restore golden datasets with JSON
- Regenerate embeddings after restore
- Automate backups with CI/CD

### validation

**Keywords:** golden dataset, validation, schema, duplicate detection, quality metrics

**Solves:**

- Validate entries against document schema
- Detect duplicate or near-duplicate entries
- Analyze dataset coverage and distribution gaps
accessibilitySkill

Accessibility patterns for WCAG 2.2 compliance, keyboard focus management, React Aria component patterns, cognitive inclusion, native HTML-first philosophy, and user preference honoring. Use when implementing screen reader support, keyboard navigation, ARIA patterns, focus traps, accessible component libraries, reduced motion, or cognitive accessibility.

agent-orchestrationSkill

Agent orchestration patterns for agentic loops, multi-agent coordination, alternative frameworks, and multi-scenario workflows. Use when building autonomous agent loops, coordinating multiple agents, evaluating CrewAI/AutoGen/Swarm, or orchestrating complex multi-step scenarios.

ai-ui-generationSkill

AI-assisted UI generation patterns for json-render, v0.app, Google Stitch, Bolt Cloud, and Cursor workflows. Covers prompt engineering for component and full-stack app generation, review checklists for AI-generated code, design token injection, refactoring for design system conformance, and CI gates for quality assurance. Use when generating UI components with AI tools, rendering multi-surface MCP visual output, reviewing AI-generated code, or integrating AI output into design systems.

analyticsSkill

Queries local analytics across OrchestKit projects for agent usage, skill frequency, hook timing, team activity, session replay, cost estimation, and model delegation trends. Privacy-safe with hashed project IDs. Supports time-range filtering and comparative analysis. Use when reviewing performance, estimating costs, or understanding usage patterns.

animation-motion-designSkill

Animation and motion design patterns using Motion library (formerly Framer Motion) and View Transitions API. Use when implementing component animations, page transitions, micro-interactions, gesture-driven UIs, or ensuring motion accessibility with prefers-reduced-motion.

api-designSkill

API design patterns for REST/GraphQL framework design, versioning strategies, and RFC 9457 error handling. Use when designing API endpoints, choosing versioning schemes, implementing Problem Details errors, or building OpenAPI specifications.

architecture-decision-recordSkill

Use this skill when documenting significant architectural decisions. Provides ADR templates following the Nygard format with sections for context, decision, consequences, and alternatives. Use when writing ADRs, recording decisions, or evaluating options.

architecture-patternsSkill

Architecture validation and patterns for clean architecture, backend structure enforcement, project structure validation, test standards, and context-aware sizing. Use when designing system boundaries, enforcing layered architecture, validating project structure, defining test standards, or choosing the right architecture tier for project scope.