create-tooluniverse-skill

Create high-quality ToolUniverse skills following test-driven, implementation-agnostic methodology. Integrates tools from ToolUniverse's 1,264+ tool library, creates missing tools when needed, tests thoroughly, and produces skills with Python SDK + MCP support.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "create-tooluniverse-skill" with this command: npx skills add mims-harvard/tooluniverse/mims-harvard-tooluniverse-create-tooluniverse-skill

Create ToolUniverse Skill

Systematic workflow for creating production-ready ToolUniverse skills.

Core Principles

Build on the 10 pillars from devtu-optimize-skills:

  1. TEST FIRST - never document untested tools
  2. Verify tool contracts - don't trust function names
  3. Handle SOAP tools - add operation parameter
  4. Implementation-agnostic docs - no Python/MCP code in SKILL.md
  5. Foundation first - query aggregators before specialized tools
  6. Disambiguate carefully - resolve IDs properly
  7. Implement fallbacks - Primary -> Fallback -> Default
  8. Grade evidence - T1-T4 tiers on claims
  9. Quantified completeness - numeric minimums per section
  10. Synthesize - models and hypotheses, not just lists

See OPTIMIZE_INTEGRATION.md for detailed application of each pillar.

7-Phase Workflow

PhaseDurationDescription
1. Domain Analysis15 minUnderstand use cases, data types, analysis phases
2. Tool Discovery30-45 minSearch, read configs, test tools (MANDATORY)
3. Tool Creation0-60 minCreate missing tools via devtu-create-tool
4. Implementation30-45 minWrite python_implementation.py with tested tools
5. Documentation30-45 minWrite SKILL.md (agnostic) + QUICK_START.md
6. Validation15-30 minRun test suite, validate checklist, manual verify
7. Packaging15 minCreate summary, update tracking

Total: ~1.5-2 hours (without tool creation).

Phase 1: Domain Analysis

  • Gather concrete use cases and expected outputs
  • Identify inputs, outputs, and intermediate data types
  • Break workflow into logical phases
  • Review existing skills in skills/ for patterns

Phase 2: Tool Discovery and Testing

Search tools in /src/tooluniverse/data/*.json (186 tool files). For each tool, read its config to understand parameters and return schema. See PARAMETER_VERIFICATION.md for common pitfalls.

Create and run a test script using test_tools_template.py. For each tool: call with known-good params, verify response format, document corrections. See TESTING_GUIDE.md for the full test suite template and procedures.

Phase 3: Tool Creation (If Needed)

Invoke devtu-create-tool when required functionality is missing and analysis is blocked. Use devtu-fix-tool if new tools fail tests.

Phase 4: Implementation

Create skills/tooluniverse-[domain]/ with:

  • python_implementation.py - use only tested tools, try/except per phase, progressive report writing
  • test_skill.py - test each input type, combined inputs, error handling

Use templates from CODE_TEMPLATES.md.

Phase 5: Documentation

Write implementation-agnostic SKILL.md using SKILL_TEMPLATE.md. Write multi-implementation QUICK_START.md using QUICKSTART_TEMPLATE.md. Key rules: zero Python/MCP code in SKILL.md, equal treatment of both interfaces in QUICK_START.

See IMPLEMENTATION_AGNOSTIC.md for format guidelines with examples.

Phase 6: Validation

Run the comprehensive test suite (see TESTING_GUIDE.md). Validate against VALIDATION_CHECKLIST.md. Perform manual verification: load ToolUniverse fresh, copy-paste QUICK_START example, verify output works.

Phase 7: Packaging

Create summary document using PACKAGING_TEMPLATE.md. Update session tracking if creating multiple skills.

Skill Integration

SkillWhen to Use
devtu-create-toolCritical functionality missing
devtu-fix-toolTool returns errors or unexpected format
devtu-optimize-skillsEvidence grading, report optimization

Quality Indicators

High quality: 100% test coverage before docs, agnostic SKILL.md, multi-implementation QUICK_START, fallback strategies, parameter corrections table, response format docs.

Red flags: Docs before testing, Python in SKILL.md, assumed parameters, no fallbacks, SOAP tools missing operation, no test script.

Reference Files

FileContent
SKILL_TEMPLATE.mdTemplate for writing SKILL.md
QUICKSTART_TEMPLATE.mdTemplate for writing QUICK_START.md
TESTING_GUIDE.mdTest suite template and procedures
VALIDATION_CHECKLIST.mdPre-release quality checklist
PACKAGING_TEMPLATE.mdSummary document template
PARAMETER_VERIFICATION.mdTool parameter verification guide
OPTIMIZE_INTEGRATION.mddevtu-optimize-skills 10-pillar integration
IMPLEMENTATION_AGNOSTIC.mdImplementation-agnostic format guide with examples
CODE_TEMPLATES.mdPython implementation and test templates
test_tools_template.pyTool testing script template

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Coding

devtu-optimize-skills

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

devtu-create-tool

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

devtu-optimize-descriptions

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

tooluniverse-clinical-trial-design

No summary provided by upstream source.

Repository SourceNeeds Review