fss-mini-rag-github/agent-user-testing/COMPLETION_WORKFLOW_TEMPLATE.md
FSSCoding e4163eaa45 MAJOR ENHANCEMENT: Transform agent scenarios into functional demonstrations
 COMPLETE OVERHAUL OF AGENT TESTING SCENARIOS 

🎯 What Changed:
- Transformed boring installation tests into EXCITING functional demos
- Added comprehensive command coverage (init, search, stats, info, find-*, update)
- Each scenario now builds actual intelligent systems agents can use

🚀 New Functional Approach:
- Agents build industry-specific intelligence systems
- Test real semantic search with actual queries
- Create professional knowledge assistants
- Measure real-world impact and time savings

📋 Professional Completion Workflow:
- Comprehensive documentation requirements
- Repository contribution with proper branch management
- Pull request submission with detailed results
- Quality validation and evidence requirements

🔧 Repository Integration:
- All scenarios point to: http://192.168.1.3:3000/foxadmin/fss-mini-rag-github.git
- Proper branch workflow (agent-user-testing -> custom branches -> PRs)
- Professional git practices and submission standards

🎉 Examples of New Scenarios:
- CAD Standards Intelligence System (mechanical engineering)
- Childcare Compliance Intelligence Hub
- Warehouse Operations Intelligence System
- Financial Regulatory Intelligence Hub
- Clinical Trial Intelligence System

📊 Command Coverage Improvement:
- Before: 8.3% (1/12 commands - just --help)
- After: 83%+ (10/12 commands tested per scenario)

Agents now get to build COOL STUFF and provide valuable professional feedback!
2025-09-07 18:20:12 +10:00

5.1 KiB

Agent Testing Completion Workflow Template

🎯 Universal Completion Steps for All Scenarios

Step 8: Document Your Experience

Create a comprehensive RESULTS.md including:

Executive Summary

  • What you built ([Industry-Specific Intelligence System])
  • Key findings and success metrics
  • Professional impact assessment

Technical Details

  • Number of documents indexed and file sizes
  • Search response times and accuracy ratings
  • Most effective query types and examples
  • Command usage statistics (init, search, stats, info, find-function, find-class, update)

Professional Value Assessment

  • Time saved compared to manual document searching
  • Potential impact on [industry-specific processes]
  • Training value for new [professionals]
  • [Industry-specific compliance/workflow] improvements

User Experience Report

  • Installation process evaluation
  • Command usability ratings
  • Documentation quality assessment
  • Suggested improvements or missing features

Step 9: Repository Contribution Workflow

Repository Information

  • Repository URL: http://192.168.1.3:3000/foxadmin/fss-mini-rag-github.git
  • Main Branch: main
  • Testing Branch: agent-user-testing (where scenarios are located)

Branch Management

# Clone the repository
git clone http://192.168.1.3:3000/foxadmin/fss-mini-rag-github.git
cd fss-mini-rag-github

# Start from the agent-user-testing branch
git checkout agent-user-testing

# Create your own branch for your results
git checkout -b agent-test-[SCENARIO-NAME]-$(date +%Y%m%d)

# Navigate to your scenario
cd agent-user-testing/[XX-scenario-folder]/

Submit Your Results

# Add your completed RESULTS.md
git add RESULTS.md

# Commit with descriptive message
git commit -m "Agent Test Results: [Industry] [System Name]

- Tested FSS-Mini-RAG with [industry-specific] documentation
- Created intelligent knowledge base for [specific use cases]
- Evaluated semantic search effectiveness for [industry] workflows
- Documented professional impact and time-saving potential
- Rating: [X]/10 overall effectiveness"

# Push your branch
git push origin agent-test-[SCENARIO-NAME]-$(date +%Y%m%d)

Create Pull Request

# Use gitea CLI to create PR
gitea prs create "Agent Test: [Industry] Results" agent-test-[SCENARIO-NAME]-$(date +%Y%m%d) agent-user-testing --body "Completed comprehensive testing of FSS-Mini-RAG for [industry] workflows.

## Test Summary
- Built [Intelligence System Name]
- Indexed [X] [industry] documents
- Tested [X] search queries with [X]% accuracy
- Overall effectiveness rating: [X]/10

## Key Findings
[Brief summary of major discoveries]

## Professional Impact
[Assessment of real-world value for [professionals]]

## Recommendations
[Suggestions for improvements or additional features]"

Step 10: Validation Requirements

Your submission must include:

Required Evidence

  • Screenshots of successful rag-mini init and rag-mini stats output
  • Search examples with actual query results (at least 5 different searches)
  • Performance metrics (response times, index size, document count)
  • Professional assessment with specific use cases and value propositions

Quality Standards

  • Functional completeness: All major commands tested (init, search, stats, info)
  • Real-world relevance: Actual industry documents and realistic queries
  • Professional writing: Clear, actionable insights for [industry] teams
  • Quantitative data: Specific metrics and measurable outcomes

Submission Checklist

  • Created intelligent knowledge base successfully
  • Tested minimum 5 different search queries
  • Documented all command usage and results
  • Provided professional impact assessment
  • Created proper git branch with descriptive name
  • Submitted PR with comprehensive description
  • Included evidence screenshots/outputs
  • Met all validation requirements

📁 Final Deliverables

  • [industry-folder]/ with indexed documentation
  • RESULTS.md with comprehensive evaluation and evidence
  • Git branch with proper commit history
  • Pull request with detailed description
  • Professional assessment of FSS-Mini-RAG effectiveness

⏱️ Expected Duration: 3-4 hours (including documentation and PR submission)

🎉 Success Outcome

You'll have created an intelligent [industry] assistant AND provided valuable feedback to improve FSS-Mini-RAG for [industry] professionals!


🔧 Customization Variables

For each scenario, replace:

  • [Industry-Specific Intelligence System] - e.g., "CAD Standards Intelligence System"
  • [SCENARIO-NAME] - e.g., "mechanical-engineering"
  • [XX-scenario-folder] - e.g., "01-mechanical-engineering"
  • [industry-specific] - e.g., "automotive CAD standards"
  • [specific use cases] - e.g., "tolerance and design queries"
  • [industry] - e.g., "mechanical engineering"
  • [professionals] - e.g., "engineers"
  • [Intelligence System Name] - e.g., "CAD Standards Intelligence System"
  • [industry-folder] - e.g., "cad-standards-docs"