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workflows:compound

Coordinate multiple subagents working in parallel to document a recently solved problem.

Captures problem solutions while context is fresh, creating structured documentation in docs/solutions/ with YAML frontmatter for searchability and future reference. Uses parallel subagents for maximum efficiency.

Why “compound”? Each documented solution compounds your team’s knowledge. The first time you solve a problem takes research. Document it, and the next occurrence takes minutes. Knowledge compounds.

Terminal window
/workflows:compound # Document the most recent fix
/workflows:compound [brief context] # Provide additional context hint

Execution Strategy: Two-Phase Orchestration

Section titled “Execution Strategy: Two-Phase Orchestration”

<critical_requirement> Only ONE file gets written - the final documentation.

Phase 1 subagents return TEXT DATA to the orchestrator. They must NOT use Write, Edit, or create any files. Only the orchestrator (Phase 2) writes the final documentation file. </critical_requirement>

<parallel_tasks>

Launch these subagents IN PARALLEL. Each returns text data to the orchestrator.

  • Extracts conversation history
  • Identifies problem type, component, symptoms
  • Validates against schema
  • Returns: YAML frontmatter skeleton
  • Analyzes all investigation steps
  • Identifies root cause
  • Extracts working solution with code examples
  • Returns: Solution content block
  • Searches docs/solutions/ for related documentation
  • Identifies cross-references and links
  • Finds related GitHub issues
  • Returns: Links and relationships
  • Develops prevention strategies
  • Creates best practices guidance
  • Generates test cases if applicable
  • Returns: Prevention/testing content
  • Determines optimal docs/solutions/ category
  • Validates category against schema
  • Suggests filename based on slug
  • Returns: Final path and filename

</parallel_tasks>

<sequential_tasks>

WAIT for all Phase 1 subagents to complete before proceeding.

The orchestrating agent (main conversation) performs these steps:

  1. Collect all text results from Phase 1 subagents
  2. Assemble complete markdown file from the collected pieces
  3. Validate YAML frontmatter against schema
  4. Create directory if needed: mkdir -p docs/solutions/[category]/
  5. Write the SINGLE final file: docs/solutions/[category]/[filename].md

</sequential_tasks>

WAIT for Phase 2 to complete before proceeding.

<parallel_tasks>

Based on problem type, optionally invoke specialized agents to review the documentation:

  • performance_issueperformance-oracle
  • security_issuesecurity-sentinel
  • database_issuedata-integrity-guardian
  • test_failurecora-test-reviewer
  • Any code-heavy issue → kieran-rails-reviewer + code-simplicity-reviewer

</parallel_tasks>

  • Problem symptom: Exact error messages, observable behavior
  • Investigation steps tried: What didn’t work and why
  • Root cause analysis: Technical explanation
  • Working solution: Step-by-step fix with code examples
  • Prevention strategies: How to avoid in future
  • Cross-references: Links to related issues and docs
Problem has been solved (not in-progress) Solution has been verified working Non-trivial problem (not simple typo or obvious error)

Organized documentation:

  • File: docs/solutions/[category]/[filename].md

Categories auto-detected from problem:

  • build-errors/
  • test-failures/
  • runtime-errors/
  • performance-issues/
  • database-issues/
  • security-issues/
  • ui-bugs/
  • integration-issues/
  • logic-errors/
WrongCorrect
Subagents write files like context-analysis.md, solution-draft.mdSubagents return text data; orchestrator writes one final file
Research and assembly run in parallelResearch completes, then assembly runs
Multiple files created during workflowSingle file: docs/solutions/[category]/[filename].md
Subagent Results:
Context Analyzer: Identified performance_issue in brief_system
Solution Extractor: 3 code fixes
Related Docs Finder: 2 related issues
Prevention Strategist: Prevention strategies, test suggestions
Category Classifier: `performance-issues`
Specialized Agent Reviews (Auto-Triggered):
performance-oracle: Validated query optimization approach
kieran-rails-reviewer: Code examples meet Rails standards
code-simplicity-reviewer: Solution is appropriately minimal
every-style-editor: Documentation style verified
File created:
- docs/solutions/performance-issues/n-plus-one-brief-generation.md
This documentation will be searchable for future reference when similar
issues occur in the Email Processing or Brief System modules.
What's next?
1. Continue workflow (recommended)
2. Link related documentation
3. Update other references
4. View documentation
5. Other

This creates a compounding knowledge system:

  1. First time you solve “N+1 query in brief generation” → Research (30 min)
  2. Document the solution → docs/solutions/performance-issues/n-plus-one-briefs.md (5 min)
  3. Next time similar issue occurs → Quick lookup (2 min)
  4. Knowledge compounds → Team gets smarter

The feedback loop:

Build → Test → Find Issue → Research → Improve → Document → Validate → Deploy
↑ ↓
└──────────────────────────────────────────────────────────────────────┘

Each unit of engineering work should make subsequent units of work easier—not harder.

<auto_invoke> <trigger_phrases> - “that worked” - “it’s fixed” - “working now” - “problem solved” </trigger_phrases>

<manual_override> Use /workflows:compound [context] to document immediately without waiting for auto-detection. </manual_override> </auto_invoke>

compound-docs skill

Based on problem type, these agents can enhance documentation:

  • kieran-rails-reviewer: Reviews code examples for Rails best practices
  • code-simplicity-reviewer: Ensures solution code is minimal and clear
  • pattern-recognition-specialist: Identifies anti-patterns or repeating issues
  • performance-oracle: Analyzes performance_issue category solutions
  • security-sentinel: Reviews security_issue solutions for vulnerabilities
  • cora-test-reviewer: Creates test cases for prevention strategies
  • data-integrity-guardian: Reviews database_issue migrations and queries
  • best-practices-researcher: Enriches solution with industry best practices
  • every-style-editor: Reviews documentation style and clarity
  • framework-docs-researcher: Links to Rails/gem documentation references
  • Auto-triggered (optional): Agents can run post-documentation for enhancement
  • Manual trigger: User can invoke agents after /workflows:compound completes for deeper review
  • /research [topic] - Deep investigation (searches docs/solutions/ for patterns)
  • /workflows:plan - Planning workflow (references documented solutions)