--- name: agent-ops-potential-discovery description: "Analyze incoming content (text, files, folders, URLs) to extract purpose, create summaries, and identify potential value for the current project." license: MIT compatibility: [opencode, claude, cursor] metadata: category: analysis related: [agent-ops-project-sections, agent-ops-idea, User request] --- # Potential Discovery Workflow ## Purpose Perform deep analysis of incoming content to: 1. Extract and understand its core purpose 2. Create extensive, structured summaries 3. Identify potential value and applications for the current project 4. Suggest concrete integration opportunities or inspired improvements ## When to Use - Evaluating a new library, tool, or framework - Reviewing incoming code contributions or PRs - Analyzing competitor products or similar solutions - Assessing documentation, specs, or RFCs - Exploring repositories for reusable patterns - Reviewing articles, blog posts, or research papers ## Input Types | Type | Description | Example | |------|-------------|---------| | **Text** | Raw text, markdown, documentation | Pasted README, spec doc | | **File** | Single file analysis | `analyze: ./incoming/proposal.md` | | **Folder** | Directory tree analysis | `analyze: ./incoming/new-library/` | | **URL** | Web content (requires fetch capability) | `analyze: https://github.com/user/repo` | ## Procedure ### Phase 1: Content Ingestion 1. **Identify content type** (text/file/folder/URL) 2. **Load content**: - Text: Use directly - File: Read file contents - Folder: Scan structure, read key files (README, package.json, etc.) - URL: Fetch content (if MCP fetch available) or note for manual review 3. **Assess scope**: Estimate content size and complexity ### Phase 2: Purpose Extraction Analyze content to identify: | Aspect | Questions to Answer | |--------|---------------------| | **Core Purpose** | What problem does this solve? What is its primary function? | | **Target Audience** | Who is this for? What skill level? | | **Key Features** | What are the main capabilities? | | **Architecture** | How is it structured? What patterns does it use? | | **Dependencies** | What does it rely on? What ecosystem? | | **Maturity** | How stable/complete is it? Active development? | **Output format:** ```markdown ### Purpose Analysis **Core Purpose:** {one-sentence summary} **Problem Solved:** {what pain point it addresses} **Target Audience:** {who would use this} **Key Features:** - {feature 1} - {feature 2} - {feature 3} **Architecture/Approach:** {how it works at a high level} **Maturity:** {early/stable/mature} — {evidence} ``` ### Phase 3: Extensive Summary Create a comprehensive summary covering: ```markdown ### Detailed Summary #### Overview {2-3 paragraphs explaining what this is and how it works} #### Structure {File/folder organization, key components} #### Technical Details - **Language/Runtime:** {languages, versions} - **Dependencies:** {key dependencies} - **Build System:** {how to build/run} - **Testing:** {test approach} #### Strengths - {strength 1} - {strength 2} #### Limitations - {limitation 1} - {limitation 2} #### Notable Patterns - {interesting pattern or technique} - {reusable approach} ``` ### Phase 4: Potential Assessment Evaluate relevance to current project: 1. **Read project context**: - Check `.agent/constitution.md` for project scope - Check `.agent/map.md` for codebase structure - Check current `focus.md` for active work 2. **Identify alignment**: - Technology overlap (same language, framework, etc.) - Problem overlap (solves similar issues) - Pattern overlap (uses approaches we could adopt) 3. **Generate potential opportunities**: ```markdown ### Potential for Current Project **Relevance Score:** {low/medium/high} **Alignment:** - ✅ {alignment point 1} - ✅ {alignment point 2} - ⚠️ {partial alignment} - ❌ {misalignment} **Opportunities:** 1. **{Opportunity Title}** - What: {description} - Effort: {low/medium/high} - Value: {low/medium/high} - How: {brief approach} 2. **{Opportunity Title}** - What: {description} - Effort: {low/medium/high} - Value: {low/medium/high} - How: {brief approach} **Risks/Concerns:** - {risk 1} - {risk 2} **Recommendation:** {adopt/adapt/inspire/skip} ``` ### Phase 5: Issue Creation Convert opportunities into trackable IDEA issues using `agent-ops-idea` skill: **For each identified opportunity:** 1. **Create IDEA issue** (minimal mode via agent-ops-idea): ```markdown ## IDEA-{N}@{hash} — {Opportunity Title} **Status:** `idea` **Type:** IDEA **Created:** {date} **Source:** Potential discovery from {content identifier} ### Original Opportunity {opportunity description from Phase 4} ### Context - **Discovered in:** {source content} - **Relevance:** {low/medium/high} - **Effort:** {low/medium/high} - **Value:** {low/medium/high} ### Notes {any additional context or caveats} ``` 2. **Present summary to user**: ``` ## Potential Discovery Complete **Analyzed:** {content identifier} **Relevance:** {overall score} **Issues Created:** - IDEA-{N}@{hash}: {title} (effort: X, value: Y) - IDEA-{N}@{hash}: {title} (effort: X, value: Y) These are now in backlog.md for later triage. Use `/agent-task triage` to review and prioritize. ``` **No opportunities found:** ``` ## Potential Discovery Complete **Analyzed:** {content identifier} **Relevance:** Low No actionable opportunities identified for the current project. The content may still be useful as reference material. ``` ## Output Locations | Output | Location | When | |--------|----------|------| | Console | Displayed directly | Always — analysis report shown to user | | IDEA issues | `.agent/issues/backlog.md` | Opportunities converted to trackable issues | **IMPORTANT**: This skill only writes to `backlog.md` and `.counter`. It does NOT: - Create report files in `.agent/discoveries/` - Modify `focus.md` - Make any code changes All findings become IDEA issues for later review and triage. ## Integration with agent-ops-idea This skill uses `agent-ops-idea` to convert opportunities into issues: 1. **Analysis complete** → Opportunities identified 2. **For each opportunity** → Invoke `agent-ops-idea` (minimal mode) 3. **Create IDEA issue** → Added to `backlog.md` with: - Original opportunity description - Source reference (what content it came from) - Relevance assessment 4. **User reviews later** → Triage to promote or drop ## Integration with Other Skills | Skill | Integration | |-------|-------------| | `agent-ops-idea` | Convert opportunities into enriched IDEA issues | | `agent-ops-project-sections` | Understand current project structure for alignment | | `agent-ops-context-map` | Reference codebase overview | | `agent-ops-tasks` | Create follow-up issues from discoveries | ## Customization Options User can specify intent to focus analysis: ``` `agent-discover` ./incoming/auth-library/ --intent "improve our authentication" `agent-discover` https://github.com/user/tool --intent "CLI patterns" `agent-discover` spec.md --intent "API design inspiration" ``` When intent is provided: - Purpose analysis weighted toward intent - Potential assessment focused on stated goal - Opportunities filtered for relevance ## Completion Criteria - [ ] Content successfully ingested - [ ] Purpose clearly identified and documented - [ ] Comprehensive summary created - [ ] Potential assessed against project context - [ ] Opportunities converted to IDEA issues in backlog.md - [ ] User presented with summary of created issues ## Anti-patterns (avoid) - ❌ Shallow analysis (just reading README) - ❌ Missing project context (analyzing in isolation) - ❌ Vague opportunities ("could be useful") - ❌ Ignoring limitations or risks - ❌ Over-promising value without evidence - ❌ Creating files outside of backlog.md and .counter - ❌ Modifying focus.md or other state files - ❌ Making code changes ## Examples ### Example 1: Library Analysis **Input:** `analyze: ./incoming/result-monad/` **Output:** ```markdown # Potential Discovery Report **Content:** ./incoming/result-monad/ **Analyzed:** 2026-01-17 **Context:** agent-ops-cli (Python CLI tool) ### Purpose Analysis **Core Purpose:** Rust-style Result type for Python error handling **Problem Solved:** Replaces exceptions with explicit error returns **Key Features:** - Result[T, E] generic type - Pattern matching support - Railway-oriented programming helpers ### Potential for Current Project **Relevance Score:** Medium **Alignment:** - ✅ Same language (Python) - ✅ We have error handling inconsistencies - ⚠️ Would require refactoring existing code **Opportunities:** 1. **Adopt for new modules** - What: Use Result type in kg module - Effort: Low - Value: Medium - How: Add as optional dependency, use in new code **Recommendation:** Adapt — use pattern for new code, don't refactor existing ``` ### Example 2: URL Analysis **Input:** `analyze: https://github.com/anthropics/anthropic-cookbook --intent "prompt engineering patterns"` **Output:** ```markdown # Potential Discovery Report **Content:** anthropic-cookbook repository **Analyzed:** 2026-01-17 **Context:** AgentOps prompt/skill design ### Purpose Analysis **Core Purpose:** Collection of Anthropic API usage patterns and examples ### Potential for Current Project **Relevance Score:** High **Opportunities:** 1. **Prompt structure patterns** - What: XML-tagged prompt sections - Value: High - How: Review and adopt in skill prompts 2. **Tool use examples** - What: Function calling patterns - Value: High - How: Reference for harness tool design ```