# Context Recall Examples Real-world examples of how the Context Recall System works. ## Example 1: Continuing Previous Work ### Session 1 (Monday) **User:** "Add authentication endpoints to the API" **Claude:** Creates `/api/auth/login` and `/api/auth/register` endpoints **System:** Saves context: ```json { "title": "Session: 2025-01-13T14:30:00Z", "context_type": "session_summary", "dense_summary": "Created authentication endpoints including login and register. Implemented JWT token generation with 24-hour expiry. Added password hashing with bcrypt.", "relevance_score": 8.5, "metadata": { "files_modified": "api/auth.py,api/models.py", "git_branch": "feature/auth" } } ``` ### Session 2 (Tuesday) **User:** "Add password reset functionality" **System:** Automatically recalls context: ```markdown ## [DOCS] Previous Context ### 1. Session: 2025-01-13T14:30:00Z (Score: 8.5/10) *Type: session_summary* Created authentication endpoints including login and register. Implemented JWT token generation with 24-hour expiry. Added password hashing with bcrypt. Modified files: api/auth.py,api/models.py Branch: feature/auth ``` **Claude:** (with context) "I'll add password reset to the existing authentication system. Based on the previous session, I can see we're using JWT tokens and bcrypt..." ## Example 2: Technical Decision Recall ### Session 1 **User:** "Why did we choose PostgreSQL over MongoDB?" **Claude:** "We chose PostgreSQL because: 1) Strong ACID guarantees, 2) Complex relationships in data model, 3) Team familiarity..." **System:** Saves context: ```json { "title": "Database Technology Decision", "context_type": "technical_decision", "dense_summary": "Chose PostgreSQL over MongoDB for: ACID guarantees, complex relationships, team familiarity, excellent tooling ecosystem. Decision made after evaluating both options.", "relevance_score": 9.0 } ``` ### Session 2 (Weeks Later) **User:** "Should we use MongoDB for the logging service?" **System:** Recalls context: ```markdown ## [DOCS] Previous Context ### 1. Database Technology Decision (Score: 9.0/10) *Type: technical_decision* Chose PostgreSQL over MongoDB for: ACID guarantees, complex relationships, team familiarity, excellent tooling ecosystem. Decision made after evaluating both options. ``` **Claude:** "Given our previous decision to use PostgreSQL for its ACID guarantees and relational features, let's consider if logging has different requirements..." ## Example 3: Bug Fix History ### Session 1 **User:** "Fix the authentication timeout issue" **Claude:** Fixes bug in JWT token validation **System:** Saves: ```json { "title": "Bug Fix: Authentication Timeouts", "context_type": "bug_fix", "dense_summary": "Fixed authentication timeout issue caused by incorrect JWT expiry validation. Changed from server time to UTC. Added timezone handling.", "relevance_score": 8.0, "metadata": { "bug_type": "authentication", "fix_type": "timezone_handling" } } ``` ### Session 2 **User:** "Users are getting logged out randomly" **System:** Recalls: ```markdown ## [DOCS] Previous Context ### 1. Bug Fix: Authentication Timeouts (Score: 8.0/10) *Type: bug_fix* Fixed authentication timeout issue caused by incorrect JWT expiry validation. Changed from server time to UTC. Added timezone handling. ``` **Claude:** "This might be related to the previous timeout issue. Let me check the JWT timezone handling..." ## Example 4: Multi-Session Feature Development ### Session 1: Planning **User:** "Plan a user dashboard feature" **Claude:** Creates architecture plan **System:** Saves: ```json { "title": "User Dashboard Architecture", "context_type": "architecture_decision", "dense_summary": "Planned user dashboard with: Real-time metrics, customizable widgets, role-based access. Tech stack: React frontend, WebSocket for real-time, Redis for caching.", "relevance_score": 9.5 } ``` ### Session 2: Frontend Implementation **User:** "Implement the dashboard frontend" **System:** Recalls planning context, Claude implements according to plan **System:** Saves: ```json { "title": "Dashboard Frontend Implementation", "context_type": "session_summary", "dense_summary": "Implemented React dashboard with widget system. Created: DashboardContainer, WidgetGrid, individual widget components. Used WebSocket hook for real-time updates.", "relevance_score": 8.0 } ``` ### Session 3: Backend Implementation **User:** "Add the backend API for the dashboard" **System:** Recalls both previous contexts **Claude:** "Based on the architecture plan and frontend implementation, I'll create the WebSocket endpoints and Redis caching layer..." ### Session 4: Testing **User:** "Write tests for the dashboard" **System:** Recalls all three previous contexts **Claude:** "I'll write tests covering the complete dashboard flow: frontend widgets, WebSocket connections, Redis caching, and API endpoints..." ## Example 5: Context Filtering ### Query with High Threshold ```bash MIN_RELEVANCE_SCORE=7.5 ``` Result: Only highly relevant contexts (major decisions, current feature work) ```markdown ### 1. User Authentication Refactor (Score: 9.0/10) ### 2. Database Schema Changes (Score: 8.5/10) ### 3. API Rate Limiting Implementation (Score: 7.8/10) ``` ### Query with Low Threshold ```bash MIN_RELEVANCE_SCORE=3.0 ``` Result: More historical context (includes older sessions, minor changes) ```markdown ### 1. User Authentication Refactor (Score: 9.0/10) ### 2. Database Schema Changes (Score: 8.5/10) ### 3. API Rate Limiting Implementation (Score: 7.8/10) ### 4. Update README documentation (Score: 6.5/10) ### 5. Fix typo in comment (Score: 4.2/10) ### 6. Add gitignore entry (Score: 3.5/10) ``` ## Example 6: Project State Tracking ### After Each Session **task-complete hook** saves project state: ```json { "project_id": "abc123...", "state_data": { "last_task_completion": "2025-01-15T10:30:00Z", "last_git_commit": "a1b2c3d", "last_git_branch": "feature/dashboard", "recent_files": "src/Dashboard.tsx,api/dashboard.py" }, "state_type": "task_completion" } ``` This enables Claude to answer questions like: - "What was I working on last?" - "What files did I modify recently?" - "What branch am I on?" ## Example 7: Cross-Feature Context ### Session 1: Feature A **User:** "Add user roles system" **System:** Saves context about role implementation (Admin, User, Guest) ### Session 2: Feature B **User:** "Add permissions to the API endpoints" **System:** Recalls role system context **Claude:** "I'll add permissions using the existing role system (Admin, User, Guest) that we implemented..." This shows how context from one feature automatically informs work on related features. ## Example 8: Onboarding New Team Members ### New Developer's First Session **New Dev:** "How does authentication work in this project?" **System:** Recalls all authentication-related contexts: ```markdown ### 1. User Authentication Refactor (Score: 9.0/10) Implemented JWT-based authentication with bcrypt password hashing... ### 2. Session Management Design (Score: 8.5/10) Added Redis-backed session storage with 24-hour expiry... ### 3. OAuth Integration (Score: 8.0/10) Integrated Google and GitHub OAuth providers... ``` **Claude:** (with full context) "Our authentication system uses JWT tokens with bcrypt hashing. We also have OAuth integration with Google and GitHub..." ## Example 9: Debugging with Context ### Session 1: Implementation **User:** "Add email notification system" **System:** Saves implementation details (SMTP config, template system, queuing) ### Session 2: Bug Report **User:** "Emails aren't being sent" **System:** Recalls implementation context **Claude:** "Let me check the email system we implemented. Based on the previous session, we're using SMTP with a queue system. Common issues could be..." ## Example 10: Evolving Requirements ### Month 1 **User:** "Build simple user profile page" **System:** Saves initial implementation ### Month 2 **User:** "Add social features to profiles" **System:** Recalls original implementation **Claude:** "I'll extend the existing profile system to include social features..." ### Month 3 **User:** "Make profiles customizable" **System:** Recalls both previous implementations **Claude:** "Building on the profile and social features, I'll add customization options..." Each session builds on previous work with full context. ## Real Output Example Here's what you actually see in Claude Code when context is recalled: ```markdown ## [DOCS] Previous Context The following context has been automatically recalled from previous sessions: ### 1. API Authentication Implementation (Score: 8.5/10) *Type: session_summary* Task completed on branch 'feature/auth' (commit: a1b2c3d). Summary: Implemented JWT-based authentication system with login/register endpoints. Added password hashing using bcrypt. Created middleware for protected routes. Token expiry set to 24 hours. Modified files: api/auth.py,api/middleware.py,api/models.py Timestamp: 2025-01-15T14:30:00Z --- ### 2. Database Schema for Users (Score: 7.8/10) *Type: technical_decision* Added User model with fields: id, username, email, password_hash, created_at, last_login. Decided to use UUID for user IDs instead of auto-increment integers for better security and scalability. --- ### 3. Security Best Practices Discussion (Score: 7.2/10) *Type: session_summary* Discussed security considerations: password hashing (bcrypt), token storage (httpOnly cookies), CORS configuration, rate limiting. Decided to implement rate limiting in next session. --- *This context was automatically injected to help maintain continuity across sessions.* ``` This gives Claude complete awareness of your previous work without you having to explain it! ## Benefits Demonstrated 1. **Continuity** - Work picks up exactly where you left off 2. **Consistency** - Decisions made previously are remembered 3. **Efficiency** - No need to re-explain project details 4. **Learning** - New team members get instant project knowledge 5. **Debugging** - Past implementations inform current troubleshooting 6. **Evolution** - Features build naturally on previous work ## Configuration Tips **For focused work (single feature):** ```bash MIN_RELEVANCE_SCORE=7.0 MAX_CONTEXTS=5 ``` **For comprehensive context (complex projects):** ```bash MIN_RELEVANCE_SCORE=5.0 MAX_CONTEXTS=15 ``` **For debugging (need full history):** ```bash MIN_RELEVANCE_SCORE=3.0 MAX_CONTEXTS=20 ``` ## Next Steps See `CONTEXT_RECALL_SETUP.md` for setup instructions and `README.md` for technical details.