You are integrating Supermemory into my application. Supermemory provides user memory, semantic search, and automatic knowledge extraction for AI applications. You can always reference the documentation by using the **SearchSupermemoryDocs MCP** or running a web search tool for content on **supermemory.ai/docs**. ## STEP 1: ASK ME THESE QUESTIONS 1. What are you building? - Personal chatbot/assistant - Team knowledge base - Customer support bot - Document Q&A - Other 2. How do you want to integrate? - Vercel AI SDK (@supermemory/tools) - OpenAI plugins - Direct SDK (supermemory npm/pip) - Direct API calls 3. Data model? - Individual users only → containerTag: userId - Organizations only → containerTag: orgId - Both users AND orgs → ask for strategy 4. Do you want USER PROFILES? User profiles are automatically-maintained facts about users (what they like, what they're working on, preferences). - Yes (RECOMMENDED) → Use client.profile() to get context - No → Just use search 5. How should I retrieve context? - OPTION A: One call with search included → profile({ containerTag, q: userMessage }) - OPTION B: Separate calls → profile() for facts, search() for memories ## STEP 2: INSTALL ```bash # Get API key: https://console.supermemory.ai npm install supermemory # or: pip install supermemory # For Vercel AI SDK: npm install @supermemory/tools export SUPERMEMORY_API_KEY="sm_..." ``` ## STEP 3: CONFIGURE SETTINGS (DO THIS FIRST) ```typescript // PATCH https://api.supermemory.ai/v3/settings fetch('https://api.supermemory.ai/v3/settings', { method: 'PATCH', headers: { 'x-supermemory-api-key': process.env.SUPERMEMORY_API_KEY }, body: JSON.stringify({ shouldLLMFilter: true, filterPrompt: `This is a [your app description]. containerTag is [userId/orgId]. We store [what data].` }) }) ``` ## STEP 4: CONTAINER TAG STRATEGY Based on their data model answer: **USER-ONLY APP:** ```typescript containerTag: userId ``` **ORG-ONLY APP:** ```typescript containerTag: orgId // Org members share memories ``` **BOTH (ask which):** - Option A: `containerTag: \`\${userId}-\${orgId}\`` - Option B: `containerTag: orgId, metadata: { userId }` - Option C: `containerTag: userId, metadata: { orgId }` ## STEP 5: INTEGRATION CODE Based on their integration choice: ### VERCEL AI SDK ```typescript import { streamText } from 'ai' import { anthropic } from '@ai-sdk/anthropic' import { supermemoryTools } from '@supermemory/tools/ai-sdk' // Option 1: Agent tools (recommended for agentic flows) const result = await streamText({ model: anthropic('claude-3-5-sonnet-20241022'), prompt: userMessage, tools: supermemoryTools(process.env.SUPERMEMORY_API_KEY, { containerTags: [userId] }) }) // Agent gets searchMemories, addMemory, fetchMemory tools // Option 2: Profile middleware (automatic context injection) import { withSupermemory } from '@supermemory/tools/ai-sdk' const modelWithMemory = withSupermemory(anthropic('claude-3-5-sonnet-20241022'), userId) const result = await generateText({ model: modelWithMemory, messages: [{ role: 'user', content: userMessage }] }) // Profile is automatically injected into context ``` ### DIRECT SDK (WITH PROFILES) ```typescript import Supermemory from 'supermemory' const client = new Supermemory() // Before each LLM call: const { profile, searchResults } = await client.profile({ containerTag: userId, q: userMessage // Include this if they chose OPTION A (one call) // Omit if they chose OPTION B (separate calls) }) // Build context const context = ` Static facts: ${profile.static.join('\n')} Recent context: ${profile.dynamic.join('\n')} ${searchResults ? `Memories: ${searchResults.results.map(r => r.content).join('\n')}` : ''} ` // Send to LLM const messages = [ { role: 'system', content: `User context:\n${context}` }, { role: 'user', content: userMessage } ] // After LLM responds: await client.memories.add({ content: `user: ${userMessage}\nassistant: ${response}`, containerTag: userId }) ``` ### DIRECT SDK (NO PROFILES) ```typescript import Supermemory from 'supermemory' const client = new Supermemory() // Search for relevant memories const results = await client.search({ q: userMessage, containerTag: userId, searchMode: 'hybrid', // Searches memories + document chunks limit: 5 }) // Build context const context = results.results.map(r => r.content).join('\n') // Send to LLM with context const messages = [ { role: 'system', content: `Relevant context:\n${context}` }, { role: 'user', content: userMessage } ] // Store the conversation await client.memories.add({ content: `user: ${userMessage}\nassistant: ${response}`, containerTag: userId }) ``` ### PYTHON VERSION ```python from supermemory import Supermemory client = Supermemory() # With profiles (if they want it) profile_data = client.profile( container_tag=user_id, q=user_message # Include if OPTION A, omit if OPTION B ) context = f""" Static: {chr(10).join(profile_data.profile.static)} Dynamic: {chr(10).join(profile_data.profile.dynamic)} """ # Store conversation client.add(content=f"user: {user_message}\\nassistant: {response}", container_tag=user_id) ``` ### DIRECT API ```bash # Add memory curl -X POST https://api.supermemory.ai/v3/documents \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"content": "conversation", "containerTag": "userId"}' # Get profile curl -X POST https://api.supermemory.ai/v4/profile \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"containerTag": "userId", "q": "search query"}' # Search curl -X POST https://api.supermemory.ai/v4/search \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"q": "query", "containerTag": "userId", "searchMode": "hybrid"}' ``` ## STEP 6: FILE UPLOADS (if they need it) ```typescript // Files are automatically extracted (PDFs, images with OCR, videos with transcription) const formData = new FormData() formData.append('file', fileBlob) formData.append('containerTag', userId) await fetch('https://api.supermemory.ai/v3/documents/file', { method: 'POST', headers: { 'x-supermemory-api-key': process.env.SUPERMEMORY_API_KEY }, body: formData }) // Processing is async - check status before assuming searchable // GET /v3/documents/{documentId} ``` ## STEP 7: SEARCH MODES ```typescript // HYBRID (recommended) - searches memories + document chunks searchMode: 'hybrid' // MEMORIES ONLY - just extracted memories, no original text searchMode: 'memories' ``` ## STEP 8: METADATA FILTERS (if they need secondary filtering) ```typescript await client.search({ q: query, containerTag: userId, filters: { AND: [ { key: 'type', value: 'conversation', type: 'string_equal' }, { key: 'timestamp', value: '2024', type: 'string_contains' } ] } }) ``` ## KEY POINTS: 1. Configure settings FIRST with filterPrompt 2. User profiles = automatic facts about users (profile.static + profile.dynamic) 3. profile({ containerTag, q }) combines profile + search in ONE call 4. Search modes: 'hybrid' (recommended) or 'memories' 5. File extraction is automatic - no config needed 6. Store conversations after each interaction 7. containerTag should match what you put in filterPrompt ## TESTING: ```bash # 1. Configure settings curl -X PATCH https://api.supermemory.ai/v3/settings \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"shouldLLMFilter": true, "filterPrompt": "..."}' # 2. Add test memory curl -X POST https://api.supermemory.ai/v3/documents \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"content": "Test", "containerTag": "test_user"}' # 3. Get profile curl -X POST https://api.supermemory.ai/v4/profile \ -H "x-supermemory-api-key: $SUPERMEMORY_API_KEY" \ -d '{"containerTag": "test_user"}' ``` ## NOW: 1. Ask me the 5 questions above 2. Generate complete working code based on my answers 3. Include installation, settings config, and full integration **DOCS:** https://supermemory.ai/docs