@supermemory/tools
Memory tools for AI SDK and OpenAI function calling with supermemory.
This package provides supermemory tools for both AI SDK and OpenAI function calling through dedicated submodule exports, each with function-based architectures optimized for their respective use cases.
Installation
npm install @supermemory/tools
Usage
The package provides two submodule imports:
@supermemory/tools/ai-sdk - For use with the AI SDK framework (includes withSupermemory middleware)
@supermemory/tools/openai - For use with OpenAI SDK (includes withSupermemory middleware and function calling tools)
AI SDK Usage
import { supermemoryTools, searchMemoriesTool, addMemoryTool } from "@supermemory/tools/ai-sdk"
import { createOpenAI } from "@ai-sdk/openai"
import { generateText } from "ai"
const openai = createOpenAI({
apiKey: process.env.OPENAI_API_KEY!,
})
const tools = supermemoryTools(process.env.SUPERMEMORY_API_KEY!, {
containerTags: ["your-user-id"],
})
const result = await generateText({
model: openai("gpt-5"),
messages: [
{
role: "user",
content: "What do you remember about my preferences?",
},
],
tools,
})
const searchTool = searchMemoriesTool(process.env.SUPERMEMORY_API_KEY!, {
projectId: "your-project-id",
})
const addTool = addMemoryTool(process.env.SUPERMEMORY_API_KEY!, {
projectId: "your-project-id",
})
AI SDK Middleware with Supermemory
withSupermemory will take advantage supermemory profile v4 endpoint personalized based on container tag
- You can provide the Supermemory API key via the
apiKey option to withSupermemory (recommended for browser usage), or fall back to SUPERMEMORY_API_KEY in the environment for server usage.
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithMemory = withSupermemory(openai("gpt-5"), "user_id_life")
const result = await generateText({
model: modelWithMemory,
messages: [{ role: "user", content: "where do i live?" }],
})
console.log(result.text)
Conversation Grouping
Use the conversationId option to group messages into a single document for contextual memory generation:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithMemory = withSupermemory(openai("gpt-5"), "user_id_life", {
conversationId: "conversation-456"
})
const result = await generateText({
model: modelWithMemory,
messages: [{ role: "user", content: "where do i live?" }],
})
console.log(result.text)
Verbose Mode
Enable verbose logging to see detailed information about memory search and transformation:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithMemory = withSupermemory(openai("gpt-5"), "user_id_life", {
verbose: true
})
const result = await generateText({
model: modelWithMemory,
messages: [{ role: "user", content: "where do i live?" }],
})
console.log(result.text)
When verbose mode is enabled, you'll see console output like:
[supermemory] Searching memories for container: user_id_life
[supermemory] User message: where do i live?
[supermemory] System prompt exists: false
[supermemory] Found 3 memories
[supermemory] Memory content: You live in San Francisco, California. Your address is 123 Main Street...
[supermemory] Creating new system prompt with memories
Memory Search Modes
The middleware supports different modes for memory retrieval:
Profile Mode (Default) - Retrieves user profile memories without query filtering:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithMemory = withSupermemory(openai("gpt-4"), "user-123")
const modelWithProfile = withSupermemory(openai("gpt-4"), "user-123", {
mode: "profile"
})
const result = await generateText({
model: modelWithMemory,
messages: [{ role: "user", content: "What do you know about me?" }],
})
Query Mode - Searches memories based on the user's message:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithQuery = withSupermemory(openai("gpt-4"), "user-123", {
mode: "query"
})
const result = await generateText({
model: modelWithQuery,
messages: [{ role: "user", content: "What's my favorite programming language?" }],
})
Full Mode - Combines both profile and query results:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithFull = withSupermemory(openai("gpt-4"), "user-123", {
mode: "full"
})
const result = await generateText({
model: modelWithFull,
messages: [{ role: "user", content: "Tell me about my preferences" }],
})
Automatic Memory Capture
The middleware can automatically save user messages as memories:
Always Save Memories - Automatically stores every user message as a memory:
import { generateText } from "ai"
import { withSupermemory } from "@supermemory/tools/ai-sdk"
import { openai } from "@ai-sdk/openai"
const modelWithAutoSave = withSupermemory(openai("gpt-4"), "user-123", {
addMemory: "always"
})
const result = await generateText({
model: modelWithAutoSave,
messages: [{ role: "user", content: "I prefer React with TypeScript for my projects" }],
})
Never Save Memories (Default) - Only retrieves memories without storing new ones:
const modelWithNoSave = withSupermemory(openai("gpt-4"), "user-123")
Combined Options - Use verbose logging with specific modes and memory storage:
const modelWithOptions = withSupermemory(openai("gpt-4"), "user-123", {
mode: "profile",
addMemory: "always",
verbose: true
})
OpenAI SDK Usage
OpenAI Middleware with Supermemory
The withSupermemory function creates an OpenAI client with SuperMemory middleware automatically injected:
import { withSupermemory } from "@supermemory/tools/openai"
const openaiWithSupermemory = withSupermemory("user-123", {
conversationId: "conversation-456",
mode: "full",
addMemory: "always",
verbose: true,
})
const completion = await openaiWithSupermemory.chat.completions.create({
model: "gpt-4o-mini",
messages: [
{ role: "user", content: "What do you remember about my preferences?" }
],
})
console.log(completion.choices[0]?.message?.content)
OpenAI Middleware Options
The middleware supports the same configuration options as the AI SDK version:
const openaiWithSupermemory = withSupermemory("user-123", {
conversationId: "conversation-456",
mode: "full",
addMemory: "always",
verbose: true,
})
Advanced Usage with Custom OpenAI Options
You can also pass custom OpenAI client options:
import { withSupermemory } from "@supermemory/tools/openai"
const openaiWithSupermemory = withSupermemory(
"user-123",
{
mode: "profile",
addMemory: "always",
},
{
baseURL: "https://api.openai.com/v1",
organization: "org-123",
},
"custom-api-key"
)
const completion = await openaiWithSupermemory.chat.completions.create({
model: "gpt-4o-mini",
messages: [{ role: "user", content: "Tell me about my preferences" }],
})
Next.js API Route Example
Here's a complete example for a Next.js API route:
import { withSupermemory } from "@supermemory/tools/openai"
import type { OpenAI as OpenAIType } from "openai"
export async function POST(req: Request) {
const { messages, conversationId } = (await req.json()) as {
messages: OpenAIType.Chat.Completions.ChatCompletionMessageParam[]
conversationId: string
}
const openaiWithSupermemory = withSupermemory("user-123", {
conversationId,
mode: "full",
addMemory: "always",
verbose: true,
})
const completion = await openaiWithSupermemory.chat.completions.create({
model: "gpt-4o-mini",
messages,
})
const message = completion.choices?.[0]?.message
return Response.json({ message, usage: completion.usage })
}
OpenAI Function Calling Usage
import { supermemoryTools, getToolDefinitions, createToolCallExecutor } from "@supermemory/tools/openai"
import OpenAI from "openai"
const client = new OpenAI({
apiKey: process.env.OPENAI_API_KEY!,
})
const toolDefinitions = getToolDefinitions()
const executeToolCall = createToolCallExecutor(process.env.SUPERMEMORY_API_KEY!, {
projectId: "your-project-id",
})
const completion = await client.chat.completions.create({
model: "gpt-5",
messages: [
{
role: "user",
content: "What do you remember about my preferences?",
},
],
tools: toolDefinitions,
})
if (completion.choices[0]?.message.tool_calls) {
for (const toolCall of completion.choices[0].message.tool_calls) {
const result = await executeToolCall(toolCall)
console.log(result)
}
}
const tools = supermemoryTools(process.env.SUPERMEMORY_API_KEY!, {
containerTags: ["your-user-id"],
})
const searchResult = await tools.searchMemories({
informationToGet: "user preferences",
limit: 10,
})
const addResult = await tools.addMemory({
memory: "User prefers dark roast coffee",
})
Configuration
Both modules accept the same configuration interface:
interface SupermemoryToolsConfig {
baseUrl?: string
containerTags?: string[]
projectId?: string
}
- baseUrl: Custom base URL for the supermemory API
- containerTags: Array of custom container tags (mutually exclusive with projectId)
- projectId: Project ID which gets converted to container tag format (mutually exclusive with containerTags)
withSupermemory Middleware Options
The withSupermemory middleware accepts additional configuration options:
interface WithSupermemoryOptions {
conversationId?: string
verbose?: boolean
mode?: "profile" | "query" | "full"
addMemory?: "always" | "never"
apiKey?: string
}
- conversationId: Optional conversation ID to group messages into a single document for contextual memory generation
- verbose: Enable detailed logging of memory search and injection process (default: false)
- mode: Memory search mode - "profile" (default), "query", or "full"
- addMemory: Automatic memory storage mode - "always" or "never" (default: "never")
Available Tools
Search Memories
Searches through stored memories based on a query string.
Parameters:
informationToGet (string): Terms to search for
includeFullDocs (boolean, optional): Whether to include full document content (default: true)
limit (number, optional): Maximum number of results (default: 10)
Add Memory
Adds a new memory to the system.
Parameters:
memory (string): The content to remember
Claude Memory Tool
Enable Claude to store and retrieve persistent memory across conversations using supermemory as the backend.
Installation
npm install @supermemory/tools @anthropic-ai/sdk
Basic Usage
import Anthropic from '@anthropic-ai/sdk'
import { createClaudeMemoryTool } from '@supermemory/tools/claude-memory'
const anthropic = new Anthropic({
apiKey: process.env.ANTHROPIC_API_KEY!,
})
const memoryTool = createClaudeMemoryTool(process.env.SUPERMEMORY_API_KEY!, {
projectId: 'my-app',
})
async function chatWithMemory(userMessage: string) {
const response = await anthropic.beta.messages.create({
model: 'claude-sonnet-4-5',
max_tokens: 2048,
messages: [{ role: 'user', content: userMessage }],
tools: [{ type: 'memory_20250818', name: 'memory' }],
betas: ['context-management-2025-06-27'],
})
const toolResults = []
for (const block of response.content) {
if (block.type === 'tool_use' && block.name === 'memory') {
const toolResult = await memoryTool.handleCommandForToolResult(
block.input,
block.id
)
toolResults.push(toolResult)
}
}
return response
}
const response = await chatWithMemory(
"Remember that I prefer React with TypeScript for my projects"
)
Memory Operations
Claude can perform these memory operations automatically:
view - List memory directory contents or read specific files
create - Create new memory files with content
str_replace - Find and replace text within memory files
insert - Insert text at specific line numbers
delete - Delete memory files
rename - Rename or move memory files
All memory files are stored in supermemory with normalized paths and can be searched and retrieved across conversations.
Environment Variables
SUPERMEMORY_API_KEY=your_supermemory_api_key
ANTHROPIC_API_KEY=your_anthropic_api_key # for Claude Memory Tool
SUPERMEMORY_BASE_URL=https://your-custom-url # optional