Agent skill
mem0-vercel-ai-sdk
Mem0 provider for Vercel AI SDK (@mem0/vercel-ai-provider). TRIGGER when: user mentions "vercel ai sdk", "@mem0/vercel-ai-provider", "createMem0", "retrieveMemories", "addMemories", "getMemories", "searchMemories", "mem0 vercel", "AI SDK provider", "AI SDK memory", or is using generateText/streamText with mem0. Also triggers for Next.js apps needing memory-augmented AI. DO NOT TRIGGER when: user asks about direct Python/TS SDK calls without Vercel (use mem0 skill), or CLI terminal commands (use mem0-cli skill).
Install this agent skill to your Project
npx add-skill https://github.com/mem0ai/mem0/tree/main/skills/mem0-vercel-ai-sdk
Metadata
Additional technical details for this skill
- tags
- vercel, ai-sdk, memory, nextjs, typescript, provider
- author
- mem0ai
- version
- 1.0.0
- category
- ai-memory
SKILL.md
Mem0 Vercel AI SDK Provider
Memory-enhanced AI provider for Vercel AI SDK. Automatically retrieves and stores memories during LLM calls.
Step 1: Install
npm install @mem0/vercel-ai-provider ai
Step 2: Set up environment variables
export MEM0_API_KEY="m0-xxx"
export OPENAI_API_KEY="sk-xxx" # or ANTHROPIC_API_KEY, GOOGLE_API_KEY, etc.
Get a Mem0 API key at: https://app.mem0.ai/dashboard/api-keys
Pattern 1: Wrapped Model
The wrapped model approach is the simplest. createMem0 returns a provider that wraps any supported LLM with automatic memory retrieval and storage.
import { generateText } from "ai";
import { createMem0 } from "@mem0/vercel-ai-provider";
const mem0 = createMem0();
const { text } = await generateText({
model: mem0("gpt-4-turbo", { user_id: "alice" }),
prompt: "Recommend a restaurant",
});
What happens under the hood:
- The prompt is sent to Mem0 search (
POST /v2/memories/search/) to retrieve relevant memories - Retrieved memories are injected as a system message at the start of the prompt
- The underlying LLM (e.g., OpenAI gpt-4-turbo) generates a response using the enriched prompt
- The conversation is stored back to Mem0 (
POST /v1/memories/) as a fire-and-forget async call (no await)
Pattern 2: Standalone Utilities
Use standalone utilities when you want full control over the memory retrieve/store cycle, or you want to use a provider that is already configured separately.
import { openai } from "@ai-sdk/openai";
import { generateText } from "ai";
import { retrieveMemories, addMemories } from "@mem0/vercel-ai-provider";
const prompt = "Recommend a restaurant";
// Retrieve memories -- returns a formatted system prompt string
const memories = await retrieveMemories(prompt, {
user_id: "alice",
mem0ApiKey: "m0-xxx",
});
// Generate using any provider with injected memories
const { text } = await generateText({
model: openai("gpt-4-turbo"),
prompt,
system: memories,
});
// Optionally store the conversation back
await addMemories(
[
{ role: "user", content: [{ type: "text", text: prompt }] },
{ role: "assistant", content: [{ type: "text", text }] },
],
{ user_id: "alice", mem0ApiKey: "m0-xxx" }
);
Pattern 3: Streaming
Use streamText for streaming responses with memory augmentation:
import { streamText } from "ai";
import { createMem0 } from "@mem0/vercel-ai-provider";
const mem0 = createMem0();
const result = streamText({
model: mem0("gpt-4-turbo", { user_id: "alice" }),
prompt: "What should I cook for dinner?",
});
for await (const chunk of result.textStream) {
process.stdout.write(chunk);
}
The wrapped model handles memory retrieval before streaming begins and stores the conversation after.
Supported Providers
| Provider | Config value | Required env var |
|---|---|---|
| OpenAI (default) | "openai" |
OPENAI_API_KEY |
| Anthropic | "anthropic" |
ANTHROPIC_API_KEY |
"google" |
GOOGLE_GENERATIVE_AI_API_KEY |
|
| Groq | "groq" |
GROQ_API_KEY |
| Cohere | "cohere" |
COHERE_API_KEY |
Select a provider when creating the Mem0 instance:
const mem0 = createMem0({ provider: "anthropic" });
const { text } = await generateText({
model: mem0("claude-sonnet-4-20250514", { user_id: "alice" }),
prompt: "Hello!",
});
How It Works Internally
Wrapped model flow
User prompt
--> searchInternalMemories (POST /v2/memories/search/)
--> memories injected as system message at start of prompt
--> underlying LLM generates response (doGenerate or doStream)
--> processMemories fires addMemories as fire-and-forget (no await)
--> response returned to caller
Standalone flow
User controls each step:
1. retrieveMemories / getMemories / searchMemories -> fetch memories
2. inject into system prompt manually
3. call generateText / streamText with any provider
4. addMemories -> store new conversation to Mem0
Key Differences Between the 4 Utility Functions
| Function | Returns | Use when |
|---|---|---|
retrieveMemories |
Formatted system prompt string | Injecting directly into system parameter |
getMemories |
Raw memory array (or full response if enable_graph) |
Processing memories programmatically |
searchMemories |
Full search response (results + relations) | Need relations, scores, metadata |
addMemories |
API response | Storing new messages to Mem0 |
All four accept LanguageModelV2Prompt | string as the first argument and optional Mem0ConfigSettings as the second.
Common Edge Cases and Tips
- Always provide
user_id(oragent_id/app_id/run_id) for consistent memory retrieval. Without an entity identifier, memories cannot be scoped. - Standalone utilities require explicit API key: pass
mem0ApiKeyin the config object, or set theMEM0_API_KEYenvironment variable. - Graph memories: set
enable_graph: truein the config to retrieve graph relations alongside text memories. When enabled,getMemoriesreturns the full response (withresultsandrelations), not just the array. - This uses Vercel AI SDK v5 (LanguageModelV2 / ProviderV2 interfaces). It is not compatible with AI SDK v3 or v4.
processMemoriesfiresaddMemoriesas fire-and-forget (.then()withoutawait). Memory storage happens asynchronously and does not block the LLM response.- The
"gemini"alias exists in the provider switch but is NOT in thesupportedProviderslist. Use"google"instead. - Custom host: set
hostin the config to point to a different Mem0 API endpoint (default:https://api.mem0.ai).
References
| Topic | File |
|---|---|
Provider API (createMem0, Mem0Provider, types) |
local / GitHub |
Memory utilities (addMemories, retrieveMemories, etc.) |
local / GitHub |
| Usage patterns and examples | local / GitHub |
Related Mem0 Skills
| Skill | When to use | Link |
|---|---|---|
| mem0 | Python/TypeScript SDK, REST API, framework integrations | local / GitHub |
| mem0-cli | Terminal commands, scripting, CI/CD, agent tool loops | local / GitHub |
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
memory-dream
Memory consolidation protocol. Reviews all stored memories, merges duplicates, removes noise and credentials, rewrites unclear entries, and enforces TTL expiration. Use when the user asks to clean up, consolidate, or review their memories. Also triggers automatically after sufficient activity (configurable).
memory-triage
Persistent long-term memory protocol powered by mem0. Evaluate conversations for durable facts worth storing via memory_add. Handles identity, preferences, decisions, configurations, rules, projects, and relationships. Loaded by the openclaw-mem0 plugin when skills mode is active.
mem0
Integrate Mem0 Platform into AI applications for persistent memory, personalization, and semantic search. Use this skill when the user mentions "mem0", "memory layer", "remember user preferences", "persistent context", "personalization", or needs to add long-term memory to chatbots, agents, or AI apps. Covers Python and TypeScript SDKs, framework integrations (LangChain, CrewAI, Vercel AI SDK, OpenAI Agents SDK, Pipecat), and the full Platform API. Use even when the user doesn't explicitly say "mem0" but describes needing conversation memory, user context retention, or knowledge retrieval across sessions.
mem0-codex
Mem0 persistent memory integration for Codex. Automatically retrieve relevant memories at the start of each task, store key learnings when tasks complete, and capture session state before context is lost. Use the mem0 MCP tools (add_memory, search_memories, get_memories, etc.) for all memory operations.
mem0
Mem0 Platform SDK for adding persistent memory to AI applications. TRIGGER when: user mentions "mem0", "MemoryClient", "memory layer", "remember user preferences", "persistent context", "personalization", or needs to add long-term memory to chatbots, agents, or AI apps. Covers Python SDK (mem0ai), TypeScript SDK (mem0ai), and framework integrations (LangChain, CrewAI, OpenAI Agents SDK, Pipecat, LlamaIndex, AutoGen, LangGraph). Also covers the open-source self-hosted Memory class. This is the DEFAULT mem0 skill for ambiguous queries. DO NOT TRIGGER when: user asks about CLI commands, terminal usage, or shell scripts (use mem0-cli), or Vercel AI SDK / @mem0/vercel-ai-provider / createMem0 (use mem0-vercel-ai-sdk).
mem0-cli
Mem0 CLI -- the command-line interface for mem0 memory operations. TRIGGER when: user mentions "mem0 cli", "mem0 command line", "@mem0/cli", "mem0-cli", "pip install mem0-cli", "npm install -g @mem0/cli", or is running mem0 commands in a terminal/shell (mem0 add, mem0 search, mem0 list, mem0 get, mem0 init, mem0 config, mem0 import). Also triggers when query includes CLI flags like --user-id, --output, --json, --agent, or describes bash/zsh/terminal/shell usage. DO NOT TRIGGER when: user asks about programmatic SDK integration in Python/TS code (use mem0 skill), or Vercel AI SDK provider (use mem0-vercel-ai-sdk skill).
Didn't find tool you were looking for?