Top SitesMem0 - The Memory Layer for your AI Apps

Machine Readiness

Stored receipt and evidence

Overall

20

Readable

65

Callable

0

Commerce

0

Payment

0

Machine Access

Inspect the site's MCP endpoint

Open MCP explorer

DialtoneApp can scan the stored discovery files for this domain, try the MCP initialize handshake, and show the raw protocol transcript.

Purchase boundary

read only

Control boundary

unknown

Payment rails

None

Payment providers

None

Payment methods

None

Payment protocols

None

Payment assets

None

Payment networks

None

Capabilities

None

Verified payment surface

No

Crypto only

No

Readable docs

robots, llms

Products

0

Variants

0

Priced variants

0

Currencies

0

Offers

0

Priced offers

0

Priced actions

0

Samples

Offer samples

No stored offer samples.

Samples

Action samples

No stored action samples.

Samples

Product samples

No stored product samples.

Document

robots.txt

Open robots.txt
User-agent: *
Allow: /

Sitemap: https://mem0.ai/sitemap.xml

Document

llms.txt

Open llms.txt
# Mem0 – The Memory Layer for AI Apps

## About
Mem0 is a universal, self-improving AI memory layer for LLM applications. It powers personalized AI experiences that cut costs and enhance user delight. Backed by Y Combinator and Basis Set Ventures ($24M funding). Used by 100,000+ developers.

Tagline: "AI Agents Forget. Mem0 Remembers."

Website: https://mem0.ai
Docs: https://docs.mem0.ai
GitHub Stars: 50,000+

## What Mem0 Does
Mem0 provides a scalable, persistent memory infrastructure for AI agents and LLM applications. It dynamically extracts, consolidates, and retrieves important information from conversations across sessions, users, and channels — enabling truly personalized AI experiences.

An enhanced variant, Mem0ᵍ, layers in a graph-based memory store to capture richer, multi-session relationships.

## Research & Performance (ECAI Accepted)
Paper: "Mem0: Building Production-Ready AI Agents with Scalable Long-Term Memory"
Benchmark: LOCOMO

Results vs. leading memory approaches:
- 26% higher response accuracy compared to OpenAI's memory
- 91% lower p95 latency compared to full-context method
- 90% fewer tokens used, making memory affordable at scale

Read the paper: https://mem0.ai/research

## Use Cases

### Customer Support
URL: https://mem0.ai/usecase/customer-support
Summary: Give AI support agents full issue history and cross-channel context so they resolve tickets faster without making customers repeat themselves.

Problems solved:
- Customers repeat themselves across sessions
- Context lost between chat, email, and phone
- Recurring issues go undetected

Key features:
- Full issue history across conversations
- Early pattern detection across users
- Seamless multi-channel context (chat, email, phone)

---

### Healthcare
URL: https://mem0.ai/usecase/healthcare
Summary: Let healthcare AI agents remember patient history, treatment plans, and therapy progress to deliver more consistent, personalized care.

Problems solved:
- Patients re-explain medical history every session
- Agents forget treatment plans, making chronic care unreliable
- Therapy and recovery sessions don't build on prior conversations

Key features:
- Remembers conditions, allergies, medications, and preferences
- Tracks and follows ongoing treatment plans across visits
- Supports consistent mental health conversations over time

---

### Education
URL: https://mem0.ai/usecase/education
Summary: Enable AI tutors to track student progress, adapt to learning styles, and provide personalized content paths over time.

Problems solved:
- One-size-fits-all content that ignores individual pace or style
- Each session starts fresh with no continuity
- Generic feedback that ignores past performance

Key features:
- Tracks pace, learning style, strengths, and struggles
- Recommends personalized content paths based on progress
- Provides context-aware feedback reflecting the student's journey

---

### Sales & CRM
URL: https://mem0.ai/usecase/sales
Summary: Help AI sales agents remember every lead touchpoint, so follow-ups are smarter and team handoffs are seamless.

Problems solved:
- Past objections and milestones lost in long sales cycles
- New reps lack client history during handoffs
- Leads go stale when signals are forgotten

Key features:
- Persistent lead context across all touchpoints
- Suggests smarter follow-ups based on past conversations
- Shares full client history across teams

---

### E-Commerce
URL: https://mem0.ai/usecase/e-commerce
Summary: Power personalized shopping experiences that remember preferences, recover abandoned carts, and deliver relevant recommendations.

Problems solved:
- Every visit feels new with no memory of past behavior
- Abandoned carts with no session continuity
- Flat, irrelevant product recommendations

Key features:
- Personalized product discovery (taste, size, intent, price range)
- Cart and search recall across visits and devices
- Smarter upsells and bundles based on real customer intent

---

## Pricing
URL: https://mem0.ai/pricing

### Hobby – Free
- 10,000 memories
- Unlimited end users
- 1,000 retrieval API calls/month
- Community support

### Starter – $19/month
- 50,000 memories
- Unlimited end users
- 5,000 retrieval API calls/month
- Community support

### Pro – $249/month
- Unlimited memories
- Unlimited end users
- 50,000 retrieval API calls/month
- Private Slack channel
- Graph Memory
- Advanced Analytics
- Multiple projects support

### Enterprise – Flexible Pricing
- Unlimited memories, users, and API calls
- Private Slack channel
- Graph Memory & Advanced Analytics
- On-premises deployment
- SSO & Audit Logs
- Custom integrations
- SLA

Usage-based pricing also available. Contact: https://mem0.ai/pricing

---

## Startup Program
URL: https://mem0.ai/startup-program

Mem0 offers 3 months of free access to the Pro plan ($1,000+ value) for early-stage startups.

Benefits:
- Free Pro plan access for 3 months
- Priority support
- Direct collaboration via private Slack with the Mem0 founding team
- Valid for new users only

Apply at: https://mem0.ai/startup-program

---

## Careers
URL: https://mem0.ai/careers

Mem0 is hiring in San Francisco. The team is backed by Y Combinator and top-tier investors.

Mission: Make AI agents more personalized.
Quote from Paul Graham (YC co-founder): "This is a startup that's likely to succeed."

Team values:
- Customer Obsessed – every decision starts with the customer
- Shipping Oriented – action over planning, fast iteration
- Open Communication – honest feedback, moving fast together
- Having Fun – celebrating wins and enjoying the process

Open roles include: Applied AI Engineer (San Francisco)
View positions: https://mem0.ai/careers

---

## Company Highlights
- Backed by: Y Combinator, Basis Set Ventures
- Funding: $24M
- GitHub Stars: 50,000+
- Developer community: 100,000+
- Notable customers: Sunflower Sober (80,000+ users), OpenNote (40% token cost reduction)

## Developer Documentation

- Docs home: https://docs.mem0.ai
- Agent-ready docs index (scope-tagged, Platform-first): https://docs.mem0.ai/llms.txt
- Full documentation as a single file (agent-friendly dump): https://docs.mem0.ai/llms-full.txt
- OpenAPI 3 spec (Platform REST API): https://docs.mem0.ai/openapi.json
- Platform quickstart: https://docs.mem0.ai/platform/quickstart
- Open-source Python quickstart: https://docs.mem0.ai/open-source/python-quickstart
- Open-source Node quickstart: https://docs.mem0.ai/open-source/node-quickstart
- Source repo (Apache-2.0): https://github.com/mem0ai/mem0

## Developer Tools

### SDKs
- Python SDK (`mem0ai` on PyPI): https://pypi.org/project/mem0ai/
- TypeScript / JavaScript SDK (`mem0ai` on npm): https://www.npmjs.com/package/mem0ai
- Vercel AI SDK provider (`@mem0/vercel-ai-provider`): https://www.npmjs.com/package/@mem0/vercel-ai-provider

### CLIs
- Python CLI (`mem0-cli`): https://pypi.org/project/mem0-cli/
- Node CLI (`@mem0/cli`): https://www.npmjs.com/package/@mem0/cli

### MCP (Model Context Protocol)
- Hosted MCP server endpoint: https://mcp.mem0.ai (requires a Mem0 Platform API key)
- MCP setup guide: https://docs.mem0.ai/platform/mem0-mcp
- Editor / agent integrations (Claude Code, Cursor, Codex, OpenClaw, and more): https://docs.mem0.ai/integrations

### Dashboard
- Create API keys, manage projects, view memories: https://app.mem0.ai

## Quick Install

### Python

    pip install mem0ai          # SDK (Platform + self-hosted)
    pip install mem0-cli        # CLI

Minimal Platform usage:

    from mem0 import MemoryClient
    client = MemoryClient(api_key="YOUR_API_KEY")
    client.add(
        [{"role": "user", "content": "I prefer aisle seats"}],
        user_id="alice",
    )
    client.search("seat preference?", user_id="alice")

Minimal self-hosted usage:

    from mem0 import Memory
    m = Memory()   # needs OPENAI_API_KEY by default
    m.add("I prefer aisle seats", user_id="alice")

### TypeScript / JavaScript

    npm install mem0ai                     # SDK (Platform + self-hosted)
    npm install -g @mem0/cli               # CLI
    npm install @mem0/vercel-ai-provider   # Vercel AI SDK integration

Minimal Platform usage:

    import MemoryClient from "mem0ai";
    const client = new MemoryClient({ apiKey: "YOUR_API_KEY" });
    await client.add(
      [{ role: "user", content: "I prefer aisle seats" }],
      { user_id: "alice" },
    );

Minimal self-hosted usage:

    import { Memory } from "mem0ai/oss";
    const memory = new Memory();
    await memory.add("I prefer aisle seats", { userId: "alice" });

### Docker (self-hosted server)

    git clone https://github.com/mem0ai/mem0.git
    cd mem0/server && docker-compose up
    # mem0 API: http://localhost:8888 (FastAPI + PostgreSQL/pgvector + Neo4j)

### AI Editors (MCP)

Claude Code, Cursor, Codex, and any MCP-aware tool: point the client at `https://mcp.mem0.ai` with a Platform API key. 
Setup guide: https://docs.mem0.ai/platform/mem0-mcp


## Key Links
- Homepage: https://mem0.ai
- Pricing: https://mem0.ai/pricing
- Research: https://mem0.ai/research
- Startup Program: https://mem0.ai/startup-program
- Careers: https://mem0.ai/careers
- Customer Support use case: https://mem0.ai/usecase/customer-support
- Healthcare use case: https://mem0.ai/usecase/healthcare
- Education use case: https://mem0.ai/usecase/education
- Sales use case: https://mem0.ai/usecase/sales
- E-Commerce use case: https://mem0.ai/usecase/e-commerce

Document

llms-full.txt

Not stored for this site.