Machine Readiness
Stored receipt and evidence
20
65
0
0
0
Samples
No stored offer samples.
Samples
No stored action samples.
Samples
No stored product samples.
Document
User-agent: * Allow: / Sitemap: https://mem0.ai/sitemap.xml
Document
# 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-commerceDocument
Not stored for this site.