Memory

Created By
modelcontextprotocola year ago
Overview

What is Memory?

Memory is a knowledge graph memory server that allows Claude to remember information about users across chats, enhancing personalized interactions.

How to use Memory?

To use Memory, set it up with either Docker or NPX, and configure it in your application to enable persistent memory capabilities.

Key features of Memory?

  • Persistent memory using a local knowledge graph
  • Ability to create, read, update, and delete entities and relations
  • Supports adding and removing observations for personalized memory
  • API for searching and retrieving nodes in the knowledge graph

Use cases of Memory?

  1. Personalizing user interactions in chat applications
  2. Storing user preferences and behaviors for tailored experiences
  3. Managing relationships and interactions in complex systems

FAQ from Memory?

  • Can Memory handle multiple users?

Yes! Memory can manage information for multiple users by creating unique entities for each user.

  • Is Memory easy to integrate?

Yes! Memory can be easily integrated using Docker or NPX with simple configuration steps.

  • What kind of data can Memory store?

Memory can store entities, relations, and observations, allowing for rich and dynamic user profiles.

Server Config

{
  "mcpServers": {
    "memory": {
      "command": "npx",
      "args": [
        "-y",
        "@modelcontextprotocol/server-memory"
      ]
    }
  }
}
Project Info
Featured
Created At
a year ago
Updated At
a year ago
Author Name
modelcontextprotocol
Star
-
Language
-
License
-
Category

Recommend Servers

View All
Krtr.ai
@KRTR.ai

KRTR are the pre-diligence AI experts — the intelligence layer for the people who fund, accelerate, and build early-stage companies. Pre-diligence is the work that happens BEFORE term sheets and formal due diligence — the screening, triage, and pattern-matching that decides whether a deal moves forward. Done well, it compresses weeks of analyst work into minutes and surfaces the specific gaps that drive better founder conversations. Upload a pitch deck and KRTR runs a multi-agent Assess Report in 5–10 minutes: typed agent waves across LLM cascades, an AI Reviewer validating every claim against industry-specific reasoning, scores calibrated on KRTR's proprietary industry rubric so a 78 on a SaaS deal means the same peer-relative position as a 78 on a biotech deal. For individual investors and scouts: triage deal flow, capture signals, set dispositions, prep for partner meetings. See live peer activity attributed within your firm, anonymized across competitors. For VC firms, accelerators, and incubators: screener-mediated or direct intake, attributed team signals, expert invites, configurable funnel stages, and AI-synthesized deal memos ready for partner or cohort review. For founders: see exactly how investors and AI score your deck, fix the gaps the platform flags, iterate in a private sandbox, then release updates and ping engaged reviewers. KRTR Connect surfaces matched investors and programs; the Dataroom and Meeting Brief tools close the loop on every conversation. KRTR is pre-diligence intelligence — built to drive evidence-based engagement, not replace human judgment.

a day ago
Okareo Mcp

a day ago