Memstate MCP
Provides versioned, structured memory for AI agents, allowing them to store facts, detect conflicts, and track knowledge history via a hosted SaaS platform. It enables efficient hierarchical information retrieval and semantic search while keeping token usage constant as memory scales.
README
Memstate AI - MCP
Versioned memory for AI agents. Store facts, detect conflicts, and track how decisions change over time — exposed as a hosted MCP server.
Why Memstate?
| RAG (most other memory systems) | Memstate AI | |
|---|---|---|
| Token usage per conversation | ~7,500 | ~1,500 |
| Agent visibility | Black box | Full transparency |
| Memory versioning | None | Full history |
| Token growth as memories scale | O(n) | O(1) |
| Infrastructure required | Yes | None — hosted SaaS |
Other memory systems dump everything into your context window and hope for the best. Memstate gives your agent a structured, versioned knowledge base it navigates precisely — load only what you need, know what changed, know when facts conflict.
Quick Start
Get your API key at memstate.ai/dashboard, then add to your MCP client config:
{
"mcpServers": {
"memstate": {
"command": "npx",
"args": ["-y", "@memstate/mcp"],
"env": {
"MEMSTATE_API_KEY": "YOUR_API_KEY_HERE"
}
}
}
}
No Docker. No database. No infrastructure. Running in 60 seconds.
Client Setup
Claude Desktop
Config location:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"memstate": {
"command": "npx",
"args": ["-y", "@memstate/mcp"],
"env": { "MEMSTATE_API_KEY": "YOUR_API_KEY_HERE" }
}
}
}
Claude Code
claude mcp add memstate npx @memstate/mcp -e MEMSTATE_API_KEY=YOUR_API_KEY_HERE
Cursor
In Cursor Settings → MCP → Add Server — same JSON format as Claude Desktop above.
Cline / Windsurf / Kilo Code / Roo Code
All support the same stdio MCP config format. Add to your client's MCP settings file.
Core Tools
| Tool | When to use |
|---|---|
memstate_remember |
Store markdown, task summaries, decisions. Server extracts keypaths and detects conflicts automatically. Use for most writes. |
memstate_set |
Set a single keypath to a short value (e.g. config.port = 8080). Not for prose. |
memstate_get |
Browse all memories for a project or subtree. Use at the start of every task. |
memstate_search |
Semantic search by meaning when you don't know the exact keypath. |
memstate_history |
See how a piece of knowledge changed over time — full version chain. |
memstate_delete |
Soft-delete a keypath. Creates a tombstone; full history is preserved. |
memstate_delete_project |
Soft-delete an entire project and all its memories. |
How keypaths work
Memories are organized in hierarchical dot-notation:
project.myapp.database.schema
project.myapp.auth.provider
project.myapp.deploy.environment
Keypaths are auto-prefixed: keypath="database" with project_id="myapp" → project.myapp.database. Your agent can drill into exactly what it needs — no full-context dumps.
How It Works
Agent: memstate_remember(project_id="myapp", content="## Auth\nUsing SuperTokens...")
↓
Server extracts keypaths: [project.myapp.auth.provider, ...]
↓
Conflict detection: compare against existing memories at those keypaths
↓
New version stored — old version preserved in history chain
↓
Next session: memstate_get(project_id="myapp") → structured summaries only
↓
Agent drills into project.myapp.auth only when it needs auth details
Token cost stays constant regardless of how many total memories exist.
Add to Your Agent Instructions
Copy into your AGENTS.md or system prompt:
## Memory (Memstate MCP)
### Before each task
- memstate_get(project_id="myproject") — browse existing knowledge
- memstate_search(query="topic", project_id="myproject") — find by meaning
### After each task
- memstate_remember(project_id="myproject", content="## Summary\n- ...", source="agent")
### Tool guide
- memstate_remember — markdown summaries, decisions, task results (preferred)
- memstate_set — single short values only (config flags, status)
- memstate_get — browse/retrieve before tasks
- memstate_search — semantic lookup when keypath unknown
- memstate_history — audit how knowledge evolved
- memstate_delete — remove outdated memories (history preserved)
Environment Variables
| Variable | Default | Description |
|---|---|---|
MEMSTATE_API_KEY |
(required) | API key from memstate.ai/dashboard |
MEMSTATE_MCP_URL |
https://mcp.memstate.ai |
Override for self-hosted deployments |
Verify Your Connection
MEMSTATE_API_KEY=your_key npx @memstate/mcp --test
Prints all available tools and confirms your API key works.
Built for AI agents that deserve to know what they know.
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