mcp-prose-memory
Persistent memory server for MCP clients that stores structured facts as JSON across sessions, enabling atomic add, remove, replace, and view operations.
README
mcp-prose-memory
Persistent memory for MCP clients.
mcp-prose-memory gives an agent a small, durable place to keep facts across sessions. It stores memory as JSON, keeps facts grouped by section, and exposes one tool for careful add, remove, replace, and view operations.
It is built for memory that should survive restarts without becoming a loose text file that slowly drifts out of shape.
Docs · Changelog · Contributing · Security
Features
- JSON memory storage with a stable schema
- Compact structured facts with optional
key,value,source, andconfidence - Atomic writes through temp-file replacement
- Atomic fact operations: add, remove, replace, view
- Sectioned context organization for general clients and local assistant memory
- Case-insensitive duplicate detection
- Strict line-number validation for remove and replace
- Automatic normalization for older or partial JSON documents
- Compact
memory_contextoutput with section and character-budget filters - Limits: 30 facts per section, 300 characters per fact, 80 characters per structured key
- Configurable storage path via environment variable
Installation
Full setup guide: Docs.
Runtime: Node >= 18.
npm install -g mcp-prose-memory
Or run with npx:
npx mcp-prose-memory
Configuration
Configuration reference: Docs.
Default storage is ~/.mcp-prose-memory/memory.json. Override it with MEMORY_PATH.
If you used an older release with a client-specific default memory location, either move that JSON file to the new default path or set MEMORY_PATH to the existing file.
Desktop Client
Add a server entry like this to your MCP client config:
{
"mcpServers": {
"memory": {
"command": "npx",
"args": ["mcp-prose-memory"]
}
}
}
CLI Client
Add a server entry like this to your CLI MCP config:
{
"mcpServers": {
"memory": {
"command": "npx",
"args": ["mcp-prose-memory"]
}
}
}
Custom Memory Location
{
"mcpServers": {
"memory": {
"command": "npx",
"args": ["mcp-prose-memory"],
"env": {
"MEMORY_PATH": "/path/to/your/memory.json"
}
}
}
}
Memory File
The memory file is JSON with arrays of facts per section:
{
"version": 5,
"updated": "2025-01-15T10:30:00.000Z",
"sections": {
"work": ["Fact 1", "Fact 2"],
"personal": ["Lives in Berlin", "Prefers dark mode"],
"top_of_mind": [],
"history": ["Completed project X"],
"instructions": ["Be concise"],
"user_preferences": [
{
"key": "answer_style",
"value": "Prefers concise answers",
"confidence": "high",
"source": "user_explicit",
"createdAt": "2025-01-15T10:30:00.000Z",
"updatedAt": "2025-01-15T10:30:00.000Z"
}
]
}
}
If the file does not exist, the server starts with an empty document. If the file is invalid JSON, the server fails the operation instead of wiping memory.
Tools
Tools reference: Docs.
memory
Single tool for all memory operations. The command parameter selects the action.
Commands:
view
Show all memories or filter by section.
{"command": "view"}
{"command": "view", "section": "work"}
add
Add a fact to a section.
{"command": "add", "section": "personal", "fact": "Lives in Berlin"}
Structured compact facts are also supported:
{"command": "add", "section": "user_preferences", "key": "answer_style", "value": "Prefers concise answers"}
upsert
Add a structured fact or replace the existing fact with the same key.
{"command": "upsert", "section": "user_preferences", "key": "answer_style", "value": "Prefers concise and direct answers"}
remove
Remove a fact by line number.
{"command": "remove", "section": "work", "line": 3}
replace
Update a fact by line number.
{"command": "replace", "section": "top_of_mind", "line": 1, "fact": "Working on new project"}
memory_context
Returns memory for session initialization. Clients can request compact bounded context.
{}
{"format": "compact", "sections": ["user_profile", "user_preferences"], "maxChars": 1500}
Sections
| Section | Purpose |
|---|---|
work |
Professional context, projects, colleagues, tools |
personal |
Location, preferences, interests, personal facts |
top_of_mind |
Current focus, active tasks |
history |
Past events, completed work |
instructions |
Standing rules, behavioral preferences |
user_profile |
Stable user profile facts |
user_preferences |
Durable preferences |
eyra_project |
Eyra-specific product and architecture facts |
devices_environment |
Durable local environment facts |
workflows |
Repeated workflow preferences |
writing_style |
Writing and tone preferences |
long_term_tasks |
Durable task context |
do_not_forget |
Explicitly requested durable reminders |
Development
git clone https://github.com/gabrimatic/mcp-prose-memory.git
cd mcp-prose-memory
npm ci
npm test
npm run check
npm test builds the TypeScript source and runs store-level plus real MCP stdio smoke tests. npm run check also runs a production dependency audit and verifies the npm package contents with npm pack --dry-run.
prepublishOnly runs the same check before publishing.
Project Support
- Changes: CHANGELOG.md
- Contributions: CONTRIBUTING.md
- Security reports: SECURITY.md
- Issues: GitHub Issues
Developer
By Soroush
License
MIT
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