Engram — AI 记忆印记。你的 AI 记忆,本地存储,跨工具共享。
Project description
Engram
A local memory layer for AI coding tools
Stop re-explaining yourself every time you switch tools, projects, or sessions.
Claude Code | Codex | Cursor | MCP compatible | 100% local
TL;DR: Engram is an MCP server that gives Claude Code, Codex, and Cursor a persistent identity layer — your profile, preferences, lessons learned, and key decisions stored as local JSON files. One write, every AI reads. 100% local, Apache 2.0.
AI coding tools are powerful, but they do not really know you.
Every time you switch from Claude Code to Codex, open Cursor, start a new session, or move into a different project, you often have to explain the same things again:
- how you prefer to communicate
- how the AI should approach code
- which project rules matter
- which mistakes should not happen again
- why earlier decisions were made
Engram stores that collaboration memory as local files, then exposes it through MCP so different AI tools can read the same user context.
The goal is simple: make every compatible AI tool start from the same understanding of you.
Why Engram?
| Without Engram | With Engram |
|---|---|
| Every new session starts from zero | AI tools can load your identity and preferences |
| Switching tools loses accumulated context | Claude Code, Codex, and Cursor can read the same memory |
| Project rules live in scattered prompts | Rules and decisions are stored as local assets |
| Past mistakes get repeated | Lessons learned can follow you across tools |
| Memory is locked inside one product | Data stays local, editable, and portable |
Engram is not another chat app, agent framework, or hosted memory service. It is a small local memory layer that sits underneath the tools you already use.
Unlike session-memory tools that remember what happened in a task, Engram stores who you are — your identity, preferences, lessons, and decisions — so every AI tool starts from the same understanding of you as a person.
What It Stores
Engram can store:
- identity and communication preferences
- coding style and quality standards
- trust boundaries for AI tools
- project snapshots
- lessons learned
- key technical or product decisions
- domain knowledge that should be reused later
All data is stored under ~/.engram/ as JSON and Markdown files. You can open, edit, back up, or migrate it yourself.
Quick Start
git clone https://github.com/Patdolitse/engram.git
cd engram
pip install -e .
python demos/setup_engram.py
Then configure Engram as an MCP server in your AI coding tool.
Example MCP config:
{
"mcpServers": {
"engram": {
"command": "python",
"args": ["/path/to/engram/src/engram_core/mcp_server.py"]
}
}
}
After restarting your MCP-compatible client, a new session can call get_user_context to understand your profile, preferences, lessons, and project context.
MCP Tools
Engram exposes read, write, project, backup, and compatibility tools through MCP.
Common tools include:
| Tool | Purpose |
|---|---|
get_user_context |
Load the complete user context at the start of a session |
get_identity_card |
Export a Markdown identity card for tools without MCP |
get_profile |
Read the user profile |
get_safe_profile |
Read the user profile with restricted fields filtered out |
get_preferences |
Read communication and workflow preferences |
get_trust_boundaries |
Read data access boundaries |
get_quality_standards |
Read quality expectations |
get_lessons |
Read reusable lessons learned |
get_decisions |
Read key decisions and reasons |
get_relevant_knowledge |
Find knowledge relevant to a project |
save_project_snapshot |
Save project context for later sessions |
add_lesson |
Add a lesson learned |
add_decision |
Add a key decision |
bulk_add_lessons |
Add multiple lessons in one call |
bulk_add_decisions |
Add multiple decisions in one call |
ingest_notes |
Parse free-form notes into lessons and decisions |
export_engram |
Export a full backup |
import_engram |
Import a backup |
export_engram_to_openclaw |
Export OpenClaw-compatible files |
import_engram_from_openclaw |
Import OpenClaw-compatible files |
search_knowledge |
Search lessons and decisions by weighted multi-term relevance |
get_health_report |
Knowledge asset health report (duplicates, capacity, warnings) |
get_stale_knowledge |
Find active knowledge that has not been reviewed recently |
get_knowledge_digest |
Summarize counts, recent additions, top accessed items, and domains |
get_related_knowledge |
Follow links between lessons and decisions |
find_similar_knowledge |
Find similar lessons and decisions by content |
export_knowledge_report |
Export a readable Markdown knowledge report |
link_knowledge |
Create a bidirectional link between two knowledge items |
unlink_knowledge |
Remove a bidirectional knowledge link |
update_lesson |
Update a lesson (summary, domain, status) |
archive_lesson |
Mark a lesson as outdated |
update_decision |
Update a decision |
archive_decision |
Mark a decision as outdated |
Data Layout
~/.engram/
|-- schema_version.json
|-- identity/
| |-- profile.json
| |-- preferences.json
| |-- quality_standards.json
| `-- trust_boundaries.json
|-- knowledge/
| |-- lessons.json
| |-- decisions.json
| `-- domains.json
|-- projects/
| `-- {project_id}.json
|-- exports/
`-- compat/
`-- openclaw/
Supported Tools
| Tool | Integration | Status |
|---|---|---|
| Claude Code | MCP over stdio | Tested |
| Codex | MCP over stdio | Tested |
| Cursor | MCP over stdio | Expected to work |
| Claude Desktop | MCP over stdio | Expected to work |
| OpenClaw | SOUL.md / MEMORY.md / USER.md import and export | Tested |
| ChatGPT / Gemini / Kimi | Markdown identity card fallback | Usable |
Comparison
| Feature | Engram | Claude Memory | Manual CLAUDE.md |
Mem0 |
|---|---|---|---|---|
| Cross-tool sharing | Yes | Claude only | Tool-specific | Yes |
| Local storage | Yes | Cloud | Local | Cloud / hosted |
| Directly editable data | JSON / Markdown | Not visible | Yes | API-based |
| MCP standard | Yes | Not applicable | Not applicable | Yes |
| Portable backup | Copy files or export JSON | Limited | Copy files | API export |
| Model-agnostic | Yes | Claude-focused | Depends on the tool | Yes |
| Price | Free and open source | Included in subscription | Free | Free / paid tiers |
Built With
Engram is a human-directed, AI-assisted open-source project.
| Contributor | Role |
|---|---|
| @Patdolitse | Creator, product direction, strategy, ownership |
| Claude Code | Architecture, task planning, code review assistance |
| Codex | Implementation, testing, documentation assistance |
FAQ
What is Engram? Engram is a local-first MCP server that gives AI coding tools (Claude Code, Codex, Cursor) a persistent identity layer. It stores who you are, how you work, what you have learned, and the decisions you have made — as local JSON files on your machine.
How is Engram different from other AI memory tools? Most AI memory tools store what happened in a session (task context, code changes). Engram stores who you are as a person — your identity, preferences, lessons, and decisions. This identity layer persists across tools, sessions, and projects. Your data is local JSON files you own and can edit directly.
Which AI tools does Engram support? Engram works with any MCP-compatible AI tool: Claude Code, OpenAI Codex, Cursor, Claude Desktop, and others. For tools without MCP support (ChatGPT, Gemini, Kimi), you can export a Markdown identity card and paste it in manually.
How do I install Engram?
git clone https://github.com/Patdolitse/engram.git
cd engram && pip install -e .
python demos/setup_engram.py
Then add the MCP config and restart your AI tool. The AI will call get_user_context automatically at the start of each session.
Does Engram send data to the cloud?
No. All data is stored in ~/.engram/ on your local machine. Engram never makes network requests. Your memory is yours.
How many MCP tools does Engram provide? Engram exposes 44 MCP tools covering identity management, lessons learned, key decisions, project snapshots, bulk input, note ingestion, weighted knowledge search, similarity discovery, digesting, reporting, linking, and health checks.
Is Engram free? Yes. Engram is free and open source under the Apache 2.0 license.
Limitations
Engram is functional and actively used, but some things it intentionally does not do yet:
| Area | Current State | Planned |
|---|---|---|
| File safety | Atomic JSON writes with a shared portalocker file lock | Broader stress testing |
| Access control | restricted_fields filters profile fields from get_user_context and get_safe_profile |
Per-caller ACL blocked by MCP caller identity |
| Encryption | Plaintext JSON — treat like any local file | Optional field encryption (v3.0) |
| Caller identity | MCP protocol doesn't pass tool identity | Blocked by MCP spec |
| Concurrent writes | Protected by file lock + atomic replace for Engram JSON writes | Network-filesystem edge cases not guaranteed |
What this means in practice:
- Don't store passwords, API keys, or client PII in Engram
- Any process with read access to
~/.engram/can read your data restricted_fieldsreduces what Engram emits in cold-start context, but it is not encryption or a true ACL
This is not a warning to avoid Engram — it's an honest description of what it is: a local, plaintext memory layer for personal AI context. For personal use with non-sensitive data, it works well today.
Contributing
Contributions, issues, and feedback are welcome.
See CONTRIBUTING.md. Chinese readers can also use CONTRIBUTING.zh-CN.md.
License
Apache 2.0. Engram is free software. Your memory belongs to you.
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