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Cross-project memory for AI coding agents

Project description

crossmem

PyPI Downloads Python License

Your AI tools forget. crossmem doesn't.

Cross-tool memory for AI coding agents. One pip install, zero cloud, zero accounts — your Claude Code, GitHub Copilot, and Gemini CLI sessions remember everything, across every project, automatically.

Before and after crossmem

Quick start

pip install crossmem        # 1. Install
crossmem setup              # 2. Done. All tools configured.

That's it. Every AI coding session now starts with cross-project context.

crossmem demo

Why crossmem?

40-50% of tokens in a typical AI coding session are wasted re-establishing context the model already knew last session. In a real experiment, two AI agents (Claude Code and GitHub Copilot) both bypassed their own memory tools and re-derived everything from training data — proving the problem they were explaining.

crossmem fixes this by injecting remembered context before the AI starts thinking — not as a suggestion it can ignore, but as enforced context.

You: "How should I handle credentials in this new service?"

AI: [crossmem recalls patterns from 3 of your projects]
    Based on your backend-api, mobile-app, and infra-tools projects,
    you use a middleware layer for credential masking — keys in
    Secret Manager, never env vars, masked in logs via
    _mask_sensitive_headers(). Applying the same pattern here.

No copy-pasting. No "I already solved this." Your AI remembers — across every project.

How it differs

crossmem Mem0 Letta Zep
Install pip install + SQLite Cloud API key or self-hosted Qdrant Server + Docker Postgres + Go server
Cross-tool Claude + Copilot + Gemini Single app Single app Single app
Cross-project All projects, one index Per-app scoped Per-agent scoped Per-session scoped
Protocol MCP-native REST API Custom framework SDK
Infrastructure None. Local SQLite. Cloud or Qdrant + server Letta server Postgres + server
Enforcement Hook injects context before generation LLM decides to call API LLM self-manages memory LLM calls SDK

Works with

Tool Auto-recall How
Claude Code SessionStart hook (startup/resume/compact) + UserPromptSubmit hook (every prompt) crossmem install-hook
GitHub Copilot Injects memories into copilot-instructions.md crossmem install-hook --tool copilot
VS Code Agent Mode SessionStart + UserPromptSubmit hooks (Preview) crossmem install-hook --tool copilot-agent
Gemini CLI Instruction in GEMINI.md crossmem install-instructions

What happens under the hood

cd ~/any-project
claude                    # Claude Code: hook fires, memories injected automatically
code .                    # Copilot: reads context pre-injected into copilot-instructions.md
gemini                    # Gemini: calls mem_recall via instruction in GEMINI.md
  1. Auto-ingest — pulls latest memories from Claude, Copilot, and Gemini native files
  2. Auto-init — first time in a project? Indexes README.md, CLAUDE.md, etc.
  3. Tiered recall — returns most relevant context within a token budget: curated memories > tool memories > CLAUDE.md > CONTRIBUTING.md > README.md
  4. Mid-session recall (Claude Code + VS Code Agent Mode) — every prompt is searched against your memories. Relevant context is injected before the model responds — no manual mem_recall needed.
  5. Learn — AI saves new discoveries via mem_save during sessions. Knowledge compounds.

MCP Server

Add to your tool's MCP config so AI assistants can search, recall, and save memories in real-time:

Claude Code (~/.mcp.json)
{
  "mcpServers": {
    "crossmem": {
      "command": "crossmem-server"
    }
  }
}
GitHub Copilot (.vscode/mcp.json)
{
  "servers": {
    "crossmem": {
      "command": "uvx",
      "args": ["--from", "crossmem", "crossmem-server"]
    }
  }
}
Gemini CLI (~/.gemini/settings.json)
{
  "mcpServers": {
    "crossmem": {
      "command": "crossmem-server"
    }
  }
}

If crossmem-server isn't on PATH, use uvx --from crossmem crossmem-server instead.

MCP Tools

Tool Description
mem_recall Load project context + cross-project patterns at session start
mem_search Search across all memories (query, project filter, limit)
mem_save Save a discovery during a session
mem_update Update a memory in place (preserves ID)
mem_forget Delete a memory by ID
mem_get Get full content of a memory by ID
mem_init Index project documentation files
mem_ingest Refresh the index from native tool memory files
CLI reference
# Recall (runs automatically via hook)
crossmem recall                  # auto-detects project from cwd
crossmem recall -p backend-api   # explicit project
crossmem recall --format copilot # marker-wrapped for Copilot injection
crossmem recall --format vscode  # JSON for VS Code agent-mode hooks

# Search
crossmem search "JWT token rotation"
crossmem search "retry strategy" -p backend-api -n 5

# Save / Update / Delete
crossmem save "Always use middleware for credential masking" -p backend-api -s Patterns
crossmem update 42 "corrected content here"
crossmem forget 42

# Index project docs
crossmem init                        # current directory
crossmem init -p my-api --path ~/projects/api

# Hooks
crossmem install-hook                              # Claude Code (SessionStart + UserPromptSubmit)
crossmem install-hook --tool copilot               # Copilot (workspace instructions)
crossmem install-hook --tool copilot --global      # Copilot (all workspaces)
crossmem install-hook --tool copilot --if-stale    # refresh if >30 min old
crossmem install-hook --tool copilot-agent         # VS Code agent mode (.github/hooks/)
crossmem install-instructions                      # Gemini

# Internal (installed as hooks — not run manually)
crossmem prompt-search                             # mid-session recall via UserPromptSubmit

# Other
crossmem ingest       # re-ingest tool memories
crossmem graph        # visualize knowledge graph in browser
crossmem stats        # database stats
crossmem setup        # one-time: Claude hook + Copilot injection + Gemini instructions + ingest

Supported tools

Tool Memory files
Claude Code ~/.claude/projects/*/memory/*.md
Gemini CLI ~/.gemini/GEMINI.md
GitHub Copilot (macOS) ~/Library/Application Support/Code/User/globalStorage/github.copilot-chat/memory-tool/memories/*.md
GitHub Copilot (Linux) ~/.config/Code/User/globalStorage/github.copilot-chat/memory-tool/memories/*.md
GitHub Copilot (Windows) %APPDATA%\Code\User\globalStorage\github.copilot-chat\memory-tool\memories\*.md

Ingestion is pluggable — PRs welcome for new tools.

Contributing

Found a bug? Want to add support for another AI tool? Open an issue or submit a PR.

If crossmem saves you from re-explaining your codebase to AI, consider giving it a star — it helps others find it.

License

MIT

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