IDE MEMORY MCP
IDE Memory MCP gives AI coding agents a persistent memory layer that works across any IDE supporting the Model Context Protocol. Write project context once — the AI remembers it everywhere.
IDE Memory MCP
Cross-IDE persistent memory for AI coding agents — your AI remembers every project, across every IDE.
The Problem
Every time you open a project in a new IDE or start a fresh AI conversation, your AI assistant forgets everything:
- What the project does
- Architecture decisions you've made
- What you're currently working on
- Your progress and milestones
You end up repeating yourself. Every. Single. Time.
The Solution
IDE Memory MCP gives AI coding agents a persistent memory layer that works across any IDE supporting the Model Context Protocol. Write project context once — the AI remembers it everywhere.
Cursor ←──→ IDE Memory MCP ←──→ VS Code
↑ ↓ ↑
└── same project memory ────────┘
Key Features
- Cross-IDE Memory — Project context persists across Cursor, VS Code, Windsurf, Claude Desktop, and any MCP-compatible IDE
- Context-Optimized — Default reads return a compact summary table, not a context-window-destroying content dump. The AI loads only what it needs.
- Smart Warnings — Automatically detects stale sections (>7 days), oversized content (>10k chars), and suggests pruning when memory gets old (>30 days)
- Agent Prompts — Built-in MCP prompts guide the AI on how to start sessions, bootstrap memory for new projects, and update memory after changes
- Smart Project Matching — Recognizes projects by path or git remote URL. Move folders, switch machines — your memory follows.
- Section-Based Storage — Organized into
overview,decisions,active_context,progress+ custom sections - Append Mode — Add incremental updates without rewriting entire sections
- Version History — Previous content auto-saved before each overwrite (last 5 snapshots)
- Zero Config — Works out of the box. No database, no cloud, just local markdown files.
Quick Start
1. Install
# Using uv (recommended)
uv pip install ide-memory-mcp
# Using pip
pip install ide-memory-mcp
2. Auto-Configure Your IDE
Run the setup command to automatically detect and configure installed IDEs (Cursor, VS Code, Windsurf, Claude Desktop):
ide-memory-mcp setup
💡 Restart your IDE after running this command to activate the MCP server.
CLI Commands
The ide-memory-mcp package includes practical commands to manage your setup:
ide-memory-mcp setup
Auto-configure MCP for your IDEs.
ide-memory-mcp setup # auto-detect + configure all
ide-memory-mcp setup --cursor # configure only Cursor
ide-memory-mcp setup --vscode # configure only VS Code
ide-memory-mcp setup --windsurf # configure only Windsurf
ide-memory-mcp setup --claude # configure only Claude Desktop
ide-memory-mcp setup --all # configure all supported
ide-memory-mcp doctor
Health check your installation.
ide-memory-mcp doctor
Verifies server import, storage disk usage, projects count, and which IDEs are configured.
ide-memory-mcp status
Quick overview of all projects.
ide-memory-mcp status
Lists registered projects with section counts, total size, and last updated date.
💡 Manual IDE Configuration (If setup fails or for advanced users)
Add the MCP server to your IDE's configuration file:
Cursor — ~/.cursor/mcp.json
{
"mcpServers": {
"ide-memory": {
"command": "ide-memory-mcp"
}
}
}
VS Code — .vscode/mcp.json (or global settings)
{
"mcpServers": {
"ide-memory": {
"command": "ide-memory-mcp"
}
}
}
Windsurf — ~/.codeium/windsurf/mcp_config.json
{
"mcpServers": {
"ide-memory": {
"command": "ide-memory-mcp"
}
}
}
Claude Desktop
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"ide-memory": {
"command": "ide-memory-mcp"
}
}
}
Tools
IDE Memory MCP exposes 4 optimized tools to the AI agent:
init_project
Register or reconnect to a project. Call this first in every conversation.
init_project(projectPath, projectName?, gitRemoteUrl?)
- New project → creates memory storage, suggests next steps, mentions
bootstrap_memoryprompt - Known project → reconnects, returns memory summary with smart warnings:
- ⚠️ Empty sections that need filling
- ⏰ Stale sections (>7 days) that should be updated
- 📦 Large sections (>10k chars) that may need pruning
- 🧹 Old sections (>30 days) suggesting a full prune
read_memory
Context-aware memory loading. Optimized to avoid flooding the AI's context window.
read_memory(projectIdOrPath, sections?, query?, maxChars?, history?, prune?)
| Mode | Trigger | What it does |
|---|---|---|
| Summary (default) | No sections | Returns a compact table: section names, sizes, staleness, warnings. No content. |
| Selective | sections=["overview"] | Loads only the listed sections |
| Truncated | maxChars=500 | Caps each section at N characters |
| Search | query="auth" | Keyword search across all sections |
| History | history=True | Shows previous versions of a section |
| Prune | prune=True | Loads all with actionable cleanup instructions |
💡 Recommended workflow:
read_memory(projectId)→ get the summary table (~10 lines)- Decide which sections are relevant
read_memory(projectId, sections=["overview", "decisions"])→ load only what you need
write_memory
Write to one or more memory sections.
write_memory(projectIdOrPath, sections, append?, heading?)
- Overwrite mode (default): Replace entire section content. Previous content auto-saved to history.
- Append mode (
append=True): Add timestamped entries without rewriting. Great for decisions and progress logs.
Tool description includes behavioral guidance — it tells the AI agent when to call it:
- After significant code changes
- When important decisions are made
- At the end of productive sessions
- When the user asks to "remember" something
manage_projects
List or delete projects.
manage_projects(action, projectIdOrPath?, confirm?)
MCP Prompts
IDE Memory MCP includes 3 built-in prompt templates that guide the AI agent through common workflows. These solve the "agent doesn't know when to use memory" problem.
start_session
When: Beginning of every conversation.
Guides the agent through: initialize project → read summary → load relevant sections → check for stale content → plan memory updates for end of session.
bootstrap_memory
When: First time using IDE Memory on an existing project, or when the user says "learn about this project".
Guides the agent through: analyze README & package files → write comprehensive overview → document architecture decisions → set active context → record progress.
update_memory
When: End of a productive session, after significant changes, or when the user says "save what we did".
Guides the agent through: read current memory → update active_context → append new decisions → update progress → update overview if needed → check if pruning is needed.
Memory Sections
Default sections created for every project:
| Section | Purpose |
|---|---|
overview | What the project is, tech stack, architecture |
decisions | Key technical decisions and rationale |
active_context | What you're currently working on |
progress | Milestones, completed items, what's next |
Custom sections are fully supported — use any lowercase identifier:
write_memory(projectId, {"api_contracts": "...", "testing_notes": "..."})
Smart Warnings
The memory summary automatically includes actionable warnings:
| Warning | Trigger | Action |
|---|---|---|
| ⚠️ Empty | Section has <50 chars | Fill with write_memory |
| ⏰ Stale | Section not updated in >7 days | Review and update |
| 📦 Large | Section exceeds 10k chars | Consider pruning |
| 🧹 Prune | Any section >30 days old | Run read_memory(prune=True) |
Storage
All memory is stored as simple markdown files in ~/.ide-memory/projects/:
~/.ide-memory/
├── config.json # Optional configuration
└── projects/
└── <project_id>/
├── meta.json # Project metadata + timestamps
├── overview.md
├── decisions.md
├── active_context.md
├── progress.md
└── .history/ # Auto-saved snapshots
├── overview_20260314_120000.md
└── decisions_20260314_130000.md
- No database required
- All files are human-readable markdown
- Easy to backup, version, or migrate
- No data ever leaves your machine
Configuration
Optional. Create ~/.ide-memory/config.json:
{
"default_sections": [
"overview",
"decisions",
"active_context",
"progress"
]
}
Development
Prerequisites
- Python 3.11+
- uv (recommended) or pip
Setup
git clone https://github.com/prasanna-pmpeople/IDE-Memory-MCP.git
cd IDE-Memory-MCP
uv sync
Run the server
uv run ide-memory-mcp
Run tests
uv run pytest tests/ -v
Test with MCP Inspector
npx -y @modelcontextprotocol/inspector uv run ide-memory-mcp
See TESTING.md for the complete testing guide, including MCP Inspector walkthrough and cross-IDE battle testing.
Build the package
uv build
Install from built package
pip install dist/ide_memory_mcp-1.0.0-py3-none-any.whl
How It Works
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