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Built for the Claude Code community with Claude Code by @mertduzgun

Independent project, not affiliated with Anthropic

RemembrallMCP

cdnsteve/remembrallmcp
24authSTDIOregistry active
Summary

Gives AI agents persistent memory and a pre-built code dependency graph so they stop burning tokens on exploration. Two core pieces: hybrid search over decisions and patterns you've stored across sessions, and a tree-sitter powered graph that maps functions, classes, and call relationships across eight languages. Query what depends on a symbol or what breaks if you change it in under 1ms instead of spawning exploration agents. Backed by Postgres with pgvector for embeddings. The benchmarks on Click show 95% fewer tool calls when agents can ask the graph instead of grepping. Rust core, Docker Compose setup includes schema and model download. Works with Claude Code, Cursor, Codex, and any MCP client.

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RemembrallMCP

License: MIT Crates.io CI Docker

Persistent knowledge memory and code intelligence for AI agents. Rust core, Postgres + pgvector, MCP protocol.

The problem: AI coding agents are stateless. Every session starts from zero - no memory of past decisions, no understanding of how the codebase fits together, no way to know what breaks when you change something.

The solution: RemembrallMCP gives agents two things most memory tools don't:

1. Persistent Memory - Decisions, patterns, and organizational knowledge that survive between sessions. Hybrid semantic + full-text search finds relevant context instantly.

2. Code Dependency Graph - A live map of your codebase built with tree-sitter. Functions, classes, imports, and call relationships across 8 languages. Ask "what breaks if I change this?" and get an answer in milliseconds - before the agent touches anything.

remembrall_recall("authentication middleware patterns")
-> 3 relevant memories from past sessions

remembrall_index("/path/to/project", "myapp")
-> Builds dependency graph: 847 symbols, 1,203 relationships

remembrall_impact("AuthMiddleware", direction="upstream")
-> 12 files depend on AuthMiddleware (with confidence scores)

remembrall_store("Switched from JWT to session tokens because...")
-> Decision stored for future sessions

Why the code graph matters

Without RemembrallMCP, agents explore your codebase from scratch every session. Claude Code spawns Explore agents, Codex reads dozens of files, Cursor greps through directories - all burning tokens and time just to understand what calls what. A single "find all callers of this function" task can cost thousands of tokens across multiple tool calls.

With RemembrallMCP, that same query is a single remembrall_impact call that returns in <1ms with zero exploration tokens. The dependency graph is already built and waiting.

Without RemembrallMCPWith RemembrallMCP
"What calls UserService?"Agent greps, reads 8-15 files, spawns sub-agentsremembrall_impact - 1 call, <1ms
"Where is auth middleware defined?"Agent globs, reads matches, filtersremembrall_lookup_symbol - 1 call, <1ms
"What did we decide about caching?"Agent has no context, asks youremembrall_recall - 1 call, ~25ms
Typical exploration cost5,000-20,000 tokens per question~200 tokens (tool call + response)

The savings scale with codebase size. On a small project, an agent can grep and read its way through. On a 500-file monorepo, that exploration becomes the bottleneck - agents hit context limits, spawn multiple sub-agents, or miss cross-module dependencies entirely. RemembrallMCP's graph queries stay under 10ms regardless of project size because the structure is pre-indexed in Postgres, not discovered at runtime.

This is the difference between an agent that explores your codebase every time and one that already understands it.

Benchmarks

RemembrallMCP is currently benchmarked on two surfaces:

  • Agent productivity on code tasks - Tested on pallets/click v8.1.7 (594 symbols, 1,589 relationships). Five identical coding tasks run with and without RemembrallMCP. Full report.
  • Memory recall quality - Local recall harness run against 31 ground-truth queries covering search quality, filtering, edge cases, ranking, and latency.
MetricWithout RemembrallMCPWith RemembrallMCPDelta
Total tool calls (5 tasks)1125-95.5%
Estimated tokens~56,000~1,000-98.2%
Avg tool calls per question22.41.0-95.5%

The savings compound on larger codebases. Click is ~90 files - on a 500+ file monorepo, agents without RemembrallMCP need proportionally more exploration calls, while graph queries stay under 10ms regardless of size.

Memory Recall MetricResult
Queries passed31 / 31
Recall@50.917
Precision@50.619
MRR0.908
p95 latency14ms

Run the benchmarks yourself: see benchmarks/ for the harness and task definitions.

For the broader benchmark strategy across memory retrieval, long-horizon memory, code graph correctness, and agent productivity, see docs/benchmark-roadmap.md.

Requirements

  • Docker (for the easiest setup) or PostgreSQL 16 with pgvector
  • For GitHub ingestion: GitHub CLI (gh) installed and authenticated

Quick Start

Option 1: Docker Compose (easiest)

git clone https://github.com/cdnsteve/remembrallmcp.git
cd remembrallmcp

# Start Postgres + initialize schema + download embedding model
docker compose up -d

# Verify it's running
docker compose exec remembrall remembrall status

That's it. Postgres with pgvector, the schema, and the embedding model are all set up automatically. The database and model cache persist across restarts.

To run the MCP server:

docker compose run --rm remembrall

Option 2: Download prebuilt binary

# macOS (Apple Silicon)
curl -fsSL https://github.com/cdnsteve/remembrallmcp/releases/latest/download/remembrall-aarch64-apple-darwin.tar.gz | tar xz
sudo mv remembrall /usr/local/bin/

# Linux (x86_64)
curl -fsSL https://github.com/cdnsteve/remembrallmcp/releases/latest/download/remembrall-x86_64-unknown-linux-gnu.tar.gz | tar xz
sudo mv remembrall /usr/local/bin/

# Initialize (sets up Postgres via Docker, creates schema, downloads model)
remembrall init

Option 3: Build from source (requires Rust 1.94+)

cargo build -p remembrall-server --release
# Binary is at target/release/remembrall

remembrall init

Connect to your MCP client

Codex

Codex uses the same MCP server definition format. Register the server as remembrall and point it at either the installed binary or your local release build.

If remembrall is installed in PATH:

{
  "mcpServers": {
    "remembrall": {
      "command": "remembrall"
    }
  }
}

If running from a local source checkout:

{
  "mcpServers": {
    "remembrall": {
      "command": "/path/to/remembrallmcp/target/release/remembrall",
      "env": {
        "DATABASE_URL": "postgres://postgres:postgres@localhost:5450/remembrall"
      }
    }
  }
}

If using Docker Compose from Codex:

{
  "mcpServers": {
    "remembrall": {
      "command": "docker",
      "args": ["compose", "-f", "/path/to/remembrallmcp/docker-compose.yml", "run", "--rm", "-T", "remembrall"]
    }
  }
}

Restart Codex after adding the server so it reconnects and loads the tools.

Claude Code, Cursor, and other MCP clients

Add to your project's .mcp.json (works with Claude Code, Cursor, and any MCP-compatible client).

If using a prebuilt binary or built from source:

{
  "mcpServers": {
    "remembrall": {
      "command": "remembrall"
    }
  }
}

If using Docker Compose:

{
  "mcpServers": {
    "remembrall": {
      "command": "docker",
      "args": ["compose", "-f", "/path/to/remembrallmcp/docker-compose.yml", "run", "--rm", "-T", "remembrall"]
    }
  }
}

If running from source (not installed to PATH):

{
  "mcpServers": {
    "remembrall": {
      "command": "/path/to/remembrallmcp/target/release/remembrall",
      "env": {
        "DATABASE_URL": "postgres://postgres:postgres@localhost:5450/remembrall"
      }
    }
  }
}

Restart your MCP client. All 9 tools will be available automatically.

Try it

> "Store a memory: We chose Postgres over MongoDB because our query patterns
   are relational. Type: decision, tags: database, architecture"

> "Recall what we know about database decisions"

> "Index this project and show me the impact of changing UserService"

MCP Tools

Memory

ToolDescription
remembrall_recallSearch memories - hybrid semantic + full-text with RRF fusion
remembrall_storeStore decisions, patterns, knowledge with vector embeddings
remembrall_updateUpdate an existing memory (content, summary, tags, or importance)
remembrall_deleteRemove a memory by UUID
remembrall_ingest_githubBulk-import merged PR descriptions from a GitHub repo
remembrall_ingest_docsScan a directory for markdown files and ingest them as memories

Code Intelligence

ToolDescription
remembrall_indexParse a project directory into a dependency graph (8 languages)
remembrall_impactBlast radius analysis - "what breaks if I change this?"
remembrall_lookup_symbolFind where a function or class is defined across the project

Supported Languages

LanguageExtensionsQuality Score
Python.pyA (94.1)
Java.javaA (92.6)
JavaScript.js, .jsxA (92.0)
Rust.rsA (91.0)
Go.goA (90.7)
Ruby.rbB (87.9)
TypeScript.ts, .tsxB (84.3)
Kotlin.kt, .ktsB (82.9)

Scores measured against real open-source projects (Click, Gson, Axios, bat, Cobra, Sidekiq, Hono, Exposed) using automated ground truth tests.

Cold Start

A new RemembrallMCP instance has no knowledge. Use the ingestion tools to bootstrap from existing project history.

From GitHub PR history:

> remembrall_ingest_github repo="myorg/myrepo" limit=100

Fetches merged PRs via gh, digests titles and bodies into memories, and tags them by project. PRs with less than 50 characters of body are skipped. Deduplication by content fingerprint prevents re-ingestion on repeat runs.

From markdown docs:

> remembrall_ingest_docs path="/path/to/project"

Walks the directory tree, finds all .md files, splits them by H2 section headers, and stores each section as a searchable memory. Skips node_modules, .git, target, and similar directories. Good for README, ARCHITECTURE, ADRs, and any written docs.

Run both once per project. After ingestion, remembrall_recall has immediate context.

Architecture

Source Code                   Organizational Knowledge
    |                                 |
    v                                 v
Tree-sitter Parsers           Ingestion Pipeline
(8 languages)                 (GitHub PRs, Markdown docs)
    |                                 |
    v                                 v
+--------------------------------------------------+
|              Postgres + pgvector                  |
|                                                   |
|  memories (text + embeddings + metadata)          |
|  symbols (functions, classes, methods)            |
|  relationships (calls, imports, inherits)         |
+--------------------------------------------------+
                          |
                    MCP Server (stdio)
                          |
              Any MCP-compatible AI agent
  • Parsing: tree-sitter (Rust bindings, no Python in the pipeline)
  • Embeddings: fastembed (all-MiniLM-L6-v2, 384-dim, in-process ONNX Runtime)
  • Search: Hybrid RRF (semantic cosine similarity + full-text tsvector)
  • Graph queries: Recursive CTEs with cycle detection and confidence decay
  • Transport: stdio via rmcp

CLI Commands

CommandDescription
remembrall initSet up database, schema, and embedding model
remembrall serveRun the MCP server (default when no subcommand given)
remembrall startStart the Docker database container
remembrall stopStop the Docker database container
remembrall statusShow memory count, symbol count, connection status
remembrall doctorCheck for common problems (Docker, pgvector, schema, model)
remembrall reset --forceDrop and recreate the schema (deletes all data)
remembrall versionPrint version and config path

Configuration

Config file: ~/.remembrall/config.toml (created by remembrall init)

Environment variables override config file values:

VariableDescription
REMEMBRALL_DATABASE_URL or DATABASE_URLPostgreSQL connection string
REMEMBRALL_SCHEMADatabase schema name (default: remembrall)

Project Structure

crates/
  remembrall-core/          # Library - parsers, memory store, graph store, embedder
  remembrall-server/        # MCP server + CLI binary
  remembrall-test-harness/  # Parser quality testing against ground truth
  remembrall-recall-test/   # Search quality testing
docs/                       # Architecture and test plan docs
test-fixtures/              # Ground truth TOML files for 8 languages
tests/                      # Recall test fixtures

Performance

OperationTime
Memory store7ms
Semantic search (HNSW)<1ms
Full-text search<1ms
Hybrid recall (end-to-end)~25ms
Impact analysis4-9ms
Symbol lookup<1ms
Index 89 Python files2.3s

License

MIT

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Configuration

DATABASE_URL*secret

PostgreSQL connection string with pgvector extension

Categories
AI & LLM ToolsDocuments & KnowledgeSearch & Web Crawling
Registryactive
Packageremembrallmcp
TransportSTDIO
AuthRequired
UpdatedApr 10, 2026
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