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Persistent memory for AI assistants with semantic search and knowledge graph relationships.
Persistent memory for AI assistants with semantic search and knowledge graph relationships.
Octobrain is a well-structured Rust-based MCP server for persistent AI memory with semantic search capabilities. The codebase demonstrates good security practices with proper environment variable handling for API keys, no hardcoded credentials, and appropriate input validation. The Python benchmark adapters are clean and follow proper credential management patterns. Minor code quality observations exist around exception handling breadth and logging, but no security vulnerabilities were identified. Supply chain analysis found 9 known vulnerabilities in dependencies (0 critical, 6 high severity).
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Add this to your MCP configuration file:
{
"mcpServers": {
"io-github-muvon-octobrain": {
"args": [
"-y",
"github:muvon/octobrain"
],
"command": "npx"
}
}
}From the project's GitHub README.
Persistent memory for AI assistants — store insights, decisions, and knowledge that survives across conversations.
MCP Registry: mcp-name: io.github.Muvon/octobrain
Octobrain gives your AI assistant a long-term memory. Store code insights, architecture decisions, bug fixes, and knowledge — then retrieve them with semantic search in future sessions. Works as a CLI tool or as an MCP server for integration with Claude Desktop and other AI tools.
AI assistants start every conversation with zero context. You explain your project, your preferences, your decisions — every single time. Octobrain breaks that cycle:
# Install from crates.io
cargo install octobrain
# Store your first memory
octobrain memory memorize --title "API Design Pattern" \
--content "Use REST for CRUD, GraphQL for complex queries" \
--memory-type architecture --tags "api,design"
# Search memories
octobrain memory remember "how should I design APIs"
# Start MCP server for Claude Desktop integration
octobrain mcp
cargo install octobrain
# Clone and build
git clone https://github.com/muvon/octobrain.git
cd octobrain
cargo build --release
# Binary location
./target/release/octobrain --help
Octobrain supports multiple embedding providers:
| Flag | Description | API Key Required |
|---|---|---|
fastembed | Local embeddings via FastEmbed | No |
huggingface | Local embeddings via HuggingFace | No |
| (default) | Both fastembed + huggingface | No |
| (no features) | API-based: Voyage, OpenAI, Google, Jina | Yes |
# Build with local embeddings (default, no API keys needed)
cargo build --release
# Build with API-based embeddings only
cargo build --no-default-features --release
For API-based embeddings, set the appropriate environment variable:
VOYAGE_API_KEY for Voyage AIOPENAI_API_KEY for OpenAIGOOGLE_API_KEY for GoogleJINA_API_KEY for JinaStore and retrieve insights, decisions, and context:
# Store a memory
octobrain memory memorize --title "API Design" \
--content "Use REST for CRUD, GraphQL for complex queries" \
--memory-type architecture --tags "api,design"
# Search memories (semantic search)
octobrain memory remember "api design patterns"
# Multi-query search for broader coverage
octobrain memory remember "authentication" "security" "jwt"
# Get a memory by ID
octobrain memory get <id>
# Get recent memories
octobrain memory recent --limit 20
# Filter by type
octobrain memory by-type architecture --limit 10
# Filter by tags
octobrain memory by-tags "api,security"
# Find memories related to files
octobrain memory for-files "src/main.rs,src/lib.rs"
# Update a memory
octobrain memory update <id> --title "New Title" --add-tags "new-tag"
# Delete a memory
octobrain memory forget --memory-id <id>
Close a goal and fold all its contributing memories into a consolidated summary:
# Consolidate a goal (all Achieves-link sources get archived)
octobrain memory consolidate <goal-id> --summary "Final summary"
# Sleep consolidation: auto-cluster recent similar memories
octobrain memory sleep-consolidate --threshold 0.85 --min-size 3
Connect related memories for context-rich retrieval:
# Create a relationship between memories
octobrain memory relate <source-id> <target-id> \
--relationship-type "depends_on" \
--description "Source requires target to function"
# View relationships for a memory
octobrain memory relationships <memory-id>
# Find related memories through relationships
octobrain memory related <memory-id>
# Auto-link similar memories (Zettelkasten-style)
octobrain memory auto-link <memory-id>
# Explore memory graph
octobrain memory graph <memory-id> --depth 2
Index and search web content, docs, and files:
# Index a URL
octobrain knowledge index https://docs.rs/tokio/latest/tokio/
# Search knowledge base
octobrain knowledge search "how to handle async tasks"
# Search within a specific source (auto-indexes if outdated)
octobrain knowledge search "spawn blocking" --source https://docs.rs/tokio/
# Read full content of a URL or local file
octobrain knowledge read https://docs.rs/tokio/latest/tokio/
# Search indexed content by regex pattern
octobrain knowledge match "spawn_blocking|block_in_place"
# Store raw text content
octobrain knowledge store "meeting-notes" --content "Discussion points..."
# List indexed sources
octobrain knowledge list --limit 20
# Show statistics
octobrain knowledge stats
# Delete a source
octobrain knowledge delete https://example.com/docs
# Delete stored content by key
octobrain knowledge delete-stored "meeting-notes"
Run as an MCP server for integration with Claude Desktop and other AI tools:
# Start with stdio transport (for Claude Desktop)
octobrain mcp
# Start with HTTP transport (for web-based tools)
octobrain mcp --bind 0.0.0.0:12345
Available MCP Tools:
| memorize | Store memories with metadata; optional related_to for inline relationships |
| remember | Semantic search with filters; returns 1-hop graph neighbors |
| forget | Delete memories (requires confirmation) |
| knowledge | Unified tool: search, store, delete, read, match via command field |
See MCP Integration for Claude Desktop setup.
Retrieval quality of octobrain's knowledge system on standard BEIR datasets — nDCG@10, fully local, no LLM judge, using the default local embedder bge-small-en-v1.5 (384-dim, 33M params). Each corpus passage is indexed through octobrain's real retrieval path and scored against the official qrels (metrics reproduce pytrec_eval).
| Dataset | octobrain vector | octobrain hybrid | BM25¹ | bge-small-en-v1.5² |
|---|---|---|---|---|
| SciFact (5.2K docs, 300 q) | 0.722 | 0.742 | 0.665 | 0.713 |
| NFCorpus (3.6K docs, 323 q) | 0.341 | 0.363 | 0.325 | 0.343 |
¹ Canonical BM25 from the BEIR paper (Anserini/Lucene, k1=0.9 b=0.4). ² From the bge-small-en-v1.5 model card (MTEB).
Scope: this measures the ranking layer (embedding + BM25 fusion + reranking). BEIR passages are pre-chunked, so octobrain's chunking strategy is not exercised here.
Reproduce (downloads the datasets, builds a release binary, runs fully offline):
cd benches && bash scripts/run_retrieval.sh
Configuration is stored in ~/.local/share/octobrain/config.toml. All options have sensible defaults.
| Section | Option | Default | Description |
|---|---|---|---|
[embedding] | model | fastembed:nomic-ai/nomic-embed-text-v1.5 | Embedding model (provider:model format). Default is a local fastembed model — no API key, runs on CPU. |
[search] | similarity_threshold | 0.3 | Minimum relevance (0.0-1.0) |
[search.hybrid] | enabled | true | Enable BM25 + vector fusion |
[search.reranker] | enabled | true | Enable cross-encoder reranking |
[search.hyde] | enabled | true | Pseudo-relevance feedback query expansion |
[memory] | max_memories | 10000 | Maximum stored memories |
[memory] | auto_linking_enabled | true | Auto-connect similar memories |
[knowledge] | chunk_size | 1200 | Characters per chunk |
[embedding]
# Local models (no API key, runs on CPU, model auto-downloaded on first use)
model = "fastembed:nomic-ai/nomic-embed-text-v1.5" # Default: 768-dim, 8192-token context
model = "fastembed:BAAI/bge-small-en-v1.5" # 384-dim, ~62 MTEB, fast + good quality
model = "fastembed:sentence-transformers/all-MiniLM-L6-v2-quantized" # Smallest (~22MB), fastest
model = "fastembed:BAAI/bge-base-en-v1.5" # Larger (~440MB), higher quality
model = "fastembed:intfloat/multilingual-e5-small" # Multilingual
# Cloud providers (require API keys, generally higher quality)
model = "voyage:voyage-3.5-lite" # VOYAGE_API_KEY
model = "openai:text-embedding-3-small" # OPENAI_API_KEY
model = "google:text-embedding-004" # GOOGLE_API_KEY
model = "jina:jina-embeddings-v3" # JINA_API_KEY
See config-templates/default.toml for all available options with documentation.
Organize memories by category for better filtering:
| Type | Use For |
|---|---|
code | Code patterns, solutions, implementations |
architecture | System design, decisions, patterns |
bug_fix | Bug fixes, troubleshooting, solutions |
feature | Feature specs, implementations |
documentation | Docs, explanations, knowledge |
user_preference | Settings, preferences, workflows |
decision | Project decisions, trade-offs |
learning | Tutorials, notes, education |
configuration | Setup, config, deployment |
testing | Test strategies, QA insights |
performance | Optimizations, benchmarks |
security | Vulnerabilities, fixes, considerations |
validation | Idea/product validation, hypothesis testing |
research | Technical/market research, analysis |
workflow | SOPs, playbooks, process descriptions |
requirement | Business requirements, specs, constraints |
design | UI/UX decisions, wireframes, system design |
integration | API integrations, third-party services |
communication | Stakeholder updates, team decisions |
process | Deployment procedures, runbooks, operations |
insight | General insights, tips |
goal | Task/intent anchors for consolidation workflow |
Add to your Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json on macOS):
{
"mcpServers": {
"octobrain": {
"command": "/path/to/octobrain",
"args": ["mcp"]
}
}
}
Restart Claude Desktop. Octobrain tools will be available in your conversations.
For web-based integrations:
octobrain mcp --bind 0.0.0.0:12345
The server exposes endpoints at /mcp for MCP protocol communication.
Data is stored in platform-specific directories:
| Platform | Location |
|---|---|
| macOS | ~/.local/share/octobrain/ |
| Linux | ~/.local/share/octobrain/ or $XDG_DATA_HOME/octobrain/ |
| Windows | %APPDATA%\octobrain\ |
Project-specific memories are isolated by Git remote URL hash.
Contributions are welcome! Please:
git checkout -b feature/amazing-feature)cargo clippy and fix all warningscargo test --no-default-features# Clone and build
git clone https://github.com/muvon/octobrain.git
cd octobrain
cargo build --no-default-features
# Run tests
cargo test --no-default-features
# Run clippy
cargo clippy --no-default-features
Apache-2.0 — see LICENSE for details.
Developed by Muvon Un Limited.
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