Apache AGE MCP
MCP server for Apache AGE graph databases on PostgreSQL. **21 MCP tools** — the most comprehensive Apache AGE MCP server (graph CRUD, Cypher queries, batch transactions, semantic search, Graph RAG, vis.js visualization, export/import) - **F#/.NET** — the only non-Python Apache AGE MCP server, installs as a single dotnet tool - **Production-grade** — BenchmarkDotNet-verified performance (cached queries in 62 ns, Cypher in 1 ms) - **Open source** — MIT license, published on [NuGet](https://www.nuget.org/packages/AgeMcp) - **Documentation** — full docs site at neftedollar.com/age-mcp
age-mcp
MCP server for Apache AGE graph databases. Lets AI assistants (Claude, ChatGPT, Copilot, etc.) query and mutate graph data via the Model Context Protocol.
Built with F# on .NET 10 -- 1,300 lines, 21 tools, zero Python dependencies.
Quick Start
# 1. Start the database
docker compose up -d
# 2. Install the tool
dotnet tool install --global AgeMcp
# 3. Run
AGE_CONNECTION_STRING="Host=localhost;Port=5435;Database=agemcp;Username=agemcp;Password=agemcp" age-mcp
Claude Desktop / Claude Code
{
"mcpServers": {
"age-mcp": {
"type": "stdio",
"command": "age-mcp",
"env": {
"AGE_CONNECTION_STRING": "Host=localhost;Port=5435;Database=agemcp;Username=agemcp;Password=agemcp",
"TENANT_ID": "default"
}
}
}
}
Tools (21)
Graph Management
| Tool | Description |
|---|---|
get_or_create_graph | Get or create a graph by name |
list_graphs | List all graphs (tenant-scoped) |
drop_graphs | Drop one or more graphs |
Vertices & Edges
| Tool | Description |
|---|---|
upsert_vertex | Insert or update a vertex (merge on ident) |
upsert_edge | Insert or update a directed edge |
upsert_graph | Batch upsert vertices + edges (transactional) |
drop_vertex | Remove a vertex and all its edges |
drop_edge | Remove an edge by ident |
Query
| Tool | Description |
|---|---|
cypher_query | Execute a read Cypher query |
cypher_write | Execute a write Cypher query, returns affected count |
search_vertices | Search by label and/or property |
search_edges | Search edges by label |
get_neighbors | N-hop traversal (1-5 hops, directional) |
get_schema | All node labels and counts |
Export / Import
| Tool | Description |
|---|---|
export_graph | Export graph as JSON |
import_graph | Import from JSON (creates graph if needed) |
Visualization & Search
| Tool | Description |
|---|---|
generate_visualization | Interactive vis.js HTML graph |
semantic_search | Vector similarity search (pgvector) |
graph_context | Graph RAG: semantic seeds + N-hop expansion |
OpenBrain Bridge
| Tool | Description |
|---|---|
sync_to_openbrain | Export vertices as OpenBrain memories |
import_from_openbrain | Build graph from OpenBrain memories |
Configuration
| Variable | Required | Default | Description |
|---|---|---|---|
AGE_CONNECTION_STRING | yes | localhost test DB | Npgsql connection string |
TENANT_ID | no | default | Tenant prefix for graph names |
EMBEDDING_API_URL | no | -- | OpenAI-compatible embedding API |
EMBEDDING_API_KEY | no | -- | API key for embeddings |
EMBEDDING_MODEL | no | text-embedding-3-small | Embedding model name |
EMBEDDING_DIMENSIONS | no | 384 | Vector dimensions |
Docker
The included Docker setup runs PostgreSQL 17 + Apache AGE 1.6.0 + pgvector:
docker compose up -d
Versions and credentials are configurable via .env (see .env.example):
PG_MAJOR=17 AGE_VERSION=1.6.0 DB_PORT=5435 docker compose up -d
Data Compatibility
Designed as a drop-in replacement for agemcp (Python). Same tenant prefix (t_{TENANT_ID}__), same vertex ident property, same edge start_ident/end_ident properties. Existing data works without migration.
Performance
BenchmarkDotNet on Apple M1 Pro, .NET 10.0.5:
| Operation | Latency | Allocated |
|---|---|---|
| list_graphs | 62 ns | 216 B |
| get_schema | 117 ns | 344 B |
| cypher_query (1 vertex) | 1.0 ms | 58 KB |
| search_vertices | 1.0 ms | 36 KB |
| get_neighbors (depth=1) | 92 ms | 233 KB |
| export_graph (40 entities) | 71 ms | 472 KB |
Building from Source
git clone https://github.com/Neftedollar/age-mcp.git
cd age-mcp
dotnet build
# Run directly
dotnet run
# Or install as tool
dotnet pack -c Release
dotnet tool install --global AgeMcp
Dependencies (FsMcp.Core, FsMcp.Server, Fyper) are restored from NuGet automatically.
License
MIT
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