Dakera
Self-hosted Rust-based MCP server for AI agent memory — persistent, queryable memory with hybrid search, knowledge graphs, built-in embeddings, and 14 core tools (expandable to 86+ with profile-based tiering).
⚡ dakera-mcp
MCP server for Dakera AI. Gives any MCP-compatible AI agent persistent, queryable memory — with smart token management built in.
Works with Claude, Claude Code, and any MCP-compatible framework.
Part of Dakera AI — the memory engine for AI agents.
The Dakera memory engine scores 87.6% on LoCoMo (1,540 questions, standard eval) — benchmark details
Architecture: 14 core tools + on-demand discovery
Starting every agent session with 60+ tool schemas wastes ~15K tokens before you write a single message. dakera-mcp solves this with hybrid tool exposure:
- 14 tools loaded by default — the 12 highest-frequency memory operations + 2 meta-discovery tools
- On-demand expansion — use
dakera_discover_toolsanddakera_load_toolsto fetch additional tool schemas only when you need them
Default tool set (core profile)
| Tool | Purpose |
|---|---|
dakera_store | Store a memory with importance, tags, and type |
dakera_recall | Semantic recall by query text |
dakera_search | Advanced memory search with tag/type filters |
dakera_session_start | Start a session to group related memories |
dakera_session_end | End a session with optional summary |
dakera_batch_recall | Bulk filter-based recall (by tags, importance, time) |
dakera_forget | Delete specific memories by ID |
dakera_hybrid_search | Combined vector + BM25 search |
dakera_fulltext_search | BM25 full-text search |
dakera_knowledge_graph | Build a knowledge graph from a seed memory |
dakera_extract | Extract entities and structure from free-form text |
dakera_batch_forget | Bulk delete by tags, type, or time range |
dakera_discover_tools | Search the full tool catalog by keyword or tier |
dakera_load_tools | Load full schemas for specific tools on demand |
Profiles & token cost
| Profile | Tools | ~Tokens | How to enable |
|---|---|---|---|
| core | 14 | ~2,964 | Default — always loaded |
| admin | 32 | ~5,975 | DAKERA_MCP_PROFILE=admin |
| power | 68 | ~13,014 | DAKERA_MCP_PROFILE=power |
| all | 86 | ~16,026 | DAKERA_MCP_PROFILE=all |
Accessing additional tools
# In your agent: discover what's available
dakera_discover_tools(tier="power")
→ returns names + descriptions, no schemas loaded
# Load schemas for the tools you want
dakera_load_tools(tools=["dakera_consolidate", "dakera_agent_stats"])
→ returns full inputSchema for each tool
Profile selection
The profile controls which tools appear in tools/list. Three ways to set it:
1. Per-request (in tools/list params):
{"profile": "power"}
2. Environment variable (applies to all requests):
DAKERA_MCP_PROFILE=power
3. Default: core (14 tools, ~2,964 tokens)
Run Dakera
The MCP server connects to a Dakera memory server. You need one running first:
docker run -d \
--name dakera \
-p 3300:3300 \
-e DAKERA_ROOT_API_KEY=dk-mykey \
ghcr.io/dakera-ai/dakera:latest
For persistent storage (recommended):
curl -sSfL https://raw.githubusercontent.com/Dakera-AI/dakera-deploy/main/docker-compose.yml \
-o docker-compose.yml
DAKERA_API_KEY=dk-mykey docker compose up -d
curl http://localhost:3300/health # → {"status":"ok"}
Full deployment guide (Docker Compose, Kubernetes, Helm): dakera-deploy
Install
cargo install dakera-mcp
Or with Docker:
docker pull ghcr.io/dakera-ai/dakera-mcp:latest
Connect
Add to .mcp.json (Claude Code) or claude_desktop_config.json (Claude Desktop):
{
"mcpServers": {
"dakera": {
"command": "dakera-mcp",
"env": {
"DAKERA_API_URL": "http://localhost:3300",
"DAKERA_API_KEY": "your-key"
}
}
}
}
To start with the power profile (exposes 68 tools):
{
"mcpServers": {
"dakera": {
"command": "dakera-mcp",
"env": {
"DAKERA_API_URL": "http://localhost:3300",
"DAKERA_API_KEY": "your-key",
"DAKERA_MCP_PROFILE": "power"
}
}
}
}
Why This Exists
AI agents forget everything when the session ends. Dakera fixes that. This MCP server gives your agent a persistent memory layer with zero infrastructure overhead — point it at a Dakera instance and it works.
The 14-tool default keeps your context window lean. The meta-tools let you expand on demand when you need advanced operations like bulk vector upsert, knowledge graph traversal, or memory federation.
→ dakera.ai for hosted instance
→ Self-host with dakera-deploy
Documentation
Related
| Repo | What it is |
|---|---|
| dakera-py | Python SDK |
| dakera-js | TypeScript SDK |
| dakera-cli | CLI |
| dakera-deploy | Self-host Dakera |
dakera.ai · Documentation · Request Early Access
Part of the Dakera AI open-source ecosystem. Built with Rust. Self-hosted. Zero dependencies.
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