dory-memory 0.1.11

Backend memory store for Hermes Agent — pgvector-powered semantic memory engine with server-side embeddings
dory-memory-0.1.11 is not a library.

Dory Memory

Rust License PRs Welcome Docker

Backend memory store for Hermes Agent.
A semantic memory engine powered by pgvector (PostgreSQL vector database) with server-side embeddings via any OpenAI-compatible API.

Store, search, and maintain agent memories with hybrid vector + full-text retrieval, automatic decay, consolidation, and a sandbox for ephemeral context.


Features

  • Hybrid search — Reciprocal Rank Fusion over vector cosine distance and full-text search (tsvector)
  • Intent routing — Automatically classifies incoming memories: Task, Reference, Environment, Preference, Backlog, Pivot, Correction
  • Immortal memories — Protected from decay/pruning; set automatically for Reference and Environment intents
  • Embedding cache — In-memory DashMap deduplication; saves API calls on repeated content
  • Ephemeral sandboxPivot and Task intents stage memories in a VecDeque before committing on flush
  • Temporal recall — Query memories within ISO datetime windows
  • Token-budget searchrecall_within_token_budget fits results into an LLM context limit
  • Maintenance — Automatic decay/importance adjustment every 24 h, stale-memory listing, batch purge (immortal-protected)
  • Consolidation — Merges sandbox to DB when idle
  • Workspace telemetrynotify-based file watcher drives proactive horizon sweeps
  • Hermes plugin — Drop-in MemoryProvider plugin with 6 agent tools (recall, sweep, search_temporal, list_stale, purge, stats)

Architecture

Hermes Agent (Python MemoryProvider plugin)
        │  HTTP
        ▼
┌──────────────────────────────────────────┐
│          axum HTTP server (routes.rs)     │
│                                          │
│  ┌──────────┐  ┌──────────┐  ┌────────┐ │
│  │ guard.rs │  │ embed.rs │  │ cache  │ │
│  │ sanitize │→│ embedding │→│ .rs    │ │
│  │ redact   │  │ API call  │  │ DashMap│ │
│  └──────────┘  └──────────┘  └────────┘ │
│         │              │                  │
│         ▼              ▼                  │
│  ┌──────────────────────────────┐        │
│  │      DoryEngine (engine.rs)   │        │
│  │  process_and_route_memory    │        │
│  │  hybrid_recall / temporal    │        │
│  │  proactive_horizon_sweep     │        │
│  └──────────┬───────────────────┘        │
│             │                             │
└─────────────┼─────────────────────────────┘
              │  sqlx
              ▼
┌──────────────────────┐
│  PostgreSQL + pgvector │
│  - dory_memories       │
│  - dory_namespaces     │
└──────────────────────┘

Background workers (workers.rs):
  - Decay/pruning (every 24h)
  - Consolidation (idle trigger)

Telemetry daemon (telemetry.rs):
  - notify watcher on workspace

Quick start

With Docker Compose (recommended)

cp .env.example .env     # edit your API key
docker compose up -d

Without Docker

# Start PostgreSQL with pgvector
docker run -d --name dory-pg \
  -e POSTGRES_USER=dory -e POSTGRES_PASSWORD=dory -e POSTGRES_DB=dory \
  -p 5432:5432 pgvector/pgvector:pg16

# Build and run
cargo run

Configuration

Create dory.toml:

[database]
url = "postgres://dory:dory@localhost:5432/dory"

[server]
host = "0.0.0.0"
port = 5005

[embedding]
api_url = "https://api.openai.com/v1/embeddings"
api_key = "sk-..."              # or DORY_EMBEDDING_API_KEY env var
model = "text-embedding-ada-002"
dimensions = 1536

Set DORY_CONFIG to your config path (defaults to ./dory.toml).

Security note: Prefer the DORY_EMBEDDING_API_KEY environment variable over writing the key in dory.toml. The config loader checks the env var first.


API Endpoints

Method Path Description
POST /v1/memories Insert a memory
POST /v1/search Hybrid semantic + full-text search
POST /v1/search/temporal Recall within a time window
POST /v1/search/budget Token-budgeted search (for prefetch)
GET /v1/sweep/{namespace} Proactive horizon sweep (stale tasks)
POST /v1/maintenance/stale List stale non-immortal memories
POST /v1/batch/delete Batch delete (immortal protected)
GET /v1/stats Database statistics

Hermes Plugin

The plugin lives in plugins/memory/dory/ and provides:

  • 6 agent tools: recall, sweep, search_temporal, list_stale, purge, stats
  • Auto-namespace: derived from Hermes profile name
  • Background sync: async sync_turn records conversation turns
  • CLI: hermes dory status, hermes dory config, hermes dory stats

Install by copying plugins/memory/dory/ into your Hermes agent's plugin directory.
Set DORY_API_URL (default http://localhost:5005).


Development

cargo check              # fast validation
cargo clippy --all-targets --all-features --locked -- -D warnings
cargo test               # unit + integration
cargo fmt                # formatting

Requires Rust ≥1.85 (edition 2024). The project pins stable in rust-toolchain.toml.

Project layout

src/
├── main.rs       # Entrypoint: config, pool, migrations, axum, workers
├── config.rs     # TOML config struct + env var overrides
├── error.rs      # DoryError (thiserror) + axum IntoResponse
├── models.rs     # DoryMemoryNode, DoryInsertPayload, DoryIntent, TimeWindow
├── guard.rs      # Secret redaction + prompt-injection sanitization
├── embed.rs      # OpenAI-compatible API client
├── cache.rs      # DashMap embedding cache + VecDeque sandbox
├── engine.rs     # Core engine: routing, recall, stats, maintenance
├── routes.rs     # Axum HTTP handlers
├── workers.rs    # Decay/pruning + consolidation
└── telemetry.rs  # Workspace file watcher