hermes-agent/website/docs/user-guide/features/memory-providers.md
Erosika 78586ce036 fix(honcho): dialectic lifecycle — defaults, retry, prewarm consumption
Several correctness and cost-safety fixes to the Honcho dialectic path
after a multi-turn investigation surfaced a chain of silent failures:

- dialecticCadence default flipped 3 → 1. PR #10619 changed this from 1 to
  3 for cost, but existing installs with no explicit config silently went
  from per-turn dialectic to every-3-turns on upgrade. Restores pre-#10619
  behavior; 3+ remains available for cost-conscious setups. Docs + wizard
  + status output updated to match.

- Session-start prewarm now consumed. Previously fired a .chat() on init
  whose result landed in HonchoSessionManager._dialectic_cache and was
  never read — pop_dialectic_result had zero call sites. Turn 1 paid for
  a duplicate synchronous dialectic. Prewarm now writes directly to the
  plugin's _prefetch_result via _prefetch_lock so turn 1 consumes it with
  no extra call.

- Prewarm is now dialecticDepth-aware. A single-pass prewarm can return
  weak output on cold peers; the multi-pass audit/reconcile cycle is
  exactly the case dialecticDepth was built for. Prewarm now runs the
  full configured depth in the background.

- Silent dialectic failure no longer burns the cadence window.
  _last_dialectic_turn now advances only when the result is non-empty.
  Empty result → next eligible turn retries immediately instead of
  waiting the full cadence gap.

- Thread pile-up guard. queue_prefetch skips when a prior dialectic
  thread is still in-flight, preventing stacked races on _prefetch_result.

- First-turn sync timeout is recoverable. Previously on timeout the
  background thread's result was stored in a dead local list. Now the
  thread writes into _prefetch_result under lock so the next turn
  picks it up.

- Cadence gate applies uniformly. At cadence=1 the old "cadence > 1"
  guard let first-turn sync + same-turn queue_prefetch both fire.
  Gate now always applies.

- Restored query-length reasoning-level scaling, dropped in 9a0ab34c.
  Scales dialecticReasoningLevel up on longer queries (+1 at ≥120 chars,
  +2 at ≥400), clamped at reasoningLevelCap. Two new config keys:
  `reasoningHeuristic` (bool, default true) and `reasoningLevelCap`
  (string, default "high"; previously parsed but never enforced).
  Respects dialecticDepthLevels and proportional lighter-early passes.

- Restored short-prompt skip, dropped in ef7f3156. One-word
  acknowledgements ("ok", "y", "thanks") and slash commands bypass
  both injection and dialectic fire.

- Purged dead code in session.py: prefetch_dialectic, _dialectic_cache,
  set_dialectic_result, pop_dialectic_result — all unused after prewarm
  refactor.

Tests: 542 passed across honcho_plugin/, agent/test_memory_provider.py,
and run_agent/test_run_agent.py. New coverage:
- TestTrivialPromptHeuristic (classifier + prefetch/queue skip)
- TestDialecticCadenceAdvancesOnSuccess (empty-result retry, pile-up guard)
- TestSessionStartDialecticPrewarm (prewarm consumed, sync fallback)
- TestReasoningHeuristic (length bumps, cap clamp, interaction with depth)
- TestDialecticLifecycleSmoke (end-to-end 8-turn session walk)
2026-04-18 22:50:55 -07:00

20 KiB
Raw Blame History

sidebar_position title description
4 Memory Providers External memory provider plugins — Honcho, OpenViking, Mem0, Hindsight, Holographic, RetainDB, ByteRover, Supermemory

Memory Providers

Hermes Agent ships with 8 external memory provider plugins that give the agent persistent, cross-session knowledge beyond the built-in MEMORY.md and USER.md. Only one external provider can be active at a time — the built-in memory is always active alongside it.

Quick Start

hermes memory setup      # interactive picker + configuration
hermes memory status     # check what's active
hermes memory off        # disable external provider

You can also select the active memory provider via hermes plugins → Provider Plugins → Memory Provider.

Or set manually in ~/.hermes/config.yaml:

memory:
  provider: openviking   # or honcho, mem0, hindsight, holographic, retaindb, byterover, supermemory

How It Works

When a memory provider is active, Hermes automatically:

  1. Injects provider context into the system prompt (what the provider knows)
  2. Prefetches relevant memories before each turn (background, non-blocking)
  3. Syncs conversation turns to the provider after each response
  4. Extracts memories on session end (for providers that support it)
  5. Mirrors built-in memory writes to the external provider
  6. Adds provider-specific tools so the agent can search, store, and manage memories

The built-in memory (MEMORY.md / USER.md) continues to work exactly as before. The external provider is additive.

Available Providers

Honcho

AI-native cross-session user modeling with dialectic reasoning, session-scoped context injection, semantic search, and persistent conclusions. Base context now includes the session summary alongside user representation and peer cards, giving the agent awareness of what has already been discussed.

Best for Multi-agent systems with cross-session context, user-agent alignment
Requires pip install honcho-ai + API key or self-hosted instance
Data storage Honcho Cloud or self-hosted
Cost Honcho pricing (cloud) / free (self-hosted)

Tools (5): honcho_profile (read/update peer card), honcho_search (semantic search), honcho_context (session context — summary, representation, card, messages), honcho_reasoning (LLM-synthesized), honcho_conclude (create/delete conclusions)

Architecture: Two-layer context injection — a base layer (session summary + representation + peer card, refreshed on contextCadence) plus a dialectic supplement (LLM reasoning, refreshed on dialecticCadence). The dialectic automatically selects cold-start prompts (general user facts) vs. warm prompts (session-scoped context) based on whether base context exists.

Three orthogonal config knobs control cost and depth independently:

  • contextCadence — how often the base layer refreshes (API call frequency)
  • dialecticCadence — how often the dialectic LLM fires (LLM call frequency)
  • dialecticDepth — how many .chat() passes per dialectic invocation (13, depth of reasoning)

Setup Wizard:

hermes honcho setup        # (legacy command) 
# or
hermes memory setup        # select "honcho"

Config: $HERMES_HOME/honcho.json (profile-local) or ~/.honcho/config.json (global). Resolution order: $HERMES_HOME/honcho.json > ~/.hermes/honcho.json > ~/.honcho/config.json. See the config reference and the Honcho integration guide.

Full config reference
Key Default Description
apiKey -- API key from app.honcho.dev
baseUrl -- Base URL for self-hosted Honcho
peerName -- User peer identity
aiPeer host key AI peer identity (one per profile)
workspace host key Shared workspace ID
contextTokens null (uncapped) Token budget for auto-injected context per turn. Truncates at word boundaries
contextCadence 1 Minimum turns between context() API calls (base layer refresh)
dialecticCadence 1 Minimum turns between peer.chat() LLM calls. Only applies to hybrid/context modes
dialecticDepth 1 Number of .chat() passes per dialectic invocation. Clamped 13. Pass 0: cold/warm prompt, pass 1: self-audit, pass 2: reconciliation
dialecticDepthLevels null Optional array of reasoning levels per pass, e.g. ["minimal", "low", "medium"]. Overrides proportional defaults
dialecticReasoningLevel 'low' Base reasoning level: minimal, low, medium, high, max
dialecticDynamic true When true, model can override reasoning level per-call via tool param
dialecticMaxChars 600 Max chars of dialectic result injected into system prompt
recallMode 'hybrid' hybrid (auto-inject + tools), context (inject only), tools (tools only)
writeFrequency 'async' When to flush messages: async (background thread), turn (sync), session (batch on end), or integer N
saveMessages true Whether to persist messages to Honcho API
observationMode 'directional' directional (all on) or unified (shared pool). Override with observation object
messageMaxChars 25000 Max chars per message (chunked if exceeded)
dialecticMaxInputChars 10000 Max chars for dialectic query input to peer.chat()
sessionStrategy 'per-directory' per-directory, per-repo, per-session, global
Minimal honcho.json (cloud)
{
  "apiKey": "your-key-from-app.honcho.dev",
  "hosts": {
    "hermes": {
      "enabled": true,
      "aiPeer": "hermes",
      "peerName": "your-name",
      "workspace": "hermes"
    }
  }
}
Minimal honcho.json (self-hosted)
{
  "baseUrl": "http://localhost:8000",
  "hosts": {
    "hermes": {
      "enabled": true,
      "aiPeer": "hermes",
      "peerName": "your-name",
      "workspace": "hermes"
    }
  }
}

:::tip Migrating from hermes honcho If you previously used hermes honcho setup, your config and all server-side data are intact. Just re-enable through the setup wizard again or manually set memory.provider: honcho to reactivate via the new system. :::

Multi-agent / Profiles:

Each Hermes profile gets its own Honcho AI peer while sharing the same workspace -- all profiles see the same user representation, but each agent builds its own identity and observations.

hermes profile create coder --clone   # creates honcho peer "coder", inherits config from default

What --clone does: creates a hermes.coder host block in honcho.json with aiPeer: "coder", shared workspace, inherited peerName, recallMode, writeFrequency, observation, etc. The peer is eagerly created in Honcho so it exists before first message.

For profiles created before Honcho was set up:

hermes honcho sync   # scans all profiles, creates host blocks for any missing ones

This inherits settings from the default hermes host block and creates new AI peers for each profile. Idempotent -- skips profiles that already have a host block.

Full honcho.json example (multi-profile)
{
  "apiKey": "your-key",
  "workspace": "hermes",
  "peerName": "eri",
  "hosts": {
    "hermes": {
      "enabled": true,
      "aiPeer": "hermes",
      "workspace": "hermes",
      "peerName": "eri",
      "recallMode": "hybrid",
      "writeFrequency": "async",
      "sessionStrategy": "per-directory",
      "observation": {
        "user": { "observeMe": true, "observeOthers": true },
        "ai": { "observeMe": true, "observeOthers": true }
      },
      "dialecticReasoningLevel": "low",
      "dialecticDynamic": true,
      "dialecticCadence": 1,
      "dialecticDepth": 1,
      "dialecticMaxChars": 600,
      "contextCadence": 1,
      "messageMaxChars": 25000,
      "saveMessages": true
    },
    "hermes.coder": {
      "enabled": true,
      "aiPeer": "coder",
      "workspace": "hermes",
      "peerName": "eri",
      "recallMode": "tools",
      "observation": {
        "user": { "observeMe": true, "observeOthers": false },
        "ai": { "observeMe": true, "observeOthers": true }
      }
    },
    "hermes.writer": {
      "enabled": true,
      "aiPeer": "writer",
      "workspace": "hermes",
      "peerName": "eri"
    }
  },
  "sessions": {
    "/home/user/myproject": "myproject-main"
  }
}

See the config reference and Honcho integration guide.


OpenViking

Context database by Volcengine (ByteDance) with filesystem-style knowledge hierarchy, tiered retrieval, and automatic memory extraction into 6 categories.

Best for Self-hosted knowledge management with structured browsing
Requires pip install openviking + running server
Data storage Self-hosted (local or cloud)
Cost Free (open-source, AGPL-3.0)

Tools: viking_search (semantic search), viking_read (tiered: abstract/overview/full), viking_browse (filesystem navigation), viking_remember (store facts), viking_add_resource (ingest URLs/docs)

Setup:

# Start the OpenViking server first
pip install openviking
openviking-server

# Then configure Hermes
hermes memory setup    # select "openviking"
# Or manually:
hermes config set memory.provider openviking
echo "OPENVIKING_ENDPOINT=http://localhost:1933" >> ~/.hermes/.env

Key features:

  • Tiered context loading: L0 (~100 tokens) → L1 (~2k) → L2 (full)
  • Automatic memory extraction on session commit (profile, preferences, entities, events, cases, patterns)
  • viking:// URI scheme for hierarchical knowledge browsing

Mem0

Server-side LLM fact extraction with semantic search, reranking, and automatic deduplication.

Best for Hands-off memory management — Mem0 handles extraction automatically
Requires pip install mem0ai + API key
Data storage Mem0 Cloud
Cost Mem0 pricing

Tools: mem0_profile (all stored memories), mem0_search (semantic search + reranking), mem0_conclude (store verbatim facts)

Setup:

hermes memory setup    # select "mem0"
# Or manually:
hermes config set memory.provider mem0
echo "MEM0_API_KEY=your-key" >> ~/.hermes/.env

Config: $HERMES_HOME/mem0.json

Key Default Description
user_id hermes-user User identifier
agent_id hermes Agent identifier

Hindsight

Long-term memory with knowledge graph, entity resolution, and multi-strategy retrieval. The hindsight_reflect tool provides cross-memory synthesis that no other provider offers. Automatically retains full conversation turns (including tool calls) with session-level document tracking.

Best for Knowledge graph-based recall with entity relationships
Requires Cloud: API key from ui.hindsight.vectorize.io. Local: LLM API key (OpenAI, Groq, OpenRouter, etc.)
Data storage Hindsight Cloud or local embedded PostgreSQL
Cost Hindsight pricing (cloud) or free (local)

Tools: hindsight_retain (store with entity extraction), hindsight_recall (multi-strategy search), hindsight_reflect (cross-memory synthesis)

Setup:

hermes memory setup    # select "hindsight"
# Or manually:
hermes config set memory.provider hindsight
echo "HINDSIGHT_API_KEY=your-key" >> ~/.hermes/.env

The setup wizard installs dependencies automatically and only installs what's needed for the selected mode (hindsight-client for cloud, hindsight-all for local). Requires hindsight-client >= 0.4.22 (auto-upgraded on session start if outdated).

Local mode UI: hindsight-embed -p hermes ui start

Config: $HERMES_HOME/hindsight/config.json

Key Default Description
mode cloud cloud or local
bank_id hermes Memory bank identifier
recall_budget mid Recall thoroughness: low / mid / high
memory_mode hybrid hybrid (context + tools), context (auto-inject only), tools (tools only)
auto_retain true Automatically retain conversation turns
auto_recall true Automatically recall memories before each turn
retain_async true Process retain asynchronously on the server
tags Tags applied when storing memories
recall_tags Tags to filter on recall

See plugin README for the full configuration reference.


Holographic

Local SQLite fact store with FTS5 full-text search, trust scoring, and HRR (Holographic Reduced Representations) for compositional algebraic queries.

Best for Local-only memory with advanced retrieval, no external dependencies
Requires Nothing (SQLite is always available). NumPy optional for HRR algebra.
Data storage Local SQLite
Cost Free

Tools: fact_store (9 actions: add, search, probe, related, reason, contradict, update, remove, list), fact_feedback (helpful/unhelpful rating that trains trust scores)

Setup:

hermes memory setup    # select "holographic"
# Or manually:
hermes config set memory.provider holographic

Config: config.yaml under plugins.hermes-memory-store

Key Default Description
db_path $HERMES_HOME/memory_store.db SQLite database path
auto_extract false Auto-extract facts at session end
default_trust 0.5 Default trust score (0.01.0)

Unique capabilities:

  • probe — entity-specific algebraic recall (all facts about a person/thing)
  • reason — compositional AND queries across multiple entities
  • contradict — automated detection of conflicting facts
  • Trust scoring with asymmetric feedback (+0.05 helpful / -0.10 unhelpful)

RetainDB

Cloud memory API with hybrid search (Vector + BM25 + Reranking), 7 memory types, and delta compression.

Best for Teams already using RetainDB's infrastructure
Requires RetainDB account + API key
Data storage RetainDB Cloud
Cost $20/month

Tools: retaindb_profile (user profile), retaindb_search (semantic search), retaindb_context (task-relevant context), retaindb_remember (store with type + importance), retaindb_forget (delete memories)

Setup:

hermes memory setup    # select "retaindb"
# Or manually:
hermes config set memory.provider retaindb
echo "RETAINDB_API_KEY=your-key" >> ~/.hermes/.env

ByteRover

Persistent memory via the brv CLI — hierarchical knowledge tree with tiered retrieval (fuzzy text → LLM-driven search). Local-first with optional cloud sync.

Best for Developers who want portable, local-first memory with a CLI
Requires ByteRover CLI (npm install -g byterover-cli or install script)
Data storage Local (default) or ByteRover Cloud (optional sync)
Cost Free (local) or ByteRover pricing (cloud)

Tools: brv_query (search knowledge tree), brv_curate (store facts/decisions/patterns), brv_status (CLI version + tree stats)

Setup:

# Install the CLI first
curl -fsSL https://byterover.dev/install.sh | sh

# Then configure Hermes
hermes memory setup    # select "byterover"
# Or manually:
hermes config set memory.provider byterover

Key features:

  • Automatic pre-compression extraction (saves insights before context compression discards them)
  • Knowledge tree stored at $HERMES_HOME/byterover/ (profile-scoped)
  • SOC2 Type II certified cloud sync (optional)

Supermemory

Semantic long-term memory with profile recall, semantic search, explicit memory tools, and session-end conversation ingest via the Supermemory graph API.

Best for Semantic recall with user profiling and session-level graph building
Requires pip install supermemory + API key
Data storage Supermemory Cloud
Cost Supermemory pricing

Tools: supermemory_store (save explicit memories), supermemory_search (semantic similarity search), supermemory_forget (forget by ID or best-match query), supermemory_profile (persistent profile + recent context)

Setup:

hermes memory setup    # select "supermemory"
# Or manually:
hermes config set memory.provider supermemory
echo 'SUPERMEMORY_API_KEY=***' >> ~/.hermes/.env

Config: $HERMES_HOME/supermemory.json

Key Default Description
container_tag hermes Container tag used for search and writes. Supports {identity} template for profile-scoped tags.
auto_recall true Inject relevant memory context before turns
auto_capture true Store cleaned user-assistant turns after each response
max_recall_results 10 Max recalled items to format into context
profile_frequency 50 Include profile facts on first turn and every N turns
capture_mode all Skip tiny or trivial turns by default
search_mode hybrid Search mode: hybrid, memories, or documents
api_timeout 5.0 Timeout for SDK and ingest requests

Environment variables: SUPERMEMORY_API_KEY (required), SUPERMEMORY_CONTAINER_TAG (overrides config).

Key features:

  • Automatic context fencing — strips recalled memories from captured turns to prevent recursive memory pollution
  • Session-end conversation ingest for richer graph-level knowledge building
  • Profile facts injected on first turn and at configurable intervals
  • Trivial message filtering (skips "ok", "thanks", etc.)
  • Profile-scoped containers — use {identity} in container_tag (e.g. hermes-{identity}hermes-coder) to isolate memories per Hermes profile
  • Multi-container mode — enable enable_custom_container_tags with a custom_containers list to let the agent read/write across named containers. Automatic operations (sync, prefetch) stay on the primary container.
Multi-container example
{
  "container_tag": "hermes",
  "enable_custom_container_tags": true,
  "custom_containers": ["project-alpha", "shared-knowledge"],
  "custom_container_instructions": "Use project-alpha for coding context."
}

Support: Discord · support@supermemory.com


Provider Comparison

Provider Storage Cost Tools Dependencies Unique Feature
Honcho Cloud Paid 5 honcho-ai Dialectic user modeling + session-scoped context
OpenViking Self-hosted Free 5 openviking + server Filesystem hierarchy + tiered loading
Mem0 Cloud Paid 3 mem0ai Server-side LLM extraction
Hindsight Cloud/Local Free/Paid 3 hindsight-client Knowledge graph + reflect synthesis
Holographic Local Free 2 None HRR algebra + trust scoring
RetainDB Cloud $20/mo 5 requests Delta compression
ByteRover Local/Cloud Free/Paid 3 brv CLI Pre-compression extraction
Supermemory Cloud Paid 4 supermemory Context fencing + session graph ingest + multi-container

Profile Isolation

Each provider's data is isolated per profile:

  • Local storage providers (Holographic, ByteRover) use $HERMES_HOME/ paths which differ per profile
  • Config file providers (Honcho, Mem0, Hindsight, Supermemory) store config in $HERMES_HOME/ so each profile has its own credentials
  • Cloud providers (RetainDB) auto-derive profile-scoped project names
  • Env var providers (OpenViking) are configured via each profile's .env file

Building a Memory Provider

See the Developer Guide: Memory Provider Plugins for how to create your own.