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Honcho 记忆管理

2026-05-21 · Skills中心

Honcho 记忆管理

配置和使用 Honcho 记忆系统与 Hermes 集成

Honcho Memory for Hermes

Honcho provides AI-native cross-session user modeling. It learns who the user is across conversations and gives every Hermes profile its own peer identity while sharing a unified view of the user.

使用场景

  • Setting up Honcho (cloud or self-hosted)
  • Troubleshooting memory not working / peers not syncing
  • Creating multi-profile setups where each agent has its own Honcho peer
  • Tuning observation, recall, dialectic depth, or write frequency settings
  • Understanding what the 5 Honcho tools do and when to use them
  • Configuring context budgets and session summary injection
  • 安装配置

    Cloud (app.honcho.dev)

    
    hermes honcho setup
    # select "cloud", paste API key from https://app.honcho.dev
    

    Self-hosted

    
    hermes honcho setup
    # select "local", enter base URL (e.g. http://localhost:8000)
    

    See: https://docs.honcho.dev/v3/guides/integrations/hermes#running-honcho-locally-with-hermes

    Verify

    
    hermes honcho status    # shows resolved config, connection test, peer info
    

    架构说明

    Base Context Injection

    When Honcho injects context into the system prompt (in hybrid or context recall modes), it assembles the base context block in this order:

  • Session summary -- a short digest of the current session so far (placed first so the model has immediate conversational continuity)
  • User representation -- Honcho's accumulated model of the user (preferences, facts, patterns)
  • AI peer card -- the identity card for this Hermes profile's AI peer
  • The session summary is generated automatically by Honcho at the start of each turn (when a prior session exists). It gives the model a warm start without replaying full history.

    Cold / Warm Prompt Selection

    Honcho automatically selects between two prompt strategies:

    ConditionStrategyWhat happens
    No prior session or empty representation**Cold start**Lightweight intro prompt; skips summary injection; encourages the model to learn about the user

    You do not need to configure this -- it is automatic based on session state.

    Peers

    Honcho models conversations as interactions between peers. Hermes creates two peers per session:

  • User peer (peerName): represents the human. Honcho builds a user representation from observed messages.
  • AI peer (aiPeer): represents this Hermes instance. Each profile gets its own AI peer so agents develop independent views.
  • Observation

    Each peer has two observation toggles that control what Honcho learns from:

    Existing representation and/or session history**Warm start**Full base context injection (summary → representation → card); richer system prompt
    ToggleWhat it does
    `observeMe`Peer's own messages are observed (builds self-representation)

    Default: all four toggles on (full bidirectional observation).

    Configure per-peer in honcho.json:

    
    {
      "observation": {
        "user": { "observeMe": true, "observeOthers": true },
        "ai":   { "observeMe": true, "observeOthers": true }
      }
    }
    

    Or use the shorthand presets:

    `observeOthers`Other peers' messages are observed (builds cross-peer understanding)
    PresetUserAIUse case
    `"directional"` (default)me:on, others:onme:on, others:onMulti-agent, full memory

    Settings changed in the Honcho dashboard are synced back on session init -- server-side config wins over local defaults.

    Sessions

    Honcho sessions scope where messages and observations land. Strategy options:

    `"unified"`me:on, others:offme:off, others:onSingle agent, user-only modeling
    StrategyBehavior
    `per-directory` (default)One session per working directory
    `per-repo`One session per git repository root
    `per-session`New Honcho session each Hermes run

    Manual override: hermes honcho map my-project-name

    Recall Modes

    How the agent accesses Honcho memory:

    `global`Single session across all directories
    ModeAuto-inject context?Tools available?Use case
    `hybrid` (default)YesYesAgent decides when to use tools vs auto context
    `context`YesNo (hidden)Minimal token cost, no tool calls

    Three Orthogonal Knobs

    Honcho's dialectic behavior is controlled by three independent dimensions. Each can be tuned without affecting the others:

    Cadence (when)

    Controls how often dialectic and context calls happen.

    `tools`NoYesAgent controls all memory access explicitly
    KeyDefaultDescription
    `contextCadence``1`Min turns between context API calls
    `dialecticCadence``2`Min turns between dialectic API calls. Recommended 1–5

    Higher cadence values fire the dialectic LLM less often. dialecticCadence: 2 means the engine fires every other turn. Setting it to 1 fires every turn.

    Depth (how many)

    Controls how many rounds of dialectic reasoning Honcho performs per query.

    `injectionFrequency``every-turn``every-turn` or `first-turn` for base context injection
    KeyDefaultRangeDescription
    `dialecticDepth``1`1-3Number of dialectic reasoning rounds per query

    dialecticDepth: 2 means Honcho runs two rounds of dialectic synthesis. The first round produces an initial answer; the second refines it.

    dialecticDepthLevels lets you set the reasoning level for each round independently:

    
    {
      "dialecticDepth": 3,
      "dialecticDepthLevels": ["low", "medium", "high"]
    }
    

    If dialecticDepthLevels is omitted, rounds use proportional levels derived from dialecticReasoningLevel (the base):

    `dialecticDepthLevels`--arrayOptional per-depth-round level overrides (see below)
    DepthPass levels
    1[base]
    2[minimal, base]

    This keeps earlier passes cheap while using full depth on the final synthesis.

    Depth at session start. The session-start prewarm runs the full configured dialecticDepth in the background before turn 1. A single-pass prewarm on a cold peer often returns thin output — multi-pass depth runs the audit/reconcile cycle before the user ever speaks. Turn 1 consumes the prewarm result directly; if prewarm hasn't landed in time, turn 1 falls back to a synchronous call with a bounded timeout.

    Level (how hard)

    Controls the intensity of each dialectic reasoning round.

    3[minimal, base, low]
    KeyDefaultDescription
    `dialecticReasoningLevel``low``minimal`, `low`, `medium`, `high`, `max`

    Higher levels produce richer synthesis but cost more tokens on Honcho's backend.

    Multi-Profile Setup

    Each Hermes profile gets its own Honcho AI peer while sharing the same workspace (user context). This means:

  • All profiles see the same user representation
  • Each profile builds its own AI identity and observations
  • Conclusions written by one profile are visible to others via the shared workspace
  • Create a profile with Honcho peer

    
    hermes profile create coder --clone
    # creates host block hermes.coder, AI peer "coder", inherits config from default
    

    What --clone does for Honcho:

  • Creates a hermes.coder host block in honcho.json
  • Sets aiPeer: "coder" (the profile name)
  • Inherits workspace, peerName, writeFrequency, recallMode, etc. from default
  • Eagerly creates the peer in Honcho so it exists before first message
  • Backfill existing profiles

    
    hermes honcho sync    # creates host blocks for all profiles that don't have one yet
    

    Per-profile config

    Override any setting in the host block:

    
    {
      "hosts": {
        "hermes.coder": {
          "aiPeer": "coder",
          "recallMode": "tools",
          "dialecticDepth": 2,
          "observation": {
            "user": { "observeMe": true, "observeOthers": false },
            "ai": { "observeMe": true, "observeOthers": true }
          }
        }
      }
    }
    

    Tools

    The agent has 5 bidirectional Honcho tools (hidden in context recall mode):

    `dialecticDynamic``true`When `true`, the model can pass `reasoning_level` to `honcho_reasoning` to override the default per-call. `false` = always use `dialecticReasoningLevel`, model overrides ignored
    ToolLLM call?CostUse when
    `honcho_profile`NominimalQuick factual snapshot at conversation start or for fast name/role/pref lookups
    `honcho_search`NolowFetch specific past facts to reason over yourself — raw excerpts, no synthesis
    `honcho_context`NolowFull session context snapshot: summary, representation, card, recent messages
    `honcho_reasoning`Yesmedium–highNatural language question synthesized by Honcho's dialectic engine

    `honcho_profile`

    Read or update a peer card — curated key facts (name, role, preferences, communication style). Pass card: [...] to update; omit to read. No LLM call.

    `honcho_search`

    Semantic search over stored context for a specific peer. Returns raw excerpts ranked by relevance, no synthesis. Default 800 tokens, max 2000. Good when you need specific past facts to reason over yourself rather than a synthesized answer.

    `honcho_context`

    Full session context snapshot from Honcho — session summary, peer representation, peer card, and recent messages. No LLM call. Use when you want to see everything Honcho knows about the current session and peer in one shot.

    `honcho_reasoning`

    Natural language question answered by Honcho's dialectic reasoning engine (LLM call on Honcho's backend). Higher cost, higher quality. Pass reasoning_level to control depth: minimal (fast/cheap) → lowmediumhighmax (thorough). Omit to use the configured default (low). Use for synthesized understanding of the user's patterns, goals, or current state.

    `honcho_conclude`

    Write or delete a persistent conclusion about a peer. Pass conclusion: "..." to create. Pass delete_id: "..." to remove a conclusion (for PII removal — Honcho self-heals incorrect conclusions over time, so deletion is only needed for PII). You MUST pass exactly one of the two.

    Bidirectional peer targeting

    All 5 tools accept an optional peer parameter:

  • peer: "user" (default) — operates on the user peer
  • peer: "ai" — operates on this profile's AI peer
  • peer: "" — any peer ID in the workspace
  • Examples:

    
    honcho_profile                        # read user's card
    honcho_profile peer="ai"              # read AI peer's card
    honcho_reasoning query="What does this user care about most?"
    honcho_reasoning query="What are my interaction patterns?" peer="ai" reasoning_level="medium"
    honcho_conclude conclusion="Prefers terse answers"
    honcho_conclude conclusion="I tend to over-explain code" peer="ai"
    honcho_conclude delete_id="abc123"    # PII removal
    

    Agent Usage Patterns

    Guidelines for Hermes when Honcho memory is active.

    On conversation start

    
    1. honcho_profile                  → fast warmup, no LLM cost
    2. If context looks thin → honcho_context  (full snapshot, still no LLM)
    3. If deep synthesis needed → honcho_reasoning  (LLM call, use sparingly)
    

    Do NOT call honcho_reasoning on every turn. Auto-injection already handles ongoing context refresh. Use the reasoning tool only when you genuinely need synthesized insight the base context doesn't provide.

    When the user shares something to remember

    
    honcho_conclude conclusion=""
    

    Good conclusions: "Prefers code examples over prose explanations", "Working on a Rust async project through April 2026"

    Bad conclusions: "User said something about Rust" (too vague), "User seems technical" (already in representation)

    When the user asks about past context / you need to recall specifics

    
    honcho_search query=""       → fast, no LLM, good for specific facts
    honcho_context                       → full snapshot with summary + messages
    honcho_reasoning query=""  → synthesized answer, use when search isn't enough
    

    使用场景 `peer: "ai"`

    Use AI peer targeting to build and query the agent's own self-knowledge:

  • honcho_conclude conclusion="I tend to be verbose when explaining architecture" peer="ai" — self-correction
  • honcho_reasoning query="How do I typically handle ambiguous requests?" peer="ai" — self-audit
  • honcho_profile peer="ai" — review own identity card
  • When NOT to call tools

    In hybrid and context modes, base context (user representation + card + session summary) is auto-injected before every turn. Do not re-fetch what was already injected. Call tools only when:

  • You need something the injected context doesn't have
  • The user explicitly asks you to recall or check memory
  • You're writing a conclusion about something new
  • Cadence awareness

    honcho_reasoning on the tool side shares the same cost as auto-injection dialectic. After an explicit tool call, the auto-injection cadence resets — avoiding double-charging the same turn.

    Config Reference

    Config file: $HERMES_HOME/honcho.json (profile-local) or ~/.honcho/config.json (global).

    Key settings

    `honcho_conclude`NominimalWrite or delete a persistent fact; pass `peer: "ai"` for AI self-knowledge
    KeyDefaultDescription
    `apiKey`--API key ([get one](https://app.honcho.dev))
    `baseUrl`--Base URL for self-hosted Honcho
    `peerName`--User peer identity
    `aiPeer`host keyAI peer identity
    `workspace`host keyShared workspace ID
    `recallMode``hybrid``hybrid`, `context`, or `tools`
    `observation`all onPer-peer `observeMe`/`observeOthers` booleans
    `writeFrequency``async``async`, `turn`, `session`, or integer N
    `sessionStrategy``per-directory``per-directory`, `per-repo`, `per-session`, `global`

    Dialectic settings

    `messageMaxChars``25000`Max chars per message (chunked if exceeded)
    KeyDefaultDescription
    `dialecticReasoningLevel``low``minimal`, `low`, `medium`, `high`, `max`
    `dialecticDynamic``true`Auto-bump reasoning by query complexity. `false` = fixed level
    `dialecticDepth``1`Number of dialectic rounds per query (1-3)
    `dialecticDepthLevels`--Optional array of per-round levels, e.g. `["low", "high"]`

    Context budget and injection

    `dialecticMaxInputChars``10000`Max chars for dialectic query input
    KeyDefaultDescription
    `contextTokens`uncappedMax tokens for the combined base context injection (summary + representation + card). Opt-in cap — omit to leave uncapped, set to an integer to bound injection size.
    `injectionFrequency``every-turn``every-turn` or `first-turn`
    `contextCadence``1`Min turns between context API calls

    The contextTokens budget is enforced at injection time. If the session summary + representation + card exceed the budget, Honcho trims the summary first, then the representation, preserving the card. This prevents context blowup in long sessions.

    Memory-context sanitization

    Honcho sanitizes the memory-context block before injection to prevent prompt injection and malformed content:

  • Strips XML/HTML tags from user-authored conclusions
  • Normalizes whitespace and control characters
  • Truncates individual conclusions that exceed messageMaxChars
  • Escapes delimiter sequences that could break the system prompt structure
  • This fix addresses edge cases where raw user conclusions containing markup or special characters could corrupt the injected context block.

    常见问题

    "Honcho not configured"

    Run hermes honcho setup. Ensure memory.provider: honcho is in ~/.hermes/config.yaml.

    Memory not persisting across sessions

    Check hermes honcho status -- verify saveMessages: true and writeFrequency isn't session (which only writes on exit).

    Profile not getting its own peer

    Use --clone when creating: hermes profile create --clone. For existing profiles: hermes honcho sync.

    Observation changes in dashboard not reflected

    Observation config is synced from the server on each session init. Start a new session after changing settings in the Honcho UI.

    Messages truncated

    Messages over messageMaxChars (default 25k) are automatically chunked with [continued] markers. If you're hitting this often, check if tool results or skill content is inflating message size.

    Context injection too large

    If you see warnings about context budget exceeded, lower contextTokens or reduce dialecticDepth. The session summary is trimmed first when the budget is tight.

    Session summary missing

    Session summary requires at least one prior turn in the current Honcho session. On cold start (new session, no history), the summary is omitted and Honcho uses the cold-start prompt strategy instead.

    CLI Commands

    `dialecticCadence``2`Min turns between dialectic LLM calls (recommended 1–5)
    CommandDescription
    `hermes honcho setup`Interactive setup wizard (cloud/local, identity, observation, recall, sessions)
    `hermes honcho status`Show resolved config, connection test, peer info for active profile
    `hermes honcho enable`Enable Honcho for the active profile (creates host block if needed)
    `hermes honcho disable`Disable Honcho for the active profile
    `hermes honcho peer`Show or update peer names (`--user `, `--ai `, `--reasoning `)
    `hermes honcho peers`Show peer identities across all profiles
    `hermes honcho mode`Show or set recall mode (`hybrid`, `context`, `tools`)
    `hermes honcho tokens`Show or set token budgets (`--context `, `--dialectic `)
    `hermes honcho sessions`List known directory-to-session-name mappings
    `hermes honcho map `Map current working directory to a Honcho session name
    `hermes honcho identity`Seed AI peer identity or show both peer representations
    `hermes honcho sync`Create host blocks for all Hermes profiles that don't have one yet
    `hermes honcho migrate`Step-by-step migration guide from OpenClaw native memory to Hermes + Honcho
    `hermes memory setup`Generic memory provider picker (selecting "honcho" runs the same wizard)
    `hermes memory status`Show active memory provider and config

    评论区

    发表评论

    
    `hermes memory off`Disable external memory provider