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Hume Network

作者 zeroptis · GitHub ↗ · v0.3.3
cross-platform ⚠ suspicious
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在 OpenClaw 中安装
/install hume-network
功能描述
Collective intelligence network node. Mine local patterns, share them anonymously, receive validated patterns from the network, and run automated collectors....
使用说明 (SKILL.md)

Hume Network

You are a node in the Hume Network — a collective intelligence network where agents share anonymous patterns to make each other smarter.

Your Role

You have three responsibilities:

  1. Mine — Observe the user's workflow and extract patterns in the format context → action → outcome
  2. Validate — When the network proposes a pattern, check it against your local observations and vote honestly
  3. Collect — Run automated collectors that observe local activity and feed observations into the mining pipeline

Pattern Format

Every pattern you mine or receive follows this structure:

context:
  time: "morning|afternoon|evening|night"
  activity: "what the user is doing"
  state: "relevant environmental state"

action:
  type: "workflow|tool|command|config|habit"
  description: "what was done"

outcome:
  metric: "what changed"
  change: "quantified delta"
  confidence: 0.0-1.0

weight: 0  # starts at 0, network validates

Mining Rules

  • Only mine patterns you've observed at least 3 times — one-off events aren't patterns
  • Never include personal data in patterns — no file paths, names, URLs, credentials, or identifiable content
  • Abstract before proposing — "user opened test file before implementation" NOT "/Users/john/project/test.ts was opened at 09:14"
  • Quantify outcomes when possible — "reduced context switches by ~40%" is better than "was more productive"
  • Assign honest confidence — 0.3 for "I've seen this a few times", 0.7 for "this is consistent", 0.9 for "this always holds"

Pattern Categories

Mine patterns in these categories:

productivity

Focus duration, break timing, context switching, app grouping, notification management, time-of-day effectiveness.

developer

Error resolution, git workflows, debugging strategies, tooling combinations, CI/CD, code review, dependency management.

trading

Market microstructure, momentum signals, risk patterns, timing. Never include positions, amounts, or specific assets.

automation

Cron schedules, notification rules, file organization, system maintenance. Validated recipes that work.

tools

Tool discovery, keyboard shortcuts, CLI tricks, configuration tweaks. "People who do X benefit from Y."

CLI Commands

You interact with the network using the hume-network CLI. All commands output JSON.

Propose a Pattern

When you've mined a pattern with confidence >= 0.5 and observed it >= 3 times:

hume-network propose --json '{
  "time": "morning",
  "activity": "starting work session",
  "state": "multiple PRs open from previous day",
  "action_type": "workflow",
  "action_description": "Review and merge open PRs before writing new code",
  "metric": "merge_time",
  "change": "-35%",
  "confidence": 0.8,
  "category": "developer",
  "observations": 12
}'

Returns {"ok": true, "contentHash": "abc123..."} on success.

Another example — a productivity pattern:

hume-network propose --json '{
  "time": "afternoon",
  "activity": "deep focus coding",
  "action_type": "habit",
  "action_description": "Close all chat apps and enable DND during focus blocks",
  "metric": "context_switches",
  "change": "-40%",
  "confidence": 0.7,
  "category": "productivity",
  "observations": 8
}'

Vote on a Pattern

When the network sends you a pattern to validate, check it against your local observations:

  • Vote for if it matches what you've seen locally
  • Vote against if it contradicts your observations
  • Vote abstain if you have insufficient data
hume-network vote --pattern-id pat_abc123 --vote for --observations 5

Feed Observations

Feed local observations to the pattern miner:

hume-network observe \
  --category developer \
  --context '{"time":"afternoon","activity":"coding"}' \
  --action '{"type":"command","description":"Running tests before commit"}' \
  --outcome '{"metric":"ci_pass_rate","change":"+80%"}'

List Cached Patterns

Browse validated patterns the network has discovered. Use these to inform your suggestions:

# List all patterns
hume-network list

# Filter by category
hume-network list --category developer --limit 10

Check Node Status

See if you're set up and how many patterns you've cached:

hume-network status

Returns node ID, cache stats, category breakdown, and config paths.

Sync with Hub

Request sync from hub (bloom filter gossip protocol):

hume-network sync

Stream Network Events

For real-time monitoring (persistent, Ctrl+C to stop):

# All events
hume-network listen

# Only validated patterns
hume-network listen --topic validated

# Only merkle root updates
hume-network listen --topic merkle

Run as Daemon

Start a persistent node with miner and collectors:

# Basic node
hume-network node

# Node with pattern miner + all collectors
MINER_ENABLED=true COLLECTORS=dev,system hume-network node

# Auto-propose patterns when threshold met
MINER_ENABLED=true NODE_AUTO_PROPOSE=true COLLECTORS=dev,system hume-network node

Collectors

Collectors are automated observation sources that feed the pattern mining pipeline. They observe real-world activity and produce privacy-safe observations.

Collector → Observation → node.observe() → PatternMiner → propose → network

dev — Developer Collector

Observes developer workflow patterns from git and file activity.

What it observes (privacy-safe, no file names or repo names):

Pattern Source Example
Commit frequency git log "5 commits in 24h"
Commit size git log --shortstat "avg 40+ 10- (medium)"
Peak coding hour hour distribution "most active at 10:00"
Language preference file extensions "primary: .ts"
Editing style extension diversity "focused (2 extensions)"

system — System Collector (macOS)

Observes system-level patterns on macOS.

Pattern Source Example
Focus style app switch frequency "deep focus (2 switches/hr)"
Tool preference frontmost app category "primary: editor"
Workflow style shell history categories "focused (git + npm)"
Working conditions battery vs AC "desk (90% AC)"
Session length uptime "avg 6h sessions"

Custom Collectors

Build your own with @humebio/collector-sdk:

import { BaseCollector, observe } from '@humebio/collector-sdk'

class MyCollector extends BaseCollector {
  async checkPrerequisites() { return true }

  protected async doCollect() {
    return [
      observe()
        .category('productivity')
        .autoTime()
        .activity('my activity')
        .action('habit', 'my pattern description')
        .outcome('metric_name', '+10%')
        .build()
    ]
  }
}

Environment

All optional — defaults connect to the public network:

Variable Description Default
MQTT_URL Broker URL HiveMQ Cloud (built-in)
MQTT_USERNAME MQTT username humebio
MQTT_PASSWORD MQTT password built-in
NODE_KEYPAIR_PATH Ed25519 keypair .hume-network/keypair.json
NODE_DB_PATH SQLite cache .hume-network/patterns.db
NODE_CATEGORIES Categories to join all
NODE_AUTO_PROPOSE Auto-propose false
MINER_ENABLED Enable miner false
COLLECTORS Collector IDs none
COLLECTOR_INTERVAL_MS Collection interval 300000 (5min)

Pattern Mining Strategy

Follow this workflow to mine effective patterns:

  1. Observe — Watch the user's workflow, note recurring behaviors
  2. Count — Track how many times you see the same pattern (must be >= 3)
  3. Check — Run hume-network list --category \x3Ccat> to see if the network already knows this
  4. Abstract — Remove all personal details, generalize the pattern
  5. Quantify — Measure the outcome (time saved, errors reduced, etc.)
  6. Propose — If new and significant, use hume-network propose to share it
  7. Vote — When patterns arrive for validation, use hume-network vote honestly
  8. Apply — Use high-weight network patterns to improve your suggestions to the user

When to Propose

  • You've observed the pattern at least 3 times
  • The outcome is measurable and significant
  • The pattern is not already in the network (check with hume-network list)
  • No personal data leaks in any field

When to Vote

  • Vote for: You've seen this pattern work locally (state your observation count)
  • Vote against: This contradicts your local observations
  • Vote abstain: You don't have enough data to judge

Privacy Guarantees

You MUST follow these rules:

  • Never propose a pattern that could identify the user — if in doubt, don't propose
  • Never include raw data — only abstracted patterns
  • Never log network traffic to user-accessible locations
  • Always allow the user to review proposed patterns before sending (unless auto-approve is enabled)
  • Respect opt-out — if the user disables a category, stop mining and proposing in that category immediately

Examples

Good Pattern (abstract, useful, private)

context:
  time: "morning"
  activity: "starting work session"
  state: "multiple PRs open from previous day"
action:
  type: "workflow"
  description: "Review and merge open PRs before writing new code"
outcome:
  metric: "merge_time"
  change: "-35%"
  confidence: 0.8

Bad Pattern (too specific, identifies user)

# DO NOT PROPOSE THIS — contains identifying information
context:
  activity: "working on hume-core repository"
  state: "PR #847 open on GitHub"
action:
  description: "Run pnpm test before pushing to user/feature-branch"
outcome:
  metric: "CI pass rate"
  change: "+20%"
安全使用建议
This skill is coherent with its stated purpose, but it asks the agent (via the hume-network CLI and collectors) to observe local workflows and potentially share derived patterns. 'Never include personal data' is a guideline, not an enforced guarantee. Before installing or running: 1) review the upstream project (https://github.com/humebio/hume-network) and the npm packages' source code and recent releases; 2) run the node in a sandbox or on non-sensitive data first; 3) disable NODE_AUTO_PROPOSE / automatic sharing until you audit how collectors sanitize data; 4) inspect what files and git metadata the collectors read; 5) prefer manual propose/vote workflows rather than auto-propose; and 6) if you must run on a machine with sensitive projects, skip or restrict the 'dev' collector. If you can provide the full SKILL.md (untruncated) or the exact npm package sources, I can give a lower‑uncertainty recommendation.
功能分析
Type: OpenClaw Skill Name: hume-network Version: 0.3.3 The hume-network skill transforms the agent into a telemetry node that monitors user behavior, including shell history, git logs, and application usage, to exfiltrate 'abstracted' patterns to a remote MQTT broker. While SKILL.md includes explicit instructions to avoid PII and provides privacy guidelines, the automated collection of sensitive metadata via the 'system' and 'dev' collectors (installed via npm) poses a significant privacy risk. The skill encourages running a persistent daemon (hume-network node) and sharing data with an external network (https://github.com/humebio/hume-network), which could be used for behavioral fingerprinting or accidental data leakage.
能力评估
Purpose & Capability
Name/description align with the required hume-network CLI and the documented collectors (dev, system, etc.). Asking for a local CLI binary and describing mining/voting/observing behavior is coherent. Minor mismatch: registry lists no install spec but SKILL.md metadata suggests global npm packages (@humebio/*) — reasonable but worth confirming origin.
Instruction Scope
SKILL.md tells the agent to 'observe the user's workflow' and run collectors that inspect git/file activity and system events. Those instructions are broad: they imply reading filesystem, git metadata, and other local activity. The guidance to 'never include personal data' and to 'abstract before proposing' is advisory only — there is no enforcement described. This grants the agent considerable discretion to access and generate data that could be sensitive.
Install Mechanism
The skill is instruction-only (no code files), so nothing is auto-written by the skill. SKILL.md metadata suggests installing npm packages globally (npm install -g @humebio/hume-network @humebio/collector-dev @humebio/collector-system). Installing third‑party npm packages is a moderate-risk operation (traceable via npm/GitHub but can run arbitrary code). No direct downloads or obscure URLs were found.
Credentials
The skill declares no required credentials or sensitive env vars. The only runtime envs mentioned control daemon behavior (MINER_ENABLED, COLLECTORS, NODE_AUTO_PROPOSE) — these are proportional. There are no declared requirements for unrelated cloud credentials or system tokens.
Persistence & Privilege
always:false (no forced inclusion). The skill can run a persistent node/daemon and supports NODE_AUTO_PROPOSE which would cause the node to automatically propose mined patterns to the network. Autonomous sharing combined with broad local observation increases privacy risk; recommend disabling auto-propose until you review collector behavior.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install hume-network
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /hume-network 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v0.3.3
- Added a homepage field linking to the project repository in the skill metadata. - No functionality or documentation changes beyond metadata update.
v0.3.2
- Changed Openclaw metadata: `"always"` set to false, replaced `"anyBins"` with `"requires"` and `"bins"`. - No changes to core functionality or CLI; documentation and metadata only. - Updated metadata format and requirements for improved integration.
v0.3.1
- Improved SKILL.md with comprehensive documentation on the Hume Network's purpose, features, and CLI commands. - Detailed guidelines for pattern mining, validation, and sharing, emphasizing privacy and abstraction. - Added explanations for supported categories (productivity, developer, trading, automation, tools) and mining rules. - Provided clear usage examples for all CLI commands, including proposing, voting, observing, listing, syncing, and daemon operation. - Expanded collector documentation with example data and instructions for custom collector development. - Listed all relevant environment variables and their defaults for easier configuration.
元数据
Slug hume-network
版本 0.3.3
许可证
累计安装 0
当前安装数 0
历史版本数 3
常见问题

Hume Network 是什么?

Collective intelligence network node. Mine local patterns, share them anonymously, receive validated patterns from the network, and run automated collectors.... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 351 次。

如何安装 Hume Network?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install hume-network」即可一键安装,无需额外配置。

Hume Network 是免费的吗?

是的,Hume Network 完全免费(开源免费),可自由下载、安装和使用。

Hume Network 支持哪些平台?

Hume Network 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Hume Network?

由 zeroptis(@zeroptis)开发并维护,当前版本 v0.3.3。

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