usewhisper-autohook
Auto-hook tools for OpenClaw: query Whisper Context before every generation, ingest after every turn. Built for Telegram agents (stable user_id/session_id).
Best use case
usewhisper-autohook is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Auto-hook tools for OpenClaw: query Whisper Context before every generation, ingest after every turn. Built for Telegram agents (stable user_id/session_id).
Teams using usewhisper-autohook should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/usewhisper-autohook/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How usewhisper-autohook Compares
| Feature / Agent | usewhisper-autohook | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Auto-hook tools for OpenClaw: query Whisper Context before every generation, ingest after every turn. Built for Telegram agents (stable user_id/session_id).
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
Best AI Skills for Claude
Explore the best AI skills for Claude and Claude Code across coding, research, workflow automation, documentation, and agent operations.
AI Agents for Marketing
Discover AI agents for marketing workflows, from SEO and content production to campaign research, outreach, and analytics.
AI Agents for Startups
Explore AI agent skills for startup validation, product research, growth experiments, documentation, and fast execution with small teams.
SKILL.md Source
# usewhisper-autohook (OpenClaw Skill)
This skill is a thin wrapper designed to make "automatic memory" easy:
- `get_whisper_context(user_id, session_id, current_query)` for pre-response context injection
- `ingest_whisper_turn(user_id, session_id, user_msg, assistant_msg)` for post-response ingestion
It defaults to the token-saving settings you almost always want:
- `compress: true`
- `compression_strategy: "delta"`
- `use_cache: true`
- `include_memories: true`
It also persists the last `context_hash` locally (per `api_url + project + user_id + session_id`) so delta compression works by default without you needing to pass `previous_context_hash`.
## Install (ClawHub)
```bash
npx clawhub@latest install usewhisper-autohook
```
## Setup
Set env vars wherever OpenClaw runs your agent:
```bash
WHISPER_CONTEXT_API_URL=https://context.usewhisper.dev
WHISPER_CONTEXT_API_KEY=YOUR_KEY
WHISPER_CONTEXT_PROJECT=openclaw-yourname
```
Notes:
- `WHISPER_CONTEXT_API_URL` is optional (defaults to `https://context.usewhisper.dev`).
- The helper will auto-create the project on first use if it does not exist yet.
## The "Auto Loop" Prompt (Copy/Paste)
Add this to your agent's **system instruction** (or equivalent):
```text
Before you think or respond to any message:
1) Call get_whisper_context with:
user_id = "telegram:{from_id}"
session_id = "telegram:{chat_id}"
current_query = the user's message text
2) If the returned context is not empty, prepend it to your prompt as:
"Relevant long-term memory:\n{context}\n\nNow respond to:\n{user_message}"
After you generate your final response:
1) Call ingest_whisper_turn with the same user_id and session_id and:
user_msg = the full user message
assistant_msg = your full final reply
Always do this. Never skip.
```
If you are not on Telegram, keep the same structure: the important part is that `user_id` and `session_id` are stable.
## If Your Agent Still Replays Full Chat History (Proxy Mode)
If you cannot control how your agent/framework constructs prompts (it always sends the full conversation history), a system prompt cannot reduce token spend: the tokens are already sent to the model.
In that case, run the built-in OpenAI-compatible proxy so the **network payload is actually reduced**. The proxy:
- receives `POST /v1/chat/completions`
- queries Whisper memory
- strips chat history down to system + last user message
- injects `Relevant long-term memory: ...`
- calls your upstream OpenAI-compatible provider
- ingests the turn back into Whisper
Start the proxy:
```bash
export OPENAI_API_KEY="YOUR_UPSTREAM_KEY"
node usewhisper-autohook.mjs serve_openai_proxy --port 8787
```
Then point your agent’s OpenAI base URL to `http://127.0.0.1:8787` (exact env/config depends on your agent).
If your agent supports overriding the upstream base URL, you can set:
- `OPENAI_BASE_URL` (for OpenAI-compatible upstreams)
- `ANTHROPIC_BASE_URL` (for Anthropic upstreams)
Or pass `--upstream_base_url` when starting the proxy.
For correct per-user/session memory, pass headers on each request:
- `x-whisper-user-id: telegram:{from_id}`
- `x-whisper-session-id: telegram:{chat_id}`
### Anthropic Native Proxy (`/v1/messages`)
If your agent uses **Anthropic's native API** (not OpenAI-compatible), run the Anthropic proxy instead:
```bash
export ANTHROPIC_API_KEY="YOUR_ANTHROPIC_KEY"
node usewhisper-autohook.mjs serve_anthropic_proxy --port 8788
```
Then point your agent’s Anthropic base URL to `http://127.0.0.1:8788`.
Pass IDs via headers (recommended):
- `x-whisper-user-id: telegram:{from_id}`
- `x-whisper-session-id: telegram:{chat_id}`
If you do not pass headers, the proxies will attempt to infer stable IDs from OpenClaw's system prompt / session key if present. This is best-effort; headers are still the most reliable.
## CLI Usage (what the tools call)
All commands print JSON to stdout.
### Get packed context
```bash
node usewhisper-autohook.mjs get_whisper_context \
--current_query "What did we decide last time?" \
--user_id "telegram:123" \
--session_id "telegram:456"
```
### Ingest a completed turn
```bash
node usewhisper-autohook.mjs ingest_whisper_turn \
--user_id "telegram:123" \
--session_id "telegram:456" \
--user_msg "..." \
--assistant_msg "..."
```
For large content, pass JSON via stdin:
```bash
echo '{ "user_msg": "....", "assistant_msg": "...." }' | node usewhisper-autohook.mjs ingest_whisper_turn --session_id "telegram:456" --user_id "telegram:123" --turn_json -
```
## Output Format
`get_whisper_context` returns:
- `context`: the packed context string to prepend
- `context_hash`: a short hash you can store and pass back as `previous_context_hash` next time (optional)
- `meta`: cache hit and compression info (useful for debugging)Related Skills
---
name: article-factory-wechat
humanizer
Remove signs of AI-generated writing from text. Use when editing or reviewing text to make it sound more natural and human-written. Based on Wikipedia's comprehensive "Signs of AI writing" guide. Detects and fixes patterns including: inflated symbolism, promotional language, superficial -ing analyses, vague attributions, em dash overuse, rule of three, AI vocabulary words, negative parallelisms, and excessive conjunctive phrases.
find-skills
Helps users discover and install agent skills when they ask questions like "how do I do X", "find a skill for X", "is there a skill that can...", or express interest in extending capabilities. This skill should be used when the user is looking for functionality that might exist as an installable skill.
tavily-search
Use Tavily API for real-time web search and content extraction. Use when: user needs real-time web search results, research, or current information from the web. Requires Tavily API key.
baidu-search
Search the web using Baidu AI Search Engine (BDSE). Use for live information, documentation, or research topics.
agent-autonomy-kit
Stop waiting for prompts. Keep working.
Meeting Prep
Never walk into a meeting unprepared again. Your agent researches all attendees before calendar events—pulling LinkedIn profiles, recent company news, mutual connections, and conversation starters. Generates a briefing doc with talking points, icebreakers, and context so you show up informed and confident. Triggered automatically before meetings or on-demand. Configure research depth, advance timing, and output format. Walking into meetings blind is amateur hour—missed connections, generic small talk, zero leverage. Use when setting up meeting intelligence, researching specific attendees, generating pre-meeting briefs, or automating your prep workflow.
self-improvement
Captures learnings, errors, and corrections to enable continuous improvement. Use when: (1) A command or operation fails unexpectedly, (2) User corrects Claude ('No, that's wrong...', 'Actually...'), (3) User requests a capability that doesn't exist, (4) An external API or tool fails, (5) Claude realizes its knowledge is outdated or incorrect, (6) A better approach is discovered for a recurring task. Also review learnings before major tasks.
botlearn-healthcheck
botlearn-healthcheck — BotLearn autonomous health inspector for OpenClaw instances across 5 domains (hardware, config, security, skills, autonomy); triggers on system check, health report, diagnostics, or scheduled heartbeat inspection.
linkedin-cli
A bird-like LinkedIn CLI for searching profiles, checking messages, and summarizing your feed using session cookies.
notebooklm
Google NotebookLM 非官方 Python API 的 OpenClaw Skill。支持内容生成(播客、视频、幻灯片、测验、思维导图等)、文档管理和研究自动化。当用户需要使用 NotebookLM 生成音频概述、视频、学习材料或管理知识库时触发。
小红书长图文发布 Skill
## 概述