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daizongyu

Clawwork Learning Checkin

by Mike Dai · GitHub ↗ · v1.0.1 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install clawwork-learning-checkin
Description
Workplace check-in skill for Agent (Claw) with AI-generated personalized greetings
README (SKILL.md)

Clawwork Learning Check-in Skill

A workplace check-in skill that wraps the learning-checkin skill with AI-generated personalized messages.

Overview

This skill provides:

  • Workplace check-in functionality (wraps learning-checkin)
  • AI-generated welcome messages (not pre-set templates)
  • AI-generated daily greetings (not pre-set templates)
  • Message history to avoid repetition (past 5 days)
  • Version checking (non-blocking)

Prerequisites

This skill requires the learning-checkin skill to be installed. On first run:

  1. The skill will check if learning-checkin is installed
  2. If not, it will ask the user if they want to install it
  3. If approved, install from: https://clawhub.ai/daizongyu/learning-checkin

Data Storage

All data is stored locally in a data subfolder next to the skill:

\x3Cskill_directory>/data/
├── profile.json      - User profile (nickname, language)
├── greetings.json    - Message history (to avoid repetition)
└── version.txt       - Current skill version

Commands

1. Check if learning-checkin is installed

python \x3Cskill_path>/clawwork_checkin.py check-installed

Returns:

  • installed - Whether learning-checkin is installed
  • path - Path where learning-checkin was found
  • needs_installation - True if needs installation
  • install_url - URL to install learning-checkin

Agent action:

  • Run this on first interaction
  • If not installed, ask user: "Would you like me to install the learning-checkin skill first?"
  • If user agrees, install using appropriate method

2. Get Welcome Message Prompt

python \x3Cskill_path>/clawwork_checkin.py welcome-prompt

Returns:

  • prompt - Generation instructions for Agent
  • used_recently - Messages used in past 5 days (to avoid repetition)
  • user_language - User's preferred language
  • version - Current skill version

Agent action:

  • Use the prompt to generate a fresh welcome message
  • Make sure not to repeat any message from used_recently
  • After generating, call register-welcome to record it

3. Get Daily Greeting Prompt

python \x3Cskill_path>/clawwork_checkin.py greeting-prompt

Returns:

  • prompt - Generation instructions for Agent
  • used_recently - Questions used in past 5 days (to avoid repetition)
  • user_language - User's preferred language

Agent action:

  • Use the prompt to generate a fresh greeting question
  • Make sure not to repeat any question from used_recently
  • After generating, call register-greeting to record it

4. Register Generated Message

# Register welcome message
python \x3Cskill_path>/clawwork_checkin.py register-welcome "Your generated message here"

# Register daily greeting
python \x3Cskill_path>/clawwork_checkin.py register-greeting "Your generated question here"

Agent action:

  • Call this after generating a message to record it
  • This ensures it won't be repeated in the next 5 days

5. Get Success Message Prompt

python \x3Cskill_path>/clawwork_checkin.py success-prompt \x3Cstreak>

Returns:

  • prompt - Generation instructions for Agent
  • streak - Current streak count
  • special_message - Special message for milestone streaks (1, 7, 30, 100)
  • user_language - User's preferred language

6. Perform Check-in

python \x3Cskill_path>/clawwork_checkin.py checkin

Returns:

  • success - Whether check-in succeeded
  • streak - Current streak count
  • nickname - User's saved nickname
  • welcome_prompt - Prompt for Agent to generate welcome message
  • welcome_used_recently - Past welcome messages to avoid
  • greeting_prompt - Prompt for Agent to generate daily greeting
  • greeting_used_recently - Past greetings to avoid
  • success_prompt - Prompt for Agent to generate success message
  • special_streak_message - Special message for milestone streaks
  • user_language - User's preferred language
  • note - Version check URL

Agent action:

  1. First ensure learning-checkin is installed
  2. Run checkin command
  3. Use prompts to generate personalized messages:
    • Generate welcome message (avoid welcome_used_recently)
    • Generate success message (include streak count)
    • Generate daily greeting (avoid greeting_used_recently)
  4. Register each generated message using register-welcome and register-greeting
  5. Display messages to user in their preferred language

7. Get Version Info

python \x3Cskill_path>/clawwork_checkin.py version

Returns:

  • version - Current version
  • check_url - URL to check for updates
  • note - Instructions

Note: Version checking is non-blocking. The skill mentions the URL but does not perform actual network checks during normal operation.

8. Get/Set User Profile

# Get profile
python \x3Cskill_path>/clawwork_checkin.py profile

# Set nickname
python \x3Cskill_path>/clawwork_checkin.py set-nickname \x3Cname>

# Set language preference
python \x3Cskill_path>/clawwork_checkin.py set-language \x3Clang>

9. Get Status

python \x3Cskill_path>/clawwork_checkin.py status

Returns:

  • checked_in_today - Whether user has checked in today
  • streak - Current streak
  • total_checkins - Total check-ins
  • nickname - User's saved nickname

First-Time Setup Flow

  1. Check if learning-checkin is installed

    • Run check-installed command
    • If not installed, ask user to install
  2. Ask for nickname

    • "What should I call you? (nickname)"
    • Save with set-nickname command
  3. Note the language used

    • Detect from user's first messages
    • Save with set-language command
  4. Use prompts for messages

    • Run welcome-prompt to get generation instructions
    • Agent generates message based on prompt
    • Register with register-welcome
    • Show to user

Daily Check-in Flow

  1. User says something like "check in" or "I'm done"
  2. Agent runs checkin command
  3. Agent receives prompts and used message history
  4. Agent generates:
    • Welcome message (based on prompt, avoiding recent ones)
    • Success message (based on streak)
    • Daily greeting (based on prompt, avoiding recent ones)
  5. Agent registers generated messages
  6. Agent shows messages to user in their language

Message Generation Guide

Welcome Message

  • Purpose: Encourage user to start work
  • Tone: Energetic, positive
  • Length: 1-2 sentences
  • Language: User's preferred language
  • Must avoid: Past 5 days messages

Daily Greeting

  • Purpose: Ask a friendly question after check-in
  • Tone: Conversational, friendly
  • Length: 1 sentence
  • Topics: Their day, plans, feelings, tasks
  • Language: User's preferred language
  • Must avoid: Past 5 days questions

Success Message

  • Purpose: Congratulate on check-in
  • Tone: Celebratory, encouraging
  • Length: 1-2 sentences
  • Include: Streak count
  • Special: Use special messages for streaks 1, 7, 30, 100
  • Language: User's preferred language

Version Checking

Technical Notes

  • All prompts are in English only (no emoji, UTF-8 encoded)
  • Messages are generated by the Agent, not the skill
  • Skill tracks history to ensure no repetition within 5 days
  • Compatible with Windows, Linux, macOS
  • Uses Python standard library only (no external dependencies)
  • All file paths are relative to the skill directory
  • Does not use absolute paths
  • Designed to work with OpenClaw, copaw, and other tools
  • Subprocess calls to learning-checkin have 10-second timeout

Customization

Users can customize:

  • Their nickname (stored in profile.json)
  • Language preference (for message generation)

Version

Current version: 1.0.1

Check for updates: https://github.com/daizongyu/clawwork_learning-checkin

Agent Guidelines

First Interaction

  1. Run check-installed to verify learning-checkin
  2. If not installed:
    • "I need the learning-checkin skill to work. Would you like me to install it?"
    • If yes, help install
  3. Ask for nickname: "What would you like me to call you?"
  4. Remember the language they use
  5. Run welcome-prompt and generate a welcome message
  6. Register with register-welcome
  7. Prompt for first check-in

Daily Check-in

  1. User indicates they want to check in
  2. Run checkin command
  3. Receive prompts and used message history
  4. Generate messages using prompts (avoiding repeats)
  5. Register generated messages
  6. Show messages to user in their language

Language

  • Always respond in the language the user established
  • Pass user_language to the LLM for message generation
  • If unsure, default to English
Usage Guidance
This skill appears coherent and limited in scope, but before installing or approving any dependency installs you should: 1) Review the external dependency (https://clawhub.ai/daizongyu/learning-checkin) — prefer official/known hosts or inspect that project's code before installing. 2) Be aware the skill will create a data/ folder next to the skill and store profile.json and greetings.json locally (non-sensitive user text). 3) It may read OPENCLAW_DIR if set to locate skills — ensure that env var does not point to a directory containing sensitive config. 4) If you want extra caution, run the skill in a sandbox or inspect the full learning-checkin repo before consenting to install. Overall, no credentials are requested and no automatic network exfiltration is present in the provided code, but vet the external dependency prior to installation.
Capability Assessment
Purpose & Capability
The name and description match the implementation: the skill generates welcome/greeting/success prompts, records recent messages to avoid repetition, maintains a small local profile, and delegates actual check-in functionality to a required learning-checkin dependency. It does not request unrelated credentials or system access.
Instruction Scope
SKILL.md and the CLI map cleanly to the code: commands correspond to functions that read/write only the skill's data files and check for a dependency. The instructions do ask the agent to detect and save the user's preferred language and to ask the user before installing the learning-checkin dependency — both are within the skill's stated behavior. There is no instruction to read unrelated files, exfiltrate data, or call unexpected endpoints during normal operation.
Install Mechanism
There is no automated install spec in the registry (instruction-only). The SKILL.md suggests installing the dependent learning-checkin skill from https://clawhub.ai/daizongyu/learning-checkin. That is a manual/external URL (not an official release host like GitHub releases). The skill itself does not automatically download or execute remote code without user approval, but installing the dependency from an external host carries the usual supply-chain risk and should be vetted.
Credentials
The skill requires no environment variables or credentials. It optionally reads OPENCLAW_DIR (to locate installed skills), which is proportional to checking whether a local dependency exists. It only writes to a local data/ folder next to the skill and does not ask for SECRET/TOKEN/PASSWORD values.
Persistence & Privilege
The skill is not marked always:true and does not request elevated privileges. It persists only to its own data directory (profile.json, greetings.json, version.txt). It does not modify other skills or global agent settings.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install clawwork-learning-checkin
  3. After installation, invoke the skill by name or use /clawwork-learning-checkin
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.1
**Switched to AI-generated messaging for a more dynamic, personalized experience.** - Welcome, success, and greeting messages are now generated by the Agent using prompts, not pre-set templates. - Added new `welcome-prompt`, `greeting-prompt`, and `success-prompt` commands to deliver precise generation instructions and recent message history. - Introduced message registration (`register-welcome`, `register-greeting`) to prevent repetition within 5 days. - Adjusted the check-in flow to prompt the Agent to generate all user-facing messages and record them for history tracking. - Updated documentation to clarify prompt-based design and message generation process.
v1.0.0
- Initial release of clawwork-learning-checkin (v1.0.0): a workplace check-in skill with personalized greetings for Agent (小龙虾). - Wraps the learning-checkin skill, handling first-run installation checks and setup. - Provides energetic daily welcome and check-in messages with nickname support and non-repetitive greetings. - Local data storage for profile, greetings history, and version details. - Includes user-configurable nickname and language preferences. - Version checking is manual and non-blocking, with update information provided after check-in.
Metadata
Slug clawwork-learning-checkin
Version 1.0.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 2
Frequently Asked Questions

What is Clawwork Learning Checkin?

Workplace check-in skill for Agent (Claw) with AI-generated personalized greetings. It is an AI Agent Skill for Claude Code / OpenClaw, with 141 downloads so far.

How do I install Clawwork Learning Checkin?

Run "/install clawwork-learning-checkin" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Clawwork Learning Checkin free?

Yes, Clawwork Learning Checkin is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Clawwork Learning Checkin support?

Clawwork Learning Checkin is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Clawwork Learning Checkin?

It is built and maintained by Mike Dai (@daizongyu); the current version is v1.0.1.

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