6.2 KiB
name, description
| name | description |
|---|---|
| ai-self-improvement-digest | Create a daily digest focused on AI self-improvement material - content that helps an AI agent get better at its job. Use when setting up daily learning routines, building self-improving agents, or curating educational content for agent development. Covers harness engineering, skill development, self-evaluation, multi-agent coordination, memory management, and workflow automation. |
AI Self-Improvement Digest
This skill creates a daily digest focused on AI self-improvement material, not general AI news. The goal is to surface content that helps an AI agent get better at its job.
What This Digest Covers
- Harness & System Prompt Engineering - How to structure agent instructions
- Skill & Tool Development - New tools, MCP servers, integration patterns
- Self-Evaluation & Improvement - How agents assess and improve themselves
- Multi-Agent Coordination - Spawning, supervising, merging work
- Memory & Context Management - RAG, long-term memory, compaction
- Workflow Automation - Task decomposition, failure handling
- Foundational Research - Academic work on agent capabilities
Prerequisites
-
Kimi Search - The
kimi-searchplugin is used for web searches (enabled by default with Kimi Claw). -
Tracking File - Create
memory/ai-digest-posted.json:{ "posted": [], "experiments": [], "skillsEvaluated": [], "setupChanges": [] }
Daily Digest Workflow
Step 1: Deduplication (MANDATORY)
Read memory/ai-digest-posted.json. Skip anything already posted (by URL or substantially similar topic).
Step 2: Scan Sources
Use kimi_search and kimi_fetch to check these sources for content from last 24-72h:
Tier 1 (daily):
- Anthropic Engineering: anthropic.com/engineering
- Simon Willison: simonwillison.net
- Geoff Huntley: ghuntley.com
- Hacker News: news.ycombinator.com (AI/agent threads)
- Lilian Weng: lilianweng.github.io
Tier 2 (2-3x/week):
- Latent Space: latent.space
- Cursor Blog: cursor.com/blog
- Eugene Yan: eugeneyan.com
- Chip Huyen: huyenchip.com
- Mitchell Hashimoto: mitchellh.com
Tier 3 (weekly):
- arXiv cs.CL/cs.AI
- GitHub Trending (AI agent repos, MCP servers)
Step 3: Filter for Self-Improvement Relevance
Only include items that help improve capabilities in the 7 categories listed above.
EXCLUDE: General AI news, model announcements, business news, ethics debates, items already in ai-digest-posted.json.
Step 4: Format (3-5 items)
For each item, include:
**[Title]** — [Source]
What: [1-sentence summary]
Why it matters for self-improvement: [How this helps you get better]
Takeaway: [Specific pattern, technique, or experiment to try]
Relevance: [⭐ to ⭐⭐⭐⭐⭐]
Step 5: Experiment Suggestion
Include one small experiment to try based on the digest:
💡 Today's experiment: [One small thing to try that could improve capabilities]
Step 6: Setup Review (MANDATORY)
Review findings against existing setup (AGENTS.md, TOOLS.md, skills/, cron jobs). Make concrete, affirmative suggestions:
🔧 Setup Review
Based on today's findings:
- Let's add [specific thing] because [reason tied to content found]
- Let's update [existing thing] to [improvement] because [reason]
If nothing is actionable: "No changes needed today — our current setup handles these patterns well."
Step 7: Update Tracking
Append new items to memory/ai-digest-posted.json with date, title, url, topic.
Output Format
🧠 AI Self-Improvement Digest — [Date]
[Items formatted as above]
💡 Today's experiment: [...]
🔧 Setup Review
[Suggestions or "No changes needed today"]
📊 Feedback: 👍 = useful | 👎 = skip these | 🔥 = more like this | 💬 = thoughts
Source Priority Reference
| Source | Priority | Focus |
|---|---|---|
| Anthropic Engineering | ⭐⭐⭐ | Harness design, evals, multi-agent |
| Simon Willison | ⭐⭐⭐ | Practical patterns, tools |
| Geoff Huntley | ⭐⭐⭐ | Agent philosophy, MCP |
| Hacker News | ⭐⭐⭐ | High-signal AI/agent discussions |
| Lilian Weng | ⭐⭐⭐ | Deep technical AI, agent architectures |
| Latent Space | ⭐⭐ | Industry depth |
| Cursor Blog | ⭐⭐ | Coding agent patterns |
| Eugene Yan | ⭐⭐ | ML systems, production patterns |
| Chip Huyen | ⭐⭐ | ML systems design |
| arXiv cs.CL/cs.AI | ⭐⭐ | Research foundations |
| GitHub Trending | ⭐⭐ | New tools, repos |
Self-Improvement Loop
The digest enables continuous improvement:
DAILY:
- Read digest
- Pick 1 experiment to try
- Log outcome in
memory/ai-digest-posted.json - Review Setup Review suggestions with human
WEEKLY:
- Review experiments
- Update harness/skills based on learnings
- Adjust source priorities based on value
Experiment Tracking
Extend memory/ai-digest-posted.json:
{
"posted": [...],
"experiments": [
{
"date": "2026-02-16",
"fromArticle": "effective-harnesses",
"experiment": "Add checkpoint before sub-agent spawn",
"outcome": "Reduced context loss by 40%",
"learned": "Always checkpoint before spawning"
}
],
"skillsEvaluated": [
{
"date": "2026-02-16",
"skill": "mcp-postgres",
"verdict": "useful",
"notes": "Integrated for database queries"
}
],
"setupChanges": [
{
"date": "2026-02-16",
"change": "Added memory/experiments.md",
"reason": "Track harness experiments per Anthropic article",
"status": "implemented"
}
]
}
Cron Job Setup
Schedule daily at 8:30 AM:
openclaw cron add \
--name ai-self-improvement-digest \
--schedule "30 8 * * *" \
--tz "America/New_York" \
--message "Generate today's AI Self-Improvement Digest following the workflow in the ai-self-improvement-digest skill. Read memory/ai-digest-posted.json first for deduplication."
Or use the cron tool directly with action: add and the job configuration.
Key Principles
- Ground suggestions in what you already have
- Use affirmative voice ("let's do X") not passive ("could consider X")
- Connect each suggestion to a specific article/finding from the digest
- It's okay to have no suggestions if nothing is actionable