/install hn-morning-brief
Morning Briefing
Step 1 — Pull user interests from memory
memory_search("interests topics preferences technology news")
Do this first, before fetching stories — the results determine how stories are ranked. Extract any topics, technologies, or themes found. If nothing relevant comes back, fall back to HN ranking order.
Step 2 — Fetch top HN stories
python3 skills/hn-morning-brief/scripts/fetch_hn.py --limit 20
(Path is relative to the project root — openclaw installs this skill at skills/hn-morning-brief/.)
Returns JSON with: title, article_url, hn_url, domain, author, points, num_comments.
Step 3 — Rank and filter
Score each story by combining two signals:
- Relevance to user interests (from memory) — a story the user cares about is worth more regardless of score
- HN points — use as a tiebreaker and quality signal when interests are unclear
Surface the 8–12 highest-scoring stories. If memory search returned no clear interests, rank by points only.
Step 4 — Present briefing
## HN Morning Brief — {today's date}
{N} stories picked for you
1. **{Title}** `{domain}` · ⬆ {points} · 💬 {num_comments}
{one-line context or why this is interesting}
→ [Article]({article_url}) · [HN Discussion]({hn_url})
2. ...
---
Say "dive deeper into #N" or "tell me more about [title]" to get a full summary.
Diving Deeper
When the user picks a story:
- Fetch and summarize the article — read the article URL and write a 3–5 sentence summary of the key points. Do this even if the user just says "more on #3" — they want the content, not just the link.
- Show both links:
- Article:
{article_url} - HN Discussion:
{hn_url}(often where the most interesting debate happens)
- Article:
- Offer to go further: "Want me to search for more context on this?"
Gotchas
article_urlis the original article.hn_urlis the HN discussion thread. Never swap them — linking to the HN page when the user wants the article is a bad experience.- If the article is a PDF or appears paywalled, say so and summarize from the title, domain, and any available description instead of silently failing.
- If
memory_searchreturns no clear interests, rank bypointsand don't guess — invented interests will surface irrelevant stories.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install hn-morning-brief - After installation, invoke the skill by name or use
/hn-morning-brief - Provide required inputs per the skill's parameter spec and get structured output
What is HN Morning Brief?
Use this skill when the user explicitly mentions Hacker News or HN — e.g. "what's on HN", "show me Hacker News", "top HN stories", "anything good on HN today... It is an AI Agent Skill for Claude Code / OpenClaw, with 176 downloads so far.
How do I install HN Morning Brief?
Run "/install hn-morning-brief" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is HN Morning Brief free?
Yes, HN Morning Brief is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does HN Morning Brief support?
HN Morning Brief is cross-platform and runs anywhere OpenClaw / Claude Code is available (linux, darwin, win32).
Who created HN Morning Brief?
It is built and maintained by ken7y (@ken7y); the current version is v1.0.1.