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ai-newsletter-chn-for-hermes

v1.0.0

Generate a daily AI news newsletter for a Chinese audience from fresh web sources. Return the newsletter body and article summaries in Simplified Chinese.

0· 33· 1 versions· 0 current· 0 all-time· Updated 4h ago· MIT-0
byJeff Yang@j3ffyang

AI Newsletter Daily

When to Use

Use for current AI/ML news, releases, research, funding, product launches, model updates, regulation, benchmarks, or practitioner-relevant developments.

Do not use for evergreen explainers, non-AI topics, or long-form research that is not meant to become a curated newsletter.

Procedure

  1. Resolve inputs.

    • Defaults: target_news_count=20, search_query="latest AI news today", search_time_window_days=2, max_search_results=60, min_articles_required=10, include_domains=[], exclude_domains=["youtube.com","reddit.com","facebook.com","x.com","twitter.com"], summary_model="host-default", max_scrape_retries=2.
    • Clamp: target_news_count 1..50, search_time_window_days 1..14, max_search_results 20..120, min_articles_required 1..50, max_scrape_retries 0..5.
    • If min_articles_required > target_news_count, set it to target_news_count.
  2. Search and filter.

    • Run web_search with search_query.
    • If no usable results, retry once with "{search_query} generative AI LLM model open source enterprise".
    • Keep only results with non-empty title and URL.
    • Canonicalize URLs, drop duplicates, apply domain filters, and prefer fresh results.
  3. Rank.

    • Score 0..100 from AI-topic relevance, freshness, and title/snippet quality.
    • Sort by score desc, published date desc, URL asc.
    • Keep top target_news_count * 2 candidates.
  4. Fetch, verify, summarize.

    • Process candidates in order until target_news_count verified items are collected.
    • Skip already processed canonical URLs.
    • Fetch each candidate up to max_scrape_retries + 1 times with web_fetch.
    • Verify title, domain, topic, and date against the search result.
    • Skip inconsistent pages and record a warning.
    • Summarize each accepted article in one plain-text paragraph, max ~80 words, focused on why it matters to AI practitioners.
  5. Fallback.

    • If collected items are fewer than min_articles_required, run one fallback search with "AI news today machine learning model release funding research".
    • Process only new candidates and repeat the same filter/rank/fetch/verify/summarize flow.
  6. Finalize.

    • Keep only valid items with non-empty title, url, domain, summary, source_query, and numeric relevance_score.
    • Remove duplicates by canonical URL.
    • Sort by score desc, then published date desc.
    • Truncate to target_news_count.
    • Return newsletter_items, markdown_newsletter, and json_newsletter.

Verification

Accept items only if:

  • URL is valid and canonicalized.
  • Search result and fetched page broadly match.
  • Topic is actually AI/news relevant.
  • Published date is present or safely unknown.
  • Fetched content is not malformed or off-topic.

Record warnings for failed URLs, short reasons, and whether fallback search was used.

Output Format

markdown_newsletter:

  • H1 title with date.
  • One H2 per article.
  • One short summary paragraph per article.
  • One source link per article.

json_newsletter:

  • date
  • query
  • count
  • articles
  • warnings

Language Output

Return the newsletter body and all article summaries in Simplified Chinese. Preserve all source metadata unchanged (title, url, domain, published_at, relevance_score, source_query).

Version tags

latestvk974fhmnp1rembhrsa178r71jd85req3