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Web Extraction

Threads Search

Search public Threads posts by keyword for exploratory discovery. Results are intentionally labeled with caveats because topical matching and date filters can be approximate.

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Inputs

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Execution Steps

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Overview

Threads Search looks for public Threads posts by keyword or topic for exploratory discovery. Results are intentionally caveated because topical matching can be noisy and optional date filters are approximate. Use it to surface candidate posts, themes, and conversation language before deeper post or profile review.

Use cases

  • Search Threads for posts around a campaign theme, product category, competitor, or audience phrase.
  • Collect candidate posts with captions, authors, engagement, media, topic tags, and search rank.
  • Use returned post URLs or authors for focused Threads Post or Profile follow-up.

Input tips

  • Use a focused keyword, brand phrase, creator name, or topic query.
  • Optional YYYY-MM-DD date filters can narrow the search, but Threads may still return out-of-window posts.
  • Leave trim off when you need media details; use trim only for compact text-first output when available.
  • Use Threads Search Users when you are looking for accounts rather than posts.

Expected output

The AI Tool returns lookup status, source query, optional requested start and end dates, trim mode, date-filter diagnostics, matching public post records, warnings, normalization notes, additional recovered fields, and cost metadata. Posts can include search rank, ID, shortcode, URL, caption, readable media type, dimensions, accessibility text, audio/edited/paid-partnership/AI-detection flags, carousel details, timestamps, author profile details, engagement counts, reply/thread context, topic tags, media assets, and per-post recovered fields.

Caveats

  • Threads search is noisy; brand-intent queries can return adjacent accounts or broad topic chatter.
  • Date filters are approximate and not reliable enough for strict time-bounded research.
  • Returned posts are discovery candidates, not a complete or ranked market view.
  • Engagement counts, captions, media links, and search results can change after the run.