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coinhunter/references/search-workflow.md

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Search Workflow

Use this workflow when the user wants you to proactively discover meme-coin / 妖币 candidates instead of analyzing a known ticker.

Goal

Produce a shortlist with enough evidence to answer:

  • what deserves attention now
  • what is merely noisy
  • what should be avoided

Default search strategy

Unless the user specifies otherwise, search for liquid speculative candidates first and avoid ultra-microcaps.

Run search in this order:

  1. Theme scan

    • Search current meme-coin themes by chain or narrative
    • Examples:
      • Solana meme coins trending
      • Base meme coin watchlist
      • AI meme coin trending
      • new meme coin listed today
  2. Candidate extraction

    • Pull out repeated names that appear across multiple sources
    • Prefer coins that appear in both market-oriented and community-oriented sources
  3. Candidate verification

    • For each candidate, search:
      • <coin> market cap liquidity
      • <coin> holders tokenomics
      • <coin> rug risk
      • <coin> listed on exchange
  4. Cross-check timing

    • Search whether the coin is already broadly saturated:
      • <coin> trending X
      • <coin> breakout volume
      • <coin> price surge
    • If it is already universally discussed, consider classifying it as late rather than early

Source preference

Prefer a mix of:

  • credible exchange announcements or listing pages
  • market data summaries
  • crypto news aggregation
  • community/trading discussion summaries

Do not rely entirely on project websites or obvious promotion pages.

Discovery rules

  • name appears repeatedly across different sources
  • tied to a live narrative or active chain
  • discussion suggests recent acceleration, not just old fame
  • accessible enough that the user can realistically trade it
  • only appears in promotional pages
  • only appears on tiny venues
  • no independent discussion or market data context
  • most results are already about an explosive move that happened days ago

Shortlist size

Default to 3-5 candidates.

If the search returns many names:

  • keep the most repeated
  • keep the ones with the clearest narrative
  • remove obviously illiquid or scammy names first

Output shape for discovery mode

For each shortlisted candidate include:

  • ticker / name
  • chain / venue context if known
  • why it entered the shortlist
  • biggest risk
  • tentative bucket: candidate runner / watch-only / avoid

Then give a final rank order.

Notes

When evidence is weak, say so. Discovery mode is for narrowing attention, not pretending certainty.