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πŸ¦€ ClawHub

Dropshipping Product Research

by @harrylabsj

Evaluates dropshipping products by scoring demand, competition, margin, creative fit, and risk to recommend go, test, or reject decisions.

Versionv1.0.0
Downloads230
TERMINAL
clawhub install ecommerce-dropshipping-product-research

πŸ“– About This Skill

Dropshipping Product Research

Overview

Dropshipping Product Research helps beginners and small operators evaluate whether a product is worth testing. It is a descriptive, non-API MVP focused on structured scoring, risk filtering, and clear go / test / reject decisions.

Trigger

Use this skill when the user wants to:

  • evaluate a product idea for dropshipping
  • compare multiple product candidates
  • estimate risk, margin, and creative fit
  • build a weekly shortlist for testing
  • Example prompts

  • "Evaluate this product for dropshipping in the US"
  • "Should I test a galaxy projector or pet grooming glove?"
  • "Give me a go / test / reject recommendation"
  • "Help me score 3 product ideas for my store"
  • Workflow

    1. Capture candidate, market, and positioning constraints. 2. Infer demand, competition, margin, creative angle, and risk. 3. Produce a viability score and recommendation. 4. Summarize why it may win, why it may fail, and what to test next.

    Inputs

  • product name or keyword
  • optional product link or niche
  • target market
  • price target or cost hints
  • mode: single product / batch / trend scouting
  • Outputs

  • viability score
  • sub-scores: demand, competition, margin, creative fit, risk
  • recommendation: Go / Test / Reject
  • memo with hypotheses and next steps
  • Safety

  • No marketplace scraping or real-time trend API access
  • No guarantee of profit or compliance clearance
  • Recommendations are heuristic and should be validated with real tests
  • Acceptance Criteria

  • Must output markdown
  • Must include all five scoring dimensions
  • Must include Go / Test / Reject recommendation
  • Must include at least three risk or execution notes