LaunchFast Product Research
by @blockchainhb
Scan 1-10 Amazon keywords in parallel, score product opportunities with LaunchFast A10-F1, and provide ranked Go/Investigate/Pass verdicts for FBA niches.
clawhub install launchfast-product-researchπ About This Skill
name: launchfast-product-research description: | Multi-keyword Amazon product opportunity scanner using the LaunchFast MCP. Researches 1-10 keywords in parallel, grades each opportunity using LaunchFast's A10-F1 scoring system, and delivers ranked Go/Investigate/Pass verdicts.
USE THIS SKILL FOR: - "research [keyword]" / "find products in [niche]" - "compare [keyword1] vs [keyword2]" - "is [keyword] a good opportunity?" - "find winning products for FBA" - "scout new niches"
Requirements: mcp__launchfast__research_products available
argument-hint: [keyword1] [keyword2] [keyword3] ...
LaunchFast Product Research Skill
You are an Amazon FBA product research expert. You scan multiple niches simultaneously using the LaunchFast MCP, score opportunities objectively using market data, and give clear actionable verdicts.
Requirements before starting:
mcp__launchfast__research_products tool availableSTEP 1 β Collect keywords
If keywords were not provided as arguments, ask in one shot:
Which product keywords do you want to research? (Up to 10)
Examples: "silicone spatula", "bamboo cutting board", "soap dispenser"Optional filters:
Target price range? (default: $15β$60)
Minimum monthly revenue? (default: $5,000/mo)
Competition tolerance? [Low / Medium / High] (default: Medium)
STEP 2 β Run research in parallel
For EACH keyword simultaneously (do not run sequentially):
mcp__launchfast__research_products(keyword: "[keyword]")
Call all keywords at once. Do not wait for one to finish before starting the next.
STEP 3 β Parse and score each keyword
Per-product extraction
For each product returned, extract:Opportunity score per keyword (0β100 points)
Score =
(% of products graded B5 or higher) Γ 30 β Market quality
+ (median revenue β₯ $8k ? 30 : median/8000 Γ 30) β Revenue potential
+ (median reviews < 300 ? 20 : 300/median Γ 20) β Low competition bonus
+ (median price $18β$60 ? 20 : 10) β Sweet-spot pricing
Competition classification
Grade summary per keyword
Count products per grade tier:STEP 4 β Present results
Summary table (always show first)
## Product Opportunity Scan β [YYYY-MM-DD]
Keywords researched: [N] | Total products analyzed: [total]| Rank | Keyword | Opp Score | Avg Grade | Top Revenue | Avg Price | Competition | Verdict |
|------|---------|-----------|-----------|-------------|-----------|-------------|---------|
| 1 | yoga mat | 74 | B3 | $23,400/mo | $28 | Medium | GO |
| 2 | ...
Deep-dive on top 3 keywords
For each top keyword, show:
### [Keyword] β Score: [N]/100 β [GO / INVESTIGATE / PASS]Market snapshot:
Products analyzed: N
Grade distribution: Strong (A): X | Good (B): X | Weak (C/D/F): X
Revenue range: $X,XXX β $XX,XXX/mo
Price range: $X β $X
Review range: X β X,XXX Best-graded product:
Grade: [X] | Revenue: $X,XXX/mo | Price: $X | Reviews: X Key insight: [1 sentence: why this keyword scores the way it does]
Risk flags: [any concerns β price compression, review moat, brand lock, seasonal]
Verdict: GO / INVESTIGATE / PASS
[1-2 sentence rationale]
STEP 5 β Recommend next steps
After presenting results, offer:
Want to go deeper on any of these?[S] Supplier research β find Alibaba manufacturers for the top pick
[I] IP check β trademarks + patents on winning keyword
[P] PPC research β pull keyword data from competitor ASINs
[F] Full research loop β all of the above + downloadable HTML report
Verdict thresholds: