Business Opportunity Radar
/install business-opportunity-radar
Hidden Business Opportunity Detector Skill
Overview
This skill builds an automated business intelligence engine that:
- Apify scrapes App Store reviews, Amazon reviews, Reddit, niche forums, and Product Hunt
- Claude (OpenClaw) deep-analyzes the raw frustrations, recurring requests, and unmet needs
- Produces a structured market gap report with validated SaaS ideas, scored by opportunity size
This is how the best indie hackers and founders find their next product — systematically.
🔗 Apify: https://www.apify.com/?fpr=dx06p
What This Skill Does
- Scrape App Store & Google Play reviews to find what users hate about existing apps
- Scrape Amazon reviews (1–2 stars) to extract product frustrations at scale
- Mine Reddit niche communities for recurring complaints and feature requests
- Crawl niche forums and communities for unmet needs
- Scrape Product Hunt for emerging tools and gaps in the market
- Feed all raw data into Claude for structured opportunity analysis
- Output a ranked list of business opportunities with validation signals
- Generate SaaS idea briefs with positioning, features, and GTM angle
Architecture Overview
┌─────────────────────────────────────────────────────────────────┐
│ HIDDEN BUSINESS OPPORTUNITY DETECTOR │
│ │
│ ┌─────────────────────────────────────────────────────────┐ │
│ │ LAYER 1 — DATA MINING (Apify) │ │
│ │ App Store │ Google Play │ Amazon │ Reddit │ Forums │ │
│ │ Product Hunt │ G2 │ Trustpilot │ Indie Hackers │ │
│ └──────────────────────────┬──────────────────────────────┘ │
│ │ │
│ ┌──────────────────────────▼──────────────────────────────┐ │
│ │ LAYER 2 — OPPORTUNITY ANALYSIS ENGINE (Claude) │ │
│ │ │ │
│ │ • Frustration Extractor → what people hate/struggle │ │
│ │ • Pattern Detector → recurring complaints │ │
│ │ • Gap Analyzer → what nobody is building │ │
│ │ • Opportunity Scorer → market size x pain level │ │
│ │ • SaaS Idea Generator → concrete product briefs │ │
│ └──────────────────────────┬──────────────────────────────┘ │
│ │ │
│ ┌──────────────────────────▼──────────────────────────────┐ │
│ │ LAYER 3 — OPPORTUNITY REPORT │ │
│ │ Ranked ideas │ Validation signals │ GTM angles │ │
│ │ JSON export │ Markdown report │ Notion / Slack push │ │
│ └─────────────────────────────────────────────────────────┘ │
└─────────────────────────────────────────────────────────────────┘
Step 1 — Get Your API Keys
Apify
- Sign up at https://www.apify.com/?fpr=dx06p
- Go to Settings → Integrations
- Copy your token:
export APIFY_TOKEN=apify_api_xxxxxxxxxxxxxxxx
Claude / OpenClaw
export CLAUDE_API_KEY=sk-ant-xxxxxxxxxxxxxxxx
Step 2 — Install Dependencies
npm install apify-client axios node-cron dotenv fs-extra
Layer 1 — Multi-Source Data Miner (Apify)
Mine App Store & Google Play Reviews
import ApifyClient from 'apify-client';
const apify = new ApifyClient({ token: process.env.APIFY_TOKEN });
// Define the niche and competitor apps to analyze
const TARGET_NICHE = "project management";
const COMPETITOR_APPS = [
{ name: "Notion", appStoreId: "1232780281", playStoreId: "notion.id" },
{ name: "Asana", appStoreId: "489969512", playStoreId: "com.asana.app" },
{ name: "Trello", appStoreId: "461504587", playStoreId: "com.trello" },
{ name: "Monday", appStoreId: "1298450011", playStoreId: "com.monday.monday" }
];
async function scrapeAppReviews() {
console.log("📱 Scraping App Store & Play Store reviews...");
const jobs = COMPETITOR_APPS.map(app =>
Promise.all([
// App Store — focus on 1-3 star reviews (the gold mine)
apify.actor("apify/apple-app-store-scraper").call({
appIds: [app.appStoreId],
maxReviews: 100,
filterStars: [1, 2, 3]
}).then(run => run.dataset().getData())
.then(d => d.items.map(r => ({
source: "app_store",
appName: app.name,
rating: r.rating,
review: r.review,
title: r.title,
date: r.date,
country: r.country
}))),
// Google Play Store
apify.actor("apify/google-play-scraper").call({
appId: app.playStoreId,
maxReviews: 100,
filterScore: [1, 2, 3]
}).then(run => run.dataset().getData())
.then(d => d.items.map(r => ({
source: "google_play",
appName: app.name,
rating: r.score,
review: r.text,
title: r.title || "",
date: r.date,
thumbsUp: r.thumbsUp
})))
]).then(results => results.flat())
);
const allReviews = await Promise.all(jobs);
return allReviews.flat();
}
Mine Amazon Reviews (1-3 Stars)
async function scrapeAmazonReviews() {
console.log("📦 Scraping Amazon negative reviews...");
// Target products in your niche
const TARGET_PRODUCTS = [
"https://www.amazon.com/dp/B08N5WRWNW", // productivity tool example
"https://www.amazon.com/dp/B09G9HD6PD"
];
const jobs = TARGET_PRODUCTS.map(url =>
apify.actor("apify/amazon-reviews-scraper").call({
startUrls: [{ url }],
maxReviews: 100,
filterByStar: ["one_star", "two_star", "three_star"]
}).then(run => run.dataset().getData())
.then(d => d.items.map(r => ({
source: "amazon",
productTitle: r.productTitle,
rating: r.ratingScore,
review: r.reviewText,
title: r.reviewTitle,
date: r.date,
helpfulVotes: r.helpfulVotes,
verifiedPurchase: r.verifiedPurchase
})))
);
const results = await Promise.all(jobs);
return results.flat();
}
Mine Reddit Niche Communities
async function scrapeRedditFrustrations() {
console.log("💬 Scraping Reddit communities...");
const SUBREDDITS = [
"r/Entrepreneur",
"r/SaaS",
"r/smallbusiness",
"r/productivity",
"r/projectmanagement",
"r/startups",
"r/indiehackers"
];
const [posts, searchResults] = await Promise.all([
// Hot/top posts in subreddits
apify.actor("apify/reddit-scraper").call({
startUrls: SUBREDDITS.map(s => ({ url: `https://www.reddit.com/${s}/` })),
maxPostCount: 30,
maxComments: 15,
sort: "top"
}).then(run => run.dataset().getData()),
// Search for frustration signals
apify.actor("apify/reddit-search-scraper").call({
queries: [
`${TARGET_NICHE} frustrated wish`,
`${TARGET_NICHE} hate problem broken`,
`${TARGET_NICHE} alternative looking for better`,
`${TARGET_NICHE} feature request need`,
`${TARGET_NICHE} why is there no tool`
],
maxItems: 50
}).then(run => run.dataset().getData())
]);
return [
...posts.items.map(p => ({
source: "reddit_post",
subreddit: p.subreddit,
title: p.title,
text: p.selftext,
score: p.score,
comments: p.numComments,
url: p.url
})),
...searchResults.items.map(p => ({
source: "reddit_search",
subreddit: p.subreddit,
title: p.title,
text: p.selftext,
score: p.score,
url: p.url
}))
];
}
Mine Product Hunt & G2 Reviews
async function scrapeProductIntelligence() {
console.log("🚀 Scraping Product Hunt & review platforms...");
const [productHunt, g2] = await Promise.all([
// Product Hunt — see what's launching and what comments say
apify.actor("apify/product-hunt-scraper").call({
mode: "search",
searchQuery: TARGET_NICHE,
maxItems: 30
}).then(run => run.dataset().getData())
.then(d => d.items.map(p => ({
source: "product_hunt",
name: p.name,
tagline: p.tagline,
description: p.description,
upvotes: p.votesCount,
comments: p.commentsCount,
topics: p.topics,
url: p.url
}))),
// G2 reviews for competitor software
apify.actor("apify/website-content-crawler").call({
startUrls: [
{ url: `https://www.g2.com/categories/${TARGET_NICHE.replace(/\s+/g, '-')}-software` }
],
maxCrawlingDepth: 1,
maxRequestsPerCrawl: 10
}).then(run => run.dataset().getData())
.then(d => d.items.map(p => ({
source: "g2",
text: p.text?.slice(0, 2000),
url: p.url
})))
]);
return [...productHunt, ...g2];
}
Layer 2 — Opportunity Analysis Engine (Claude)
Frustration Extractor
import axios from 'axios';
const claude = axios.create({
baseURL: 'https://api.anthropic.com/v1',
headers: {
'x-api-key': process.env.CLAUDE_API_KEY,
'anthropic-version': '2023-06-01',
'Content-Type': 'application/json'
}
});
async function extractFrustrations(allData) {
const prompt = `
You are a world-class product researcher and market analyst.
Analyze this raw data from app reviews, Amazon reviews, Reddit posts, and product listings.
Extract every customer frustration, unmet need, and recurring complaint.
NICHE: ${TARGET_NICHE}
RAW DATA (sample):
${JSON.stringify(allData.slice(0, 30), null, 2)}
Respond ONLY in this JSON format:
{
"frustrations": [
{
"theme": "short label",
"description": "what users are frustrated about",
"frequency": "how often this comes up (high/medium/low)",
"emotionalIntensity": "how angry/upset users are (1-10)",
"affectedSegment": "who experiences this most",
"evidenceQuotes": ["direct quote 1", "direct quote 2"],
"sources": ["app_store", "reddit"]
}
],
"featureRequests": [
{
"request": "what users are explicitly asking for",
"frequency": "high | medium | low",
"currentWorkaround": "what users do today instead",
"evidenceQuotes": ["quote"]
}
],
"recurringPatterns": [
"pattern 1 observed across multiple sources",
"pattern 2"
],
"underservedSegments": [
{
"segment": "who is being ignored",
"unmetNeed": "what they need",
"currentSolution": "what they use today despite it being bad"
}
]
}
`;
const { data } = await claude.post('/messages', {
model: "claude-opus-4-5",
max_tokens: 3000,
messages: [{ role: "user", content: prompt }]
});
return JSON.parse(data.content[0].text.replace(/```json|```/g, '').trim());
}
Market Gap Analyzer & SaaS Idea Generator
async function analyzeMarketGaps(frustrations, productIntel) {
const prompt = `
You are a serial entrepreneur and SaaS product strategist.
Based on these validated customer frustrations and market intelligence, identify
the highest-potential business opportunities and generate concrete SaaS ideas.
FRUSTRATIONS & PATTERNS:
${JSON.stringify(frustrations, null, 2)}
MARKET INTELLIGENCE (existing products):
${JSON.stringify(productIntel.slice(0, 10), null, 2)}
Respond ONLY in this JSON format:
{
"marketGaps": [
{
"gap": "what is clearly missing from the market",
"evidenceStrength": "strong | moderate | weak",
"estimatedMarketSize": "niche | small | medium | large",
"competitionLevel": "none | low | medium | high",
"urgency": "nice-to-have | important | critical"
}
],
"saasIdeas": [
{
"rank": 1,
"name": "working product name",
"oneLiner": "X for Y — one sentence pitch",
"problem": "exact problem it solves",
"targetCustomer": "specific ICP (ideal customer profile)",
"coreFeatures": ["feature 1", "feature 2", "feature 3"],
"differentiator": "why this beats existing solutions",
"monetization": "pricing model (per seat | usage | freemium | etc)",
"estimatedMRR": "rough MRR potential at 100 customers",
"validationSignals": ["signal from data that confirms the need"],
"gtmAngle": "how to acquire first 100 customers",
"buildComplexity": "low | medium | high",
"opportunityScore": 8,
"risksAndChallenges": ["risk 1", "risk 2"]
}
],
"quickWins": [
{
"idea": "simplest possible version of a solution",
"timeToMVP": "estimated days/weeks to build",
"validationMethod": "how to validate before building"
}
],
"topRecommendation": "single best opportunity with 1-paragraph reasoning"
}
`;
const { data } = await claude.post('/messages', {
model: "claude-opus-4-5",
max_tokens: 4000,
messages: [{ role: "user", content: prompt }]
});
return JSON.parse(data.content[0].text.replace(/```json|```/g, '').trim());
}
Validation Signal Scorer
async function scoreOpportunities(ideas, rawData) {
const prompt = `
Score each SaaS idea based on the evidence in the raw data.
Apply the Rob Walling (TinySeed) and Paul Graham opportunity frameworks.
IDEAS TO SCORE:
${JSON.stringify(ideas.saasIdeas, null, 2)}
RAW DATA SIGNALS:
- Total reviews analyzed: ${rawData.length}
- Sources: ${[...new Set(rawData.map(r => r.source))].join(', ')}
- Top frustration themes: ${JSON.stringify(ideas.marketGaps?.slice(0, 5))}
Respond ONLY in this JSON format:
{
"scoredIdeas": [
{
"rank": 1,
"name": "product name",
"scores": {
"painLevel": { "score": 9, "reasoning": "why" },
"marketSize": { "score": 7, "reasoning": "why" },
"competition": { "score": 8, "reasoning": "why" },
"buildability": { "score": 6, "reasoning": "why" },
"monetization": { "score": 8, "reasoning": "why" },
"founderFit": { "score": 7, "reasoning": "why" }
},
"overallScore": 7.5,
"verdict": "🔥 Build this | ✅ Worth exploring | ⚠️ Risky | ❌ Skip",
"nextStep": "concrete first action to validate this idea"
}
],
"winnerIdea": "name of the single best opportunity",
"executiveSummary": "2-3 sentence summary of the full analysis"
}
`;
const { data } = await claude.post('/messages', {
model: "claude-opus-4-5",
max_tokens: 2500,
messages: [{ role: "user", content: prompt }]
});
return JSON.parse(data.content[0].text.replace(/```json|```/g, '').trim());
}
Layer 3 — Opportunity Report Generator
import { writeFileSync } from 'fs';
function generateMarkdownReport(frustrations, gaps, scored, rawDataCount) {
const top = scored.scoredIdeas.slice(0, 3);
const date = new Date().toLocaleDateString('en-US', { year: 'numeric', month: 'long', day: 'numeric' });
return `# 🎯 Business Opportunity Report
**Niche:** ${TARGET_NICHE} | **Date:** ${date} | **Data Points Analyzed:** ${rawDataCount}
---
## Executive Summary
${scored.executiveSummary}
**🏆 Winner Idea: ${scored.winnerIdea}**
---
## Top Market Gaps Identified
${gaps.marketGaps?.slice(0, 5).map((g, i) =>
`### ${i + 1}. ${g.gap}
- **Evidence:** ${g.evidenceStrength} | **Market:** ${g.estimatedMarketSize} | **Competition:** ${g.competitionLevel}
- **Urgency:** ${g.urgency}`
).join('\
\
')}
---
## Top 3 SaaS Opportunities
${top.map(idea => `### ${idea.rank}. ${idea.name} — Score: ${idea.overallScore}/10 ${idea.verdict}
${gaps.saasIdeas?.find(i => i.name === idea.name)?.oneLiner || ""}
| Dimension | Score | Notes |
|---|---|---|
| Pain Level | ${idea.scores.painLevel.score}/10 | ${idea.scores.painLevel.reasoning} |
| Market Size | ${idea.scores.marketSize.score}/10 | ${idea.scores.marketSize.reasoning} |
| Competition | ${idea.scores.competition.score}/10 | ${idea.scores.competition.reasoning} |
| Buildability | ${idea.scores.buildability.score}/10 | ${idea.scores.buildability.reasoning} |
| Monetization | ${idea.scores.monetization.score}/10 | ${idea.scores.monetization.reasoning} |
**Next Step:** ${idea.nextStep}`
).join('\
\
---\
\
')}
---
## Top Customer Frustrations
${frustrations.frustrations?.slice(0, 8).map((f, i) =>
`**${i + 1}. ${f.theme}** (Intensity: ${f.emotionalIntensity}/10 | Frequency: ${f.frequency})
> "${f.evidenceQuotes?.[0] || 'No quote available'}"
${f.description}`
).join('\
\
')}
---
## Quick Wins (Ship in Days)
${gaps.quickWins?.map(q =>
`- **${q.idea}** | Time to MVP: ${q.timeToMVP} | Validate by: ${q.validationMethod}`
).join('\
')}
---
*Generated by Hidden Business Opportunity Detector • Powered by Apify + Claude*
`;
}
Master Orchestrator — Full Pipeline
async function runOpportunityDetector(niche = TARGET_NICHE) {
console.log(`\
🎯 Opportunity Detector started — ${niche}`);
console.log(`Timestamp: ${new Date().toISOString()}\
`);
try {
// STEP 1 — Mine all data sources in parallel
console.log("[1/5] Mining data sources...");
const [appReviews, amazonReviews, redditData, productIntel] = await Promise.all([
scrapeAppReviews(),
scrapeAmazonReviews(),
scrapeRedditFrustrations(),
scrapeProductIntelligence()
]);
const allData = [...appReviews, ...amazonReviews, ...redditData, ...productIntel];
console.log(` ✅ ${allData.length} data points collected`);
console.log(` App reviews: ${appReviews.length} | Amazon: ${amazonReviews.length}`);
console.log(` Reddit: ${redditData.length} | Product intel: ${productIntel.length}`);
// STEP 2 — Extract frustrations
console.log("\
[2/5] Extracting frustrations with Claude...");
const frustrations = await extractFrustrations(allData);
console.log(` ✅ ${frustrations.frustrations?.length} frustration themes identified`);
console.log(` ✅ ${frustrations.featureRequests?.length} feature requests found`);
// STEP 3 — Analyze market gaps and generate SaaS ideas
console.log("\
[3/5] Analyzing market gaps...");
const gaps = await analyzeMarketGaps(frustrations, productIntel);
console.log(` ✅ ${gaps.marketGaps?.length} gaps identified`);
console.log(` ✅ ${gaps.saasIdeas?.length} SaaS ideas generated`);
// STEP 4 — Score all opportunities
console.log("\
[4/5] Scoring opportunities...");
const scored = await scoreOpportunities(gaps, allData);
console.log(` ✅ Ideas scored | Winner: ${scored.winnerIdea}`);
// STEP 5 — Generate report
console.log("\
[5/5] Generating report...");
const report = generateMarkdownReport(frustrations, gaps, scored, allData.length);
writeFileSync(`./opportunity-report-${Date.now()}.md`, report);
const outputJSON = {
niche,
analyzedAt: new Date().toISOString(),
dataPoints: allData.length,
frustrationThemes: frustrations.frustrations?.length,
marketGaps: gaps.marketGaps,
saasIdeas: scored.scoredIdeas,
winnerIdea: scored.winnerIdea,
quickWins: gaps.quickWins,
executiveSummary: scored.executiveSummary
};
writeFileSync(`./opportunity-data-${Date.now()}.json`, JSON.stringify(outputJSON, null, 2));
console.log("\
✅ Reports saved to disk");
// Optional: push to Slack
if (process.env.SLACK_WEBHOOK_URL) {
await axios.post(process.env.SLACK_WEBHOOK_URL, {
text: `🎯 *Opportunity Report Ready — ${niche}*\
` +
`📊 ${allData.length} data points analyzed\
` +
`🏆 Top idea: *${scored.winnerIdea}*\
` +
`💬 ${scored.executiveSummary}`
});
}
return outputJSON;
} catch (err) {
console.error("Pipeline error:", err.message);
throw err;
}
}
// Run immediately
runOpportunityDetector("project management tools");
Environment Variables
# .env
APIFY_TOKEN=apify_api_xxxxxxxxxxxxxxxx
CLAUDE_API_KEY=sk-ant-xxxxxxxxxxxxxxxx
# Optional notifications
SLACK_WEBHOOK_URL=https://hooks.slack.com/services/xxx/xxx/xxx
NOTION_API_KEY=secret_xxxxxxxxxxxxxxxx
Normalized Opportunity Output Schema
{
"niche": "project management",
"analyzedAt": "2025-02-25T10:00:00Z",
"dataPoints": 380,
"winnerIdea": "AutoStandup",
"saasIdeas": [
{
"rank": 1,
"name": "AutoStandup",
"oneLiner": "Async standups that actually get filled out",
"overallScore": 8.5,
"verdict": "🔥 Build this",
"targetCustomer": "Remote engineering teams 5-50 people",
"estimatedMRR": "$12,000 at 100 customers ($120/mo per team)",
"timeToMVP": "3 weeks",
"nextStep": "Post in r/remotework and r/SaaS — ask if this is a real problem",
"validationSignals": [
"47 Reddit posts complaining about standups being ignored",
"3-star Slack reviews: 'nobody fills them out'"
]
}
],
"quickWins": [
{
"idea": "Notion template for async standups",
"timeToMVP": "2 days",
"validationMethod": "Post on Gumroad, see if anyone pays $9"
}
]
}
Best Practices
- Focus on 1–3 star reviews — that's where the real pain lives
- Scrape at least 200+ reviews per competitor for statistically significant patterns
- Always include a "why is there no tool for X" Reddit search — goldmine for gaps
- Cross-validate: an idea is strong only if the same frustration appears in 3+ sources
- The Quick Wins section is perfect for validation before building — ship a landing page first
- Re-run the pipeline on a new niche weekly to build a pipeline of ideas
- Track which ideas get the most Slack/Notion engagement from your team
Error Handling
try {
const data = await scrapeAppReviews();
return data;
} catch (error) {
if (error.statusCode === 401) throw new Error("Invalid Apify token");
if (error.statusCode === 429) throw new Error("Rate limit — reduce concurrent scrapers");
if (error.message.includes("actor")) throw new Error("Actor not found — verify actor ID");
throw error;
}
Requirements
- Apify account → https://www.apify.com/?fpr=dx06p
- Claude / OpenClaw API key
- Node.js 18+ with
apify-client,axios,node-cron,fs-extra - Optional: Slack, Notion, or Airtable for team collaboration on the output
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install business-opportunity-radar - After installation, invoke the skill by name or use
/business-opportunity-radar - Provide required inputs per the skill's parameter spec and get structured output
What is Business Opportunity Radar?
Automates scraping and analyzing app, Amazon, Reddit, and Product Hunt reviews to identify and rank SaaS market gaps with validated business ideas. It is an AI Agent Skill for Claude Code / OpenClaw, with 54 downloads so far.
How do I install Business Opportunity Radar?
Run "/install business-opportunity-radar" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Business Opportunity Radar free?
Yes, Business Opportunity Radar is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Business Opportunity Radar support?
Business Opportunity Radar is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Business Opportunity Radar?
It is built and maintained by nicemaths123 (@nicemaths123); the current version is v1.0.0.