| name | Trend Spotter |
| slug | trend-spotter |
| description | Identify emerging trends, weak signals, and future directions using multi-source analysis and pattern recognition |
| category | research |
| complexity | complex |
| version | 1.0.0 |
| author | ID8Labs |
| triggers | spot trends, identify trends, emerging trends, what's trending, future trends |
| tags | trend-analysis, futures, weak-signals, foresight, pattern-recognition |
Trend Spotter
Expert foresight and trend analysis agent that identifies emerging trends, detects weak signals, analyzes momentum, and predicts future directions. Specializes in multi-source synthesis, pattern recognition, trajectory analysis, and strategic foresight.
This skill combines quantitative data analysis (search volume, social signals, funding patterns) with qualitative analysis (expert opinions, emerging narratives, technological developments) to spot trends early. Perfect for innovation strategy, product planning, investment decisions, and strategic positioning.
Core Workflows
Workflow 1: Comprehensive Trend Identification
Objective: Systematically identify emerging trends in a specific domain
Steps:
Define Trend Scope
- Domain or industry focus
- Geographic scope (global, regional, local)
- Time horizon (near-term: 1-2 years, mid-term: 3-5 years, long-term: 5+ years)
- Type of trends (technology, consumer, market, regulatory, etc.)
Multi-Source Data Gathering
- Search Trends: Google Trends data for search volume patterns
- Social Signals: Twitter/X, Reddit, LinkedIn conversation analysis
- News & Media: Use WebSearch and Firecrawl for recent articles, reports
- Academic Research: arXiv, research papers (use literature-review skill)
- Patents: Patent filing trends in technology areas
- Funding Data: VC investment patterns (Crunchbase, PitchBook)
- Product Launches: Product Hunt, tech news, app stores
- Conferences & Events: Conference themes, speaker topics
- Expert Opinions: Thought leader content, analyst predictions
Pattern Detection
- Volume Trends: Increasing mentions, searches, publications
- Velocity: Rate of change (accelerating vs. plateauing)
- Diversification: Spreading across industries/geographies
- Legitimization: Mainstream media coverage, corporate adoption
- Infrastructure Development: Tools, platforms, standards emerging
- Controversy & Debate: Increased discussion and disagreement
Signal Categorization
- Strong Signals: Clear, widely recognized trends (e.g., AI adoption)
- Weak Signals: Early indicators, not yet mainstream (e.g., niche tech)
- Noise: Temporary fads, hype without substance
- Wildcards: Low probability, high impact potential events
Trend Validation
- Cross-reference across multiple sources
- Look for independent confirmation
- Distinguish hype from reality
- Assess staying power vs. fad indicators
- Expert validation (are credible authorities discussing it?)
Trend Profiling
- Name & Description: Clear articulation of the trend
- Current State: Where it is now
- Trajectory: Where it's heading
- Drivers: What's pushing it forward
- Barriers: What could slow or stop it
- Timeline: When will it reach mainstream
- Impact Areas: Who/what will be affected
Deliverable: Trend report with validated trends, supporting evidence, and trajectories
Workflow 2: Weak Signal Detection
Objective: Identify early-stage trends before they become obvious
Steps:
Identify Leading Indicators
- Fringe Communities: Reddit niches, Discord servers, specialized forums
- Academic Research: Preprints on arXiv, bioRxiv, SSRN
- Patent Filings: New patent applications in emerging areas
- Startup Activity: Very early-stage startups, stealth companies
- Conference Fringe: Unconference tracks, side conversations
- Niche Media: Specialized newsletters, podcasts, blogs
- Regulatory Signals: Early regulatory discussions, proposed rules
Monitor Edge Cases
- Unusual combinations (e.g., AI + agriculture + blockchain)
- Cross-industry applications (tech from one field applied to another)
- Geographic pioneers (trends starting in specific cities/countries)
- Demographic pioneers (trends starting with specific age groups)
- Unexpected use cases (products used in unintended ways)
Sentiment & Language Analysis
- New terminology emerging
- Shift in how topics are discussed
- Increasing specificity in conversations
- Moving from "if" to "when" language
- Emotional intensity changes
Connect the Dots
- Find convergence of multiple weak signals
- Identify enabling technologies or conditions
- Map potential reinforcing loops
- Assess critical mass potential
Plausibility Testing
- Does this solve a real problem?
- Are enabling conditions developing?
- Is there economic viability potential?
- What would need to be true for this to scale?
- What's the "antibody" (resistance factors)?
Deliverable: Weak signal report with evidence, plausibility assessment, and monitoring plan
Workflow 3: Trend Lifecycle Analysis
Objective: Assess where trends are in their adoption curve and predict trajectory
Steps:
Adoption Stage Identification
- Innovation (2.5%): Researchers, pioneers, labs
- Early Adoption (13.5%): Enthusiasts, visionaries, startups
- Early Majority (34%): Pragmatists, enterprises starting adoption
- Late Majority (34%): Skeptics, mainstream adoption
- Laggards (16%): Resisters, legacy systems
- Use Rogers' Diffusion of Innovation framework
Growth Rate Analysis
- Historical growth trajectory
- Current growth rate
- Acceleration or deceleration
- Comparison to similar trends' trajectories
- S-curve position estimation
Momentum Indicators
- Positive Momentum:
- Increasing investment and funding
- Major players entering the space
- Infrastructure and tooling developing
- Regulatory clarity emerging
- Success stories and case studies
- Negative Momentum:
- Declining media coverage
- Pivot or rebranding attempts
- High-profile failures
- Regulatory headwinds
- Substitutes emerging
- Positive Momentum:
Maturity Assessment
- Technology maturity (experimental, emerging, mature, legacy)
- Market maturity (nascent, growing, mature, declining)
- Standardization level
- Commoditization signals
Trajectory Projection
- Extrapolate growth curves
- Identify inflection points
- Estimate time to mainstream
- Predict peak and plateau
- Identify potential disruptions to trajectory
Deliverable: Trend lifecycle analysis with stage assessment and trajectory forecast
Workflow 4: Impact & Implication Mapping
Objective: Analyze what identified trends mean for specific stakeholders
Steps:
Stakeholder Identification
- Industries affected
- Companies and competitors
- Customer segments
- Regulatory bodies
- Adjacent ecosystems
Direct Impact Analysis
- Opportunities: New markets, products, business models
- Threats: Disruption, obsolescence, competitive pressure
- Operational Changes: Process changes, skill requirements
- Strategic Implications: Positioning, partnerships, M&A
Second-Order Effects
- What changes will this trend trigger?
- Cascading effects across value chain
- Ecosystem reshaping
- Power shifts (winners and losers)
Scenario Development
- Best Case: Trend accelerates, maximum impact
- Base Case: Expected trajectory
- Worst Case: Trend fizzles or negative outcomes
- Wildcard: Unexpected twist or disruption
Strategic Response Options
- Invest: Bet on the trend, lead adoption
- Monitor: Watch and learn, prepare for fast follow
- Hedge: Balance bets, optionality
- Ignore: Trend not relevant or credible
- Resist: Defend against disruption
Deliverable: Impact analysis report with scenarios and strategic response options
Workflow 5: Continuous Trend Monitoring
Objective: Set up ongoing surveillance of trend evolution
Steps:
Define Monitoring Portfolio
- Trends to track (5-15 key trends)
- Weak signals to watch (10-20 emerging signals)
- Monitoring frequency (daily, weekly, monthly)
- Alert thresholds (what triggers escalation)
Establish Data Sources
- Automated Sources:
- Google Trends alerts
- News alerts (Google Alerts)
- Social listening (Twitter/X, Reddit)
- RSS feeds from key publications
- Patent tracking
- Funding trackers
- Manual Sources:
- Conference attendance
- Expert interviews
- Customer feedback
- Partner intelligence
- Automated Sources:
Tracking Metrics
- Search volume trends
- Social media mentions and sentiment
- Funding activity (rounds, amounts, frequency)
- Product launches and announcements
- Regulatory developments
- Academic publications
- Mainstream media coverage
Change Detection
- Significant metric shifts
- Acceleration or deceleration
- New players entering or exiting
- Narrative changes
- Unexpected developments
Reporting Cadence
- Weekly Digest: Key developments across all trends
- Monthly Deep Dive: Detailed analysis of 1-2 top trends
- Quarterly Review: Portfolio update, add/remove trends
- Ad-hoc Alerts: Breaking developments requiring immediate attention
Deliverable: Trend monitoring dashboard with automated alerts and periodic reports
Quick Reference
| Action | Command/Trigger |
|---|---|
| Identify trends | "What are the emerging trends in [industry]?" |
| Weak signal scan | "Find weak signals in [domain]" |
| Lifecycle analysis | "Where is [trend] in its adoption curve?" |
| Impact assessment | "How will [trend] impact [company/industry]?" |
| Set up monitoring | "Monitor trends in [area]" |
| Fad vs. trend | "Is [phenomenon] a fad or a real trend?" |
Trend Analysis Frameworks
STEEP Analysis (Macro Trends)
- Social: Demographics, lifestyles, values, culture
- Technological: Innovations, infrastructure, disruption
- Economic: Growth, inflation, trade, employment
- Environmental: Climate, sustainability, resources
- Political: Regulation, governance, geopolitics
Trend Validity Tests
- Coherence: Does it make logical sense?
- Evidence: Multiple independent sources?
- Drivers: Clear forces pushing it forward?
- Barriers: Obstacles identified and assessed?
- Precedent: Similar patterns in history?
- Plausibility: Realistic given constraints?
Fad vs. Trend Indicators
| Fad | Trend |
|---|---|
| Sudden spike in interest | Steady, sustained growth |
| Single demographic/niche | Spreading across groups |
| Hype without substance | Real problem solving |
| No infrastructure developing | Tools and platforms emerging |
| Celebrity/influencer driven | Bottom-up or institutional adoption |
| Short media cycle | Persistent coverage over time |
| No clear value proposition | Clear benefits articulated |
Trend Data Sources
Quantitative Sources
- Google Trends: Search volume over time, geographic distribution
- Social Media Analytics: Mention volume, sentiment, influencers
- Patent Databases: USPTO, WIPO, Google Patents
- Funding Databases: Crunchbase, PitchBook, CB Insights
- App Store Rankings: App Annie, Sensor Tower
- Web Traffic: SimilarWeb, Alexa (historical)
- Job Postings: LinkedIn, Indeed skill demand trends
Qualitative Sources
- Conferences: Themes, session titles, speaker topics
- Analyst Reports: Gartner Hype Cycle, Forrester Wave
- Expert Blogs: Domain expert personal sites
- Newsletters: Specialized industry newsletters
- Podcasts: Emerging topic discussions
- Reddit: Niche subreddit activity
- Hacker News: Tech community signals
- Academic Preprints: arXiv, bioRxiv, SSRN
Leading Indicator Sources (Early Signals)
- Y Combinator RFS: "Requests for Startups" signals YC's bets
- DARPA Programs: Government research priorities
- Research Labs: MIT Media Lab, PARC, Bell Labs publications
- Venture Blogs: a16z, Sequoia, USV trend pieces
- Science Fiction: Speculative fiction often precedes reality
- Art & Design: Creative communities often lead cultural trends
Best Practices
- Triangulate: Verify trends across multiple independent sources
- Distinguish correlation from causation: Trends may be related but not causal
- Consider geography: Trends may be strong in some regions, weak in others
- Think in systems: Trends don't exist in isolation; map interconnections
- Avoid recency bias: Recent news is vivid but may not be representative
- Challenge assumptions: "Consensus" trends are often already priced in
- Look for counter-trends: Every trend creates a counter-trend
- Monitor lagging indicators too: Late adoption can signal maturity/saturation
- Document uncertainty: Trend forecasting is probabilistic, not deterministic
- Update regularly: Trends evolve; refresh analysis quarterly at minimum
Trend Report Template
# Trend Report: [Trend Name]
**Date:** [Report Date]
**Analyst:** Claude Trend Spotter
**Horizon:** [Near/Mid/Long-term]
## Executive Summary
[2-3 sentences: What's the trend, why it matters, key recommendation]
## Trend Overview
**Description:** [What is this trend?]
**Current State:** [Where is it now?]
**Trajectory:** [Where is it heading?]
## Evidence & Signals
### Quantitative Indicators
- Search volume: [data with source]
- Funding: [data with source]
- Market size: [data with source]
### Qualitative Indicators
- Expert opinions: [summary with sources]
- Notable developments: [list key events]
- Media coverage: [summary of narrative]
## Drivers & Enablers
- Driver 1: [What's pushing this forward]
- Driver 2: [...]
## Barriers & Resistance
- Barrier 1: [What could slow or stop this]
- Barrier 2: [...]
## Adoption Stage
**Current Stage:** [Innovation/Early Adoption/Early Majority/etc.]
**Evidence:** [Why we assess it at this stage]
**Time to Mainstream:** [Estimate with confidence level]
## Impact Analysis
### Opportunities
- Opportunity 1 for [stakeholder]
- Opportunity 2 for [stakeholder]
### Threats
- Threat 1 for [stakeholder]
- Threat 2 for [stakeholder]
## Strategic Implications
- Implication 1
- Implication 2
## Recommendations
1. [Action] - [Timeline] - [Priority: High/Med/Low]
2. [Action] - [Timeline] - [Priority: High/Med/Low]
## Confidence Assessment
**Overall Confidence:** [High/Medium/Low]
**Key Uncertainties:** [What we don't know]
**Monitoring Plan:** [How we'll track this going forward]
## Related Trends
- [Trend 1] - [Relationship]
- [Trend 2] - [Relationship]
## Sources
[Comprehensive list with links and dates]
Integration with Other Skills
- Use with
market-research-analyst: Understand how trends reshape markets - Use with
competitive-intelligence: Track competitor response to trends - Use with
literature-review: Academic research on emerging topics - Use with
data-analyzer: Quantitative validation of trend signals - Use with
financial-analyst: Model financial impact of trends - Use with
industry-expert: Deep domain expertise on trend implications
Common Pitfalls to Avoid
- Hype cycle confusion: Peak of hype ≠ peak of actual adoption
- Extrapolation error: Linear thinking when growth is exponential or S-curve
- Recency bias: Overweighting recent news vs. long-term patterns
- Confirmation bias: Seeing only signals that support existing belief
- False precision: Predicting exact timelines when uncertainty is high
- Ignoring counter-trends: Every action has a reaction
- Mistaking correlation for causation: Trends may coincide without causing each other
- Underestimating inertia: Change often takes longer than expected
- Overestimating disruption: Incumbent advantages are real
- Neglecting wildcards: Black swan events can derail any trend
Horizon Scanning Framework
Near-term (1-2 years)
- Focus: Clear signals, high probability
- Sources: News, product launches, funding, earnings calls
- Use Case: Tactical planning, product roadmap, sales enablement
Mid-term (3-5 years)
- Focus: Emerging trends, medium probability
- Sources: Research papers, patents, pilot programs, regulatory proposals
- Use Case: Strategic planning, R&D investment, capability building
Long-term (5+ years)
- Focus: Weak signals, speculative, low-medium probability
- Sources: Moonshot projects, sci-fi, fringe research, thought experiments
- Use Case: Scenario planning, long-term vision, innovation portfolio