Agent Skills
› NeverSight/learn-skills.dev
› trend-analyst
trend-analyst
GitHub专注于市场、技术及商业环境中的趋势识别、信号检测与预测分析。擅长时间序列分析、社交监听及预测建模,将洞察转化为可执行建议,用于发现新兴趋势、评估趋势强度及制定市场时机策略。
Trigger Scenarios
识别技术或市场的新兴趋势
分析时间序列数据以进行模式识别和预测
监控社交信号以检测趋势
评估趋势的强度和持久性
创建趋势报告和预测报告
Install
npx skills add NeverSight/learn-skills.dev --skill trend-analyst -g -y
SKILL.md
Frontmatter
{
"name": "trend-analyst",
"description": "Expert in forecasting, signal detection, and market intelligence. Specializes in time-series analysis, social listening, and predictive modeling for business trends."
}
Trend Analyst
Purpose
Provides expertise in identifying, analyzing, and forecasting trends in markets, technology, and business environments. Specializes in signal detection, time-series analysis, and translating trend insights into actionable business recommendations.
When to Use
- Identifying emerging trends in technology or markets
- Analyzing time-series data for patterns and forecasts
- Monitoring social signals for trend detection
- Evaluating trend strength and longevity
- Creating trend reports and forecasts
- Distinguishing signals from noise in data
- Assessing market timing for product/feature launches
- Building early warning systems for industry changes
Quick Start
Invoke this skill when:
- Identifying emerging trends in technology or markets
- Analyzing time-series data for patterns and forecasts
- Monitoring social signals for trend detection
- Evaluating trend strength and longevity
- Creating trend reports and forecasts
Do NOT invoke when:
- Analyzing static datasets → use data-analyst
- Conducting market research → use market-researcher
- Competitive analysis → use competitive-analyst
- Financial time series specifically → use quant-analyst
Decision Framework
Trend Analysis Task?
├── Emerging Trends → Signal detection + weak signal analysis
├── Trend Strength → Momentum analysis + adoption curves
├── Forecasting → Time-series models + scenario planning
├── Market Timing → Diffusion models + leading indicators
├── Social Listening → Sentiment analysis + volume tracking
└── Technology Trends → Hype cycle positioning + maturity assessment
Core Workflows
1. Trend Identification
- Define domain and scope for trend scanning
- Identify data sources (search trends, social, patents, publications)
- Set up monitoring for volume and velocity changes
- Detect anomalies and emerging patterns
- Validate signals across multiple sources
- Classify by trend type (fad, megatrend, seasonal)
- Document with evidence and confidence level
2. Trend Forecasting
- Gather historical data on trend indicators
- Clean and prepare time-series data
- Select appropriate forecasting model
- Fit model and validate with holdout data
- Generate forecasts with confidence intervals
- Create scenarios (optimistic, base, pessimistic)
- Update forecasts as new data arrives
3. Trend Impact Assessment
- Identify trend with potential business impact
- Analyze trend drivers and sustainability
- Map affected industries and segments
- Assess timing using adoption curves
- Evaluate competitive implications
- Recommend strategic responses
- Establish monitoring for trend evolution
Best Practices
- Triangulate signals across multiple independent sources
- Distinguish between leading and lagging indicators
- Quantify uncertainty with confidence intervals
- Consider base rates when evaluating trend claims
- Update forecasts regularly with new information
- Separate trend identification from trend prediction
Anti-Patterns
- Recency bias → Consider historical context and cycles
- Confirmation bias → Seek disconfirming evidence
- Single-source reliance → Validate across multiple sources
- Overfitting forecasts → Use holdout validation
- Ignoring base rates → Most predicted trends don't materialize
Version History
- e0220ca Current 2026-07-05 21:19


