/install forecasting-techniques
Forecasting Techniques
Metadata
- Name: forecasting-techniques
- Description: Multiple methods for projecting future values
- Triggers: forecasting, projections, growth rate, CAGR, market prediction
Instructions
Apply forecasting techniques to project $ARGUMENTS into the future.
Choose appropriate method based on data availability and context.
Framework
Three Main Approaches
| Method | Data Required | Time Horizon | Precision | Best For | |----------|----------------|--------------|------------| | Time Series Extrapolation | 5-10 years of historical | Short-medium | High | Stable environments | | Derived Demand | Proxy variables, cross-correlation | Short-medium | Medium | Related markets | | Expert Opinion | Structured surveys | Any | Low | New products |
1. Time Series Extrapolation
Trend Analysis
- Simple growth rate: Compound annual growth (CAGR)
- Linear regression: Straight line fit to historical data
- Moving average: Smooths volatility, lags trends
- Exponential smoothing: Recent trends weighted more heavily
Steps:
- Gather historical data (3+ years preferred)
- Analyze patterns (cycles, seasonality, trends)
- Choose model (CAGR, regression, etc.)
- Apply to future periods
- Validate against expert opinion
Example Output:
Year | Historical | Projected | Growth Rate |
|------|------------|------------|-------------|
| 2023 | $100 M | - | - |
| 2024 | $115 M | +15% | CAGR = 15% |
| 2025 | $132 M | +15% | CAGR = 15% |
| 2026 | $152 M | +15% | CAGR = 15% |
| 2027 | $175 M | +15% | CAGR = 15% |
2. Derived Demand
Proxy Methodology
- Identify proxy variable that correlates with demand
- Use readily available data with reliable trend
- Apply correlation coefficient
- Adjust for unique factors
Examples:
- GDP growth as proxy for consumer spending
- Housing starts as proxy for home goods
- Demographics for category-specific demand
Steps:
- Identify correlation (r² should be > 0.5)
- Gather proxy data
- Apply coefficient
- Adjust for local factors
- Add confidence intervals
3. Expert Opinion
Structured Survey Method
- Multiple expert interviews
- Weighted by expertise or track record
- Delphi technique (iterative rounds)
- Scenario-based questioning
Advantages:
- Captures qualitative insights
- Accounts for disruptive changes
- Incorporates expert judgment
Process:
- Define forecasting questions
- Select experts (diverse backgrounds)
- Conduct interviews (structured format)
- Aggregate with weighting
- Present scenarios (base, optimistic, pessimistic)
- Review and iterate if needed
Output Process
- Define scope - What's being forecasted?
- Select method - Based on data and time horizon
- Gather inputs - Historical data, drivers, expert inputs
- Apply technique - Run the chosen method
- Calculate projections - For each year/period
- Validate - Cross-check with other methods
- Add scenarios - Best, base, worst case
- Document assumptions - Clearly state all key inputs
Output Format
## Forecasting Analysis: [Subject]
### Forecast Methodology
**Method Used:** [Time Series/Derived Demand/Expert Opinion]
**Time Horizon:** [Years]
**Base Year:** [Year]
**Data Quality:** [High/Medium/Low]
---
### Projections
| Metric | 2024 | 2025 | 2026 | 2027 | 2028 | CAGR |
|--------|--------|--------|--------|--------|--------|------|
| Revenue | $X M | $Y M | $Z M | $W M | $V M | % |
| Growth | X% | Y% | Z% | W% | % |
---
### Key Drivers
| Driver | Impact | Uncertainty | Scenario Impact |
|--------|---------|-----------------|--------------|
| [Driver 1] | High | Medium | [Description] |
| [Driver 2] | Medium | Low | [Description] |
| [Driver 3] | Low | High | [Description] |
---
### Scenarios
| Scenario | 2028 Revenue | Probability | Key Assumptions |
|----------|----------------|------------------|----------------|
| **Base** | $X M | 50% | [Assumptions] |
| **Optimistic** | $Y M | 30% | [Assumptions] |
| **Pessimistic** | $W M | 70% | [Assumptions] |
---
### Confidence Intervals
| Metric | Low | Base | High | Confidence |
|--------|------|------|------|------|----------|
| 2028 Revenue | $X ± Y% | $Z M | $W M | 80% |
Tips
- Triangulate methods when possible
- Use multiple methods for cross-validation
- Be explicit about assumptions - don't hide them
- Present confidence intervals for transparency
- Consider mean reversion - growth rates tend toward averages
- Validate with real outcomes when available
- Document track record of forecasts - improve over time
References
- Makridakis, Spyros. Business Forecasting. 1998.
- Armstrong, J. Scott. Principles of Forecasting. 2001.
- Wikipedia. "Forecasting - Methods and Applications" (multiple sources)
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install forecasting-techniques - After installation, invoke the skill by name or use
/forecasting-techniques - Provide required inputs per the skill's parameter spec and get structured output
What is Forecasting Techniques?
Project future using time series, derived demand, and expert opinion methods. Use for market sizing, growth projections, and revenue planning. It is an AI Agent Skill for Claude Code / OpenClaw, with 204 downloads so far.
How do I install Forecasting Techniques?
Run "/install forecasting-techniques" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Forecasting Techniques free?
Yes, Forecasting Techniques is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Forecasting Techniques support?
Forecasting Techniques is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Forecasting Techniques?
It is built and maintained by linuszz (@linuszz); the current version is v1.0.0.