Free SKILL.md scraped from GitHub. Clone the repo or copy the file directly into your Claude Code skills directory.
npx versuz@latest install a5c-ai-babysitter-library-specializations-domains-business-operations-skills-demangit clone https://github.com/a5c-ai/babysitter.gitcp babysitter/SKILL.MD ~/.claude/skills/a5c-ai-babysitter-library-specializations-domains-business-operations-skills-deman/SKILL.md---
name: demand-forecaster
description: Demand forecasting skill with quantitative and qualitative methods, accuracy measurement, and bias correction
allowed-tools:
- Read
- Write
- Glob
- Grep
- Edit
metadata:
specialization: operations
domain: business
category: capacity-planning
---
# Demand Forecaster
## Overview
The Demand Forecaster skill provides comprehensive capabilities for generating and managing demand forecasts. It supports multiple forecasting methods, accuracy measurement, bias correction, and integration of statistical and judgmental inputs.
## Capabilities
- Time series forecasting (ARIMA, exponential smoothing)
- Causal modeling
- Machine learning forecasts
- Forecast accuracy metrics (MAPE, MAE, bias)
- Collaborative forecasting
- Demand sensing
- Seasonality adjustment
- New product forecasting
## Used By Processes
- CAP-004: Demand Forecasting and Analysis
- CAP-003: Sales and Operations Planning
- CAP-001: Capacity Requirements Planning
## Tools and Libraries
- Python statsmodels
- Prophet
- ML libraries (scikit-learn, TensorFlow)
- Demand planning systems
## Usage
```yaml
skill: demand-forecaster
inputs:
historical_data:
- period: "2025-01"
demand: 10500
- period: "2025-02"
demand: 11200
# ... additional history
forecast_horizon: 12 # months
method: "auto" # auto | arima | exponential | ml | ensemble
external_factors:
- name: "gdp_growth"
coefficient: 0.5
- name: "marketing_spend"
coefficient: 0.3
adjustments:
- period: "2026-06"
type: "promotion"
lift: 15 # percent
outputs:
- point_forecast
- confidence_intervals
- accuracy_metrics
- bias_analysis
- seasonality_factors
- recommendations
```
## Forecasting Methods
### Time Series Methods
| Method | Best For | Complexity |
|--------|----------|------------|
| Moving Average | Stable demand | Low |
| Exponential Smoothing | Trends and seasonality | Medium |
| ARIMA | Complex patterns | High |
| Prophet | Multiple seasonalities | Medium |
### Causal Methods
| Method | Use Case |
|--------|----------|
| Regression | Known drivers |
| Econometric | Market factors |
| Machine Learning | Complex relationships |
## Accuracy Metrics
```
MAPE = (1/n) x Sum(|Actual - Forecast| / Actual) x 100
MAE = (1/n) x Sum(|Actual - Forecast|)
Bias = (1/n) x Sum(Forecast - Actual)
```
## Accuracy Benchmarks
| MAPE | Interpretation |
|------|----------------|
| < 10% | Excellent |
| 10-20% | Good |
| 20-30% | Acceptable |
| 30-50% | Poor |
| > 50% | Very poor |
## Forecast Value Added (FVA)
Compare accuracy at each step:
1. Naive forecast (prior period)
2. Statistical forecast
3. Analyst adjustments
4. Sales/customer input
5. Final consensus
Only keep adjustments that improve accuracy.
## Integration Points
- ERP/demand planning systems
- CRM systems
- Point of sale data
- Economic data feeds