Top 15 demand forecasting methods
How AI improves modern demand forecasting techniques
Types of demand forecasting
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How to choose the right demand forecasting methods
Different products, channels, and markets behave in different ways. The most reliable forecasts come from matching your approach to how each item actually sells – its stability, lifecycle, and sensitivity to change. As planners become more familiar with a range of techniques, they build up their ability to curate different method combinations for different needs.
Group products by how predictable they are
Items with steady patterns rely more on historical data. Items that surge, dip, or react to promotions need demand forecasting methods that respond fast and aren’t so reliant on information from the past. When you treat predictable and unpredictable products as different, forecasting tools can be more accurately applied.
Use agile approaches when an item is new or unfamiliar
As you wait for sales data to build up on new products or rebrands, you should lean more heavily on reliable human input and experience. Market knowledge, comparable launches, or customer input can tide you over until enough data accumulates to support more automated techniques.
Match your approach to the timeframe you’re planning for
Start by asking, “When do I need these results?” For short-term planning, choose quick, reactive methods that can adjust to the latest signals. For longer-term decisions or needs, look to broader patterns like growth, cycles, or product lifecycles. Using the same approach for both can lead to blind spots.
Consider outside forces that can shift demand
Determine early on how heavily your item is influenced by outside forces such as seasons, social trends, or economic shifts. When external factors play a big part in demand, methods that account for those influences usually give a clearer picture than those based solely on history or past sales data.
Combine human judgement with automated tools
While AI-powered tools are an increasingly important part of a well-run forecasting process, they’re not a substitute for human experience. The best results come from pairing automated model testing with the context people provide – especially when interpreting early signals, market shifts, or exceptions.