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Companies use a variety of tools to assess the current state of their business and predict where it is headed. By “reading the tea leaves”, planners attempt to ensure correct stock levels, optimize inventory levels and inventory value, and provide a framework for staffing and operations.
But the complexity of modern-day supply chains requires that forecasting and planning be more than just reading the leaves. It must be a well-thought-out and dynamic system.
Many manufacturers still utilize spreadsheets, disparate computer software, and segmented, siloed decision-making processes for managing their supply chains. As a result, the critical understanding of how forecasting and demand planning should be used is clouded, making the process more difficult and less efficient.
This reliance on inefficient systems has often led to the terms forecasting and demand planning being used interchangeably. Despite being interrelated, the two are different processes. Grouping them together indicates a failure to understand that they are part of a structure that stretches vertically through an optimized planning system.
Another way to look at forecasting and demand planning is to consider their purposes in relation to business strategy. Forecasting is an important part of several variables used in demand planning. And demand planning is a holistic review of demand that is part of a company’s overall Sales and Operations Planning (S&OP).
Statistical forecasting should not be used alone to predict demand. Doing so creates several disadvantages:
To remove the disadvantages posed by statistical forecasting alone, companies can utilize a disciplined and collaborative demand planning system. This involves building accurate statistical forecasts with the help of machine learning, as well as quantitative and qualitative analysis. It also includes identifying and systemizing external information such as:
While this sounds like a daunting list, it’s easier than ever to include these and other variables when implementing a demand planning system. Through the use of demand planning software, these variables, as well as the quality of the statistical forecast, can be operationalized under one platform.
Machine learning acts as a data collection assistant and contributes a richer and more sophisticated level of input for demand planning software to work with. Manufacturers can now leverage a volume of data that could not be managed by human analysis alone. This allows data aggregation from many sources to improve forecasting accuracy. When using demand planning software, data is easily visualized, and advanced algorithms can provide analysis of demand with a high level of accuracy, speed, and volume not possible before.
Demand planning software includes tools such as ABC analysis, “what-if” scenario building, and inventory optimization using large data sets and near-real-time data inputs to deliver an accurate picture of demand. The software also builds collaboration by improving communication with unsiloed data that is accessible and actionable by those who need it.
offered by Plex DemandCaster offers businesses a comprehensive platform that advances demand planning from a reactive to a proactive footing. It empowers companies to move away from the time consuming and spreadsheet-laden practice of statistical analysis — and, too often, guesswork and hunches. Instead, it creates an environment where state-of-the-art software delivers accurate, reliable demand plans and frees up more time for value-added and strategic focus.