Mix and match forecasting: A strategic approach to supply chain accuracy

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Mix and match forecasting: A strategic approach to supply chain accuracy

Forecasting in supply chains is notoriously complex and will never be accurate, as predictions inherently are. One size doesn’t fit all use cases, as no single model consistently delivers the best results across all products, locations, and time horizons. Some models excel with seasonality, others handle noisy data better, and advanced deep learning models uncover nonlinear patterns—but only if the data is robust. So, how do businesses choose the right model without endless manual tuning? The answer lies in a mix-and-match forecasting method.

Understanding the Concept

Mix-and-match forecasting allows planners to adjust model selection and, in some cases, automate it by evaluating multiple algorithms and assigning the best performer to each forecasting run/cycle. Think of it as building a championship team: different players bring different strengths, and the right combination wins. Similarly, mix-and-match is a repository of purpose-built models that lets you select the most suitable one for the job, given business priorities and time horizons. 

Why and how the mix and match works

The stakes for precise forecasting have never been higher. With artificial intelligence (AI) and machine learning (ML) acceleration, deploying an inappropriate model will quickly lead to poor forecast accuracy; a poor forecast can cascade into inventory shortages, misaligned capacity planning and dissatisfied customers. Mix and match addresses this by automating model evaluation, reducing planner workload, and improving accuracy—without requiring specialized data science skills. 

At its core, mix and match utilizes an intelligent, omnipresent semantic network architecture. This is where forecasting configuration is defined—inputs, outputs, and horizons—in addition to core evaluations of models using KPIs like Mean Squared Error (MSE). For each run, one model is used per node and planning horizon. Then in subsequent forecasting run, models may be reevaluated and chosen differently as data conditions evolve. 

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A portfolio of models

Mix and match leverages a diverse set of models, including but not limited to:

  • Levandowski (Statistical): Strong for seasonality but sensitive to sudden trend shifts.
  • GAM (Generalized Additive Model): Ideal for incorporating causal factors like promotions and holidays.
  • Deep ML / Meta Learning: Detects hidden nonlinear patterns—provided data quality is high. Additional options such as Temporal Fusion Transformers (TFT) and AVS Graves enhance short-term responsiveness. 

 

Mix and match forecasting offers several strategic benefits. It ensures adaptive accuracy by selecting the best-fit model for each node and planning horizon, while automation eliminates the need for manual model switching. Built-in transparency provides explainability, fostering trust in the process. This approach is highly scalable, supporting enterprise-level complexity and offers flexibility by allowing integration of custom machine learning models for a bring-your-own-model strategy.

Limitations to consider

While powerful, mix and match has constraints. Each forecasting run uses one model per node (no intra-run mixing), deep models require substantial data, and GAM demands some feature engineering. Additionally, certain models have time-bucket restrictions such as Levandowski. 

Best practices for implementation and scale

Start with a core model set, segment by business use case (short-term vs. long-term), and invest in clean causal data such as promotions and pricing which typically come from external systems in your tech stack. Be sure to flag anomalies and monitor KPIs at granular levels for continuous improvement. Its a journey and it takes time to be a master. 

Bottom line

Mix and match forecasting is more than an AI buzzword—its a practical, scalable solution for improving supply chain accuracy. By automating model selection and leveraging both categorical and numerical elements, businesses can align forecasts with operational needs, reduce planner burden, and deliver measurable results. In a market full of lofty AI promises, this approach stands out of the crowd due to credibility and impact.

Are you ready to mix and match models?  To learn more about how you can start improving forecast accuracy, check out the Blue Yonder Platform and our Demand and Supply Planning solution. 

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