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Design Expert - Mixture Designs

Ort : Inhouse
Recipe Optimization, Simplex Designs, Optimal Designs, Screening and RSM, Trace Plots,...
Description

Product information "Design Expert - Mixture Designs"

Course: Experimental Design for Mixture Experiments with Design-Expertยฎ

In this two-day course, you will learn how to apply statistical experimental design specifically for mixture experiments. Traditional experimental designs are unsuitable for formulation and mixture optimization โ€” instead, mixture designs are needed.

This course will provide you with comprehensive knowledge of powerful mixture experimental designs, from creation to graphical analysis and optimization of formulations. You will work with the software Design-Expertยฎ to efficiently create and analyze mixture designs.

Why Mixture Experiments?

๐Ÿ”น Optimizing formulations with multiple components
๐Ÿ”น Specialized mixture designs for realistic formulations
๐Ÿ”น Statistical & graphical analysis methods for precise evaluations
๐Ÿ”น Practical implementation in Design-Expertยฎ with real-world examples

Course Content:

โœ… Creating & Analyzing Simplex Designs
โœ… Selecting suitable mixture designs & models
โœ… Generating contour plots in the triangular experimental region
โœ… Creating mixture designs with constraints
โœ… Optimizing product compositions & formulations
โœ… Evaluating design quality & expanding designs
โœ… Creating contour diagrams & trace plots for detailed analysis

Requirements:
๐Ÿ“Œ Basic knowledge of experimental design with factorial designs โ€” ideally at the level of the course โ€œIntroduction to Experimental Design with Design-Expertยฎโ€.

๐Ÿ”น Sign up now and take your formulation optimization to the next level!

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Design-Expert
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