
Sign up to save your podcasts
Or
Prefer reading instead? The full article is available here.
Real-world decisions often involve conflicting objectives, like boosting sales while avoiding overstock. In this episode, we explore how multi-objective optimization (using NSGA-II with the pymoo library) can model and solve such dilemmas. You'll learn:
* Why traditional dispatch strategies fall short
* How Pareto fronts reveal optimal trade-offs
* How to apply ASF and Pseudo-Weights to guide final decisions
If you’d rather read than listen, the full article (with code, charts, and detailed examples) is available on Substack :
👉 Like this kind of content? Subscribe to get future articles and episodes delivered straight to your inbox as soon as they’re published.
Prefer reading instead? The full article is available here.
Real-world decisions often involve conflicting objectives, like boosting sales while avoiding overstock. In this episode, we explore how multi-objective optimization (using NSGA-II with the pymoo library) can model and solve such dilemmas. You'll learn:
* Why traditional dispatch strategies fall short
* How Pareto fronts reveal optimal trade-offs
* How to apply ASF and Pseudo-Weights to guide final decisions
If you’d rather read than listen, the full article (with code, charts, and detailed examples) is available on Substack :
👉 Like this kind of content? Subscribe to get future articles and episodes delivered straight to your inbox as soon as they’re published.