orlov-ai/beer-game-env
Beer Game implemented as an OpenAI gym environment.
This project helps supply chain and operations managers simulate different ordering strategies in a common supply chain scenario. You provide various demand patterns and ordering rules for different roles (retailer, wholesaler, distributor, factory), and it outputs the resulting inventory levels, backlogs, and costs for each player over time. It's designed for professionals who want to understand and mitigate the 'bullwhip effect' in their supply chains.
No commits in the last 6 months.
Use this if you need to test how different ordering policies impact inventory and costs across a multi-echelon supply chain.
Not ideal if you're looking for a production-ready supply chain optimization tool for real-time operations.
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Language
Python
License
MIT
Category
Last pushed
Aug 04, 2019
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