game

How good are you at scheduling? Play now!

The Scheduling Experiment

Try your skills with this interactive game, simulating the scheduling of cola production in a factory. Are you ready?

You will have to:

- Select your character and manufacturing environment

- Understand the manufacturing operations required for production

- Place operations in order across production resources

- Consider machine and staff availability

- Schedule operations to meet your delivery date

Discover how critical APS software is in meeting the challenges of planning and scheduling

Evaluate your skills with this interactive game and try to schedule a cola production in a factory.

Explore the difficulty to manage manually higher data volume in a Consumer Product Goods (CPG) environment in the context of production scheduling. Discover how Advanced Planning & Scheduling can assist you in this process to release feasible and optimized schedule to your production facilities!

Please note this game has been designed to run on PC and is optimized for full-screen mode.

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