Optimal Resource Utilization for Autonomous Laboratory Orchestrators
In autonomous laboratories, AI agents suggest the next batch of experiments to do. However, planning and executing those tasks taking full advantage of the available resources is a completely different question. This can be challenging when dealing with real-world hardware constraints, especially so when there are multiple instruments with different capacities and throughputs. Here we demonstrate a 2-step method to address resource utilization for our autonomous platform for metal-organic framework synthesis. First, we use constraint programming to find optimal schedules. This finds schedules
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Why these links exist
- Linked via arxiv authorAustin McDannald →
Optimal Resource Utilization for Autonomous Laboratory Orchestrators
- Linked via arxiv authorJulia Tisaranni →
Optimal Resource Utilization for Autonomous Laboratory Orchestrators
- Linked via arxiv authorHowie Joress →
Optimal Resource Utilization for Autonomous Laboratory Orchestrators
