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HKUST_Smart_City NeurIPS 2022: CityLearn ChallengeView
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HKUST_Smart_Building NeurIPS 2023 Citylearn ChallengeView
Control Track: CityLearn Challenge
Request for Extended Runtime in Phase 2
About 1 year agoIβd like to address a crucial issue regarding Phase 2 of the CityLearn Challenge: runtime limitations.
In Phase 2, weβre tasked with controlling 9 buildings over three months, including public and private evaluations. However, the 30-minute runtime limit poses challenges, especially for algorithms like Model Predictive Control (MPC). These algorithms need more time, especially on systems with limited CPU resources (e.g., 2 CPUs).
In real-world applications, optimizing nine buildings over three months doesnβt require such tight constraints. The current time limit could limit the diversity of control strategies and discourage the use of valuable algorithms.
I kindly suggest extending the runtime limit to encourage diverse control strategies and inclusive participation. This change would benefit all participants and foster innovation.
Request for Extended Runtime in Phase 2
About 1 year ago@kingsley_nweye Apologies for any confusion. To clarify further, I was counting both the public and private evaluations. In the public evaluation, we are tasked with controlling three buildings, and in the private evaluation, we control 6 buildings (public 3+private 3οΌ. This brings the total to nine buildings that are being optimized over the three-month period.