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ML4MOC

Dec 2, 2023 · 1 min read

ML4MOC is a benchmark for auto-selecting MIP Optimizer’s configuration.

Last updated on Dec 2, 2023
Application Mixd Integer Programming Optimizer Machine Learning
Hongpei Li
Authors
Hongpei Li
Undergraduate

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PDHCG-Net Dec 2, 2023 →

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