Integer programs provide a powerful abstraction for representing a wide range of real-world scheduling problems. Despite their ability to model general scheduling problems, solving large-scale integer programs (IP) remains a computational challenge in practice. The incorporation of more complex objectives such as robustness to disruptions further exacerbates the computational challenge. We present NICE (Neural network IP Coefficient Extraction), a novel technique that combines reinforcement learning and integer programming to tackle the problem of robust scheduling. More specifically, NICE uses reinforcement learning to approximately represent complex objectives in an integer programming formulation. We use NICE to determine assignments of ...
Cyber-physical systems, such as mobile robots, must respond adaptively to dynamic operating conditio...
Resource optimization and scheduling is a costly, challenging problem that affects almost every aspe...
International audienceIn this paper, we propose READYS, a reinforcement learning algorithm for the d...
Integer programs provide a powerful abstraction for representing a wide range of real-world scheduli...
© 2013 Dr. Sophie Kenrick DicksonAirline scheduling is traditionally concerned with developing a pla...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
A flexible manufacturing system (FMS) has advantages over traditional manufacturing systems due to i...
Integer programming (IP) is an important and challenging problem. Approximate methods have shown pro...
An important problem for the Internet is how to provide a guaranteed quality of service to users, in...
Scheduling is the mathematical problem of allocating tasks to resources considering certain constrai...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
Scheduling, planning and packing are ubiquitous problems that can be found in a wide range of real-w...
This Article is brought to you for free and open access by the Computer Science at ScholarWorks@UMas...
The goal of this research is to apply reinforcement learning methods to real-world problems like sch...
Parallel machine scheduling with sequence-dependent family setups has attracted much attention from ...
Cyber-physical systems, such as mobile robots, must respond adaptively to dynamic operating conditio...
Resource optimization and scheduling is a costly, challenging problem that affects almost every aspe...
International audienceIn this paper, we propose READYS, a reinforcement learning algorithm for the d...
Integer programs provide a powerful abstraction for representing a wide range of real-world scheduli...
© 2013 Dr. Sophie Kenrick DicksonAirline scheduling is traditionally concerned with developing a pla...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
A flexible manufacturing system (FMS) has advantages over traditional manufacturing systems due to i...
Integer programming (IP) is an important and challenging problem. Approximate methods have shown pro...
An important problem for the Internet is how to provide a guaranteed quality of service to users, in...
Scheduling is the mathematical problem of allocating tasks to resources considering certain constrai...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
Scheduling, planning and packing are ubiquitous problems that can be found in a wide range of real-w...
This Article is brought to you for free and open access by the Computer Science at ScholarWorks@UMas...
The goal of this research is to apply reinforcement learning methods to real-world problems like sch...
Parallel machine scheduling with sequence-dependent family setups has attracted much attention from ...
Cyber-physical systems, such as mobile robots, must respond adaptively to dynamic operating conditio...
Resource optimization and scheduling is a costly, challenging problem that affects almost every aspe...
International audienceIn this paper, we propose READYS, a reinforcement learning algorithm for the d...