While standard parallel machine scheduling is concerned with good assignments of jobs to machines, we aim to understand how the quality of an assignment is affected if the jobs' processing times are perturbed and therefore turn out to be longer (or shorter) than declared. We focus on online scheduling with perturbations occurring at any time, such as in railway systems when trains are late. For a variety of conditions on the severity of perturbations, we present bounds on the worst case ratio of two makespans. For the first makespan, we let the online algorithm assign jobs to machines, based on the non-perturbed processing times. We compute the makespan by replacing each job's processing time with its perturbed version while still sticking ...
This thesis presents results of our research in the area of optimization problems with incomplete in...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
AbstractMakespan minimization on m identical machines is a fundamental scheduling problem. The goal ...
AbstractIn many realistic scenarios of job processing, one job consumes a longer time to be satisfie...
Makespan minimization on identical machines is a fundamental problem in online scheduling. The goal ...
Consider the classical online scheduling problem where jobs that arrive one by one are assigned to i...
Abstract. We study a classical problem in online scheduling. A sequence of jobs must be scheduled on...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
In this paper, we derive bounds on performance guarantees of online algorithms for real-time preempt...
We consider the problem of scheduling jobs online, where jobs may be served partially in order to op...
Makespan minimization onm identical machines is a fundamental scheduling problem. The goal is to ass...
This thesis proposes and evaluates some online algorithms for machine scheduling problems. Determini...
A speed scaling problem is considered, where time is divided into slots, and jobs with payoff v arri...
Reliable task execution in machines that are prone to unpredictable crashes and restarts is both cha...
Guaranteeing the eventual execution of tasks in machines that are prone to unpredictable crashes and...
This thesis presents results of our research in the area of optimization problems with incomplete in...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
AbstractMakespan minimization on m identical machines is a fundamental scheduling problem. The goal ...
AbstractIn many realistic scenarios of job processing, one job consumes a longer time to be satisfie...
Makespan minimization on identical machines is a fundamental problem in online scheduling. The goal ...
Consider the classical online scheduling problem where jobs that arrive one by one are assigned to i...
Abstract. We study a classical problem in online scheduling. A sequence of jobs must be scheduled on...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
In this paper, we derive bounds on performance guarantees of online algorithms for real-time preempt...
We consider the problem of scheduling jobs online, where jobs may be served partially in order to op...
Makespan minimization onm identical machines is a fundamental scheduling problem. The goal is to ass...
This thesis proposes and evaluates some online algorithms for machine scheduling problems. Determini...
A speed scaling problem is considered, where time is divided into slots, and jobs with payoff v arri...
Reliable task execution in machines that are prone to unpredictable crashes and restarts is both cha...
Guaranteeing the eventual execution of tasks in machines that are prone to unpredictable crashes and...
This thesis presents results of our research in the area of optimization problems with incomplete in...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
AbstractMakespan minimization on m identical machines is a fundamental scheduling problem. The goal ...