In this paper, we describe an approach to scheduling under uncertainty that achieves scalability through a coupling of deterministic and probabilistic reasoning. Our specific focus is a class of oversubscribed scheduling problems where the goal is to maximize the reward earned by a team of agents in a distributed execution environment. There is uncertainty in both the duration and outcomes of executed activities. To ensure scalability, our solution approach takes as its starting point an initial deterministic schedule for the agents, computed using expected duration reasoning. This initial agent schedule is probabilistically analyzed to find likely points of failure, and then selectively strengthened based on this analysis. For each schedul...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
In this work we treat the problem of scheduling under two types of temporal uncertainty, setbased an...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
Abstract. Open environments are characterized by their uncertainty and non-determinism. Agents need ...
This thesis consists in revisiting traditional scheduling problematics in computational environments...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
During execution of a schedule some uncertain events may take place for example: resources may becom...
Abstract. We show how to evaluate the performance of solutions to finite-horizon scheduling problems...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this paper, we present a new method for finding robust solutions to mixed-integer linear programs...
Deterministic models for project scheduling and control suffer from the fact that they assume comple...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
Abstract: The problem we tackle is progressive scheduling with temporal and resource uncertainty. Op...
Invited PaperInternational audienceWe show how to evaluate the performance of solutions to finite-ho...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
In this work we treat the problem of scheduling under two types of temporal uncertainty, setbased an...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
Abstract. Open environments are characterized by their uncertainty and non-determinism. Agents need ...
This thesis consists in revisiting traditional scheduling problematics in computational environments...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
During execution of a schedule some uncertain events may take place for example: resources may becom...
Abstract. We show how to evaluate the performance of solutions to finite-horizon scheduling problems...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this paper, we present a new method for finding robust solutions to mixed-integer linear programs...
Deterministic models for project scheduling and control suffer from the fact that they assume comple...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
Abstract: The problem we tackle is progressive scheduling with temporal and resource uncertainty. Op...
Invited PaperInternational audienceWe show how to evaluate the performance of solutions to finite-ho...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
In this work we treat the problem of scheduling under two types of temporal uncertainty, setbased an...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...