In this paper optimal state space planning is parallelized by exploiting the processing power of a graphics card. The two exploration steps, namely selecting the actions to be applied and generating the successors, are performed on a graphics processing unit. Duplicate detection, however, is delayed to be executed on the central processing unit. Multiple cores are employed to bypass main memory latency. To increase processing speed for exact duplicate detection, the hash tables are lock-free. Moreover, a bucket-based representation enhances the concurrent distribution of frontier states. The planner supports cost-first exploration and is able to deal with a considerable fraction of current PDDL, including numerical state variables, complex ...
The complex Constraint Satisfaction Problems (CSPs) still require too long to solve even in the most...
Graphics processor units (GPUs) are many-core processors that perform better than central processing...
We present novel randomized algorithms for solving global motion planning problems that exploit the ...
In this paper optimal state space planning is parallelized by exploiting the processing power of a g...
This paper exploits parallel computing power of graphics cards to accelerate state space search. We ...
We present a novel algorithm to compute collision-free tra-jectories in dynamic environments. Our ap...
We present a novel algorithm to compute collision-free trajectories in dynamic environments. Our app...
The high computational throughput of modern graphics processing units (GPUs) make them the de-facto ...
In this paper we improve large-scale disk-based model checking by shifting complex numerical operati...
This paper proposes a parallel scheme for accelerating parameter sweep applications on a graphics pr...
For decades, humans have dreamed of making cars that could drive themselves, so that travel would be...
The programming of GPUs (Graphics Processing Units) is ready for practical applications; the largest...
We present novel randomized algorithms for solving global motion planning problems that exploit the ...
Many applications with regular parallelism have been shown to benefit from using Graphics Processing...
In the past few years, General Purpose Graphics Processors (GPUs) have been used to significantly sp...
The complex Constraint Satisfaction Problems (CSPs) still require too long to solve even in the most...
Graphics processor units (GPUs) are many-core processors that perform better than central processing...
We present novel randomized algorithms for solving global motion planning problems that exploit the ...
In this paper optimal state space planning is parallelized by exploiting the processing power of a g...
This paper exploits parallel computing power of graphics cards to accelerate state space search. We ...
We present a novel algorithm to compute collision-free tra-jectories in dynamic environments. Our ap...
We present a novel algorithm to compute collision-free trajectories in dynamic environments. Our app...
The high computational throughput of modern graphics processing units (GPUs) make them the de-facto ...
In this paper we improve large-scale disk-based model checking by shifting complex numerical operati...
This paper proposes a parallel scheme for accelerating parameter sweep applications on a graphics pr...
For decades, humans have dreamed of making cars that could drive themselves, so that travel would be...
The programming of GPUs (Graphics Processing Units) is ready for practical applications; the largest...
We present novel randomized algorithms for solving global motion planning problems that exploit the ...
Many applications with regular parallelism have been shown to benefit from using Graphics Processing...
In the past few years, General Purpose Graphics Processors (GPUs) have been used to significantly sp...
The complex Constraint Satisfaction Problems (CSPs) still require too long to solve even in the most...
Graphics processor units (GPUs) are many-core processors that perform better than central processing...
We present novel randomized algorithms for solving global motion planning problems that exploit the ...