FD-Autotune: Automated Configuration of Fast Downward
نویسندگان
چکیده
The FD-Autotune submissions for the IPC-2011 sequential tracks consist of three instantiations of the latest, highly parametric version of the Fast Downward Planning Framework. These instantiations have been automatically configured for performance on a wide range of planning domains, using the well-known ParamILS configurator. Two of the instantiations were entered into the sequential satisficing track and one into the sequential optimising track. We describe how the extremely large configuration space of Fast Downward was restricted to a subspace that, although still very large, can be managed by state-of-the-art automated configuration procedures, and how ParamILS was then used to obtain performance-optimised configurations.
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