PDDLFuse: A Tool for Generating Diverse Planning Domains
Vedant Khandelwal, Amit Sheth, Forest Agostinelli

TL;DR
PDDLFuse is a novel tool that generates diverse and complex planning domains in PDDL, inspired by domain randomization, to improve testing and validation of planning algorithms.
Contribution
It introduces a method to generate varied planning domains with adjustable difficulty, advancing domain diversity and complexity in planning research.
Findings
Efficient creation of intricate, varied planning domains.
Enhanced testing capabilities for planning algorithms.
Significant improvement over traditional domain generation methods.
Abstract
Various real-world challenges require planning algorithms that can adapt to a broad range of domains. Traditionally, the creation of planning domains has relied heavily on human implementation, which limits the scale and diversity of available domains. While recent advancements have leveraged generative AI technologies such as large language models (LLMs) for domain creation, these efforts have predominantly focused on translating existing domains from natural language descriptions rather than generating novel ones. In contrast, the concept of domain randomization, which has been highly effective in reinforcement learning, enhances performance and generalizability by training on a diverse array of randomized new domains. Inspired by this success, our tool, PDDLFuse, aims to bridge this gap in Planning Domain Definition Language (PDDL). PDDLFuse is designed to generate new, diverse…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Semantic Web and Ontologies · Model-Driven Software Engineering Techniques
