Plansformer Tool: Demonstrating Generation of Symbolic Plans Using Transformers

Vishal Pallagani, Bharath Muppasani, Biplav Srivastava, F. Rossi, L. Horesh, K. Murugesan, Andrea Loreggia, F. Fabiano, Rony Joseph, Yathin Kethepalli
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引用次数: 1

Abstract

Plansformer is a novel tool that utilizes a fine-tuned language model based on transformer architecture to generate symbolic plans. Transformers are a type of neural network architecture that have been shown to be highly effective in a range of natural language processing tasks. Unlike traditional planning systems that use heuristic-based search strategies, Plansformer is fine-tuned on specific classical planning domains to generate high-quality plans that are both fluent and feasible. Plansformer takes the domain and problem files as input (in PDDL) and outputs a sequence of actions that can be executed to solve the problem. We demonstrate the effectiveness of Plansformer on a variety of benchmark problems and provide both qualitative and quantitative results obtained during our evaluation, including its limitations. Plansformer has the potential to significantly improve the efficiency and effectiveness of planning in various domains, from logistics and scheduling to natural language processing and human-computer interaction. In addition, we provide public access to Plansformer via a website as well as an API endpoint; this enables other researchers to utilize our tool for planning and execution. The demo video is available at https://youtu.be/_1rlctCGsrk
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变压器工具:示范生成的符号计划使用变压器
plantransformer是一种新颖的工具,它利用基于变压器架构的微调语言模型来生成符号规划。变形金刚是一种神经网络架构,已被证明在一系列自然语言处理任务中非常有效。与使用启发式搜索策略的传统规划系统不同,plantransformer对特定的经典规划领域进行了微调,以生成既流畅又可行的高质量规划。plantransformer将域和问题文件作为输入(在PDDL中),并输出一系列可以执行以解决问题的操作。我们展示了plantransformer在各种基准问题上的有效性,并提供了在评估过程中获得的定性和定量结果,包括其局限性。plantransformer有潜力显著提高各个领域的规划效率和有效性,从物流和调度到自然语言处理和人机交互。此外,我们通过网站和API端点提供对plantransformer的公共访问;这使其他研究人员能够利用我们的工具进行计划和执行。演示视频可在https://youtu.be/_1rlctCGsrk上获得
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