Anticipate & Act : Integrating LLMs and Classical Planning for Efficient Task Execution in Household Environments
- LLMAG

Assistive agents performing household tasks such as making the bed or cooking breakfast often compute and execute actions that accomplish one task at a time. However, efficiency can be improved by anticipating upcoming tasks and computing an action sequence that jointly achieves these tasks. State-of-the-art methods for task anticipation use data-driven deep networks and Large Language Models (LLMs), but they do so at the level of high-level tasks and/or require many training examples. Our framework leverages the generic knowledge of LLMs through a small number of prompts to perform high-level task anticipation, using the anticipated tasks as goals in a classical planning system to compute a sequence of finer-granularity actions that jointly achieve these goals. We ground and evaluate our framework's abilities in realistic scenarios in the VirtualHome environment and demonstrate a 31% reduction in execution time compared with a system that does not consider upcoming tasks.
View on arXiv@article{arora2025_2502.02066, title={ Anticipate & Act : Integrating LLMs and Classical Planning for Efficient Task Execution in Household Environments }, author={ Raghav Arora and Shivam Singh and Karthik Swaminathan and Ahana Datta and Snehasis Banerjee and Brojeshwar Bhowmick and Krishna Murthy Jatavallabhula and Mohan Sridharan and Madhava Krishna }, journal={arXiv preprint arXiv:2502.02066}, year={ 2025 } }