- Possible improvements to the translation procedure
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- Why does Codex perform so well?
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- Diving into experimental results
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- Future outlook
Description:
Explore a comprehensive video lecture and interview on using large language models as zero-shot planners for embodied agents. Delve into the VirtualHome environment and learn how to translate unstructured language model outputs into structured grammar for interactive environments. Discover techniques for decomposing high-level tasks into actionable steps without additional training. Examine the challenges of plan evaluation and execution, and understand the contributions of this research. Gain insights from the interview with first author Wenlong Huang, covering topics such as model size impact, output refinement, and the effectiveness of Codex. Analyze experimental results and consider future implications for extracting actionable knowledge from language models in embodied AI applications.
Language Models as Zero-Shot Planners - Extracting Actionable Knowledge for Embodied Agents