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GRILLBot: An Assistant for Real-World Tasks with Neural Semantic Parsing and Graph-Based Representations
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GRILLBot: An Assistant for Real-World Tasks with Neural Semantic Parsing and Graph-Based Representations
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GRILLBot is the winning system in the 2022 Alexa Prize TaskBot Challenge, moving towards the next generation of multimodal task assistants. It is a voice assistant to guide users through complex real-world tasks in the domains of cooking and home improvement. These are long-running and complex tasks that require flexible adjustment and adaptation. The demo highlights the core aspects, including a novel Neural Decision Parser for contextualized semantic parsing, a new "TaskGraph" state representation that supports conditional execution, knowledge-grounded chit-chat, and automatic enrichment of tasks with images and videos.
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