Food4All is a multi-agent framework combining heterogeneous data aggregation, lightweight reinforcement learning for accessibility and nutrition, and an online feedback loop to provide real-time, context-aware free food discovery with nutritional metadata.
Montaner, and Evan Wood
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Food4All: A Multi-Agent Framework for Real-time Free Food Discovery with Integrated Nutritional Metadata
Food4All is a multi-agent framework combining heterogeneous data aggregation, lightweight reinforcement learning for accessibility and nutrition, and an online feedback loop to provide real-time, context-aware free food discovery with nutritional metadata.