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Bibliographic Details
Main Authors: Gawade, Sakharam, Akhouri, Shivam, Kulkarni, Chinmay, Samant, Jagdish, Sahu, Pragya, Aastik, Pahal, Jai, Meher, Saswat
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.05397
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Table of Contents:
  • Large Action Models (LAMs) have revolutionized intelligent automation, but their application in healthcare faces challenges due to privacy concerns, latency, and dependency on internet access. This report introduces an ondevice, multi-agent healthcare assistant that overcomes these limitations. The system utilizes smaller, task-specific agents to optimize resources, ensure scalability and high performance. Our proposed system acts as a one-stop solution for health care needs with features like appointment booking, health monitoring, medication reminders, and daily health reporting. Powered by the Qwen Code Instruct 2.5 7B model, the Planner and Caller Agents achieve an average RougeL score of 85.5 for planning and 96.5 for calling for our tasks while being lightweight for on-device deployment. This innovative approach combines the benefits of ondevice systems with multi-agent architectures, paving the way for user-centric healthcare solutions.