This demonstrative document details the development, integration, and implementation of MediMind, a web application hosted on the cloud and powered by AI which utilizes Google’s Gemini 2.0 Pro Model (Google in Gemini: a family of highly capable multimodal model. Google Research Blog, 2023, [1]) for health information retrieval and medical image analysis. The system provides a conversational interface for health queries and both automated image analysis during food expert systems and exercise evaluation, as well as automated pill recognition. We describe the system architecture focusing on the components that incorporate AI models and newer computing paradigms based on containerization and cloud deployment in modern ecosystems. This paper discusses the steps taken to containerize the system using Docker, outline deployment options on Google Cloud Platform, including Cloud Run (serverless) and virtual machine, and analyze security concerns, scalability, and performance for medical care services in the cloud. Our results proved the application of generative AI and cloud-natives SDK architectures offers framework agility and ease of use for builders which could be helpful for enabling advanced personal healthcare systems, nutrition and fitness counseling, and even pedagogy in medicine.

错误:搜索内容不能为空,请输入英文关键词
错误:关键词超出字数限制,请精简
高级检索

MediMind: Integrating Gemini Pro and Docker for Scalable Health Diagnostics

  • Anushka More,
  • Priyanka More

摘要

This demonstrative document details the development, integration, and implementation of MediMind, a web application hosted on the cloud and powered by AI which utilizes Google’s Gemini 2.0 Pro Model (Google in Gemini: a family of highly capable multimodal model. Google Research Blog, 2023, [1]) for health information retrieval and medical image analysis. The system provides a conversational interface for health queries and both automated image analysis during food expert systems and exercise evaluation, as well as automated pill recognition. We describe the system architecture focusing on the components that incorporate AI models and newer computing paradigms based on containerization and cloud deployment in modern ecosystems. This paper discusses the steps taken to containerize the system using Docker, outline deployment options on Google Cloud Platform, including Cloud Run (serverless) and virtual machine, and analyze security concerns, scalability, and performance for medical care services in the cloud. Our results proved the application of generative AI and cloud-natives SDK architectures offers framework agility and ease of use for builders which could be helpful for enabling advanced personal healthcare systems, nutrition and fitness counseling, and even pedagogy in medicine.