Saved in:
Bibliographic Details
Main Authors: Radityo, Henry Anand Septian, Willson, Bernardus, Tanadi, Raynard, Dwiyanti, Latifa, Akbar, Saiful
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.08147
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910004074774528
author Radityo, Henry Anand Septian
Willson, Bernardus
Tanadi, Raynard
Dwiyanti, Latifa
Akbar, Saiful
author_facet Radityo, Henry Anand Septian
Willson, Bernardus
Tanadi, Raynard
Dwiyanti, Latifa
Akbar, Saiful
contents The rising global prevalence of diabetes necessitates early detection to prevent severe complications. While AI-powered prediction applications offer a promising solution, they require a responsive and scalable back-end architecture to serve a large user base effectively. This paper details the development and evaluation of a scalable back-end system designed for a mobile diabetes prediction application. The primary objective was to maintain a failure rate below 5% and an average latency of under 1000 ms. The architecture leverages horizontal scaling, database sharding, and asynchronous communication via a message queue. Performance evaluation showed that 83% of the system's features (20 out of 24) met the specified performance targets. Key functionalities such as user profile management, activity tracking, and read-intensive prediction operations successfully achieved the desired performance. The system demonstrated the ability to handle up to 10,000 concurrent users without issues, validating its scalability. The implementation of asynchronous communication using RabbitMQ proved crucial in minimizing the error rate for computationally intensive prediction requests, ensuring system reliability by queuing requests and preventing data loss under heavy load.
format Preprint
id arxiv_https___arxiv_org_abs_2512_08147
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Scalable Back-End for an AI-Based Diabetes Prediction Application
Radityo, Henry Anand Septian
Willson, Bernardus
Tanadi, Raynard
Dwiyanti, Latifa
Akbar, Saiful
Artificial Intelligence
Software Engineering
The rising global prevalence of diabetes necessitates early detection to prevent severe complications. While AI-powered prediction applications offer a promising solution, they require a responsive and scalable back-end architecture to serve a large user base effectively. This paper details the development and evaluation of a scalable back-end system designed for a mobile diabetes prediction application. The primary objective was to maintain a failure rate below 5% and an average latency of under 1000 ms. The architecture leverages horizontal scaling, database sharding, and asynchronous communication via a message queue. Performance evaluation showed that 83% of the system's features (20 out of 24) met the specified performance targets. Key functionalities such as user profile management, activity tracking, and read-intensive prediction operations successfully achieved the desired performance. The system demonstrated the ability to handle up to 10,000 concurrent users without issues, validating its scalability. The implementation of asynchronous communication using RabbitMQ proved crucial in minimizing the error rate for computationally intensive prediction requests, ensuring system reliability by queuing requests and preventing data loss under heavy load.
title Scalable Back-End for an AI-Based Diabetes Prediction Application
topic Artificial Intelligence
Software Engineering
url https://arxiv.org/abs/2512.08147