Downloads: 4 | Views: 103 | Weekly Hits: ⮙1 | Monthly Hits: ⮙1
Research Paper | Information Technology | United States of America | Volume 11 Issue 9, September 2022 | Rating: 4.9 / 10
Asynchronous Data Processing with Machine Learning: Progressive Web Applications for Seamless Offline Functionality
Sri Rama Chandra Charan Teja Tadi
Abstract: Asynchronous data processing is a core building block of Progressive Web Applications (PWAs), providing seamless offline functionality and responsiveness in user experience irrespective of network access. PWAs make use of web technologies to deliver rich user experiences akin to native applications with both online and offline functionality. Their deployment is challenging in its own right, but they adhere to best practices that ensure their success on multiple platforms. Comparative performance studies show that PWAs are typically more responsive and faster to load than traditional web applications and native mobile applications, particularly on repeat access. In addition, data processing architecture in low - connectivity environments allows PWAs to perform operations smoothly without persistent internet connectivity, showcasing the benefit of asynchronous data processing. These advancements enable developers to create engaging applications with a uniform user experience, enhancing offline capability in various contexts. Through the addition of asynchronous processing, PWAs are more flexible and robust in handling data, further expanding web technologies' ability to operate within the digital landscape.
Keywords: Asynchronous Processing, Progressive Web Applications, Offline Functionality, Web Technologies, User Experience, Performance Optimization, Data Handling, Load Times, Low - Connectivity Environments, Digital Landscape
Edition: Volume 11 Issue 9, September 2022,
Pages: 1288 - 1296