Enhancing User Experience in Enterprise-Level Web Applications through Technological Innovation
DOI:
https://doi.org/10.71222/2n6h2311Keywords:
enterprise level web applications, user experience, technological innovation, personalized recommendationsAbstract
With the rapid development of information technology, various industries are increasingly relying on enterprise level web applications in their operations. However, traditional applications often encounter problems such as complex interface design, slow response, and poor compatibility between different platforms in terms of user experience, which have a negative impact on the work efficiency and market competitiveness of enterprises. This article explores user experience strategies for enhancing enterprise-level web applications through technological innovation, including improvements in interface interactivity, performance, cross-platform consistency, and personalized content recommendations. By analyzing the challenges faced by enterprise level web applications at present, this article proposes practical and feasible improvement paths, with the aim of assisting enterprises in finding efficient solutions, promoting their digital transformation, and enhancing business value.
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