Quarterly Journal of Information and Communication Technology ​

Artificial Intelligence Is Changing E-Commerce: Streamlit

Document Type : Original Research Article

Author

Computer Engineering Department, Electronic Branch, Islamic Azad University, Tehran, Iran

Abstract
In the digital age we are witnessing, artificial intelligence (AI) has emerged as a key factor in the evolution of e-commerce. This article examines how to use AI to improve the experience of using data-driven web apps and combine it with artificial intelligence packages, as well as a more dynamic user interface with smart and dynamic parts and create a competitive advantage for businesses. For this research, we used forms that are designed dynamically and collect data from the user, and finally analyze the data and display it in the form of charts and graphs. Our findings show that AI has been able to Increase accuracy of predictions. Using data and advanced algorithms, AI is able to predict customer behavior and market demand with high accuracy. Automation of processes and reduction of the need for manpower has reduced operating costs. Recommender systems and intelligent customer support have led to faster and more personalized service. It has emerged as a powerful e-commerce tool that can help businesses succeed in today's competitive marketplace. As technology continues to advance, we can expect AI to play an even greater role in this industry.

Keywords


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