MRI
MRI India Journals Vol. 9 No. 10 (2025): Volume 9 Issue 10 2025

Retail Purchase Intelligence System

Authors

  • Sakshi Shivaji Godse Student, Computer Engineering,Sandip Institute Of Technology and Research Center Nashik(SITRC)
  • Vishakha Rajendra Ganore Student, Computer Engineering,Sandip Institute Of Technology and Research Center Nashik(SITRC)
  • Vyankatesh Gopaldas Bairagi Student, Computer Engineering,Sandip Institute Of Technology and Research Center Nashik(SITRC)
  • Darshan Yogesh Kangane Student, Computer Engineering,Sandip Institute Of Technology and Research Center Nashik(SITRC)
  • Abhay Gaidhani Prof. Computer Engineering,Sandip Institute Of Technology and Research Center Nashik(SITRC)

DOI:

https://doi.org/10.65521/ijasret.v9i10.1487

Keywords:

E-commerce Web Scraping Price Comparison Python Data Aggregation Consumer Intelligence Online Retail Automation

Abstract

The growing popularity of e-commerce platforms has transformed consumer behavior, with modern buyers increasingly
relying on digital channels to compare prices before making purchases. However, manual price checking across multiple websites
remains inefficient, time-consuming, and error-prone. This research presents a Retail Purchase Intelligence System, an automated price comparison framework that aggregates product pricing information from various e-commerce sources and displays it in a unified
interface. The system utilizes web scraping techniques through Python libraries such as Beautiful Soup and Requests, combined with a
centralized MySQL database for structured data storage. A lightweight front-end interface built with HTML, CSS, and JavaScript enables
intuitive search and quick visualization of comparative results. Experimental validation demonstrates that the system can accurately
extract and normalize pricing data across multiple online retailers, significantly reducing consumer effort and time in finding optimal
deals. The proposed model also outlines scalability for dynamic websites through Selenium-based scraping and highlights future
extensions such as price-trend analysis, alert notifications, and browser integration. Overall, the system provides an effective, low-cost
solution for real-time price intelligence and contributes to advancing consumer-centric automation in digital retail.


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Published

2025-10-30

How to Cite

Godse, S. S., Ganore, V. R., Bairagi, V. G., Kangane, D. Y., & Gaidhani, A. (2025). Retail Purchase Intelligence System. International Journal of Advanced Scientific Research and Engineering Trends, 9(10), 9–11. https://doi.org/10.65521/ijasret.v9i10.1487

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