Skip to content

Somie12/Walmart_Sparkathon

 
 

Repository files navigation

Intel View - Converge Sparkathon | Walmart

Team Name: TeamSpark
Project Name: Intel View


Team Members

Harish Mahto Somie12 Anshika1704 Ganeev0304


Problem Statement

In the fast-paced e-commerce environment, Walmart struggles to stay competitive with rapidly fluctuating prices and promotions by competitors. A real-time solution is required to track, compare, and adapt to these dynamic changes.


Solution

Intel View is an AI-powered mobile app that provides real-time competitive price monitoring. It tracks competitor prices, identifies trends, and generates alerts for significant price changes, helping Walmart stay ahead with timely adjustments.


App Overview

Intel View offers features such as:

  • Real-time price comparison across competitors
  • Price change alerts for key products
  • Discount and promotion tracking
  • Dynamic pricing strategies based on competitive insights

Tech Stacks Lite 💻

  • Frontend: XML, Java, CSS
  • Backend: Java, XML
  • AI/ML: TensorFlow, Scikit-learn, Pandas, NumPy
  • Database: SQLite (local database for mobile apps)

Working

Intel View scrapes competitor prices in real-time, processes them using AI models, and presents actionable insights through a user-friendly mobile app interface. The system also triggers alerts when price changes are detected beyond predefined thresholds.


Monetization Strategies

  • Subscription-based pricing for premium features (customized alerts, advanced analytics).
  • API access for partner retailers.
  • SaaS licensing for broader market use.

Future Scope

  • Expanding the scope to include inventory and supply chain monitoring.
  • Advanced AI models for predictive pricing.
  • Integration with more global e-commerce platforms.

Proof of Concept (Datasets, AI Models, App Screenshots)

Screenshots

Screenshot 1 Screenshot 2 Screenshot 3 Screenshot 4 Screenshot 5


APK Download


Our Presentation

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Java 64.9%
  • Kotlin 35.1%