News Recommendation System

AI-Driven Personalized News Delivery

Engaging readers with tailored content using deep learning and behavioral analysis.

Project Overview

News platforms often struggle to hold readers’ attention. The client needed a smart system to keep users engaged by offering content aligned with their preferences and past behavior.

Language:

Python

Models:

Deep Learning, NLP

Storage:

Apache Cassandra

Address:

United States

Industry:

News & Media

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The Challenge

Despite quality content, news websites were failing to:

  • Retain reader interest

  • Drive repeat traffic

  • Surface relevant content efficiently

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Our Solution

We built a probabilistic recommendation system using deep learning and NLP. The model analyzes user behavior—likes, dislikes, clicks, and reading history—to serve personalized news suggestions.

Key Highlights:

  • User data modeling through digital footprints

  • Real-time recommendation engine

  • Scalable storage with Apache Cassandra

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How It Works

    1. Collect reader interaction data (views, likes, time spent)

    2. Train probabilistic models to identify content preferences

    3. Generate and display personalized news feeds dynamically

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Impact & Results

    • Increased content relevance for each reader

    • Reduced time spent searching for preferred news

    • Enhanced user engagement and satisfaction

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Client Outcome

    • 5–8% increase in web traffic

    • Better reader retention and interaction

    • Structured insights into reader preferences for future optimization

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Project Snapshot

Language: Python
Models: Deep Learning, NLP
Storage: Apache Cassandra
Location: United States
Industry: News & Media

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