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customer-retention

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This demo repository demonstrates how to analyze customer reviews with Azure OpenAI Service (AOAI). I leveraged "ASOS Customer Review" from Kaggle to obtain valuable insight from the customer review content.

  • Updated Feb 14, 2023
  • Jupyter Notebook

Predicts which telecom customers are likely to churn with 95% accuracy using real-world data features from usage, billing, and support data. Implements Sturges-based binning, one-hot encoding, stratified 80/20 train-test split, and a two-level ensemble pipeline with soft voting. Achieves 94.60% accuracy, 0.8968 AUC, 0.8675 precision, 0.7423 recall.

  • Updated May 9, 2025
  • Python

Assessed brand loyalty patterns and price elasticity metrics to provide insights for brand’s market growth. Recommended strategies for the top 3 brands based on competitor analysis, customer profiling and customer retention through RFM analysis and multinomial logit.

  • Updated Apr 12, 2018
  • SAS

The Bank Churn Classification project predicts customer churn in the banking sector using machine learning algorithms and EDA. It features a user-friendly interface built with HTML and CSS, with model deployment via Flask. This helps banks identify churn patterns and implement strategies to retain customers.

  • Updated Jun 9, 2025
  • Jupyter Notebook

This project predicts Customer Lifetime Value (CLV) for e-commerce. It aims at forecasting the revenue a business can expect from a customer over time. I did an explatory analysis. From Linear Regression to Neural Networks, explore how different models perform in predicting CLV.

  • Updated Dec 28, 2023
  • Jupyter Notebook

key performance indicators (KPIs) for the sales of Egypt Telecom. KPIs are metrics used to evaluate the success of sales activities and business performance. In this visual format, the data is likely presented in charts, graphs, or tables to provide a clear overview of how the telecom company is performing in various aspects of its sales operations

  • Updated Apr 11, 2025
Customer-Churn-Prediction

This project showcases the application of data analysis techniques to solve real-world business problems in the hotel industry. By mastering essential Python libraries and methodologies, valuable insights have been derived to support Atliq Grands in enhancing customer retention and boosting revenue.

  • Updated May 17, 2024
  • Jupyter Notebook

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