296 results for “topic:customer-churn”
Unlock actionable insights and boost customer retention with this Power BI project. Analyze and visualize risk factors to proactively prevent churn. ➡️
Customer churn prediction with Python using synthetic datasets. Includes data generation, feature engineering, and training with Logistic Regression, Random Forest, and Gradient Boosting. Improved pipeline applies hyperparameter tuning and threshold optimization to boost recall. Outputs metrics, reports, and charts.
Comprehensive Power BI dashboards showcasing insights on Call Centre Trends, Customer Retention, and Diversity & Inclusion to drive business impact.
Analysis and Prediction of the Customer Churn Using Machine Learning Models (Highest Accuracy) and Plotly Library
Machine Learning, EDA, Classification tasks, Regression tasks for customer churn
Telco Churn Analysis and Modeling is a comprehensive project focused on understanding and predicting customer churn in the telecommunications industry. Utilizing advanced data analysis and machine learning techniques, this project aims to provide insights into customer behavior and help develop effective strategies for customer
Free, open-source churn prediction for SaaS - plug in your data and know who's leaving before they do
Analyze your customer database with ease
In this BI consultancy project, I advised the CMO of Maven Communications on how to reduce customer churn, using data.
Modelo predictivo de abandono de clientes. EDA + ML para retención proactiva
📂 Task's and work completed during my internship at Saiket_System, focusing on Data Science.🧑💻
Utilizing tools such as Spark, Python (PySpark), SQL, and Databricks, performed logistic regression on customers to predict those at a higher risk of churning, then applied the model to an unseen "new customers" data set.
An end-to-end machine learning project predicting bank customer churn with a Gradient Boosting Classifier. It features a complete pipeline for data processing, model training, and real-time predictions via a Flask API. SMOTE is used for handling imbalanced data, and MLflow is integrated for model tracking.
Telecom Customer segmentation and Churn Prediction
📊 A machine learning project to predict customer churn using classification models like Random Forest, Decision Tree, and XGBoost. Includes data preprocessing, SMOTE for class balancing, hyperparameter tuning, and model deployment using pickle.
Proyecto de Ciencia de Datos para predecir la fuga de clientes. Implementa un enfoque avanzado con Variables Fantasma (Ghost Variables) para la selección de características y un modelo Random Forest para la clasificación.
This is a Machine Learning + Flask Web App that predicts whether a customer is likely to churn and suggests a discount policy based on churn probability.
This repository contains a complete, runnable example showing how Customer Success teams can use Logistic Regression to predict churn probability and act early.
Churn prediction has become a very important part of Syriatel's company strategy. This project uses machine learning algorithms to build a model that can accurately predicts customers who are likely to churn.
🎯 Predict customer churn with 96%+ accuracy using Random Forest ML. Beautiful visualizations, production-ready code, and real business impact. Save revenue before customers leave! 🚀
A step-by-step customer churn prediction project using Python, including data cleaning, visualization, and logistic regression.
Machine learning project to predict customer churn using end-to-end data preprocessing, feature engineering, model training, evaluation, and deployment-ready artifacts.
End-to-end Telecom Customer Churn Analysis using PostgreSQL, Python EDA, and Machine Learning (Logistic Regression & Random Forest).
Predictive Customer Churn Analysis and Strategic Segmentation using LightGBM and K-Means. Features an interactive Streamlit dashboard for actionable retention strategies.
End-to-End Customer Churn Intelligence Platform with Explainable AI, Segmentation, NLP and Deep Learning
End-to-end customer churn prediction project using the Telco dataset. Includes EDA, data preprocessing, Logistic Regression / Random Forest / XGBoost model comparison, SHAP explainability, and a production-ready prediction pipeline.
E-commerce customer churn prediction with CatBoost. 98.1% ROC-AUC, 60.6% cost reduction. Interactive Streamlit dashboard with business impact analysis.
customer churn prediction system with Django REST, MongoDB, and ML (87% accuracy)
The repository presented steps for building a model that predicted whether a customer would switch telecommunication service providers.
An end-to-end ML application that predicts bank customer churn using 9 different models and provides AI-generated retention strategies with Groq LLM. Built with Streamlit for interactive predictions and visualizations.