104 results for “topic:customer-churn-analysis”
Customers in the telecom industry can choose from a variety of service providers and actively switch from one to the next. With the help of ML classification algorithms, we are going to predict the Churn.
Unlock actionable insights and boost customer retention with this Power BI project. Analyze and visualize risk factors to proactively prevent churn. ➡️
A Python-based project for analyzing customer churn using data visualization and machine learning models to predict churn probability. Employs libraries like Pandas, Scikit-learn, and Matplotlib for data preprocessing, model training, and insightful visualizations.
The Customer Churn table contains information on all 7,043 customers from a Telecommunications company in California in Q2 2022. We need to predict whether the customer will churn, stay or join the company based on the parameters of the dataset.
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
Customer Churn Analysis Report using powerbi
Customer Churn Analysis in R: Logistic, Classification Tree, XGBoost, Random Forest.
Marketing Analytics
No description provided.
Build and evaluate logistic regression model using PySpark 3.0.1 library.
Customer Churn Analysis with Neural Network
In this project, we embark on an exciting journey to explore and analyze customer churn within the Telecom network service using the CRISP-DM (Cross-Industry Standard Process for Data Mining) framework.
Telecom Customer segmentation and Churn Prediction
This shows my complete Power BI dashboards with real world data provided by PWC Switzerland. This is a Forage virtual internship where I got to use, analyze and gain valuable insights using real world data
No description provided.
This project focuses on a fictitious software company, Churn Buster, that is pitching their tool to Telecom Inc., a fictitious wireless service company. Churn Buster has built a predictive model to reduce Telecom Inc.'s customer churn
Production-ready machine learning pipelines with comprehensive MLflow artifact tracking, focusing on customer churn prediction.
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.
End-to-end Customer Churn Analysis using Python, SQL, and Power BI with interactive dashboard.
We utilize customer account data to visualize churn rate based on various factors. Additionally, we predict customer churn using a logistic regression model provided by scikit-learn.
Derive insights of factors contributing to customer churn in the Telecom Industry.
End-to-end telco customer churn analysis data analyst project: raw Kaggle dataset ingestion, MySQL data warehousing, Python-based cleaning/modeling, and Power BI dashboard. Project includes actionable business insights, model-driven recommendations, and revenue impact.
End-to-end data analytics project analyzing customer churn behavior using Excel, Python, SQL, and Power BI.
Power BI dashboard analyzing telecom customer churn to identify key drivers of churn and provide data-driven retention insights.
My solution for DataCamp case study "Analyzing Customer Churn in Power BI".
Customer Churn Analysis
Predictive Churn Analysis for Telecom Company Using Python
Hello, this is my final project with my friend when I joined Fresh Graduate Academy Program at Binar Academy in 2023.
📊 Customer Segmentation & Churn Analysis project completed as part of a Business Analyst Internship at Saiket Systems.