Customer Personality Analysis Using Clustering
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Updated
Dec 10, 2024 - Jupyter Notebook
Customer Personality Analysis Using Clustering
BigData system to capture user actions on buttons and links, as well as their time spent on a website, to subsequently perform unsupervised clustering and analysis of keywords via generative AI and webscraping. Javascript application that connects to MongoDB, using a node.js server, and passes the captured data to a Python backend.
Analyze the data of Visa applicants, build a predictive model to facilitate the process of visa approvals, and based on important factors that significantly influence the Visa status recommend a suitable profile for the applicants for whom the visa should be certified or denied.
Developing a targeted marketing strategy through exploratory analysis, customer profiling, and segmentation. Focuses on data wrangling, merging, grouping, and deriving variables to uncover actionable insights for personalized marketing efforts.
Business Case: Aerofit - Descriptive Statistics & Probability
Customer segmentation is a pivotal task for business analytics. Customer segmentation is the process of splitting customers into different groups with similar characteristics for potential business value proposition. Many companies find that segmenting their customers enable them to communicate, engage with their customers more effectively. Futu…
Data Analysis Project using Python(Numpy, Pandas, Seaborn, matplotlib)
Applied SAS techniques for data analysis and machine learning in a milestone project. Base SAS Programming and SAS Viya tools were utilized for preprocessing, customer profiling, sales analysis, promotions, supplier evaluation, and customer segmentation. Results were visualized comprehensively.
🔸 Customer Segmentation Analysis 🔸 Performed Customer Segmentation Analysis on an e-commerce dataset using clustering techniques (K-Means). Cleaned, explored, and visualized customer data to uncover spending patterns and demographic insights. Delivered actionable insights for targeted marketing strategies and customer retention.
This project conducts customer credit risk assessment by preprocessing the data, applying various models, and evaluating their performance with and without SMOTE (Synthetic Minority Over-sampling Technique) to address class imbalance.
Customer Personality Analysis Using Clustering
Ensemble Techniques: Analyze the data of Visa applicants, build a predictive model to facilitate the process of visa approvals, and based on important factors that significantly influence the Visa status recommend a suitable profile for the applicants for whom the visa should be certified or denied.
Business Case : Aerofit - Descriptive Stats & Probability
Aerofit Business Case Study - Exploratory Data Analysis to derive insights, trends and patterns.
A Fitness Company wants to know the customer behavior towards the threadmill and want recommendations to increase its profits.
Advanced analytics in R to delineate market segments in retail, optimizing targeted marketing strategies through customer behavior and demographic profiling
This project analyzes AeroFit’s treadmill customer dataset to uncover patterns in demographics, fitness behaviour and income & to profile customers for each treadmill model (KP281, KP481, KP781). The analysis includes descriptive statistics, probability calculations and visualizations to provide insights for targeted marketing & product suggestions
Conducted Descriptive Statistics & Probability to extract insights
Identifying customer segmentation from history data of Everything Plus, an online household store using KMeans Algorithm (submitted as final project for course in Practicum Indonesia)
Analyzes user behavior and demographic data to create distinct user segments for targeted advertising and personalized experiences.
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