Customer Analytics in Python

Beginner and Advanced Customer Analytics in Python: PCA, K-means Clustering, Elasticity Modeling & Deep Neural Networks
4.46 (1587 reviews)
Udemy
platform
English
language
Data & Analytics
category
instructor
Customer Analytics in Python
16,302
students
5 hours
content
Sep 2024
last update
$99.99
regular price

What you will learn

Master beginner and advanced customer analytics

Learn the most important type of analysis applied by mid and large companies

Gain access to a professional team of trainers with exceptional quant skills

Wow interviewers by acquiring a highly desired skill

Understand the fundamental marketing modeling theory: segmentation, targeting, positioning, marketing mix, and price elasticity;

Apply segmentation on your customers, starting from raw data and reaching final customer segments;

Perform K-means clustering with a customer analytics focus;

Apply Principal Components Analysis (PCA) on your data to preprocess your features;

Combine PCA and K-means for even more professional customer segmentation;

Deploy your models on a different dataset;

Learn how to model purchase incidence through probability of purchase elasticity;

Model brand choice by exploring own-price and cross-price elasticity;

Complete the purchasing cycle by predicting purchase quantity elasticity

Carry out a black box deep learning model with TensorFlow 2.0 to predict purchasing behavior with unparalleled accuracy

Be able to optimize your neural networks to enhance results

Screenshots

Customer Analytics in Python - Screenshot_01Customer Analytics in Python - Screenshot_02Customer Analytics in Python - Screenshot_03Customer Analytics in Python - Screenshot_04
Related Topics
2643050
udemy ID
11/6/2019
course created date
11/20/2019
course indexed date
Bot
course submited by
Customer Analytics in Python - Coupon | Comidoc