Customer Segmentation Tutorial | Python Projects | K-Means Algorithm | Python Training | Edureka

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This Edureka video on "Customer Segmentation” will provide you with comprehensive and detailed knowledge of Machine Learning concepts with a hands-on project where you will learn how to segment customer data using appropriate algorithms in Python. Following pointers are covered in this Customer Segmentation video:
00:00:00 Introduction
00:01:15 About the Project
00:04:19 What is Customer Segmentation?
00:04:53 Types of Segmentation Factors
00:08:14 Advantages Of Customer Segmentation
00:11:05 Why Machine Learning?
00:12:16 Unsupervised Learning
00:14:02 K-Means Algorithm
00:18:49 Environments and Tools For Project
00:20:46 Demo

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About the Masters Program
Edureka’s Machine Learning Engineer Masters Program makes you proficient in techniques like Supervised Learning, Unsupervised Learning and Natural Language Processing. It includes training on the latest advancements and technical approaches in Artificial Intelligence & Machine Learning such as Deep Learning, Graphical Models and Reinforcement Learning. The Master's Program covers the following topics:


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Prerequisites

There are no prerequisites for enrollment to the Masters Program. However, as a goodwill gesture, Edureka offers a complimentary self-paced course in your LMS on SQL Essentials to brush up on your SQL Skills. This program is designed and developed for an aspirant planning to build a career in Machine Learning or an experienced professional working in the IT industry.

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Edureka Saving lives always. Thank you for this.

thirdojohnson
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Great! Thanks❤️ I’m going to watch it asap

Aweheid
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Thank you for this video! Great content and different from other videos that uses the same makeblobs dataset.
Filled with lots of graphics. I wish I have found this earlier
Thank you

trinityimma
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Hi..Thanks for your explaination..How to intrepret the results?

bharathigowri
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Superb Content. I have learned a lot from this video. Thank u so much edureka for sharing useful information. I just want to practice more to be perfect in Clustering Algorithms. Would you Please share the data Set with me? It helps me a lot

vaddellaindrakumar
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Thank you very much for this. with your video, i was able to complete my project. However, i would appreciate if you can also help with the source codes and dataset. Thanks in anticipation

lemikanadeola
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Thanks, Simple and Cleared Explanations...

done
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Hi, can i know what can be concluded from the result ?

wanaisyah
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Wonderful session. How to consider categorical variables in k means?

psquare
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The video is very helpful.. could you please share the .py and data sheet...

GOTMAREOM
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Hi.Very informative session.Thank you..Can you please share the dataset link.

superpowerbawse
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Great tutorial ! Thanks a lot !! .Can you please share the dataset link.

west
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you should share the link of data...!!!
video was awesome

vinaybhavana
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I really appreciate your explanation. It's too much good for understanding. Could you please give me the CSV dataset file ?

asadullahallmamun
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Thank you, it was very helpful. Can you help with the dataset and the source code for the project.

vishvapatel
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Thank you. Please help with data and code

vicky
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hey can u please send me the dataset link

muhammadluthfi
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Vedio is very helpful.. could you please share the .py and data sheet ..

skh
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Great.. Can you please share your dataset link?

FazilAmirli-ritr
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is there anyway to download the code ?? i m in urgent need for the project and i am unable to run this on pycharm

UltraSolarGod