Home Machine Learning Consumer Churn Prediction. Fashionable knowledge warehousing and Machine… | by 💡Mike Shakhomirov | Dec, 2023

Consumer Churn Prediction. Fashionable knowledge warehousing and Machine… | by 💡Mike Shakhomirov | Dec, 2023

0
Consumer Churn Prediction. Fashionable knowledge warehousing and Machine… | by 💡Mike Shakhomirov | Dec, 2023

[ad_1]

Fashionable knowledge warehousing and Machine Studying

Picture by Martin Adams on Unsplash

Little doubt, consumer retention is an important efficiency metric for a lot of corporations and on-line apps. We’ll talk about how we will use built-in knowledge warehouse machine studying capabilities to run propensity fashions on consumer behaviour knowledge to find out the probability of consumer churn. On this story, I want to give attention to dataset preparation and mannequin coaching utilizing normal SQL. Fashionable knowledge warehouses permit this. Certainly, retention is a vital enterprise metric that helps perceive consumer behaviour’s mechanics. It offers a high-level overview of how profitable our Software is when it comes to retaining customers by answering one easy query: Is our App adequate at retaining customers? It’s a well-known incontrovertible fact that it’s cheaper to retain an current consumer than to amass a brand new one.

In one in every of my earlier articles, I wrote about trendy knowledge warehousing [1].

Fashionable DWH has loads of helpful options and elements which differentiate them from different knowledge platform sorts [2].

ML mannequin assist appears to be the foundational DWH part when coping with huge knowledge.

On this story, I’ll use Binary logistic regression, one of many quickest fashions to coach. I’ll show how we will use it to foretell consumer propensity to churn. Certainly, We don’t must know each machine-learning mannequin.

We are able to’t compete with cloud service suppliers resembling Amazon ang Google in machine studying and knowledge science however we have to know tips on how to use it.

I beforehand wrote about it in my article right here [3]:

On this tutorial, we’ll learn to remodel uncooked occasion knowledge to create a coaching dataset for our ML…

[ad_2]