• Report Links
    We do not store any files or images on our server. XenPaste only index and link to content provided by other non-affiliated sites. If your copyrighted material has been posted on XenPaste or if hyperlinks to your copyrighted material are returned through our search engine and you want this material removed, you must contact the owners of such sites where the files and images are stored.

The Machine Learning Series in Python: Level 1


🦊 DNSProxy Layer 7 DDOS Protection 🥷 / DMCA Ignored 🫡 / Advanced Browser Checks 🕸

King

Administrator
Joined
Jul 12, 2021
Messages
25,005
Reaction score
5
Points
38
797a77585a480feb560ca66794e0402b.jpeg


The Machine Learning Series in Python: Level 1
Published 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 45 lectures (3h 22m) | Size: 1.07 GB


Build a solid foundation in Machine Learning: Linear Regression, Logistic Regression and K-Means Clustering in Python

What you'll learn
Machine Learning
The Machine Learning Process
Regression
Ordinary Least Squares
Simple Linear Regression
Multiple Linear Regression
R-Squared
Adjusted R-Squared
Classification
Maximum Likelihood
Feature Scaling
Confusion Matrix
Accuracy
Clustering
K-Means Clustering
The Elbow Method
K-Means++
Build Machine Learning models in Python
Make Predictions
Requirements
Every single line of code will be fully explained so there are no prerequisites for coding skills
This is a foundational course, so no prior knowledge of Data Science is required
Some high-school level mathematics knowledge is recommended but not required
We use Google Colab for coding in Python which is very intuitive, but you can also use Jupyter or another IDE
Description
In this course you will master the foundations of Machine Learning and practice building ML models with real-world case studies. We will start from scratch and explain:What Machine Learning isThe Machine Learning Process of how to build a ML modelRegression: Predict a continuous numberSimple Linear RegressionOrdinary Least SquaresMultiple Linear RegressionR-SquaredAdjusted R-SquaredClassification: Predict a Category / ClassLogistic RegressionMaximum LikelihoodFeature ScalingConfusion MatrixAccuracyClustering: Predict / Identify a PatternK-Means ClusteringThe Elbow Method We will also do the following the three following practical activities:Real-World Case Study: Build a Multiple Linear Regression modelReal-World Case Study: Build a Logistic Regression...

Read more

Continue reading...
 
Top