Practical Machine Learning for Data Scientists

Practical AI and ML

4.52 (281 reviews)
Udemy
platform
العربية
language
Data Science
category
Practical Machine Learning for Data Scientists
6,362
students
13.5 hours
content
Aug 2022
last update
$74.99
regular price

What you will learn

Build solid knowledge necessary for data scientists about AI, Machine Learning and Deep Learning

Understand the basics and underlying dynamics of supervised learining models: LinearRegression, LogisiticRegression, SVM, DNN, DecisionTrees and RandomForests.

Get introduced to unsupervised learning approaches for dimensionality reduction and clustering.

Build practical Machine Learning models and pipelines using python, scikit-learn, pandas, keras and tensorflow

Solve practical problems like image classification, text classification, price prediction.

Why take this course?

This course is a comprehensive introduction to AI and Machine Learning, targeting Data Scientists and Machine Learning engineers. It starts with setting the boundaries of Artificial Intelligence, Machine Learning, Deep Learning, and their relation to Data Science. What is expected as a member an AI team, and how to speak the same language. What is possible and what is not, and what defines a good AI project. The basics of supervised learning are covered, including the main ingredients of the Machine Learning problem, and the different solution setups. We cover both Linear models (Linear Regression, Logistic Regression, Support Vector Machines (SVM)) and Non-linear models (Polynomial Regression, Kernel SVM, Deep Neural Networks (DNN)). A universal approach is given to tackle any ML problem in a systematic way, covering data preparation, Exploratory Data Analysis (EDA), Model selection, Model evaluation, Model design, Fine tuning and Regularization. An end-to-end is given to illustrate this process with code in Google Colab Notebooks. We also cover the Machine Learning Meta algorithms and Ensemble methods: Voting, BAGGing, Boosting Decision Trees and Random Forests. Finally, we introduce unsupervised learning, covering dimensionality reduction algorithms, like Manifold Learning like Locally Linear Embedding (LLE) and Projection methods like Principal Component Analysis (PCA) and Clustering, like K-Means. Throughout the course, Python language is used. Popular Machine Learning libraries are used, like scikit-learn, in addition to pandas and keras.

Reviews

Fathi
August 24, 2023
very clear, rich and deep content, between the best not in arabic content only but all available online ressources. many thanks dr Ahmad.
Mohamed
June 6, 2023
As this course was so useful and Dr. Ahmed El Sallab covered every important points in this course . Thanks for him for this helpful content
Kerolos
January 26, 2023
it is not just a course about machine learning information , the course takes you and dive deeply through the topic
Omar
October 19, 2022
Excellent Dr. Ahmed, presents his material at an easy-to-follow pace extremely well explained and demonstrated

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4644516
udemy ID
4/16/2022
course created date
5/8/2022
course indexed date
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