Free Machine Learning Tutorial – Theoretical concepts of Machine Learning

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Free

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Beginner

Last updated on August 19, 2024 9:45 pm

Learn over 27 functions in Python’s sklearn library with this beginner-friendly course. Master supervised, semi-supervised, and unsupervised learning, as well as hyperparameter tuning and model evaluation. Perfect for beginner Python developers. Start your machine learning journey today!

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This course covers over 27 functions in Python’s machine learning library, sklearn. The functions covered in this course take the student through the entire machine learning life cycle.

The student will learn the types of learning that are part of sklearn, to include supervised, semi-supervised and unsupervised learning.

The student will learn about the types of estimators used in supervised, semi-supervised and unsupervised learning, to include classification and regression.

The student will learn about a variety of supervised learning estimators to include linear regression, logistic regression, decision tree, random forrest, naive bayes, support vector machine, k nearest neighbour, and neural network.

The student will learn about sklearn’s three semi-supervised functions to make predictions on classification problems.

the student will learn about some of the estimators used to make predictions on unsupervised learning, to include k means, hierarchical and Gaussian method.

The student will learn about dimensionality reduction and feature selection as a means of reducing the number of features in the dataset.

The student will learn about the different functions in sklearn that carry out preprocessing activities to include standardisation, normalisation, encoding and imputation.

The student will learn about hyperparameter tuning and how to perform a grid search on the different parameters in the model to help it work at peak optimisation.

The student will learn about goodness of fit tests, to include root mean squared error, accuracy score, confusion matrix, and classification report, which tell the user how well the model has performed.

The students will receive additional learning and cover the machine learning life cycle to enable him to initiate how own machine learning project using sklearn.

Who this course is for:

  • Beginner Python developers who would like to know how to undertake machine learning using Python’s sklearn library.

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    Free Machine Learning Tutorial – Theoretical concepts of Machine Learning
    Free Machine Learning Tutorial – Theoretical concepts of Machine Learning
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