3.4  16 reviews on Udemy

Mastering Unsupervised Learning with Python

Master advanced clustering, topic modeling, manifold learning, and autoencoders using Python
Course from Udemy
 173 students enrolled
 en
Master the Unsupervised Learning landscape and apply Deep Learning
Use alternatives to K-Means and Gaussian Mixture Models for your data analysis
Compare and evaluate the results of different data analyses to determine the quality of clusters, time, and memory usage
Use the bag-of-words model to convert text to features to preprocess text
Apply algorithms such as LSA, LSI, and LDA to model topics using gensim and sklearn
Compare T-SNE and UMAP with PCA and ICA, in the context of how different algorithms work and when to apply them
Learn the Python application of TSNE and UMAP to image data using sklearn and umap
Leverage Unsupervised Learning to assess the difficulty of your Supervised Learning algorithms on a dataset
Evaluate the results of analysis applied to various datasets using Unsupervised Learning

In this video course you will understand the assumptions, advantages, and disadvantages of various popular clustering algorithms, and then learn how to apply them to different data sets for analysis. You will apply the Latent Dirichlet Allocation algorithm to model topics, which you can use as an input for a recommendation engine just like the New York Times did. You will be using cutting-edge, nonlinear dimensionality techniques (also called manifold learning)—such as T-SNE and UMAP—and autoencoders (unsupervised deep learning) to assess and visualize the information content in a higher dimension. You will be looking at K-Means, density-based clustering, and Gaussian mixture models. You will see hierarchical clustering through bottom-up and top-down strategies. You will go from preprocessing text to recommending interesting articles. Through this course, you will learn and apply concepts needed to ensure your mastery of unsupervised algorithms in Python.

By the end of this course, you will have mastered the application of Unsupervised Learning techniques and will be able to utilize them in your Data Science workflow—for instance, to extract more informative features for Supervised Learning problems. You will be able not only to interpret results but also to enhance them.

After having taken this course, you will have mastered the application of Unsupervised Learning with Python.

About the Author

Stefan Jansen is a data scientist with over 10 years' industry experience in fintech, investment, and as an advisor to Fortune 500 companies and startups, focusing on data strategy, predictive analytics, and machine and deep learning. He has used Unsupervised Learning extensively to segment large customer bases, detect anomalies, apply topic modeling to large volumes of legal documents to automate due diligence, and to facilitate image recognition. He holds master’s degrees from Harvard University and Free University Berlin, a CFA charter, and has been teaching data science and statistics for several years.

Mastering Unsupervised Learning with Python
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