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Unsupervised Learning with Generative AI

✍ Scribed by Vaibhav Verdhan


Publisher
Manning Publications Co.
Year
2024
Tongue
English
Leaves
339
Category
Library

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No coin nor oath required. For personal study only.

✦ Synopsis


Full of case studies demonstrating how to apply each technique to real-world problems.

In Unsupervised Learning with Generative AI you’ll learn
Fundamental building blocks and concepts of machine learning and unsupervised learning
Data cleaning for structured and unstructured data like text and images
Clustering algorithms like kmeans, hierarchical clustering, DBSCAN, Gaussian Mixture Models, and Spectral clustering
Dimensionality reduction methods like Principal Component Analysis (PCA), SVD, Multidimensional scaling, and t-SNE
Association rule algorithms like aPriori, ECLAT, SPADE
Unsupervised time series clustering, Gaussian Mixture models, and statistical methods
Building neural networks such as GANs and autoencoders
Dimensionality reduction methods like Principal Component Analysis and multidimensional scaling
Association rule algorithms like aPriori, ECLAT, and SPADE
Working with Python tools and libraries like sklearn, bumpy, Pandas, matplotlib, Seaborn, Keras, TensorFlow, andFflask
How to interpret the results of unsupervised learning
Choosing the right algorithm for your problem
Deploying unsupervised learning to production

Unsupervised Learning with Generative AI introduces mathematical techniques, key algorithms, and Python implementations that will help you build machine learning models for unannotated data. You’ll discover hands-off and unsupervised machine learning approaches that can still untangle raw, real-world datasets and support sound strategic decisions for your business.

Don’t get bogged down in theoryβ€”the book bridges the gap between complex math and practical Python implementations, covering end-to-end model development all the way through to production deployment. You’ll discover the business use cases for machine learning and unsupervised learning, and access insightful research papers to complete your knowledge.

about the technology
Unsupervised learning and machine learning algorithms draw inferences from unannotated data sets. The self-organizing approach to machine learning is great for spotting patterns a human might miss.

about the book
Unsupervised Learning with Generative AI teaches you to apply a full spectrum of machine learning algorithms to raw data. You’ll master everything from kmeans and hierarchical clustering, to advanced neural networks like GANs and Restricted Boltzmann Machines. You’ll learn the business use case for different models, and master best practices for structured, text, and image data. Each new algorithm is introduced with a case study for retail, aviation, banking, and moreβ€”and you’ll develop a Python solution to fix each of these real-world problems. At the end of each chapter, you’ll find quizzes, practice datasets, and links to research papers to help you lock in what you’ve learned and expand your knowledge.

about the reader
For developers and data scientists. Basic Python experience required.

about the author
Vaibhav Verdhan is a seasoned data science professional with rich experience across geographies and domains. He has led multiple engagements in machine learning and artificial intelligence. A leading industry expert, Vaibhav is a regular speaker at conferences and meet-ups and mentors students and professionals. Currently he resides in Ireland where he works as a principal data scientist.

✦ Table of Contents


welcome
1_Introduction_to_machine_learning
2_Clustering_techniques
3_Dimensionality_reduction
4_Association_rules
5_Clustering_(Advanced)
6_Dimensionality_Reduction_(Advanced)
7_Unsupervised_Learning_for_Text_data
8_Deep_Learning:the_foundational_concepts
9_Autoencoders
10_GAN,_Generative_AI
&_ChatGPT


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