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Applied Machine Learning for Data Science Practitioners

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Free Download Applied Machine Learning for Data Science Practitioners
by Vidya Subramanian

English | 2025 | ISBN: 1394155379 | 320 pages | True EPUB | 121.82 MB​

A single-volume reference on data science techniques for evaluating and solving business problems using Applied Machine Learning (ML).
Applied Machine Learning for Data Science Practitionersoffers a practical, step-by-step guide to building end-to-end ML solutions for real-world business challenges, empowering data science practitioners to make informed decisions and select the right techniques for any use case.
Unlike many data science books that focus on popular algorithms and coding, this book takes a holistic approach. It equips you with the knowledge to evaluate a range of techniques and algorithms. The book balances theoretical concepts with practical examples to illustrate key concepts, derive insights, and demonstrate applications. In addition to code snippets and reviewing output, the book provides guidance on interpreting results.
This book is an essential resource if you are looking to elevate your understanding of ML and your technical capabilities, combining theoretical and practical coding examples. A basic understanding of using data to solve business problems, high school-level math and statistics, and basic Python coding skills are assumed.
Written by a recognized data science expert,Applied Machine Learning for Data Science Practitionerscovers essential topics, including:
Data Science Fundamentalsthat provide you with an overview of core concepts, laying the foundation for understanding ML.Data Preparationcovers the process of framing ML problems and preparing data and features for modeling.ML Problem Solvingintroduces you to a range of ML algorithms, including Regression, Classification, Ranking, Clustering, Patterns, Time Series, and Anomaly Detection.Model Optimizationexplores frameworks, decision trees, and ensemble methods to enhance performance and guide the selection of the most effective model.ML Ethicsaddresses ethical considerations, including fairness, accountability, transparency, and ethics.Model Deployment and Monitoringfocuses on production deployment, performance monitoring, and adapting to model drift.



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