Practical Machine Learning for Data Analysis Using Python
| By: | Abdulhamit Subasi |
| Publisher: | Elsevier S & T |
| Print ISBN: | 9780128213797 |
| eText ISBN: | 9780128213803 |
| Edition: | 0 |
| Copyright: | 2020 |
| Format: | Page Fidelity |
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Practical Machine Learning for Data Analysis Using Python is a problem solver’s guide for creating real-world intelligent systems. It provides a comprehensive approach with concepts, practices, hands-on examples, and sample code. The book teaches readers the vital skills required to understand and solve different problems with machine learning. It teaches machine learning techniques necessary to become a successful practitioner, through the presentation of real-world case studies in Python machine learning ecosystems. The book also focuses on building a foundation of machine learning knowledge to solve different real-world case studies across various fields, including biomedical signal analysis, healthcare, security, economics, and finance. Moreover, it covers a wide range of machine learning models, including regression, classification, and forecasting. The goal of the book is to help a broad range of readers, including IT professionals, analysts, developers, data scientists, engineers, and graduate students, to solve their own real-world problems.
- Offers a comprehensive overview of the application of machine learning tools in data analysis across a wide range of subject areas
- Teaches readers how to apply machine learning techniques to biomedical signals, financial data, and healthcare data
- Explores important classification and regression algorithms as well as other machine learning techniques
- Explains how to use Python to handle data extraction, manipulation, and exploration techniques, as well as how to visualize data spread across multiple dimensions and extract useful features