Author: | Hamidreza Sattari | ISBN: | 9781788297523 |
Publisher: | Packt Publishing | Publication: | January 11, 2021 |
Imprint: | Packt Publishing | Language: | English |
Author: | Hamidreza Sattari |
ISBN: | 9781788297523 |
Publisher: | Packt Publishing |
Publication: | January 11, 2021 |
Imprint: | Packt Publishing |
Language: | English |
To write the machine learning and deep learning applications that create your business edge
Everyone competent enough in Python, who has read an introductory book in machine learning can understand and profit from Applied Machine Learning in Python. The book expects the reader to engage with machine learning projects, and be prepared for the vicissitudes of data integration and data preprocessing. Knowledge of Python and basic machine learning algorithms is required.
When a developer applies machine learning in the real world, he needs how machine learning projects are conducted from soup to nuts, from the moment data have to be prepared for machine learning projects, up to the possibilities presented by deep learning libraries. Selections of machine learning algorithms are usually presented in beginners books, but then the context in which they are being used tends to be missing. This book is meant as a follow-up to introductory books on machine learning, and it will fill gaps like the preparation of machine learning data for ML projects, the variety and strengths of machine learning libraries, and how projects using neural networks and deep learning algorithms are actually executed. In other words, this book embeds what has been learned in theory and in small projects, in the real-world.
To write the machine learning and deep learning applications that create your business edge
Everyone competent enough in Python, who has read an introductory book in machine learning can understand and profit from Applied Machine Learning in Python. The book expects the reader to engage with machine learning projects, and be prepared for the vicissitudes of data integration and data preprocessing. Knowledge of Python and basic machine learning algorithms is required.
When a developer applies machine learning in the real world, he needs how machine learning projects are conducted from soup to nuts, from the moment data have to be prepared for machine learning projects, up to the possibilities presented by deep learning libraries. Selections of machine learning algorithms are usually presented in beginners books, but then the context in which they are being used tends to be missing. This book is meant as a follow-up to introductory books on machine learning, and it will fill gaps like the preparation of machine learning data for ML projects, the variety and strengths of machine learning libraries, and how projects using neural networks and deep learning algorithms are actually executed. In other words, this book embeds what has been learned in theory and in small projects, in the real-world.