Paramètres
- 408pages
- 15 heures de lecture
En savoir plus sur le livre
Dig deep into data with this hands-on guide to machine learning, offering practical instruction and fully-coded examples of common techniques for developers and technical professionals. Each machine learning variant is broken down, explaining its functionality and industry applications, enabling readers to seamlessly incorporate these techniques into their work. Emphasizing data preparation, the book explores various learning algorithms, demonstrating how the right tools can help developers extract valuable insights from existing data. It also includes comprehensive Instructor's Materials for classroom use, making it a valuable resource for students and professionals alike. At its core, machine learning is a mathematical, algorithm-based technology essential for data mining and big data science. Understanding machine learning is crucial for making predictions based on training data. This accessible guide demystifies the subject for non-mathematicians, covering languages like Hadoop, Mahout, and Weka, as well as decision trees, Bayesian networks, and artificial neural networks. Readers will learn to implement Association Rule, Real Time, and Batch learning, and develop strategic plans for effective machine learning. By mastering these skills, readers can enhance their capabilities across industries, tapping into the potential of data analysis and visualization that is increasingly sought after in today’s data-driven landscape.
Achat du livre
Machine Learning, Gregory Jason Bell
- Langue
- Année de publication
- 2014
- product-detail.submit-box.info.binding
- (souple)
Modes de paiement
Personne n'a encore évalué .
- Titre
- Machine Learning
- Sous-titre
- Hands-On for Developers and Technical Professionals
- Langue
- Anglais
- Auteurs
- Gregory Jason Bell
- Éditeur
- John Wiley & Sons Inc
- Publié
- 2014
- Format
- souple
- Pages
- 408
- ISBN10
- 1118889061
- ISBN13
- 9781118889060
- Séries
- Mots clés
- Nonfiction, Technologie & Ingénierie, Science et Mathématiques, Manuels et guides, Informatique & Internet, États-Unis, Mathématiques, Intelligence Artificielle, Statistiques, Apprentissage automatique
- Description
- Dig deep into data with this hands-on guide to machine learning, offering practical instruction and fully-coded examples of common techniques for developers and technical professionals. Each machine learning variant is broken down, explaining its functionality and industry applications, enabling readers to seamlessly incorporate these techniques into their work. Emphasizing data preparation, the book explores various learning algorithms, demonstrating how the right tools can help developers extract valuable insights from existing data. It also includes comprehensive Instructor's Materials for classroom use, making it a valuable resource for students and professionals alike. At its core, machine learning is a mathematical, algorithm-based technology essential for data mining and big data science. Understanding machine learning is crucial for making predictions based on training data. This accessible guide demystifies the subject for non-mathematicians, covering languages like Hadoop, Mahout, and Weka, as well as decision trees, Bayesian networks, and artificial neural networks. Readers will learn to implement Association Rule, Real Time, and Batch learning, and develop strategic plans for effective machine learning. By mastering these skills, readers can enhance their capabilities across industries, tapping into the potential of data analysis and visualization that is increasingly sought after in today’s data-driven landscape.
