Автор: Hayden Van Der Post, Mike Smith
Издательство: Reactive Publishing
Год: December 28, 2023
Страниц: 371
Язык: английский
Формат: pdf, epub, mobi
Размер: 10.1 MB
Dive into the world of Artificial Intelligence with "Unsupervised Machine Learning with Python," the essential guide forprofessionals eager to master the most sophisticated analysis skills and unlock new dimensions of data interpretation. Building on the knowledge foundation of those who have already ventured into the realm of supervised Machine Learning, this book takes you one step further into the nuanced techniques that are shaping the future of AI.
As a follow-up to our top-selling predecessor, this in-depth resource is perfectly tailored for analysts, data scientists, and curious minds looking to leverage Python for advanced Machine Learning tasks. With a clear, practical approach, it demystifies the complex algorithms and models that underpin unsupervised learning frameworks.
Unsupervised learning, a pivotal branch of machine intelligence, thrives on the premise that even in the absence of explicit instructions, profound insights can be extracted from raw data. At the heart of unsupervised learning lies the ability of algorithms to identify patterns and structures within datasets without prior labeling or classification, a task emblematic of human cognitive adaptability.
Python, the lingua franca of machine learning, offers a versatile toolkit for implementing unsupervised learning models. It is within this programming environment that we uncover the layers of complexity and simplicity that define unsupervised learning algorithms. These models, equipped with the capacity to improve autonomously, pave the way for a myriad of applications, from customer segmentation to the realms of anomaly detection.
Discover how to:
- Hone your Python skills to manipulate and process large datasets with ease.
- Unearth hidden patterns and relationships within data through clustering, dimensionality reduction, and association analysis.
- Implement algorithms like k-means, hierarchical clustering, PCA, and Apriori from scratch, while understanding the theory that powers them.
- Enhance your professional toolkit with hands-on lessons in anomaly detection and neural networks.
- Evaluate and fine-tune your models to improve performance and gain actionable insights.
"Unsupervised Machine Learning with Python" is more than just a guide; it's a rich resource complete with real-world examples, code snippets, and challenges to solidify your understanding. Whether you're aspiring to push the boundaries of data analytics or seeking to drive business intelligence to new heights, this book is your compass to innovation and success in the dynamic landscape of Unsupervised Machine Learning.
Скачать Unsupervised Machine Learning: with Python