-
Effective Amazon Machine Learning下载
资源介绍
Effective Amazon Machine Learning by Alexis Perrier
English | 25 Apr. 2017 | ASIN: B01NCJ4NXP | 306 Pages | AZW3 | 6.06 MB
Key Features
Create great machine learning models that combine the power of algorithms with interactive tools without worrying about the underlying complexity
Learn the What's next? of machine learning—machine learning on the cloud—with this unique guide
Create web services that allow you to perform affordable and fast machine learning on the cloud
Book Description
Predictive analytics is a complex domain requiring coding skills, an understanding of the mathematical concepts underpinning machine learning algorithms, and the ability to create compelling data visualizations. Following AWS simplifying Machine learning, this book will help you bring predictive analytics projects to fruition in three easy steps: data preparation, model tuning, and model selection.
This book will introduce you to the Amazon Machine Learning platform and will implement core data science concepts such as classification, regression, regularization, overfitting, model selection, and evaluation. Furthermore, you will learn to leverage the Amazon Web Service (AWS) ecosystem for extended access to data sources, implement realtime predictions, and run Amazon Machine Learning projects via the command line and the Python SDK.
Towards the end of the book, you will also learn how to apply these services to other problems, such as text mining, and to more complex datasets.
What you will learn
Learn how to use the Amazon Machine Learning service from scratch for predictive analytics
Gain hands-on experience of key Data Science concepts
Solve classic regression and classification problems
Run projects programmatically via the command line and the Python SDK
Leverage the Amazon Web Service ecosystem to access extended data sources
Implement streaming and advanced projects
About the Author
Alexis Perrier is a data scientist at Docent Health, a Boston-based startup. He works with Machine Learning and Natural Language Processing to improve patient experience in healthcare. Fascinated by the power of stochastic algorithms, he is actively involved in the data science community as an instructor, blogger, and presenter. He holds a Ph.D. in Signal Processing from Telecom ParisTech and resides in Boston, MA.
You can get in touch with him on twitter @alexip and by email at alexis.perrier@gmail.com.
Table of Contents
Introduction to Machine Learning and Predictive Analytics
Machine Learning Definitions and Concepts
Overview of an Amazon Machine Learning Workflow
Loading and Preparing the Dataset
Model Creation
Predictions and Performances
Command Line and SDK
Creating Datasources from Redshift
Building a Streaming Data Analysis Pipeline