- Python Machine Learning Blueprints
- Alexander Combs Michael Roman
- 391字
- 2021-07-02 13:49:33
What this book covers
Chapter 1, The Python Machine Learning Ecosystem, discusses the features of key libraries and explains how to prepare your environment to best utilize them.
Chapter 2, Build an App to Find Underpriced Apartments, explains how to create a machine learning application that will make finding the right apartment a little bit easier.
Chapter 3, Build an App to Find Cheap Airfares, covers how to build an application that continually monitors fare pricing, checking for anomalous prices that will generate an alert we can quickly act on.
Chapter 4, Forecast the IPO Market Using Logistic Regression, takes a closer look at the IPO market. We'll see how we can use machine learning to help us decide which IPOs are worth a closer look and which ones we may want to take a pass on.
Chapter 5, Create a Custom Newsfeed, explains how to build a system that understands your taste in news, and will send you a personally tailored newsletter each day.
Chapter 6, Predict whether Your Content Will Go Viral, tries to unravel some of the mysteries. We'll examine some of the most commonly shared content and attempt to find the common elements that differentiate it from content people were less willing to share.
Chapter 7, Use Machine Learning to Forecast the Stock Market, discusses how to build and test a trading strategy. We'll spend more time, however, on how not to do it.
Chapter 8, Classifying Images with Convolutional Neural Networks, details the process of creating a computer vision application using deep learning.
Chapter 9, Building a Chatbot, explains how to construct a chatbot from scratch. Along the way, we'll learn more about the history of the field and its future prospects.
Chapter 10, Build a Recommendation Engine, explores the different varieties of recommendation systems. We'll see how they're implemented commercially and how they work. Finally, we'll implement our own to recommendation engine for finding GitHub repositories.
Chapter 11, What's Next?, summarizes what has been covered so far in this book and what the next steps are from this point on. You will learn how to apply the skills you have gained to other projects, real-life challenges in building and deploying machine learning models, and other common technologies that data scientists frequently use.
- Raspberry Pi 3 Cookbook for Python Programmers
- Python GUI Programming:A Complete Reference Guide
- 極簡Spring Cloud實戰(zhàn)
- Effective STL中文版:50條有效使用STL的經(jīng)驗(雙色)
- STM32嵌入式技術(shù)應(yīng)用開發(fā)全案例實踐
- Building 3D Models with modo 701
- Intel Edison智能硬件開發(fā)指南:基于Yocto Project
- WebGL Hotshot
- Wireframing Essentials
- 電腦組裝與維護即時通
- FreeSWITCH Cookbook
- 單片機項目設(shè)計教程
- Hands-On One-shot Learning with Python
- The Complete Guide to DAZ Studio 4
- 電腦組裝與維修實戰(zhàn)