- Python Machine Learning Blueprints
- Alexander Combs Michael Roman
- 145字
- 2021-07-02 13:49:34
Data science/machine learning workflow
Building machine learning applications, while similar in many respects to the standard engineering paradigm, differs in one crucial aspect: the need to work with data as a raw material. The success of your project will, in large part, depend on the quality of the data you acquire, as well as your handling of that data. And because working with data falls into the domain of data science, it is helpful to understand the data science workflow:

The process involves these six steps in the following order:
- Acquisition
- Inspection
- Preparation
- Modeling
- Evaluation
- Deployment
Frequently, there is a need to circle back to prior steps, such as when inspecting and preparing the data, or when evaluating and modeling, but the process at a high level can be as described in the preceding list.
Let's now discuss each step in detail.
- Windows phone 7.5 application development with F#
- Python GUI Programming:A Complete Reference Guide
- Android NDK Game Development Cookbook
- 從零開始學(xué)51單片機(jī)C語言
- Camtasia Studio 8:Advanced Editing and Publishing Techniques
- Learning Stencyl 3.x Game Development Beginner's Guide
- Visual Media Processing Using Matlab Beginner's Guide
- Creating Flat Design Websites
- Internet of Things Projects with ESP32
- 單片機(jī)開發(fā)與典型工程項(xiàng)目實(shí)例詳解
- 無蘋果不生活:OS X Mountain Lion 隨身寶典
- 基于PROTEUS的電路設(shè)計(jì)、仿真與制板
- Python Machine Learning Blueprints
- Spring Cloud實(shí)戰(zhàn)
- 筆記本電腦芯片級(jí)維修從入門到精通(圖解版)