- Mastering Machine Learning on AWS
- Dr. Saket S.R. Mengle Maximo Gurmendez
- 113字
- 2021-06-24 14:23:11
The ML project life cycle
A typical ML project life cycle starts by understanding the problem at hand. Typically, someone in the organization (possibly a data scientist or business stakeholder) feels that some part of their business can be improved by the use of ML. For example, a music streaming company could conjecture that providing recommendations of songs similar to those played by a user would improve user engagement with the platform. Once we understand the business context and possible business actions to take, the data science team will need to consider several aspects during the project life cycle.
The following diagram describes various steps in the ML project life cycle:

推薦閱讀
- 零點起飛學Xilinx FPG
- Istio入門與實戰
- Learning AngularJS Animations
- Mastering Delphi Programming:A Complete Reference Guide
- 電腦軟硬件維修從入門到精通
- Hands-On Machine Learning with C#
- 深入理解序列化與反序列化
- Blender Quick Start Guide
- Hands-On Artificial Intelligence for Banking
- WebGL Hotshot
- Python Machine Learning Blueprints
- 筆記本電腦芯片級維修從入門到精通(圖解版)
- Angular 6 by Example
- 現代多媒體技術及應用
- MicroPython Cookbook