Switch to English Site

描述

There are plenty of good books on machine learning, both theoretical and hands-on. From a
typical machine learning book, you can learn the types of machine learning, major families of
algorithms, how they work, and how to build models from data using those algorithms.

A typical machine learning book is less concerned with the engineering aspects of implementing
machine learning projects. Such questions as data collection, storage, preprocessing, feature
engineering, as well as testing and debugging of models, their deployment to and retirement
from production, runtime and post-production maintenance, are often left outside the scope
of machine learning books.

This book intends to fill that gap.阅读更多.

按照数据工作岗位排列职业相关性

Machine Learning Engineering 中涵盖的技术和工具与 数据科学家 招聘广告中的要求最为相似。

相似度得分(满分 100)