Python 是机器学习的核心技能,本课程将为您提供有效应用 Python 的工具。您将学习关键的 ML 概念,使用 Scikit-learn 建立模型,并获得使用 Jupyter Notebook 的实践经验。

您将学到什么
解释机器学习中涉及的关键概念、工具和角色,包括监督和非监督学习技术。
使用 Python 和 Scikit-learn 应用核心机器学习算法,如 Regression、分类、Cluster 和降维。
使用适当的指标、验证策略和优化技术评估模型性能。
通过动手实验室、项目和实际评估,在真实数据集上构建和评估端到端 Machine Learning 解决方案。
您将获得的技能
要了解的详细信息

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17 项作业
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该课程共有6个模块
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学生评论
- 5 stars
75.94%
- 4 stars
18.60%
- 3 stars
3.43%
- 2 stars
0.99%
- 1 star
1.01%
显示 3/18342 个
已于 Dec 31, 2019审阅
could be split in two courses to be given enough focus. it was very condensed and needed more time and explanation in each section. The instructor was very good but more details would have been nice
已于 May 25, 2020审阅
Labs were incredibly useful as a practical learning tool which therefore helped in the final assignment! I wouldn't have done well in the final assignment without it together with the lecture videos!
已于 Aug 28, 2019审阅
Very informative course, showing mostly how to use many different Machine Learning techniques. Although mathematical details are not discussed much, the intuition of the methods are discussed.
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O.P. Jindal Global University

Arizona State University




