By the end of this course, learners will be able to design, build, train, and evaluate Convolutional Neural Networks (CNNs) using Python, gaining hands-on experience in one of the most in-demand deep learning skills. You will learn to set up both local and cloud-based environments, preprocess and augment image datasets, implement CNN architectures, and assess model accuracy and performance.
通过 Coursera Plus 提高技能,仅需 239 美元/年(原价 399 美元)。立即节省

您将学到什么
Explain CNN fundamentals and apply Python for model building.
Preprocess and augment image datasets for training workflows.
Design, implement, and evaluate CNNs for image classification.
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要了解的详细信息

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October 2025
7 项作业
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学生评论
- 5 stars
78.94%
- 4 stars
15.78%
- 3 stars
0%
- 2 stars
5.26%
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显示 3/19 个
已于 Jan 1, 2026审阅
The perfect balance between academic depth and practical engineering wisdom. You’ll write noticeably better CNNs after completing this course.
已于 Jan 4, 2026审阅
From theory to deployment-ready models — this course covers the full lifecycle of professional CNN development exceptionally well.
已于 Dec 28, 2025审阅
This course stands out for its clarity, practical Python exercises, and structured approach to training and evaluating CNN models efficiently for modern deep learning workflows.





