2020-04-21 11:19:42 -04:00
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---
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id: 5e8f2f13c4cdbe86b5c72d96
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2020-04-24 05:52:42 -05:00
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title: Convolutional Neural Networks
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2020-04-21 11:19:42 -04:00
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challengeType: 11
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videoId: _1kTP7uoU9E
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---
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## Description
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2020-08-04 20:56:41 +01:00
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2020-04-21 11:19:42 -04:00
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<section id='description'>
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</section>
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## Tests
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2020-08-04 20:56:41 +01:00
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2020-04-21 11:19:42 -04:00
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<section id='tests'>
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```yml
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question:
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2020-05-28 22:40:36 +09:00
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text: |
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Dense neural networks analyze input on a global scale and recognize patterns in specific areas. Convolutional neural networks...:
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2020-04-21 11:19:42 -04:00
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answers:
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2020-08-04 20:56:41 +01:00
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- |
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also analyze input globally and extract features from specific areas.
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do not work well for image classification or object detection.
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scan through the entire input a little at a time and learn local patterns.
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2020-04-21 11:19:42 -04:00
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solution: 3
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```
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</section>
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