Deep Learning- Handwritten Digits Recognition Tutorial | Tensorflow | CNN | for beginners
This video contains a stepwise implementation of handwritten digits classification for extreme beginners
1) Brainstorming, how to build your own deep learning model
Role of each layer (CNN, Pooling, Dense)
MNIST - dataset
2) Installation of libraries and IDEs
3) stepwise implementation for python code
i) Single Image - digits recognition
ii) Video Demo
Видео Deep Learning- Handwritten Digits Recognition Tutorial | Tensorflow | CNN | for beginners канала DeepLearning_by_PhDScholar
1) Brainstorming, how to build your own deep learning model
Role of each layer (CNN, Pooling, Dense)
MNIST - dataset
2) Installation of libraries and IDEs
3) stepwise implementation for python code
i) Single Image - digits recognition
ii) Video Demo
Видео Deep Learning- Handwritten Digits Recognition Tutorial | Tensorflow | CNN | for beginners канала DeepLearning_by_PhDScholar
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24 октября 2020 г. 15:42:40
00:52:17
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