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基于神经网络深度学习的项目实例源码(MNIST数字识别、单隐藏层网络、图像多分类、猫识别等,包括数据集和代码).zip (24个子文件)
code_20105
猫识别
main.py 9KB
datasets
train_catvnoncat.h5 2.45MB
test_catvnoncat.h5 602KB
lr_utils.py 865B
work
example_0.png 50KB
example_5.png 8KB
example_4.png 166KB
example_1.png 63KB
example_6.png 125KB
example_3.png 65KB
example_2.png 16KB
单隐藏层网络
testCases.py 4KB
planar_utils.py 2KB
Holden.py 7KB
图像多分类
Iitems.py 3KB
鲇鱼年龄预测
main.py 5KB
work
AbaloneAgePrediction.txt 187KB
MNIST数字识别
mnist.pdparams 245KB
work
mnist.json.gz 18.41MB
example_0.png 3KB
Number.py 7KB
心脏病预测
Heared.py 4KB
LR_model.pdparams 2KB
datasets
dataset.csv 11KB
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