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HeroKillerEver / Coursera Deep Learning

Solutions to all quiz and all the programming assignments!!!

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A series of online courses offered by deeplearning.ai. I would like to say thanks to Prof. Andrew Ng and his colleagues for spreading knowledge to normal people and great courses sincerely.

Reminder


The reason I would like to create this repository is purely for academic use (in case for my future use). I am really glad if you can use it as a reference and happy to discuss with you about issues related with the course even for further deep learning techniques.

Please only use it as a reference. The quiz and assignments are relatively easy to answer, hope you can have fun with the courses.

1. Neural Network and Deep Learning

2. Improving Deep Neural Networks-Hyperparameter tuning, Regularization and Optimization

3. Structuring Machine Learning Projects

4. Convolutional Neural Network

5. Sequence Models


Author

Haibin Yu/ @HeroKillerEver

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