TensorFlow and deep learning, without a PhD
1. Overview
In this codelab, you will learn how to build and train a neural network that recognises handwritten digits. Along the way, as you enhance your neural network to achieve 99% accuracy, you will also discover the tools of the trade that deep learning professionals use to train their models efficiently.
This codelab uses the MNIST dataset, a collection of 60,000 labeled digits that has kept generations of PhDs busy for almost two decades. You will solve the problem with less than 100 lines of Python / TensorFlow code.
What you'll learn
- What is a neural network and how to train it
- How to build a basic 1-layer neural network using TensorFlow
- How to add more layers
- Training tips and tricks: overfitting, dropout, learning rate decay...
- How to troubleshoot deep neural networks
- How to build convolutional networks
What you'll need
- Python 2 or 3 (Python 3 recommended)
- TensorFlow
- Matplotlib (Python visualisation library)
No hay comentarios:
Publicar un comentario