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TensorFlow for Beginner

Classifying handwritten digit with MNIST dataset

This purpose of this project is to understand the foundation of forward and backward propagation in neural network.

Note: The accuracy is not the main purpose, therefore the accuracy in all files is only slightly above 90%.



There are two versions (each with 3 files) in this repository:

1. With TensorFlow implementation:
This is similar to the tutorial provided at the official website of TensorFlow.
2. Without Tensorflow implementation:
The exact equivalent but using only numpy to implement everything (inc. chain-rule derivative in backward propagation).
The architecture of neural network in each file:
A: input → linear layer → softmax → class probabilities
B: input → hidden layer (128 units) + Relu → linear layer → softmax → class probabilities
C: input → 2 * hidden layer (256 units) + Relu → linear layer → softmax → class probabilities



The required library:

  • TensorFlow
  • numpy
  • pandas
  • matplotlib