Transformer Huffman coding - Complete Huffman coding through transformer

Overview

Transformer_Huffman_coding

Complete Huffman coding through transformer

2022/2/19 Release Notes 1: generate a new branch

2: Divide the previous main.py file into three: main.py ----->Responsible for sequence training
model.py ----->The construction of transformers model
utils.py ----->Create a training data generation function

3: Deleted the function in the original file that will automatically generate the corresponding Huffman encoding according to the sequence

4: import Huffman package is used to generate a constant codebook

5: Beautify my code with prettier


Issues awaiting resolution : 1:Add code to generate attention map

2:The print that checks the intermediate result is removed from the code

3:Chinese comments in translation code

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