1

I am currently implementing Huffman coding in python and I've finished it but I want to make it more efficient.

This is the method I use to get the content of the original file

def getDecodedFile(self, text, codes):
        code = ""
        origin = []        
        for ch in text:
            code += ch
            if code in codes:
                origin.append(codes[code])
                code = ""
        bCodes = bytes(origin)
        return bCodes

text Is the large string and codes is a dictionary of Huffman codes (Key is a string of the code and value is an int between 0 and 255)

I've trying using ''.join(somelist) instead of code += ch but the result was way slower. Currently this method takes 3 seconds to execute with len(text) = 13972363 and the shortest code length is 6

Example of data:

text = "0100101110111"

codes = {'0': 65, '100': 66, '101': 67, '110': 68, '111': 69}

That would result in origin = [65,66,67,68,69]

I would appreciate any suggestion to make my code efficient.

2

From what I can tell, one improvement you can do is when you do this:

code += ch
if code in codes:
    origin.append(codes[code])
code = ""

Specifically, you check if code in codes: each time you modify code. For example, for a code of length k, you will end up performing a O(1 + 2 + 3 + ... + k) = O(0.5 * k * k+1) = O(k²) operation here. Instead, you should preprocess codes by building a Huffman Tree and doing a single O(k) traversal down the tree to decode your code (start at the root, and read a single 1 or 0 at a time and go down the respective child edge; once you hit a letter, output it in the decoded message and move back to the root of your tree). Not only does this explicitly save on the time complexity of the check if code in codes:, but it also avoids rebuilding a string code each time you do code += ch.

Aside from this, I'm not sure if you can optimize further. I wonder if it would be faster to convert each individual decoded letter to a byte and append to the output list, as opposed to decoding the letters to a list and then converting the list via bytes(origin)?

  • what I did is I used the tree to decode the codes instead of using a dictionary and that saved about 0.5 seconds, but converting each letter to byte actually slowed it down so I kept my list. Thanks! – John Maged Dec 18 '17 at 5:43
  • No problem! Unfortunately, as far as I can tell, that's the fastest way you can implement Huffman decoding in terms of algorithm implementation. Any further optimizations are low-level things (e.g. storing the tree as an array to minimize memory-access slowdown, writing in a faster language, etc.) – Niema Moshiri Dec 18 '17 at 21:50
  • Time went down to 0.6 seconds for the same file using pypy3 instead of the default interpreter. – John Maged Dec 19 '17 at 20:23
2

The biggest performance boost will come from using something like a trie to store your Huffman tree. this will let you descend one level at a time, which will remove the need for string concatenation or repeated checking for presence.

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