I have a large data set of nucleotide sequences (long strings simply put) which converts into a 104*13440 matrix full of characters. My project forces me to do degenerate string matching while exploring all possible states/oppertunities (i-e no fancy heuristics and/or screening). Since the data set is so large, manually checking all the word tuples character by character is very frustrating and computationally complex.
Will converting characters to respective binary, and implementing minor neural networks using bitwise comparisons save processing time and memory consumption, as compared to simple character comparison?
I am using python 3.
Forgot to mention, word tuples are overlapping, with size ranging from 15-25 characters/tuple, so you can see the dilemma