I have a file whose contents are of the form:
.2323 1 .2327 1 .3432 1 .4543 1
and so on some 10,000 lines in each file. I have a variable whose value is say a=.3344
From the file I want to get the row number of the row whose first column is closest to this variable...for example it should give row_num='3' as .3432 is closest to it.
I have tried in a method of loading the first columns element in a list and then comparing the variable to each element and getting the index number
If I do in this method it is very much time consuming and slow my model...I want a very quick method as this need to to called some 1000 times minimum...
I want a method with least overhead and very quick can anyone please tell me how can it be done very fast. As the file size is maximum of 100kb can this be done directly without loading into any list of anything...if yes how can it be done.
Any method quicker than the method mentioned above are welcome but I am desperate to improve the speed -- please help.
def get_list(file, cmp, fout): ind, _ = min(enumerate(file), key=lambda x: abs(x - cmp)) return fout[ind].rstrip('\n').split(' ') #root = r'c:\begpython\wavnk' header = 6 for lst in lists: save = database_index[lst] #print save index, base,abs2, _ , abs1 = save using_data[index] = save base = 'C:/begpython/wavnk/'+ base.replace('phone', 'text') fin, fout = base + '.pm', base + '.mcep' file = open(fin) fout = open(fout).readlines() [next(file) for _ in range(header)] file = [float(line.partition(' ')) for line in file] join_cost_index_end[index] = get_list(file, float(abs1), fout) join_cost_index_strt[index] = get_list(file, float(abs2), fout)
this is the code i was using..copying file into a list.and all please give better alternarives to this