For example, for a 55MB file with 70 columns and 1,00,000 rows, it takes more than 15 minutes.
xlrd is fast but does not yet support .xlsx files. So is there any alternative to it?
Is there any other method or alternative to read .xlsx files efficiently in terms of speed?
Any help or suggestion would be greatly appreciated.
The code is the same as the optimized reader link:
from openpyxl import load_workbook wb = load_workbook(filename = 'large_file.xlsx', use_iterators = True) ws = wb.get_sheet_by_name(name = 'big_data') # ws is now an IterableWorksheet for row in ws.iter_rows(): # it brings a new method: iter_rows() for cell in row: print cell.internal_value