I am interested in using openpyxl to gather key metrics about a large data set I have. Two things I am interested in are cardinality, and field importance (i.e. how many "null" or "junk" values do we have for this field). I am running into performance problems and was wondering if there was any way my code could be optimized. My largest excel file has ~20,000 rows. I am aware of optimized reader for openpyxl, but I need to look at every cell and get its value.
My script is reading data from a large xlsx file and writing to a google doc that houses information about each field.
def run(table, limit_percent_null): excel_workbook = load_workbook(filename = settings.mypath + table + '.xlsx', read_only=True) excel_sheet = excel_workbook.worksheets d = dict() # first loop through our fields for i in range(1, excel_sheet.get_highest_column()): key = excel_sheet.cell(row = 1, column = i).value if key is None: break; # key is the field and value is list of booleans # true = null or empty, false = has an actual value d[key] =  # low loop through actual values of those fields for j in range(2, excel_sheet.get_highest_row()): field = excel_sheet.cell(row = j, column = i).value # does the field have "null" in it or is empty? if field is None: d[key].append(True) else: d[key].append(True if "null" in str(field) else False) # write to google doc google_sheet = settings.open_gspread_connetion(table) for key, value in d.items(): # omitted