I am reading data from an ascii file into an array and writing the data into an excel file for futher post processing . There are total of 337 columns and 1100 rows -- that makes 370700 cells in xlsx.

Writing the excel data file is taking very long time -- approximately 25-35 minutes on 16 GB machine.

Is there any other method to write data in excel file more efficiently ?

Any help would be appriciated.

```
import numpy as np
import win32com.client as win32
import matplotlib.pyplot as plt
from win32com import client from time
clock, time start_time = clock()
itr = int(raw_input('Enter number of iteration = '))
f1 =open("Case_AT-6_WF_fl2.gid","r")
s2 = f1.read()
a = s2.split()
count=0 for col in open("Case_AT-6_WF_fl2.gid",'r'):
count = count+1 column = int(len(col.split()))
sm = int(itr * column)
digit = map(float,(a[(len(a)-sm):l
a[(column+7):(column*2+7)]
# preparing 2D matrix dig = np.array(digit) dig1 =(dig.reshape
### *******Plotting
## print name
for i in range(len(name)):
print i,"=",name[i]
plot = int(raw_input("\nEnter variable number for plot =" ))
# writing Excel file*******************************************
print('file printing option: 1 = Yes 2= No') q = int(raw_input(
printing option = "))
if q==1 :
excel = win32.gencache.EnsureDispatch('Excel.Application')
excel.Visible = False
wb = excel.Workbooks.Add()
ws=wb.Sheets(1)
ws.Name = "MyData"
ws.Activate
for kk in range(len(name)):
ws.Cells(2,kk+1).Value = name[kk]
ws.Cells(3,kk+1).Value = unit[kk]
m = 0
k =0
for j in range(itr):
for k in range(column):
ws.Cells(j+5,k+1).Value=dig1[j][k]
m = m+1
print '',m
print clock() - start_time, "seconds"
wb.SaveAs('C:\\Documents andSettings\\sd47086\\Desktop\\test\\MyWorkbook3.xlsx')
excel.Application.Quit()
```