Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a large dataset (see example format below) and I need to do the follow thinks:

  1. identify the repeated values that appear on columns 1,2,5 - if the all repeated then I need to remove redundant rows and average the value in column 8 (this is successful with the code I will post -
  2. after step one, I want to round the values on columns 1,2 to whole number (no decimals)
  3. I want to reintroduce columns 3, 4, 6 and 7 -
    columns 3, 6, and 7 need to have a specific value I will dictate (e.g. 3 should be all 0, 6 all 1, and column 7 all 1) (similar to input file) column 4 needs to increase by one, based on number of different values on column 4) (similar to input file

here is a sample input file: data (name of the file)

564991.15   7371277.89  0   1   1530    1   1   16.0225
564991.15   7371277.89  0   1   8250    1   1   14.4405
564991.15   7371277.89  0   2   1530    1   1   14.8637
564991.15   7371277.89  0   2   8250    1   1   14.8918
564991.17   7371277.89  0   3   1530    1   1   16.0002
564991.17   7371277.89  0   3   8250    1   1   15.4333
564991.04   7371276.76  0   4   1530    1   1   14.73
564991.04   7371276.76  0   4   8250    1   1   15.6138
564991.04   7371276.76  0   5   1530    1   1   16.2453
564991.04   7371276.76  0   5   8250    1   1   15.6138

and here is the code I have up to know (currently I supplement in calc)

import os
import numpy as np
import pandas as pd
datadirectory = '/media/data'
os.chdir = 'datadirectory'
df = pd.read_csv('/media/data/data.dat')
sorted_data = df.groupby(["X.1","X.2","X.5"])["X.8"].mean().reset_index()
tuple_data = [tuple(x) for x in sorted_data.values]
datas = np.asarray(tuple_data)
np.savetxt('sorted_data_rounded.dat', datas, fmt='%s', delimiter='\t')

but his gives me only the 4 columns, and no rounded data....

share|improve this question

3 Answers 3

It could be slightly faster to add a half and cast astype int:

df = pd.read_csv('data.dat', header=None, sep='\s+')

In [2]: df
Out[2]: 
           0           1  2  3     4  5  6        7
0  564991.15  7371277.89  0  1  1530  1  1  16.0225
1  564991.15  7371277.89  0  1  8250  1  1  14.4405
2  564991.15  7371277.89  0  2  1530  1  1  14.8637
3  564991.15  7371277.89  0  2  8250  1  1  14.8918
4  564991.17  7371277.89  0  3  1530  1  1  16.0002
5  564991.17  7371277.89  0  3  8250  1  1  15.4333
6  564991.04  7371276.76  0  4  1530  1  1  14.7300
7  564991.04  7371276.76  0  4  8250  1  1  15.6138
8  564991.04  7371276.76  0  5  1530  1  1  16.2453
9  564991.04  7371276.76  0  5  8250  1  1  15.6138

df1 = df.groupby([0, 1, 4])[7].mean().reset_index()
df1['ints'] = (df1[7] + 0.5).astype(int)

In [5]: df1
Out[5]: 
           0           1     4         7  ints
0  564991.04  7371276.76  1530  15.48765    15
1  564991.04  7371276.76  8250  15.61380    16
2  564991.15  7371277.89  1530  15.44310    15
3  564991.15  7371277.89  8250  14.66615    15
4  564991.17  7371277.89  1530  16.00020    16
5  564991.17  7371277.89  8250  15.43330    15

Note: you can save a DataFrame using the DataFrame method to_csv.

share|improve this answer
    
thanks - this was a big help, I updated the code, and I am almost there - I just need to get the desired order (I can always do it with re-arranging the numpy array but I guess using pandas is more efficient) –  Dimitris Jan 11 '13 at 15:03
    
and I think I might moved ahead abit - I will post the code when I am back in the office...... got to move now –  Dimitris Jan 11 '13 at 15:09

Use the round function()

x = round(number to round , number of decimal places to round the number to )
share|improve this answer
1  
I tried this, but didn't work for the array (datas in my above example) –  Dimitris Jan 11 '13 at 15:01

This piece of code does exactly what I want:

import os
import numpy as np
import pandas as pd 

datadirectory = '/media/DATA'
os.chdir( datadirectory)

df = pd.read_csv('/media/DATA/data.dat', sep="\\s+", header=None)
df1 = df.groupby(["X.1","X.2","X.5"])["X.8"].mean().reset_index() 
df1['X.3'] = df["X.3"]
df1['X.4']=df["X.4"]
df1['X.6']=df["X.6"]
df1['X.7']=df["X.7"]
sorted_data = df1.reindex_axis(sorted(df1.columns), axis=1)
tuple_data = [tuple(x) for x in sorted_data.values]
datas = np.asarray(tuple_data)

dfround = df
dfround['X.1'] = df["X.1"].astype(int)
dfround['X.2'] = df["X.2"].astype(int)
df2 = dfround.groupby(["X.1","X.2","X.5"])["X.8"].mean().reset_index()
df2['X.3'] = df["X.3"] #add extra columns
df2['X.4']=df["X.4"]
df2['X.6']=df["X.6"]
df2['X.7']=df["X.7"]
sorted_data2 = df2.sort_index(axis=1) #rearragne data - method 2
tuple_data2 = [tuple(x) for x in sorted_data2.values]
datas2 = np.asarray(tuple_data2)

np.savetxt('sorted_data.dat', datas, fmt='%s', delimiter='\t') #Save the data
np.savetxt('sorted_rounded_data.dat', datas2, fmt='%s', delimiter='\t') #Save   the data
print ('DONE')
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.