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I have two FITS files. Let us consider for example the first file has 100 rows and 2 columns. The second file has 1000 rows and 2 columns.

    FITS FILE 1      FITS FILE 2

    A        B        C        D
    1        2        1        2
    1        3        1        2  
    2        4        1        2

I need to take the first row of the first file, i.e 1 and 2 and check how many rows in the second file have 1 and 2. In our example, we have 3 rows in the second file that have 1 and 2. I need to do the same for the second row (first file), i.e 1 and 3 and find out how many rows in the second file have 1 and 3 and so on.

The first file does not have duplicates (all the rows have different pairs, none are identical, only file 2 has many identical pairs which I need to find).

I finally need the numbers of rows in the second file that have the similar values as that of the rows of the first FITS file.

So finally it will be:

A    B    Number
1    2      3   # 1 and 2 occurs 3 times
1    3      5   # 1 and 3 occurs 5 times

and so on.

I know I somehow need to iterate through the list and get the answer. I know zip will get me the rows of the first file, but I am not finding a way to iterate with these values.

What I have been trying to do so far is somehow achieve it using zip:

for i,j in zip(A,B):
    for m,n in zip(C,D):

By using for i,j in zip(A,B): I get i,j to be the first row of my first file and so on. So I can compare it with the second file.

share|improve this question
1  
FYI I suggested an edit to change the title of this post, since really what you're asking has nothing to do specifically with FITS. – Iguananaut Aug 22 '14 at 14:08
    
@Iguananaut that is true, but since I do have FITS files I mentioned them.. If I get specific answers by using FITS instead of ASCII, it would be helpful. I have also tried the answers mentioned, but they don't work – ThePredator Aug 22 '14 at 14:33
1  
Regardless what you need to do is get tables into some data structure, and then perform an algorithm on them--the file format the tables were stored in on disk is largely irrelevant for now. Anyways, it's a little ambiguous what you actually want to get here. What is the "expected" answer in your example? 1? 3? What if there are multiple duplicates between table 1 and table2? – Iguananaut Aug 22 '14 at 14:58
up vote 3 down vote accepted
+50

You are very nearly there. All you need is a Counter to count how many times each row appears in the second file.

from collections import Counter
# Create frequency table of (C,D) column pairs
file2freq = Counter(zip(C,D))
# Look up frequency value for each row of file 1
for a,b in zip(A,B):
    # and print out the row and frequency data.
    print a,b,file2freq[a,b]

and that's it! Just four really simple lines of code.

If you don't have collections.Counter, you may use defaultdict to simulate it:

from collections import defaultdict
file2freq = defaultdict(int)
for c,d in zip(C,D):
    file2freq[c,d] += 1
for a,b in zip(A,B):
    print a,b,file2freq[a,b]
share|improve this answer
    
I would like to know how file2freq with the [] did the trick! – ThePredator Aug 24 '14 at 8:44
  1. Load the file 1 rows in a dictionary, in which each row load as a key with 0 value.
  2. Iterate on file 2, and if the row match a key in the previous dictionary, add one to that key
  3. Display the dictionary results
share|improve this answer
    
Could you if possible explain with an example? – ThePredator Aug 21 '14 at 14:16
    
could you elaborate? – ThePredator Aug 22 '14 at 13:03

Probably this will help. See the comments to understand.

import numpy as np
from collections import Counter

A = np.array([1,1,2,4])
B = np.array([2,3,4,5])

C = np.array([1,1,1,1,2,1,1])
D = np.array([2,2,2,3,4,4,3])

dict1 = Counter(zip(C,D)) # made a dictionary of occurrences of results of zipping C an D 

#print dict1 #just uncomment this line to understand what Counter do.
print("A    B : Rowcount")
for i in zip(A,B):
    print (str(i[0]) + "    " + str(i[1]) + " : " + str(dict1[i]))

Output:

A    B : Rowcount
1    2 : 3
1    3 : 2
2    4 : 1
4    5 : 0
share|improve this answer
    
I have a FITS file, so my rows are read easily and are numpy arrays. Could you explain what dict1 does? So if I have columns A,B,C,D as numpy arrays how should I proceed? – ThePredator Aug 21 '14 at 15:21
    
They are FITS files, so each column can be read easily unlike a txt file. So my columns are numpy arrays, can also be converted to whichever format if you want. – ThePredator Aug 21 '14 at 15:40
    
Well, it is like a normal text ASCII file.. not anything complicated.. It looks the same. As I said, my columns are now numpy arrays, I can say print A and it will print all the entries in column A – ThePredator Aug 21 '14 at 15:53
    
So, you want to compare now two numpy arrays A and B with C and D respectively, i.e., row1 of A to row1 of C and row1 of B to row1 of D and then for row2 and so on. Am I right ?! – Tanmaya Meher Aug 21 '14 at 16:01
    
@ThePredator see the edited code now. Probably now fit to your need. :) – Tanmaya Meher Aug 21 '14 at 16:57

Pandas might be useful for this sort of thing. This example constructs two Pandas DataFrames from scratch, but it should be possible to wrap the FITS tables in DataFrames (I think that would be a separate question though). To use the example from your post:


>>> import pandas
>>> table1 = pandas.DataFrame({'A': [1, 1, 2], 'B': [2, 3, 4]})
>>> table2 = pandas.DataFrame({'C': [1, 1, 1], 'D': [2, 2, 2]})
>>> table1
   A  B
0  1  2
1  1  3
2  2  4
>>> table2
   C  D
0  1  2
1  1  2
2  1  2

Now there's a few ways you could go about this. The problem as stated is slightly ambiguous, actually. Do you want all the rows in table2 that have a match in table1? Or could you exclude duplicates from table2? You could do something like this:


>>> m = pandas.merge(table1, table2, left_on=('A', 'B'), right_on=('C', 'D'), how='inner')
>>> m
   A  B  C  D
0  1  2  1  2
1  1  2  1  2
2  1  2  1  2
>>> m.drop_duplicates()
   A  B  C  D
0  1  2  1  2

Basically this will give you all rows that are common between the two tables.

share|improve this answer
    
All I want to do is take the first row of table 1, find out how many rows of table 2 are similar and count them. Do the same for row 2, find out how many similar rows are there in table 2 and count them. All these counts I need to store as the 3rd column in my first table. P.S. My second table has items in order, i.e. the similar value rows are all not randomly sorted, they are in order. – ThePredator Aug 22 '14 at 16:32
    
That's all stuff that should be clarified in the original question. It might help also to explain the purpose of this less abstractly--what the data is, etc. So for each row in in table 1 you want a count of all matching rows in table 2 (of which there may be duplicates)? – Iguananaut Aug 22 '14 at 19:45
    
Yes, that is exactly what I want. For each row in table 1, a count of all matching rows in table 2. I think I have mentioned that in the question. – ThePredator Aug 22 '14 at 22:50
def read_from_file(filename):
    with open(filename, 'r') as f:
        data = f.read()
    return data


def parse_data(data):
    parsed_data = []
    for line in data.split('\n'):
        line_striped = line.strip()  # remove spaces on left and right site
        try:
            left, right = line_striped.split(' ', 1)  # split on first space
        except ValueError:
            continue
        right = right.strip()  # remove spaces on left site from right
        parsed_data.append((left, right))
    return parsed_data


f1_data = read_from_file("file1.txt")
f2_data = read_from_file("file2.txt")
f1_pdata = parse_data(f1_data)
f2_pdata = parse_data(f2_data)

# compare
for f2_item in f2_pdata:
    for f1_item in f1_pdata:
        if f2_item == f1_item:
            print f2_item, "occures in file2 and file1"
share|improve this answer
    
I have a FITS file, so I don't need to load my data using the def functions. I would like to know what your #compare code does. What is f2_item? – ThePredator Aug 21 '14 at 15:01
    
As you wrote in an other comment it's an ASCII file. Therefore no need to use a third party python module to compare the lines. – moep moep Aug 21 '14 at 16:11
    
My "compare" is quite ugly, but will work. It compares each line of file1 with each line of file2. So if file1 has a length of m and file2 has a length of n the runtime will be O(m*n). – moep moep Aug 21 '14 at 16:13
1  
Sorry, but this does not answer the OP's question. – Iguananaut Aug 22 '14 at 14:09

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