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I have some CSV text files in the format:

1.3, 0, 1.0
20.0, 3.2, 0
30.5, 5.0, 5.2

The files are about 3.5Gb in size and I cannot read any of them in to memory in Pandas in a useful amount of time.

But I don't need to read the all file, because what I want to do, is to choose some random lines from the file and read the values there, and I know it's theoretically possible to do it if the file is formatted in a way that all the fields have the same size - for instance, float16 in a binary file.

Now, I think I can just convert it, using the NumPy method specified in the answer to question: How to output list of floats to a binary file in Python

But, how do I go about picking a random line from it after the conversion is done?

In a normal text file, I could just do:

import random
offset = random.randrange(filesize)
f = open('really_big_file')
f.seek(offset)                  #go to random position
f.readline()                    # discard - bound to be partial line
random_line = f.readline()      # bingo!

But I can't find a way for this to work in a binary file made from NumPy.

share|improve this question
    
@TimPietzcker -- Isn't that basically what the code snippet is doing? Of course, with that approach you eliminate the possibility of picking the first line ... –  mgilson Oct 9 '12 at 11:56
2  
No, because the lines in the original text CSV, have different length, and as such I would get a bias that would favour the bigger lines to get picked instead of the smaller ones. (i.e., in the example data, the 3rd line would have almost a 30% higher probability of being chosen than the 1st.) –  jbssm Oct 9 '12 at 11:57
    
@jbssm -- Hmm... Interesting point. –  mgilson Oct 9 '12 at 11:58

3 Answers 3

I'd use struct to convert to binary:

import struct
with open('input.txt') as fin, open('output.txt','wb') as fout:
     for line in fin:
         #You could also use `csv` if you're not lazy like me ...
         out_line = struct.pack('3f',*(float(x) for x in line.split(',')))
         fout.write(out_line)

This writes everything as standard 4-byte floats on most systems.

Now, to read the data again:

with open('output.txt','rb') as fin:
    line_size = 12 #each line is 12 bytes long (3 floats, 4 bytes each)
    offset = random.randrange(filesize//line_size)  #pick n'th line randomly
    f.seek(offset*line_size) #seek to position of n'th line
    three_floats_bytes = f.read(line_size)
    three_floats = struct.unpack('3f',three_floats_bytes)

If you're concerned about disk space and want to compress the data down using np.float16 (2 byte floats), you can do that too using the basic skeleton above, just substitute np.fromstring for struct.unpack and ndarray.tostring in place of struct.pack (with the appropriate data-type ndarray of course -- and line_size would drop to 6 ...).

share|improve this answer
    
Thank you, you helped me a lot. By combining your example with the one I mentioned in the question about NumPy, I was able to do what I wanted in NumPy. I think I'll add it below. –  jbssm Oct 10 '12 at 16:17
    
Just to say that this code doesn't work. I get the error: lineOut = struct.pack('3f', *(float(x) for x in line.split(','))) struct.error: pack requires exactly 3 arguments –  jbssm Oct 16 '12 at 17:03
    
@jbssm -- Then it looks like you have a record with more (or less) than 3 elements in it. –  mgilson Oct 16 '12 at 17:06
    
I checked what is wrong. I have like 10 elements, so I use something like out_line = struct.pack('10f',*(float(x) for x in line.split(','))) instead. Thank you. –  jbssm Oct 16 '12 at 17:16

You'd have to play around with offsets depending on storage size, but:

import csv
import struct
import random

count = 0
with open('input.csv') as fin, open('input.dat', 'wb') as fout:
    csvin = csv.reader(fin)
    for row in csvin:
        for col in map(float, row):
            fout.write(struct.pack('f', col))
            count += 1


with open('input.dat', 'rb') as fin:
    i = random.randrange(count)
    fin.seek(i * 4)
    print struct.unpack('f', fin.read(4))
share|improve this answer
    
This seeks to a random float, not a random line of floats. In other words, you're losing your "record" information here. –  mgilson Oct 9 '12 at 12:11
    
@mgilson indeed - I just saw your answer - but it's pretty much the same, just adjust the line_size as you've called it –  Jon Clements Oct 9 '12 at 12:11

So, using the example provided by the helpfull answers, I found a way to do it with NumPy if someone is interested:

# this converts the file from text CSV to bin
with zipfile.ZipFile("input.zip", 'r') as inputZipFile:
    inputCSVFile = inputZipFile.open(inputZipFile.namelist()[0], 'r') # it's 1 file only zip

    with open("output.bin", 'wb') as outFile:
        outCSVFile = csv.writer(outFile, dialect='excel')
        for line in inputCSVFile:
            lineParsed = ast.literal_eval(line)
            lineOut = numpy.array(lineParsed,'float16')
            lineOut.tofile(outFile)
        outFile.close()

    inputCSVFile.close()
    inputZipFile.close()

# this reads random lines from the binary file
with open("output.bin", 'wb') as file:
    file.seek(0)

    lineSize = 20 # float16 has 2 bytes and there are 10 values:
    fileSize = os.path.getsize("output.bin")

    offset = random.randrange(fileSize//lineSize)
    file.seek(offset * lineSize)
    random_line = file.read(lineSize)
    randomArr = numpy.fromstring(random_line, dtype='float16')
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