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I need to import a binary file from Python -- the contents are signed 16-bit integer, big endian.

The following threads suggest how to pull in sevaral bytes at a time, but is this the way to scale up to read in a whole file?

Reading binary file in Python

Recieving 16 bit integers in python

I thought to create a function like

from numpy import *
import os

def readmyfile(filename,bytes=2,endian='>h'):
    totalBytes = os.path.getsize(filename)
    values = empty(totalBytes/bytes)
    with open(filename,'rb') as f:
        for i in range(len(values)):
            values[i] = struct.unpack(endian,f.read(bytes))[0]
    return values

filecontents = readmyfile('filename')

but this is quite slow (file is 165924350 bytes). Is there a better way? Thanks much ~

share|improve this question
    
I think it is slow because of bytes=2. –  khachik Dec 12 '10 at 19:54
    
Reading a 150mb file is is going to be slow. What do you expect? How slow is it? –  Falmarri Dec 12 '10 at 19:55
    
It's actually only about 3.5 minutes (according to unix time) but I can read it into R in less than a minute using readBin –  crippledlambda Dec 12 '10 at 20:12
    
(and I have thousands of these files...) –  crippledlambda Dec 12 '10 at 20:19
1  
Are the data clearly binary or the ASCII representation of 16 bit numbers? –  the wolf Dec 12 '10 at 21:30

5 Answers 5

up vote 3 down vote accepted

I would directly read until EOF (it means checking for receiving an empty string), removing then the need to use range() and getsize.
Alternatively, using xrange (instead of range) should improve things, especially for memory usage.
Moreover, as Falmarri suggested, reading more data at the same time would improve performance quite a lot.

That said, I would not expect miracles, also because I am not sure a list is the most efficient way to store all that amount of data.
What about using NumPy's Array, and its facilities to read/write binary files? In this link there is a section about reading raw binary files, using numpyio.fread. I believe this should be exactly what you need.

Note: personally, I have never used NumPy; however, its main raison d'etre is exactly handling of big sets of data - and this is what you are doing in your question.

share|improve this answer
    
I'll look into NumPy, but how do I parse it once it's loaded? Or parse it in a loop? Thanks~ –  crippledlambda Dec 12 '10 at 20:15
    
In the link provided above there's a section about reading binary files, using fread. I'll update the original answer, to better specify this. –  Roberto Liffredo Dec 12 '10 at 20:23
    
Thanks -- that link was helpful. –  crippledlambda Dec 12 '10 at 20:30

Use numpy.fromfile.

share|improve this answer
1  
is it as easy as fromfile(filename,dtype='>i2') ? –  crippledlambda Dec 12 '10 at 20:19
    
Should be; but read the documentation. –  Karl Knechtel Dec 12 '10 at 20:21
1  
@Stephen, yes, that's all that you need to do. If Karl had put that in the answer, then this is the best and simplest answer for this. –  Justin Peel Dec 12 '10 at 20:41
    
In my experience numpy.fromfile is extremely fast and very easy to use. –  Andrew Dec 22 '10 at 21:38

You're reading and unpacking 2 bytes at a time

values[i] = struct.unpack(endian,f.read(bytes))[0]

Why don't you read like, 1024 bytes at a time?

share|improve this answer
    
If I do that, how will it know that it's a 16-bit integer rather than 32 or something else? –  crippledlambda Dec 12 '10 at 20:13
    
...and it gives me an error: TypeError: Struct() argument 1 must be string, not int –  crippledlambda Dec 12 '10 at 20:14
    
I don't think struct.unpack is the best solution here. That's meant to take in strings, not binary files. –  Falmarri Dec 12 '10 at 20:26

I think the bottleneck you have here is twofold.

Depending on your OS and disc controller, the calls to f.read(2) with f being a bigish file are usually efficiently buffered -- usually. In other words, the OS will read one or two sectors (with disc sectors usually several KB) off disc into memory because this is not a lot more expensive than reading 2 bytes from that file. The extra bytes are cached efficiently in memory ready for the next call to read that file. Don't rely on that behavior -- it might be your bottleneck -- but I think there are other issues here.

I am more concerned about the single byte conversions to a short and single calls to numpy. These are not cached at all. You can keep all the shorts in a Python list of ints and convert the whole list to numpy when (and if) needed. You can also make a single call struct.unpack_from to convert everything in a buffer vs one short at a time.

Consider:

#!/usr/bin/python

import random
import os
import struct
import numpy
import ctypes

def read_wopper(filename,bytes=2,endian='>h'):
    buf_size=1024*2
    buf=ctypes.create_string_buffer(buf_size)
    new_buf=[]

    with open(filename,'rb') as f:
        while True:
            st=f.read(buf_size)
            l=len(st)
            if l==0: 
                break
            fmt=endian[0]+str(l/bytes)+endian[1]    
            new_buf+=(struct.unpack_from(fmt,st))

    na=numpy.array(new_buf)        
    return na

fn='bigintfile'

def createmyfile(filename):
    bytes=165924350
    endian='>h'
    f=open(filename,"wb")
    count=0

    try: 
        for int in range(0,bytes/2):
            # The first 32,767 values are [0,1,2..0x7FFF] 
            # to allow testing the read values with new_buf[value<0x7FFF]
            value=count if count<0x7FFF else random.randint(-32767,32767)
            count+=1
            f.write(struct.pack(endian,value&0x7FFF))

    except IOError:
        print "file error"

    finally:
        f.close()

if not os.path.exists(fn):
    print "creating file, don't count this..."
    createmyfile(fn)
else:    
    read_wopper(fn)
    print "Done!"

I created a file of random shorts signed ints of 165,924,350 bytes (158.24 MB) which comports to 82,962,175 signed 2 byte shorts. With this file, I ran the read_wopper function above and it ran in:

real        0m15.846s
user        0m12.416s
sys         0m3.426s

If you don't need the shorts to be numpy, this function runs in 6 seconds. All this on OS X, python 2.6.1 64 bit, 2.93 gHz Core i7, 8 GB ram. If you change buf_size=1024*2 in read_wopper to buf_size=2**16 the run time is:

real        0m10.810s
user        0m10.156s
sys         0m0.651s

So your main bottle neck, I think, is the single byte calls to unpack -- not your 2 byte reads from disc. You might want to make sure that your data files are not fragmented and if you are using OS X that your free disc space (and here) is not fragmented.

Edit I posted the full code to create then read a binary file of ints. On my iMac, I consistently get < 15 secs to read the file of random ints. It takes about 1:23 to create since the creation is one short at a time.

share|improve this answer
    
Thanks -- will try this out tomorrow, though currently using numpy.filefrom -- but this could be great for machines without numpy installed (which is not trivial for all the different machines I administer)! –  crippledlambda Dec 13 '10 at 8:21
    
Hmm... still 2m50s (OS X, Python 2.6 64-bit, 4GB of RAM)... thanks for the insight on the cacheing tho'~ –  crippledlambda Dec 13 '10 at 8:43
    
@Stephen: Is there something unusual about your disc? Is the disc format NTFS or really full or fragmented? If it is NTFS, the OS X NTFS driver is not fast. I will post my full code, and try it on a relatively empty HFS drive... –  the wolf Dec 13 '10 at 17:42
    
Strange, it's OS X Extended (Journaled) but bash-3.2$ time python test.py creating file, don't count this... real 2m28.376s user 2m6.882s sys 0m3.664s bash-3.2$ time python test.py Done! real 0m28.485s user 0m23.273s sys 0m1.509s –  crippledlambda Dec 14 '10 at 10:07
    
oops, that didn't format well -- in any case, writing took longer but reading was quicker. I wonder if there is the something different about the binary file. Unix head seems to freeze(?) on bigintfile whereas it doesn't on my other file. I appreciate all of your input... –  crippledlambda Dec 14 '10 at 10:09

I have had the same kind of problem, although in my particular case I have had to convert a very strange binary format (500MB) file with interlaced blocks of 166 elements that were 3bytes signed integers; so I've had also the problem of converting from 24bit to 32bit signed integers that slow things down a little.

I've resolved it using numpy memmap (it's just a handy way of using the python memmap) and struct.unpack on large chunk of the file.

With this solution I'm able to convert (Read+do stuff+write to disk) the entire file in ~90sec (timed with time.clock() )

If someone is still interested, I can upload part of the code.

share|improve this answer
    
Yes if you're still around? –  Sam Jun 11 at 9:05

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