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I need to translate Matlab fread into python, in particular allowing for reading into a 2d array and skipping data while reading. I came up with the following, but I guess there may be more efficient and 'pythonic' ways to do it (I am by no means a programmer). Any suggestion? Note that I can't read the whole file and then subsample the array as the files to be read are too large.

def FromFileSkip(fid, count=1, skip=0, dtype=np.float32):
    if np.ndim(count)==0:
        if skip>=0:
            data = np.zeros(count, dtype=dtype)
            k = 0
            while k<count:
                data[k] = np.fromfile(fid, count=1, dtype=dtype)
                fid.seek(skip, 1)
                k +=1
            return data
    elif np.ndim(count)==1:
        if skip>0:
            data = np.zeros(count, dtype=dtype)
            k = 0
            while k<count[1]:
                data[:,k] = np.fromfile(fid, count=count[0], dtype=dtype)
                fid.seek(skip, 1)
                k +=1
            return data
        raise ValueError('File can be read only into 1d or 2d arrays')
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You could have just updated your original question with the additional information instead of deleting it –  Dhara Feb 18 '13 at 12:50

1 Answer 1

This is more or less what you have, just a little bit cleaner maybe.

def fromfileskip(fid,shape,counts,skip,dtype):
  fid    : file object,    Should be open binary file.
  shape  : tuple of ints,  This is the desired shape of each data block.
           For a 2d array with xdim,ydim = 3000,2000 and xdim = fastest 
           dimension, then shape = (2000,3000).
  counts : int, Number of times to read a data block.
  skip   : int, Number of bytes to skip between reads.
  dtype  : np.dtype object, Type of each binary element.
  data = np.zeros((counts,)  + shape)
  for c in xrange(counts):
    block = np.fromfile(fid,dtype=np.float32,count=np.product(shape))
    data[c] = block.reshape(shape)
    fid.seek( fid.tell() + skip)

  return data
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