It was recently asked how to do a file slurp in python, and the accepted answer suggested something like:
with open('x.txt') as x: f = x.read()
How would I go about doing this to read the file in and convert the endian representation of the data?
For example, I have a 1GB binary file that's just a bunch of single precision floats packed as a big endian and I want to convert it to little endian and dump into a numpy array. Below is the function I wrote to accomplish this and some real code that calls it. I use
struct.unpack do the endian conversion and tried to speed everything up by using
My question then is, am I using the slurp correctly with
struct.unpack? Is there a cleaner, faster way to do this? Right now what I have works, but I'd really like to learn how to do this better.
Thanks in advance!
#!/usr/bin/python from struct import unpack import mmap import numpy as np def mmapChannel(arrayName, fileName, channelNo, line_count, sample_count): """ We need to read in the asf internal file and convert it into a numpy array. It is stored as a single row, and is binary. Thenumber of lines (rows), samples (columns), and channels all come from the .meta text file Also, internal format files are packed big endian, but most systems use little endian, so we need to make that conversion as well. Memory mapping seemed to improve the ingestion speed a bit """ # memory-map the file, size 0 means whole file # length = line_count * sample_count * arrayName.itemsize print "\tMemory Mapping..." with open(fileName, "rb") as f: map = mmap.mmap(f.fileno(), 0, access=mmap.ACCESS_READ) map.seek(channelNo*line_count*sample_count*arrayName.itemsize) for i in xrange(line_count*sample_count): arrayName[0, i] = unpack('>f', map.read(arrayName.itemsize) ) # Same method as above, just more verbose for the maintenance programmer. # for i in xrange(line_count*sample_count): #row # be_float = map.read(arrayName.itemsize) # arrayName.itemsize should be 4 for float32 # le_float = unpack('>f', be_float) # > for big endian, < for little endian # arrayName[0, i]= le_float map.close() return arrayName print "Initializing the Amp HH HV, and Phase HH HV arrays..." HHamp = np.ones((1, line_count*sample_count), dtype='float32') HHphase = np.ones((1, line_count*sample_count), dtype='float32') HVamp = np.ones((1, line_count*sample_count), dtype='float32') HVphase = np.ones((1, line_count*sample_count), dtype='float32') print "Ingesting HH_Amp..." HHamp = mmapChannel(HHamp, 'ALPSRP042301700-P1.1__A.img', 0, line_count, sample_count) print "Ingesting HH_phase..." HHphase = mmapChannel(HHphase, 'ALPSRP042301700-P1.1__A.img', 1, line_count, sample_count) print "Ingesting HV_AMP..." HVamp = mmapChannel(HVamp, 'ALPSRP042301700-P1.1__A.img', 2, line_count, sample_count) print "Ingesting HV_phase..." HVphase = mmapChannel(HVphase, 'ALPSRP042301700-P1.1__A.img', 3, line_count, sample_count) print "Reshaping...." HHamp_orig = HHamp.reshape(line_count, -1) HHphase_orig = HHphase.reshape(line_count, -1) HVamp_orig = HVamp.reshape(line_count, -1) HVphase_orig = HVphase.reshape(line_count, -1)