115

I am looking for a fast way to preserve large numpy arrays. I want to save them to the disk in a binary format, then read them back into memory relatively fastly. cPickle is not fast enough, unfortunately.

I found numpy.savez and numpy.load. But the weird thing is, numpy.load loads a npy file into "memory-map". That means regular manipulating of arrays really slow. For example, something like this would be really slow:

#!/usr/bin/python
import numpy as np;
import time; 
from tempfile import TemporaryFile

n = 10000000;

a = np.arange(n)
b = np.arange(n) * 10
c = np.arange(n) * -0.5

file = TemporaryFile()
np.savez(file,a = a, b = b, c = c);

file.seek(0)
t = time.time()
z = np.load(file)
print "loading time = ", time.time() - t

t = time.time()
aa = z['a']
bb = z['b']
cc = z['c']
print "assigning time = ", time.time() - t;

more precisely, the first line will be really fast, but the remaining lines that assign the arrays to obj are ridiculously slow:

loading time =  0.000220775604248
assining time =  2.72940087318

Is there any better way of preserving numpy arrays? Ideally, I want to be able to store multiple arrays in one file.

  • 2
    By default, np.load should not mmap the file. – Fred Foo Mar 8 '12 at 14:32
  • 5
    What about pytables? – dsign Mar 8 '12 at 14:34
  • @larsmans, thanks for the reply. but why is the lookup time (z['a'] in my code example) so slow? – Vendetta Mar 8 '12 at 14:37
  • 1
    It would be nice if we there were a little more information in your question, like the kind of array which is stored in ifile and its size, or if they are several arrays in different files, or how exactly do you save them. By your question, I have got the impression that the first line does nothing and that the actual loading happens after, but those are only guesses. – dsign Mar 8 '12 at 15:07
  • 19
    @larsmans - For what it's worth, for an "npz" file (i.e. multiple arrays saved with numpy.savez), the default is to "lazily load" the arrays. It isn't memmapping them, but it doesn't load them until the NpzFile object is indexed. (Thus the delay the OP is referring to.) The documentation for load skips this, and is therefore a touch misleading... – Joe Kington Mar 8 '12 at 16:08
53

I'm a big fan of hdf5 for storing large numpy arrays. There are two options for dealing with hdf5 in python:

http://www.pytables.org/

http://www.h5py.org/

Both are designed to work with numpy arrays efficiently.

  • 26
    would you be willing to provide some example code using these packages to save an array? – dbliss Apr 13 '15 at 23:36
  • 9
    h5py example and pytables example – Kamil Slowikowski Sep 23 '16 at 13:15
  • 1
    From my experiences, hdf5 performances very slow reading and writing with chunk storage and compression enabled. For example, I've two 2-D arrays with shape (2500,000 * 2000) with chunk size (10,000 * 2000). A single write operation of a array with shape (2000 * 2000) will take about 1 ~ 2s to complete. Do you have any suggestion on improving the performance? thx. – Simon. Li Mar 28 '17 at 9:48
176

I've compared performance (space and time) for a number of ways to store numpy arrays. Few of them support multiple arrays per file, but perhaps it's useful anyway.

benchmark for numpy array storage

Npy and binary files are both really fast and small for dense data. If the data is sparse or very structured, you might want to use npz with compression, which'll save a lot of space but cost some load time.

If portability is an issue, binary is better than npy. If human readability is important, then you'll have to sacrifice a lot of performance, but it can be achieved fairly well using csv (which is also very portable of course).

More details and the code are available at the github repo.

  • 2
    Could you explain why binary is better than npy for portability? Does this also apply for npz? – daniel451 Jun 1 '17 at 12:47
  • 1
    @daniel451 Because any language can read binary files if they just know the shape, data type and whether it's row or column based. If you're just using Python then npy is fine, probably a little easier than binary. – Mark Jun 2 '17 at 19:36
  • 1
    Thank you! One more question: do I overlook something or did you leave out HDF5? Since this is pretty common, I would be interested how it compares to the other methods. – daniel451 Jun 2 '17 at 21:15
  • 1
    I tried to use png and npy to save a same image. png only takes 2K space while the npy takes 307K. This result is really different from your work. Am I doing something wrong? This image is a greyscale image and only 0 and 255 are inside. I think this is a sparse data correct? Then I also used npz but the size is totally same. – York Yang Aug 6 '17 at 1:51
  • 2
    Why is h5py missing? Or am I missing something? – daniel451 Feb 26 '18 at 0:23
40

There is now a HDF5 based clone of pickle called hickle!

https://github.com/telegraphic/hickle

import hickle as hkl 

data = { 'name' : 'test', 'data_arr' : [1, 2, 3, 4] }

# Dump data to file
hkl.dump( data, 'new_data_file.hkl' )

# Load data from file
data2 = hkl.load( 'new_data_file.hkl' )

print( data == data2 )

EDIT:

There also is the possibility to "pickle" directly into a compressed archive by doing:

import pickle, gzip, lzma, bz2

pickle.dump( data, gzip.open( 'data.pkl.gz',   'wb' ) )
pickle.dump( data, lzma.open( 'data.pkl.lzma', 'wb' ) )
pickle.dump( data,  bz2.open( 'data.pkl.bz2',  'wb' ) )

compression


Appendix

import numpy as np
import matplotlib.pyplot as plt
import pickle, os, time
import gzip, lzma, bz2, h5py

compressions = [ 'pickle', 'h5py', 'gzip', 'lzma', 'bz2' ]
labels = [ 'pickle', 'h5py', 'pickle+gzip', 'pickle+lzma', 'pickle+bz2' ]
size = 1000

data = {}

# Random data
data['random'] = np.random.random((size, size))

# Not that random data
data['semi-random'] = np.zeros((size, size))
for i in range(size):
    for j in range(size):
        data['semi-random'][i,j] = np.sum(data['random'][i,:]) + np.sum(data['random'][:,j])

# Not random data
data['not-random'] = np.arange( size*size, dtype=np.float64 ).reshape( (size, size) )

sizes = {}

for key in data:

    sizes[key] = {}

    for compression in compressions:

        if compression == 'pickle':
            time_start = time.time()
            pickle.dump( data[key], open( 'data.pkl', 'wb' ) )
            time_tot = time.time() - time_start
            sizes[key]['pickle'] = ( os.path.getsize( 'data.pkl' ) * 10**(-6), time_tot )
            os.remove( 'data.pkl' )

        elif compression == 'h5py':
            time_start = time.time()
            with h5py.File( 'data.pkl.{}'.format(compression), 'w' ) as h5f:
                h5f.create_dataset('data', data=data[key])
            time_tot = time.time() - time_start
            sizes[key][compression] = ( os.path.getsize( 'data.pkl.{}'.format(compression) ) * 10**(-6), time_tot)
            os.remove( 'data.pkl.{}'.format(compression) )

        else:
            time_start = time.time()
            pickle.dump( data[key], eval(compression).open( 'data.pkl.{}'.format(compression), 'wb' ) )
            time_tot = time.time() - time_start
            sizes[key][ labels[ compressions.index(compression) ] ] = ( os.path.getsize( 'data.pkl.{}'.format(compression) ) * 10**(-6), time_tot )
            os.remove( 'data.pkl.{}'.format(compression) )


f, ax_size = plt.subplots()
ax_time = ax_size.twinx()

x_ticks = labels
x = np.arange( len(x_ticks) )

y_size = {}
y_time = {}
for key in data:
    y_size[key] = [ sizes[key][ x_ticks[i] ][0] for i in x ]
    y_time[key] = [ sizes[key][ x_ticks[i] ][1] for i in x ]

width = .2
viridis = plt.cm.viridis

p1 = ax_size.bar( x-width, y_size['random']       , width, color = viridis(0)  )
p2 = ax_size.bar( x      , y_size['semi-random']  , width, color = viridis(.45))
p3 = ax_size.bar( x+width, y_size['not-random']   , width, color = viridis(.9) )

p4 = ax_time.bar( x-width, y_time['random']  , .02, color = 'red')
ax_time.bar( x      , y_time['semi-random']  , .02, color = 'red')
ax_time.bar( x+width, y_time['not-random']   , .02, color = 'red')

ax_size.legend( (p1, p2, p3, p4), ('random', 'semi-random', 'not-random', 'saving time'), loc='upper center',bbox_to_anchor=(.5, -.1), ncol=4 )
ax_size.set_xticks( x )
ax_size.set_xticklabels( x_ticks )

f.suptitle( 'Pickle Compression Comparison' )
ax_size.set_ylabel( 'Size [MB]' )
ax_time.set_ylabel( 'Time [s]' )

f.savefig( 'sizes.pdf', bbox_inches='tight' )
14

savez() save data in a zip file, It may take some time to zip & unzip the file. You can use save() & load() function:

f = file("tmp.bin","wb")
np.save(f,a)
np.save(f,b)
np.save(f,c)
f.close()

f = file("tmp.bin","rb")
aa = np.load(f)
bb = np.load(f)
cc = np.load(f)
f.close()

To save multiple arrays in one file, you just need to open the file first, and then save or load the arrays in sequence.

7

Another possibility to store numpy arrays efficiently is Bloscpack:

#!/usr/bin/python
import numpy as np
import bloscpack as bp
import time

n = 10000000

a = np.arange(n)
b = np.arange(n) * 10
c = np.arange(n) * -0.5
tsizeMB = sum(i.size*i.itemsize for i in (a,b,c)) / 2**20.

blosc_args = bp.DEFAULT_BLOSC_ARGS
blosc_args['clevel'] = 6
t = time.time()
bp.pack_ndarray_file(a, 'a.blp', blosc_args=blosc_args)
bp.pack_ndarray_file(b, 'b.blp', blosc_args=blosc_args)
bp.pack_ndarray_file(c, 'c.blp', blosc_args=blosc_args)
t1 = time.time() - t
print "store time = %.2f (%.2f MB/s)" % (t1, tsizeMB / t1)

t = time.time()
a1 = bp.unpack_ndarray_file('a.blp')
b1 = bp.unpack_ndarray_file('b.blp')
c1 = bp.unpack_ndarray_file('c.blp')
t1 = time.time() - t
print "loading time = %.2f (%.2f MB/s)" % (t1, tsizeMB / t1)

and the output for my laptop (a relatively old MacBook Air with a Core2 processor):

$ python store-blpk.py
store time = 0.19 (1216.45 MB/s)
loading time = 0.25 (898.08 MB/s)

that means that it can store really fast, i.e. the bottleneck is typically the disk. However, as the compression ratios are pretty good here, the effective speed is multiplied by the compression ratios. Here are the sizes for these 76 MB arrays:

$ ll -h *.blp
-rw-r--r--  1 faltet  staff   921K Mar  6 13:50 a.blp
-rw-r--r--  1 faltet  staff   2.2M Mar  6 13:50 b.blp
-rw-r--r--  1 faltet  staff   1.4M Mar  6 13:50 c.blp

Please note that the use of the Blosc compressor is fundamental for achieving this. The same script but using 'clevel' = 0 (i.e. disabling compression):

$ python bench/store-blpk.py
store time = 3.36 (68.04 MB/s)
loading time = 2.61 (87.80 MB/s)

is clearly bottlenecked by the disk performance.

  • 2
    To whom it may concern: Although Bloscpack and PyTables are different projects, the former focusing only on disk dump and not stored arrays slicing, I tested both and for pure "file dump projects" Bloscpack is almost 6x faster than PyTables. – MSardelich Mar 23 '15 at 0:48
5

The lookup time is slow because when you use mmap to does not load content of array to memory when you invoke load method. Data is lazy loaded when particular data is needed. And this happens in lookup in your case. But second lookup won`t be so slow.

This is nice feature of mmap when you have a big array you do not have to load whole data into memory.

To solve your can use joblib you can dump any object you want using joblib.dump even two or more numpy arrays, see the example

firstArray = np.arange(100)
secondArray = np.arange(50)
# I will put two arrays in dictionary and save to one file
my_dict = {'first' : firstArray, 'second' : secondArray}
joblib.dump(my_dict, 'file_name.dat')

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