numpy.savez_compressed
-
numpy.savez_compressed(file, *args, **kwds)
[source] -
Save several arrays into a single file in compressed
.npz
format.If keyword arguments are given, then filenames are taken from the keywords. If arguments are passed in with no keywords, then stored filenames are arr_0, arr_1, etc.
- Parameters
-
-
filestr or file
-
Either the filename (string) or an open file (file-like object) where the data will be saved. If file is a string or a Path, the
.npz
extension will be appended to the filename if it is not already there. -
argsArguments, optional
-
Arrays to save to the file. Since it is not possible for Python to know the names of the arrays outside
savez
, the arrays will be saved with names “arr_0”, “arr_1”, and so on. These arguments can be any expression. -
kwdsKeyword arguments, optional
-
Arrays to save to the file. Arrays will be saved in the file with the keyword names.
-
- Returns
-
- None
See also
-
numpy.save
-
Save a single array to a binary file in NumPy format.
-
numpy.savetxt
-
Save an array to a file as plain text.
-
numpy.savez
-
Save several arrays into an uncompressed
.npz
file format -
numpy.load
-
Load the files created by savez_compressed.
Notes
The
.npz
file format is a zipped archive of files named after the variables they contain. The archive is compressed withzipfile.ZIP_DEFLATED
and each file in the archive contains one variable in.npy
format. For a description of the.npy
format, seenumpy.lib.format
.When opening the saved
.npz
file withload
aNpzFile
object is returned. This is a dictionary-like object which can be queried for its list of arrays (with the.files
attribute), and for the arrays themselves.Examples
>>> test_array = np.random.rand(3, 2) >>> test_vector = np.random.rand(4) >>> np.savez_compressed('/tmp/123', a=test_array, b=test_vector) >>> loaded = np.load('/tmp/123.npz') >>> print(np.array_equal(test_array, loaded['a'])) True >>> print(np.array_equal(test_vector, loaded['b'])) True
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https://numpy.org/doc/1.19/reference/generated/numpy.savez_compressed.html