There is a buffer type in python, but I don't know how can I use it.

In the Python doc the description is:

buffer(object[, offset[, size]])

The object argument must be an object that supports the buffer call interface (such as strings, arrays, and buffers). A new buffer object will be created which references the object argument. The buffer object will be a slice from the beginning of object (or from the specified offset). The slice will extend to the end of object (or will have a length given by the size argument).


An example usage:

>>> s = 'Hello world'
>>> t = buffer(s, 6, 5)
>>> t
<read-only buffer for 0x10064a4b0, size 5, offset 6 at 0x100634ab0>
>>> print t

The buffer in this case is a sub-string, starting at position 6 with length 5, and it doesn't take extra storage space - it references a slice of the string.

This isn't very useful for short strings like this, but it can be necessary when using large amounts of data. This example uses a mutable bytearray:

>>> s = bytearray(1000000)   # a million zeroed bytes
>>> t = buffer(s, 1)         # slice cuts off the first byte
>>> s[1] = 5                 # set the second element in s
>>> t[0]                     # which is now also the first element in t!

This can be very helpful if you want to have more than one view on the data and don't want to (or can't) hold multiple copies in memory.

Note that buffer has been replaced by the better named memoryview in Python 3, though you can use either in Python 2.7.

Note also that you can't implement a buffer interface for your own objects without delving into the C API, i.e. you can't do it in pure Python.

  • 1
    Thanks for your explanation. But I still don't quite understand what's the difference between buffering and simple slicing. Using s[6:11] doesn't take extra storage space either, am I wrong?
    – satoru
    Aug 6 '10 at 11:31
  • 11
    In general a slice will take extra storage, so yes s[6:11] will be a copy. If you set t = s[6:11] and then del s, it frees the memory that was taken by s, proving that t was copied. (To see this you need a bigger s and track Python's memory usage). It is however much more efficient just to make the copy if there isn't much data involved. Aug 6 '10 at 12:11
  • 1
    Thank you very mush :) BTW, could you please tell me what tool can I use to track Python's memory usage?
    – satoru
    Aug 6 '10 at 12:48
  • For memory usage see stackoverflow.com/questions/110259 for example. Sometimes it's easiest just to watch Python's usage in Task Manager/Activity Monitor/top. Aug 6 '10 at 17:15
  • 13
    For Python noobs like me: buffer is memoryview in Python 3 Aug 6 '12 at 8:05

I think buffers are e.g. useful when interfacing python to native libraries. (Guido van Rossum explains buffer in this mailinglist post).

For example, numpy seems to use buffer for efficient data storage:

import numpy
a = numpy.ndarray(1000000)

the a.data is a:

<read-write buffer for 0x1d7b410, size 8000000, offset 0 at 0x1e353b0>

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