# python how to compute a simple checksum as quickly as zlib.adler32

I wish to compute a simple checksum : just adding the values of all bytes.

The quickest way I found is:

``````checksum = sum([ord(c) for c in buf])
``````

But for 13 Mb data buf, it takes 4.4 s : too long (in C, it takes 0.5 s)

If I use :

``````checksum = zlib.adler32(buf) & 0xffffffff
``````

it takes 0.8 s, but the result is not the one I want.

So my question is: is there any function, or lib or C to include in python 2.6, to compute a simple checksum ?

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try : `sum(imap(ord, buf))` , `imap` is from `itertools`. – Ashwini Chaudhary Jan 31 '13 at 9:42
could you use a C extension (it would be trivial to write one in Cython)? How do you want to use that value? Could you calculate the result using modulo small integer? related: Simple Python Challenge: Fastest Bitwise XOR on Data Buffers – J.F. Sebastian Jan 31 '13 at 9:57

You could use `sum(bytearray(buf))`:

``````In [1]: buf = b'a'*(13*(1<<20))

In [2]: %timeit sum(ord(c) for c in buf)
1 loops, best of 3: 1.25 s per loop

In [3]: %timeit sum(imap(ord, buf))
1 loops, best of 3: 564 ms per loop

In [4]: %timeit b=bytearray(buf); sum(b)
10 loops, best of 3: 101 ms per loop
``````

Here's a C extension for Python written in Cython, `sumbytes.pyx` file:

``````from libc.limits cimport ULLONG_MAX, UCHAR_MAX

def sumbytes(bytes buf not None):
cdef:
unsigned long long total = 0
unsigned char c
if len(buf) > (ULLONG_MAX // <size_t>UCHAR_MAX):
raise NotImplementedError #todo: implement for > 8 PiB available memory
for c in buf:
total += c
``````

`sumbytes` is ~10 time faster than `bytearray` variant:

``````name                    time ratio
sumbytes_sumbytes    12 msec  1.00
sumbytes_numpy     29.6 msec  2.48
sumbytes_bytearray  122 msec 10.19
``````

To reproduce the time measurements, download `reporttime.py` and run:

``````#!/usr/bin/env python
# compile on-the-fly
import pyximport; pyximport.install() # pip install cython
import numpy as np
from reporttime import get_functions_with_prefix, measure
from sumbytes import sumbytes # from sumbytes.pyx

def sumbytes_sumbytes(input):
return sumbytes(input)

def sumbytes_bytearray(input):
return sum(bytearray(input))

def sumbytes_numpy(input):
return np.frombuffer(input, 'uint8').sum() # @root's answer

def main():
funcs = get_functions_with_prefix('sumbytes_')
buf = ''.join(map(unichr, range(256))).encode('latin1') * (1 << 16)
measure(funcs, args=[buf])

main()
``````
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Added an example using `np.frombuffer`, that seems to be even faster... – root Jan 31 '13 at 10:32
@root: `np.frombuffer`-based solution is great. It doesn't copy the buffer and it only 2.5 times slower than the `sumbytes` C extension above. – J.F. Sebastian Jan 31 '13 at 13:17
Thats evil -- It may be too fast for the OP - he only wanted a 10x improvement :P – root Jan 31 '13 at 13:27
@root: and I haven't even used `cython.parallel.prange` to compute the sum using multiple CPUs for large input size. – J.F. Sebastian Aug 25 '15 at 8:00

Use `numpy.frombuffer(buf, "uint8").sum()`, it seems to be about 70 times faster than your example:

``````In [9]: import numpy as np

In [10]: buf = b'a'*(13*(1<<20))

In [11]: sum(bytearray(buf))
Out[11]: 1322254336

In [12]: %timeit sum(bytearray(buf))
1 loops, best of 3: 253 ms per loop

In [13]: np.frombuffer(buf, "uint8").sum()
Out[13]: 1322254336

In [14]: %timeit np.frombuffer(buf, "uint8").sum()
10 loops, best of 3: 36.7 ms per loop

In [15]: %timeit sum([ord(c) for c in buf])
1 loops, best of 3: 2.65 s per loop
``````
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surprisingly `sum([ord(c) for c in buf])` is faster than `sum(ord(c) for c in buf)` where `buf=b'a'*(13*(1<<20))` i.e., creating a list and then calculating its sum is faster than using the generator (sum one value at a time). – J.F. Sebastian Jan 31 '13 at 10:12
I think generator are generally slower than list if the time taken to create the list is negligible due to generator's context switching. – Dikei Jan 31 '13 at 10:16