Pyhon perfomance tips

Правка en2, от kfx, 2015-11-29 15:33:56

Python is a great programming language: simple, expressive, compact.

In Codeforces, Python is often the best choice for Div 2 A and B problems. For example, problem 600A - Extract Numbers is very easy to write in Python: first tokenize the string with the built-in split() function, then try to parse the integers with the built int(), then output the comma-separated strings of results with ",".join(lst).

For the more complex problems, writing fast-enough Python code is often a challenge. Here is a list of tips to improve performance.

  • Use PyPy instead of the standard Python intepreter. According to 20 offical benchmarks it is on average 7 times faster than Python 2. PyPy2 is in my opionion the best option at the moment for competitive programming.

  • Append to an existing string with "+=" instead of concatening more than two strings with "+" and storing the result with "=". (With two strings, both ways work fine. s1 = s1 + s2 is fast because Python interpreter optimizes that to s1 += s2.)

  • string.join(iterable) is as fast as it gets.

  • list comprehension is faster than for loops.

  • prefer xrange() instead of range(), as the former returns an iterator, while the latter a new list.

  • avoid zip() in Python 2 (constructs) a list, prefer a for loop instead. zip() is fine in Python 3 because there it returns an iterator.

  • it's ok to use Python list as an array; it has O(1) element access time. It is NOT ok to use it as queue, even if the list is sorted. Use collections.deque instead if you need fast extraction of the max element.

Experimental results

For the following tests I used a Lenovo laptop with Intel(R) Core(TM) i5-3427U CPU @ 1.80GHz. Each test was run 10 times, and the average results are reported.

I/O: Python vs. printf/scanf vs. cin/cout

The problem: read a file with integers from 0 to 500000, store them in an array, then print out the array.

Implementations: scanf/printf, cin/cout, "fast" cin/cout, Python 2, Python 3.

The results:

 scanf/printf:    0.1056 sec
 cin/cout:        0.2274 sec
 "fast" cin/cout: 0.0943 sec

 Python 2:        0.3535 sec
 PyPy 2:          0.1645 sec

 Python 3:        0.2535 sec
 PyPy 3:          0.3324 sec

Verdict: C++ is faster, but PyPy2 should be fast enough for most problems.

Iterator construction vs. list construction

The problem: sum all integers from 0 to 10e6 by using a for loop.

The results:

Loop with range:

 python2: 0.502402067184 sec
 pypy2:   0.0170 sec

Loop with xrange:

 python2: 0.334251880646 sec
 pypy:    0.0166962146759 sec

Loop with range in Python3 that is in fact the same as range in Python2:

 python3: 0.6606624750002084 sec
 pypy3:   0.0168 sec

Verdict: the differences between PyPy and standard Python are actually much much more important than range vs. xrange!

List construction: iterative growth vs. pre-reserving all memory at start.

The problem: Create a list with 1e6 elements.

The code when using iterative growth:

l = []
for x in range(1000000):
  l.append(x)

The code when pre-reserving memory:

l = [0] * 1000000
for x in range(1000000):
  l[x] = x

The results: With append:

 pypy2:   0.483808994293
 python2: 0.698101997375
 pypy3:   0.510159969329
 python3: 0.844806871000

With []:

 pypy2:   0.0570020675659
 python2: 0.618577957153
 pypy3:   0.06054091453552246
 python3: 0.6261008259998562

Verdict: PyPy is able to take advantage of the faster algorithm (with one-time growth), while standard Python is not able to. The PyPy speedup is an order-of-magnitude (~10 times).

История

 
 
 
 
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en9 Английский kfx 2015-11-30 12:01:15 1
en8 Английский kfx 2015-11-30 11:59:55 139 Tiny change: 'ons were: `g++` 4.8.4, Py' -> 'ons were: g++ 4.8.4, Py'
en7 Английский kfx 2015-11-30 11:55:15 1 Tiny change: 'bit unread at the mo' -> 'bit unready at the mo'
en6 Английский kfx 2015-11-30 11:54:50 7
en5 Английский kfx 2015-11-29 16:21:48 195
en4 Английский kfx 2015-11-29 15:47:09 155
en3 Английский kfx 2015-11-29 15:43:56 364 (published)
en2 Английский kfx 2015-11-29 15:33:56 3561
en1 Английский kfx 2015-11-29 14:57:52 433 Initial revision (saved to drafts)