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I have created some code for testing in Python and C++, where I read two matrices from a file and print something. It seems as if Python needs about twice as much time for I/O:

$ ./test.sh -i Testing/2000.in -p "C++/read-write-only.out" -n 2
Executing: C++/read-write-only.out -i Testing/2000.in > TMPcurrentFileResult.out
It took 8 seconds for 2 executions
MIN: 4 seconds
MAX: 4 seconds

$ ./test.sh -i Testing/2000.in -p "python Python/read-write-only.py" -n 2
Executing: python Python/read-write-only.py -i Testing/2000.in > TMP..Results.out
It took 16 seconds for 2 executions
MIN: 8 seconds
MAX: 8 seconds

This is the code I've used for Python:

#!/usr/bin/python
# -*- coding: utf-8 -*-

from optparse import OptionParser
parser = OptionParser()
parser.add_option("-i", dest="filename", default="bigMatrix.in",
     help="input file with two matrices", metavar="FILE")
(options, args) = parser.parse_args()

def read(filename):
    lines = open(filename, 'r').read().splitlines()
    A = []
    B = []
    matrix = A
    for line in lines:
        if line != "":
            matrix.append(map(int, line.split("\t")))
        else:
            matrix = B
    return A, B

def printMatrix(matrix):
    for line in matrix:
        print "\t".join(map(str,line))

A, B = read(options.filename)
# Do something
printMatrix(B)

This is the C++-Code

#include <sstream>
#include <string>
#include <fstream>
#include <iostream>
#include <vector>
#include <algorithm>

using namespace std;

int getMatrixSize(string filename) {
    string line;
    ifstream infile;
    infile.open (filename.c_str());
    getline(infile, line);
    return count(line.begin(), line.end(), '\t') + 1;
}

void read(string filename, vector< vector<int> > &A, vector< vector<int> > &B){
    string line;
    FILE* matrixfile = freopen(filename.c_str(), "r", stdin);

    int i = 0, j, a;
    while (getline(cin, line) && !line.empty()) {
        istringstream iss(line);
        j = 0;
        while (iss >> a) {
            A[i][j] = a;
            j++;
        }
        i++;
    }

    i = 0;
    while (getline(cin, line)) {
        istringstream iss(line);
        j = 0;
        while (iss >> a) {
            B[i][j] = a;
            j++;
        }
        i++;
    }

    fclose (matrixfile);
}

void printMatrix(vector< vector<int> > matrix, int n) {
    for (int i=0; i < n; i++) {
        for (int j=0; j < n; j++) {
            if (j != 0) {
                cout << "\t";
            }
            cout << matrix[i][j];
        }
        cout << endl;
    }
}

int main (int argc, char* argv[]) {
    string filename;
    if (argc < 3) {
        filename = "bigMatrix.in";
    } else {
        filename = argv[2];
    }

    int n = getMatrixSize(filename);
    vector<int> inner (n);
    vector< vector<int> > A(n, inner), B(n, inner), C(n, inner);
    read (filename, A, B);
    // do something with the matrices
    printMatrix(C, n);
    return 0;
}

Is it possible to get Python as fast as C++ for I/O? How could I improve the I/O for Python / C++?

(I've heard scanf should be faster than cin. Why should it be faster?)

This is the GIT-Repository with all Code.

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11  
Why all the matrix stuff if you're asking about I/O? I would do a pure I/O test. –  chris Jun 29 '12 at 9:03
3  
They are not the same code. I didn't take a deep look but at first sight in C++ you allocate the matrix with the right size, in Python you don't. For a very small matrix it shouldn't be a problem but when it increases... –  Adriano Repetti Jun 29 '12 at 9:05
3  
@Niemand usually working with I/O the slowest part isn't the program but the disk. –  Adriano Repetti Jun 29 '12 at 9:09
6  
@moose try removing everything but pure I/O. Read and do not parse (skip matrix code too). Do not print output. Run the test "n" times (and much more than 2) but using a loop inside the main (not running the program again and again with the shell script). You'll be surprised. The algorithm you use for parsing is different too. Measure performance isn't easy and comparison is even harder but at least you should remove all the noise and artifacts and...use the same algorithm. If you don't then you'll measure how good you're to write in a language or in another. –  Adriano Repetti Jun 29 '12 at 9:24
3  
Beware when testing I/O performance, that if you run the test n times that might mean you've tested the I/O "cold" once, and "hot" n-1 times. For large enough n, cold I/O performance becomes irrelevant to the benchmark, but in practical use you probably care about it quite a lot. It's better to test one extremely large file, than to test a fairly large file lots of times. Unless you know how to outwit your OS and hardware's disk caching, that is, in which case you can precisely test cold and hot I/O separately. "Extremely large" means "much larger than you have RAM". –  Steve Jessop Jun 29 '12 at 10:01
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3 Answers 3

It takes a while to start the python interpreter. Take this into consideration when running your tests.

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4  
It doesn't take 8 seconds though, or even a significant fraction of 8 seconds. On my system it takes 0.1 seconds to start up and shut down the interpreter, and another 0.1 if I import optparse. The questioner's Python code needs compiling at runtime too, which will add another little bit. The time to take this into consideration is when the C++ and Python code are within a second of each other. –  Steve Jessop Jun 29 '12 at 10:04
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You must buffer I/O in any language.

And why are you comparing Python and C++?

Python is an interpreted language, while C++ is compiled.

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2  
This question asks about unbuffered I/O. You might want to take a look. –  chris Jun 29 '12 at 9:10
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When you are not mixing C and C++ file manipulation routines, you should turn off the synchronization with stdio.

http://www.cplusplus.com/reference/iostream/ios_base/sync_with_stdio/

cin and cout should be generally faster then their C counterparts (with synchronization turned off).

As far as the slowness of Python goes, well, why don't you check the implementation of the I/O functions?

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