Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I have a piece of fortran code that reads some numbers from STDIN and writes results to STDOUT. For example:

  read (*,*) x
  y = x*x
  write (*,*) y

So I can start the program from a shell and get the following sequence of inputs/outputs:


Now I need to do this from within python. After futilely wrestling with subprocess.Popen and looking through old questions on this site, I decided to use pexpect.spawn:

import pexpect, os
p = pexpect.spawn('squarer')
p.write("2.5" + os.linesep)
res = p.readline()

and it works. The problem is, the real data I need to pass between python and my fortran program is an array of 100,000 (or more) double precision floats. If they're contained in an array called x, then

p.write(' '.join(["%.10f"%k for k in x]) + os.linesep)

times out with the following error message from pexpect:

buffer (last 100 chars):   
before (last 100 chars):   
after: <class 'pexpect.TIMEOUT'>  
match: None  
match_index: None  
exitstatus: None
flag_eof: False
pid: 8574
child_fd: 3
closed: False
timeout: 30
delimiter: <class 'pexpect.EOF'>
logfile: None
logfile_read: None
logfile_send: None
maxread: 2000
ignorecase: False
searchwindowsize: None
delaybeforesend: 0.05
delayafterclose: 0.1
delayafterterminate: 0.1

unless x has less than 303 elements. Is there a way to pass large amounts of data to/from STDIN/STDOUT of another program?

I have tried splitting the data into smaller chunks, but then I lose a lot in speed.

Thanks in advance.

share|improve this question
It's an issue of inter-process (pipe) buffering. Please check my answer. – tzot Sep 16 '10 at 20:25

5 Answers 5

Found a solution using the subprocess module, so I'm posting it here for reference if anyone needs to do the same thing.

import subprocess as sbp

class ExternalProg:

    def __init__(self, arg_list):
        self.opt = sbp.Popen(arg_list, stdin=sbp.PIPE, stdout=sbp.PIPE, shell=True, close_fds=True)

    def toString(self,x):
        return ' '.join(["%.12f"%k for k in x])

    def toFloat(self,x):
        return float64(x.strip().split())

    def sendString(self,string):
        if not string.endswith('\n'):
            string = string + '\n'

    def sendArray(self,x):

    def readInt(self):
        return int(self.opt.stdout.readline().strip())

    def sendScalar(self,x):
        if type(x) == int:
        elif type(x) == float:

    def readArray(self):
        return self.toFloat(self.opt.stdout.readline())

    def close(self):

The class is invoked with an external program called 'optimizer' as:

optim = ExternalProg(['./optimizer'])
optim.sendScalar(500) # send the optimizer the length of the state vector, for example
optim.sendArray(init_x) # the initial guess for x
optim.sendArray(init_g) # the initial gradient g
next_x = optim.readArray() # get the next estimate of x
next_g = evaluateGradient(next_x) # calculate gradient at next_x from within python
# repeat until convergence

On the fortran side (the program compiled to give the executable 'optimizer'), a 500-element vector would be read in so:

read(*,*) input_vector(1:500)

and would be written out so:

write(*,'(500f18.11)') output_vector(1:500)

and that's it! I've tested it with state vectors up to 200,000 elements (which is the upper limit of what I need right now). Hope this helps someone other than myself. This solution works with ifort and xlf90, but not with gfortran for some reason I don't understand.

share|improve this answer
You say you found a solution using "communicate" but you didn't use it anywhere in your code. What you wrote down worked for me though thanks! – Paul Seeb Mar 30 '12 at 15:17

example program (it just happens to be in Python, use your Fortran executable):

import sys
data= sys.stdin.readline() # expecting lots of data in one line
processed_data= data[-2::-1] # reverse without the newline

example program:

import thread, Queue
import subprocess as sbp

class Companion(object):
    "A companion process manager"
    def __init__(self, cmdline):
        "Start the companion process"
        self.companion= sbp.Popen(
            cmdline, shell=False,
        self.putque= Queue.Queue()
        self.getque= Queue.Queue()
        thread.start_new_thread(self._sender, (self.putque,))
        thread.start_new_thread(self._receiver, (self.getque,))

    def _sender(self, que):
        "Actually sends the data to the companion process"
        while 1:
            datum= que.get()
            if datum is Ellipsis:
            if not datum.endswith('\n'):

    def _receiver(self, que):
        "Actually receives data from the companion process"
        while 1:
            datum= self.companion.stdout.readline()

    def close(self):

    def send(self, data):
        "Schedule a long line to be sent to the companion process"

    def recv(self):
        "Get a long line of output from the companion process"
        return self.getque.get()

def main():
    my_data= '12345678 ' * 5000
    my_companion= Companion(("/usr/bin/python", ""))

    my_answer= my_companion.recv()
    print my_answer[:20] # don't print the long stuff
    # rinse, repeat


if __name__ == "__main__":

The main function contains the code you will use: setup a Companion object, companion.send a long line of data, companion.recv a line. Repeat as necessary.

share|improve this answer
Hi ΤΖΩΤΖΙΟΥ, thanks for the suggestion. But it does not work :-( I copied and pasted your code into two files and But when I do "python" I get an interminable wait period where nothing happens. So I executed "%run" from the ipython shell, then hit Ctrl+C to interrupt the wait, and got the following traceback: 32 def recv(self): ---> 33 return self.getque.get() /usr/lib/python2.6/Queue.pyc in get(self, block, timeout) --> 168 self.not_empty.wait() /usr/lib/python2.6/threading.pyc in wait(self, timeout) --> 239 waiter.acquire() Help! – TM5 Oct 28 '10 at 7:55
Can I have somewhere one of these very long lines (perhaps in bpaste or some other paste bin) so that I can approximate your conditions? This code runs for me… – tzot Oct 28 '10 at 19:57
I just compared the code here with my code, and there was an indentation error here in the line if not datum.endswith. Can you please try again with the current version of the code? – tzot Oct 28 '10 at 20:24
I just corrected the indentation error, and your code runs for me now (even with a 500,000 character my_data). I will implement this in my actual code now and see if it still works :-) – TM5 Oct 29 '10 at 7:53
Hi ΤΖΩΤΖΙΟΥ, in my actual application the recv() call gets stuck indefinitely. My fortran application writes an integer with "write(,) i", but this for some reason never reaches python :-( Is there a way I can send you the fortran code I'm using? – TM5 Nov 15 '10 at 12:59

I think that you only add one linebreak here:

p.write(' '.join(["%.10f"%k for k in x]) + os.linesep)

instead of adding one per line.

share|improve this answer
Yes, I only add one linebreak at the end, because the real fortran code looks like: read (*,*) x(1:n_state) where n_state is set to (say) 100,000. But I've also seen that as far as the read statement goes, it doesn't make a difference whether I add linebreaks between numbers or not. P.S. - Why don't the formatting rules in the original post not work for comments? For example, for this comment I couldn't indent by four spaces to signify a piece of code. Nor could I make a separate paragraph for this "P.S." – TM5 Aug 19 '10 at 7:40

Looks like you're timing out (default timeout, I believe, 30 seconds) because preparing, sending, receiving, and processing that much data is taking a lot of time. Per the docs, timeout= is an optional named parameter to the expect method, which you're not calling -- maybe there's an undocumented way to set the default timeout in the initializer, which could be found by poring over the sources (or, worst case, created by hacking those sources).

If the Fortran program read and saved (say) 100 items at a time, with a prompt, syncing up would become enormously easier. Could you modify your Fortran code for the purpose, or would you rather go for the undocumented / hack approach?

share|improve this answer
I doubt that reading and writing the data is taking too much time. When I have 303 numbers, the transfer from python to fortran takes less than a second (I timed it). When I have 304 numbers, it times out after 30 seconds. AFAIK, this magic number 303 depends on the number of digits I write per number, so I think it's a question of number of bytes. – TM5 Aug 19 '10 at 7:51
@TM5, looks like some buffer is filling up and not being properly flushed/read (at least not within the 30 seconds' timeout). Changing the Fortran code to accept 100 numbers at a time rather than needed them all in one big gulp, as I suggested in the 2nd paragraph, sounds more and more like the simplest solution; and you're not telling us whether it's feasible in your case. – Alex Martelli Aug 19 '10 at 15:17
my real state vector contains 10,000 elements (typically), and it varies from run to run. So yes, it's possible to modify the fortran and python applications to break up the I/O into chunks, but then I have to pass an "end-of-data" signal, and it's not very elegant. I'd like to find a more elegant approach. Is there no other way to set up an inter-process communication? – TM5 Oct 27 '10 at 15:37

Here's a huge simplification: Break your Python into two things.

python | squarer | python

The squarer application is your Fortran code. Reads from stdin, writes to stdout.

Your is your Python that does

import sys
sys.stdout.write(' '.join(["%.10f"%k for k in x]) + os.linesep)

Or, perhaps something a tiny bit simpler, i.e.

from __future__ import print_function
print( ' '.join(["{0:.10f}".format(k) for k in x]) )

And your is something like this.

import fileinput
for line in fileinput.input():
    # process the line 

Separating source, squarer and sink gets you 3 separate processes (instead of 2) and will use more cores. More cores == more concurrency == more fun.

share|improve this answer
Good suggestion, thanks. But won't work for me, because for my application squarer is actually an optimizer that reads a state vector (many variables) and suggests a new one. The python script feeds the optimizer the current vector, accepts the new one, does some simulations with it, and re-feeds the optimizer the results of this simulation. So and for me would be the same script, and would need to know each other's variables and so on. – TM5 Aug 19 '10 at 7:48
@TM5: Does this loop indefinitely? Is there an upper bound on how many times this can run? What's the original source for the data, separate from the results of a simulation? You're initial requirements don't reflect any of this complexity. – S.Lott Aug 19 '10 at 10:05
No, it does not loop indefinitely, but the exit condition can be determined either by python or fortran. For the moment, let's assume that fortran determines the termination condition. I'm afraid I don't understand what you mean by "original source of the data". Basically, the steps are as follows: (1) python performs simulation on x0, calculates f'(x0), feeds it to fortran, (2) fortran suggests a new x1 based on x0 and f'(x0), feeds it to python, (3) go back to step 1 with x0 replaced by x1. – TM5 Oct 27 '10 at 15:40

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.