I'm using pandas on a web server (apache + modwsgi + django) and have an hard-to-reproduce bug which now I discovered is caused by pandas not being thread-safe.

After a lot of code reduction I finally found a short standalone program which can be used to reproduce the problem. You can see it below.

The point is: contrary to the answer of this question this example shows that pandas can crash even with very simple operations which do not modify a dataframe. I'm not able to imagine how this simple code snippet could possibly be unsafe with threads...

The question is about using pandas and numpy in a web server. Is it possible? How am I supposed to fix my code using pandas? (an example of lock usage would be helpful)

Here is the code which causes a Segmentation Fault:

import threading
import pandas as pd
import numpy as np

def let_crash(crash=True):
    t = 0.02 * np.arange(100000) # ok con 10000                                                                               
    data = pd.DataFrame({'t': t})
    if crash:
        data['t'] * 1.5  # CRASH
        data['t'].values * 1.5  # THIS IS OK!

if __name__ == '__main__':
        threads = []
        for i in range(100):
            if True:  # asynchronous                                                                                          
                t = threading.Thread(target=let_crash, args = ())
                t.daemon = True
            else:  # synchronous                                                                                              
        for t in threads:

My environment: python 2.7.3, numpy 1.8.0, pandas 0.13.1

  • 1
    Does not crash for me. Python 2.7.6, numpy 1.8.2, pandas 0.14.1. I tried the main loop until 10000. Sep 24, 2014 at 4:22

2 Answers 2


see caveat in the docs here: http://pandas.pydata.org/pandas-docs/dev/gotchas.html#thread-safety

pandas is not thread safe because the underlying copy mechanism is not. Numpy I believe has an atomic copy operation, but pandas has a layer above this.

Copy is the basis of pandas operations (as most operations generate a new object to return to the user)

It is not trivial to fix this and would come with a pretty heavy perf cost so would need a bit of work to deal with this properly.

Easiest is simply not to share objects across threads or lock them on usage.

  • 1
    But no objects are being shared, his DataFrames are local to each thread... This looks terribly similar to this and the solution there was to be more careful about releasing the GIL, see here. Are you sure you are not releasing the GIL somewhere where a call to a Python API function is needed?
    – Jaime
    Sep 11, 2014 at 11:20
  • nope - these all involve numpy/Numexpr (no c or cython code involved here) so could be a problem there
    – Jeff
    Sep 11, 2014 at 12:11
  • Actually, their IS some cython code involved, but in the column access. data['t'] for various types of checking / indexing. Should be thread safe though.
    – Jeff
    Sep 11, 2014 at 12:23
  • @Jaime when you speak of a "solution" you refer to my code or maybe to the underlying pandas/numpy code? Do you think I should notify this as an issue to the pandas/numpy developers? Sep 11, 2014 at 13:05
  • If Jeff is who I think he is, there now is at least one pandas and one numpy developer aware of this... It may still be worth creating a specific issue in github, see here. What I meant by solution, is that someone was having a similar segfault issue with threading and operations with a specific numpy dtype in numpy 1.8. That was a bug that is now fixed in numpy 1.9. The links in my comment point to the issue and the fix.
    – Jaime
    Sep 11, 2014 at 14:07

Configure mod_wsgi to run in a single thread mode.

WSGIDaemonProcess mysite processes=5 threads=1
WSGIProcessGroup mysite
WSGIApplicationGroup %{GLOBAL}

In this case it is using mod_wsgi daemon mode so that processes/threads can be set independently on whatever Apache MPM you are using.

  • I have already tried this solution, but threads=1 make the server hang when some request take a long time to be served. Sep 12, 2014 at 19:57
  • 1
    The processes provide the concurrency in that case and why you have more than one process. How many processes did you actually specify? What is the average running time for your requests and what is your throughput? You need to know these to be able to properly provision enough capacity. If only specific URLs have this issue with multithreading, then you can vertically partition your application across multiple mod_wsgi daemon process groups and stick the unsafe URLs in single threaded processes. See the following post: blog.dscpl.com.au/2014/02/… Sep 12, 2014 at 20:24
  • This is interesting. I was convinced that threads=1 was the wrong thing to do... I don't know where to look for the number of processes, I have the default configuration of apache. But pstree tells me there are plenty (more than 100). The problem is with file uploads... when a client starts a file upload (which may take minutes) the server becomes irresponsive. I thought that there was a correlation with the postgresql transaction and tried to use manual-commit and things like that, but without success. Sep 13, 2014 at 6:08
  • I thought a possible solution was to use two server processes, with one dedicated to file uploads. But I was afraid that two uploads at the same time would anyway block each other. Eventually I was able to find the place where the multithreading was broken (the example shown in my question) and rewriting that part using numpy instead of pandas has solved for now. But of course the problem can raise again in some other part of my code. Sep 13, 2014 at 6:13

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