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I have a pipeline which at some point splits work into various sub-processes that do the same thing in parallel. Thus their output should go into the same file.

Is it too risky to say all of those processes should write into the same file? Or does python try and retry if it sees that this resource is occupied?

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4 Answers 4

up vote 6 down vote accepted

In general, this is not a good idea and will take a lot of care to get right. Since the writes will have to be serialized, it might also adversely affect scalability.

I'd recommend writing to separate files and merging (or just leaving them as separate files).

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Oh ok! How can it affect scalability? You mean if suddenly a lot of processes want to write into the same file and hold each other up? –  dmeu Oct 19 '11 at 10:46
    
@dmeu: That's basically it. If you have multiple processes wanting to write at the same time, only one of them will be able to, and the rest will just sit there waiting instead of doing useful work. –  NPE Oct 19 '11 at 10:49

This is system dependent. In Windows, the resource is locked and you get an exception. In Linux you can write the file with two processes (written data could be mixed)

Ideally in such cases you should use semaphores to synchronize access to shared resources.

If using semaphores is too heavy for your needs, then the only alternative is to write in separate files...

Edit: As pointed out by eye in a later post, a resource manager is another alternative to handle concurrent writers

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A better solution is to implement a resource manager (writer) to avoid opening the same file twice. This manager could use threading synchronization mechanisms (threading.Lock) to avoid simultaneous access on some platforms.

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Ok i will have to look into this option. This will also work on a cluster, right? meaning on a system where the calculations are made on different computers, but share the filesystem where they write their results –  dmeu Oct 20 '11 at 11:03

How about having all of the different processes write their output into a queue, and have a single process that reads that queue, and writes to the file?

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