With Python's multiprocessing, would it make sense to have a Pool with a bunch of ThreadPools within them? Say I have something like:

def task(path):
  # i/o bound
  image = load(path)
  # cpu bound but only takes up 1/10 of the time of the i/o bound stuff
  image = preprocess(img)
  # i/o bound
  save(image, path)

Then I'd want to process a list of paths path_list. If I use ThreadPool I still end up hitting a ceiling because of the cpu bound bit. If I use a Pool I spend too much dead time waiting for i/o. So wouldn't it be best to split path_list over multiple processes that each in turn use multiple threads?

Another shorter way of restating my example is what if I have a method that should be multithreaded because it's i/o bound but I also want to make use of many cpu cores? If I use a Pool I'm using each core up for a single task which is i/o bound. If I use a ThreadPool I only get to use one core.

  • 4
    I don't have time to write out a full answer just now, but structure your code so that the CPU bound work is scheduled in a ProcessPoolExecutor, and the IO bound work is scheduled in a ThreadPoolExecutor. Yes it does make sense to use both in some cases. – wim Mar 18 at 19:57
  • Thanks, that already helps with the "you don't know what you don't know" bit – Alexander Soare Mar 18 at 20:06
  • Another thought to add to the mix is that if you do that, you will end up passing data back and forth between pools. Queues are not miracle performers and you might hit another bottleneck there. Pools implement data transfers as queues and if your files are large (image indicates they might be), you will end up passing the image data through several queues and you would be better off by just choosing one - threads or processes but not passing data between both. – Hannu Mar 18 at 20:17
  • @Hannu thanks for that. To clarify about my particular example snippet. There's no communication between processes there right? path is a string. The function loads from path, does stuff and saves back to it. There's no shared object that needs to be accessed or edited. – Alexander Soare Mar 18 at 20:25
  • 1
    Thanks, but for my taste this would be a bit too thin for an answer and I just wanted to nudge you in the right direction anyway. Still the much broader general question you asked in the title here is certainly worth elaborating on, so I'd suggest you leave the bounty open for somebody interested in answering it. – Darkonaut Mar 19 at 19:08


In this case

In this case, no. Running this task with multiple threads inside multiple processes will cost you unnecessary overhead. Your task is made out of steps that use different hardware components. Each step requires a different amount of threads/processes running it to achieve maximal throughput, and this design limits you by making you allocate the same amount of resources for all steps. You'll probably end up using more processes/threads than you need, and paying with context switches, memory usage and cache misses.

A solution which will reduce this overhead and grant you more control of your resource usage, is to split your task into a pipeline, and allocate a sufficient amount of hardware/OS resources for each step. see "3. Design a solution to achieve that throughput" below for a more detailed design proposal.

In other cases

In some cases, this approach (thread pool within process pool) might be a good choice. Imagine having to execute a large workload of IO-bound tasks in python. It makes sense to use threads, as processes incur more overhead. But if you have enough simultaneous tasks, you'll start seeing many threads waiting for the GIL, which means the latency increases, and the CPU might even turn into a bottleneck. In that case, it makes sense to use more processes, each with another threadpool, and earning more CPU time (assuming you have available cores).

Planning for achieving maximal performance

From now on, I'm assuming your goal is to make maximal use of your hardware in order to achieve a maximal throughput of "tasks". In that case, the answer to your question very much depends on your hardware, and requires a few measurements to be made. I'd recommend to:

  1. Understand your hardware utilization
  2. Identify the bottleneck and estimate the maximal throughput
  3. Design a solution to achieve that throughput
  4. Implement the design, and optimize until you meet your requirements

1. Understand your hardware utilization

In this case, there are a few pieces of hardware involved:

  • The RAM
  • The disk
  • The CPU

Let's look at one "task" and note how it uses the hardware:

  • Disk (read)
  • RAM (write)
  • CPU time
  • RAM (read)
  • Disk (write)

2. Identify the bottleneck and estimate the maximal throughput

To identify the bottleneck, let us calculate the maximum throughput of tasks that each hardware component can provide, assuming usage of them can be completely parallelized. I like to do that using python: (note that I'm using random constants, you'll have to fill in the real data for your setup in order to use it).

# ----------- General consts
input_image_size = 20 * 2 ** 20  # 20MB
output_image_size = 15 * 2 ** 20  # 15MB

# ----------- Disk
# If you have multiple disks and disk access is the bottleneck, you could split the images between them
amount_of_disks = 2
disk_read_rate = 3.5 * 2 ** 30  # 3.5GBps, maximum read rate for a good SSD
disk_write_rate = 2.5 * 2 ** 30  # 2.5GBps, maximum write rate for a good SSD
disk_read_throughput = amount_of_disks * disk_read_rate / input_image_size 
disk_write_throughput = amount_of_disks * disk_write_rate / output_image_size

# ----------- RAM
ram_bandwidth = 30 * 2 ** 30  # Assuming here similar write and read rates of 30GBps
# assuming you are working in userspace and not using a userspace filesystem,
# data is first read into kernel space, then copied to userspace. So in total,
# two writes and one read.
userspace_ram_bandwidth = ram_bandwidth / 3
ram_read_throughput = userspace_ram_bandwidth / input_image_size 
ram_write_throughput = userspace_ram_bandwidth / output_image_size

# ----------- CPU
# We decrease one core, as at least some scheduling code and kernel code is going to run
core_amount = 8 - 1
# The measured amount of times a single core can run the preprocess function in a second.
# Assuming that you are not planning to optimize the preprocess function as well.
preprocess_function_rate = 1000
cpu_throughput = core_amount * preprocess_function_rate

# ----------- Conclusions
min_throughput, bottleneck_name = min([(disk_read_throughput, 'Disk read'),
                                       (disk_write_throughput, 'Disk write'),
                                       (ram_read_throughput, 'RAM read'),
                                       (ram_write_throughput, 'RAM write'),
                                       (cpu_throughput, 'CPU')])
cpu_cores_needed = min_throughput / preprocess_function_rate
print(f'Throughput: {min_throughput:.1f} tasks per second\n'
      f'Bottleneck: {bottleneck_name}\n'
      f'Worker amount: {cpu_cores_needed:.1f}')

This code outputs:

Throughput: 341.3 tasks per second
Bottleneck: Disk write
Worker amount: 0.3

That means:

  • The maximum rate we can achieve is around 341.3 tasks per second
  • The disk is the bottleneck. You might be able to increase your performance by, for example:
    • Buying more disks
    • Using ramfs or a similar solution that avoids using the disk altogether
  • In a system where all the steps in task are executed in parallel, you won't need to dedicate more than one core for running preprocess. (In python that means you'll probably need only one process, and threads or asyncio would suffice to achieve concurrency with other steps)

Note: the numbers are lying

This kind of estimation is very hard to get right. It's hard not to forget things in the calculation itself, and hard to achieve good measurements for the constants. For example, there is a big issue with the current calculation - reads and writes are not orthogonal. We assume in our calculation that everything is happening in parallel, so constants like disk_read_rate have to account for writes occurring simultaneously to the reads. The RAM rates should probably be decreased by at least 50%.

3. Design a solution to achieve that throughput

Similarly to what you'd offered in your question, my initial design would be something like:

  • Have a pool of workers load the images and send them on a queue to the next step (we'll need to be reading using multiple cores to use all available memory bandwidth)
  • Have a pool of workers process the images and send the results on a queue (the amount of workers should be chosen according to the output of the script above. For the current result, the number is 1)
  • Have a pool of workers save the processed images to the disk.

The actual implementation details will vary according to different technical constraints and overheads you will run into while implementing the solution. Without further details and measurements it is hard to guess what they will be exactly.

4. Implement the design, and optimize until you meet your requirements

Good luck, and be warned that even if you did a good job at estimating the maximal throughput, it might be very hard to get there. Comparing the maximum rate to your speed requirements might give you a good idea of the amount of effort needed. For example, if the rate you need is 10x slower than the maximum rate, you might be done pretty quickly. But if it is only 2x slower, you might want to consider doubling your hardware and start preparing for some hard work :)

  • 2
    Very well written, thank you sir – maor10 Mar 22 at 10:06
  • Thanks for your response. The reason I haven't accepted it is because it seems to answer the question "How should I find bottlenecks and approach optimisation with multiprocessing?" I'm really just asking about one concept. Darkonaut's comment has been the most useful so far, even though it technically doesn't answer my question as it's worded in the title – Alexander Soare Mar 24 at 8:19
  • I have updated my post to contain a more direct answer to your question. – kmaork Mar 26 at 13:38

kmarok's answer is good technical one. But, I would also consider the quote "Premature optimization is the root of all evil" concept.

In short, yes, it make sense. But, do you really need to?

Optimization is a trade off. You compromise code simplicity for better performance. Code simplicity is important; you'll need to further develop, debug, and test your software in the future. This will cost you in time. Simplicity buys you time. You need to be aware of the trade-off when you optimize.

I would first write a multithreaded version and measure it using your hardware. Then I would try the multiprocessing version, and measure it too.

Does any of the versions, is good enough? It might be. If so, you just made your software simpler, more readable and better maintainable.

  • Well, really Darkonauts comment was the most useful for me as it gave me precisely what I was looking for, even though it's not an exact answer to the exact question in my title. kmaork's answer was more general than I needed and didn't really answer my question. Your's is similar. Both of these answers are trying to advise me on a general approach towards optimisation with multiprocessing. I just wanted to know about a basic concept. – Alexander Soare Mar 24 at 8:16

Chen's and Kamaork's answers resume most of what is needed to know, but there are 2 missing ideas:

  • Your code will be A process and not THE process, this means that you need to account of how much resources you have left and not how many you can have (it can even happen within your process, threads are not ilimited); this deadly problem happend to me leaving me with less than half of a celeron for a gui, not good.
  • The biggest optimization with threads you can do is "prediction" (this refers more specifically to when stuff happens), you can chain the threads in a better way when you know how much it takes to compite and its a consisten wait, reading about the tcp window may give you a better idea of how a delay can be optimized by expecting it and not by forcing it.

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