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311 lines
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Markdown
311 lines
11 KiB
Markdown
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---
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layout: post
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title: "Release the GIL"
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description: "Strategies for Parallelism in Python"
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category:
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tags: [python]
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---
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Complaining about the [Global Interpreter Lock](https://wiki.python.org/moin/GlobalInterpreterLock) seems like a rite of passage for Python developers. It's easy to make fun of a design decision made back before multi-core CPU's were widely available, but in truth, it's generally [Good Enough](https://wiki.c2.com/?PrematureOptimization). Besides, it's not hard to start a [new process](https://docs.python.org/3/library/multiprocessing.html) and use message passing to synchronize. As an API design metaphor, message passing is great.
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Still, one often wonders what could be possible if only the GIL wasn't holding them back. The thought of having only a single active interpreter thread seems so old-fashioned in an era where NodeJS and Go allow scheduling $M$ coroutines to $N$ system threads. Why can't Python learn to break free?
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Presented below are some strategies for breaking free of the GIL's icy grip. Bear in mind that these are just the tools, and no claim is made about whether it's a good idea to use them. Very often, unlocking the GIL is an [XY problem](https://en.wikipedia.org/wiki/XY_problem); you want application performance, and the GIL seems like an obvious bottleneck. Just remember that you're intentionally breaking Python's memory model, and here be dragons.
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```python
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%load_ext Cython
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from numba import jit
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N = 1_000_000_000
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```
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# Cython
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Put simply, [Cython](https://cython.org/) is a programming language that looks a lot like Python, gets translated to C or C++ before compiling, and has a lot of tools to interface with the [CPython](https://en.wikipedia.org/wiki/CPython) API. It's great for building Python wrappers to C and C++ libraries, writing optimized code for numerical processing, and a bunch of other things. As Coffeescript is to Javascript, so is Cython to C.
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This article will focus on two specific utilities provided by Cython:
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- The `nogil` [function annotation](https://cython.readthedocs.io/en/latest/src/userguide/external_C_code.html#declaring-a-function-as-callable-without-the-gil) marks a function as safe to use without the GIL
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- The `with nogil` [context manager](https://cython.readthedocs.io/en/latest/src/userguide/external_C_code.html#releasing-the-gil) explicitly unlocks the CPython GIL while in that block
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Whenever Cython code runs inside a `with nogil` block, the main Python process is allowed to continue doing work elsewhere. We'll calculate the Fibonacci sequence to demonstrate this principle in action:
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```python
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%%cython
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# Annotating a function with `nogil` indicates only that it is safe
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# to call in a `with nogil` block. It *does not* release the GIL.
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cdef unsigned long fibonacci(unsigned long n) nogil:
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if n <= 1:
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return n
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cdef unsigned long a = 0, b = 1, c = 0
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c = a + b
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for _i in range(2, n):
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a = b
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b = c
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c = a + b
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return c
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def cython_nogil(unsigned long n):
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# Explicitly release the GIL before calling `fibonacci`
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with nogil:
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value = fibonacci(n)
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return value
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def cython_gil(unsigned long n):
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# Because the GIL is not explicitly released, it implicitly
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# remains acquired.
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return fibonacci(n)
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```
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First, let's time how long it takes Cython to calculate the billionth Fibonacci number:
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```python
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%%time
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_ = cython_gil(N);
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```
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CPU times: user 365 ms, sys: 0 ns, total: 365 ms
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Wall time: 372 ms
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```python
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%%time
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_ = cython_nogil(N);
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```
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CPU times: user 381 ms, sys: 0 ns, total: 381 ms
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Wall time: 388 ms
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Both versions (with and without GIL) take approximately the same amount of time to run. If we run them in parallel, *even though two threads are used*, we expect the time to double because only one thread can be active at a time:
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```python
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%%time
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from threading import Thread
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# Create the two threads to run on
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t1 = Thread(target=cython_gil, args=[N])
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t2 = Thread(target=cython_gil, args=[N])
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# Start the threads
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t1.start(); t2.start()
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# Wait for the threads to finish
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t1.join(); t2.join()
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```
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CPU times: user 641 ms, sys: 5.62 ms, total: 647 ms
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Wall time: 645 ms
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However, if one thread releases the GIL, the second thread is free to acquire the GIL and perform its processing in parallel:
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```python
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%%time
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t1 = Thread(target=cython_nogil, args=[N])
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t2 = Thread(target=cython_gil, args=[N])
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t1.start(); t2.start()
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t1.join(); t2.join()
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```
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CPU times: user 717 ms, sys: 372 µs, total: 718 ms
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Wall time: 358 ms
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Keep in mind that **the order in which threads are started matters**!
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```python
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%%time
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# Note that the GIL-locked version is started first
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t1 = Thread(target=cython_gil, args=[N])
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t2 = Thread(target=cython_nogil, args=[N])
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t1.start(); t2.start()
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t1.join(); t2.join()
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```
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CPU times: user 667 ms, sys: 0 ns, total: 667 ms
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Wall time: 672 ms
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Even though the second thread releases the GIL lock, it can't start until the first has completed, thus the overall runtime is double that of the previous example.
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Finally, be aware that attempting to unlock the GIL from a thread that doesn't own it will crash the **interpreter**, not just the thread attempting the unlock:
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```python
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%%cython
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cdef int cython_recurse(int n) nogil:
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if n <= 0:
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return 0
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with nogil:
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return cython_recurse(n - 1)
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cython_recurse(2)
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```
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Output:
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```text
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Fatal Python error: PyEval_SaveThread: NULL tstate
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Thread 0x00007f499effd700 (most recent call first):
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File "/home/bspeice/.virtualenvs/release-the-gil/lib/python3.7/site-packages/ipykernel/parentpoller.py", line 39 in run
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File "/usr/lib/python3.7/threading.py", line 926 in _bootstrap_inner
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File "/usr/lib/python3.7/threading.py", line 890 in _bootstrap
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```
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In practice, it's easy to avoid this problem. While `nogil` functions likely shouldn't be managing the GIL themselves, Cython can also [conditionally acquire/release the GIL](https://cython.readthedocs.io/en/latest/src/userguide/external_C_code.html#conditional-acquiring-releasing-the-gil). Cython's documentation for [external C code](https://cython.readthedocs.io/en/latest/src/userguide/external_C_code.html#acquiring-and-releasing-the-gil) contains plenty of information on how to safely manage the GIL.
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To conclude: use Cython's `nogil` annotation to mark functions as safe for calling when the GIL is unlocked, and `with nogil` to actually unlock the GIL. Because Cython refuses to compile code declared `nogil` if it interacts with the CPython API, it is difficult to trigger safety issues at runtime.
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# Numba
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Like Cython, [Numba](https://numba.pydata.org/) is also a "compiled Python." Where Cython works by compiling a Python-like language to C/C++, Numba compiles Python bytecode *directly to machine code* at runtime. Behavior is controlled using a special `@jit` decorator; calling a decorated function first compiles it to machine code, and then runs it. Calling the function a second time won't trigger recompilation unless the argument types change.
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When writing code with Numba, we can unlock the GIL by adding `nogil=True` to the `@jit` decorator. Note that the `nogil` argument is separate from the `nopython` argument; while it is necessary for code to be compiled in [`nopython` mode](http://numba.pydata.org/numba-doc/latest/user/5minguide.html#what-is-nopython-mode) in order to release the GIL, the GIL will remain locked if `nogil=False` (which is the default).
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We'll repeat the same Fibonacci experiment, this time using Numba instead of Cython:
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```python
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# The `int` type annotation is only for humans and is ignored
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# by Numba.
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@jit(nopython=True, nogil=True)
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def numba_nogil(n: int) -> int:
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if n <= 1:
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return n
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a = 0
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b = 1
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c = a + b
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for _i in range(2, n):
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a = b
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b = c
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c = a + b
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return c
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# We have to implement the algorithm multiple times
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# because the annotation only applies to the current
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# function, not functions that it calls.
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@jit(nopython=True)
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def numba_gil(n: int) -> int:
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if n <= 1:
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return n
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a = 0
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b = 1
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c = a + b
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for _i in range(2, n):
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a = b
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b = c
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c = a + b
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return c
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# Call each function once to force compilation; we don't want
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# the timing statistics to include the compilation step.
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numba_nogil(N)
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numba_gil(N);
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```
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We'll perform the same tests as Cython; first, figure out how long it takes to run:
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```python
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%%time
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_ = numba_gil(N)
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```
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CPU times: user 253 ms, sys: 258 µs, total: 253 ms
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Wall time: 251 ms
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Aside: it's not immediately clear why Numba takes ~20% less time to produce the same result as Cython.
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When running two GIL-locked threads in parallel, the result (as expected) takes around twice as long to compute:
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```python
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%%time
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t1 = Thread(target=numba_gil, args=[N])
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t2 = Thread(target=numba_gil, args=[N])
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t1.start(); t2.start()
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t1.join(); t2.join()
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```
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CPU times: user 541 ms, sys: 3.96 ms, total: 545 ms
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Wall time: 541 ms
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And when running the GIL-unlocking thread first, we can run threads in parallel:
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```python
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%%time
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t1 = Thread(target=numba_nogil, args=[N])
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t2 = Thread(target=numba_gil, args=[N])
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t1.start(); t2.start()
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t1.join(); t2.join()
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```
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CPU times: user 551 ms, sys: 7.77 ms, total: 559 ms
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Wall time: 279 ms
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Just like Cython, starting a GIL-locked thread first leads to overall runtime taking twice as long:
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```python
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%%time
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t1 = Thread(target=numba_gil, args=[N])
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t2 = Thread(target=numba_nogil, args=[N])
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t1.start(); t2.start()
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t1.join(); t2.join()
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```
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CPU times: user 524 ms, sys: 0 ns, total: 524 ms
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Wall time: 522 ms
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Finally, unlike Cython, Numba will unlock the GIL if and only if it is currently acquired; recursively calling `@jit(nogil=True)` functions is perfectly safe:
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```python
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from numba import jit
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@jit(nopython=True, nogil=True)
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def numba_recurse(n: int) -> int:
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if n <= 0:
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return 0
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return numba_recurse(n - 1)
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numba_recurse(2);
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```
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# Conclusion
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While unlocking the GIL is often a solution in search of a problem, both Cython and Numba provide relatively easy means of unlocking the GIL. This enables true parallelism (not just [concurrency](https://stackoverflow.com/a/1050257)) that is impossible in vanilla Python.
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Before finishing, it's important to address pain points that will show up applying these techniques to a more realistic project. First, production-ready code in a GIL-free context will likely need to worry about running code with non-trivial data structures; GIL-free functions aren't useful if they're constantly interacting with Python objects. Cython provides [extension types](http://docs.cython.org/en/latest/src/tutorial/cdef_classes.html) to address this, and Numba provides the [`@jitclass`](https://numba.pydata.org/numba-doc/dev/user/jitclass.html) decorator; both are outside the scope of this article. Second, building and distributing applications that make use of Cython/Numba can be complicated. Cython requires running the compiler, linking with external dependencies, and distributing a binary wheel. Because Numba is compiled just-in-time, installation/distribution is far simpler, but errors aren't detected until runtime.
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