| Metadata-Version: 2.1 |
| Name: threadpoolctl |
| Version: 3.5.0 |
| Summary: threadpoolctl |
| Home-page: https://github.com/joblib/threadpoolctl |
| License: BSD-3-Clause |
| Author: Thomas Moreau |
| Author-email: thomas.moreau.2010@gmail.com |
| Requires-Python: >=3.8 |
| Description-Content-Type: text/markdown |
| Classifier: Intended Audience :: Developers |
| Classifier: License :: OSI Approved :: BSD License |
| Classifier: Programming Language :: Python :: 3 |
| Classifier: Programming Language :: Python :: 3.8 |
| Classifier: Programming Language :: Python :: 3.9 |
| Classifier: Programming Language :: Python :: 3.10 |
| Classifier: Programming Language :: Python :: 3.11 |
| Classifier: Programming Language :: Python :: 3.12 |
| Classifier: Topic :: Software Development :: Libraries :: Python Modules |
|
|
| # Thread-pool Controls [. |
|
|
| Fine control of the underlying thread-pool size can be useful in |
| workloads that involve nested parallelism so as to mitigate |
| oversubscription issues. |
|
|
| ## Installation |
|
|
| - For users, install the last published version from PyPI: |
|
|
| ```bash |
| pip install threadpoolctl |
| ``` |
|
|
| - For contributors, install from the source repository in developer |
| mode: |
|
|
| ```bash |
| pip install -r dev-requirements.txt |
| flit install --symlink |
| ``` |
|
|
| then you run the tests with pytest: |
|
|
| ```bash |
| pytest |
| ``` |
|
|
| ## Usage |
|
|
| ### Command Line Interface |
|
|
| Get a JSON description of thread-pools initialized when importing python |
| packages such as numpy or scipy for instance: |
|
|
| ``` |
| python -m threadpoolctl -i numpy scipy.linalg |
| [ |
| { |
| "filepath": "/home/ogrisel/miniconda3/envs/tmp/lib/libmkl_rt.so", |
| "prefix": "libmkl_rt", |
| "user_api": "blas", |
| "internal_api": "mkl", |
| "version": "2019.0.4", |
| "num_threads": 2, |
| "threading_layer": "intel" |
| }, |
| { |
| "filepath": "/home/ogrisel/miniconda3/envs/tmp/lib/libiomp5.so", |
| "prefix": "libiomp", |
| "user_api": "openmp", |
| "internal_api": "openmp", |
| "version": null, |
| "num_threads": 4 |
| } |
| ] |
| ``` |
|
|
| The JSON information is written on STDOUT. If some of the packages are missing, |
| a warning message is displayed on STDERR. |
|
|
| ### Python Runtime Programmatic Introspection |
|
|
| Introspect the current state of the threadpool-enabled runtime libraries |
| that are loaded when importing Python packages: |
|
|
| ```python |
| >>> from threadpoolctl import threadpool_info |
| >>> from pprint import pprint |
| >>> pprint(threadpool_info()) |
| [] |
| |
| >>> import numpy |
| >>> pprint(threadpool_info()) |
| [{'filepath': '/home/ogrisel/miniconda3/envs/tmp/lib/libmkl_rt.so', |
| 'internal_api': 'mkl', |
| 'num_threads': 2, |
| 'prefix': 'libmkl_rt', |
| 'threading_layer': 'intel', |
| 'user_api': 'blas', |
| 'version': '2019.0.4'}, |
| {'filepath': '/home/ogrisel/miniconda3/envs/tmp/lib/libiomp5.so', |
| 'internal_api': 'openmp', |
| 'num_threads': 4, |
| 'prefix': 'libiomp', |
| 'user_api': 'openmp', |
| 'version': None}] |
| |
| >>> import xgboost |
| >>> pprint(threadpool_info()) |
| [{'filepath': '/home/ogrisel/miniconda3/envs/tmp/lib/libmkl_rt.so', |
| 'internal_api': 'mkl', |
| 'num_threads': 2, |
| 'prefix': 'libmkl_rt', |
| 'threading_layer': 'intel', |
| 'user_api': 'blas', |
| 'version': '2019.0.4'}, |
| {'filepath': '/home/ogrisel/miniconda3/envs/tmp/lib/libiomp5.so', |
| 'internal_api': 'openmp', |
| 'num_threads': 4, |
| 'prefix': 'libiomp', |
| 'user_api': 'openmp', |
| 'version': None}, |
| {'filepath': '/home/ogrisel/miniconda3/envs/tmp/lib/libgomp.so.1.0.0', |
| 'internal_api': 'openmp', |
| 'num_threads': 4, |
| 'prefix': 'libgomp', |
| 'user_api': 'openmp', |
| 'version': None}] |
| ``` |
|
|
| In the above example, `numpy` was installed from the default anaconda channel and comes |
| with MKL and its Intel OpenMP (`libiomp5`) implementation while `xgboost` was installed |
| from pypi.org and links against GNU OpenMP (`libgomp`) so both OpenMP runtimes are |
| loaded in the same Python program. |
|
|
| The state of these libraries is also accessible through the object oriented API: |
|
|
| ```python |
| >>> from threadpoolctl import ThreadpoolController, threadpool_info |
| >>> from pprint import pprint |
| >>> import numpy |
| >>> controller = ThreadpoolController() |
| >>> pprint(controller.info()) |
| [{'architecture': 'Haswell', |
| 'filepath': '/home/jeremie/miniconda/envs/dev/lib/libopenblasp-r0.3.17.so', |
| 'internal_api': 'openblas', |
| 'num_threads': 4, |
| 'prefix': 'libopenblas', |
| 'threading_layer': 'pthreads', |
| 'user_api': 'blas', |
| 'version': '0.3.17'}] |
| |
| >>> controller.info() == threadpool_info() |
| True |
| ``` |
|
|
| ### Setting the Maximum Size of Thread-Pools |
|
|
| Control the number of threads used by the underlying runtime libraries |
| in specific sections of your Python program: |
|
|
| ```python |
| >>> from threadpoolctl import threadpool_limits |
| >>> import numpy as np |
| |
| >>> with threadpool_limits(limits=1, user_api='blas'): |
| ... # In this block, calls to blas implementation (like openblas or MKL) |
| ... # will be limited to use only one thread. They can thus be used jointly |
| ... # with thread-parallelism. |
| ... a = np.random.randn(1000, 1000) |
| ... a_squared = a @ a |
| ``` |
|
|
| The threadpools can also be controlled via the object oriented API, which is especially |
| useful to avoid searching through all the loaded shared libraries each time. It will |
| however not act on libraries loaded after the instantiation of the |
| `ThreadpoolController`: |
|
|
| ```python |
| >>> from threadpoolctl import ThreadpoolController |
| >>> import numpy as np |
| >>> controller = ThreadpoolController() |
| |
| >>> with controller.limit(limits=1, user_api='blas'): |
| ... a = np.random.randn(1000, 1000) |
| ... a_squared = a @ a |
| ``` |
|
|
| ### Restricting the limits to the scope of a function |
|
|
| `threadpool_limits` and `ThreadpoolController` can also be used as decorators to set |
| the maximum number of threads used by the supported libraries at a function level. The |
| decorators are accessible through their `wrap` method: |
|
|
| ```python |
| >>> from threadpoolctl import ThreadpoolController, threadpool_limits |
| >>> import numpy as np |
| >>> controller = ThreadpoolController() |
| |
| >>> @controller.wrap(limits=1, user_api='blas') |
| ... # or @threadpool_limits.wrap(limits=1, user_api='blas') |
| ... def my_func(): |
| ... # Inside this function, calls to blas implementation (like openblas or MKL) |
| ... # will be limited to use only one thread. |
| ... a = np.random.randn(1000, 1000) |
| ... a_squared = a @ a |
| ... |
| ``` |
|
|
| ### Switching the FlexiBLAS backend |
|
|
| `FlexiBLAS` is a BLAS wrapper for which the BLAS backend can be switched at runtime. |
| `threadpoolctl` exposes python bindings for this feature. Here's an example but note |
| that this part of the API is experimental and subject to change without deprecation: |
|
|
| ```python |
| >>> from threadpoolctl import ThreadpoolController |
| >>> import numpy as np |
| >>> controller = ThreadpoolController() |
| |
| >>> controller.info() |
| [{'user_api': 'blas', |
| 'internal_api': 'flexiblas', |
| 'num_threads': 1, |
| 'prefix': 'libflexiblas', |
| 'filepath': '/usr/local/lib/libflexiblas.so.3.3', |
| 'version': '3.3.1', |
| 'available_backends': ['NETLIB', 'OPENBLASPTHREAD', 'ATLAS'], |
| 'loaded_backends': ['NETLIB'], |
| 'current_backend': 'NETLIB'}] |
| |
| # Retrieve the flexiblas controller |
| >>> flexiblas_ct = controller.select(internal_api="flexiblas").lib_controllers[0] |
| |
| # Switch the backend with one predefined at build time (listed in "available_backends") |
| >>> flexiblas_ct.switch_backend("OPENBLASPTHREAD") |
| >>> controller.info() |
| [{'user_api': 'blas', |
| 'internal_api': 'flexiblas', |
| 'num_threads': 4, |
| 'prefix': 'libflexiblas', |
| 'filepath': '/usr/local/lib/libflexiblas.so.3.3', |
| 'version': '3.3.1', |
| 'available_backends': ['NETLIB', 'OPENBLASPTHREAD', 'ATLAS'], |
| 'loaded_backends': ['NETLIB', 'OPENBLASPTHREAD'], |
| 'current_backend': 'OPENBLASPTHREAD'}, |
| {'user_api': 'blas', |
| 'internal_api': 'openblas', |
| 'num_threads': 4, |
| 'prefix': 'libopenblas', |
| 'filepath': '/usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.8.so', |
| 'version': '0.3.8', |
| 'threading_layer': 'pthreads', |
| 'architecture': 'Haswell'}] |
| |
| # It's also possible to directly give the path to a shared library |
| >>> flexiblas_controller.switch_backend("/home/jeremie/miniforge/envs/flexiblas_threadpoolctl/lib/libmkl_rt.so") |
| >>> controller.info() |
| [{'user_api': 'blas', |
| 'internal_api': 'flexiblas', |
| 'num_threads': 2, |
| 'prefix': 'libflexiblas', |
| 'filepath': '/usr/local/lib/libflexiblas.so.3.3', |
| 'version': '3.3.1', |
| 'available_backends': ['NETLIB', 'OPENBLASPTHREAD', 'ATLAS'], |
| 'loaded_backends': ['NETLIB', |
| 'OPENBLASPTHREAD', |
| '/home/jeremie/miniforge/envs/flexiblas_threadpoolctl/lib/libmkl_rt.so'], |
| 'current_backend': '/home/jeremie/miniforge/envs/flexiblas_threadpoolctl/lib/libmkl_rt.so'}, |
| {'user_api': 'openmp', |
| 'internal_api': 'openmp', |
| 'num_threads': 4, |
| 'prefix': 'libomp', |
| 'filepath': '/home/jeremie/miniforge/envs/flexiblas_threadpoolctl/lib/libomp.so', |
| 'version': None}, |
| {'user_api': 'blas', |
| 'internal_api': 'openblas', |
| 'num_threads': 4, |
| 'prefix': 'libopenblas', |
| 'filepath': '/usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.8.so', |
| 'version': '0.3.8', |
| 'threading_layer': 'pthreads', |
| 'architecture': 'Haswell'}, |
| {'user_api': 'blas', |
| 'internal_api': 'mkl', |
| 'num_threads': 2, |
| 'prefix': 'libmkl_rt', |
| 'filepath': '/home/jeremie/miniforge/envs/flexiblas_threadpoolctl/lib/libmkl_rt.so.2', |
| 'version': '2024.0-Product', |
| 'threading_layer': 'gnu'}] |
| ``` |
|
|
| You can observe that the previously linked OpenBLAS shared object stays loaded by |
| the Python program indefinitely, but FlexiBLAS itself no longer delegates BLAS calls |
| to OpenBLAS as indicated by the `current_backend` attribute. |
| ### Writing a custom library controller |
|
|
| Currently, `threadpoolctl` has support for `OpenMP` and the main `BLAS` libraries. |
| However it can also be used to control the threadpool of other native libraries, |
| provided that they expose an API to get and set the limit on the number of threads. |
| For that, one must implement a controller for this library and register it to |
| `threadpoolctl`. |
|
|
| A custom controller must be a subclass of the `LibController` class and implement |
| the attributes and methods described in the docstring of `LibController`. Then this |
| new controller class must be registered using the `threadpoolctl.register` function. |
| An complete example can be found [here]( |
| https: |
|
|
| ### Sequential BLAS within OpenMP parallel region |
|
|
| When one wants to have sequential BLAS calls within an OpenMP parallel region, it's |
| safer to set `limits="sequential_blas_under_openmp"` since setting `limits=1` and |
| `user_api="blas"` might not lead to the expected behavior in some configurations |
| (e.g. OpenBLAS with the OpenMP threading layer |
| https: |
|
|
| ### Known Limitations |
|
|
| - `threadpool_limits` can fail to limit the number of inner threads when nesting |
| parallel loops managed by distinct OpenMP runtime implementations (for instance |
| libgomp from GCC and libomp from clang/llvm or libiomp from ICC). |
|
|
| See the `test_openmp_nesting` function in [tests/test_threadpoolctl.py]( |
| https: |
| for an example. More information can be found at: |
| https: |
|
|
| Note however that this problem does not happen when `threadpool_limits` is |
| used to limit the number of threads used internally by BLAS calls that are |
| themselves nested under OpenMP parallel loops. `threadpool_limits` works as |
| expected, even if the inner BLAS implementation relies on a distinct OpenMP |
| implementation. |
|
|
| - Using Intel OpenMP (ICC) and LLVM OpenMP (clang) in the same Python program |
| under Linux is known to cause problems. See the following guide for more details |
| and workarounds: |
| https: |
|
|
| - Setting the maximum number of threads of the OpenMP and BLAS libraries has a global |
| effect and impacts the whole Python process. There is no thread level isolation as |
| these libraries do not offer thread-local APIs to configure the number of threads to |
| use in nested parallel calls. |
|
|
|
|
| ## Maintainers |
|
|
| To make a release: |
|
|
| - Bump the version number (`__version__`) in `threadpoolctl.py` and update the |
| release date in `CHANGES.md`. |
|
|
| - Build the distribution archives: |
|
|
| ```bash |
| pip install flit |
| flit build |
| ``` |
|
|
| and check the contents of `dist/`. |
|
|
| - If everything is fine, make a commit for the release, tag it and push the |
| tag to github: |
|
|
| ```bash |
| git tag -a X.Y.Z |
| git push git@github.com:joblib/threadpoolctl.git X.Y.Z |
| ``` |
|
|
| - Upload the wheels and source distribution to PyPI using flit. Since PyPI doesn't |
| allow password authentication anymore, the username needs to be changed to the |
| generic name `__token__`: |
|
|
| ```bash |
| FLIT_USERNAME=__token__ flit publish |
| ``` |
|
|
| and a PyPI token has to be passed in place of the password. |
|
|
| - Create a PR for the release on the [conda-forge feedstock](https: |
|
|
| - Publish the release on github. |
|
|
| ### Credits |
|
|
| The initial dynamic library introspection code was written by @anton-malakhov |
| for the smp package available at https: |
|
|
| threadpoolctl extends this for other operating systems. Contrary to smp, |
| threadpoolctl does not attempt to limit the size of Python multiprocessing |
| pools (threads or processes) or set operating system-level CPU affinity |
| constraints: threadpoolctl only interacts with native libraries via their |
| public runtime APIs. |
|
|
|
|