.. _global_state: **************************** Global Configuration Options **************************** NumPy has a few import-time, compile-time, or runtime configuration options which change the global behaviour. Most of these are related to performance or for debugging purposes and will not be interesting to the vast majority of users. Performance-related options =========================== Number of threads used for linear algebra ----------------------------------------- NumPy itself is normally intentionally limited to a single thread during function calls, however it does support multiple Python threads running at the same time. Note that for performant linear algebra NumPy uses a BLAS backend such as OpenBLAS or MKL, which may use multiple threads that may be controlled by environment variables such as ``OMP_NUM_THREADS`` depending on what is used. One way to control the number of threads is the package `threadpoolctl `_ madvise hugepage on Linux ------------------------- When working with very large arrays on modern Linux kernels, you can experience a significant speedup when `transparent hugepage `_ is used. The current system policy for transparent hugepages can be seen by:: cat /sys/kernel/mm/transparent_hugepage/enabled When set to ``madvise`` NumPy will typically use hugepages for a performance boost. This behaviour can be modified by setting the environment variable:: NUMPY_MADVISE_HUGEPAGE=0 or setting it to ``1`` to always enable it. When not set, the default is to use madvise on Kernels 4.6 and newer. These kernels presumably experience a large speedup with hugepage support. This flag is checked at import time. SIMD feature selection ---------------------- Setting ``NPY_DISABLE_CPU_FEATURES`` will exclude simd features at runtime. See :ref:`runtime-simd-dispatch`. Debugging-related options ========================= Warn if no memory allocation policy when deallocating data ---------------------------------------------------------- Some users might pass ownership of the data pointer to the ``ndarray`` by setting the ``OWNDATA`` flag. If they do this without setting (manually) a memory allocation policy, the default will be to call ``free``. If ``NUMPY_WARN_IF_NO_MEM_POLICY`` is set to ``"1"``, a ``RuntimeWarning`` will be emitted. A better alternative is to use a ``PyCapsule`` with a deallocator and set the ``ndarray.base``. .. versionchanged:: 1.25.2 This variable is only checked on the first import.