For example, here we instantiate many copies of the same actor with varying resource requirements. Note that to create these actors successfully, Ray will need to be started with sufficient CPU resources and the relevant custom resources:
Ray supports resource specific accelerator types. The `accelerator_type` field can be used to force to a task to run on a node with a specific type of accelerator. Under the hood, the accelerator type option is implemented as a custom resource demand of ``"accelerator_type:<type>": 0.001``. This forces the task to be placed on a node with that particular accelerator type available. This also lets the multi-node-type autoscaler know that there is demand for that type of resource, potentially triggering the launch of new nodes providing that accelerator.
Ray Java API supports calling overloaded java functions remotely. However, due to the limitation of Java compiler type inference, one must explicitly cast the method reference to the correct function type. For example, consider the following.
To use Cython code in Ray, run the following from directory ``$RAY_HOME/examples/cython``:
..code-block:: bash
pip install scipy # For BLAS example
pip install -e .
python cython_main.py --help
You can import the ``cython_examples`` module from a Python script or interpreter.
Notes
~~~~~
* You **must** include the following two lines at the top of any ``*.pyx`` file:
..code-block:: python
#!python
# cython: embedsignature=True, binding=True
* You cannot decorate Cython functions within a ``*.pyx`` file (there are ways around this, but creates a leaky abstraction between Cython and Python that would be very challenging to support generally). Instead, prefer the following in your Python code:
* You cannot transfer memory buffers to a remote function (see ``example8``, which currently fails); your remote function must return a value
* Have a look at ``cython_main.py``, ``cython_simple.pyx``, and ``setup.py`` for examples of how to call, define, and build Cython code, respectively. The Cython `documentation <http://cython.readthedocs.io/>`_ is also very helpful.
* Several limitations come from Cython's own `unsupported <https://github.com/cython/cython/wiki/Unsupported>`_ Python features.
* We currently do not support compiling and distributing Cython code to ``ray`` clusters. In other words, Cython developers are responsible for compiling and distributing any Cython code to their cluster (much as would be the case for users who need Python packages like ``scipy``).
* For most simple use cases, developers need not worry about Python 2 or 3, but users who do need to care can have a look at the ``language_level`` Cython compiler directive (see `here <http://cython.readthedocs.io/en/latest/src/reference/compilation.html>`_).