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.. _parallel_process:
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===========================================
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Starting the IPython controller and engines
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===========================================
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To use IPython for parallel computing, you need to start one instance of
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the controller and one or more instances of the engine. The controller
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and each engine can run on different machines or on the same machine.
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Because of this, there are many different possibilities.
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Broadly speaking, there are two ways of going about starting a controller and engines:
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* In an automated manner using the :command:`ipcluster` command.
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* In a more manual way using the :command:`ipcontroller` and
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:command:`ipengine` commands.
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This document describes both of these methods. We recommend that new users
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start with the :command:`ipcluster` command as it simplifies many common usage
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cases.
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General considerations
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======================
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Before delving into the details about how you can start a controller and
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engines using the various methods, we outline some of the general issues that
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come up when starting the controller and engines. These things come up no
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matter which method you use to start your IPython cluster.
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If you are running engines on multiple machines, you will likely need to instruct the
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controller to listen for connections on an external interface. This can be done by specifying
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the ``ip`` argument on the command-line, or the ``HubFactory.ip`` configurable in
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:file:`ipcontroller_config.py`.
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If your machines are on a trusted network, you can safely instruct the controller to listen
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on all public interfaces with::
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$> ipcontroller --ip=*
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Or you can set the same behavior as the default by adding the following line to your :file:`ipcontroller_config.py`:
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.. sourcecode:: python
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c.HubFactory.ip = '*'
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.. note::
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Due to the lack of security in ZeroMQ, the controller will only listen for connections on
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localhost by default. If you see Timeout errors on engines or clients, then the first
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thing you should check is the ip address the controller is listening on, and make sure
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that it is visible from the timing out machine.
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.. seealso::
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Our `notes <parallel_security>`_ on security in the new parallel computing code.
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Let's say that you want to start the controller on ``host0`` and engines on
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hosts ``host1``-``hostn``. The following steps are then required:
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1. Start the controller on ``host0`` by running :command:`ipcontroller` on
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``host0``. The controller must be instructed to listen on an interface visible
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to the engine machines, via the ``ip`` command-line argument or ``HubFactory.ip``
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in :file:`ipcontroller_config.py`.
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2. Move the JSON file (:file:`ipcontroller-engine.json`) created by the
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controller from ``host0`` to hosts ``host1``-``hostn``.
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3. Start the engines on hosts ``host1``-``hostn`` by running
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:command:`ipengine`. This command has to be told where the JSON file
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(:file:`ipcontroller-engine.json`) is located.
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At this point, the controller and engines will be connected. By default, the JSON files
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created by the controller are put into the :file:`~/.ipython/profile_default/security`
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directory. If the engines share a filesystem with the controller, step 2 can be skipped as
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the engines will automatically look at that location.
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The final step required to actually use the running controller from a client is to move
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the JSON file :file:`ipcontroller-client.json` from ``host0`` to any host where clients
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will be run. If these file are put into the :file:`~/.ipython/profile_default/security`
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directory of the client's host, they will be found automatically. Otherwise, the full path
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to them has to be passed to the client's constructor.
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Using :command:`ipcluster`
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===========================
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The :command:`ipcluster` command provides a simple way of starting a
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controller and engines in the following situations:
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1. When the controller and engines are all run on localhost. This is useful
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for testing or running on a multicore computer.
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2. When engines are started using the :command:`mpiexec` command that comes
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with most MPI [MPI]_ implementations
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3. When engines are started using the PBS [PBS]_ batch system
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(or other `qsub` systems, such as SGE).
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4. When the controller is started on localhost and the engines are started on
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remote nodes using :command:`ssh`.
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5. When engines are started using the Windows HPC Server batch system.
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.. note::
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Currently :command:`ipcluster` requires that the
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:file:`~/.ipython/profile_<name>/security` directory live on a shared filesystem that is
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seen by both the controller and engines. If you don't have a shared file
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system you will need to use :command:`ipcontroller` and
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:command:`ipengine` directly.
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Under the hood, :command:`ipcluster` just uses :command:`ipcontroller`
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and :command:`ipengine` to perform the steps described above.
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The simplest way to use ipcluster requires no configuration, and will
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launch a controller and a number of engines on the local machine. For instance,
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to start one controller and 4 engines on localhost, just do::
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$ ipcluster start -n 4
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To see other command line options, do::
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$ ipcluster -h
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Configuring an IPython cluster
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==============================
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Cluster configurations are stored as `profiles`. You can create a new profile with::
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$ ipython profile create --parallel --profile=myprofile
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This will create the directory :file:`IPYTHONDIR/profile_myprofile`, and populate it
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with the default configuration files for the three IPython cluster commands. Once
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you edit those files, you can continue to call ipcluster/ipcontroller/ipengine
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with no arguments beyond ``profile=myprofile``, and any configuration will be maintained.
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There is no limit to the number of profiles you can have, so you can maintain a profile for each
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of your common use cases. The default profile will be used whenever the
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profile argument is not specified, so edit :file:`IPYTHONDIR/profile_default/*_config.py` to
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represent your most common use case.
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The configuration files are loaded with commented-out settings and explanations,
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which should cover most of the available possibilities.
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Using various batch systems with :command:`ipcluster`
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-----------------------------------------------------
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:command:`ipcluster` has a notion of Launchers that can start controllers
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and engines with various remote execution schemes. Currently supported
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models include :command:`ssh`, :command:`mpiexec`, PBS-style (Torque, SGE, LSF),
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and Windows HPC Server.
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In general, these are configured by the :attr:`IPClusterEngines.engine_set_launcher_class`,
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and :attr:`IPClusterStart.controller_launcher_class` configurables, which can be the
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fully specified object name (e.g. ``'IPython.parallel.apps.launcher.LocalControllerLauncher'``),
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but if you are using IPython's builtin launchers, you can specify just the class name,
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or even just the prefix e.g:
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.. sourcecode:: python
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c.IPClusterEngines.engine_launcher_class = 'SSH'
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# equivalent to
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c.IPClusterEngines.engine_launcher_class = 'SSHEngineSetLauncher'
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# both of which expand to
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c.IPClusterEngines.engine_launcher_class = 'IPython.parallel.apps.launcher.SSHEngineSetLauncher'
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The shortest form being of particular use on the command line, where all you need to do to
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get an IPython cluster running with engines started with MPI is:
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.. sourcecode:: bash
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$> ipcluster start --engines=MPI
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Assuming that the default MPI config is sufficient.
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.. note::
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shortcuts for builtin launcher names were added in 0.12, as was the ``_class`` suffix
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on the configurable names. If you use the old 0.11 names (e.g. ``engine_set_launcher``),
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they will still work, but you will get a deprecation warning that the name has changed.
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.. note::
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The Launchers and configuration are designed in such a way that advanced
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users can subclass and configure them to fit their own system that we
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have not yet supported (such as Condor)
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Using :command:`ipcluster` in mpiexec/mpirun mode
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-------------------------------------------------
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The mpiexec/mpirun mode is useful if you:
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1. Have MPI installed.
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2. Your systems are configured to use the :command:`mpiexec` or
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:command:`mpirun` commands to start MPI processes.
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If these are satisfied, you can create a new profile::
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$ ipython profile create --parallel --profile=mpi
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and edit the file :file:`IPYTHONDIR/profile_mpi/ipcluster_config.py`.
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There, instruct ipcluster to use the MPI launchers by adding the lines:
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.. sourcecode:: python
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c.IPClusterEngines.engine_launcher_class = 'MPIEngineSetLauncher'
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If the default MPI configuration is correct, then you can now start your cluster, with::
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$ ipcluster start -n 4 --profile=mpi
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This does the following:
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1. Starts the IPython controller on current host.
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2. Uses :command:`mpiexec` to start 4 engines.
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If you have a reason to also start the Controller with mpi, you can specify:
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.. sourcecode:: python
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c.IPClusterStart.controller_launcher_class = 'MPIControllerLauncher'
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.. note::
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The Controller *will not* be in the same MPI universe as the engines, so there is not
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much reason to do this unless sysadmins demand it.
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On newer MPI implementations (such as OpenMPI), this will work even if you
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don't make any calls to MPI or call :func:`MPI_Init`. However, older MPI
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implementations actually require each process to call :func:`MPI_Init` upon
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starting. The easiest way of having this done is to install the mpi4py
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[mpi4py]_ package and then specify the ``c.MPI.use`` option in :file:`ipengine_config.py`:
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.. sourcecode:: python
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c.MPI.use = 'mpi4py'
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Unfortunately, even this won't work for some MPI implementations. If you are
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having problems with this, you will likely have to use a custom Python
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executable that itself calls :func:`MPI_Init` at the appropriate time.
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Fortunately, mpi4py comes with such a custom Python executable that is easy to
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install and use. However, this custom Python executable approach will not work
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with :command:`ipcluster` currently.
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More details on using MPI with IPython can be found :ref:`here <parallelmpi>`.
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Using :command:`ipcluster` in PBS mode
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--------------------------------------
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The PBS mode uses the Portable Batch System (PBS) to start the engines.
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As usual, we will start by creating a fresh profile::
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$ ipython profile create --parallel --profile=pbs
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And in :file:`ipcluster_config.py`, we will select the PBS launchers for the controller
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and engines:
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.. sourcecode:: python
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c.IPClusterStart.controller_launcher_class = 'PBSControllerLauncher'
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c.IPClusterEngines.engine_launcher_class = 'PBSEngineSetLauncher'
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.. note::
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Note that the configurable is IPClusterEngines for the engine launcher, and
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IPClusterStart for the controller launcher. This is because the start command is a
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subclass of the engine command, adding a controller launcher. Since it is a subclass,
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any configuration made in IPClusterEngines is inherited by IPClusterStart unless it is
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overridden.
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IPython does provide simple default batch templates for PBS and SGE, but you may need
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to specify your own. Here is a sample PBS script template:
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.. sourcecode:: bash
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#PBS -N ipython
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#PBS -j oe
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#PBS -l walltime=00:10:00
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#PBS -l nodes={n/4}:ppn=4
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#PBS -q {queue}
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cd $PBS_O_WORKDIR
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export PATH=$HOME/usr/local/bin
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export PYTHONPATH=$HOME/usr/local/lib/python2.7/site-packages
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/usr/local/bin/mpiexec -n {n} ipengine --profile-dir={profile_dir}
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There are a few important points about this template:
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1. This template will be rendered at runtime using IPython's :class:`EvalFormatter`.
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This is simply a subclass of :class:`string.Formatter` that allows simple expressions
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on keys.
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2. Instead of putting in the actual number of engines, use the notation
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``{n}`` to indicate the number of engines to be started. You can also use
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expressions like ``{n/4}`` in the template to indicate the number of nodes.
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There will always be ``{n}`` and ``{profile_dir}`` variables passed to the formatter.
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These allow the batch system to know how many engines, and where the configuration
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files reside. The same is true for the batch queue, with the template variable
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``{queue}``.
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3. Any options to :command:`ipengine` can be given in the batch script
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template, or in :file:`ipengine_config.py`.
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4. Depending on the configuration of you system, you may have to set
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environment variables in the script template.
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The controller template should be similar, but simpler:
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.. sourcecode:: bash
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#PBS -N ipython
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#PBS -j oe
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#PBS -l walltime=00:10:00
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#PBS -l nodes=1:ppn=4
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#PBS -q {queue}
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cd $PBS_O_WORKDIR
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export PATH=$HOME/usr/local/bin
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export PYTHONPATH=$HOME/usr/local/lib/python2.7/site-packages
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ipcontroller --profile-dir={profile_dir}
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Once you have created these scripts, save them with names like
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:file:`pbs.engine.template`. Now you can load them into the :file:`ipcluster_config` with:
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.. sourcecode:: python
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c.PBSEngineSetLauncher.batch_template_file = "pbs.engine.template"
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c.PBSControllerLauncher.batch_template_file = "pbs.controller.template"
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Alternately, you can just define the templates as strings inside :file:`ipcluster_config`.
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Whether you are using your own templates or our defaults, the extra configurables available are
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the number of engines to launch (``{n}``, and the batch system queue to which the jobs are to be
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submitted (``{queue}``)). These are configurables, and can be specified in
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:file:`ipcluster_config`:
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.. sourcecode:: python
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c.PBSLauncher.queue = 'veryshort.q'
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c.IPClusterEngines.n = 64
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Note that assuming you are running PBS on a multi-node cluster, the Controller's default behavior
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of listening only on localhost is likely too restrictive. In this case, also assuming the
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nodes are safely behind a firewall, you can simply instruct the Controller to listen for
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connections on all its interfaces, by adding in :file:`ipcontroller_config`:
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.. sourcecode:: python
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c.HubFactory.ip = '*'
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You can now run the cluster with::
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$ ipcluster start --profile=pbs -n 128
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Additional configuration options can be found in the PBS section of :file:`ipcluster_config`.
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.. note::
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Due to the flexibility of configuration, the PBS launchers work with simple changes
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to the template for other :command:`qsub`-using systems, such as Sun Grid Engine,
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and with further configuration in similar batch systems like Condor.
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Using :command:`ipcluster` in SSH mode
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--------------------------------------
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The SSH mode uses :command:`ssh` to execute :command:`ipengine` on remote
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nodes and :command:`ipcontroller` can be run remotely as well, or on localhost.
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.. note::
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When using this mode it highly recommended that you have set up SSH keys
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and are using ssh-agent [SSH]_ for password-less logins.
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As usual, we start by creating a clean profile::
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$ ipython profile create --parallel --profile=ssh
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To use this mode, select the SSH launchers in :file:`ipcluster_config.py`:
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.. sourcecode:: python
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c.IPClusterEngines.engine_launcher_class = 'SSHEngineSetLauncher'
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# and if the Controller is also to be remote:
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c.IPClusterStart.controller_launcher_class = 'SSHControllerLauncher'
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The controller's remote location and configuration can be specified:
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.. sourcecode:: python
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# Set the user and hostname for the controller
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# c.SSHControllerLauncher.hostname = 'controller.example.com'
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# c.SSHControllerLauncher.user = os.environ.get('USER','username')
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# Set the arguments to be passed to ipcontroller
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# note that remotely launched ipcontroller will not get the contents of
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# the local ipcontroller_config.py unless it resides on the *remote host*
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# in the location specified by the `profile-dir` argument.
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# c.SSHControllerLauncher.controller_args = ['--reuse', '--ip=*', '--profile-dir=/path/to/cd']
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Engines are specified in a dictionary, by hostname and the number of engines to be run
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on that host.
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.. sourcecode:: python
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c.SSHEngineSetLauncher.engines = { 'host1.example.com' : 2,
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'host2.example.com' : 5,
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'host3.example.com' : (1, ['--profile-dir=/home/different/location']),
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'host4.example.com' : 8 }
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* The `engines` dict, where the keys are the host we want to run engines on and
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the value is the number of engines to run on that host.
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* on host3, the value is a tuple, where the number of engines is first, and the arguments
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|
|
to be passed to :command:`ipengine` are the second element.
|
|
|
|
|
|
For engines without explicitly specified arguments, the default arguments are set in
|
|
|
a single location:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
c.SSHEngineSetLauncher.engine_args = ['--profile-dir=/path/to/profile_ssh']
|
|
|
|
|
|
Current limitations of the SSH mode of :command:`ipcluster` are:
|
|
|
|
|
|
* Untested and unsupported on Windows. Would require a working :command:`ssh` on Windows.
|
|
|
Also, we are using shell scripts to setup and execute commands on remote hosts.
|
|
|
|
|
|
|
|
|
Moving files with SSH
|
|
|
*********************
|
|
|
|
|
|
SSH launchers will try to move connection files, controlled by the ``to_send`` and
|
|
|
``to_fetch`` configurables. If your machines are on a shared filesystem, this step is
|
|
|
unnecessary, and can be skipped by setting these to empty lists:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
c.SSHLauncher.to_send = []
|
|
|
c.SSHLauncher.to_fetch = []
|
|
|
|
|
|
If our default guesses about paths don't work for you, or other files
|
|
|
should be moved, you can manually specify these lists as tuples of (local_path,
|
|
|
remote_path) for to_send, and (remote_path, local_path) for to_fetch. If you do
|
|
|
specify these lists explicitly, IPython *will not* automatically send connection files,
|
|
|
so you must include this yourself if they should still be sent/retrieved.
|
|
|
|
|
|
|
|
|
IPython on EC2 with StarCluster
|
|
|
===============================
|
|
|
|
|
|
The excellent StarCluster_ toolkit for managing `Amazon EC2`_ clusters has a plugin
|
|
|
which makes deploying IPython on EC2 quite simple. The starcluster plugin uses
|
|
|
:command:`ipcluster` with the SGE launchers to distribute engines across the
|
|
|
EC2 cluster. See their `ipcluster plugin documentation`_ for more information.
|
|
|
|
|
|
.. _StarCluster: http://web.mit.edu/starcluster
|
|
|
.. _Amazon EC2: http://aws.amazon.com/ec2/
|
|
|
.. _ipcluster plugin documentation: http://web.mit.edu/starcluster/docs/latest/plugins/ipython.html
|
|
|
|
|
|
|
|
|
Using the :command:`ipcontroller` and :command:`ipengine` commands
|
|
|
==================================================================
|
|
|
|
|
|
It is also possible to use the :command:`ipcontroller` and :command:`ipengine`
|
|
|
commands to start your controller and engines. This approach gives you full
|
|
|
control over all aspects of the startup process.
|
|
|
|
|
|
Starting the controller and engine on your local machine
|
|
|
--------------------------------------------------------
|
|
|
|
|
|
To use :command:`ipcontroller` and :command:`ipengine` to start things on your
|
|
|
local machine, do the following.
|
|
|
|
|
|
First start the controller::
|
|
|
|
|
|
$ ipcontroller
|
|
|
|
|
|
Next, start however many instances of the engine you want using (repeatedly)
|
|
|
the command::
|
|
|
|
|
|
$ ipengine
|
|
|
|
|
|
The engines should start and automatically connect to the controller using the
|
|
|
JSON files in :file:`~/.ipython/profile_default/security`. You are now ready to use the
|
|
|
controller and engines from IPython.
|
|
|
|
|
|
.. warning::
|
|
|
|
|
|
The order of the above operations may be important. You *must*
|
|
|
start the controller before the engines, unless you are reusing connection
|
|
|
information (via ``--reuse``), in which case ordering is not important.
|
|
|
|
|
|
.. note::
|
|
|
|
|
|
On some platforms (OS X), to put the controller and engine into the
|
|
|
background you may need to give these commands in the form ``(ipcontroller
|
|
|
&)`` and ``(ipengine &)`` (with the parentheses) for them to work
|
|
|
properly.
|
|
|
|
|
|
Starting the controller and engines on different hosts
|
|
|
------------------------------------------------------
|
|
|
|
|
|
When the controller and engines are running on different hosts, things are
|
|
|
slightly more complicated, but the underlying ideas are the same:
|
|
|
|
|
|
1. Start the controller on a host using :command:`ipcontroller`. The controller must be
|
|
|
instructed to listen on an interface visible to the engine machines, via the ``ip``
|
|
|
command-line argument or ``HubFactory.ip`` in :file:`ipcontroller_config.py`::
|
|
|
|
|
|
$ ipcontroller --ip=192.168.1.16
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
# in ipcontroller_config.py
|
|
|
HubFactory.ip = '192.168.1.16'
|
|
|
|
|
|
2. Copy :file:`ipcontroller-engine.json` from :file:`~/.ipython/profile_<name>/security` on
|
|
|
the controller's host to the host where the engines will run.
|
|
|
3. Use :command:`ipengine` on the engine's hosts to start the engines.
|
|
|
|
|
|
The only thing you have to be careful of is to tell :command:`ipengine` where
|
|
|
the :file:`ipcontroller-engine.json` file is located. There are two ways you
|
|
|
can do this:
|
|
|
|
|
|
* Put :file:`ipcontroller-engine.json` in the :file:`~/.ipython/profile_<name>/security`
|
|
|
directory on the engine's host, where it will be found automatically.
|
|
|
* Call :command:`ipengine` with the ``--file=full_path_to_the_file``
|
|
|
flag.
|
|
|
|
|
|
The ``file`` flag works like this::
|
|
|
|
|
|
$ ipengine --file=/path/to/my/ipcontroller-engine.json
|
|
|
|
|
|
.. note::
|
|
|
|
|
|
If the controller's and engine's hosts all have a shared file system
|
|
|
(:file:`~/.ipython/profile_<name>/security` is the same on all of them), then things
|
|
|
will just work!
|
|
|
|
|
|
SSH Tunnels
|
|
|
***********
|
|
|
|
|
|
If your engines are not on the same LAN as the controller, or you are on a highly
|
|
|
restricted network where your nodes cannot see each others ports, then you can
|
|
|
use SSH tunnels to connect engines to the controller.
|
|
|
|
|
|
.. note::
|
|
|
|
|
|
This does not work in all cases. Manual tunnels may be an option, but are
|
|
|
highly inconvenient. Support for manual tunnels will be improved.
|
|
|
|
|
|
You can instruct all engines to use ssh, by specifying the ssh server in
|
|
|
:file:`ipcontroller-engine.json`:
|
|
|
|
|
|
.. I know this is really JSON, but the example is a subset of Python:
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
{
|
|
|
"url":"tcp://192.168.1.123:56951",
|
|
|
"exec_key":"26f4c040-587d-4a4e-b58b-030b96399584",
|
|
|
"ssh":"user@example.com",
|
|
|
"location":"192.168.1.123"
|
|
|
}
|
|
|
|
|
|
This will be specified if you give the ``--enginessh=use@example.com`` argument when
|
|
|
starting :command:`ipcontroller`.
|
|
|
|
|
|
Or you can specify an ssh server on the command-line when starting an engine::
|
|
|
|
|
|
$> ipengine --profile=foo --ssh=my.login.node
|
|
|
|
|
|
For example, if your system is totally restricted, then all connections will actually be
|
|
|
loopback, and ssh tunnels will be used to connect engines to the controller::
|
|
|
|
|
|
[node1] $> ipcontroller --enginessh=node1
|
|
|
[node2] $> ipengine
|
|
|
[node3] $> ipcluster engines --n=4
|
|
|
|
|
|
Or if you want to start many engines on each node, the command `ipcluster engines --n=4`
|
|
|
without any configuration is equivalent to running ipengine 4 times.
|
|
|
|
|
|
An example using ipcontroller/engine with ssh
|
|
|
---------------------------------------------
|
|
|
|
|
|
No configuration files are necessary to use ipcontroller/engine in an SSH environment
|
|
|
without a shared filesystem. You simply need to make sure that the controller is listening
|
|
|
on an interface visible to the engines, and move the connection file from the controller to
|
|
|
the engines.
|
|
|
|
|
|
1. start the controller, listening on an ip-address visible to the engine machines::
|
|
|
|
|
|
[controller.host] $ ipcontroller --ip=192.168.1.16
|
|
|
|
|
|
[IPControllerApp] Using existing profile dir: u'/Users/me/.ipython/profile_default'
|
|
|
[IPControllerApp] Hub listening on tcp://192.168.1.16:63320 for registration.
|
|
|
[IPControllerApp] Hub using DB backend: 'IPython.parallel.controller.dictdb.DictDB'
|
|
|
[IPControllerApp] hub::created hub
|
|
|
[IPControllerApp] writing connection info to /Users/me/.ipython/profile_default/security/ipcontroller-client.json
|
|
|
[IPControllerApp] writing connection info to /Users/me/.ipython/profile_default/security/ipcontroller-engine.json
|
|
|
[IPControllerApp] task::using Python leastload Task scheduler
|
|
|
[IPControllerApp] Heartmonitor started
|
|
|
[IPControllerApp] Creating pid file: /Users/me/.ipython/profile_default/pid/ipcontroller.pid
|
|
|
Scheduler started [leastload]
|
|
|
|
|
|
2. on each engine, fetch the connection file with scp::
|
|
|
|
|
|
[engine.host.n] $ scp controller.host:.ipython/profile_default/security/ipcontroller-engine.json ./
|
|
|
|
|
|
.. note::
|
|
|
|
|
|
The log output of ipcontroller above shows you where the json files were written.
|
|
|
They will be in :file:`~/.ipython` (or :file:`~/.config/ipython`) under
|
|
|
:file:`profile_default/security/ipcontroller-engine.json`
|
|
|
|
|
|
3. start the engines, using the connection file::
|
|
|
|
|
|
[engine.host.n] $ ipengine --file=./ipcontroller-engine.json
|
|
|
|
|
|
A couple of notes:
|
|
|
|
|
|
* You can avoid having to fetch the connection file every time by adding ``--reuse`` flag
|
|
|
to ipcontroller, which instructs the controller to read the previous connection file for
|
|
|
connection info, rather than generate a new one with randomized ports.
|
|
|
|
|
|
* In step 2, if you fetch the connection file directly into the security dir of a profile,
|
|
|
then you need not specify its path directly, only the profile (assumes the path exists,
|
|
|
otherwise you must create it first)::
|
|
|
|
|
|
[engine.host.n] $ scp controller.host:.ipython/profile_default/security/ipcontroller-engine.json ~/.ipython/profile_ssh/security/
|
|
|
[engine.host.n] $ ipengine --profile=ssh
|
|
|
|
|
|
Of course, if you fetch the file into the default profile, no arguments must be passed to
|
|
|
ipengine at all.
|
|
|
|
|
|
* Note that ipengine *did not* specify the ip argument. In general, it is unlikely for any
|
|
|
connection information to be specified at the command-line to ipengine, as all of this
|
|
|
information should be contained in the connection file written by ipcontroller.
|
|
|
|
|
|
Make JSON files persistent
|
|
|
--------------------------
|
|
|
|
|
|
At fist glance it may seem that that managing the JSON files is a bit
|
|
|
annoying. Going back to the house and key analogy, copying the JSON around
|
|
|
each time you start the controller is like having to make a new key every time
|
|
|
you want to unlock the door and enter your house. As with your house, you want
|
|
|
to be able to create the key (or JSON file) once, and then simply use it at
|
|
|
any point in the future.
|
|
|
|
|
|
To do this, the only thing you have to do is specify the `--reuse` flag, so that
|
|
|
the connection information in the JSON files remains accurate::
|
|
|
|
|
|
$ ipcontroller --reuse
|
|
|
|
|
|
Then, just copy the JSON files over the first time and you are set. You can
|
|
|
start and stop the controller and engines any many times as you want in the
|
|
|
future, just make sure to tell the controller to reuse the file.
|
|
|
|
|
|
.. note::
|
|
|
|
|
|
You may ask the question: what ports does the controller listen on if you
|
|
|
don't tell is to use specific ones? The default is to use high random port
|
|
|
numbers. We do this for two reasons: i) to increase security through
|
|
|
obscurity and ii) to multiple controllers on a given host to start and
|
|
|
automatically use different ports.
|
|
|
|
|
|
Log files
|
|
|
---------
|
|
|
|
|
|
All of the components of IPython have log files associated with them.
|
|
|
These log files can be extremely useful in debugging problems with
|
|
|
IPython and can be found in the directory :file:`~/.ipython/profile_<name>/log`.
|
|
|
Sending the log files to us will often help us to debug any problems.
|
|
|
|
|
|
|
|
|
Configuring `ipcontroller`
|
|
|
---------------------------
|
|
|
|
|
|
The IPython Controller takes its configuration from the file :file:`ipcontroller_config.py`
|
|
|
in the active profile directory.
|
|
|
|
|
|
Ports and addresses
|
|
|
*******************
|
|
|
|
|
|
In many cases, you will want to configure the Controller's network identity. By default,
|
|
|
the Controller listens only on loopback, which is the most secure but often impractical.
|
|
|
To instruct the controller to listen on a specific interface, you can set the
|
|
|
:attr:`HubFactory.ip` trait. To listen on all interfaces, simply specify:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
c.HubFactory.ip = '*'
|
|
|
|
|
|
When connecting to a Controller that is listening on loopback or behind a firewall, it may
|
|
|
be necessary to specify an SSH server to use for tunnels, and the external IP of the
|
|
|
Controller. If you specified that the HubFactory listen on loopback, or all interfaces,
|
|
|
then IPython will try to guess the external IP. If you are on a system with VM network
|
|
|
devices, or many interfaces, this guess may be incorrect. In these cases, you will want
|
|
|
to specify the 'location' of the Controller. This is the IP of the machine the Controller
|
|
|
is on, as seen by the clients, engines, or the SSH server used to tunnel connections.
|
|
|
|
|
|
For example, to set up a cluster with a Controller on a work node, using ssh tunnels
|
|
|
through the login node, an example :file:`ipcontroller_config.py` might contain:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
# allow connections on all interfaces from engines
|
|
|
# engines on the same node will use loopback, while engines
|
|
|
# from other nodes will use an external IP
|
|
|
c.HubFactory.ip = '*'
|
|
|
|
|
|
# you typically only need to specify the location when there are extra
|
|
|
# interfaces that may not be visible to peer nodes (e.g. VM interfaces)
|
|
|
c.HubFactory.location = '10.0.1.5'
|
|
|
# or to get an automatic value, try this:
|
|
|
import socket
|
|
|
ex_ip = socket.gethostbyname_ex(socket.gethostname())[-1][0]
|
|
|
c.HubFactory.location = ex_ip
|
|
|
|
|
|
# now instruct clients to use the login node for SSH tunnels:
|
|
|
c.HubFactory.ssh_server = 'login.mycluster.net'
|
|
|
|
|
|
After doing this, your :file:`ipcontroller-client.json` file will look something like this:
|
|
|
|
|
|
.. this can be Python, despite the fact that it's actually JSON, because it's
|
|
|
.. still valid Python
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
{
|
|
|
"url":"tcp:\/\/*:43447",
|
|
|
"exec_key":"9c7779e4-d08a-4c3b-ba8e-db1f80b562c1",
|
|
|
"ssh":"login.mycluster.net",
|
|
|
"location":"10.0.1.5"
|
|
|
}
|
|
|
|
|
|
Then this file will be all you need for a client to connect to the controller, tunneling
|
|
|
SSH connections through login.mycluster.net.
|
|
|
|
|
|
Database Backend
|
|
|
****************
|
|
|
|
|
|
The Hub stores all messages and results passed between Clients and Engines.
|
|
|
For large and/or long-running clusters, it would be unreasonable to keep all
|
|
|
of this information in memory. For this reason, we have two database backends:
|
|
|
[MongoDB]_ via PyMongo_, and SQLite with the stdlib :py:mod:`sqlite`.
|
|
|
|
|
|
MongoDB is our design target, and the dict-like model it uses has driven our design. As far
|
|
|
as we are concerned, BSON can be considered essentially the same as JSON, adding support
|
|
|
for binary data and datetime objects, and any new database backend must support the same
|
|
|
data types.
|
|
|
|
|
|
.. seealso::
|
|
|
|
|
|
MongoDB `BSON doc <http://www.mongodb.org/display/DOCS/BSON>`_
|
|
|
|
|
|
To use one of these backends, you must set the :attr:`HubFactory.db_class` trait:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
# for a simple dict-based in-memory implementation, use dictdb
|
|
|
# This is the default and the fastest, since it doesn't involve the filesystem
|
|
|
c.HubFactory.db_class = 'IPython.parallel.controller.dictdb.DictDB'
|
|
|
|
|
|
# To use MongoDB:
|
|
|
c.HubFactory.db_class = 'IPython.parallel.controller.mongodb.MongoDB'
|
|
|
|
|
|
# and SQLite:
|
|
|
c.HubFactory.db_class = 'IPython.parallel.controller.sqlitedb.SQLiteDB'
|
|
|
|
|
|
# You can use NoDB to disable the database altogether, in case you don't need
|
|
|
# to reuse tasks or results, and want to keep memory consumption under control.
|
|
|
c.HubFactory.db_class = 'IPython.parallel.controller.dictdb.NoDB'
|
|
|
|
|
|
When using the proper databases, you can actually allow for tasks to persist from
|
|
|
one session to the next by specifying the MongoDB database or SQLite table in
|
|
|
which tasks are to be stored. The default is to use a table named for the Hub's Session,
|
|
|
which is a UUID, and thus different every time.
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
# To keep persistant task history in MongoDB:
|
|
|
c.MongoDB.database = 'tasks'
|
|
|
|
|
|
# and in SQLite:
|
|
|
c.SQLiteDB.table = 'tasks'
|
|
|
|
|
|
|
|
|
Since MongoDB servers can be running remotely or configured to listen on a particular port,
|
|
|
you can specify any arguments you may need to the PyMongo `Connection
|
|
|
<http://api.mongodb.org/python/1.9/api/pymongo/connection.html#pymongo.connection.Connection>`_:
|
|
|
|
|
|
.. sourcecode:: python
|
|
|
|
|
|
# positional args to pymongo.Connection
|
|
|
c.MongoDB.connection_args = []
|
|
|
|
|
|
# keyword args to pymongo.Connection
|
|
|
c.MongoDB.connection_kwargs = {}
|
|
|
|
|
|
But sometimes you are moving lots of data around quickly, and you don't need
|
|
|
that information to be stored for later access, even by other Clients to this
|
|
|
same session. For this case, we have a dummy database, which doesn't actually
|
|
|
store anything. This lets the Hub stay small in memory, at the obvious expense
|
|
|
of being able to access the information that would have been stored in the
|
|
|
database (used for task resubmission, requesting results of tasks you didn't
|
|
|
submit, etc.). To use this backend, simply pass ``--nodb`` to
|
|
|
:command:`ipcontroller` on the command-line, or specify the :class:`NoDB` class
|
|
|
in your :file:`ipcontroller_config.py` as described above.
|
|
|
|
|
|
|
|
|
.. seealso::
|
|
|
|
|
|
For more information on the database backends, see the :ref:`db backend reference <parallel_db>`.
|
|
|
|
|
|
|
|
|
.. _PyMongo: http://api.mongodb.org/python/1.9/
|
|
|
|
|
|
Configuring `ipengine`
|
|
|
-----------------------
|
|
|
|
|
|
The IPython Engine takes its configuration from the file :file:`ipengine_config.py`
|
|
|
|
|
|
The Engine itself also has some amount of configuration. Most of this
|
|
|
has to do with initializing MPI or connecting to the controller.
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To instruct the Engine to initialize with an MPI environment set up by
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mpi4py, add:
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.. sourcecode:: python
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c.MPI.use = 'mpi4py'
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In this case, the Engine will use our default mpi4py init script to set up
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the MPI environment prior to exection. We have default init scripts for
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mpi4py and pytrilinos. If you want to specify your own code to be run
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at the beginning, specify `c.MPI.init_script`.
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You can also specify a file or python command to be run at startup of the
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Engine:
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.. sourcecode:: python
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c.IPEngineApp.startup_script = u'/path/to/my/startup.py'
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c.IPEngineApp.startup_command = 'import numpy, scipy, mpi4py'
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These commands/files will be run again, after each
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It's also useful on systems with shared filesystems to run the engines
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in some scratch directory. This can be set with:
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.. sourcecode:: python
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c.IPEngineApp.work_dir = u'/path/to/scratch/'
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.. [MongoDB] MongoDB database http://www.mongodb.org
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.. [PBS] Portable Batch System http://www.openpbs.org
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.. [SSH] SSH-Agent http://en.wikipedia.org/wiki/ssh-agent
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