
dispy: Distributed and Parallel Computing with/for Python
*********************************************************

dispy is a comprehensive, yet easy to use framework for creating and
using compute clusters to execute computations in parallel across
multiple processors in a single machine (SMP), among many machines in
a cluster, grid or cloud.  dispy is well suited for data parallel
(SIMD) paradigm where a computation (Python function or standalone
program) is evaluated with different (large) datasets independently
with no communication among computation tasks (except for computation
tasks sending Provisional/Intermediate Results or Transferring Files
to the client). If communication/cooperation among tasks is needed,
asyncoro framework could be used.

Some of the features of dispy:

* dispy is implemented with asyncoro, an independent framework for
  asynchronous, concurrent, distributed, network programming with
  coroutines (without threads). asyncoro uses non-blocking sockets
  with I/O notification mechanisms epoll, kqueue and poll, and Windows
  I/O Completion Ports (IOCP) for high performance and scalability, so
  dispy works efficiently with a single node or large cluster(s) of
  nodes. asyncoro itself has support for distributed/parallel
  computing, including transferring computations, files etc., and
  message passing (for communicating with client and other computation
  tasks).  While dispy can be used to schedule jobs of a computation
  to get the results, asyncoro can be used to create distributed
  communicating processes, for broad range of use cases.

* Computations (Python functions or standalone programs) and their
  dependencies (files, Python functions, classes, modules) are
  distributed to nodes automatically. Computations, if they are Python
  functions, can also transfer files on the nodes to the client.

* Computation nodes can be anywhere on the network (local or
  remote). For security, either simple hash based authentication or
  SSL encryption can be used.

* After each execution is finished, the results of execution,
  output, errors and exception trace are made available for further
  processing.

* Nodes may become available dynamically: dispy will schedule jobs
  whenever a node is available and computations can use that node.

* If callback function is provided, dispy executes that function
  when a job is finished; this can be used for processing job results
  as they become available.

* Client-side and server-side fault recovery are supported:

  If user program (client) terminates unexpectedly (e.g., due to
  uncaught exception), the nodes continue to execute scheduled jobs.
  The results of the scheduled (but unfinished at the time of crash)
  jobs for that cluster can be retrieved easily with (Fault) Recover
  Jobs.

  If a computation is marked reentrant when a cluster is created and a
  node (server) executing jobs for that computation fails, dispy
  automatically resubmits those jobs to other available nodes.

* dispy can be used in a single process to use all the nodes
  exclusively (with JobCluster) or in multiple processes
  simultaneously sharing the nodes (with SharedJobCluster and
  *dispyscheduler* program).

* Cloud computing platform, such as Amazon EC2, can be used as
  compute nodes, either exclusively or in addition to any local
  compute nodes. See Cloud Computing (with Amazon EC2) for details.

* *Monitor and Manage Cluster* with a web browser, including in iOS
  or Android devices.

dispy works with Python versions 2.7+ and 3.1+ and tested on Linux, OS
X and Windows; it may work on other platforms too. dispy works with
JIT interpretter PyPy as well.


Dependencies
============

dispy requires asyncoro for concurrent, asynchronous network
programming with coroutines. If dispy is installed with pip (see
below), asyncoro is also installed automatically.

Under Windows asyncoro uses efficient polling notifier I/O Completion
Ports (IOCP) only if pywin32 is installed; otherwise, inefficient
*select* notifier is used.


Download / Installation
=======================

dispy is availble through Python Package Index (PyPI) so it can be
easily installed for Python 2.7+ with:

   pip install dispy

and/or for Python 3.1+ with:

   pip3 install dispy

dispy can also be downloaded from Sourceforge Files.  Files in 'py2'
directory in the downloaded package are to be used with Python 2.7+
and files in 'py3' directory are to be used with Python 3.1+.


Quick Guide
===========

Below is a quick guide on how to use dispy. More details are available
in *dispy*.

dispy framework consists of 4 components:

* A client program can use *dispy* module to create clusters in two
  different ways: JobCluster when only one instance of dispy may run
  and SharedJobCluster when multiple instances may run (in separate
  programs). If JobCluster is used, the job scheduler included in it
  will distribute jobs on the server nodes; if SharedJobCluster is
  used, *dispyscheduler* program must also be running.

* *dispynode* program executes jobs on behalf of a dispy client.
  dispynode must be running on each of the (server) nodes that form
  clusters.

* *dispyscheduler* program is needed only when SharedJobCluster is
  used; this provides a job scheduler that can be shared by multiple
  dispy clients simultaneously.

* *dispynetrelay* program can be used when nodes are located across
  different networks. If all nodes are on local network or if all
  remote nodes can be listed in 'nodes' parameter when creating
  cluster, there is no need for dispynetrelay - the scheduler can
  discover such nodes automatically. However, if there are many nodes
  on remote network(s), dispynetrelay can be used to relay information
  about the nodes on that network to scheduler, without having to list
  all nodes in 'nodes' parameter.

As a tutorial, consider the following program, in which function
*compute* is distributed to nodes on a local network for parallel
execution. First, run dispynode program (**dispynode.py**) on each of
the nodes on the network. Now run the program below, which creates a
cluster with function *compute*; this cluster is then used to create
jobs to execute *compute* with a random number 10 times.:

   # 'compute' is distributed to each node running 'dispynode'
   def compute(n):
       import time, socket
       time.sleep(n)
       host = socket.gethostname()
       return (host, n)

   if __name__ == '__main__':
       import dispy, random
       cluster = dispy.JobCluster(compute)
       jobs = []
       for i in range(10):
           # schedule execution of 'compute' on a node (running 'dispynode')
           # with a parameter (random number in this case)
           job = cluster.submit(random.randint(5,20))
           job.id = i # optionally associate an ID to job (if needed later)
           jobs.append(job)
       # cluster.wait() # wait for all scheduled jobs to finish
       for job in jobs:
           host, n = job() # waits for job to finish and returns results
           print('%s executed job %s at %s with %s' % (host, job.id, job.start_time, n))
           # other fields of 'job' that may be useful:
           # print(job.stdout, job.stderr, job.exception, job.ip_addr, job.start_time, job.end_time)
       cluster.stats()

dispy's scheduler runs the jobs on the processors in the nodes running
dispynode. The nodes execute each job with the job's arguments in
isolation - computations shouldn't depend on global state, such as
modules imported outside of computations, global variables etc.
(except if 'setup' parameter is used, as explained in *dispy* and
*Examples*). In this case, *compute* needs modules *time* and
*socket*, so it must import them. The program then gets results of
execution for each job with **job()**.


Contents
========

* dispy

  * JobCluster

  * SharedJobCluster

  * Cluster

  * DispyJob

  * NodeAllocate

  * Provisional/Intermediate Results

  * Transferring Files

  * (Fault) Recover Jobs

  * NAT/Firewall Forwarding

  * Cloud Computing (with Amazon EC2)

* dispynode

  * NAT/Firewall Forwarding

* dispyscheduler

  * NAT/Firewall Forwarding

* dispynetrelay

* Monitor and Manage Cluster

  * HTTP Server

  * Example

  * Client (Browser) Interface

* Examples

* Share / Recommend dispy


Indices and tables
==================

* Index

* Module Index

* Search Page
