dispy is a generic and 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.

dispy supports public / private / hybrid cloud computing, fog / edge computing.

Features

  • Distributed Computing, Parallel Processing
  • Concurrent Programming with Asynchronous (non-blocking) Sockets and Coroutines
  • epoll, kqueue, devpoll, poll, I/O Completion Ports
  • Cloud Computing
  • Fog Computing / Edge Computing

Project Samples

Project Activity

See All Activity >

License

MIT License

Follow dispy

dispy Web Site

You Might Also Like
All-in-One IT Monitoring - No More Blind Spots Icon
All-in-One IT Monitoring - No More Blind Spots

Stop juggling tools. PRTG gives you a complete, real-time view of your IT: servers, devices, cloud, and more - in one easy dashboard.

Tired of switching between different tools and missing critical alerts? PRTG brings everything together, monitoring your entire IT infrastructure from a single, intuitive interface. Whether it’s servers, switches, printers, or cloud services, you get instant visibility and clear notifications - no technical jargon, no clutter. Set up in minutes, PRTG helps you prevent downtime, reduce stress, and prove your value to your company. Focus on your job, not on chasing issues. Try PRTG and experience true IT peace of mind.
Get Your Unified IT Trial
Rate This Project
Login To Rate This Project

User Ratings

★★★★★
★★★★
★★★
★★
3
0
0
0
0
ease 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5 5 / 5
features 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5 5 / 5
design 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5 5 / 5
support 1 of 5 2 of 5 3 of 5 4 of 5 5 of 5 5 / 5

User Reviews

  • This project is just great, the learning curve of the library is smooth and you can easily deploy it for your needs onlocal network or cloud platform (Azure, EC2...) We are using this library for civil engineering computation and it performs well on cloud cluster, thanks to the scheduler and the shared job model. The MIT licence is great and Giridhar is of a great help for support and deployment problem. We got great expectations for this project in 2016, keep up the good work !
  • Awesome project man
  • Thanks, the good project
Read more reviews >

Additional Project Details

Intended Audience

Developers, Engineering, Science/Research

Programming Language

Python

Related Categories

Python Clustering Software, Python Distributed Computing Software

Registered

2011-04-27