All Projects → microsoft → Pai

microsoft / Pai

Licence: mit
Resource scheduling and cluster management for AI

Programming Languages

javascript
184084 projects - #8 most used programming language
java
68154 projects - #9 most used programming language
python
139335 projects - #7 most used programming language
shell
77523 projects
typescript
32286 projects
go
31211 projects - #10 most used programming language

Projects that are alternatives of or similar to Pai

Deep Learning In Cloud
List of Deep Learning Cloud Providers
Stars: ✭ 298 (-86.59%)
Mutual labels:  artificial-intelligence, cloud, gpu, gpu-computing
Floyd Cli
Command line tool for FloydHub - the fastest way to build, train, and deploy deep learning models
Stars: ✭ 147 (-93.39%)
Mutual labels:  artificial-intelligence, ai, gpu
Mycroft Core
Mycroft Core, the Mycroft Artificial Intelligence platform.
Stars: ✭ 5,489 (+146.92%)
Mutual labels:  artificial-intelligence, ai, hacktoberfest
Free Ai Resources
🚀 FREE AI Resources - 🎓 Courses, 👷 Jobs, 📝 Blogs, 🔬 AI Research, and many more - for everyone!
Stars: ✭ 192 (-91.36%)
Mutual labels:  artificial-intelligence, ai, hacktoberfest
Polyaxon
Machine Learning Platform for Kubernetes (MLOps tools for experimentation and automation)
Stars: ✭ 2,966 (+33.42%)
Mutual labels:  artificial-intelligence, ai, jupyter
Atlas
An Open Source, Self-Hosted Platform For Applied Deep Learning Development
Stars: ✭ 259 (-88.35%)
Mutual labels:  artificial-intelligence, ai, gpu
XLearning-GPU
qihoo360 xlearning with GPU support; AI on Hadoop
Stars: ✭ 22 (-99.01%)
Mutual labels:  gpu, gpu-computing, gpu-cluster
Caer
High-performance Vision library in Python. Scale your research, not boilerplate.
Stars: ✭ 452 (-79.67%)
Mutual labels:  artificial-intelligence, ai, gpu
Ffdl
Fabric for Deep Learning (FfDL, pronounced fiddle) is a Deep Learning Platform offering TensorFlow, Caffe, PyTorch etc. as a Service on Kubernetes
Stars: ✭ 640 (-71.21%)
Mutual labels:  artificial-intelligence, ai, jupyter
Nd4j
Fast, Scientific and Numerical Computing for the JVM (NDArrays)
Stars: ✭ 1,742 (-21.64%)
Mutual labels:  artificial-intelligence, gpu
Sqlcell
SQLCell is a magic function for the Jupyter Notebook that executes raw, parallel, parameterized SQL queries with the ability to accept Python values as parameters and assign output data to Python variables while concurrently running Python code. And *much* more.
Stars: ✭ 145 (-93.48%)
Mutual labels:  hacktoberfest, jupyter
100daysofmlcode
My journey to learn and grow in the domain of Machine Learning and Artificial Intelligence by performing the #100DaysofMLCode Challenge.
Stars: ✭ 146 (-93.43%)
Mutual labels:  artificial-intelligence, hacktoberfest
Rivescript Python
A RiveScript interpreter for Python. RiveScript is a scripting language for chatterbots.
Stars: ✭ 142 (-93.61%)
Mutual labels:  artificial-intelligence, ai
Awesome Quantum Machine Learning
Here you can get all the Quantum Machine learning Basics, Algorithms ,Study Materials ,Projects and the descriptions of the projects around the web
Stars: ✭ 1,940 (-12.73%)
Mutual labels:  artificial-intelligence, ai
Python Sc2
A StarCraft II bot api client library for Python 3
Stars: ✭ 141 (-93.66%)
Mutual labels:  ai, hacktoberfest
Cylc Flow
Cylc: a workflow engine for cycling systems. Repository master branch: core meta-scheduler component of cylc-8 (in development); Repository 7.8.x branch: full cylc-7 system.
Stars: ✭ 154 (-93.07%)
Mutual labels:  hacktoberfest, scheduling
Best ai paper 2020
A curated list of the latest breakthroughs in AI by release date with a clear video explanation, link to a more in-depth article, and code
Stars: ✭ 2,140 (-3.73%)
Mutual labels:  artificial-intelligence, ai
Lazy
Lazy, AI chatbot service.
Stars: ✭ 141 (-93.66%)
Mutual labels:  artificial-intelligence, ai
Ml Workspace
🛠 All-in-one web-based IDE specialized for machine learning and data science.
Stars: ✭ 2,337 (+5.13%)
Mutual labels:  jupyter, gpu
Airsim
Open source simulator for autonomous vehicles built on Unreal Engine / Unity, from Microsoft AI & Research
Stars: ✭ 12,528 (+463.56%)
Mutual labels:  artificial-intelligence, ai

Open Platform for AI (OpenPAI) alt text

Build Status Join the chat at https://gitter.im/Microsoft/pai Version

OpenPAI v1.8.0 has been released!

With the release of v1.0, OpenPAI is switching to a more robust, more powerful and lightweight architecture. OpenPAI is also becoming more and more modular so that the platform can be easily customized and expanded to suit new needs. OpenPAI also provides many AI user-friendly features, making it easier for end users and administrators to complete daily AI tasks.

                                                                                                                                                                                     
Marketplace Logo
 Web Portal VScode SDK
API
Services
User Authentication User/Group Management
Storage Management Cluster/Job Monitoring
Job Orchestration Job Scheduling
Job Runtime Job Error Analysis
Kubernetes Cluster Management
CPU/GPU/FPGA/InfiniBand

Table of Contents

When to consider OpenPAI

  1. When your organization needs to share powerful AI computing resources (GPU/FPGA farm, etc.) among teams.
  2. When your organization needs to share and reuse common AI assets like Model, Data, Environment, etc.
  3. When your organization needs an easy IT ops platform for AI.
  4. When you want to run a complete training pipeline in one place.

Why choose OpenPAI

The platform incorporates the mature design that has a proven track record in Microsoft's large-scale production environment.

Support on-premises and easy to deploy

OpenPAI is a full stack solution. OpenPAI not only supports on-premises, hybrid, or public Cloud deployment but also supports single-box deployment for trial users.

Support popular AI frameworks and heterogeneous hardware

Pre-built docker for popular AI frameworks. Easy to include heterogeneous hardware. Support Distributed training, such as distributed TensorFlow.

Most complete solution and easy to extend

OpenPAI is a most complete solution for deep learning, support virtual cluster, compatible with Kubernetes eco-system, complete training pipeline at one cluster etc. OpenPAI is architected in a modular way: different module can be plugged in as appropriate. Here is the architecture of OpenPAI, highlighting technical innovations of the platform.

Get started

OpenPAI manages computing resources and is optimized for deep learning. Through docker technology, the computing hardware are decoupled with software, so that it's easy to run distributed jobs, switch with different deep learning frameworks, or run other kinds of jobs on consistent environments.

As OpenPAI is a platform, there are typically two different roles:

  • Cluster users are the consumers of the cluster's computing resources. According to the deployment scenarios, cluster users could be researchers of Machine Learning and Deep Learning, data scientists, lab teachers, students and so on.
  • Cluster administrators are the owners and maintainers of computing resources. The administrators are responsible for the deployment and availability of the cluster.

OpenPAI provides end-to-end manuals for both cluster users and administrators.

For cluster administrators

The admin manual is a comprehensive guide for cluster administrators, it covers (but not limited to) the following contents:

  • Installation and upgrade. The installation is based on Kubespray, and here is the system requirements. OpenPAI provides an installation guide to facilitate the installation.

    If you are considering upgrade from older version to the latest v1.0.0, please refer to the table below for a brief comparison between v0.14.0 and the v1.0.0. More detail about the upgrade considerations can be found upgrade guide.

    v0.14.0 v1.0.0
    Architecture Kubernetes + Hadoop YARN Kubernetes
    Scheduler YARN Scheduler HiveD / K8S default
    Job Orchestrating YARN Framework Launcher Framework Controller
    RESTful API v1 + v2 pure v2
    Storage Team-wise storage plugin PV/PVC storage sharing
    Marketplace Marketplace v2 openpaimarketplace
    SDK Python JavaScript / TypeScript

    If there is any question during deployment, please check installation FAQs and troubleshooting first. If it is not covered yet, refer to here to ask question or submit an issue.

  • Basic cluster management. Through the Web-portal and a command-line tool paictl, administrators could complete cluster managements, such as adding (or removing) nodes, monitoring nodes and services, and storages setup and permission control.

  • Users and groups management. Administrators could manage the users and groups easily.

  • Alerts management. Administrators could customize alerts rules and actions.

  • Customization. Administrators could customize the cluster by plugins. Administrators could also upgrade (or downgrade) a single component (e.g. rest servers) to address customized application demands.

For cluster users

The user manual is a guidance for cluster users, who could train and serve deep learning (and other) tasks on OpenPAI.

  • Job submission and monitoring. The quick start tutorial is a good start for learning how to train models on OpenPAI. And more examples and supports to multiple mainstream frameworks (out-of-the-box docker images) are in here. OpenPAI also provides supports for good debuggability and advanced job functionalities.

  • Data managements. Users could use cluster provisioned storages and custom storages in their jobs. The cluster provisioned storages are well integrated and easy to configure in a job (refer to here).

  • Collaboration and sharing. OpenPAI provides facilities for collaboration in teams and organizations. The cluster provisioned storages are organized by teams (groups). And users could easily share their works (e.g. jobs) in the marketplace, where others could discover and reproduce (clone) by one-click.

Besides the webportal, OpenPAI provides VS Code extension and command line tool (preview). The VS Code extension is a friendly, GUI based client tool of OpenPAI, and it's highly recommended. It's an extension of Visual Studio Code. It can submit job, simulate jobs locally, manage multiple OpenPAI environments, and so on.

Standalone Components

With the v1.0.0 release, OpenPAI starts using a more modularized component design and re-organize the code structure to 1 main repo together with 7 standalone key component repos. pai is the main repo, and the 7 component repos are:

  • hivedscheduler is a Kubernetes Scheduler Extender for Multi-Tenant GPU clusters, which provides various advantages over standard k8s scheduler.
  • frameworkcontroller is built to orchestrate all kinds of applications on Kubernetes by a single controller.
  • openpai-protocol is the specification of OpenPAI job protocol.
  • openpai-runtime provides runtime support which is necessary for the OpenPAI protocol.
  • openpaisdk is a JavaScript SDK designed to facilitate the developers of OpenPAI to offer more user-friendly experience.
  • openpaimarketplace is a service which stores examples and job templates. Users can use it from webportal plugin to share their jobs or run-and-learn others' sharing job.
  • openpaivscode is a VSCode extension, which makes users connect OpenPAI clusters, submit AI jobs, simulate jobs locally and manage files in VSCode easily.

Reference

Related Projects

Targeting at openness and advancing state-of-art technology, Microsoft Research (MSR) and Microsoft Software Technology Center Asia (STCA) had also released few other open source projects.

  • NNI : An open source AutoML toolkit for neural architecture search and hyper-parameter tuning. We encourage researchers and students leverage these projects to accelerate the AI development and research.
  • MMdnn : A comprehensive, cross-framework solution to convert, visualize and diagnose deep neural network models. The "MM" in MMdnn stands for model management and "dnn" is an acronym for deep neural network.
  • NeuronBlocks : An NLP deep learning modeling toolkit that helps engineers to build DNN models like playing Lego. The main goal of this toolkit is to minimize developing cost for NLP deep neural network model building, including both training and inference stages.
  • SPTAG : Space Partition Tree And Graph (SPTAG) is an open source library for large scale vector approximate nearest neighbor search scenario.

Get involved

How to contribute

Contributor License Agreement

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.microsoft.com.

When you submit a pull request, a CLA-bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., label, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

Call for contribution

We are working on a set of major features improvement and refactor, anyone who is familiar with the features is encouraged to join the design review and discussion in the corresponding issue ticket.

Who should consider contributing to OpenPAI

  • Folks who want to add support for other ML and DL frameworks
  • Folks who want to make OpenPAI a richer AI platform (e.g. support for more ML pipelines, hyperparameter tuning)
  • Folks who want to write tutorials/blog posts showing how to use OpenPAI to solve AI problems

Contributors

One key purpose of OpenPAI is to support the highly diversified requirements from academia and industry. OpenPAI is completely open: it is under the MIT license. This makes OpenPAI particularly attractive to evaluate various research ideas, which include but not limited to the components.

OpenPAI operates in an open model. It is initially designed and developed by Microsoft Research (MSR) and Microsoft Software Technology Center Asia (STCA) platform team. We are glad to have Peking University, Xi'an Jiaotong University, Zhejiang University, University of Science and Technology of China and SHANGHAI INESA AI INNOVATION CENTER (SHAIIC) joined us to develop the platform jointly. Contributions from academia and industry are all highly welcome.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].