Product editions Cloud services editions
Fully managed in the public cloud of your choice
- Red Hat OpenShift Service on AWS
Jointly managed and supported by Red Hat and AWS
- Microsoft Azure Red Hat OpenShift
Jointly managed and supported by Red Hat and Microsoft
- Red Hat OpenShift Dedicated
Managed offering available on AWS or Google Cloud
- Red Hat OpenShift on IBM Cloud
Jointly supported by Red Hat and IBM; managed by IBM
Self-managed editions
Granular control on your own infrastructure
- Red Hat OpenShift Platform Plus
A complete platform for accelerating application development and application modernizations
- Red Hat OpenShift Container Platform
A full set of operations and developer services and tools
- Red Hat OpenShift Kubernetes Engine
Basic functionality of enterprise Kubernetes
- Red Hat OpenShift Virtualization Engine
A streamlined solution focused exclusively on virtual machine workloads
Services & add-ons
A portfolio of managed cloud services and tools for Red Hat OpenShift
- Red Hat OpenShift AI
- Red Hat OpenShift Lightspeed
- Red Hat OpenShift Virtualization
- Red Hat Quay
- Red Hat Advanced Cluster Management for Kubernetes
- Red Hat Advanced Cluster Security for Kubernetes
- Red Hat Advanced Developer Suite
- Red Hat OpenShift Consulting
Documentation Cloud services editions
Explore Why Red Hat OpenShift?
Learn Guided offerings
Hands-on training and experiences to develop knowledge and skills for using OpenShift
- Red Hat OpenShift Virtualization training and certification
- Containers, Kubernetes and Red Hat OpenShift Technical Overview
- Red Hat OpenShift Administration I: Operating a Production Cluster
- Red Hat OpenShift Administration II: Operating a Production Kubernetes Cluster with exam
- Developing Applications with Red Hat OpenShift Serverless and Knative
- Modern Application Development Roadshow
Learning hubs
Learning materials and tools organized by top tasks for key OpenShift services
On-demand
- Interactive labs
Scenario-based, preconfigured OpenShift environments in your web browser
- OpenShift learning paths
Resources for beginners or experts, dev or ops
- Red Hat OpenShift Library
Materials divided into chapters for self-managed and managed OpenShift customers
- Ask an OpenShift Admin
Livestream episodes on OpenShift topics and cloud-native tooling
Get started Try Red Hat OpenShift
- Red Hat OpenShift Service on AWS hands-on experience
Get access to a free 8 hour hands-on experience of ROSA in a Red Hat owned demo environment
- Red Hat OpenShift Container Platform
Self-managed on OpenShift Container Platform, in the cloud, on your computer, or in your datacenter
- Red Hat OpenShift Dedicated
Fully managed OpenShift Dedicated trial cluster with self-service sign-up and cluster provisioning in your Google Cloud account
- Developer sandbox
Instant access to your own minimal, preconfigured environment for development and testing
Buy Red Hat OpenShift
- Red Hat OpenShift Service on AWS
A pay-as-you-go, fully managed turnkey application platform which allows organizations to quickly build, deploy, and scale applications in a native AWS environment
- Azure Red Hat OpenShift
A pay-as-you-go, turnkey application platform that provides highly available, fully managed OpenShift clusters on demand
- Red Hat OpenShift Service on AWS hands-on experience
- Products
- Red Hat OpenShift AI
- AI/ML on Red Hat OpenShift
AI/ML on Red Hat OpenShift
What is AI/ML on Red Hat OpenShift?
AI/ML on Red Hat® OpenShift® acceleratesAI/ML workflows and the delivery of AI-powered intelligent applications with self-managed Red Hat OpenShift, or our AI/ML cloud service.
MLOps with Red Hat OpenShift
Red Hat OpenShift includes key capabilities to enablemachine learning operations (MLOps)in a consistent way across datacenters, public cloud computing, and edge computing.
By applying DevOps and GitOps principles, organizations automate and simplify the iterative process of integratingmachine learning models into software development processes, production rollout, monitoring, retraining, and redeployment for continued prediction accuracy.
Red Hat resources
What is a ML lifecycle?
Amulti-phase processto obtain the power of large volumes and a variety of data, abundant compute, and open source machine learning tools to build intelligent applications.
Key challenges facing data scientists
Data scientists are primarily responsible for ML modeling to ensure the selected model continues to provide the highest prediction accuracy.
The key challenges data scientists face are:
- Selecting & deploying the right ML tools (ex. Apache Spark, Jupyter notebook TensorFlow, PyTorch, etc.)
- Complexities and time required to train, test, select, and retrain the ML model that provides the highest prediction accuracy
- Slow execution of modeling and inferencing tasks because of lack of hardware acceleration
- Repeated dependency on IT operations to provision and manage infrastructure
- Collaborating with data engineers and software developers to ensure input data hygiene, and successful ML model deployment in app dev processes
Build, operate, and scale intelligent applications with confidence
Red Hat® OpenShift® is an integrated application platform for managing the AI/ML lifecycle across hybrid cloud environments and the edge. By providing self-service access to collaborative workflows, intensive computation power (GPUs), and streamlined operations, OpenShift simplifies the delivery of AI solutions consistently and at scale.
Red Hat OpenShift AI
Red Hat OpenShift AIprovides tools across the full lifecycle of AI/ML experiments and models for data scientists and developers of intelligent applications. It provides a fully supported sandbox in which to rapidly develop, train, and test machine learning (ML) models in the public cloud before deploying in production.
Benefits of Red Hat OpenShift for ML initiatives
Empower data scientists
- Self-service, consistent, cloud experience for data scientists across the hybrid cloud
- Empower data scientists with the flexibility and portability to use the containerized ML tools of their choice to quickly build, scale, reproduce, and share ML models.
- Use the most relevant ML tools via Red Hat certifiedKubernetes Operators for both self-managed and our AI cloud service option.
- Eliminate dependency on IT to provision infrastructure for iterative, compute-intensive ML modeling tasks.
- Eliminate "lock-in" concerns with any particular cloud provider, and their menu of ML tools.
- Tight integration with CI/CD tools allows ML models to be quickly deployed iteratively, as needed.
Accelerate compute-intensive ML modeling jobs
Integrations with popular hardware accelerators such as NVIDIA GPUs via Red Hat certifiedGPU operator means that OpenShift can seamlessly meet the high compute resource requirements to help select the best ML model providing the highest prediction accuracy, and ML inferencing jobs as the model experiences new data in production.
Develop intelligent apps
OpenShift’s built-in DevOps capabilities enable MLOps to speed up delivery of AI-powered applications and simplify the iterative process of integrating ML models and continued redeployment for prediction accuracy.
Extending OpenShift DevOps automation capabilities to the ML lifecycle enables collaboration between data scientists, software developers, and IT operations so that ML models can be quickly integrated into the development of intelligent applications. This helps boost productivity, and simplify lifecycle management for ML powered intelligent applications.
- Building from the container model images registry with OpenShift Build.
- Continuous, iterative development of ML model powered intelligent applications with OpenShift Pipelines.
- Continuous deployment automation for ML models powered intelligent applications with OpenShift GitOps.
- An image repository to version model container images and microservices with Red Hat Quay.
Key use cases for machine learning on Red Hat OpenShift
OpenShift is helping organizations across various industries to accelerate business and mission critical initiatives by developing intelligent applications in the hybrid cloud. Some example use cases include fraud detection,data driven health diagnostics,connected cars, oil and gas exploration, automated insurance quotes, and claims processing.
Red Hat's AI/ML Partner Ecosystem
Transformative AI/ML use cases are occurring across healthcare, financial services, telecommunications, automotive, and other industries. Red Hat has cultivated a robust partner ecosystem to offer complete solutions for creating, deploying, and managing ML anddeep learning models for AI-powered intelligent applications.
Success story
Working with Red Hat Consulting, Banco Galicia built an AI-based intelligent natural language processing (NLP) solution on Red Hat OpenShift, and was able to cut verification times from days to minutes with 90% accuracy and cut application downtime by 40%.
Enterprise-ready AI
The combined power of Red Hat OpenShift andNVIDIA AI Enterprise software suite running on NVIDIA-Certified Systems offers a scalable platform that helps accelerate a diverse range of AI use cases. This platform includes key technologies from NVIDIA and Red Hat to securely deploy, manage, and scale AI workloads consistently across the hybrid cloud, on bare metal, or virtualized environments.
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What is Models-as-a-Service?
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Red Hat OpenShift AI resources
Featured product
Red Hat OpenShift AI
An artificial intelligence (AI) platform that provides tools to rapidly develop, train, serve, and monitor models and AI-enabled applications.