Red Hat OpenShift AI
Red Hat OpenShift AI and machine learning operations
Red Hat OpenShift AI provides tools across the full lifecycle of AI/ML experiments and models for data scientists and developers of intelligent applications.
TrustyAI Detoxify: Guardrailing LLMs during training
Learn how to prevent large language models (LLMs) from generating toxic content during training using TrustyAI Detoxify and Hugging Face SFTTrainer.
Red Hat OpenShift Data Foundation for developers and data scientists
Learn how to deploy and use the Multi-Cloud Object Gateway (MCG) from Red Hat OpenShift Data Foundation to support development and testing of applications and Artificial Intelligence (AI) models which require S3 object storage.
Creating an AI-powered service for detecting fraudulent card transactions
Train and deploy an AI model using OpenShift AI, then integrate it into an application running on OpenShift.
How to train a BERT machine learning model with OpenShift AI
BERT, which stands for Bidirectional Encoder Representations from Transformers
Try OpenShift AI and integrate with Apache Camel
This article explains how to use Red Hat OpenShift AI in the Developer Sandbox for Red Hat OpenShift to create and deploy models.
A quick look at large language models with Node.js, Podman Desktop, and the Granite model
Explore large language models (LLMs) by trying out the Granite model on Podman AI Lab.
Protecting your models made easy with Authorino
This article demonstrates how to register the SKlearn runtime as a Custom ServingRuntime, deploy the iris model on KServe with OpenDataHub, and apply authentication using Authorino to protect the model endpoints.
Red Hat Products & Downloads
Download Red Hat software for application developers at no-cost.
Manage deep learning models with OpenVINO Model Server
Explore how to use OpenVINO Model Server (OVMS) built on Intel's OpenVINO toolkit to streamline the deployment and management of deep learning models.
Solution Pattern: Edge to Core Data Pipelines for AI/ML
End-to-end AI-enabled applications and data pipelines across the hybrid cloud
Supercharge your Cloud-native Applications with Generative AI
Over 80% of enterprises will have used generative AI (gen AI) APIs or deployed generative AI-enabled applications by 2026, according to Gartner. The barriers for joining these enterprises and integrating generative AI into the application development process are lower than ever. No need for extra funding or complex environments, just the know-how this video provides.
How to install KServe using Open Data Hub
Learn a simplified method for installing KServe, a highly scalable and standards-based model inference platform on Kubernetes for scalable AI.
Solution Pattern: Machine Learning and Data Science Pipelines
A practical example to deploy machine learning model using data science...
Automate ML pipelines with OpenShift AI
Dive into the end-to-end process of building and managing machine learning (ML)
How to integrate and use RStudio Server on OpenShift AI
This guide will walk you through the process of setting up RStudio Server on Red Hat OpenShift AI and getting started with its extensive features.
Red Hat Developer Sandbox: Your Free OpenShift AI Playground
Are you curious about the power of artificial intelligence (AI) but not sure
Implement AI-driven edge to core data pipelines
The Edge to Core Pipeline Pattern automates a continuous cycle for releasing and deploying new AI/ML models using Red Hat build of Apache Camel and more.
The road to AI: The fundamentals
Explore the fundamental concepts of artificial intelligence (AI), including machine learning and deep learning, and learn how to integrate AI into your platforms and applications.
AI & Node.js
Create intelligent, efficient, and user-friendly experiences by integrating AI
Deploy computer vision applications at the edge with MicroShift
Learn how to deploy a trained AI model onto MicroShift, Red Hat’s lightweight Kubernetes distribution optimized for edge computing.
Prepare and label custom datasets with Label Studio
Accurately labeled data is crucial for training AI models. Learn how to prepare and label a custom dataset using Label Studio in this tutorial.
Model training in Red Hat OpenShift AI
Learn how to configure Red Hat OpenShift AI to train a YOLO model using an already provided animal dataset.
Integrated Hybrid Cloud MLOps & Application Platform
A common platform for machine learning and app development on the hybrid cloud.