Dieser Inhalt ist in der von Ihnen ausgewählten Sprache nicht verfügbar.

Chapter 1. Version 3.3 release notes


Red Hat Enterprise Linux AI is a generative AI inference platform for Linux environments that uses Red Hat AI Inference Server for running and optimizing models, and includes Red Hat AI Model Optimization Toolkit for model quantization, sparsity, and general compression for supported AI accelerators. Red Hat AI Model Optimization Toolkit has native Hugging Face and vLLM support. You can seamlessly integrate optimized models with deployment pipelines for faster, cost-saving inference at scale, powered by the compressed-tensors model format.

Red Hat Enterprise Linux AI is packaged as a bootc container image for easy deployment on a Linux server appliance with NVIDIA CUDA or AMD ROCm AI accelerators installed. The container images are available from registry.redhat.io:

  • registry.redhat.io/rhelai3/bootc-cuda-rhel9:3.3.0
  • registry.redhat.io/rhelai3/bootc-rocm-rhel9:3.3.0
Important

There is no direct upgrade path from Red Hat Enterprise Linux AI 1.5 to Red Hat Enterprise Linux AI 3.0. You can upgrade from Red Hat Enterprise Linux AI 3.0 to 3.3 and all versions in-between.

Important

The registry.redhat.io/rhelai3/bootc-rocm-rhel9:3.3.0 image does not include Red Hat AI Model Optimization Toolkit, which is not supported for AMD ROCm AI accelerators.

1.1. New features

Red Hat Enterprise Linux AI 3.3 packages Red Hat AI Inference Server 3.3, which includes the following highlights:

New model support
Red Hat AI Inference Server 3.3 adds support for Mistral 3 models including Mixture of Experts (MoE) architecture variants, IBM Prithvi geospatial foundation models, and various other models including BAGEL, AudioFlamingo3, and JAIS 2.
New AI accelerator support
Red Hat AI Inference Server 3.3 adds support for NVIDIA B300 and GB300 Blackwell AI accelerators with CUDA 13.0, AMD Instinct MI325X AI accelerators, and CPU-only x86_64 AVX2 inference as a Technology Preview. Support for AWS Trainium and Inferentia accelerators is also available as a Technology Preview.
Performance improvements
Whisper models now run approximately 3 times faster compared to the previous release. DeepSeek-V3.1 models provide 5.3% throughput improvement and 4.4% time-to-first-token improvement.
Model optimization updates
Red Hat AI Model Optimization Toolkit adds model-free post-training quantization on safetensors files, extended KV cache and attention quantization capabilities, and the AutoRoundModifier algorithm.

For the complete list of new features, enhancements, and known issues, see the Red Hat AI Inference Server 3.3 release notes.

1.2. Known issues

There are no known issues for Red Hat Enterprise Linux AI 3.3.

Red Hat logoGithubredditYoutubeTwitter

Lernen

Testen, kaufen und verkaufen

Communitys

Über Red Hat Dokumentation

Wir helfen Red Hat Benutzern, mit unseren Produkten und Diensten innovativ zu sein und ihre Ziele zu erreichen – mit Inhalten, denen sie vertrauen können. Entdecken Sie unsere neuesten Updates.

Mehr Inklusion in Open Source

Red Hat hat sich verpflichtet, problematische Sprache in unserem Code, unserer Dokumentation und unseren Web-Eigenschaften zu ersetzen. Weitere Einzelheiten finden Sie in Red Hat Blog.

Über Red Hat

Wir liefern gehärtete Lösungen, die es Unternehmen leichter machen, plattform- und umgebungsübergreifend zu arbeiten, vom zentralen Rechenzentrum bis zum Netzwerkrand.

Theme

© 2026 Red Hat
Nach oben