Red Hat Enterprise Linux AI
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Red Hat Enterprise Linux AI
Overview :
Red Hat Enterprise Linux AI is an open-source model platform designed to seamlessly develop, test, and run large language models (LLMs) for enterprise applications. It combines the IBM Granite LLMs with open-source licensing, InstructLab model alignment tools, bootable images of Red Hat Enterprise Linux, and technical support for models as well as intellectual property protection from Red Hat. The platform supports portability across hybrid cloud environments and can integrate with Red Hat OpenShift? AI, further advancing enterprise AI development, data management, and model governance.
Target Users :
["Ideal for corporate users in need of developing, testing, and deploying AI models.","Suited for developers and researchers aiming to innovate in the open-source AI environment.","Best for IT teams seeking cost-effective, scalable AI solutions."]
Total Visits: 4.6M
Top Region: US(28.27%)
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Use Cases
Enterprises use Red Hat Enterprise Linux AI to develop custom AI language models.
IT teams leverage the platform for AI model testing and optimization.
Research institutions use InstructLab tools to enhance AI model capabilities through community-driven innovation.
Features
Includes IBM Granite LLMs licensed under open-source, fully supported and guaranteed by Red Hat.
Utilizes InstructLab community collaboration tools to simplify experimental setup and adjustment of generated AI models.
Enables cloud-native scalability, managing the AI platform through container images.
Exploits open-source hardware accelerators and PyTorch deep learning features to support faster results.
Ensures portability across hybrid cloud environments.
Integrates with Red Hat OpenShift? AI to support the expansion of AI workflows.
Expands enterprise AI development capabilities with additional features from IBM Watsonx.ai.
How to Use
Step 1: Download and install the bootable image of Red Hat Enterprise Linux AI.
Step 2: Use InstructLab tools for model alignment and experimentation.
Step 3: Select and integrate required AI libraries, such as Pytorch.
Step 4: Develop and test AI models on Red Hat Enterprise Linux AI.
Step 5: Expand and deploy AI workflows using Red Hat OpenShift? AI.
Step 6: Integrate IBM Watsonx.ai for additional enterprise-level AI development support if needed.
Step 7: Adjust and optimize AI model performance based on corporate requirements.
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