Legare Kerrison
Legare Kerrison's contributions
Article
Generate synthetic data for your AI models with SDG Hub
Legare Kerrison
+1
Use SDG Hub to generate high-quality synthetic data for your AI models. This guide provides a full, copy-pasteable Jupyter Notebook for practitioners.
Video
Enhancing Generative AI with InstructLab for Accessible Model Fine-Tuning
Legare Kerrison
+2
The rise of large language models (LLMs) has opened up exciting possibilities for developers looking to build intelligent applications. However, the process of adapting these models to specific use cases can be difficult, requiring deep expertise and substantial resources. In this talk, we'll introduce you to InstructLab, an open-source project that aims to make LLM tuning accessible to developers and data scientists of all skill levels, on consumer-grade hardware.We'll explore how InstructLab's innovative approach combines collaborative knowledge curation, efficient data generation, and instruction training to enable developers to refine foundation models for specific use cases. Through a live demonstration, you’ll learn how IBM Research has partnered with Red Hat to simplify the process of enhancing LLMs with new knowledge and skills for targeted applications. Join us to explore how InstructLab is making LLM tuning more accessible, empowering developers to harness the power of AI in their projects.
Article
Best practices for InstructLab instruction datasets
Legare Kerrison
This guide walks through how to create an effective qna.yaml file and context file for fine-tuning your personalized model with the InstructLab project.
Article
How InstructLab enables accessible model fine-tuning for gen AI
Cedric Clyburn
+1
Discover how InstructLab simplifies LLM tuning for users.
Video
Supercharge your Cloud-native Applications with Generative AI
Legare Kerrison
+2
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.
Article
Experiment and test AI models with Podman AI Lab
Cedric Clyburn
+1
Podman AI Lab provides a containerized environment for exploring, testing, and integrating open source AI models locally using Podman Desktop.
Generate synthetic data for your AI models with SDG Hub
Use SDG Hub to generate high-quality synthetic data for your AI models. This guide provides a full, copy-pasteable Jupyter Notebook for practitioners.
Enhancing Generative AI with InstructLab for Accessible Model Fine-Tuning
The rise of large language models (LLMs) has opened up exciting possibilities for developers looking to build intelligent applications. However, the process of adapting these models to specific use cases can be difficult, requiring deep expertise and substantial resources. In this talk, we'll introduce you to InstructLab, an open-source project that aims to make LLM tuning accessible to developers and data scientists of all skill levels, on consumer-grade hardware.We'll explore how InstructLab's innovative approach combines collaborative knowledge curation, efficient data generation, and instruction training to enable developers to refine foundation models for specific use cases. Through a live demonstration, you’ll learn how IBM Research has partnered with Red Hat to simplify the process of enhancing LLMs with new knowledge and skills for targeted applications. Join us to explore how InstructLab is making LLM tuning more accessible, empowering developers to harness the power of AI in their projects.
Best practices for InstructLab instruction datasets
This guide walks through how to create an effective qna.yaml file and context file for fine-tuning your personalized model with the InstructLab project.
How InstructLab enables accessible model fine-tuning for gen AI
Discover how InstructLab simplifies LLM tuning for users.
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.
Experiment and test AI models with Podman AI Lab
Podman AI Lab provides a containerized environment for exploring, testing, and integrating open source AI models locally using Podman Desktop.