Cedric Clyburn & Legare Kerrison
Unlocking the Power of AI: Accessible Language Model Tuning for All
#1about 1 minute
Introducing InstructLab for accessible LLM fine-tuning
Generalist large language models can be improved for specific use cases by fine-tuning them with the open-source project InstructLab on consumer hardware.
#2about 2 minutes
Demonstrating the limitations of generalist LLMs
Generalist LLMs often fail on specific or recent queries due to knowledge cutoffs, demonstrating the need for adaptation for real-world use cases.
#3about 3 minutes
Understanding the risks and costs of generative AI
Generative AI presents significant challenges including legal exposure, hallucinations, hiring bias, and high operational costs for tuning and inference.
#4about 5 minutes
Comparing fine-tuning, alignment tuning, and RAG
Models can be improved through methods like alignment tuning, which specializes the model's core knowledge, unlike RAG which only supplements it with external context.
#5about 3 minutes
Choosing the right foundation model to reduce costs
Selecting a smaller, fine-tuned foundation model like Granite can drastically reduce operational costs compared to using a large, general-purpose model.
#6about 3 minutes
How InstructLab simplifies data generation for tuning
InstructLab uses a simple YAML taxonomy to automatically generate large synthetic training datasets, making model tuning accessible to non-data scientists.
#7about 10 minutes
A step-by-step demo of the InstructLab CLI
The InstructLab CLI provides a streamlined workflow for initializing a project, downloading a model, generating synthetic data, and training the model locally.
#8about 4 minutes
Applying InstructLab to an enterprise use case
A pre-trained model can be enhanced with specific enterprise domain knowledge, such as insurance claim data, using the InstructLab tuning process.
#9about 1 minute
Getting started with the InstructLab community
The open-source InstructLab project offers community resources like GitHub, Slack, and a mailing list for developers to get involved.
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