AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
Fine-tuning Machine Learning Models with LoRa and Inference Frameworks
The chapter explores how companies like Google and Amazon leverage LoRa for customers to fine-tune models and swap adapters during inference, while discussing inference frameworks like Nvidia Triton and VLM. It focuses on the deployment processes for machine learning models, highlighting the importance of front end and back end components, model optimization, and distribution of weights for enhanced performance. The speakers emphasize the evolution in tool chains and abstractions for model fine-tuning, recommend experimenting with different options, and suggest starting with off-the-shelf models for cost-effectiveness and efficiency.