Adapters: the game changer for fine-tuning - Geoffrey Angus - The Data Scientist Show #084

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I interviewed Geoffery Angus, ML team lead @Predibase to talk about why adapter-based training is a game changer. We started with an overview of fine-tuning and then discussed five reasons why adapters are the future of LLMs. Later we also shared a demo and answered questions from the live audience. Try fine-tuning for free: https://pbase.ai/GetStarted
Geoffrey’s LinkedIn:https://www.linkedin.com/in/geoffreyangus
Daliana's Twitter: ⁠https://twitter.com/DalianaLiu⁠
Daliana’s LinkedIn: ⁠https://www.linkedin.com/in/dalianaliu/⁠

Daliana's Twitter: ⁠https://twitter.com/DalianaLiu⁠
Daliana’s LinkedIn: ⁠https://www.linkedin.com/in/dalianaliu/
Geoffrey’s LinkedIn: https://www.linkedin.com/in/geoffreyangus
Try finetuning for free: https://pbase.ai/GetStarted

(00:00:00) Intro
(00:01:19) What is Fine-tuning?
(00:08:18) Utilizing Adapters for Finetuning Enhancement
(00:09:50) 5 reasons why adapters are the future of LLMs
(00:26:34) Common Mistakes in Adapters Usage
(00:28:34) Training Your Own Adapter
(00:32:23) Behind the Scenes of the Adapter Training Process
(00:37:51) Config File Guidance for Fine-Tuning
(00:39:41) Debugging Strategies for Suboptimal Fine-Tuning Results
(00:42:23) User Queries: Creating a LoRa Adapter and Future Support
(00:51:06) Key Takeaways and Recap

Adapters: the game changer for fine-tuning - Geoffrey Angus - The Data Scientist Show #084

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Adapters: the game changer for fine-tuning - Geoffrey Angus - The Data Scientist Show #084
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