Insights      Technology      Generative AI      The nitty-gritty of fine-tuning a GenAI model

The nitty-gritty of fine-tuning a GenAI model

We’ve all heard about how generative AI is changing almost every aspect of a business. If you crack open the door and peer in on the AI teams. You’ll see them playing with models and, no, we’re not talking about planes and trains. We’re talking about providing the correct inputs necessary to drive desired outputs in an AI model.

On this episode of the Georgian Impact Podcast, we will be discussing the impact of generative AI and fine-tuning data strategy with Rohit Saha, an ML scientist at Georgian’s R&D team. Rohit will explore how large language models (LLMs) and fine-tuning are changing the AI landscape for businesses, the necessary skills for data science teams in the age of generative AI, and the pivotal role of dynamic data strategy in leveraging new technology effectively.

You’ll Hear About:

  • The role of fine-tuning in tailoring foundational AI models to specific use cases.
  • How the landscape of ML and AI has evolved with the emergence of LLMs.
  • Leveraging LLMs to enhance productivity and build enterprise software.
  • Evolution of skills and talent required in the era of generative AI.
  • Creating a dynamic data strategy and leveraging open source models for fine-tuning.
  • Identifying golden use cases and the impact of LLMs on classification tasks.

Read more like this

Testing LLMs for trust and safety

We all get a few chuckles when autocorrect gets something wrong, but…

How AI is redefining coding

Sometimes it’s hard to know where to start when it comes to…