Generative AI

Transform your generative AI roadmap with custom LLMs


When it comes to generative AI models, bigger isn’t always better. What’s more important is using a tool that’s purpose-built for the task you’re trying to accomplish. A large language model (LLM) trained on a huge dataset may seem attractive for organizations looking to leverage the most amount of data possible, but it may not deliver the most accurate results. A smaller, customized model that is trained on a more targeted dataset, however, can enable businesses to control their data and ensure quality – something that is crucial when scaling generative AI use cases to gain the competitive edge.

Toby Balfre

VP Field Engineering for EMEA at Databricks.

Customization is key

The last year has thrown the spotlight on LLMs as the engines behind generative AI applications. Whilst these are appropriate for a consumer audience, there are many reasons that off-the-shelf, general purpose LLMs are not always ideal for an enterprise. For example, organizations can’t always inject their own data into these LLMs, so the model’s responses are not always relevant in an internal context. Additionally, many larger LLMs require that users grant access to data collection by the model’s creator, which can raise concerns about data privacy.



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