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Latent Space: The AI Engineer Podcast cover image

Building AGI in Real Time (OpenAI Dev Day 2024)

Latent Space: The AI Engineer Podcast

NOTE

Embrace the Unknown in Vision Fine-Tuning

Fine-tuning models, particularly for vision, introduces complexities and uncertainties that developers need to navigate. Unlike text evaluation, visual assessments lack straightforward metrics, making the understanding of performance more challenging. Despite this, recent alpha testing indicates that fine-tuning vision models may yield significant performance improvements over text. Developers transitioning from text to visual models must establish robust testing and evaluation frameworks to ensure effective implementations. The landscape of model provision is evolving towards platforms that not only provide models but also serve as a reliable source of truth for data management. This shift necessitates a proactive approach to data sharing and storage, as developers will benefit from automated, continuous fine-tuning of models driven by usage data. The future promises a system where ongoing model improvement can occur without the manual need for monthly updates, moving towards a seamless integration of evaluation and decision-making processes.

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