4min snip

Latent Space: The AI Engineer Podcast cover image

Notebooks = Chat++ and RAG = RecSys! — with Bryan Bischof of Hex Magic

Latent Space: The AI Engineer Podcast

NOTE

Understanding Model Misbehaviors and Auxiliary Evaluation Metrics

In the world of AI engineering, anyone with software engineering or ML engineering skills can become an AI engineer. Data science experts have an advantage in creating objective metrics. Building emails using AI requires hard work and codifying what is good and bad. Sweat equity and evaluating misbehaviors are crucial for understanding the model's performance. Auxiliary evaluation metrics, such as detecting errors or hallucinations, are essential for robustness. By continuously evaluating and improving the model, trust can be built over time. In a company like HEX, it is crucial to achieve GA level for all capabilities. When not having control over model evolution, the choice lies between model improvement or implementing engineering post-processing. Two factors to consider are the need for improvement and the ability to build on top of the existing model.

00:00

Get the Snipd
podcast app

Unlock the knowledge in podcasts with the podcast player of the future.
App store bannerPlay store banner

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode

Save any
moment

Hear something you like? Tap your headphones to save it with AI-generated key takeaways

Share
& Export

Send highlights to Twitter, WhatsApp or export them to Notion, Readwise & more

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode