How AI Is Built  cover image

#19 Charlie Hull on Data-driven Search Optimization, Analysing Relevance | Search

How AI Is Built

NOTE

Measure with Precision: Assessing Search Systems Effectively

Common pitfalls in assessing search systems include an overemphasis on processing speed as a measure of accuracy and relying too heavily on human evaluations or single metrics. Evaluation approaches include human assessment of search result relevance, which can be subjective and not scalable; user interaction analysis, which provides noisy data due to varying user motivations; and leveraging AI, particularly large language models (LLMs), to assess relevance at scale, though this requires careful training and may lack domain-specific expertise. Each method has its strengths and weaknesses, making a multifaceted approach essential for accurate assessment.

00:00
Transcript
Play full episode

Remember Everything You Learn from Podcasts

Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.
App store bannerPlay store banner