How AI Is Built  cover image

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

How AI Is Built

NOTE

Measure to Improve: Quality Comes from Insight

Understanding user interaction with a search system is crucial for improving search quality. Teams often lack quantitative measurements or assessments of their search results. Establishing a process to evaluate search performance, such as using open-source tools like Cupid, allows teams to test queries and collect data effectively. It's important to analyze query logs to categorize the types of searches performed, which can range from specific needs to broad inquiries, enabling targeted enhancements. Prioritization based on business goals is key; focus should be given to queries that align with revenue drivers. Additionally, the quality of source data is paramount, as poor input leads to subpar output. Addressing this data quality issue early on is essential for achieving meaningful improvements in search performance.

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