This talk goes into details of how Intercom implemented Semantic search for Fin, their AI Agent, and how their implementation has evolved. Ketan shares practical lessons from his experience on avoiding unnecessary complexity when possible.
talk-data.com
Topic
vector search
23
tagged
Activity Trend
1
peak/qtr
2020-Q1
2026-Q1
Top Events
Virtual Summit: Generative AI and Intelligent Agents
2
(Virtual EMEA) Do you really need a Vector Search Database?
2
Full-Text Search and Vector Search: Next-Gen Application Search
2
AI-Powered Data & Search: Unlocking Intelligence Across Systems
2
CrateDB City Tour Milan
1
Meetup ElasticFR #99 - Deezer
1
CrateDB European Tour Brussels
1
From The Cloud to Mobile AI-powered Apps
1
PyTorch Meetup #21
1
CrateDB City Tour Copenhagen
1
AI Dev Day - New York
1
December AI, Machine Learning & Data Science Meetup
1
Apache Lucene was never built for AI-scale vector search. In this talk, I’ll show how USearch bridges the JVM–native gap, pairing Spark’s horizontal scale with native vertical speed.
Vector search is typically associated with embeddings - sequences of floating-point numbers. However, semantic search isn’t limited to dense_vector. In this talk, I’ll introduce you to sparse vectors, semantic text, and more.