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UID:pretalx-bbuzz26-GPKCWA@program.berlinbuzzwords.de
DTSTART;TZID=CET:20260609T140000
DTEND;TZID=CET:20260609T144000
DESCRIPTION:Competitive search now needs dense embeddings\, sparse vectors\
 , ColBERT\, and cross-encoder reranking. Most teams run four separate cont
 ainers. This talk shows how to serve all four from one process\, walks thr
 ough building a hybrid retrieval pipeline with real benchmark data\, and c
 overs where each retrieval mode wins and where it wastes compute.
DTSTAMP:20260525T114315Z
LOCATION:Maschinenhaus
SUMMARY:One GPU\, Four Retrieval Modes: Multi-Model Search Serving - Filip 
 Makraduli
URL:https://program.berlinbuzzwords.de/bbuzz26/talk/GPKCWA/
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