SCODIA: LLM 기반의 단일세포 RNA-seq 데이터 마이닝 어시스턴트
Date: June 09, 2026 (Tue) 3:00 PM Category: Corporate Technology Webinar Speaker: Seokhyun Yoon (Professor, Department of Electrical and Electronic Engineering, Dankook University; MLBILAB Co., Ltd.) BRIC Webinar: While the production of large-scale single-cell data is becoming increasingly automated due to recent advancements in single-cell RNA-seq technology, the process of interpreting the vast analysis results generated and deriving biologically meaningful insights still requires significant expertise and repetitive coding work........Read more https://www.ibric.org/seminar/seminar... #SCODA#RNA#SCODiA

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