Upcoming 2026 Seminars
Title: Visualization Design and Artificial Intelligence for Scientific Inquiry
Date/Time/Location: Monday, February 23rd at 4:10 p.m. in Barnard 108
Speaker: Devin Lange
Abstract: Scientific inquiry seeks to understand how the world works, and data is a fundamental tool for representing underlying phenomena. In this talk, I discuss how well-designed visualizations, together with the integration of artificial intelligence, can help domain scientists interact with and reason about their data. Cancer research serves as a motivating application domain, as it involves complex, large-scale, and multimodal datasets. These data sets range from images of individual cancer cells to datasets assembled through collaborations across multiple institutions. Visualization plays a critical role in helping scientists navigate this complexity and extract meaningful insight from their data.
Bio: Devin Lange is a postdoctoral fellow in biomedical informatics at Harvard Medical School in the HIDIVE Lab, where he works with Nils Gehlenborg. He earned a PhD in computer science from the University of Utah under the supervision of Alexander Lex. His research investigates how visualization and artificial intelligence can support the understanding, discovery, and quality control of scientific data, with a particular focus on biological and biomedical data.His work has been recognized with multiple awards at IEEE VIS, including a Best Paper Award for Aardvark, a visualization system for integrated analysis of imaging, time-series, and cellular divisions. His research spans biological visualization, data forensics, and natural-language interfaces for interactive visual analysis.
PAST 2026 SEMINARS
Title: Towards Collaborative Intelligence: Learning from Decentralized Data at Scale
Date/Time/Location: Monday, February 9th at 4:10 p.m. in Barnard 108
Speaker: Yujia Wang
Abstract: As modern data increasingly comes from decentralized sources, e.g., phones, smart devices, and medical systems, learning must occur without centralizing sensitive data. Federated learning (FL) enables learning from decentralized data sources but faces significant challenges in real-world deployments, including data heterogeneity, system variability, and communication bottlenecks. In this talk, I will present the algorithmic and optimization foundations of collaborative intelligence, focusing on building efficient and scalable learning from decentralized data. My work addresses FL’s challenges both individually and in a more systematic, integrated way, depending on what the problem demands. I will first diagnose how stale updates and data heterogeneity jointly destabilize asynchronous FL and introduce a cached calibration mechanism that probably removes the harmful delay-heterogeneity interaction. I will then introduce a modularized and parallel block-coordinate framework for federated fine-tuning of large language models. Together, these results establish optimization-driven principles that enable efficient and scalable federated learning. The talk concludes with a vision for the next generation of collaborative AI, where models learn efficiently while respecting privacy, system constraints, and social trustworthiness
Bio: Yujia Wang is a Ph.D. candidate in the College of Information Sciences and Technology at The Pennsylvania State University, advised by Dr. Jinghui Chen. Her research spans the theories and applications of collaborative intelligence and privacy-preserving machine learning. Her work has been published in top venues such as ICML, NeurIPS, ICLR, AISTATS, ACL and TMLR. She has delivered technical talks at the SIAM-NNP Section Conference and IBM Research, and presented her work at the SDM Doctoral Forum. She actively serves as a reviewer for leading AI conferences and journals. Beyond academia, she gained industry experience as a Research Intern at IBM Research.
Seminars from 2025.
