University of Southern California
Los Angeles, CA, USABiography & Openings. Copy/paste from my short Bio if needed :) See lab openings at ASAP Lab (Openings).
Research Interests. I build reproducible, automated, and scalable machine learning (ML) and data mining (DM) benchmarks, algorithms, and systems, with a focus on but not limited to anomaly detection, graph neural networks, ML systems, and healthcare for AI.
Research Keywords: (1) ML and DM: Anomaly/Outlier/Out-of-Distribution (OOD) Detection, Unsupervised ML, Graph Neural Networks (2) Open Systems: ML Systems, Automated ML, Decentralized Learning(3) Applications: AI for Science, e.g., healthcare, security, and finance.
Open-source ML . I created PyOD (used by NASA, Tesla, Morgan Stanley, and more) - the most popular library for anomaly detection in 2017. Also, I have led more than 10 ML open-source initiatives, receiving 20,000 GitHub stars (top 0.002%) and >20M downloads. Popular ones: PyOD, PyGOD, TDC, ADBench
Social Platforms. I am active on Twitter, LinkedIn, and 中文平台 知乎 (微调), 小红书 (微调). I have more than 250,000 followers on all social platforms in combination. 我有一系列北美在读CS PhD找实习和全职的微信群 (不是PhD申请群),以及一个2025年CS教职/教授申请群 (24年底申请,25年入职)。可以添加微信yzhao010入群。
[Mar 2024] We get more than 5,000 GPU hours on A100 and equivalent from NSF and Google.
[Mar 2024] Selected to be a Google Cloud Research Innovators!
[Jan 2024] Being part of an impactful cross-institution work TrustLLM: Trustworthiness in Large Language Models! See paper and code.
[Dec 2023] Selected to be part of the 2024 AAAI New Faculty Highlights! I will present Towards Reproducible, Automated, and Scalable Anomaly Detection.