Activities & Talks
Responsible AI for the Future of our Societies
Prof. Eric Xing discusses how AI enables humans to achieve their fullest potential at work rather than taking over jobs. He also emphasizes how MBZUAI and AI researchers bear the responsibility to educate and shape the next generation of leaders in AI
Recent Talks and Tutorials
- From Learning, to Meta-Learning, to “Lego-Learning — A pathway toward autonomous AI [video][slides], CMU AI Seminar, 2022.
- From Learning, to Meta-Learning, to “Lego-Learning — theory, system, and applications [video], BaiDu Seminar, 2021.
- It is time for deep learning to understand its expense bills [video], KDD Deep Learning Day 2021.
- Learning-to-learn through Model-based Optimization: HPO, NAS, and Distributed Systems [video], ACL 2021 workshop on Meta Learning and Its Applications to Natural Language Processing.
- A Data-Centric View for Composable Natural Language Processing [video1] [video2], ICML 2021 Machine Learning for Data Workshop.
- Thoughts and Efforts on AI Meeting Production [video], Jeffrey L. Elman Distinguished Lecture Series, Halicioglu Data Science Inst., UC San Diego, 2021.
- Simplifying and Automating Parallel Machine Learning via a Programmable and Composable Parallel ML System [slides] [video], Tutorial, AAAI 2021.
- From Performance-oriented AI to Production- and Industrial-AI [video], Michigan Institute for Data Science, 2020.
- A Blueprint of Standardized and Composable Machine Learning , [slides] [video], Institute for Advanced Study, Princeton, 2020.
- Compositionality in Machine Learning , [slides] [video], Open Data Science Conference (ODSC) West 2019.
- A Civil Engineering Perspective on Artificial Intelligence From Petuum [slides], Distinguished Lectures in Computational Innovation, Columbia University, 2018.
- A Statistical Machine Learning Perspective of Deep Learning: Algorithm, Theory, and Scalable Computing [slides], tutorial at the International Summer School on Deep Learning, Genova, Italy, 2018.
- Standardized Tests as benchmarks for Artificial Intelligence [slides], tutorial at EMNLP, Melbourne, Australia, 2018.
- PetuumMed: algorithms and system for EHR-based medical decision support [slides], MIT, 2018.
- System and Algorithm Co-Design, Theory and Practice, for Distributed Machine Learning [slides], [video], at the Simons Institute for the Theory of Computing, Berkeley, 2017.
- Strategies & Principles for Distributed Machine Learning [slides], [video], Allen Institute for AI, 2016.
- The Machine Learning Behind Reading and Comprehension [slides], Summit of Language and AI, China, 2016.
- A New Look at the System, Algorithm and Theory Foundations of Distributed Machine Learning [slides], tutotial with Dr. Qirong Ho at the 21st ACM SIGKDD Conference on knowledge Discovery and Data Mining (KDD 2015).
- Big ML Software for Modern ML Algorithms [slides], tutotial with Dr. Qirong Ho at the 2014 IEEE International Conference on Big Data (IEEE BigData 2014).
- Topic Models, Latent Space Models, Sparse Coding, and All That: A systematic understanding of probabilistic semantic extraction in large corpus [slides], tutotial at the 50th Annual Meeting of the Association for Computational Linguistics (ACL 2012).
- Modern Statistical Methods for Genetic Association Study: Structured Genome-Transcriptome-Phenome Association Analysis [slides], tutotial With Dr. Seyoung Kim, at the Nineteenth International Conference on Intelligence Systems for Molecular Biology (ISMB 2011).
Older Talks and Tutorials
- I gave an invited talk on “On Learning Sparse Structured Input-Output Models” [slides] at the Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning (EMNLP 2012).
- I gave a tutorial on “Topic Models, Latent Space Models, Sparse Coding, and All That: A systematic understanding of probabilistic semantic extraction in large corpus” [slides] at the 50th Annual Meeting of the Association for Computational Linguistics (ACL 2012).
- With Dr. Seyoung Kim, we gave a tutorial on ” Modern Statistical Methods for Genetic Association Study: Structured Genome-Transcriptome-Phenome Association Analysis” [slides] at the Nineteenth International Conference on Intelligence Systems for Molecular Biology (ISMB 2011).
- I gave a keynote talk on “Sparsity and Learning Large Scale Models” [slides] at the 2011 CVPR Workshop on Large Scale Learning for Vision.
- I gave a keynote talk on “Dynamic Network Analysis: Model, Algorithm, Theory, and Application” [slides] at the Eighth Workshop on Mining and Learning with Graphs, 2010.
- I gave a keynote talk on “Genome-Phenome Association Analysis of Complex Diseases – a Structured Sparse Regression Approach” [slides] at the Tenth Annual International Workshop on Bioinformatics and Systems Biology, 2010.
- I gave a keynote talk on “Jointly Maximum Margin and Maximum Entropy Learning of Graphical Models” [slides] at the NIPS 2009 Workshop on “APPROXIMATE LEARNING OF LARGE SCALE GRAPHICAL MODELS: THEORY AND APPLICATIONS”.
- I gave a keynote talk on “Time Varying Graphical Models: reverse engineering and analyzing rewiring networks” [slides] at the NIPS 2009 Mini-Symposium on Machine Learning in Computational Biology.
- I gave a keynote talk on “Recent Advances in Learning Sparse Structured Input/Output Model: Models, Algorithms, and Applications” at the NIPS 2008 Workshop on “Structured Input, Structured Output”.
- I gave a talk on Time-Varying Networks: Reconstructing Temporally/Spatially Rewiring Gene Interactions
- at the 2008 RECOMB Regulatory Genomics workshop.
I co-organized NIPS 2012 Workshop on “Spectral Learning”.
I co-organized ICML 2011 Workshop on “Structured Sparsity: Learning and Inference”.
I co-organized NIPS 2008 Workshop on “Analyzing Graphs: Theories and Applications”.
I co-organized ICML 2007 Workshop on Learning in Structured Output Spaces.
I co-organized NIPS 2007 Workshop on Statistical Models of Networks.
I gave a keynote talk on “Graphical models and algorithms for integrative bioinformatics” at the 6th annual Graybill Conference.
I gave a keynote talk on “Probabilistic graphical models: theory, algorithm, and application” at ICMLA 07.