Skip to content

Commit

Permalink
new
Browse files Browse the repository at this point in the history
  • Loading branch information
AtlasWang committed Nov 27, 2024
1 parent 245f38c commit ff8331a
Show file tree
Hide file tree
Showing 2 changed files with 4 additions and 3 deletions.
1 change: 1 addition & 0 deletions group.html
Original file line number Diff line number Diff line change
Expand Up @@ -780,6 +780,7 @@ <h2>Alumni</h2>
<li>Rahul Sridhar, CSE@TAMU, M.S. student, Jan 2020 - May 2021 (Next Move: Computer Vision Engineer, Snap Inc.) </li>
<li>Shixin Yu, ECE@UT Austin, M.S. student, Aug 2021 - Aug 2022 (Next Move: Ph.D. student, ECE@Cornell University)</li>
<li>Everardo Olivares-Vargas, CSEM@UT Austin, M.S. student, Aug 2021 - Dec 2022</li>
<li>Zehao Zhu, ECEM@UT Austin, M.S. student, Aug 2023 - Aug 2024</li>
</ul>
</ul>

Expand Down
6 changes: 3 additions & 3 deletions research.html
Original file line number Diff line number Diff line change
Expand Up @@ -164,12 +164,12 @@ <h2>About PI</h2>



<p>Professor Zhangyang “Atlas” Wang <a href="https://scholar.google.com/citations?user=pxFyKAIAAAAJ&hl=en">[Google Scholar]</a> is a tenured Associate Professor and holds the Temple Foundation Endowed Faculty Fellowship #7, in the Chandra Family Department of Electrical and Computer Engineering at The University of Texas at Austin. He is also a faculty member of UT Computer Science (GSC) <a href="https://csrankings.org/"> [CSRankings]</a>, and the Oden Institute CSEM program. <b style="color:rgb(71, 71, 71)">Since May 2024, Dr. Wang has been on leave from UT Austin to serve as the full-time Research Director for XTX Markets</b>, heading their <a href="https://www.xtxmarkets.com/career/xty-labs-ai-residency/"> new AI Lab</a> in New York City.</p>
<p>Professor Zhangyang “Atlas” Wang <a href="https://scholar.google.com/citations?user=pxFyKAIAAAAJ&hl=en">[Google Scholar]</a> is a tenured Associate Professor and holds the Temple Foundation Endowed Faculty Fellowship #7, in the Chandra Family Department of Electrical and Computer Engineering at The University of Texas at Austin. He is also a faculty member of UT Computer Science <a href="https://csrankings.org/"> [CSRankings]</a>, and the Oden Institute CSEM program. <b style="color:rgb(71, 71, 71)">Since May 2024, Dr. Wang has been on leave from UT Austin to serve as the full-time Research Director for XTX Markets</b>, heading the newly established <a href="https://www.xtxmarkets.com/career/xty-labs-ai-residency/">AI Lab</a> in New York City. In this role, he leads groundbreaking efforts at the intersection of algorithmic trading and deep learning, driving the development of robust, scalable AI algorithms to extract predictive insights from massive datasets.</p>


<p>Previously, he was the Jack Kilby/Texas Instruments Endowed Assistant Professor in the same department from 2020 to 2023; and an Assistant Professor of Computer Science and Engineering at Texas A&M University from 2017 to 2020. Alongside his academic career, he has also explored a few exciting opportunities in the industry. He was a visiting scholar at Amazon Search from 2021 to 2022; and later became the part-time Director of AI Research & Technology for <a href="https://picsart.com/">Picsart</a> from 2022 to 2024, leading the development of cutting-edge GenAI algorithms for visual creation and editing. He earned his Ph.D. in Electrical and Computer Engineering from UIUC in 2016, under the guidance of Professor Thomas S. Huang, and his B.E. in EEIS from USTC in 2012.</p>
<p>Previously, he was the Jack Kilby/Texas Instruments Endowed Assistant Professor in the same department from 2020 to 2023; and an Assistant Professor of Computer Science and Engineering at Texas A&M University from 2017 to 2020. Alongside his academic career, he has also explored multiple exciting opportunities in the industry. He was a visiting scholar at Amazon Search from 2021 to 2022, leveraging geometric deep learning for recommendation systems. Later, he took on the (part-time) role of Director of AI Research & Technology for <a href="https://picsart.com/">Picsart</a> from 2022 to 2024, where he led the company’s ambitious initiative in video generative AI. He earned his Ph.D. in Electrical and Computer Engineering from UIUC in 2016, under the guidance of Professor Thomas S. Huang, and his B.E. in EEIS from USTC in 2012.</p>

<p>Prof. Wang has broad research interests spanning from the theory to the application aspects of machine learning (ML). At present, his core research mission is to leverage, understand and expand the role of low dimensionality in ML and optimization, whose impacts span over many important topics such as the efficiency and trust issues in large language models (LLMs) as well as generative vision. His research is gratefully supported by NSF, DARPA, ARL, ARO, IARPA, DOE, as well as dozens of industry and university grants. Prof. Wang co-founded the new <a href="https://cpal.cc/">Conference on Parsimony and Learning (CPAL)</a> and served as its inaugural Program Chair. He is an elected technical committee member of IEEE MLSP and IEEE CI; and regularly serves as (senior) area chairs, invited speakers, tutorial/workshop organizers, various panelist positions and reviewers. He is an ACM Distinguished Speaker and an IEEE senior member.</p>
<p>Prof. Wang has broad research interests spanning from the theory to the application aspects of machine learning (ML) and optimization. Currently, his research passion centers on developing the theoretical and algorithmic foundations of <b style="color:rgb(71, 71, 71)">generative AI</b> and <b style="color:rgb(71, 71, 71)">neurosymbolic AI</b>. He emphasizes <b style="color:rgb(71, 71, 71)">low-dimensional, modular representations</b> that enable efficient and reliable learning while bridging the gap to symbolic reasoning over discrete structures such as logical dependencies, causal relationships, and geometric invariants. These principles underpin efforts to enhance the efficiency and trustworthiness of large language models (LLMs), advance planning and reasoning capabilities, and foster innovations in generative vision. His research is gratefully supported by NSF, DARPA, ARL, ARO, IARPA, DOE, as well as dozens of industry and university grants. Prof. Wang co-founded the new <a href="https://cpal.cc/">Conference on Parsimony and Learning (CPAL)</a> and served as its inaugural Program Chair. He regularly serves as (senior) area chairs, invited speakers, tutorial/workshop organizers, various panelist positions and reviewers. He is an ACM Distinguished Speaker and an IEEE senior member.</p>

<p>Prof. Wang has received many research awards, including an NSF CAREER Award, an ARO Young Investigator Award, an IEEE AI's 10 To Watch Award, an AI 100 Top Thought Leader Award, an INNS Aharon Katzir Young Investigator Award, a Google Research Scholar award, an IBM Faculty Research Award, a J. P. Morgan Faculty Research Award, an Amazon Research Award, an Adobe Data Science Research Award, a Meta Reality Labs Research Award, and two Google TensorFlow Model Garden Awards. His team has won the Best Paper Award at the inaugural Learning on Graphs (LoG) Conference 2022, the Best Paper Finalist Award at the International Conference on Very Large Databases (VLDB) 2024, and five research competition prizes at CVPR/ICCV/ECCV since 2018. He feels most proud of being surrounded by some of the world's most brilliant students: his Ph.D. students include winners of eight prestigious fellowships (NSF GRFP, Apple, NVIDIA, Adobe, IBM, Amazon, Qualcomm, and Snap), among many other honors.</p>
</div>
Expand Down

0 comments on commit ff8331a

Please sign in to comment.