<?xml version="1.0" encoding="utf-8"?><feed xmlns="http://www.w3.org/2005/Atom" ><generator uri="https://jekyllrb.com/" version="3.10.0">Jekyll</generator><link href="https://migalkin.github.io/feed.xml" rel="self" type="application/atom+xml" /><link href="https://migalkin.github.io/" rel="alternate" type="text/html" /><updated>2025-01-21T20:54:13-08:00</updated><id>https://migalkin.github.io/feed.xml</id><title type="html">Michael Galkin</title><subtitle>Research Scientist @ Intel | ex Mila</subtitle><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><entry><title type="html">Graph Learning Tutorial @ ICML 2024</title><link href="https://migalkin.github.io/posts/2024/07/22/post/" rel="alternate" type="text/html" title="Graph Learning Tutorial @ ICML 2024" /><published>2024-07-22T00:00:00-07:00</published><updated>2024-07-22T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2024/07/22/icmltut</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/07/22/post/"><![CDATA[<p>Participated (online) in the panel discussion with Bryan Perozzi, Michael Bronstein, and Christopher Morris on graph foundation models held during the <a href="https://icml2024graphs.ameyavelingker.com/">Graph Learning Tutorial</a> at ICML 2024, thanks Ameya and Adrian for inviting!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="talks" /><category term="gnn" /><summary type="html"><![CDATA[Participated (online) in the panel discussion with Bryan Perozzi, Michael Bronstein, and Christopher Morris on graph foundation models held during the Graph Learning Tutorial at ICML 2024, thanks Ameya and Adrian for inviting!]]></summary></entry><entry><title type="html">Foundation Models in Graph &amp;amp; Geometric Deep Learning</title><link href="https://migalkin.github.io/posts/2024/06/18/post/" rel="alternate" type="text/html" title="Foundation Models in Graph &amp;amp; Geometric Deep Learning" /><published>2024-06-18T00:00:00-07:00</published><updated>2024-06-18T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2024/06/18/gfms</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/06/18/post/"><![CDATA[<p>In our new <a href="https://medium.com/towards-data-science/foundation-models-in-graph-geometric-deep-learning-f363e2576f58">Medium blogpost</a> with Michael Bronstein, Jianan Zhao, Haitao Mao, and Zhaocheng Zhu we discuss foundation models in Graph &amp; Geometric DL: from the core theoretical and data challenges to the most recent models that you can try already today!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="research" /><category term="gnn" /><summary type="html"><![CDATA[In our new Medium blogpost with Michael Bronstein, Jianan Zhao, Haitao Mao, and Zhaocheng Zhu we discuss foundation models in Graph &amp; Geometric DL: from the core theoretical and data challenges to the most recent models that you can try already today!]]></summary></entry><entry><title type="html">Visiting WWW and National University of Singapore</title><link href="https://migalkin.github.io/posts/2024/05/15/post/" rel="alternate" type="text/html" title="Visiting WWW and National University of Singapore" /><published>2024-05-15T00:00:00-07:00</published><updated>2024-05-15T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2024/05/15/singapore</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/05/15/post/"><![CDATA[<p>A productive week in Singapore! First, gave a keynote at the workshop on <a href="https://www.www24gfm.com/">Graph Foundation Models at The WebConf 2024</a> and participated in the panel discussion. Then, visited the group of professor <a href="https://www.comp.nus.edu.sg/cs/people/xaviercs/">Xavier Bresson</a> at the National University of Singapore with the talk on graph foundation models - from KG reasoning to AI 4 Science. Thank you Professor Bresson for extending the invitation! <a href="/files/2024/NUS_Talk_slides.pdf">Slides</a></p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="talks" /><summary type="html"><![CDATA[A productive week in Singapore! First, gave a keynote at the workshop on Graph Foundation Models at The WebConf 2024 and participated in the panel discussion. Then, visited the group of professor Xavier Bresson at the National University of Singapore with the talk on graph foundation models - from KG reasoning to AI 4 Science. Thank you Professor Bresson for extending the invitation! Slides]]></summary></entry><entry><title type="html">Paper accepted at ICML 2024</title><link href="https://migalkin.github.io/posts/2024/05/08/post/" rel="alternate" type="text/html" title="Paper accepted at ICML 2024" /><published>2024-05-08T00:00:00-07:00</published><updated>2024-05-08T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2024/05/08/icml24</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/05/08/post/"><![CDATA[<p>Our position paper <a href="https://arxiv.org/abs/2402.02216">Graph Foundation Models are Already Here</a> was accepted at ICML 2024 as a <strong>spotlight paper</strong>!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="research" /><category term="gnns" /><summary type="html"><![CDATA[Our position paper Graph Foundation Models are Already Here was accepted at ICML 2024 as a spotlight paper!]]></summary></entry><entry><title type="html">FANeSy Workshop in Santiago, Chile</title><link href="https://migalkin.github.io/posts/2024/03/04/post/" rel="alternate" type="text/html" title="FANeSy Workshop in Santiago, Chile" /><published>2024-03-04T00:00:00-08:00</published><updated>2024-03-04T00:00:00-08:00</updated><id>https://migalkin.github.io/posts/2024/03/04/fanesy</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/03/04/post/"><![CDATA[<p>It was a delightful experience to participate in the week-long workshop on GNNs and neuro-symbolic AI (<a href="https://sites.google.com/view/fanesy-2024/main">FANeSy</a>) organized by Pablo Barcelo, CENIA, and Unversidad San Sebastian. Thanks Pablo for the invitation!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="talks" /><summary type="html"><![CDATA[It was a delightful experience to participate in the week-long workshop on GNNs and neuro-symbolic AI (FANeSy) organized by Pablo Barcelo, CENIA, and Unversidad San Sebastian. Thanks Pablo for the invitation!]]></summary></entry><entry><title type="html">Paper accepted at ICLR 2024</title><link href="https://migalkin.github.io/posts/2024/01/16/post/" rel="alternate" type="text/html" title="Paper accepted at ICLR 2024" /><published>2024-01-16T00:00:00-08:00</published><updated>2024-01-16T00:00:00-08:00</updated><id>https://migalkin.github.io/posts/2024/01/16/iclr24</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/01/16/post/"><![CDATA[<p>Our paper on <a href="https://github.com/DeepGraphLearning/ULTRA">ULTRA</a>, the first foundation model for KG reasoning, was accepted at ICLR 2024. See you in Vienna!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="research" /><category term="gnns" /><summary type="html"><![CDATA[Our paper on ULTRA, the first foundation model for KG reasoning, was accepted at ICLR 2024. See you in Vienna!]]></summary></entry><entry><title type="html">Graph &amp;amp; Geometric ML in 2024: Where We Are and What’s Next</title><link href="https://migalkin.github.io/posts/2024/01/15/post/" rel="alternate" type="text/html" title="Graph &amp;amp; Geometric ML in 2024: Where We Are and What’s Next" /><published>2024-01-15T00:00:00-08:00</published><updated>2024-01-15T00:00:00-08:00</updated><id>https://migalkin.github.io/posts/2024/01/15/review</id><content type="html" xml:base="https://migalkin.github.io/posts/2024/01/15/post/"><![CDATA[<p>Together with Michael Bronstein, we wrote a huge blog post on the state of affairs in Graph and Geometric DL in 2023 with some predictions for 2024. <a href="https://medium.com/towards-data-science/graph-geometric-ml-in-2024-where-we-are-and-whats-next-part-i-theory-architectures-3af5d38376e1">Part I</a> focuses on theory and GNN architectures (including graph transformers), <a href="https://medium.com/towards-data-science/graph-geometric-ml-in-2024-where-we-are-and-whats-next-part-ii-applications-1ed786f7bf63">Part II</a> talks about cool and exciting applications in structured biology, materials science, ML potentials, algorithmic reasoning, and temporal graph learning. We interviewed many prominent researchers to provide several points of view on each subject - so this work wouldn’t be possible without the massive community engagement!</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="blog" /><summary type="html"><![CDATA[Together with Michael Bronstein, we wrote a huge blog post on the state of affairs in Graph and Geometric DL in 2023 with some predictions for 2024. Part I focuses on theory and GNN architectures (including graph transformers), Part II talks about cool and exciting applications in structured biology, materials science, ML potentials, algorithmic reasoning, and temporal graph learning. We interviewed many prominent researchers to provide several points of view on each subject - so this work wouldn’t be possible without the massive community engagement!]]></summary></entry><entry><title type="html">Dagstuhl and UCSD talks</title><link href="https://migalkin.github.io/posts/2023/12/23/post/" rel="alternate" type="text/html" title="Dagstuhl and UCSD talks" /><published>2023-12-23T00:00:00-08:00</published><updated>2023-12-23T00:00:00-08:00</updated><id>https://migalkin.github.io/posts/2023/12/23/talks</id><content type="html" xml:base="https://migalkin.github.io/posts/2023/12/23/post/"><![CDATA[<p>A few talks on graph foundation models given recently: <a href="https://migalkin.github.io/talks/2023-10-11-ucsd">at UC San Diego</a> and at the <a href="https://www.dagstuhl.de/seminars/seminar-calendar/seminar-details/23491">Dagstuhl seminar on Scalable Graph Mining and Learning</a>.</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="research" /><category term="talks" /><summary type="html"><![CDATA[A few talks on graph foundation models given recently: at UC San Diego and at the Dagstuhl seminar on Scalable Graph Mining and Learning.]]></summary></entry><entry><title type="html">Release of ULTRA</title><link href="https://migalkin.github.io/posts/2023/10/23/post/" rel="alternate" type="text/html" title="Release of ULTRA" /><published>2023-10-23T00:00:00-07:00</published><updated>2023-10-23T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2023/10/23/ultra</id><content type="html" xml:base="https://migalkin.github.io/posts/2023/10/23/post/"><![CDATA[<p>Happy to release ULTRA - the first foundation model for knowledge graph reasoning. A single pre-trained ULTRA model is able to do zero-shot link prediction on <strong>any</strong> unseen KG and do so better than many supervisedly trained baselines on 50+ datasets! More details in the <a href="https://medium.com/towards-data-science/ultra-foundation-models-for-knowledge-graph-reasoning-9f8f4a0d7f09">Medium blog post</a>. We release the paper, several checkpoints (177k params), code, and data on <a href="https://github.com/DeepGraphLearning/ULTRA">GitHub</a> and <a href="https://huggingface.co/collections/mgalkin/ultra-65699bb28369400a5827669d">HuggingFace Spaces</a>.</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="gnns" /><category term="research" /><summary type="html"><![CDATA[Happy to release ULTRA - the first foundation model for knowledge graph reasoning. A single pre-trained ULTRA model is able to do zero-shot link prediction on any unseen KG and do so better than many supervisedly trained baselines on 50+ datasets! More details in the Medium blog post. We release the paper, several checkpoints (177k params), code, and data on GitHub and HuggingFace Spaces.]]></summary></entry><entry><title type="html">2 papers accepted at NeurIPS 2023</title><link href="https://migalkin.github.io/posts/2023/09/21/post/" rel="alternate" type="text/html" title="2 papers accepted at NeurIPS 2023" /><published>2023-09-21T00:00:00-07:00</published><updated>2023-09-21T00:00:00-07:00</updated><id>https://migalkin.github.io/posts/2023/09/21/neurips23papers</id><content type="html" xml:base="https://migalkin.github.io/posts/2023/09/21/post/"><![CDATA[<p>Our team got two papers accepted at the upcoming NeurIPS’23 in New Orleans!</p>
<ul>
  <li>A*Net: A Scalable Path-based Reasoning Approach for Knowledge Graphs. Zhaocheng Zhu, Xinyu Yuan, <strong>Mikhail Galkin</strong>, Sophie Xhonneux, Ming Zhang, Maxime Gazeau, Jian Tang. <a href="https://arxiv.org/abs/2206.04798">preprint</a></li>
  <li>Improving Systematic Generalization using Iterated Learning and Simplicial Embeddings. Yi Ren, Samuel Lavoie, <strong>Mikhail Galkin</strong>, Danica J. Sutherland, Aaron Courville.</li>
</ul>

<p>See you at NeurIPS! :wink:</p>]]></content><author><name>Michael Galkin</name><email>mgalkin at google dot com</email></author><category term="graph ml" /><category term="gnns" /><category term="research" /><summary type="html"><![CDATA[Our team got two papers accepted at the upcoming NeurIPS’23 in New Orleans! A*Net: A Scalable Path-based Reasoning Approach for Knowledge Graphs. Zhaocheng Zhu, Xinyu Yuan, Mikhail Galkin, Sophie Xhonneux, Ming Zhang, Maxime Gazeau, Jian Tang. preprint Improving Systematic Generalization using Iterated Learning and Simplicial Embeddings. Yi Ren, Samuel Lavoie, Mikhail Galkin, Danica J. Sutherland, Aaron Courville.]]></summary></entry></feed>