#graphml 搜索结果
With Legendary prof. Xavier Bresson #graph #graphml #machinelearning #ml #AI #ArtificialIntelligence #mathematics
Ecstatic✨ to share that I'm headed to @CarnegieMellon @mldcmu for a Ph.D. in Machine Learning this Fall! As I gear up to graduate from @IIITDelhi👨🏻🎓 with a #BTech in #csai, I'm exhilarated for this exciting new journey at @SCSatCMU. I'll be working on #GraphML & #NLProc!
🚀 New move spotted: @karishgrover joins Meta AI as a Visiting Researcher, while pursuing his PhD at CMU. His work? #GeometricDL & #GraphML 🌐 Check out his profile on @dinq_io ⬇️
Excited to share that I’ve joined @Meta as a Visiting Researcher for the next year, in their Pittsburgh office, alongside my PhD at @mldcmu. I’ll be working on #GeometricDL and #GraphML, with @YinglongXia & @zimplex4, under the @AIatMeta AI Mentorship Program.
Finally leveraging the opportunity to attend events in Bay Area. Very excited! @Stanford #GraphML #workshop
Learn how to make accurate predictions from your enterprise data. See for yourself how easy it is to go from raw data to predictions with Kumo: hubs.ly/Q02K24PQ0 #GraphML #PredictiveAnalytics #AI #DataScience #DataAnalytics #CloudIntegration #MLModels #KumoAI
From Graph Benchmark Challenges to future #GNN breakthroughs, this #GraphML piece from @Mila_Quebec's @michael_galkin is a must-read for anyone working with Graph Neural Networks in 2023 ⬇️ hubs.la/Q01wRfd10
Excited to share that I’ve joined @Meta as a Visiting Researcher for the next year, in their Pittsburgh office, alongside my PhD at @mldcmu. I’ll be working on #GeometricDL and #GraphML, with @YinglongXia & @zimplex4, under the @AIatMeta AI Mentorship Program.
The @LogConference, the leading conference dedicated to graph machine learning, is happening! Submission deadline: September 11th, 2024 Final decision: November 13th, 2024 Don't miss out on this opportunity! More details at logconference.org/cfp/#LoG2024 #GraphML #MachineLearning…
🚨 Exciting news! We released 🎱 tgp (Torch Geometric Pool), the library for pooling in Graph Neural Networks. 🚀 Get started with our tutorials: torch-geometric-pool.readthedocs.io/en/latest/tuto… With @IvanMarisca and Carlo Abate. #GraphML #GNN #Pooling #Pyg
My latest article: “Unleashing the Power of Data: Integrating Knowledge Graphs and Retrieval Augmented Generation with…” by Jason Kronemeyer #GraphDataScience #GraphML #Neo4j #JKnowledge medium.com/@jfkrone/unlea…
🌍 Excited to share worldwide Active Meetups for the Learning on Graphs Conference 2024! Connect locally, discuss cutting-edge research, and collaborate globally in ML on graphs & geometry. Find your meetup here: logconference.org💡#LOG2024 #GraphML #Networking
🛠️ Want to simplify your data analysis? Dr. Ashleigh N. Faith breaks down how Tom Sawyer Software's suite empowers you to use graphML effortlessly. No coding? No problem! Watch her insightful review and unlock your data's potential: hubs.li/Q03dBwQ80 #GraphML #TechReview…
🧬 Thu 7 Aug | 5 PM EAT: Dr Michalis K. Titsias (DeepMind) on Learning-Order Autoregressive Models for Molecular Graph Gen 🚀 SOTA on QM9 & ZINC250k! 🔗 calendar.app.google/X2JaaTwLsaVSqV… 🌐 theciggroup.net #AI #GraphML #DeepMind #CIG
The preprint of our work "DINE: Dimensional Interpretability of Node Embeddings", made with @meghakhosla, @apanisson and @run4avi is out on @arxiv! Great collaboration that started with a @SoBigData Transnational Access. arxiv.org/abs/2310.01162 #TNA #XAI #GraphML
📢 Last CFP for GbRPR 2025! Join us in Caen 🇫🇷 (June 25–27, 2025) for the GBRPr, a workshop on Graphs and Pattern Recognition. ✨ Journal Specia Issue and proceedings ✨ Talks by C. Solnon & F. Malliaros ✨ Paper deadline: Feb 3 ✨ Low fees 🎉 iapr.org/gbr2025 #GraphML
𝗚𝗿𝗮𝗽𝗵𝘀 + 𝗟𝗟𝗠𝘀: 𝗔 𝗡𝗮𝘁𝘂𝗿𝗮𝗹 𝗙𝗶𝘁? Glad to share our latest preprint: Graph Linearization Methods for Reasoning on Graphs with Large Language Models (now on arXiv: arxiv.org/abs/2410.19494) #LLMs #GraphML #NLP #AIResearch #MultimodalAI
(7/7) More at 👇 📘 FedGraph: openreview.net/forum?id=d48Hj… 📘 FedLink: openreview.net/forum?id=D7PiC… 🌍 Federated Graph Learning — shaping the next frontier of privacy-aware, multi-agent AI. #NeurIPS2025 #GraphML #FederatedLearning #PrivacyAI #FedGraph #FedLink #AIResearch
This article tests how degree, clustering, and topology–feature ties sway GNN and feature-only models using HypNF synthetic graphs. - hackernoon.com/choose-the-rig… #graphml #gnnbenchmark
Synthetic HypNF graphs reveal GNN fragilities: HGCN beats GCN on dense, homogeneous nets but falters on sparse power-law ones. - hackernoon.com/a-hyperbolic-b… #graphml #gnnbenchmark
🚀 New move spotted: @karishgrover joins Meta AI as a Visiting Researcher, while pursuing his PhD at CMU. His work? #GeometricDL & #GraphML 🌐 Check out his profile on @dinq_io ⬇️
Excited to share that I’ve joined @Meta as a Visiting Researcher for the next year, in their Pittsburgh office, alongside my PhD at @mldcmu. I’ll be working on #GeometricDL and #GraphML, with @YinglongXia & @zimplex4, under the @AIatMeta AI Mentorship Program.
Excited to share that I’ve joined @Meta as a Visiting Researcher for the next year, in their Pittsburgh office, alongside my PhD at @mldcmu. I’ll be working on #GeometricDL and #GraphML, with @YinglongXia & @zimplex4, under the @AIatMeta AI Mentorship Program.
Have you checked out S-CGIB? github.com/NSLab-CUK/S-CG… Our molecular graph model, accepted at #AAAI25, showed #SOTA results on molecular property prediction. A gentle reminder to explore! 🚀 #GraphML #GNNs #SOTA
github.com
GitHub - NSLab-CUK/S-CGIB: Subgraph-conditioned Graph Information Bottleneck (S-CGIB) is a novel...
Subgraph-conditioned Graph Information Bottleneck (S-CGIB) is a novel architecture for pre-training Graph Neural Networks in molecular property prediction and developed by NS Lab, CUK based on pure...
A quick reminder: Workshop on Graph-Augmented LLMs (GaLM) at @ICDM2025 is still accepting submissions! #LLM #GraphML #GraphAnalytics 📝 Papers — Extended deadline: September 5 More Info to submit your work here: iitbhu.ac.in/cf/jcsic/activ…
With Legendary prof. Xavier Bresson #graph #graphml #machinelearning #ml #AI #ArtificialIntelligence #mathematics
🧬 Thu 7 Aug | 5 PM EAT: Dr Michalis K. Titsias (DeepMind) on Learning-Order Autoregressive Models for Molecular Graph Gen 🚀 SOTA on QM9 & ZINC250k! 🔗 calendar.app.google/X2JaaTwLsaVSqV… 🌐 theciggroup.net #AI #GraphML #DeepMind #CIG
Promotional Video: youtube.com/watch?v=hEeCuv… #GraphML #ResponsibleAI 👇
youtube.com
YouTube
KDD 2025 - Finding Counterfactual Evidences for Node Classification
Come to the paper & poster sessions of my PhD student @DazhuoQiu @kdd_news #KDD25 #KDD2025 for our paper "𝘍𝘪𝘯𝘥𝘪𝘯𝘨 𝘊𝘰𝘶𝘯𝘵𝘦𝘳𝘧𝘢𝘤𝘵𝘶𝘢𝘭 𝘌𝘷𝘪𝘥𝘦𝘯𝘤𝘦𝘴 𝘧𝘰𝘳 𝘕𝘰𝘥𝘦 𝘊𝘭𝘢𝘴𝘴𝘪𝘧𝘪𝘤𝘢𝘵𝘪𝘰𝘯" arxiv.org/pdf/2505.11396 (work w/ @FrancescoBonchi) 👇
What if message passing in GNNs followed hyperbolic PDEs? This work reformulates GNN dynamics as a hyperbolic PDE system, mapping node features into eigenvector solution spaces unlocking topological interpretability Boosts performance across graph tasks #GraphML #icml2025 #AI #ML
🚨 Reviewer Call — LoG 2025 📷 Passionate about graph ML or GNNs? Help shape the future of learning on graphs by reviewing for the LoG 2025 conference! 📷forms.gle/Ms21k7oE8kF1Pd… 📷 RT & share! #GraphML #GNN #ML #AI #CallForReviewers
Just read a cool paper at #ICML2025: ML2-GCL – a manifold learning inspired, lightweight GCL method that: 1. Avoids risky augmentations with single-view design 2. Recovers global structure from local fits 3. Offers a closed-form solution, boosting efficiency #GraphML #AI #ML #DL
🚨 Calling all ML & AI companies! The LOG 2025 sponsor page is now live: logconference.org/sponsors/ LOG is the go-to venue for graph ML, reasoning & systems research. We're inviting sponsors to support this fast-growing community & gain visibility. #LOG2025 #GraphML #MachineLearning
Excited to be in Vancouver this week for #ICML2025!🌍✈️. Presenting our paper on curvature-based graph anomaly detection: 📍 East Exhibition Hall A-B E2900 📅 Tue, 15 July | 4:30 – 7:00 PM PDT 🔗 arxiv.org/abs/2502.08605 Drop by to chat about #geometricDL and #graphML! 🚀🧩
New paper alert! 🚀📈 #ICML2025 @icmlconf Can graph curvature uncover hidden anomalies overlooked by traditional methods? 💡Introducing CurvGAD, a mixed-curvature graph autoencoder designed to detect curvature-based geometric anomalies. 🔗 arxiv.org/pdf/2502.08605 (1/9)
🚨 Exciting news! We released 🎱 tgp (Torch Geometric Pool), the library for pooling in Graph Neural Networks. 🚀 Get started with our tutorials: torch-geometric-pool.readthedocs.io/en/latest/tuto… With @IvanMarisca and Carlo Abate. #GraphML #GNN #Pooling #Pyg
🚀 Improve your graphs for machine learning tasks! Graph quality is critical for classification, community detection, and various other ML tasks. 👇 Read now #MachineLearning #GraphML #DataScience eivindkjosbakken.wordpress.com/2025/07/08/how…
𝗚𝗿𝗮𝗽𝗵𝘀 + 𝗟𝗟𝗠𝘀: 𝗔 𝗡𝗮𝘁𝘂𝗿𝗮𝗹 𝗙𝗶𝘁? Glad to share our latest preprint: Graph Linearization Methods for Reasoning on Graphs with Large Language Models (now on arXiv: arxiv.org/abs/2410.19494) #LLMs #GraphML #NLP #AIResearch #MultimodalAI
new priprint "SliceGX: Layer-wise GNN Explanation with Model-slicing" arxiv.org/abs/2506.17977 - a novel GNN explanation approach that generates explanations at specific GNN layers in a progressive manner. #GraphML #ExplainableAI #NetworkDissection #ModelSlice
I just wrote a blog for all of you who want to step into this beautiful world of Graph ML but you're not sure how to start. Blog: gordicaleksa.medium.com/how-to-get-sta… I shared exciting applications. I shared and structured the resources. And much more. #graphml
💥 Graph Algorithms for Data Science by @tb_tomaz. okt.to/kpMI2a @manningbooks #graphML #neo4j #Cypher #graphdb #graphanalytics #datascience #NLP #twin4j
🚀 New move spotted: @karishgrover joins Meta AI as a Visiting Researcher, while pursuing his PhD at CMU. His work? #GeometricDL & #GraphML 🌐 Check out his profile on @dinq_io ⬇️
Excited to share that I’ve joined @Meta as a Visiting Researcher for the next year, in their Pittsburgh office, alongside my PhD at @mldcmu. I’ll be working on #GeometricDL and #GraphML, with @YinglongXia & @zimplex4, under the @AIatMeta AI Mentorship Program.
New GNNs? On Tuesday in the #GraphML reading group James Rowbottom and @b_p_chamberlain present their "GRAND: Graph Neural Diffusion" + their #NeurIPS2021 paper "Beltrami Flow and Neural Diffusion on Graphs" out of @mmbronstein's group @Twitter! Zoom: hannes-stark.com/logag-reading-… 1/2
🚀 Unlock the future of data science with our comprehensive suite featuring Graph Analytics, GraphML, and Graph-Powered GenAI, powered by the ArangoDB LangChain Integration Pack! Register Now:- okt.to/Sm5g7P #DataScience #GraphML #GraphRAG #LangChain
KeyError exception while reading a GraphML file with NetworkX occurs in Visual Studio 2017 but not Spyder stackoverflow.com/questions/6537… #visualstudio2017 #python #graphml #networkx
New year is a good time to is a good time to recap and make predictions. In a new post in @TDataScience I sought the opinion of 12 prominent researchers in the field of #GraphML to predict what is in store for 2021. towardsdatascience.com/predictions-an…
Ecstatic✨ to share that I'm headed to @CarnegieMellon @mldcmu for a Ph.D. in Machine Learning this Fall! As I gear up to graduate from @IIITDelhi👨🏻🎓 with a #BTech in #csai, I'm exhilarated for this exciting new journey at @SCSatCMU. I'll be working on #GraphML & #NLProc!
How to create Heterogeneous GNNs using PyTorchGeometric. ⭐️ Using to_hetero(): Convert a homogeneous GNN model to a heterogeneous GNN. ⭐️ Using HeteroConv: This allows you to define custom heterogeneous message-passing functions for different edge types. #gnn #nn #graphml #pyg
Day 12 of #100DaysOfCode Revisited spectral clustering lecture. Oh, the magic of eigendecomposition 🧙♀️✨ #GraphML #AI #WomenWhoCode #WomenInSTEM
Finally leveraging the opportunity to attend events in Bay Area. Very excited! @Stanford #GraphML #workshop
Day 71-76 of #100DaysOfCode For a graph-level classification task: ✅Trained a GCN-based model ✅Trained a Chebnet-based model #GraphML #geometricDL #WomenInSTEM #WomenWhoCode
Get ready to harness the power of Graph Machine Learning! Join our webinar to explore ArangoGraphML and its intuitive Jupyter Notebook interface. Register now to enhance your GraphML skills! okt.to/ChiG45 #GraphML #webinar #data
Learn how to make accurate predictions from your enterprise data. See for yourself how easy it is to go from raw data to predictions with Kumo: hubs.ly/Q02K24PQ0 #GraphML #PredictiveAnalytics #AI #DataScience #DataAnalytics #CloudIntegration #MLModels #KumoAI
Very excited about this project! We need to start opening graph neural nets to high-stakes domains #biomedicalAI Our approach can be used with any #GNN to learn provably fair and stable embeddings zitniklab.hms.harvard.edu/projects/NIFTY #graphML #trustworthyML @_cagarwal @hima_lakkaraju
We introduce and experiment with three new graph datasets comprising of high-stakes decision-making applications. Our results show that NIFTY improves the fairness and stability of SOTA GNNs by 92.01% and 60.87%, respectively, without sacrificing predictive performance [7/n]
Days 68 & 69 of #100Daysofcode ✅ Created my own dataset from PyG's InMemoryDataset class (see below MyOmicsDataset) ➡️ Stored 578 graphs on it ➡️ Each graph having nodes features & graph label #GraphML #WomenWhoCode #WomenInSTEM
Unlock the power of Graph Machine Learning! Join our webinar to explore ArangoGraphML and its intuitive Jupyter Notebook interface. Whether you're a data pro or a beginner, this event is tailored for you. Register now to enhance your #GraphML skills! okt.to/Zt2IoC
From Graph Benchmark Challenges to future #GNN breakthroughs, this #GraphML piece from @Mila_Quebec's @michael_galkin is a must-read for anyone working with Graph Neural Networks in 2023 ⬇️ hubs.la/Q01wRfd10
Days 5 & 6 of #100DaysOfCode ✅ Finished Homework 1 of the #CS224W course ✅ Uploaded to github Next week I'll deepen into feature-based methods and community detection algorithms. #GraphML #AI #WomenWhoCode #womenintech
Yesterday I visited @MIT_CSAIL to present a poster at the @LogConference Boston local meetup! It was very interesting to talk about Graph ML and meet very nice researchers. Thanks @dereklim_lzh for organizing it! #LoG #GraphML #CSAIL #MIT
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