Happy to share that our latest research, titled ‘Multimodal Neural Network-Based Predictive Modeling of Nanoparticle Properties from Pure Compounds by Can Polat, Mustafa Kurban, and Hasan Kurban’, has been accepted for publication in Machine Learning: Science and Technology. Our novel approach marks a unique advancement at the intersection of materials science and multimodal approaches, offering…
The extended abstract of our paper, “p-ClustVal: A Novel p-adic Approach for Enhanced Clustering of High-Dimensional scRNASeq Data” is available at IEEE Xplore (https://ieeexplore.ieee.org/document/10722799)
Excited to share that our recent work on using alternate data representation for enhancing cluster discernment in high dimensional single cell RNA Sequencing data has been accepted at the 11th IEEE International Conference on Data Science & Analytics (DSAA 2024).
Thrilled to share that our latest research, titled ‘QuantumShellNet: Ground-State Eigenvalue Prediction of Materials Using Electronic Shell Structures and Fermionic Properties via Convolutions by Can Polat, Hasan Kurban, and Mustafa Kurban’, has been accepted for publication in Computational Materials Science. This study marks a significant advancement at the intersection of materials science and computer vision,…
We are excited to announce that our latest research, titled “Enhancing the Electronic Properties of TiO₂ Nanoparticles through Carbon Doping: An Integrated DFTB and Computer Vision Approach by Mustafa Kurban, Can Polat, and Hasan Kurban”, has been accepted for publication in Computational Materials Science. This work represents an advancement at the intersection of materials science…

Our group pic. From left, Mehmet, Parichit, Dr. Kurban, Mert, Hasan and Fahrettin. We thought it would be nice to take the picture before some people leave for their parent campus.
We are glad to announce that we are organizing the special session-“Advancing Materials Science Through Data Science:Innovations, Applications and Challenges” at 11th IEEE, International Conference on Data Science & Analytics, 2024. Many thanks to all those who submitted their papers. We will see you all there 🙂 More Info: https://www.dsaa2024-specialsession-data-driven-material-science.com/homepage
Our paper – “What Data-Centric AI can Do for Kmeans: a Faster, Robust Kmeans-d” has been accepted at the Proceedings of the 41st International Conference on Machine Learning (ICML), Data-Centric Machine Learning Workshop (DMLR), to be held in Vienna, Austria.
Our paper “An Extended de Bruijn Graph for Feature Engineering Over Biological Sequential Data” has been accepted to Machine Learning: Science and Technology (Impact Factor: 6.8).
We just published our website. Expect more posts and info about our research soon.