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CCSC 2024
Schedule
Venue
Team
Posters
Talks
List of Speakers
Keynote Talks
Prof. Alexandre Tkatchenko
, University of Luxembourg
Exploring Chemical Space Directly and Inversely
Prof. Steven Lopez
, Northeastern University (US)
Machine-learning-accelerated photodynamics simulations in complex environments towards new materials and medicines
Prof. Heather Kulik
, Massachusetts Institute of Technology (US)
Machine Learning for Open Shell Transition Metal Complex and Metal-Organic Framework Discovery
Prof. Yousung Jung
, Seoul National University (KR)
Synthesis Predictions Enabled by Machine Learning
Prof. Fernanda Duarte
, University of Oxford (UK)
Modelling Chemical Reactions in Solution with Machine Learning Potentials – Balancing Efficiency and Accuracy
Prof. Jacqueline Cole
, University of Cambridge (UK)
Auto-generated Materials Databases and Language Models
Prof. Michele Ceriotti
, EPFL (CH)
Hic sunt dracones - Uncertainty quantification for trustworthy exploration of chemical space
Invited Talks
Prof. Julia Westermayr
, University of Leipzig (DE)
Chemical discovery assisted by machine learning
Prof. Milica Todorović
, Turku University (FI)
Active learning for data-efficient optimisation of functional materials
Prof. Guido von Rudorff
, University of Kassel (DE)
Symmetries and the Intrinsic Dimensionality of Chemical Space
Prof. Paul Popelier
, University of Manchester (UK)
FFLUX
Prof. Klaus Robert Müller
, TU Berlin (DE)
XAI meets chemistry
Prof. David Mobley
, University of California, Irvine (US)
Using computation to design and explore compound libraries, with an emphasis on DELs
Prof. John Keith
, University of Pittsburgh (US)
New paradigms for computationally interrogating atomic scale reaction mechanisms
Prof. Olexandr Isayev
, Carnegie Mellon University (US)
Scaling Molecular Modelling to Millions of Reactions with AIMNet2 Neural Network Potential
Prof. Renana Gershoni-Poranne
, Technion Israel Institute of Technology (IL)
Data is a Girl’s Best Friend: From High-Throughput Computations to Generative Deep Learning
Prof. Pavlo Dral
, Xiamen University (CN)
AI simulations in chemical compound space
John Chodera
, Memorial Sloan Kettering Cancer Center (US)
Teaching free energy calculations to learn
Invited Communication Talks
Prof. Julija Zavadlav
, TUM School of Engineering and Design, Technical University of Munich
Deep Coarse-grained Molecular Modeling
Stefan Vuckovic
, University of Fribourg, Switzerland
Transferability in machine-learned density functionals
Enrico Tapavicza
, University Regensburg
Computational design of light-driven molecular nanomotors
Prof. Thijs Stuyver
, Ecole Nationale Supérieure de Chimie de Paris, Université PSL
Hybrid computational workflows for reaction screening & discovery
Dr. Phillip Seeber
, Friedrich Schiller University Jena
Spicy – A Functional Computational Framework for Multilayer Fragment Methods
Rebecca Manuela Neeser
, EPFL (CH)
FSscore: A Personalized Machine Learning-based Synthetic Feasibility Score
Prof. Markus Meuwly
, Basel University
Machine Learning-Based Potential Energy Surfaces for Molecular Simulation
Prof. Sergei Manzhos
, Tokyo Institute of Technology
Reliable machine learning form sparse data in high dimension with additive kernel based methods
Dr. Rubén Laplaza
, École Polytechnique Fédérale de Lausanne (EPFL)
Navigating homogeneous catalyst landscapes
Bing Huang
, Wuhan University
Approaching Exact Quantum Chemistry through Data-Driven Multi-scale and Multi-fidelity Machine Learning Models
Dr. Lukas Hörmann
, University of Warwick, Coventry (UK)
Atomic-scale insights into frictional energy dissipation mechanisms
Prof. Pascal Friederich
, Karlsruher Institut für Technologie (KIT), Germany
MEGAN: Multi-explanation Graph Attention Network
Prof. François-Xavier Coudert
, PSL University, Paris (FR)
Data-based methods to accelerate discovery of novel materials and better understand old ones
Prof. Christoph Bannwarth
, Aachen University
MolBar: A Molecular Identifier for Inorganic and Organic Molecules with Full Support of Stereoisomerism
Prof. David Balcells
, University of Oslo
Generative Machine Learning in the Transition Metal Compound Space
Dr. Andy S. Anker
, Department of Energy, Danish Technical University, DenmarkDepartment of Chemistry, University of Oxford, England
Machine learning for analysis of experimental scattering data in materials chemistry
Speed Talks
Jan Weinreich
, École Polytechnique Fédérale de Lausanne (EPFL), National Center for Competence in Research-Catalysis (NCCR-Catalysis)
Cost-Informed Bayesian Reaction Optimization
Prof. Joshua Schrier
, Fordham University, New York
Large Language Models are a Strong Baseline for Inorganic Synthesizability and Precursor Selection Prediction
Kai Riedmiller
, Heidelberg University
KIMMDY - Kinetic Monte Carlo Molecular Dynamics
Kimberly J. Daas
, Vrije Universiteit Amsterdam (NL)
The Next Generation of Møller-Plesset Adiabatic Connection Functionals for Non-Covalant Interactions