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Computational Electronic Structure Theory (CEST)

The Computational Electronic Structure Theory Group is developing electronic structure and machine learning methods and applies them to pertinent problems in material science, surface science, physics, chemistry and the nano sciences.
Back row from left: P. Henkel, J. Löfgren, M. Stosiek, J. Järvi, O. Krejci; middle: A. Tiihonen, E. Lehto, M. Marques, V. Havu, H. Sandström, M. Iannacchero, J. Laakso; front: L. Fang, F. Delesma, P. Pisal, N. Bhatia, P. Rinke, K. Ghosh

Research

We develop density-functional theory (DFT) for the electronic ground state and Green's function methods for excited states. Our favourite Green's function method is the GW approach. We are currently researching the application of GW to core level spectroscopy, a powerful tool to characterize molecules, liquids and adsorption processes at surfaces. We are also going beyond GW by combining it with the configuration interaction method to capture static correlation in strongly correlated systems.

For wide dissemination, we implement most of our developments into the Fritz Haber Institute ab initio molecular simulations package (FHI-aims). If you are interested in using FHI-aims for your own work or if you would like to contribute to FHI-aims, please contact us.

For more information on the GW approach, see our recent review article:

The GW Compendium: A Practical Guide to Theoretical Photoemission
Spectroscopy, D. Golze, M. Dvorak, and P. Rinke, Front. Chem. 7, 377
(2019)

For recent developments see:

Quantum embedding theory in the screened Coulomb interaction: Combining
configuration interaction with GW/BSE, M. Dvorak, D. Golze, and P.
Rinke, Phys. Rev. Materials 3, 070801(R) (2019)

Core-Level Binding Energies from GW: An Efficient Full-Frequency
Approach within a Localized Basis, D. Golze, J. Wilhelm, M. van Setten,
and P. Rinke, J. Chem. Theory Comput. 14, 4856 (2018)

Machine learning is a branch of artificial intelligence and is currently revolutionizing research practices in the natural sciences. Machine learning models are trained on materials data already available from experiments or computations by creating statistically optimized relationships between the given data. Once the model is trained sufficiently, it can make predictions for new materials or infer correlations with almost the same accuracy as the data generation method, but in only a fraction of the time and with a fraction of the computational or experimental effort. We currently pursue two main machine learning research lines: BOSS and ARTIST.

BOSS: Bayesian Optimization Structure Search is an active learning technique for global exploration of energy and property phase space, and for accelerated structure determination.

Bayesian inference of atomistic structure in functional materials, M. Todorović, M. U. Gutmann, J. Corander and P. Rinke, npj Comp. Mat. 5, 35(2019)

ARTIST: Artificial Intelligence for Spectroscopy is a suite of machine learning methods for excited states and spectral properties. We are exploring kernel ridge regression for individual excitation energies and neural networks for excitation spectra. We are also developing descriptors for atomistic representations. These descriptors are available in the DScribe Phython library.

Chemical diversity in molecular orbital energy predictions with kernel ridge regression, A. Stuke, M. Todorović, M. Rupp, C. Kunkel, K. Ghosh, L. Himanen, and P. Rinke, J. Chem. Phys. 150, 204121 (2019)

Deep Learning Spectroscopy: Neural Networks for Molecular Excitation Spectra, K. Ghosh, A. Stuke, M. Todorović, P. B. Jørgensen, M. N. Schmidt, A. Vehtari and P. Rinke, Adv. Sci. 6, 1801367 (2019)

DScribe: Library of descriptors for machine learning in materials science, L. Himanen, M. O. J. Jäger, E. V. Morooka, F. F. Canova, Y. S. Ranawat, D. Z. Gao, P. Rinke, and A. S. Foster, Comp. Phys. Commun. 247, 106949 (2020)

Data-driven science is heralded as a new paradigm in materials science. In this field, data is the new resource, and knowledge is extracted from materials datasets that are too big or complex for traditional human reasoning - typically with the intent to discover new or improved materials or materials phenomena. We are currently involved in the development of two materials infrastructures, the Novel Materials Discovery (NOMAD) laboratory, and the Aalto Materials Digitalization Platform.

Data‐Driven Materials Science: Status, Challenges, and Perspectives, L. Himanen, A. Geurts, A. S. Foster and P. Rinke, Adv. Sci. 6, 1900808 (2019)

Materials structure genealogy and high-throughput topological classification of surfaces and 2D materials, L. Himanen, P. Rinke, and A. S. Foster, npj Comput. Mater. 4, 52 (2018)

Biomaterials play a crucial role in our pursuit of a sustainable society. Feedstock from biomass (e.g., wood) processed in biorefineries can provide us with as a renewable source of materials such as chemicals, solvents, and polymers that can subsequently be incorporated into high-value products. Bio materials furthermore offer alternative routes for waste management through biodegradation processes and promote equality in the global economy by decreasing our reliance on scarce raw materials.

To accelerate the development of new technologies for biomaterials, we are researching machine learning-assisted approaches to materials processing and modelling. Our current efforts focus on applying Bayesian optimization, through our in-house developed code BOSS, as a means of planning experiments and predicting their outcome.

For an application of machine learning and BOSS to optimize a novel biorefinery concept for green lignin extraction based on hydrothermal pre-treatment of hardwood followed by aqueous-acetone extraction see:

Machine Learning Optimization of Lignin Properties in Green Biorefineries. J. Löfgren, D. Tarasov, T. Koitto, P. Rinke, M. Balakshin, and M. Todorović, ACS Sustainable Chem. Eng. (2022)

For an application of machine learning and BOSS to predict the morphology of colloidal, oxidized tannic acid particles see:

Machine Learning as a Tool to Engineer Microstructures: Morphological Prediction of Tannin-Based Colloids Using Bayesian Surrogate Models. S.-A. Jin, T. Kämäräinen, P. Rinke, O. J. Rojas, and M. Todorovic, MRS Bulletin (2022)

Molecules may aggregate into aerosols in the atmosphere. Such cluster formation affects air quality and the climate. We develop and apply artificial intelligence (AI) methods to model molecular processes in the atmosphere and to predict and understand molecular cluster formation. We are also developing digital twins of molecular processes and scientific instruments for a virtual laboratory in atmospheric science. The CEST group is part of the Virtual Laboratory for Molecular Level Atmospheric Transformations (VILMA) Centre of Excellence.

Predicting gas–particle partitioning coefficients of atmospheric molecules with machine learning, E. Lumiaro, M. Todorović, T. Kurten, H. Vehkamäki, and P. Rinke, Atmos. Chem. Phys. 21, 13227 (2021)

Clean energy use and generation is one of society's grandest challenges. We apply our electronic structure theory and machine learning methods to study suitable materials for clean energy solutions. We investigate novel hybrid perovskite solar cell materials, catalysts for hydrogen production and organic light emitters and solar cells.

Database-driven high-throughput study of coating materials for hybrid perovskites, A. Seidu, L. Himanen, J. Li, and P. Rinke, New J. Phys. 21,
083018 (2019)

Activation Energy of Organic Cation Rotation in CH3NH3PbI3 and CD3NH3PbI3: Quasi-Elastic Neutron Scattering Measurements and First-Principles Analysis Including Nuclear Quantum Effects, J. Li, M. Bouchard, P. Reiss, D. Aldakov, S. Pouget, R. Demadrille, C. Aumaitre, B. Frick, D. Djurado, M. Rossi, and P. Rinke, J. Phys. Chem. Lett. 9, 3969 (2018)

Research into future technologies has come to focus on miniature multi-material devices and nanostructures, with the intent of harnessing quantum mechanical phenomena to perform an automated function such as generating signals or separating atoms or charges. Organic and inorganic materials are frequently employed side-by-side to take advantage of their unique capabilities. While the properties of the individual substances or bulk materials are known, it is not always possible to predict or measure what occurs at the boundary between them.

We apply our electronic structure theory and machine learning methods to organic-molecule protected noble metal clusters, DNA-stabilized silver clusters, and organic films on inorganic semiconductors and metals. These systems hold great potential for applications in electronic devices, catalysis, biochemical sensing and medical treatments.

Bayesian inference of atomistic structure in functional materials, M. Todorović, M. U. Gutmann, J. Corander and P. Rinke, npj Comp. Mat. 5, 35(2019)

Optical Properties of Silver-Mediated DNA from Molecular Dynamics and Time Dependent Density Functional Theory, E. Makkonen, P. Rinke, O. Lopez-Acevedo, and X. Chen, Int. J. Mol. Sci. 19, 2346 (2018)

Charge-transfer driven nonplanar adsorption of F4TCNQ molecules on epitaxial graphene, A. Kumar, K. Banerjee. M. Dvorak. F. Schulz. A. Harju, P. Rinke and P. Liljeroth, ACS Nano 11, 4960 (2017)

Latest Publications

SP-LCC — a dataset on the structure and properties of lignin-carbohydrate complexes from hardwood

Marie Alopaeus, Matthias Stosiek, Daryna Diment, Joakim Löfgren, Mi Jung Cho, Jarl Hemming, Teija Tirri, Andrey Pranovich, Patrik C. Eklund, Davide Rigo, Mikhail Balakshin, Chunlin Xu, Patrick Rinke 2025 Scientific Data

Precision benchmarks for solids : G0W0 calculations with different basis sets

Maryam Azizi, Francisco A. Delesma, Matteo Giantomassi, Davis Zavickis, Mikael Kuisma, Kristian Thyghesen, Dorothea Golze, Alexander Buccheri, Min Ye Zhang, Patrick Rinke, Claudia Draxl, Andris Gulans, Xavier Gonze 2025 Computational Materials Science

Exploring noncollinear magnetic energy landscapes with Bayesian optimization

Jakob Baumsteiger, Lorenzo Celiberti, Patrick Rinke, Milica Todorović, Cesare Franchini 2025 Digital Discovery

Technical note : Towards atmospheric compound identification in chemical ionization mass spectrometry with pesticide standards and machine learning

Federica Bortolussi, Hilda Sandström, Fariba Partovi, Joona Mikkilä, Patrick Rinke, Matti Rissanen 2025 Atmospheric Chemistry and Physics

Enhancing Lignin-Carbohydrate Complexes Production and Properties With Machine Learning

Daryna Diment, Joakim Löfgren, Marie Alopaeus, Matthias Stosiek, MiJung Cho, Chunlin Xu, Michael Hummel, Davide Rigo, Patrick Rinke, Mikhail Balakshin 2025 ChemSusChem

Active Learning of Molecular Data for Task-Specific Objectives

Kunal Ghosh, Milica Todorovic, Aki Vehtari, Patrick Rinke 2025 Journal of Chemical Physics

Efficient dataset generation for machine learning halide perovskite alloys

Henrietta Homm, Jarno Laakso, Patrick Rinke 2025 Physical Review Materials

Machine learning-assisted development of polypyrrole-grafted yarns for e-textiles

Matteo Iannacchero, Joakim Löfgren, Mithila Mohan, Patrick Rinke, Jaana Vapaavuori 2025 Materials and Design

Machine learning accelerated descriptor design for catalyst discovery in CO2 to methanol conversion

Prajwal Pisal, Ondrej Krejci, Patrick Rinke 2025 npj Computational Materials

Similarity-based analysis of atmospheric organic compounds for machine learning applications

Hilda Sandström, Patrick Rinke 2025 Geoscientific Model Development
More information on our research in the Aalto research portal.
Research portal

Aalto Materials Digitalization Platform - AMAD

Materials data infrastructure for Aalto University

Read more

Research Group Members

Group Leader

Patrick Rinke

Lecturers

Ville Havu

Postdoctoral Researchers

Pascal Henkel

Marie Curie Postdoctoral Fellow

Ondrej Krejci

Joakim Löfgren

Joakim Löfgren

Postdoctoral Researcher

Hilda Sandström

Arunima Singh

Postdoctoral Researcher

Armi Tiihonen

Marie Curie Fellow

Maria Weseloh

Marie Curie Postdoctoral Fellow

Doctoral, Master Students and Research Assistants

Lucas Bandeira

Doctoral Researcher

Nitik Bhatia

Kunal Ghosh

Kunal Ghosh

Doctoral Candidate

Jarno Laakso

Doctoral Candidate

Prajwal Pisal

Henrietta Homm

MSc Student

Han Le

Tatu Linnala

MSc Student

Visiting Researchers

Xi Chen

Xi Chen

Visiting Researcher
Marc Dvorak

Marc Dvorak

Visiting Researcher (HRL Laboratories)
Dorothea Golze

Dorothea Golze

Visiting Researcher (TU Dresden)
Tuomas Rossi

Tuomas Rossi

Visiting Researcher

Matthias Stosiek

Visiting Researcher (TUM)
Milica Todorovic

Milica Todorovic

Visiting Researcher (Turku University)

News

Research & Art Published:

CEST researchers receive significant LUMI supercomputing resources

Read how two successful machine learning projects got support by a supercomputer
Awards and Recognition, Campus, Research & Art Published:

Aalto Open Science Award ceremony brought together Aaltonians to discuss open science

Last week we gathered at A Grid to celebrate the awardees of the Aalto Open Science Award 2023 and discuss open science matters with the Aalto community.
Awards and Recognition, Research & Art Published:

Aalto Open Science Award Third Place Awardee 2023 – Intelligent Robotics Research Group with the Robotic Manipulation of Deformable Objects project

We interviewed the Intelligent Robotics Research Group with the Robotic Manipulation of Deformable Objects project, 3rd place awardees of the first Aalto Open Science Award.
Awards and Recognition, Research & Art Published:

Aalto Open Science Award Winner 2023 – Aalto Materials Digitalization Platform (AMAD)

We interviewed the AMAD team, winners of the first Aalto Open Science Award.

Current Events

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