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The Digital Chemistry Laboratory is led by Prof. Dr. Kjell Jorner at the Institute of Chemical and Bioengineering, within the Department of Chemistry and Applied Biosciences at ETH Zurich and associated with the ETH AI Center. We are an interdisciplinary group at the intersection of chemistry and computer science. Our mission is to accelerate chemical discovery using digital tools. We predict chemical reactivity and molecular properties using machine learning, artificial intelligence, computational chemistry, and cheminformatics. Our ultimate goal is the computer-aided design of molecules and catalysts.
Cycloaddition reactions are among the most valuable synthetic tools for building molecular complexity, as they can form ring systems with high atom economy, contributing to innovations in, e.g., materials science and pharmaceuticals. Recently, energy transfer photocatalysis (EnT) has emerged as a ground-breaking method for facilitating cycloadditions. However, the reactivity and selectivity of substrates in EnT-catalyzed reactions remain challenging to predict, given the limited mechanistic understanding and scarcity of experimental data.
This project aims to systematically address these challenges by building chemistry-informed machine learning models for selectivity and reactivity prediction. These models will also provide valuable mechanistic insights that enable the generalization of selectivity trends across diverse reaction conditions and substrates. We will also turn the models into user-friendly tools that will equip synthetic chemists with a robust predictive framework that enables precise prediction of reaction outcomes.
The project is part of an international collaboration with the German Priority Program on the “Utilization and Development of Machine Learning for Molecular Applications – Molecular Machine Learning” (SPP 2363) and will involve tight collaboration with the group of Prof. Dr. Frank Glorius from the University of Münster, world-leading experts in photocatalysis and molecular machine learning. This collaboration will involve using the models in synthetic method development carried out in the Glorius group, including the selection of further reactions to run, and their application to targets of medicinal interest.
As a PhD student in our growing team, you will develop machine learning methods to predict the reactivity and selectivity of energy-transfer-catalyzed photocycloaddition reactions. You will furthermore identify descriptors for photochemical reactions that can be used by the models to generalize better to new substrates and reaction types. You will be expected to collaborate closely with our experimental partners in the group of Prof. Dr. Glorius. Further responsibilities include contributing to the teaching activities of our department.
We are looking for a committed and motivated candidate that is excited to push the boundaries of research in digital chemistry.
Essential experience, skills, and characteristics:
At least one of the following:
Desirable but not necessary criteria:
You will join a dynamic, and growing research group in the emerging field of Digital Chemistry and in the highly motivating environment of ETH Zurich. We foster a modern and supportive group culture and value diversity, independence, and initiative. The position is embedded in an exciting and interdisciplinary research environment with connections to the ETH AI Center and the National Centre of Competence in Research (NCCR) Catalysis, connecting the chemical sciences, digitalization, and sustainability.
A competitive salary is paid according to Rate 2 of the Doctoral student salary ladder.
We look forward to receiving your online application until May 31, including:
Please note that we exclusively accept applications submitted through our online application portal. Applications via email or postal services will not be considered.
Further information about the group can be found on our website . Questions regarding the position should be directed to Prof. Dr. Kjell Jorner by email at [email protected]. Any applications that come in via email will be disregarded.
ETH Zürich is well known for its excellent education, ground-breaking fundamental research and for implementing its results directly into practice.
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