Chenru Duan Email: [email protected]

Chenru Duan Email: Crduan@Mit.Edu

Chenru Duan Email: [email protected] Education Massachusetts Institute of Technology Cambridge, USA Chemistry, Chemical Engineering 2017.09 - Advisor: Prof. Heather J. Kulik Zhejiang University Hangzhou, China B.S in Physics, Honored Class 2013.09 – 2017.07 Research Experience Zhejiang University (Hangzhou, China) Undergraduate Research Assistant 2015.07-2017.07 • Open quantum system and its dynamics. • Method development for numerical calculation of quantum dynamics for model systems. Massachusetts Institute of Technology (Cambridge, USA) Exchange undergraduate student 2016.07-2016.11 • Quantum phase transition of spin-boson model. Singapore-MIT Alliance Research and Technology (SMART) (Singapore) Research Engineer 2017.07-2017.09 • Novel behavior heat transport in non-commutative open quantum systems. Massachusetts Institute of Technology (Cambridge, USA) 2017.11 - Graduate student • Integrating machine learning models in quantum chemistry calculations to achieve autonomous workflow for computational high throughput screening. • Develop systematically-improvable computational tools for open-shell inorganic catalyst. Mentorship 5. Adriana Ladera, MIT Summer Research Program, 2021, University of South Florida, B.S. Student, Computer Science | Minor in Physics, expected '22 4. Julian Liu, MIT UROP, 2021, MIT SB Physics and Math expected '22 3. Gregory Schuette, through MIT chemistry graduate student Peer Mentoring program, 2020, now at Bin Zhang’s group at MIT 2. Shuxin Chen, MIT UROP, 2020, MIT SB Chemical Engineering expected '22 1. Sahasrajit Ramesh, for his completion of Master Thesis in Oxford, 2019, now Senior Analyst, Aurora Energy Research, UK (Co)-first Author Publication (8 published, 1 submitted, 2 in preparation) 9. A. Nandy*, C. Duan*, M. G. Taylor, F. Liu, A. H. Steeves, and H. J. Kulik, “Computational Discovery of Transition-Metal Complexes: From High-throughput Screening to Machine Learning”, invited submission to Chem. Rev. (2021) 8. C. Duan, F. Liu, A. Nandy, and H. J. Kulik, “Putting Density Functional Theory to the Test in Machine-Learning-Accelerated Materials Discovery”, J. Phys. Chem. Lett 12, 19 (2021) https://pubs.acs.org/doi/abs/10.1021/acs.jpclett.1c00631 7. C. Duan, F. Liu, A. Nandy, H. J. Kulik, “Semi-Supervised Machine Learning Enables the Robust Detection of Multireference Character at Low Cost”, J. Phys. Chem. Lett. 11, 16, (2020) https://pubs.acs.org/doi/abs/10.1021/acs.jpclett.0c02018 6. C. Duan, F. Liu, A. Nandy, H. J. Kulik, “Data-Driven Approaches Can Overcome the Cost–Accuracy Trade-off in Multireference Diagnostics”, J. Chem. Theory Comput. 16, 7 (2020) https://pubs.acs.org/doi/abs/10.1021/acs.jctc.0c00358 5. C. Duan, C.-Y. Hsieh, J. Liu, J. Wu and J. Cao, “Unusual Transport Properties with Non-Commutative System-Bath Coupling Operators”, J. Phys. Chem. Lett., 11, 10 (2020) https://pubs.acs.org/doi/abs/10.1021/acs.jpclett.0c00985 4. C. Duan, J. P. Janet, F. Liu, A. Nandy and H. J. Kulik, “Learning from Failure: Predicting Electronic Structure Calculation Outcomes with Machine Learning Models”, J. Chem. Theory Comput. 15, 4 (2019) https://pubs.acs.org/doi/abs/10.1021/acs.jctc.9b00057 3. A. Nandy*, C. Duan*, J. P. Janet, S. Gugler and H. J. Kulik, “Strategies and Software for Machine Learning Accelerated Discovery in Transition Metal Chemistry”, Ind. Eng. Chem. Res. 57, 42 (2018) https://pubs.acs.org/doi/abs/10.1021/acs.iecr.8b04015 2. C. Duan, Q. Wang, Z. Tang and J. Wu “The Study of an Extended Hierarchy Equation of Motion in the Spin-Boson Model: The Cutoff Function of the Sub-Ohmic Spectral Density”, J. Chem. Phys. 147, 164112 (2017) https://aip.scitation.org/doi/abs/10.1063/1.4997669 1. C. Duan, Z. Tang, J. Cao and J. Wu “Zero-temperature Localization in a Sub-Ohmic Spin-boson Model Investigated by an Extended Hierarchy Equation of Motion”, Phys. Rev. B 95, 214308 (2017). https://journals.aps.org/prb/abstract/10.1103/PhysRevB.95.214308 *These authors contribute equally. Selected Non-first Author Publication (10 published, 1 submitted) 1. J. P. Janet, C. Duan, T. Yang, A. Nandy and H. J. Kulik, “A Quantitative Uncertainty Metric Controls Error in Neural Network-Driven Chemical Discovery”, Chem. Sci. 10, 7913 (2019) https://pubs.rsc.org/en/content/articlehtml/2019/sc/c9sc02298h 2. J. P. Janet, S. Ramesh, C. Duan, H. J. Kulik, “Accurate Multiobjective Design in a Space of Millions of Transition Metal Complexes with Neural-Network-Driven Efficient Global Optimization”, ACS Cent. Sci., 6, 4 (2020) https://pubs.acs.org/doi/abs/10.1021/acscentsci.0c00026 3. F. Liu, C. Duan, H. J. Kulik, “Rapid Detection of Strong Correlation with Machine Learning for Transition-Metal Complex High-Throughput Screening”, J. Phys. Chem. Lett., 11, 19 (2020) https://pubs.acs.org/doi/abs/10.1021/acs.jpclett.0c02288 4. J. P. Janet, C. Duan, A. Nandy, F. Liu, and H. J. Kulik, “"Navigating Transition-Metal Chemical Space: Artificial Intelligence for First-Principles Design”, Acc. Chem. Res., 54, 3 (2021) https://pubs.acs.org/doi/abs/10.1021/acs.accounts.0c00686 18 peer-reviewed papers published in total. For a complete list, please refer to my google scholar page: https://scholar.google.com/citations?user=canPgVoAAAAJ&hl=en# Oral Presentation (1 invited, 4 contributed) 5. C. Duan, H. J. Kulik, “How can Machine Learning Aid Computational Chemistry in Data Generation”, SIAM Conference on Mathematical Aspects on Materials Science, May, 2021, virtual conference due to COVID-19 pandemic, invited talk 4. C. Duan, M. G. Taylor, D. Harper, A. Nandy, N. Arunachalam, F. Liu, and H. J. Kulik, “A Database with Automated Quantum Chemistry Calculations and Machine Learning for Functional Transition Metal Complex Discovery”, Virtual American Institute of Chemical Engineers (AIChE) Annual Meeting, Nov, 2020, virtual conference due to COVID-19 pandemic 3. C. Duan, and H. J. Kulik, “Group Research Update: Inorganic Discovery in a Nutshell”, TeraChem developer meeting, Sept, 2020, virtual meeting due to COVID-19 pandemic 2. C. Duan, A. Nandy, J. P. Janet, F. Liu and H. J. Kulik, “Accelerating Catalyst Discovery by Predicting Electronic Structure Calculation Outcomes with a Machine Learning Decision Engine”, New England Catalyst Society Winter Meeting, January, 2020, Worcester, MA 1. C. Duan, J. P. Janet, F. Liu, A. Nandy and H. J. Kulik, “Accelerating Inorganic Discovery with Meta-Calculation Filtering via a Decision Classifier”, American Physical Society (APS), March, 2019, Boston, MA, USA Poster Presentation (4 contributed) 4. C. Duan, H. J. Kulik, “Transforming Automated Quantum Chemistry Calculation workflows with Machine Learning: Towards Faster and More Accurate Chemical Discovery”, MSDE Symposium 2021: Frontiers in Molecular Engineering, June, 2021, virtual conference due to COVID-19 pandemic 3. C. Duan, F. Liu, A. Nandy, H. J. Kulik, “Diagnosing Multireference Character with Machine Learning at Low Cost”, Virtual Conference on Theoretical Chemistry (VCTC), July, 2020, virtual conference due to COVID-19 pandemic 2. C. Duan, J. P. Janet, F. Liu, A. Nandy and H. J. Kulik, “Accelerating Materials Discovery with Autonomous Job Control Systems Aided by Machine Learning”, Material Research Society (MRS), December, 2019, Boston, MA, USA 1. C. Duan, J. P. Janet, A. Nandy and H. J. Kulik, “Accelerating Inorganic Discovery with Meta-Calculation Filtering via a Decision Classifier”, American Chemical Society (ACS), August, 2018, Boston, MA, USA .

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