We can group the SubNano tasks into five categories:
I. Methods development:
We developed and implemented several methods to improve the quality, broaden the application domain, and speed up the simulations.
We improved the quality with QDCT and LP-ZPE. Both methods fix quantum effects.
The MQC-PE method broadened the domain of application, allowing the simulation of dynamics induced by thermal light. TD-BA, a method to determine nonadiabatic couplings without wavefunction evaluation, also broadened the scope of dynamics.
We achieved a large simulation speed-up thanks to TD-BA and a series of machine-learning techniques.
II. Software implementation:
SubNano allowed the development of the NX platform. It started from the classical Newton-X program and gained a series of additions, including Newton-X NS, an entirely redesigned Newton-X version to improve performance, manage big data, and comply with open data standards; Ulamdyn, a program to analyze dynamics results based on unsupervised learning techniques; Legion, a program for trajectory-based quantum wavepacket dynamics; and Alexdyn, a program to control dynamics using socked-based interprocess communication. A new version of the PySOC for spin-orbit couplings was also developed. Moreover, we have contributed to implementing new versions of the MLatom for atomistic machine learning.
The programs developed by our groups are open-source and freely available for download.
III. Benchmarks construction:
During SubNano, we appraised several features impacting the simulations, including the performance of standard nonadiabatic dynamics methods in the long timescale, the effect of the electronic structure method on dynamics, and the conditions that should be satisfied and the algorithmic limitations of long-timescale dynamics, among others.
IV. Case studies with new dynamics protocols:
Among the several molecular systems investigated in SubNano, the following case studies deserve being mentioned, as they introduced innovative research protocols: Photoisomerization of trans-resveratrol with explore-then-assess protocol; Non-Kasha fluorescence of pyrene with ergotic protocol; Cytosine-solvent energy transfer modeling.
All data generated by the group is available in the form of public datasets.
V. Reviews, perspectives, and conceptual analyses:
During SubNano, we reviewed several aspects of the relevant literature, including mixed quantum-classical approaches, multireference methods, machine learning for excited-state simulations, and dynamics simulations in active environments.
SubNano also offered the opportunity to dive into conceptual questions underlying the nonadiabatic dynamics simulations, such as ultrafast internal conversion without energy crossing, criteria for classifying double excitations, and wavefunction collapse times.