QuDPy: A Python-Based Tool For Computing Ultrafast Non-linear Optical
Responses
- URL: http://arxiv.org/abs/2210.16355v2
- Date: Mon, 24 Jul 2023 17:54:45 GMT
- Title: QuDPy: A Python-Based Tool For Computing Ultrafast Non-linear Optical
Responses
- Authors: S. A. Shah and Hao Li and Eric R. Bittner and Carlos Silva and Andrei
Piryatinski
- Abstract summary: We present the initial release of our code, QuDPy (quantum dynamics in python)
An important feature of our approach is that one can specify various high-order optical response pathways.
We use the quantum dynamics capabilities of QuTip for simulating the spectral response of complex systems.
- Score: 5.787049285733455
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Nonlinear Optical Spectroscopy is a well-developed field with theoretical and
experimental advances that have aided multiple fields including chemistry,
biology and physics. However, accurate quantum dynamical simulations based on
model Hamiltonians are need to interpret the corresponding multi-dimensional
spectral signals properly. In this article, we present the initial release of
our code, QuDPy (quantum dynamics in python) which addresses the need for a
robust numerical platform for performing quantum dynamics simulations based on
model systems, including open quantum systems. An important feature of our
approach is that one can specify various high-order optical response pathways
in the form of double-sided Feynman diagrams via a straightforward input syntax
that specifies the time-ordering of ket-sided or bra-sided optical interactions
acting upon the time-evolving density matrix of the system. We use the quantum
dynamics capabilities of QuTip for simulating the spectral response of complex
systems to compute essentially any n-th-order optical response of the model
system. We provide a series of example calculations to illustrate the utility
of our approach.
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