Category: Research

Rabitz Lab research perspectives.
The notion of performing control operations to reach an objective is often a subject thought of as lying in the domain of engineering, but control is pervasive in the sciences. For example, the common action in a chemistry laboratory of choosing which chemicals to use can be viewed as a step in controlling a chemical…

Nanoscale imaging and spectroscopy.
The function of all living cells depends on the subcellular compartmentalization and spatial distribution of a broad range of small molecules, from metabolites to signaling molecules and cellular building blocks. Determining the spatial distribution of small molecules within cells is therefore crucial for understanding fundamental cellular mechanisms. And yet, we presently lack the ability to…

Quantum information sciences.
Realizing the promise of practical quantum information processing requires adept management of the intricacies of interfacing with quantum system, particularly in navigating the complexities of information extraction during system characterization, calibration, and correction. This endeavor demands a delicate balance: the resource consumption must be sufficiently low and yet swift enough for feedback and periodic recalibration.

Quantum statistical mechanics of complex systems.
Understanding entanglement propagation in outofequilibrium manybody quantum systems is important for both fundamental and practical reasons, especially given the new developments regarding the interrelationship between entanglement and thermodynamics in quantum systems. However, understanding the dynamics of entanglement requires access to the exponentially large Hilbert space of the system, which is highly challenging.

Machine learning guided optimal control of quantum dynamics.
Efficient and accurate characterization of the time evolution of manybody systems controlled by external fields is of fundamental importance to many applications such as laserdriven chemical reactions and quantum computing. A fulldimensional description of such manybody dynamics is prohibitively expensive when large number of subsystems (e.g., spins in a spinchain and atoms in a large…

Determining the mechanisms by which a control manipulates quantum dynamics.
Typically, when we want to perform a specific action on a quantum system, like implementing a gate, we go to the computer and ask it to create a control pulse. This works fine in practice, but typically the pulses are very complicated and it is hard to understand the underlying dynamics of what is going…

Utilizing machine learning to accelerate the solution of dynamical equations in the sciences.
Most dynamical systems can be modeled using differential equations. However, solving dynamical equations, even for linear equations, across the entire vector space can be challenging. Take quantum dynamics, for instance, which is generally governed by timedependent Schrodinger equations. Propagating the quantum state at each time step for high dimensional systems, such as those with numerous…

Solving Schrödinger’s Equation by Tracking the Physical Objective.
Our project is concerned with developing quantum control strategies to achieve physical objectives by means of recursive observable tracking. More specifically, we study how to construct timedependent electric fields which force observable expectation values to increase, decrease, or follow a predefined function.