Core Members

Robbe Goris

Depts. of Neuroscience and Psychology
robbe.goris@utexas.edu
Robbe Goris’ research seeks to uncover the neural basis of our visual capabilities. He uses behavioral experiments, computational theory, and monkey electrophysiology to study representation and computation in the primate visual system. Current projects in his lab are focused on the neural representation of sensory uncertainty, and on the relation between natural image statistics and cascaded computation in the visual cortex. Robbe received his Ph.D. in 2009 from KU Leuven (advisors: Johan Wagemans and Felix Wichmann), went on to do a post-doc at NYU (advisors: Tony Movshon and Eero Simoncelli), and joined UT Austin as assistant professor in fall 2016.

Thibaud Taillefumier

Depts. of Neuroscience and Mathematics
ttaillef@austin.utexas.edu
Originally trained in Mathematical Physics, Thibaud Taillefumier completed his PhD in Biophysics under the supervision of Professor Marcelo Magnasco at The Rockefeller University. There, he developed novel analytical and computational techniques to characterize different modalities of neural coding and acquired experimental experience by performing electrophysiological recordings. As an Associate Research Scholar at Princeton, he expanded his work on neural assemblies within the framework of stochastic dynamics and non-equilibrium thermodynamics with Professor Curtis G. Callan, Jr. In parallel, he studied bacterial communities from the perspective of information and optimization theory with Professor Ned S. Wingreen. Thibaud Taillefumier is now an assistant professor jointly appointed by the Departments of Mathematics and Neuroscience at UT Austin.
Lab website

Alex Huth

Depts. of Neuroscience and Computer Science
alex.huth@gmail.com
Alex Huth's research is focused on how the many different areas in the human brain work together to perform complex tasks such as understanding natural language. Alex uses and develops computational methods in Machine Learning and Bayesian Statistics, and obtain fMRI measures of brain responses from subjects while they do real-life tasks, such as listening to a story, to better understand how the brain functions. Alex earned his PhD in Dr. Jack Gallant's laboratory through the Helen Wills Neuroscience Institute at UC Berkeley. Before that, Alex earned both his bachelor's and master's degrees in computation and neural systems (CNS) at Caltech, where he worked with Dr. Christof Koch and Dr. Melissa Saenz. He received the Burroughs Wellcome Career Award in 2016.
Lab website

Ngoc Mai Tran

Dept. of Mathematics
ntran@math.utexas.edu
Ngoc's interests lie in probabilistic and combinatorial questions arising from tropical geometry and neuroscience. Some of her recent works are on decoding grid cells, commuting tropical matrices, and zeros of random tropical polynomials. After a stint as a W-2 Professor at the University of Bonn, Germany 2015-2017, Ngoc joins as an Assistant Professor in the Department of Mathematics of UT Austin from the summer of 2017.
Lab website

Wilson Geisler

Dept. of Psychology, Center for Perceptual Systems
w.geisler@utexas.edu
Geisler’s primary research interests are in vision, computational vision, and visual neuroscience. His research combines behavioral studies, neurophysiological studies, studies of natural stimuli, and mathematical analysis.   Current research is directed at how to perform perceptual tasks optimally (the “theory of ideal observers”), on the relationship between the statistical properties of natural stimuli and the performance of the visual system, on the properties and theory of eye movements in natural tasks, and on the relationship between visual performance and the neurophysiology of the visual system.
Lab website

David Soloveichik

Depts. of Electrical and Computer Engineering
david.soloveichik@utexas.edu
David's main area of interest is "molecular programming": designing and building molecular systems in which computing and decision-making is carried out by the chemical processes themselves. In particular, he is studying underlying theoretical connections between distributed computing and molecular information processing. David is also interested in understanding how neural networks can execute distributed computing algorithms. Prior to joining Texas ECE, Dr. Soloveichik was a Fellow at the Center for Systems and Synthetic Biology at the University of California, San Francisco. He received his undergraduate and Masters degree from Harvard University in Computer Science. He completed his PhD degree in Computation and Neural Systems at the California Institute of Technology.
Lab website

Dana Ballard

Dept. of Computer Science
dana@cs.utexas.edu
Dana's main research interest is in computational theories of the brain with emphasis on human vision and motor control. He is the author of two books at the intersection of compuational neuroscience and artifical intelligence,  Brain Computation as Hierarchical Abstraction and Computer Vision. His current research focuses on eye movements and planning during naturalistic tasks such as driving and making a peanut butter and jelly sandwich. He has long been a proponent of neurons performing predictive coding, explaining extra-classical receptive field properties in these terms. His current focus is modeling multiplexing of several neural processes with gamma frequency spike latencies.  
Lab website

Affiliated Members

François Baccelli

Depts. of Mathematics and Electrical Engineering
baccelli@math.utexas.edu
François Baccelli is Simons Math+X Chair in Mathematics and ECE at UT Austin.  His research directions are at the interface between Applied Mathematics (probability theory, stochastic geometry, dynamical systems) and Communications (network science, information theory, wireless networks). He is co-author of research monographs on point processes and queues (with P. Brémaud); max plus algebras and network dynamics (with G. Cohen, G. Olsder and J.P. Quadrat); stationary queuing networks (with P. Brémaud); stochastic geometry and wireless networks (with B. Blaszczyszyn).
Lab website

Liberty Hamilton

Depts. of Communication Sciences and Disorders and Neurology at Dell Medical School
liberty.hamilton@austin.utexas.edu
Liberty Hamilton is an Assistant Professor at UT, jointly appointed by the Department of Neurology and the Department of Communication Sciences and Disorders. The goal of her lab is to investigate how the human brain processes speech and other natural sounds, and how sound representations change during development and as a result of learning and plasticity. Her research incorporates multi-site in vivo electrophysiological recordings in patients with epilepsy with computational modeling analyses to address how low-level features of sounds are transformed into meaningful words and sentences. Modeling and computational techniques include linearized models and neural network models of simultaneously recorded local field potential data, unsupervised learning of neural population response structure, and software development for topics relevant to electrocorticography (e.g. electrode localization from CT and MRI scans). Liberty Hamilton received her PhD from the University of California at Berkeley under Dr. Shaowen Bao, where she combined optogenetics and computational models to describe functional interactions within and across layers of the auditory cortex. As an NRSA-funded postdoctoral fellow at the University of California, San Francisco, she worked with Dr. Edward Chang to study speech perception using intracranial recordings in adults. She is a co-director of the NeuroComm laboratory within the Department of Communication Sciences and Disorders.
Lab website

Risto Miikkulainen

Dept. of Computer Science
risto@cs.utexas.edu
The goal of Risto's lab is to understand how cognitive abilities, such as sentence and story processing, lexicon, episodic memory, pattern and object recognition, and sequential decision making, emerge through evolution and learning.  The research involves developing new methods for self-organization and evolution of neural networks, as well as verifying them experimentally on human subjects, often in collaboration with experimentalists and medical professionals.  Examples of current work include understanding and inferring the semantics of words and sentences in fMRI images, impaired story telling in schizophrenia, rehabilitation in bilingual aphasia, and evolution of communication in simulated agents.

Alex Huk

Depts. of Neuroscience and Psychology
huk@utexas.edu
Alex Huk's research focuses on visual motion, using it as a model system for investigating how the brain integrates information over space and time. His lab employs a variety of methods, including single-unit and multi-unit electrophysiology, causal perturbations of neural activity, psychophysics, and computational modeling. Recent work has focused on applications of generalized linear models (GLMs) and other single-trial amenable analytic frameworks to dissect the multitude of sensory, cognitive, and motor factors that drive many of the brain areas often studied in primates. Ongoing projects seek to extend applications of these tools to large-scale neurophysiological recordings, as well as more mechanistic studies of individual neurons and small circuits.
Lab website

Dan Johnston

Dept. of Neuroscience
djohnston@mail.clm.utexas.edu
Research in my laboratory is primarily directed towards understanding the cellular and molecular mechanisms of synaptic integration and long-term plasticity of neurons in the medial temporal lobe. We have focused our attention on the hippocampus and prefrontal cortex, areas of the brain that play important roles in learning, memory and decision-making. Our research uses quantitative electrophysiological, optical-imaging, and computer-modeling techniques.  Most of our projects involve trying to understand how dendritic ion channels, and in particular dendritic channelopathies, impact neuronal and network computations in normal and diseased brain.
Lab website

Kristen Harris

Dept. of Neuroscience, Center for Learning and Memory
kharris@mail.clm.utexas.edu
Kristen Harris' laboratory studies structural synaptic plasticity in the developing and mature nervous system. Her group has been among the first to develop computer-assisted approaches to analyze synapses in three dimensions through serial section electron microscopy (3DEM) under a variety of experimental and natural conditions. These techniques have led to new understanding of synaptic structure under normal conditions as well as in response to experimental conditions such as long-term potentiation, a cellular mechanism of learning and memory. The body of work includes novel information about how subcellular components are redistributed specifically to those synapses that are undergoing plasticity during learning and memory, brain development, and pathological conditions including epilepsy. Theoretical and computational methods include computational vision for 3D EM reconstruction, high-dimensional spline methods, and molecular simulations of neurotransmitter signaling across the synaptic cleft.
Lab website

Laura Colgin

Dept. of Neuroscience
colgin@mail.clm.utexas.edu
Laura Colgin is an Associate Professor in the Department of Neuroscience at the University of Texas at Austin. She received her PhD from the Institute for Mathematical Behavioral Sciences at the University of California at Irvine, and she completed her postdoctoral training in the laboratory of Nobel Laureates Edvard and May-Britt Moser. Her research uses state-of-the-art multisite recording and multivariate analysis techniques to address several key questions in systems neuroscience, including how the hippocampus stores and retrieves memories and how neuronal computations in the entorhinal-hippocampal network create the spatial component of these memories.
Lab website

Mike Mauk

Dept. of Neuroscience
mauk@utexas.edu
We study information processing and learning in the cerebellum.  Our main experimental approach involves the use of eyelid conditioning as a way to control cerebellar inputs and monitor cerebellar output in vivo.  Through behavioral analysis, in vivo recordings and other manipulations such as stimulation and inactivation we try to understand what the cerebellum computes and the mechanisms that implement these computations.  We augment these studies with computational approaches that include large-scale computer simulations and mathematical models.  The large-scale simulations have been under development for over 25 years.  They involve building conductance-based spiking representations of each cerebellar cell type, developing algorithms to interconnect these neurons in ways that represent cerebellar synaptic organization, and testing them using inputs derived from our empirical studies.  Current versions involve over one million neurons implemented on GPU-based workstations.  These simulations, along with simpler mathematical models when useful, allow us to generate new, empirically testable predictions, to understand our data better and to determine the computational principles that make up cerebellar function.  Big questions include how inputs are transformed to improve learning and to implement stimulus-temporal coding required for the well-timed learning the cerebellum mediates.  We are also interested in the role of feedback in neural system function and in neural/system adaptations that make learning more efficient and that improve performance in the face of noisy inputs.
Lab website

Nicholas Priebe

Dept. of Neuroscience
nico@austin.utexas.edu
Nicholas Priebe received his Ph.D. in Physiology from the University of California, San Francisco in 2001 after studying adaptation in motion-selective neurons with Stephen Lisberger. Dr. Priebe was a postdoctoral fellow with David Ferster at Northwestern University, investigating the mechanisms underlying neronal responses in primary vusual cortex. The massive expansion of cerebral cortex is a hallmark of the human brain. We know that the cortex plays an essential role in our perceptions and actions. Sensory inputs from the periphery are transformed in the cortex, allowing us to generate appropriate motor outputs. Dr. Priebe's lab studies the cortical circuitry and the computations that underlie such transformations, using vision as a model system. In visual cortex, neuronal circuitry performs the computations that extract motion, orientation and depth information about the visual environment from subcortical inputs. For example, primary visual cortex (V1) is the cortical location in which information from the two eyes is first integrated, ultimately allowing us to perceive depth in our visual field. By understanding the circuitry that underlies these kinds of computations, we gain insight into similar computations that occur throughout cortex.
Lab website

Postdocs

Jens-Oliver Muthmann

ollimuh@googlemail.com
I studied physics at the University of Freiburg and did my diploma work on doubly stochastic point processes under guidance of Stefan Rotter. Afterwards, I joined the Erasmus Mundus EuroSPIN programme for a joint PhD between the groups of Upinder Bhalla (NCBS, Bangalore) and Matthias Hennig (University of Edinburgh). My research there focused on spike detection in recordings with high density microelectrode arrays and network dynamics in dissociated cultures. I joined the group of Alex Huk in 2017. I am currently interested in neural representations of visual stimuli in the dorsal stream during natural tracking behavior. In particular, I aim to study the representation of information that arrives with different temporal delays, the response to saccadic eye movements and to what extent stimuli are predicted by the brain.

Rishidev Chaudhuri

Center for Theoretical and Computational Neuroscience
rishidev.chaudhuri@gmail.com
My research interests lie at the intersection of neuroscience and applied mathematics: building theoretical frameworks to understand computation in the brain; developing statistical tools to analyze experimental data; and modeling the dynamics of distributed neural systems. At the moment I’m investigating representations of space and context in the entorhinal cortex and hippocampus, the computational properties of dynamical systems inspired by error-correcting codes, and the use of random networks for modeling cortical dynamics, with a particular focus on data from electrocorticography (ECoG).