I am working as Control System Engineer at Telesair Inc. Prioir I was senior engineer at QuEST global North America working for Wabtec Corporation. Also, I was a Postdoctoral Scholar at the University of California Irvine. I did my Ph.D. in Mechanical Engineering at Missouri University of Science and Technology under Dr. K. Krishnamurthy. The broad goal of my research is to develop methods for identifying the individual intrinsic connectivity patterns of the brain in health and disease. I worked with magnetic resonance imaging data to achieve my research goals. During my research, I used novel machine learning and signal processing techniques to build behavioral prediction and classification models. I spend more time in mechatronics and controls courses and concepts as a mechanical engineer. I have done basic linear and advanced nonlinear controls courses during my Ph.D. I have experimented with linear and nonlinear controls using Simulink and LabVIEW utilizing Quanser and some systems connected to Arduino. I was a teaching assistant for the controls system laboratory (senior undergraduates) and mechatronics course (senior undergraduates and graduates). I have a master's degree in computer integrated manufacturing and worked for the Indian Space Research Organization to develop robotic micro-abrasive machining for the thesis project.
PhD in Mechanical Engineering, 2017 - 2021
Missouri University of Science and Technology
Master of Technology in Computer Integrated Manufacturing, 2014 - 2016
University of Calicut
Bachelor of Technology in Mechanical Engineering, 2010 - 2014
University of Calicut
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Responsibilities include:
Few of my online certifications related to Neuroimaging, Programming and Machine Learning
Brain complexity estimated using sample entropy and multiscale entropy (MSE) has recently gained much attention to compare brain function between diseased or neurologically impaired groups and healthy control groups. Using resting-state functional magnetic resonance imaging (rfMRI) blood oxygen-level dependent (BOLD) signals in a large cohort (n = 967) of healthy young adults, the present study maps neuronal and functional complexities estimated by using MSE of BOLD signals and BOLD phase coherence connectivity, respectively, at various levels of the brain’s organization. The functional complexity explores patterns in a higher dimension than neuronal complexity and may better discern changes in brain functioning. The leave-one-subject-out cross-validation method is used to predict fluid intelligence using neuronal and functional complexity MSE values as features. While a wide range of scales was selected with neuronal complexity, only the first three scales were selected with functional complexity. Fewer scales are advantageous as they preclude the need for long BOLD signals to calculate good estimates of MSE. The presented results corroborate with previous findings and provide a baseline for other studies exploring the use of MSE to examine changes in brain function related to aging, diseases, and clinical disorders.
Functional magnetic resonance imaging has revealed correlated activities in brain regions even in the absence of a task. Initial studies assumed this resting-state functional connectivity (FC) to be stationary in nature, but recent studies have modeled these activities as a dynamic network. Dynamic spatiotemporal models better model the brain activities, but are computationally more involved. A comparison of static and dynamic FCs was made to quantitatively study their efficacies in identifying intrinsic individual connectivity patterns using data from the Human Connectome Project. Results show that the intrinsic individual brain connectivity pattern can be used as a ‘fingerprint’ to distinguish among and identify subjects and is more accurately captured with partial correlation and assuming static FC. It was also seen that the intrinsic individual brain connectivity patterns were invariant over a few months. Additionally, biological sex identification was successfully performed using the intrinsic individual connectivity patterns, and group averages of male and female FC matrices. Edge consistency, edge variability and differential power measures were used to identify the major resting-state networks involved in identifying subjects and their sex.