C.V.

Current Research Focus Area

My primary research interest is the application of neuromorphic (or brain-like) computing for Machine Learning (ML). Recently I participated in the Intel Neuromorphic Denoising (N-DNS) Challenge, where I earned an honorable mention for my work in encouraging and exploiting synaptic sparsity of Spiking Neural Networks (SNNs) for low power and latency computing on the Loihi2.

In the future, I would like to study brain inspired continual learning mechanisms as well as few-shot learning techniques for SNNs, among other neuromorphic related topics.

Education: 

  • Master’s in ML, Georgia Institute of Technology, May 2022
  • Bachelor’s in CS, Georgia Institute of Technology, May 2020

Publications:

Demo of probability based multi-label classification of DVS video using novel Spikemoid technique.

Projects:

Click to view SPANDEX document
  • Open Source Contributor to Lava-dl, Lava, and Nengo: I believe strongly in open source collaboration and therefore regularly contribute to open-source neuromorphics research.

University Projects

  • Implemented a Conditionally Invertible Neural Network (cINN) in Julia for a graduate school project in 2022.
  • Led a team to implement an GUI based application to automatically scrape imagery from google to fine tune neural networks in 2022.
  • Implemented a novel Neural Architecture Search (NAS) method adding quantization as an additional search dimension of DARTS (Differentiable Architecture Search) in 2021 for a graduate class team project. This method called QDARTS is currently in review for KDD 2025.

Educational Outreach

Professional Experience

  • Research Engineer at Georgia Tech Research Institute (GTRI): August 2022 – Present
  • Graduate Research Assistant (GRA) at GTRI: August 2020 – May 2022
  • Student Assistant at GTRI: 2019 – May 2020

Languages

  • English (Native)
  • Italian (Advanced)
  • French (Intermediate)

Social Media Presence

Graduate AI Coursework

Undergraduate AI Coursework

  • CS 2110: Computer Organization and Programing (Fall 2016)
  • ECE 2031: Digital Design Laboratory (Fall 2017)
  • CS 3651: Prototyping Intelligent Applications (Fall 2019)
  • CS 3601: Automated Algorithms Design (Fall 2018, Spring 2019, Fall 2019, Spring 2020)
  • CS 4803: Deep Learning (Spring 2020)
  • CS 4651: Machine Learning (Spring 2019)
  • CS 3630: Introduction to Robotics and Perception (Fall 2018)
  • CS 3600: Introduction to Artificial Intelligence (Summer 2018)
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