I develop machine learning systems that enable people with tetraplegia to communicate and control devices through neural activity alone. My research spans several areas, from creating novel models to building real-time inference systems. I am fortunate to work directly with BrainGate trial participants, whose valuable insights help us turn scientific theory into real-world solutions.
I am a PhD candidate in Biomedical Engineering at Emory University and Georgia Tech, where I work with Dr. Chethan Pandarinath. Guided by our growing understanding of neural computation, I aim to design models that better decode neural activity, deploy those models in real-time, and rigorously evaluate their capabilities in real-world BCI control.
My most significant contribution is BRAND, a modular real-time software framework that has been adopted by several groups and has been robust enough to handle 3,800+ hours of independent use of an at-home BCI.
I also contributed to the development of NoMAD, an unsupervised deep learning approach for calibration-free neural signal stabilization that aims to address the critical challenge of maintaining consistent BCI performance over time.
I am passionate about creating technology that directly improves quality of life, and working in the brain-computer interface space has been an incredible journey along that mission. If you want to get in touch about working together, reach out via the form below!
Download my resume Contact meEmory University & Georgia Institute of Technology • 2019 - 2025 (Expected)
Minor: Machine Learning
Georgia Institute of Technology • 2015 - 2019
BCI Society Student and PostDoc Travel Award (2023)
Fellow, NIH/NIBIB Georgia Tech/Emory Computational Neuralengineering Training Program (2019-2021)
Georgia Tech President's Fellowship (2019-2023)
1st Place & People's Choice, Rice 360 Global Health Design Competition (2019)
Creating robust and scalable software solutions for brain-computer interfaces and neural engineering applications.
Developing advanced ML algorithms for neural signal processing and brain-computer interface applications.
Building end-to-end systems for real-time data acquisition and analysis that support modern machine learning workflows.
Karpowicz BM, Ali YH, Wimalasena LN, Sedler AR, Keshtkaran MR, Bodkin K, Ma X, Rubin DB, Williams ZM, Cash SS, Hochberg LR, Miller LE, Pandarinath C. (2025). Nature Communications 16(1):4662 (2025)
View Paper →Ali YH, Bodkin K, Rigotti-Thompson M, Patel K, Card NS, Bhaduri B, Nason-Tomaszewski SR, Mifsud DM, Hou X, Nicolas C, Allcroft S, Hochberg LR, Au Yong N, Stavisky SD, Miller LE, Brandman DM, Pandarinath C. (2024). Journal of Neural Engineering 21(2):026046 (2024)
View Paper →Karpowicz BM, Bhaduri B, Nason-Tomaszewski SR, Jacques BG, Ali YH, Flint RD, Bechefsky PH, Hochberg LR, AuYong N, Slutzky MW, Pandarinath C. (2024) Journal of Neural Engineering 21(6):066001 (2024)
View Paper →Pandarinath C, Ali YH. Nature 568(7753):466--467 (2019)
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