Valley Christian High School '27 | Researcher | Public Speaker
I am committed to advocating for environmental sustainability and advancing public health in underserved communities through technology. At the University of Maryland, MIT, Harvard, and the ISS research lab, I have worked on projects ranging from creating wildfire detection systems using machine learning to building a novel multimodal EEG forecasting architecture that enhances brain-computer interface latency.
I am the founder of ConServe, a nonprofit dedicated to advancing environmental justice. Using geographic information systems and machine learning, I created comprehensive risk maps to identify schools most vulnerable to poor air quality. Through these efforts, I partner with educators and students to install particulate sensors in local elementary schools, making the harms of air pollution visible. In collaboration with CORA, I am working to pass a bill to limit pesticide usage near schools and communities, while hosting climate literacy workshops that inspire students to take action for a cleaner planet.
In my free time, I enjoy dancing, taking walks, and trying new foods!
Independent Reseach | 2026
Designed a framework for spatially continuous nowcasting and forecasting red tides in the Florida coast with a hierarchical latent diffusion model using satellite imagery, and various environmental datasets. Presenting at IEEE International Geoscience and Remote Sensing Symposium. Earned MIT THINK Scholar Commended Distinction Award (Top 10% of 1,000+ applicants).
University of Maryland | 2025
Developed benchmark segmentation models using CNNs and Vision Transformers to detect individual tree mortality at 0.6m resolution across the entire United States, boosting precision/recall 13.4%. Annotated 6,000+ hectares of satellite images across 5 states for Treefinder, the first dataset which provides pixel-level labels across 23,000+ hectares in 48 states. View here.
Independent Reseach | 2025
Built a bidirectional LSTM neural network with cross-attention to forecast harmful algal blooms using nutrient, water, weather, and cell concentration data. Presenting findings at the American Geophysical Union Conference and Society of Environmental Toxicology and Chemistry.
Wolfram | 2025
Created a 3D wildfire spread model using cellular automaton with a graph neural network derived fire propogation rule, achieving 84.3% accuracy. Presenting at IEEE International Geoscience and Remote Sensing Symposium and EarthX.
Massachusetts Institute of Technology | 2025
Developed a novel multimodal EEG forecasting architecture that integrates a Vision Transformer with a time-series encoder via cross-attention, enabling lower BCI latency. Achieved state-of-the-art accuracy outperforming unimodal baselines 19% SEED-DV dataset
ISS Research Lab | 2025
Explored growing piezoelectric crystals in microgravity conditions to improve crystal symmetry and growth, advancing high-sensitivity sensors, microphones, laser-Q switches, and nonlinear optical converters.
Harvard University | 2024
Built a Julia simulation of α-synuclein aggregation using stochastic Langevin dynamics and reaction-advection equations to model protein misfolding in Parkinson’s disease. Implemented a numerical solver using finite differences and a 4th-order Runge-Kutta method.
Developed an autonomous wildfire-response network integrating camera towers, computer-vision smoke detection, and drone coordination through a cloud-based controller called CREST. Recognized as the only high school team in the finals of the XPRIZE competition, receiving $150,000 in funding to continue development.
VisitDeveloped an air-quality mapping platform using GIS and machine learning to identify schools identify underresourced K-12 schools at highest exposure of air pollution. Implemented a spatial clustering and XGBoost risk-scoring model combining air quality, traffic exhaust, warehouse and industrial activity, wildfire smoke patterns, and demographic data.
VisitCreated a Wolfram Language 3D wildfire spread model using terrain classification, wind vectors, and fuel moisture to simulate fire dynamics. Developed tools for preprocessing GIS data terrain layers, running time-step simulations, and visualizing fire growth in 3D. Used Bayesian optimization to identify optimal fire retardant placement after a fire has broken out to minimize burn area.
VisitCo-founded an edtech startup that returns a curated roadmap of research papers based on a user's query. Worked on frontend and built the website using HTML, CSS, and JavaScript.
VisitBuilt a neural network entirely from scratch in with numpy to classify MNIST handwritten digits, implementing vectorized forward passes, backpropagation, and mini-batch SGD with ReLU/softmax and cross-entropy loss. Designed data loaders, one-hot encoding, batching, and accuracy/loss functions.
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