Starshade Station Keeping
Published:
Orbital dynamics simulation for starshade spacecraft alignment
Published:
Orbital dynamics simulation for starshade spacecraft alignment
Published:
Training-free transformer compression via interpolative decomposition
Published:
Research on optimal alpha parameter for knowledge distillation
Published:
Parallelized multi-channel CNN for power grid transient stability assessment (98.8% test accuracy)
Published:
Re-implementation of cold diffusion model for image restoration
Published:
Interactive visualization of deep learning concepts
Published:
AI agent that writes emails based on natural language instructions
Published:
A custom hybrid RAG-based chatbot for exam preparation
Published:
Manim-powered animations to explain mathematical concepts
Published:
AI-driven accessible note-taking platform for STEM students with disabilities WIP 
Published:
Curated collection of ML/AI research papers with learning resources
Published:
Efficient sparse kernel generation for rotation-equivariant neural networks
Published:
A multimodal STEM lecture video dataset and annotation platform for AI-assisted accessibility WIP 
Published:
AI-powered B2B lead generation and automated outreach platform
Published:
Functional analysis of neural operators with quantitative error bounds
Published:
Comprehensive CS fundamentals review covering 11 core topics
Published:
Beta testing Cornell’s first educational robot 
Published in The Joint Mathematics Meeting, 2024
This paper formulates and derives new parabolic partial differential equations using stochastic differential equations, replicating portfolio theory, and risk-neutral pricing to model time-varying volatility, equity premium, and interest rates.
Recommended citation: Nicole Hao, Echo Li, Diep Luong-Le. (2024). "Option Pricing with Stochastic Volatility, Equity Premium, and Interest Rates." The Joint Mathematics Meeting.
Download Paper
Published in The Astrophysical Journal, 2024
This paper presents a novel, standardized procedure for classifying solar flares using supervised machine learning, with implications for both solar physics and exoplanet research.
Recommended citation: Nicole Hao, Laura Flagg, Ray Jayawardhana. (2024). "Detecting and Classifying Solar Flares in High-Resolution Solar Spectra using Supervised Machine Learning." The Astrophysical Journal.
Download Paper
Work In Progress, 2025
This work develops a multimodal STEM lecture video dataset and annotation framework for training and evaluating vision-language models on educational understanding.
Recommended citation: Nicole Hao. (2025). "InkSight: A Multimodal STEM Lecture Video Dataset and Data Labeling Tool." Work In Progress.
Download Paper
Machine Learning: Science and Technology (In Submission), 2025
This paper derives a complexity-error scaling law in Sobolev norms and validates it empirically with Fourier Neural Operators.
Recommended citation: Nicole Hao. (2025). "Quantitative Sobolev Approximation Bounds for Neural Operators with Empirical Validation on Burgers Equation." In submission to Mach. Learn.: Sci. DOI: 10.13140/RG.2.2.32739.62248
Download Paper
Published:
Presented summer research findings from the Nexus Research Scholars program on using supervised machine learning to detect and classify solar flares in HARPS-N spectra. This work was conducted under the supervision of Prof. Ray Jayawardhana and Dr. Laura Flagg.
Published:
Presented early research findings on machine learning approaches for solar flare detection and classification in high-resolution spectra at Cornell’s CUWiP conference.
Published:
Presented research on supervised machine learning methods for detecting and classifying solar flares, with implications for exoplanet research and stellar contamination modeling.
Published:
Presented research on detecting and classifying solar flares in high-resolution solar spectra using supervised machine learning techniques. Discussed the development of a full data pipeline including PCA dimensionality reduction and SVC model optimization.
Published:
Presented summer research on stochastic partial differential equations and numerical methods for option pricing. Discussed the implementation of finite difference schemes (Forward Euler, Backward Euler, Crank-Nicolson) and their application to pricing European and barrier options.
Published:
Presented research on stochastic partial differential equations for option pricing. Selected from 250+ applicants and 60+ presenters for this recognition.
Published:
Presented research on formulating and deriving new parabolic partial differential equations using stochastic differential equations, replicating portfolio theory, and risk-neutral pricing to model time-varying volatility, equity premium, and interest rates in a complete market. Implemented finite difference schemes in MATLAB for European and barrier option pricing.
Published:
Presented InkSight AI, an AI-driven accessible note-taking platform for STEM students with disabilities, at the 2024 Cornell Tech Entrepreneurship Showcase. The presentation highlighted how InkSight uses AI to improve lecture accessibility for blind/low-vision, hard-of-hearing, and neurodivergent learners; market opportunities, and more. I also connected with investors and industry executives at the event for fundraising.
Volunteer Teaching, GoPeer, 2021
Tutored mathematics and programming to K-12 students from low-income families. Provided personalized one-on-one instruction covering topics from basic arithmetic to calculus, as well as introductory computer science concepts. Focused on making STEM education accessible to underrepresented students.
Volunteer Teaching, Coding4Youth, 2024
Teaching Python programming to K-12 students. Focus on building foundational programming skills and computational thinking through interactive lessons and hands-on projects.