Data Science · Healthcare AI · Analytics

Hi, I'm Chase.

I find meaning in data — and make it useful for people.

I'm a Data Science student at UNC Charlotte (3.93 GPA, graduating May 2026) with real-world experience applying analytics and ML to healthcare research, biopharma strategy, and financial operations. I aim to innovate things that help others and spark individual curiosity — from predicting Parkinson's disease to classifying planets beyond our solar system.

3.93
GPA · Summa Cum Laude
3
Research Projects
$1.2M+
Spend Analysis Led

A bit about me

The person behind the models.

I grew up curious — always wanting to understand why things work the way they do. Data Science gave me a framework to satisfy that curiosity: ask hard questions, gather the right evidence, and let the patterns speak.

At Avalyn Pharma, I spent nearly a year interning in Corporate Development and 3 months in Finance — building CRM systems, KPI dashboards, and financial models that were presented directly to the CEO and CFO. That experience shaped how I think about data work: it's only valuable if it communicates clearly to real decision-makers.

My research has taken me into healthcare analytics, and one project was deeply personal. When a family member was diagnosed with Parkinson's disease, I turned that experience into an independent research project — using clinical voice data to predict Parkinson's with machine learning. That's the kind of work that reminds me why data science matters beyond the model metrics.

Outside of data, I've been teaching martial arts for 11 years. It's taught me how to communicate complex ideas simply, meet people at their level, and stay patient when something isn't clicking. Those skills travel well into every data room I've walked into.

Languages & Libraries
Python SQL Java Pandas NumPy Scikit-learn Matplotlib Seaborn
ML & Analytics
Predictive Modeling Clustering (K-Means) PCA EDA Data Mining Feature Engineering
Tools & Platforms
Jupyter Notebook Tableau Salesforce Excel NetSuite

Work I'm proud of

Real problems. Real data. Real results.

🧠
ML · Healthcare · EDA
Completed

Predicting Parkinson's Disease from Clinical Voice Biomarkers

Applied machine learning to a clinical dataset of 23,000+ patient records to identify Parkinson's disease from acoustic voice measurements. Features like jitter, shimmer, and pitch irregularity — invisible to the ear, but detectable through signal processing.

Personal motivation: a family member's Parkinson's diagnosis sparked this project. That's the kind of "why" that produces better science.

Performed EDA, correlation analysis, and dimensionality reduction (PCA) to distill 20+ acoustic variables into the features most predictive of disease status. Visualized results clearly for non-technical stakeholders. Trained and evaluated classification models, addressing class imbalance (4,290 healthy vs. 19,551 Parkinson's records).

Python Scikit-learn PCA Pandas Seaborn Matplotlib EDA Healthcare Data
🪐
Unsupervised ML · Clustering
Completed

Exoplanet Clustering — Classifying Planets Beyond Our Solar System

Used K-Means and Hierarchical clustering on a 4,855-planet Kaggle dataset to discover whether exoplanets naturally group into known planetary categories — rocky planets, gas giants, Hot Jupiters — using only physical and orbital measurements.

The elbow method confirmed 3 optimal clusters — perfectly aligning with established astrophysical theory. Patterns discovered from data alone.

Built custom data cleaning pipelines to handle messy, mixed-format scientific measurements. Applied PCA for 2D cluster visualization. Validated groupings using hierarchical dendrograms. The 3 clusters mapped cleanly to small cool planets, temperate gas giants, and close-orbiting Hot Jupiters.

Python K-Means Hierarchical Clustering PCA Scikit-learn SciPy Seaborn
Industry Research · Wearables · Health AI
In Progress

Wearable Health Data Analytics — Social Fatigue in Parkinson's

An active industry research collaboration with SocialBit. Using wearable sensor data — heart rate, movement variance, AI-predicted activity states — to assess whether social interactions in a Parkinson's patient are continuous or fragmented throughout the day.

Developing a novel quantitative indicator of social fatigue by modeling the divergence between physiological effort (heart rate) and physical movement — a metric that doesn't yet exist in clinical practice.

Active data collection phase. Establishing benchmarks from a healthy control baseline to enable comparison against the Parkinson's cohort. Results and methodology write-up coming upon study completion.

Wearable Sensors Time-Series Analysis Python Signal Processing Parkinson's Research Health AI

Where I've been

Applying data skills in real organizations — from biopharma boardrooms to the studio floor.

May 2025 – Mar 2026 · Boston, MA
Finance & Corporate Development Intern
Avalyn Pharma

Operated across two high-visibility functions with direct exposure to C-suite decision-making for a clinical-stage biopharma company.

  • Spearheaded migration of the Corporate Development CRM from a manual Excel system to Salesforce in 10 weeks — streamlining stakeholder engagement and presenting the full build to the CFO/CBO and G&A leadership.
  • Built a comparative biopharma transaction benchmarking database analyzing upfronts, milestones, and royalty structures across modalities — used directly in BD valuation discussions.
  • Developed a clinical trial landscape dashboard integrating competitive trial data to identify design trends and whitespace opportunities for corporate strategy.
  • Constructed KPI dashboards across Investor Relations, Business Development, and Banking — giving the CEO and CFO real-time insight into capital raising and partnership status.
  • Conducted T&E Spend Analysis of $1.2M+; identified $100K+ in reallocation opportunities by analyzing spending outliers and trends.
  • Mapped Procure-to-Pay and AP workflows in collaboration with Finance, Legal, and HR; developed three process flowcharts presented to the CFO/CBO and VP of Finance.
  • Managed vendor data trackers for ~150 vendors and 220+ POs to improve forecasting accuracy through FY25.
Apr 2023 – Jun 2025 · Chapel Hill, NC
Lead Martial Arts Instructor
Impact Fitness & Martial Arts
11 years of martial arts experience applied to designing tailored programs for students of all ages at a newly established studio. Improved enrollment and student retention through consistent leadership, communication, and adaptability across diverse learning needs.
UNC Charlotte
B.S. in Data Science · Accelerated 3-Year Track
Expected graduationMay 2026
GPA3.93 / 4.0
LocationCharlotte, NC
Summa Cum Laude Chancellor's Honors List
Key coursework: Applied Multivariate Statistical Analysis · Data Mining · Predictive Analytics · Data Structures & Algorithms · Database Design · Logic & Algorithms

What makes me different

The human side of data science

11 years of teaching martial arts has made me a better communicator than any course could. I know how to explain complex ideas to someone who's never heard them before — whether that's a six-year-old learning a kick or a CFO reviewing a dashboard. I show up curious, clear, and ready to listen. That's rare in data science. I'm working to keep it that way.

Let's connect

"The goal is to turn data into information, and information into insight."

I'm actively looking for full-time roles starting Summer/Fall 2026 in Data Science, Applied Analytics, and ML Engineering. If you have a problem that data can help solve — or just want to talk — my inbox is always open.