Associate Client Manager, NielsenIQ – Baltimore, MD June 2022 – Present
- Automated data quality verification process using Python, improving item coverage from 80% to 98% and saving over 200 hours of manual work annually
- Standardized monthly C-suite Omnichannel reporting leveraging Panel data and RMS, resulting in 93% of recommendations being implemented in client strategy
- Spearheaded end-to-end category review process for Sally Beauty, from devising initial framework to successfully delivering over 10 categories per year to the merchandising team
- Conducted critical pricing analysis for Amazon's CEO by processing 50,000+ data points within a two-day deadline using Python and RMS, earning NIQ's Innovation Award
Research Assistant, The Health, Aging, and Technology Lab – College Park, MD February 2020 – May 2022
- Co-authored two academic papers for the 2022 CHI Conference examining technological adaptation and dementia progression
- Conducted mixed-methods data analysis from user interviews, identifying usability challenges and generating actionable design improvements
- Translated complex research findings into practical interface design recommendations for assistive technologies
Data Science and Engineering Intern, The Emerson Collective – Palo Alto, CA June 2021 – August 2021
- Developed advanced data visualization models using GeoPandas for geospatial analysis of socioeconomic patterns
- Cleaned and incorporated 100K+ data points into recommendation algorithm using Python that identified 10 critical regions for targeted intervention
- Directly influenced educational campaign strategy on the child tax credit through data-driven insights and visualization
Eben Tisdale Research Fellow, The Computing Research Association – Washington, DC June 2019 – August 2019
- Generated comprehensive reports on policy impacts covering emerging technologies including ML, AI, and quantum computing
- Mapped policies and created detailed blog posts for 200+ organizations at the forefront of computing research
- Analyzed policy implications through quantitative and qualitative data assessment methodologies
Projects
Project Owner, ChatHealth
- Directed end-to-end redesign of student health resources website, increasing student engagement by 43%
- Implemented W3C Accessibility Standards through HTML/CSS modifications and ARIA attributes for 4,000+ users
- Successfully managed fundraising efforts, raising over $10K through campus challenges
Technical Project Lead, Dr. Oates Lab
- Developed Python-based sentiment analysis pipeline using NLTK and machine learning to analyze 20,000+ tweets
- Engineered data cleaning and preprocessing workflows to handle large-scale social media text data using Twitter API
- Synthesized findings into a research paper published by the American Political Science Association