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christinalchang/README.md

Hi there! My name is Christina, I"m a data scientist located in the SF Bay Area. Interests include making cool data visualizations, business intelligence/strategy, and ML. In my free time I enjoy taking care of my houseplants, exploring new places, and most of all, dessert!

🌱 Learning about applications of data science in people analytics, an area of analytics that reveals actionable insights for decisions regarding employees, work, and business objectives
🧐 I"m currently working on projects related to hybrid work, employee sentiment, and employee engagment
🎓 Northwestern Master of Science in Analytics and UC Davis B.S. in Statistics - Statsitical Data Science alum
☕️ Get in touch with me on LinkedIn

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    Analysis of news articles on the California Camp Fire to determine if there are differences in digesting information from local, national, and social media news sources in Python.

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