Anderson, JenningsCasas Saez, GerardAnderson, KennethPalen, LeysiaMorss, Rebecca2019-01-032019-01-032019-01-08978-0-9981331-2-6http://hdl.handle.net/10125/59666Dominated by quantitative data science techniques, social media data analysis often fails to incorporate the surrounding context, conversation, and metadata that allows for more complete, accurate, and informed analysis. Here we describe the development of a scalable data collection infrastructure to interrogate massive amounts of tweets—including complete user conversations—to perform contextualized social media analysis. Additionally, we discuss the nuances of location metadata and incorporate it when available to situate the user conversations within geographic context through an interactive map. The map also spatially clusters tweets to identify important locations and movement between them, illuminating specific behavior, like evacuating before a hurricane. We share performance details, the promising results of concurrent research utilizing this infrastructure, and discuss the challenges and ethics of using context-rich datasets.10 pagesengAttribution-NonCommercial-NoDerivatives 4.0 InternationalData Analytics, Data Mining and Machine Learning for Social MediaDigital and Social MediaData Science, Kubernetes, GeoLocation, Social Media Data Analysis, TwitterIncorporating Context and Location Into Social Media Analysis: A Scalable, Cloud-Based Approach for More Powerful Data ScienceConference Paper10.24251/HICSS.2019.275