| Literature DB >> 29607412 |
Abstract
Social media has become an important platform to gauge public opinion on topics related to our daily lives. In practice, processing these posts requires big data analytics tools since the volume of data and the speed of production overwhelm single-server solutions. Building an application to capture and analyze posts from social media can be a challenge simply because it requires combining a set of complex software tools that often times are tricky to configure, tune, and maintain. In many instances, the application ends up being an assorted collection of Java/Scala programs or Python scripts that developers cobble together to generate the data products they need. In this paper, we present the Twitter Health Surveillance (THS) application framework. THS is designed as a platform to allow end-users to monitor a stream of tweets, and process the stream with a combination of built-in functionality and their own user-defined functions. We discuss the architecture of THS, and describe its implementation atop the Apache Hadoop Ecosystem. We also present several lessons learned while developing our current prototype.Entities:
Keywords: Twitter; big data analytics; social media; streaming; use-defined functions
Year: 2017 PMID: 29607412 PMCID: PMC5872152 DOI: 10.1109/BigDataCongress.2017.55
Source DB: PubMed Journal: Proc IEEE Int Congr Big Data ISSN: 2379-7703