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2020",tags:[{label:"Pinot",permalink:"/blog/tags/pinot"},{label:"LinkedIn",permalink:"/blog/tags/linked-in"},{label:"real-time data platform",permalink:"/blog/tags/real-time-data-platform"},{label:"Realtime",permalink:"/blog/tags/realtime"},{label:"Analytics",permalink:"/blog/tags/analytics"},{label:"User-Facing Analytics",permalink:"/blog/tags/user-facing-analytics"}],readingTime:.22,truncated:!1,prevItem:{title:"Building LinkedIn Talent Insights to democratize data-driven decision making",permalink:"/blog/2020/06/29/LinkedIn-TalentInsight"},nextItem:{title:"Using Apache Pinot and Kafka to Analyze GitHub Events",permalink:"/blog/2020/04/10/DevBlog-AnalyzeGitEvents"}},p=[],u={toc:p};function m(e){var t=e.components,n=(0,i.Z)(e,o);return(0,a.kt)("wrapper",(0,r.Z)({},u,n,{components:t,mdxType:"MDXLayout"}),(0,a.kt)("p",null,"Explain how ThirdEye smart alerts and automated dashboards helped the LinkedIn Premium business operations team monitor key metrics\u2014such as new free trial 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