BEGIN:VCALENDAR
VERSION:2.0
PRODID:-//hacksw/handcal//NONSGML v1.0//EN
METHOD:PUBLISH
BEGIN:VEVENT
DTSTAMP:20260518T054910Z
DESCRIPTION:Click for Latest Location Information: http://edw2019.dataversi
 ty.net/sessionPop.cfm?confid=126&proposalid=10563\n<p>How do you build an a
 rchitecture to support a diverse set of teams, roles, and data in a modern 
 organization? Data analysts, data scientists, and data engineers are alread
 y working in teams delivering insight and analysis, but how do you get the 
 team to support experimentation and insight delivery without ending up&nbsp
 ;failing? Eric Estabrooks presents the seven steps to get these people and 
 their architecture moving. These seven steps contain practical, doable step
 s that can help you achieve DataOps. DataOps is a collaborative Data Manage
 ment practice put in mid-2018 on the Gartner 2018 Hype Cycle and is emergin
 g as an area of interest with other analyst groups who recognize the upcomi
 ng shift in the industry.</p>\n<p>&nbsp;</p>\n<p>In order to dive into Data
 Ops Eric outlines the steps to apply DevOps techniques from software develo
 pment to create an Agile analytics operations environment, including how to
  add tests, modularize and containerize, do branching and merging, use mult
 iple environments, parameterize your process, use simple storage, and use m
 ultiple workflows deploy to production with W. Edwards Deming efficiency. T
 hey also explain why &ldquo;don&rsquo;t be a hero&rdquo; should be the mott
 o of analytic teams&mdash;emphasizing that while being a hero can feel good
 , it is not the path to success for individuals in analytic teams.</p>\n<p>
 Eric&rsquo;s goal is to teach analytic teams how to deliver business value 
 quickly and with high quality. They illustrate how to apply Agile processes
  to your department. However, a process is not enough. Walking through the 
 seven shocking steps will demonstrate how to create a technical environment
  that truly enables speed and quality by supporting DataOps.</p>\n
DTSTART:20190321T083000
SUMMARY:DataOps and Modern Data Architecture
DTEND:20190321T092959
LOCATION: See Description
END:VEVENT
END:VCALENDAR