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Being a Data Janitor for 10m+ Users

soobrosa
March 04, 2022

Being a Data Janitor for 10m+ Users

soobrosa

March 04, 2022
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  1. Being a Data Janitor for 10m+ Users Tips and Tools

    from the Trenches Daniel Molnar, 6Wunderkinder GmbH
  2. Who we are? ‣ Productivity app on iPhone, iPad, Mac,

    Android, Windows, Kindle Fire and the Web ‣ 13+ million users, 5 years, headcount of 67 ‣ From monolithic Rails to polyglot microservices (Scala, Clojure, Go) heavy on AWS 6Wunderkinder makes Wunderlist in Berlin
  3. Data Team Torsten Becker Infrastructure BI + ML Tightly-­‐knit team

    of all-­‐rounders Jenny Herald BI + UX Finance Faludi Bence Infrastructure BI + ML Molnár Dániel Infrastructure BI + ML
  4. Data Stack Philosophy ‣ Closet clean ‣ Borges’ Labyrinths ‣

    Backwards straight ‣ Data mythology ‣ Self service I Was Made For Lovin’ You
  5. Logging ‣ No to: GA (no raw, no attribution, sampling,

    off by X%), Kinesis, Snowplow ‣ Tools: Railslog, Noxy,
 homebred tracker, Adjust ‣ Mr Beaver (EMR job in Scala) ‣ Tracker in node.js > SNS > SQS ‣ 63 TB logs + 9 TB dumps ‣ Logging distributed systems is MEH
 (Monitorama PDX 2014 James Mickens) Say “Google Analytics” one more time
  6. ETL ‣ No to: Amazon Data Flow, Oozie, Luigi ‣

    Nightly cronjob + make + 240 ETL SQLs ‣ 41 sources (events, production DBs, App Annie, Mailchimp, payment providers, Maxmind) ‣ Inject variables and logic into SQL with ERB ‣ Timing with a bash wrapper Don’t Forget My Plumber
  7. Datawarehouse ‣ No to: Hadoop, Hive, Impala ‣ Tools: (PSQL)

    Redshift ‣ Barebone DW, JSON, window functions
 + crack (superfast, cheap)
 -­‐ GUI, support, reboots ‣ Don't join, filter -­‐ no starschema ‣ 32 small SSDs to
 5 small HDs (cold) + 16 small SSDs (hot) ‣ 4 TB in 280 tables ‣ ‘real’ schema Drop That Table Like It’s Hot
  8. Reporting and Datavis ‣ No to: Localytics, Looker ‣ Tools:

    (Sinatra + D3 > Tableau) > Chart.io ‣ Tableau
 + value for money
 -­‐ cashcow, Windows server, Mac app,
 Redshift connector) ‣ 240 chart.io SQLs "If you go micro, it's pretty hard to distinguish between bad data and crazy people."
  9. Business Intelligence ‣ Tools: Wizard (OSX), iPython notebooks ‣ Default

    KPIs, DAU (active), MAU ‣ Monthly and weekly cohorts ‣ Segments based on platform, geography and activity ‣ Funnels for segments Friends don’t let friends calculate p-­‐values (without fully understanding them)
  10. Experiments ‣ Tools: Optimizely, homebred system ‣ A/B tests on

    app features + any messaging ‣ A/A — illusory A/B ‣ Too small > Bayesian > less certainty ‣ Short-­‐Term Bias, Regression to the Mean, Random Variation ‣ Chris Stucchio, Evan Miller You are not Linkedin
  11. Machine Learning ‣ No PhDs ‣ The Mailchimp way ‣

    We use LDA and NLP 7 years on a PhD in ML to build "suggested pokes" at Facebook