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Month: June 2017

Using Secondary Sort to Enhance Adobe Data Feed Processing in Hadoop

June 13, 2017April 30, 2022 Jared Stevens

In my last post, I described the basics for processing Adobe Analytics Click Stream Data Feeds using Hadoop. While the solutions outlined there will scale remarkably well, there is a more memory efficient way to do it. Having this flexibility is nice if you have lots of CPU cores available but not as much ram. […]

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Introduction to Processing Click Stream Data Feeds with Hadoop and Map/Reduce

June 6, 2017April 30, 2022 Jared Stevens

In an earlier post, Matt Moss showed how to process data feed data using an SQL database. This can be useful in a pinch when you have a smaller amount of data and need an answer quickly. What happens though when you now need to process the data at a large scale? For example, you […]

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Marketing Mix Model for All: Using R for MMM

June 1, 2017April 30, 2022 Jessica Langford 4 Comments

Understanding the ROI across all of your paid marketing channels is a top priority for senior-level executives across every industry and every geographical market.  Getting a clear sense of the ROI on each channel allows companies to answer really important questions.  For example: What will happen if I increase my Email spend by 20%? What […]

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Recent Posts

  • How to Create Alerts for Adobe Analytics Using R and Slack
  • How to Get Data From R into the Adobe Experience Platform
  • Customer Journey Analytics and R: How to Escape SQL Hell With cjar
  • A Guide to Using R with the Adobe Experience Platform Query Service
  • Visualizing the Customer Journey with R and Adobe Analytics Data Feeds

Recent Comments

  • Trevor Paulsen on Attribution Theory: The Two Best Models for Algorithmic Marketing Attribution – Implemented in Apache Spark and R
  • SHUCHI JAIN on Marketing Mix Model for All: Using R for MMM
  • Casual reader on Amp Up Your A/B Testing Using Raw Analytics Data, Apache Spark, and R
  • Nissanka Wickremasinghe on Attribution Theory: The Two Best Models for Algorithmic Marketing Attribution – Implemented in Apache Spark and R
  • Jared Stevens on Using Adobe Analytics Data Feeds and SQL for Basic Reporting

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