Summary of recent progress on Apache Drill, an open-source community-driven project to provide easy, dependable, fast and flexible ad hoc query capabilities.
The Extract-Transform-Load (ETL) process is one of the most time consuming processes facing anyone who wishes to analyze data. Imagine if you could quickly, easily and scaleably merge and query data without having to spend hours in data prep. Well.. you don’t have to imagine it. You can with Apache Drill. In this hands-on, interactive presentation Mr. Givre will show you how to unleash the power of Apache Drill and explore your data without any kind of ETL process.
Data Exploration with Apache Drill: Day 2Charles Givre
Study after study shows that data scientists and analysts spend between 50% and 90% of their time preparing their data for analysis. Using Drill, you can dramatically reduce the time it takes to go from raw data to insight. This course will show you how.
The course material for this presentation are available at https://github.com/cgivre/data-exploration-with-apache-drill
Join our experts Neeraja Rentachintala, Sr. Director of Product Management and Aman Sinha, Lead Software Engineer and host Sameer Nori in a discussion about putting Apache Drill into production.
Apache Drill and Zeppelin: Two Promising Tools You've Never Heard OfCharles Givre
Study after study shows that data preparation and other data janitorial work consume 50-90% of most data scientists’ time. Apache Drill is a very promising tool which can help address this. Drill works with many different forms of “self describing data” and allows analysts to run ad-hoc queries in ANSI SQL against that data. Unlike HIVE or other SQL on Hadoop tools, Drill is not a wrapper for Map-Reduce and can scale to clusters of up to 10k nodes.
Data Exploration with Apache Drill: Day 1Charles Givre
Study after study shows that data scientists and analysts spend between 50% and 90% of their time preparing their data for analysis. Using Drill, you can dramatically reduce the time it takes to go from raw data to insight. This course will show you how.
The course material for this presentation are available at https://github.com/cgivre/data-exploration-with-apache-drill
AWS re:Invent 2016: Deep Dive: Amazon EMR Best Practices & Design Patterns (B...Amazon Web Services
Amazon EMR is one of the largest Hadoop operators in the world. In this session, we introduce you to Amazon EMR design patterns such as using Amazon S3 instead of HDFS, taking advantage of both long and short-lived clusters, and other Amazon EMR architectural best practices. We talk about how to scale your cluster up or down dynamically and introduce you to ways you can fine-tune your cluster. We also share best practices to keep your Amazon EMR cluster cost-efficient. Finally, we dive into some of our recent launches to keep you current on our latest features. This session will feature Asurion, a provider of device protection and support services for over 280 million smartphones and other consumer electronics devices. Asurion will share how they architected their petabyte-scale data platform using Apache Hive, Apache Spark, and Presto on Amazon EMR.