Analyzing Log Data with Spark and Looker

May 18, 2016
Machines are constantly generating data. Unlocking the value of log files has historically lived in the realm of batch processing. However, emerging technologies have dramatically reduced the latency of event pipelines and have improved interactive analysis and querying. In this webinar, Scott Hoover, Looker Data Scientist, and Daniel Mintz, Chief Data Evangelist at Looker, discuss the specifics of setting up a modern pipeline that collects, processes, and analyzes high-volume, machine-generated data. Topics covered include: - Popular collection mechanisms - Hands-on log-parsing example in Spark - How to utilize Looker to glean insights from event data See recorded webinar at https://info.looker.com/h/i/254518884-analyzing-log-data-with-spark-and-looker
Previous Presentation
Data Stack Considerations: Build vs. Buy at Tout
Data Stack Considerations: Build vs. Buy at Tout

In this webinar we see why and how Tout – a fast-growing video platform – made the jump to Looker and Treas...

Next Presentation
Embedding Data & Analytics With Looker
Embedding Data & Analytics With Looker

Delivering data and analytics to your customers should be straightforward. The Looker Data Platform allows ...