Learn about Hadoop capacity planning at the cluster, queue, and application levels with Pepperdata
As the data analytics field matures, the amount of data generated is growing rapidly and so is its use by enterprise organizations. This increase in data improves data analytics and the result is a continuous circle of data and information generation. To manage these new volumes of data, IT organizations and DevOps teams must understand resource usage and right-size their Hadoop clusters to balance the OPEX and CAPEX.
This presentation discusses capacity planning for big data Hadoop environments. Pepperdata field engineer Kirk Lewis explores big data Hadoop capacity planning at the cluster level, the queue level, and the application level via the Pepperdata big data performance management UI.