XenonStack

A Stack Innovator

Post Top Ad

Friday 29 November 2019

Large Data Processing with Presto and Apache Hive — XenonStack



Building Query Platform with Presto and Apache Hive

Distributed SQL Query Engine Presto runs analytic queries. Infrastructure Automation implemented using Ansible and Terraform for Auto Launching, Auto Scaling and Auto Healing of the Presto Cluster and Hive using AWS On-Demand EC2 and AWS Spot Instances.

Presto has the following Features

  • Presto queries data in Hive metastore and optimized for latency.
  • Presto has Push Data Processing Models like traditional DBMS implementations.
  • Presto includes memory limitation for query Tasks and runs daily /weekly reports queries Required a Large Amount of Memory.

Apache Hive Features

  • Hive runs Batch Processing against data sources of all sizes ranging from Gigabytes to Petabytes.
  • Hive optimized for query throughput.
  • Hive has Pull Data Processing Modelling.

Top Business Challenge for Big Data Processing

  • Build Data Processing & Query Platform and Cluster Management.
  • Large DataSets on remote storage and use Presto for data discovery and Apache Hive, Tez For ETL Jobs.
  • Infrastructure Automation for Cluster Management and deployment for Presto and Hive using AWS Spot Instances.

Solution Offerings for Infrastructure Automation

  • Simplify, Speed Up and Scale Big Data Analytics workloads.
  • Process Data from external storage using fast execution engines like Presto and Hive.
  • Run large and complex queries.
  • Cost-effective using AWS spot instances as default and heal the cluster if cluster scale is smaller than the minimum cluster size.
  • Automatic Scale Up and Down the cluster according to the CPU load.

No comments:

Post a Comment