Products

o    Overview

o    CA for Developers

o    Modern Software Factory Hub

o    Industry Solutions

o    Advanced Analytics

o    Agile Management

o    API Management

o    Automation

o    Cloud Solutions

o    Continuous Delivery

o    Continuous Testing

o    DevOps

o    IT Operations Management

o    Mainframe

o    Microservices

o    Security

o    Service Management

o    Veracode

o    Overview

o    Log in to Training Portal

o    Course Finder

o    Learning Paths

o    Free Training

o    New Releases

o    Specialized Training

o    CA Agile Training

o    CA Agile Academy

o    API Academy

o    Mainframe Training

o    CA Certification

o    CA Productivity Accelerator

o    How to Buy

o    Locations and Contacts

o    CA+ Video Learning Library

o    Consulting

o    Implementing

o    Managing

o    Upgrading

o    CA Agile Transformation Consulting

o    CA Agile Coaching

o    CA Project & Portfolio Management Services

o    Overview

o    Partner Experience Platform

o    Become a Partner

o    CA Advantage Partner Program

o    Partner Locator

o    Managed Service Providers

o    Regional Resellers

o    Technology Partners

 

 

{{search ? 'Close':'Search'}}

LeanBigData

Ultra-Scalable and Ultra-Efficient Integrated and Visual Big Data Analytics

LeanBigData aims at addressing three open challenges in big data analytics:

  • The cost, in terms of resources, of scaling big data analytics for streaming and static data sources;
  • The lack of integration of existing big data management technologies and their high response time;
  • The insufficient end-user support leading to extremely lengthy big data analysis cycles.

LeanBigData will address these challenges by: Architecting and developing three resource-efficient Big Data management systems typically involved in Big Data processing: a novel transactional NoSQL key-value data store, a distributed complex event processing (CEP) system, and a distributed SQL query engine. We will achieve at least one order of magnitude in efficiency by removing overheads at all levels of the big-data analytics stack and we will take into account technology trends in multicore technologies and non-volatile memories. Providing an integrated big data platform with these three main technologies used for big data, NoSQL, SQL, and Streaming/CEP that will improve response time for unified analytics over multiple sources and large amounts of data avoiding the inefficiencies and delays introduced by existing extract-transfer-load approaches.

Project Partners

Institute Of Communication And Computer Systems