Cookie policy: This site uses cookies (small files stored on your computer) to simplify and improve your experience of this website. Cookies are small text files stored on the device you are using to access this website. For more information on how we use and manage cookies please take a look at our privacy and cookie policies. Some parts of the site may not work properly if you choose not to accept cookies.

sections
Home > Attunity > Best Practices: Stream Operational Data to Cloud Data Lakes for Better Business Outcomes
 

Best Practices: Stream Operational Data to Cloud Data Lakes for Better Business Outcomes

White Paper Published By: Attunity
Attunity
Published:  Feb 12, 2019
Type:  White Paper
Length:  21 pages

Three major trends have emerged for organizations to efficiently gain access to and optimize work with their most valuable data. First, streaming data architectures, enabled by change data capture (CDC) technology. Second, enterprise data lake acceptance to deliver a single repository of enterprise data for self-service data and analytics, and third, cloud computing adoption, which delivers the simplicity and affordable scalability of data storage and usage for massive quantities of data ingested.

This technical whitepaper by Radiant Advisors covers key findings from their work with a network of Fortune 1000 companies and clients from various industries, to assess these trends. The research includes distilling real-world examples into patterns for success in modern data integration, designed to help enterprises understand how to maximize the use of streaming data. Accordingly, this paper also clarifies the importance and value of populating a cloud data lake with streaming operational data, leveraging database replication and modern data integration techniques.

Download this whitepaper to learn more about modern architectures and approaches for streaming data integration.



Tags : 
streaming data, cloud data lakes, cloud data lake, data lake, cloud, data lakes, streaming data, change data capture, cloud computing, modern data integration, data integration, data analytics, cloud-based data lake, enterprise data, self-service data