high_scalability high_scalability-2010 high_scalability-2010-843 knowledge-graph by maker-knowledge-mining
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Introduction: Forrester released their new wave report: T he Forrester Wave™: Elastic Caching Platforms, Q2 2010 where they listed GigaSpaces, IBM, Oracle, and Terracotta as leading vendors in the field. In this post I'd like to take some time to explain what some of these terms mean, and why they’re important to you. I’ll start with a definition of Elastic Data Grid (Elastic Caching), how it is different then other caching and NoSQL alternatives, and more importantly -- I'll illustrate how it works through some real code examples. You can read the full story here .
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