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In-Memory Computing: Facts and Myths

Businesses want everything now, and often fast isn’t fast enough. In-memory computing attracts a ton of interest as a solution, but as the curiosity grows, so does the confusion about what it can actually do and where it should be leveraged. As the cost of RAM continues to drop, an array of products are adopting in-memory technology as a means of getting things done, usually orders of magnitude faster.
Recorded Mar 20 2014 45 mins
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Presented by
Nikita Ivanov, CTO, Gridgain
Presentation preview: In-Memory Computing: Facts and Myths

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