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IBM to Acquire Cloudant: Open, Cloud Database Service Helps Organizations Simplify Mobile, Web App and Big Data Development

CTOvision

By Bob Gourley Note: we have been tracking Cloudant in our special reporting on Analytical Tools , Big Data Capabilities , and Cloud Computing. Cloudant will extend IBM’s Big Data and Analytics , Cloud Computing and Mobile offerings by further helping clients take advantage of these key growth initiatives.

IBM 268
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The Internet of (Secure) Things – Embedding Security in the IoT

CTOvision

These are examples of consumer-oriented sensors and devices, but that has occurred in parallel with business, professional, infrastructure, government and military applications. You can opt-in to smart metering so that a utility can load balance energy distribution. Here are some examples….

Internet 283
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What’s Free at Linux Academy — March 2019

Linux Academy

Eschewing any technical practices, this course takes a high-level view of the history of Linux, the open-source movement, and how this powerful software is used today. Students will explore how containers work, how they compare with virtual machines and Docker containers, and how they handle application isolation.

Linux 80
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Managing What Matters In the Cloud: The Apps » Data Center.

Data Center Knowledge

Paul Speciale is Chief Marketing Officer at Appcara , which is a provider of a model-based cloud application platform. He has more than 20 years of experience in assisting cloud, storage and data management technology companies as well as cloud service providers to address rapidly expanding Infrastructure-as-a-Service and big data sectors.

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Elevating ML to new heights with distributed learning

Dataconomy

This scalability is particularly valuable in scenarios where real-time or near-real-time predictions are needed or when dealing with large-scale datasets, such as those encountered in big data applications. What is distributed learning? This diversity helps prevent overfitting and promotes robustness.