Recent years have seen significant evolution of the Internet of Things (IoT). It has become increasingly easy to connect devices to the Internet and send readings to the public cloud in real time. However, it’s quite evident that the adoption of IoT platforms within the enterprise is lagging and less prevalent, due, in part, to the challenges of an on-premises deployment, the lack of related infrastructure, and in some cases, the lack of domain expertise required to deploy analytical solutions that demonstrate high value through real-life use cases.
Table of contents
- Title: Data analytics for the scalable IoT at Intel
- Release date: May 2017
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 0636920458593
You might also like
When developers build software, they're able to keep track of all the different versions and all …
Public Policy Analytics
Public Policy Analytics: Code & Context for Data Science in Government teaches readers how to address …
How Uber uses machine learning and deep learning to forecast business
Andrea Pasqua investigates the merits of using deep learning and other machine learning approaches in the …
How Instagram has evolved using Open Source
Hui Ding explains how open source software has helped lead to Instagram's success—particularly Django, the open …