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3 Compelling Ways IoT is Changing the Solar Industry

Smart Data Collective

The Internet of Things is one of the fastest growing industries. Since there is enough historical data, the energy companies can apply analytical and predictive models to calculate power generation rates under certain weather conditions. It grew 22% last year and is projected to grow further in the future.

IoT 100
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Unveiling the Top 10 Data Visualization Companies of 2024

FineReport

Innovations such as AI-driven analytics, interactive dashboards , and predictive modeling set these companies apart. Boasting a user-centric approach, Alteryx’s key features include drag-and-drop functionalities and predictive modeling capabilities.

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Otis takes the smart elevator to new heights

CIO Business Intelligence

IoT sensors send elevator data to the cloud platform, where analytics are applied to support business operations, including reporting, data visualization, and predictive modeling. With the advent of the internet of things, most physical things can now be monitored, controlled, updated, and even operated remotely,” Berntz says.

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From Bolts to Bots: How AI Is Fortifying the Automotive Industry

Smart Data Collective

So many smart devices have started to connect and communicate over the internet, that the term Internet of Things (IoT) has been coined to describe these “network-aware” devices. Utilizing advanced heuristics and AI modeling OEMs can simulate a multitude of conditions, fast-tracking these models using automation.

IoT 110
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How gaming companies can use Amazon Redshift Serverless to build scalable analytical applications faster and easier

AWS Big Data

It includes business intelligence (BI) users, canned and interactive reports, dashboards, data science workloads, Internet of Things (IoT), web apps, and third-party data consumers. It helps you build, train, and deploy models consuming the data from repositories in the data hub.

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Some stuff that’s always on my mind

DMBS2

Multiple kinds of data model are viable … … but it’s usually helpful to be able to do some kind of JOIN. The ongoing rise of “edge computing” and the “Internet of Things” fit into the general trend that in 2013 I summarized as appliances, clusters and clouds.

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Top 10 Data Innovation Trends During 2020

Rocket-Powered Data Science

MLOps takes the modeling, algorithms, and data wrangling out of the experimental “one off” phase and moves the best models into deployment and sustained operational phase. MLOps “done right” addresses sustainable model operations, explainability, trust, versioning, reproducibility, training updates, and governance (i.e.,