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2021 Crystal Ball: What’s in Store for AI, Machine Learning, and Data

Dataversity

Artificial intelligence (AI) is no longer a “nice-to-have.” From business processes and smart home technology to healthcare and life sciences, AI continues to evolve and grow as it plays an increasing role in many aspects of our work, home lives, and beyond. Click to learn more about author Rachel Roumeliotis.

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Best Examples of IoT Applications and IoT Devices: (Internet of Things)

NW Kings

NOTE : Join the Google Cloud Security Master’s Program at Network Kings today! Healthcare Monitoring Medical devices connected to the Internet help healthcare providers monitor patients remotely. NOTE : Join the Azure Cloud Security Master’s Program at Network Kings today! What are the examples of IoT devices?

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Enhancing Security and Asset Management with AI/ML in Cato Networks’ SASE Product

CATO Networks

The announcement is hardly our foray into artificial intelligence (AI) and machine learning (ML). What is Artificial Intelligence (AI), Machine Learning (ML), and Deep Learning (DL)? Cato tackles these challenges by running our DL and ML algorithms on Cato’s cloud infrastructure.

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Achieving NIS2 Compliance: Essential Steps for Companies 

CATO Networks

For non-compliance with NIS regulations, companies providing essential services such as energy, healthcare, transport, or water may be fined up to 17 million in the UK and 10 million or 2% of worldwide turnover in the EU. The Cato SASE Cloud platform supports more than 80 points of presence in over 150 countries.

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AI in Health Care: Trends and Challenges in 2022

Dataversity

Around this time last year, the 2021 AI in Healthcare Survey was released. The results showed growth in natural language processing (NLP), clinicians becoming primary users of AI technology, and a preference for companies using their own data to validate models, among other findings.