Remove Artificial Intelligence Remove Banking Remove Cybersecurity Remove Predictive Analytics
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How AI-Driven Cybersecurity Drastically Impacts Our Lives

Smart Data Collective

Artificial intelligence is a form of technology that is drastically changing our lives. One of the most impactful ways that AI impacts our lives is by improving our cybersecurity technology. Sridhar Muppidi, CTO of IBM Security, created a very insightful video about the benefits of AI in the field of cybersecurity.

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Best Ways to Integrate Big Data into Your Business

Smart Data Collective

For example, predictive analytics detect unlawful trading and fraudulent transactions in the banking industry. Understanding the ”normal” tendencies allows banks to identify unusual behavior quickly. Cybersecurity is another significant concern as data privacy and GDPR grow more crucial.

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Experts Warn AI And Social Engineering Lead To New Digital Scams

Smart Data Collective

Social engineering scams are becoming even more terrifying, as hackers have discovered that artificial intelligence can make them more effective. They use a variety of machine learning and predictive analytics models to target new marks and reach them more effectively.

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The Future of AI in Healthcare: Trends and Innovations

Cprime

– AI is crucial in identifying and inventorying electronic PHI (ePHI), using deep learning to mimic trained humans’ abilities without cumbersome programming, and is necessary as traditional defenses are no longer sufficient against evolving cybersecurity threats. Can AI help with the predictive maintenance of medical equipment?

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Must-Have AI Features for Your App

Sisense

Artificial intelligence is transforming products in surprising and ingenious ways. Safeguarding software and users: AI in cybersecurity apps. In fact, training metrics for these creditworthiness algorithms may bank on thousands of variables to generate an alternative credit score and also predict its own accuracy.