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Categorizing the Self: Why Identity Management Trends Toward Singularity


Stepping Beyond the Postmodern Threshold


Making Sense of Python's Appeal


Why I Chose Django: The Story Behind This Blog's Framework



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The Industrial Security Paradigm for AI in Critical Systems


Ethereum: The World Computer That's Changing the Game


Unraveling Polkadot: The New Era of Scalable, Interconnected Blockchains


Riding the Bitcoin Wave: A roadmap from 2023 and beyond



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Categorizing the Self: Why Identity Management Trends Toward Singularity


Stepping Beyond the Postmodern Threshold


Making Sense of Python's Appeal


Why I Chose Django: The Story Behind This Blog's Framework



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Categorizing the Self: Why Identity Management Trends Toward Singularity


Stepping Beyond the Postmodern Threshold


Making Sense of Python's Appeal


Why I Chose Django: The Story Behind This Blog's Framework



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AI’s Primitive Surge Sparks a Security Storm


The Industrial Security Paradigm for AI in Critical Systems


The Hidden Cybersecurity Challenges of Artificial Intelligence.


Uncovering the Sigmoid Function Step by Step



Anomaly Detection

Anomaly detection is a technique used in data analysis and cybersecurity to identify abnormal patterns that do not conform to expected behavior. These anomalies, also known as outliers, can be indicative of a problem or a potential area of interest. For instance, in cybersecurity, anomaly detection algorithms monitor network traffic to flag unusual activity that could signify a security breach. In finance, it may be used to detect fraudulent transactions. In industrial settings, it could monitor machine behavior to predict equipment failure before it occurs. Anomaly detection leverages statistical, machine learning, or deep learning models to sift through large datasets and highlight deviations from the norm. The challenge in implementing an effective anomaly detection system lies in defining what constitutes "normal" behavior, which may evolve over time or vary across different contexts. Consequently, the system often requires continuous training and fine-tuning to adapt to new patterns and minimize the rate of false positives and negatives. Overall, anomaly detection serves as a critical tool for proactive monitoring and timely intervention in various domains.


Posts with Tag: Anomaly Detection

The post below is the most recent post on the site associated with Anomaly Detection. The remainder of such posts are viewable by clicking the pagination links above and below each post group.

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Defence in Depth for IIoT: Balancing Controls Across Architecture Levels

Published: May 30, 2023, 9:19 a.m.


Defence in Depth for IIoT: Balancing Controls Across Architecture Levels header
Popular Categories:
Cyber Security IOT Networking Risk ... and others
Popular Tags:
Security Innovation Technology Privacy ... and others

Industrial Internet of Things (IIoT) systems, such as those used in critical infrastructure like power plants and manufacturing facilities, face unique security challenges compared to traditional IT systems. With … Read More

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