Book Details
Format
Paperback
Pages
406
Language
English
Published
Feb 2, 2022
Publisher
Academic Press
ISBN-10
0128238186
ISBN-13
9780128238189
Description
In a world increasingly reliant on the Internet of Things (IoT), the need for effective anomaly detection and event processing grows more pressing. This work explores innovative methodologies for analyzing data streams generated by IoT devices, particularly in the context of eHealth. Here, the authors, Patrick Schneider and Fatos Xhafa, delve into specialized techniques designed to identify unusual patterns within patient data, highlighting their implications for monitoring and healthcare improvements.
Through a thoughtful synthesis of theory and practical applications, the narrative emphasizes the transformative potential of real-time analytics in healthcare. By leveraging complex algorithms, the authors illustrate how immediate insights can lead to timely interventions, ultimately enhancing patient outcomes. Their approach not only addresses prevalent challenges in data handling but also sets a foundation for future advancements in the intersection of technology and wellness.
This exploration serves as a crucial resource for researchers and practitioners alike, fostering a deeper understanding of how IoT data can be harnessed to detect anomalies and prevent adverse health events. The work is poised to inspire further innovation in the realm of data science as it relates to real-time healthcare solutions.
Through a thoughtful synthesis of theory and practical applications, the narrative emphasizes the transformative potential of real-time analytics in healthcare. By leveraging complex algorithms, the authors illustrate how immediate insights can lead to timely interventions, ultimately enhancing patient outcomes. Their approach not only addresses prevalent challenges in data handling but also sets a foundation for future advancements in the intersection of technology and wellness.
This exploration serves as a crucial resource for researchers and practitioners alike, fostering a deeper understanding of how IoT data can be harnessed to detect anomalies and prevent adverse health events. The work is poised to inspire further innovation in the realm of data science as it relates to real-time healthcare solutions.
Genres
History