š° Welcome to MyBunny.TV ā Your Gateway to Unlimited Entertainment! š°
Enjoy 10,000+ Premium HD Channels, thousands of movies & series, and experience lightning-fast instant activation.
Reliable, stable, and built for the ultimate streaming experience ā no hassles, just entertainment! MyBunny.TV ā Cheaper Than Cable ⢠Up to 35% Off Yearly Plans ⢠All NFL, ESPN, PPV Events Included š°
š Join the fastest growing IPTV community today and discover why everyone is switching to MyBunny.TV!
Balusamy B. Computational Intelligence in Sustainable Computing...Apps 2025
To start this P2P download, you have to install a BitTorrent client like
qBittorrent
Category:Other Total size: 53.28 MB Added: 6 months ago (2025-03-10 23:39:07)
Share ratio:2 seeders, 0 leechers Info Hash:4668AEA4ED87B742C3359E62F393432F1C810162 Last updated: 4 hours ago (2025-09-15 02:15:56)
Report Bad Torrent
×
Description:
Textbook in PDF format
Computational Intelligence in Sustainable Computing and Optimization: Trends and Applications focuses on developing and evolving advanced Computational Intelligence algorithms for the analysis of data involved in applications, such as agriculture, biomedical systems, bioinformatics, business intelligence, economics, disaster management, e-learning, education management, financial management, and environmental policies. The book presents research in sustainable computing and optimization, combining methods from engineering, mathematics, Artificial Intelligence, and Computer Science to optimize environmental resources. Computational Intelligence in the field of sustainable computing combines Computer Science and engineering in applications ranging from Internet of Things (IoT), information security systems, smart storage, cloud computing, intelligent transport management, cognitive and bio-inspired computing, and management science. In addition, data intelligence techniques play a critical role in sustainable computing. Recent advances in data management, data modeling, data analysis, and Artificial Intelligence (AI) are finding applications in energy networks and thus making our environment more sustainable.
- Presents computational, intelligenceābased data analysis for sustainable computing applications such as pattern recognition, biomedical imaging, sustainable cities, sustainable transport, sustainable agriculture, and sustainable financial management
- Develops research in sustainable computing and optimization, combining methods from engineering, mathematics, and computer science to optimize environmental resources
- Includes three foundational chapters dedicated to providing an overview of computational intelligence and optimization techniques and their applications for sustainable computing
Introduction
1. Journey of computational intelligence in sustainable computing and optimization techniques: An introduction
2. Designing computational intelligence techniques based smart framework for sustainable computing
3. Multiple parameter optimization methods based on computational intelligence techniques in context of sustainable computing
4. IoT-based vulnerability assessment for sustainable computing: Threats, current solutions, and open challenges
5. Amalgamation of optimization techniques in big data analytics through granular computing: A roadmap to smart industry framework
6. Computational intelligence for data analysis in pattern recognition and biomedical fields
7. A block chain and artificial intelligenceāenabled smart IoT framework for the development of sustainable city
8. Computational intelligenceābased heuristic approach for maximizing energy efficiency in sustainable transportation and mobility
9. Computational intelligence for sustainable computing in health care informatics
10. Computational intelligence for sustainable computing in traditional medical system Ayurveda
11. Computational intelligence approach for anomaly detection and prediction in health care information
12. Artificial intelligenceābased computational intelligence solutions for robotic automation
13. Developing green computing awareness based on optimization techniques for environmental sustainability