Generative AI-Powered Service Operating Systems: A Comprehensive Study of Neural Network Applications for Intelligent Data Management and Service Optimization
Keywords:
Generative AI, Service Operating Systems, Data Management, Service Optimization, Neural Networks, AI-Augmented Data Search, AI-Augmented Data Extraction, AI-Augmented Data Cleansing, AI-Augmented Data Monitoring, AI-augmented data Analysis, AI-augmented Prediction, Service Distribution, Real-Time Integration, AI-Augmented Retrieval Optimization, AI-Augmented Service Fusion, AI-Augmented Service Prediction, AI-Augmented Feedback Control, Recurrent Neural Network, Short-Data-Series Services, Financial Attribute ImputationAbstract
This paper provides a comprehensive study on generative AI-powered service operating systems—a new vision of advanced data management and service optimization that can relieve the complex understanding and long-term development of intelligent data analysis and information service optimization.
References
Vaka, D. K. (2024). Enhancing Supplier Relationships: Critical Factors in Procurement Supplier Selection. In Journal of Artificial Intelligence, Machine Learning and Data Science (Vol. 2, Issue 1, pp. 229–233). United Research Forum. https://doi.org/10.51219/jaimld/dilip-kumar vaka/74
Ravi Kumar Vankayalapati , Chandrashekar Pandugula , Venkata Krishna Azith Teja Ganti , Ghatoth Mishra. (2022). AI Powered Self-Healing Cloud Infrastructures: A Paradigm For Autonomous Fault Recovery. Migration Letters, 19(6), 1173–1187. Retrieved from https://migrationletters.com/index.php/ml/article/ view/11498