Edge Data Preprocessing in Data Science
Introduction
In the era of the Internet of Things (IoT) and big data, the periphery of networks—sensors, mobile devices, and...
Data Science Data Integration
Introduction
Data science requires data integration from multiple sources. As data-driven decision-making grows, organizations must combine multiple databases. Businesses acquire deep insights,...
Data science hybrid deployments
Introduction
Business success depends on successfully implementing machine learning (ML) models in data science, which is continually growing. Companies must decide whether...
Edge Computing in Data Science
Introduction
Traditional cloud computing designs struggle with latency, bandwidth, and privacy in the age of big data and IoT. Edge computing...
Dynamic Model Switching in Data Science
Introduction
Data science is constantly changing, therefore real-time model adaptation is essential. Advanced Dynamic Model Switching (DMS) lets data scientists...
Mixed-Hybridization in Data Science
Introduction
Data science is constantly evolving and relies on innovation and multidisciplinary approaches. A novel concept is mixed-hybridization, which integrates numerous methods,...
Swapping Hybridization in Data Science
Introduction
In the discipline of data science, which is constantly changing, new methods are constantly developing to enhance the efficiency, interpretability,...
Data Science Cascade Hybridization
Introduction
The need for more accurate, efficient, and scalable models has driven the development of advanced approaches like cascade hybridization in data...
Content-Based Hybrid in Data Science
Introduction
In data science, recommendation systems are pervasive, especially in e-commerce, streaming services, social networking, and online education. Personalized recommendation systems...