Engineering and Management of Data Science, Analytics, and AI/ML Projects: Foundations, Models, Frameworks, Architectures, Standards, Processes, Practices, Platforms and Tools for Small and Big Data
Synopsis
This book presents a dual perspective on modern research and praxis on Data Science, Analytics, and AI/Machine Learning (DSA-AI/ML) system with small or big data. Consequently, potential readers-academics, researchers and practitioners interested in the systematic development and implementation of DSA-AI/ML systems-can be benefited with the high-quality conceptual and empirical research chapters focused on:
-
Foundations, Development Platforms, and Tools on Engineering and Management of DSA-AI/ML Projects:
-
DSA-AI/ML reference architectures.
-
Data visualization principles for DSA-AI/ML.
-
Federated Learning in large-scale DSA-AI/ML systems.
-
-
Achievements, Challenges, Trends, and Future Research Directions on DSA-AI/ML Projects:
-
Large multimodal model-based simulation game for DSA-AI/ML systems.
-
Value stream analysis and design applied to DSA-AI/ML systems.
-
Quality management 4.0 and AI for DSA-AI/ML systems.
-
Hence, this research-oriented co-edited book contributes to achieve the systematic development and implementation of Data Science, Analytics, and AI/ML systems.
Publisher information
- Publisher: Springer Nature Switzerland
- ISBN: 9783032068880
- Number of pages: 139
- Dimensions: 235 x 155 x 235 mm
- Weight: 350g
- Languages: English
