Tracks & Subtopics
The topics of interest include but are not limited to the following :
Track 1 : Models, Methods and Technology
- Big Data Models, Algorithms, and Architectures
- Data mining tools and techniques
- Data indexing, cleaning, transformation, and curation technologies
- Big data processing frameworks and technologies
- Big data services and application development methods and tools
- Big data quality evaluation and assurance technologies
- Big data system reliability, dependability, and availability
- Open-source development and technology for big data
- Big Data as a Service (BDaaS) platform and technologies
- Modeling and Managing Large Data Systems
- Machine learning algorithms for big data
- Models, algorithms, and technologies for real-time big data services and applications
- Big data infrastructure
- Network protocols and architectures
Track 2 : Data Integration
- Semi-structured and Unstructured Data
- Foundational theoretical models for big data
- Computational models for big data
- Semantic Data Integration
- Ontology-based Database Design
- Information Integration
- Programming models, theories, and algorithms for big data
- Standards, protocols, and quality assurance for big data
Track 3 : IA & Advanced Analysis
- Business Analytics
- Large scale Machine Learning
- Algorithms and systems for big data search and analytics
- Machine learning for big data and based on big data
- Edge Computing Machine Learning
- Predictive analytics and simulation
- Visualization systems for big data
- Knowledge extraction, discovery, analysis, and presentation
- Graph Convolutional Networks
- Generative Adversarial Networks
- Multi-modal Learning
- Web Intelligence
- Mobile Computing and Intelligence
Track 4 : Optimisation of Big Data Systems
- Computational optimization.
- Optimization for representation learning.
- Optimization under Uncertainty
- Multi-objective optimization.
- Optimization and Game Theory.
- Surrogate-assisted Optimization.
- Derivative-free Optimization
- Optimization algorithms for Real-World Applications.
- Optimization for Big Data.
- Optimization and Machine Learning
- Swarm Intelligence and Optimization
- High Performance Computing
- Parallelization/Performance/Scalability
Track 5 : Security & Privacy in Big Data Systems
- Big Data Integrity and Privacy
- Access control and authorization
- Blockchain technologies
- Distributed systems security
- Economics of security and privacy
- Intrusion detection and prevention
- Security and privacy for the Internet of Things
- Systems security
- Network security
- Security and privacy policies
- Cloud security
- Models, algorithms and technologies for big data security and integrity
- Practical security and privacy technologies and applications for big data Security and Safety design methods
- Security verification
- Security analysis
- IoT lifecycle management
Track 6 : Use cases & Industrial Applications
- Big Data Applications in Science, Internet, Finance, Social sciences, Physical sciences, Engineering, life sciences, Telecommunictions, Business, Medicine, Healthcare, Government, Transportation, Industry, Manufacture, etc
- Big data services and applications for healthcare
- Experiences, practices and case studies of big data technologies for healthcare, Transportation, Industry, etc
- Applications of Big Data Technology in the Transport Industry
- Experiences, practices and case studies of real-time big data services and applications
Track 7 : Big Data Benchmarking
- Big data workload characterization and benchmarking
- Data generators or reinforcement learning environments
- Advanced practices in data collection and curation
- Evaluation, simulation, and test of complex systems
- Evaluation methodology and tools
- Simulation technologies and simulators
- Software and hardware simulation
- Benchmarking for AI, big data, blockchain, and cloud computing
- Benchmarking for energy efficiency
- Benchmarking confidence
- Tools in benchmark, measurement, and optimization
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