Session Tracks
Conference Session Tracks
SDG 4 — Quality Education
SDG 8 — Decent Work and Economic Growth
SDG 9 — Industry, Innovation and Infrastructure
SDG 11 — Sustainable Cities and Communities
SDG 16 — Peace, Justice and Strong Institutions
This track focuses on the latest methodologies and frameworks for integrating diverse data sources in big data systems. Researchers are encouraged to present innovative approaches that enhance data interoperability and accessibility.
This session will explore the application of predictive analytics within big data frameworks, emphasizing techniques that improve forecasting accuracy. Contributions should highlight case studies or novel algorithms that leverage large datasets for predictive insights.
This track invites discussions on the integration of machine learning techniques into data engineering practices. Papers should address how these technologies can optimize data pipelines and enhance system performance.
This session will focus on the role of artificial intelligence in transforming data integration processes. Researchers are encouraged to present innovative AI-driven solutions that address challenges in data governance and management.
This track examines the design and implementation of scalable systems capable of handling vast amounts of data. Contributions should discuss architectural innovations that facilitate efficient data processing and analysis.
This session addresses the critical aspects of data governance within big data systems, focusing on compliance, security, and ethical considerations. Papers should explore frameworks and best practices for managing data integrity and privacy.
This track highlights new methodologies in data visualization that enhance the interpretability of complex datasets. Researchers are invited to present tools and techniques that facilitate effective data storytelling and insight generation.
This session focuses on strategies for optimizing data pipelines to improve efficiency and reduce latency in big data systems. Contributions should include empirical studies or theoretical frameworks that demonstrate performance enhancements.
This track explores the challenges associated with achieving data interoperability across heterogeneous systems. Papers should propose solutions or frameworks that facilitate seamless data exchange and integration.
This session invites contributions on the development of intelligent systems that enhance data management processes. Researchers should focus on how these systems can automate decision-making and improve data quality.
This track examines emerging trends in data engineering that support the development of robust big data solutions. Papers should discuss new tools, technologies, and methodologies that drive innovation in the field.
