Aligned with
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
This track focuses on the latest developments in machine learning algorithms tailored for big data applications. Researchers are encouraged to present novel methodologies that enhance predictive accuracy and computational efficiency.
This session will explore innovative techniques for processing and analyzing large datasets. Contributions that address scalability and performance optimization in big data environments are particularly welcome.
This track examines the integration of artificial intelligence within intelligent systems in engineering contexts. Papers should highlight practical applications and case studies that demonstrate the impact of AI on engineering processes.
This session addresses the critical aspects of data engineering and the underlying IT infrastructure necessary for big data analytics. Topics include data integration, storage solutions, and the role of cloud computing in enhancing data accessibility.
This track will showcase research on the use of predictive analytics to drive decision-making in various industries. Submissions should focus on real-world applications and the effectiveness of machine learning models in predicting outcomes.
This session will delve into optimization strategies that improve the performance of machine learning models. Contributions that propose novel optimization algorithms or frameworks are encouraged.
This track focuses on the development and evaluation of analytics frameworks designed for big data environments. Papers should discuss the architecture, scalability, and usability of these frameworks in practical scenarios.
This session explores the role of automation in streamlining data science workflows. Contributions that highlight automated machine learning processes and their implications for efficiency and accuracy are welcome.
This track will investigate the intersection of business intelligence and data visualization techniques. Papers should present innovative approaches to visualizing complex data sets and their impact on business decision-making.
This session addresses the challenges and solutions associated with scalable computing in the context of big data. Contributions that discuss distributed computing frameworks and their applications are particularly encouraged.
This track examines the transformative role of AI in driving IT innovation. Papers should explore case studies and theoretical frameworks that illustrate the synergy between AI technologies and IT advancements.