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 advancements in big data platforms that facilitate efficient data processing and storage. Contributions should explore novel architectures, frameworks, and tools that enhance big data management capabilities.
This session invites research on cutting-edge machine learning algorithms tailored for predictive analytics applications. Papers should address algorithmic innovations that improve prediction accuracy and computational efficiency.
This track emphasizes the role of intelligent systems in driving IT innovation across various industries. Submissions should highlight case studies and theoretical frameworks that demonstrate the impact of intelligent systems on business processes.
This session explores the integration of cloud computing technologies with big data solutions to achieve scalability and flexibility. Research should focus on cloud architectures, services, and deployment strategies that enhance data analytics capabilities.
This track addresses the challenges and solutions associated with data integration in big data contexts. Contributions should present innovative methods for harmonizing disparate data sources to enable comprehensive analytics.
This session focuses on the automation of data analytics processes and the optimization of analytical models. Papers should discuss methodologies that streamline data workflows and enhance decision-making efficiency.
This track invites research on the application of artificial intelligence in developing advanced business intelligence solutions. Submissions should explore how AI techniques can transform data into actionable insights for strategic decision-making.
This session highlights frameworks designed to support scalable computing in big data applications. Contributions should detail the design, implementation, and performance evaluation of these frameworks in real-world scenarios.
This track focuses on leveraging data analytics to optimize IT infrastructure performance and resource allocation. Papers should present empirical studies or frameworks that demonstrate the effectiveness of analytics in infrastructure management.
This session explores emerging trends and future directions in the fields of big data and machine learning. Contributions should provide insights into novel applications, technologies, and research challenges shaping the landscape.
This track addresses the ethical implications of big data and artificial intelligence in various applications. Submissions should discuss frameworks, policies, and best practices for ensuring responsible use of data and AI technologies.