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 blockchain technologies, emphasizing their integration with machine learning. Researchers are invited to present novel approaches that enhance the functionality and security of blockchain systems.
This session explores the application of machine learning techniques for predictive modeling within blockchain environments. Contributions should highlight methodologies that improve forecasting accuracy and decision-making processes in decentralized systems.
This track addresses the challenges of anomaly detection in distributed ledger technologies. Participants are encouraged to present innovative algorithms and frameworks that enhance the identification of fraudulent activities and security breaches.
This session showcases the integration of deep learning methodologies in blockchain applications. Papers should discuss the implications of deep learning for enhancing data analysis, transaction validation, and overall system performance.
This track investigates the intersection of smart contracts and machine learning. Submissions should focus on how machine learning can optimize smart contract execution and improve their reliability in various applications.
This session delves into risk assessment methodologies applicable to blockchain networks. Researchers are invited to present frameworks that evaluate vulnerabilities and propose mitigation strategies using machine learning.
This track emphasizes the importance of feature extraction in analyzing blockchain data. Contributions should explore novel techniques that enhance the interpretability and usability of blockchain datasets for machine learning applications.
This session focuses on optimizing consensus mechanisms through machine learning approaches. Papers should address how machine learning can enhance the efficiency and scalability of consensus algorithms in blockchain systems.
This track explores the development of decentralized applications that utilize artificial intelligence. Submissions should highlight innovative use cases where AI enhances the functionality and user experience of blockchain-based applications.
This session investigates advanced techniques for transaction analysis and fraud detection in blockchain environments. Researchers are encouraged to present methodologies that leverage machine learning to identify and prevent fraudulent transactions.
This track focuses on the application of machine learning in cryptocurrency analytics and market prediction. Contributions should explore predictive models that analyze market trends and inform investment strategies in the cryptocurrency space.