Shiping Wang | Computer Science | Research Excellence Award

Shiping Wang | Computer Science | Research Excellence Award

Fuzhou University | China

Prof. Shiping Wang is a Full Professor in the field of computer and data science and serves as the Director of a provincial key laboratory focused on intelligent metro systems. His research centers on machine learning, deep learning, graph neural networks, feature representation, and graph foundation models. He has published over 200 papers in leading journals and conferences, accumulating more than 6,200 citations, and his work appears in top venues such as IEEE TPAMI, TIP, TMM, CVPR, AAAI, and ACM MM. He has held key leadership and organizational roles in international conferences, including general chair, regional chair, and session chair positions, and regularly serves as a program committee member and reviewer for major AI and computer vision conferences and journals. His research has been supported by multiple projects funded by the National Natural Science Foundation of China.

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Junaid Akram | Computer Science | Research Excellence Award

Junaid Akram | Computer Science | Research Excellence Award

Unsw College | Australia

Dr. Junaid Akram is a researcher in decentralized systems and trustworthy AI, with a PhD from the University of Sydney. His work focuses on building secure, privacy-preserving, and reliable trust mechanisms for safety-critical, crowdsourced platforms, particularly in drone-based services for environmental monitoring and emergency response. His research integrates blockchain and decentralized public key infrastructures, verifiable credentials, adversarial machine learning, and data analytics to improve security, fairness, and resilience in multi-sided ecosystems. Through frameworks such as decentralized identity management, tamper-resistant reputation systems, anomaly detection, and robust graph learning, his contributions aim to reduce operational risk while enhancing participation and service quality in emerging digital platforms.

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