· Laboratory Updates  · 1 min read

Zhu Yizhang Successfully Transfers to PhD Program

Congratulations to Zhu Yizhang, a master's student from the laboratory, for successfully passing the master's-to-PhD transfer assessment and officially becoming a PhD student, embarking on a new academic research journey.

Congratulations to Zhu Yizhang, a master's student from the laboratory, for successfully passing the master's-to-PhD transfer assessment and officially becoming a PhD student, embarking on a new academic research journey.

Recently, exciting news came from the AI Cube Laboratory at Sun Yat-sen University’s School of Advanced Manufacturing: Zhu Yizhang, a master’s student from the laboratory, successfully passed the master’s-to-PhD transfer assessment and officially became a PhD student.

Since enrollment, Zhu Yizhang has demonstrated solid professional foundation and outstanding research capabilities in the field of computer vision and industrial inspection. He is proficient in deep learning frameworks and has accumulated rich practical experience in image processing. His research work has received unanimous recognition from supervisors and review experts.

The master’s-to-PhD transfer is an important assessment of graduate students’ academic capabilities and development potential. Zhu Yizhang’s successful transfer fully reflects his efforts and growth on the academic path. After becoming a PhD student, he will continue to conduct in-depth research on the application of computer vision in industrial intelligence, contributing greater strength to the laboratory’s research work.

The laboratory congratulates Zhu Yizhang on his growth and looks forward to him achieving even more excellent research results in his PhD stage and making more innovative contributions in the field of industrial artificial intelligence.

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