Dr. Sandeep Jain | Structural Design | Best Researcher Award
Assistant Professor at Yeungnam University | South Korea
Dr. Sandeep Jain is a distinguished researcher and academic specializing in metallurgical engineering and materials science, with a strong focus on alloy design, high-entropy alloys, and the integration of machine learning in materials development. He has an impressive track record of publications in high-impact journals, editorial roles in reputed scientific platforms, and peer review contributions to leading international journals. His work bridges computational modeling, experimental validation, and advanced materials characterization, making significant contributions to the fields of lightweight alloys, high-temperature materials, and sustainable manufacturing techniques.
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Education Details
Dr. Jain earned his doctoral degree in Metallurgical Engineering and Materials Science from the Indian Institute of Technology Indore, where he demonstrated excellence through high academic performance and impactful research. He also completed a master’s degree in the same discipline from the same institution, further refining his technical expertise. His academic journey began with a bachelor’s degree in Mechanical Engineering from MBM Engineering College, Jodhpur, where he laid the foundation for his multidisciplinary approach to materials research.
Professional Experience
Dr. Jain’s professional career includes roles as International Research Professor (Assistant Professor) at Yeungnam University, South Korea, where he focuses on designing lightweight refractory high-entropy alloys for high-temperature applications using machine learning and experimental approaches. Previously, he worked as a Postdoctoral Researcher at Sungkyunkwan University, South Korea, engaging in the design of multicomponent alloys and optimization of injection molding processes through computational intelligence. He also served as a Research Associate at the Indian Institute of Technology Delhi, investigating mechanical and creep behavior of superalloys and developing improved plating techniques. Earlier, at the Indian Institute of Technology Indore, he contributed as a Project Associate and PhD Research Scholar, where his research spanned phase equilibria studies, CFD analysis, and integrated alloy development. Alongside research, he has significant teaching experience, having assisted in numerous undergraduate and postgraduate courses in materials science, solidification, mechanical workshop, and computational modeling.
Research Interests
Dr. Jain’s research interests encompass the design and development of alloys for lightweight and high-strength applications, high-entropy alloys for high-temperature performance, and the application of machine learning in materials design and property prediction. He has a deep interest in computational fluid dynamics, finite element methods, and advanced materials characterization. His work also explores additive manufacturing processes, sustainable alloy production, and predictive modeling to minimize experimental trials while accelerating innovation in materials engineering.
Awards and Honors
Dr. Jain has been recognized with multiple prestigious honors, including international and global achievement awards that acknowledge his academic excellence and research impact. He has also received fellowships during his doctoral and master’s studies from the Government of India, and has qualified in competitive national-level examinations. His professional memberships in leading materials societies further reflect his active engagement in the scientific community.
Publication Top Notes
Predicting the magnetic behaviour of homogenized CoCrFeNiAlx high entropy alloys at different aluminium content and temperatures: Reducing experimental dependency through machine learning approaches. Materials Chemistry and Physics, 2025.
Machine learning approaches for predicting and validating mechanical properties of Mg rare earth alloys for light weight applications. Science and Technology of Advanced Materials, 2025.
Predicting the magnetic behaviour of CoFeNi high entropy alloys: Reducing experimental dependency through machine learning approaches. Materials Letters, 2025.
Prediction of alloying element effects on the mechanical behavior of high-pressure die-cast Mg-based alloys. Journal of Magnesium and Alloys, 2025.
Machine-learning-driven prediction of flow curves and development of processing maps for hot-deformed Ni–Cu–Co–Ti–Ta alloy. Journal of Materials Research and Technology, 2025.
Reducing experimental dependency: Machine-learning-based prediction of Co effects on the mechanical properties of AlCrFeNiCox high-entropy alloys. Materials Today Communications, 2025.
Conclusions
Dr. Sandeep Jain stands out as a versatile and impactful researcher in materials science and metallurgical engineering. His innovative approach, particularly in integrating machine learning with alloy design, positions him at the forefront of modern materials research. Through his continued work, he aims to advance high-performance, sustainable materials solutions that address critical challenges in engineering and manufacturing.