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Assoc. Prof. Dr. Mahmoud Mahdian | Quantum Computing | Best Researcher Award

Associate Professor at University of Tabriz | Iran

Dr. Mahmoud Mahdian is an accomplished Associate Professor of Theoretical Physics at the University of Tabriz, Iran, specializing in quantum information and computation. His expertise spans quantum algorithms, optimization, simulation, and quantum machine learning, with extensive contributions to the study of open quantum systems, relativistic entanglement, and quantum correlations. Throughout his career, Dr. Mahdian has combined rigorous theoretical insight with innovative computational approaches, contributing significantly to the advancement of quantum technologies. His international experience includes research appointments at Harvard University, the University of Toronto, and the Beijing Computational Science Research Center. With a strong track record of publications in leading journals, he has made pioneering contributions to entanglement detection methods, hybrid quantum-classical algorithms, and quantum simulation of biological processes such as photosynthesis. His teaching covers foundational and advanced courses at undergraduate, master’s, and doctoral levels, mentoring numerous theses in quantum information science. Dr. Mahdian has also presented his research at major international conferences, strengthening scientific collaboration and visibility. Recognized for academic excellence, he has been awarded for his outstanding doctoral work and continues to integrate machine learning and quantum computing toward next-generation computational paradigms. His career reflects a commitment to both cutting-edge research and the training of future quantum scientists.

Professional Profile

Google Scholar

Education

Dr. Mahmoud Mahdian earned his Ph.D. in Theoretical Physics from the University of Tabriz, Iran, specializing in quantum information and computation. His doctoral research, titled Relativistic Quantum Entanglement and supervised by Professor M. A. Jafarizadeh, explored the interplay between relativity and quantum correlations, providing foundational insights for high-energy quantum information science. Prior to this, he completed his M.Sc. in Theoretical Nuclear Physics at the University of Tabriz, where his thesis involved calculating spectral density distributions and nuclear mass using a generalized Thomas–Fermi model. His academic journey began with a B.Sc. in Theoretical Physics from Ferdowsi University of Mashhad, Iran, where he built a strong foundation in classical mechanics, electromagnetism, and quantum theory. This progression from nuclear to quantum information physics reflects his evolving research trajectory toward quantum computation and simulation. Each academic stage was marked by deep engagement with both mathematical formalism and physical interpretation, enabling him to tackle complex interdisciplinary problems. His exposure to diverse physics domains—from nuclear structure modeling to relativistic quantum mechanics—has shaped his holistic approach to research. This solid academic background has been instrumental in his later contributions to quantum algorithms, quantum machine learning, and simulations of open quantum systems on near-term quantum devices.

Professional Experience

Dr. Mahmoud Mahdian’s professional career reflects a sustained commitment to quantum information research, international collaboration, and advanced teaching. He is currently an Associate Professor at the University of Tabriz, following his tenure as an Assistant Professor. His international appointments include a research assistantship in the Aspuru-Guzik Group at Harvard University’s Department of Chemistry and Chemical Biology and a visiting scholar position at the University of Toronto. Earlier, he contributed to the Beijing Computational Science Research Center in quantum optics and theoretical physics. Dr. Mahdian began his academic career as a lecturer at Payame Noor University of Tabriz and worked as a physics teacher prior to that. His teaching has spanned undergraduate, master’s, and doctoral levels, covering quantum mechanics, statistical mechanics, group theory, quantum field theory, and quantum computing. He has supervised numerous theses, ranging from quantum entanglement dynamics to machine learning-assisted quantum algorithms. Alongside his academic responsibilities, Dr. Mahdian has published extensively, presented at high-profile conferences, and fostered collaborations across Iran, China, Canada, and the United States. His blend of research innovation and educational leadership positions him as a key contributor to advancing quantum sciences globally.

Research Interests

Dr. Mahdian’s research is deeply rooted in the intersection of theoretical physics, quantum information science, and computational methods. His core interests include quantum algorithms, quantum optimization, quantum simulation, and quantum machine learning. In quantum algorithms, he focuses on both purely quantum and hybrid quantum-classical approaches tailored for noisy intermediate-scale quantum (NISQ) devices. His work in quantum optimization explores advanced variational algorithms for solving combinatorial and physical system challenges. In quantum simulation, Dr. Mahdian investigates open quantum systems, particularly biological energy transport phenomena such as the Fenna–Matthews–Olson (FMO) complex, using methods from both mathematical physics and experimental quantum computing platforms. His contributions to quantum machine learning involve developing entanglement detection techniques via classical and quantum support vector machines, enhancing the interface between artificial intelligence and quantum theory. These research themes are united by a goal to bridge theoretical insights with computational implementations, enabling scalable solutions for real-world quantum problems. His recent work has also addressed the role of symmetry protection in quantum batteries, noise-resilient algorithms, and quantum neural network architectures. By integrating diverse quantum paradigms, Dr. Mahdian seeks to push the boundaries of how quantum technologies can address complex scientific and industrial challenges.

Research Skills

Dr. Mahdian possesses an extensive skill set encompassing analytical theory, computational modeling, and algorithm development in quantum science. He is proficient in programming languages such as Python, C++, and FORTRAN, with deep expertise in scientific libraries and packages including QuTiP, Qiskit, Cirq, and PennyLane for quantum computation. His computational toolkit also includes Mathematica, MATLAB, and Maple, which he uses for symbolic manipulation, numerical simulation, and data visualization. His theoretical strengths lie in quantum mechanics, quantum field theory, statistical mechanics, group theory, and mathematical physics, allowing him to model and analyze complex quantum systems. Experimentally aligned, he has collaborated on NMR quantum computing and simulation projects, translating theory into practical quantum protocols. Dr. Mahdian is adept at designing quantum algorithms for optimization, simulation, and entanglement detection, with applications in physics, chemistry, and biology. His interdisciplinary competence extends to applying machine learning for quantum system analysis, including supervised and unsupervised techniques for quantum data classification. He also brings strong skills in scientific writing, peer-reviewed publishing, and international conference presentation. By combining programming, analytical modeling, and collaborative research experience, Dr. Mahdian has built a versatile skill set that supports both academic and applied advancements in quantum technologies.

Awards and Honors

Dr. Mahdian’s academic excellence has been recognized through notable honors, including being named Outstanding and Selected Ph.D. Physics Student by the President of the University of Tabriz. This distinction reflects his exceptional performance during his doctoral studies in quantum information and computation. Beyond formal awards, his achievements include multiple invitations to speak at prestigious conferences and international schools on quantum information science, showcasing his leadership in the field. His contributions to cross-disciplinary projects—spanning quantum biology, machine learning, and computational physics—have also led to collaborative opportunities with leading institutions such as Harvard University and the University of Toronto. The breadth of his published work, which includes high-impact articles in Physical Review A, Quantum Information Processing, and European Physical Journal D, further underscores his recognition in the scientific community. His role as a supervisor for cutting-edge research projects in quantum simulation, entanglement detection, and variational quantum algorithms highlights his influence on the next generation of physicists. Dr. Mahdian’s career distinctions not only reflect personal accomplishment but also his commitment to advancing global research networks and fostering interdisciplinary innovation in quantum science.

Publications Top Notes

Title: Quantum discord evolution of three-qubit states under noisy channels
Year: 2012
Citations: 34

Title: Detecting some three-qubit MUB diagonal entangled states via nonlinear optimal entanglement witnesses
Year: 2008
Citations: 19

Title: Hybrid quantum variational algorithm for simulating open quantum systems with near-term devices
Year: 2020
Citations: 14

Title: Investigating a class of bound entangled density matrices via linear and nonlinear entanglement witnesses constructed by exact convex optimization
Year: 2008
Citations: 14

Title: Incoherent quantum algorithm dynamics of an open system with near-term devices
Year: 2020
Citations: 10

Conclusion

Dr. Mahmoud Mahdian’s academic journey is a testament to dedication, innovation, and a deep passion for advancing quantum science. With a robust educational foundation in theoretical physics and a research portfolio that bridges quantum information, computation, and machine learning, he has made substantial contributions to both fundamental theory and practical quantum technologies. His professional experiences span leading international institutions, enabling him to engage with diverse research cultures and cutting-edge methodologies. As a teacher, he has inspired and guided numerous students, equipping them with the knowledge and skills to thrive in an evolving scientific landscape. His publications and conference presentations have contributed to shaping discussions on entanglement, quantum simulation, and noise-resilient algorithms, reinforcing his role as an influential voice in the field. Dr. Mahdian’s blend of theoretical insight, computational expertise, and collaborative spirit positions him as a driving force in the pursuit of scalable, real-world quantum applications. Looking ahead, his work promises to further the integration of quantum technologies into interdisciplinary domains, from biology to artificial intelligence, fostering scientific breakthroughs with far-reaching societal impact.

Mahmoud Mahdian | Quantum Computing | Best Researcher Award

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