Saqib Qamar | Artificial Intelligence | Best Researcher Award

 Dr. Saqib Qamar |Artificial Intelligence
| Best Researcher Award

Assistant Professor at Sohar University, India.

Dr. Saqib Qamar is a dedicated Assistant Professor at Sohar University, Oman, specializing in computer science with expertise in medical image analysis and deep learning. With a Ph.D. from Huazhong University of Science and Technology, China, and postdoctoral research from Sweden’s top institutes—KTH and Umea University—he has demonstrated strong research capabilities through high-quality publications and international collaboration. His academic career spans teaching, curriculum development, and industry experience. Known for his work ethic, innovation, and research productivity, Dr. Qamar has a profound commitment to student success and scientific excellence. His scholarly contributions and interdisciplinary engagement make him a compelling candidate for the Best Researcher Award.

🌍 Professional Profile:

ORCID

Google Scholar

🏆 Suitability for the Best Researcher Award :

Dr. Saqib Qamar’s academic journey reflects consistent excellence and impactful contributions to computer science, particularly in medical image analysis using AI. With experience in global research environments and a record of peer-reviewed publications, he bridges theory with real-world applications. His Ph.D. work on 3D CNNs for brain MRI segmentation was both innovative and practically relevant. As a postdoctoral fellow at KTH and Umea University, he engaged in collaborative, cutting-edge research. He also actively mentors students and contributes to academic discourse. His awards, research leadership, and ongoing projects demonstrate a trajectory of influence, making him highly suitable for the Best Researcher Award.

🎓 Education :

Dr. Saqib Qamar earned his Ph.D. in Computer Science from Huazhong University of Science and Technology, China (2015–2019), with a dissertation focused on 3D CNN models for brain MRI segmentation. His doctoral research integrated deep learning with medical imaging and received the HUST Excellence Award. He completed his Master’s in Computer Science at Aligarh Muslim University, India (2010–2013), where he studied AI, programming, and software engineering, and was awarded a Merit Cum Means scholarship. His academic foundation was laid through a B.Sc. (Hons.) in Statistics from the same university (2007–2010), where he focused on probability, statistics, and linear algebra, graduating with First Division.

🏢 Work Experience :

Dr. Saqib Qamar is currently an Assistant Professor at Sohar University, Oman (2025–present), where he teaches and conducts research in AI and medical image computing. He was previously a postdoctoral fellow at KTH Royal Institute of Technology (2024–2025) and Umea University (2022–2024), Sweden, focusing on machine learning and deep learning applications. At Umea, he also taught deep learning courses. Earlier, he served as Assistant Professor at Madanapalle Institute of Technology and Science, India (2019–2021), where he taught programming and ML subjects. Prior to academia, he worked as a Database Developer at nServices, Delhi (2013–2015), specializing in Oracle-based data systems and programming.

🏅Awards and Honors

Dr. Saqib Qamar has been recognized for his academic performance and research excellence throughout his career. He received the HUST Excellence Award during his Ph.D. at Huazhong University of Science and Technology, acknowledging his exceptional work in medical image segmentation using deep learning. He was also awarded the Merit Cum Means Scholarship by the Government of India during his Master’s studies. His postdoctoral research in Sweden was supported through prestigious international fellowships, and he has contributed to multiple international projects. Additionally, he has received appreciation for teaching excellence and academic service in both India and Oman. His record of honors reflects his dedication to advancing AI and medical informatics research globally.

🔬 Research Focus :

Dr. Saqib Qamar’s research focuses on medical image analysis, deep learning, and 3D convolutional neural networks. His doctoral work centered on brain MRI segmentation, proposing efficient and parallelized CNN architectures. He has expanded his expertise during postdoctoral stints in Sweden, exploring advanced AI techniques in healthcare imaging, neural cell recognition, and explainable AI. His work integrates datasets from MRI and CT scans with machine learning algorithms to enhance diagnostic capabilities. He is also interested in real-time data processing, parallel computing, and interpretable AI models. With an aim to bridge clinical needs with computational innovation, Dr. Qamar’s research contributes significantly to the domains of health informatics and intelligent medical systems.

📊 Publication Top Notes:

📘 Techniques of data mining in healthcare: a review
🗓️ Year: 2015 | ✍️ P Ahmad, S Qamar, SQA Rizvi | 📖 International Journal of Computer Applications | 🔢 Cited by: 174 📊

🧠 A variant form of 3D-UNet for infant brain segmentation
🗓️ Year: 2020 | ✍️ S Qamar, H Jin, R Zheng, P Ahmad, M Usama | 📰 Future Generation Computer Systems | 🔢 Cited by: 132 🧬

🦴 CT-based automatic spine segmentation using patch-based deep learning
🗓️ Year: 2023 | ✍️ SF Qadri, H Lin, L Shen, M Ahmad, S Qadri, S Khan, M Khan, SS Zareen, S Qamar | 🧾 International Journal of Intelligent Systems | 🔢 Cited by: 77 🧠

🧠 Context aware 3D UNet for brain tumor segmentation
🗓️ Year: 2020 | ✍️ P Ahmad, S Qamar, L Shen, A Saeed | 📘 MICCAI Brainlesion Workshop | 🔢 Cited by: 57 🧪

🧬 MH UNet: A multi-scale hierarchical based architecture for medical image segmentation
🗓️ Year: 2021 | ✍️ P Ahmad, H Jin, R Alroobaea, S Qamar, R Zheng, F Alnajjar, F Aboudi | 📰 IEEE Access | 🔢 Cited by: 51 🔬

🧴 Dense encoder-decoder–based architecture for skin lesion segmentation
🗓️ Year: 2021 | ✍️ S Qamar, P Ahmad, L Shen | 🧠 Cognitive Computation | 🔢 Cited by: 50 🧪

🧠 HI-Net: Hyperdense Inception 3D UNet for Brain Tumor Segmentation
🗓️ Year: 2021 | ✍️ S Qamar, P Ahmad, L Shen | 📘 Brainlesion: Glioma, MS, Stroke and TBI Workshop | 🔢 Cited by: 46 💡

Hao Zhang | Artificial Intelligence | Best Researcher Award

Dr. Hao Zhang | Artificial Intelligence
| Best Researcher Award

Associate professor at Carnegie Mellon University, United States.

Hao Zhang is a Research Associate at Carnegie Mellon University (CMU), conducting postdoctoral research at the Safe AI Lab under Prof. Ding Zhao. He also serves as the Associate Director of the ETAIC Research Lab at the University of Texas at Arlington, led by Prof. Eric Tseng (NAE Member). He holds a Ph.D. from Tsinghua University, co-advised by Prof. Zhi Wang and Prof. Shengbo Eben Li. With over 35 SCI/EI publications and 17 patents, his research advances multi-agent reinforcement learning and closed-loop LLMs for real-world AI deployment in autonomous vehicles, robotics, and smart energy systems. He collaborates globally with academic and industrial leaders such as BYD, SAIC, Dongfeng Motor, and UCL, making impactful contributions to intelligent mobility.

🌍 Professional Profile:

ORCID

Google Scholar 

Scopus 

🏆 Suitability for the Best Researcher Award :

Dr. Hao Zhang is an exceptional candidate for the Best Researcher Award due to his groundbreaking work at the intersection of artificial intelligence and real-world applications. His achievements in scalable AI for micro-mobility and autonomous vehicles have led to industrial deployments across leading automotive manufacturers. With a strong publication record, global collaborations, and 17 patents, he exemplifies innovation, impact, and leadership. He bridges theory and practice, pushing the boundaries of safe and trustworthy AI agents. His dual appointments at CMU and UTA and contribution to both academia and industry reflect his versatile excellence. Dr. Zhang’s work not only enhances technological advancement but also fosters a responsible and intelligent future for mobility and energy systems.

🎓 Education :

Hao Zhang received his Ph.D. in Mechanical Engineering from Tsinghua University, one of China’s most prestigious institutions, where he was co-advised by renowned scholars Prof. Zhi Wang and Prof. Shengbo Eben Li. During his Ph.D., he focused on reinforcement learning and its applications to intelligent vehicle systems. Prior to that, he completed his undergraduate and master’s studies with distinction, developing a strong foundation in robotics, automation, and control systems. His education also included collaborative learning experiences with industry, which laid the groundwork for his multidisciplinary approach to research. Currently, he is expanding his expertise through postdoctoral research at Carnegie Mellon University, contributing to the development of safe AI systems under the mentorship of Prof. Ding Zhao.

🏢 Work Experience :

Dr. Zhang has a rich portfolio of academic and industrial experience. As a Research Associate at Carnegie Mellon University, he works at the forefront of AI safety, while simultaneously serving as Associate Director at the ETAIC Lab at UTA. He has led or participated in five major government-funded research projects and four OEM-sponsored industry projects. His efforts have directly supported intelligent system development for companies such as BYD Auto, SAIC Motor, and Dongfeng. His engineering solutions have real-world applications in autonomous driving, energy management, and mobile robotics. His academic roles, coupled with his industrial consultancy, enable him to effectively translate research into practice. Dr. Zhang’s interdisciplinary experience sets him apart as a leader in applied AI and automation.

🏅Awards and Honors

Hao Zhang’s research excellence has earned him notable recognition across academia and industry. He has published over 35 SCI/EI-indexed journal articles, authored a technical book (ISBN: 9780443329845), and holds 17 patents related to intelligent control and autonomous systems. His work has been cited nearly 500 times, demonstrating significant influence. His research contributions have been integrated into industrial platforms at BYD and Dongfeng, marking a rare crossover between lab and large-scale deployment. Although he is still early in his postdoctoral career, his consistent innovation and impact have made him a rising leader in AI-powered mobility. His contributions position him for prestigious honors such as the Best Researcher Award and similar recognitions for scientific leadership.

🔬 Research Focus :

Dr. Zhang’s research focuses on scalable and trustworthy AI for autonomous systems and smart energy applications. His core expertise includes multi-agent reinforcement learning, closed-loop large language models (LLMs), and intelligent motion control. He develops AI algorithms that can be safely deployed in micro-mobility devices (assistive and mobile robots), connected vehicles, and distributed energy platforms. His work contributes to both algorithmic innovation and real-world adoption, ensuring AI agents are reliable, interpretable, and responsive to dynamic environments. He is particularly interested in bridging theory with practice by collaborating with top-tier institutions and OEMs. Dr. Zhang’s interdisciplinary approach merges robotics, automotive systems, control engineering, and deep learning to create adaptive, secure, and energy-efficient intelligent agents.

📊 Publication Top Notes:

📘 Impact of ammonia addition on knock resistance and combustion performance in a gasoline engine with high compression ratio
📅 Year: 2023 | 📊 Cited by: 75 | 🛠️ Energy efficiency, combustion

📘 Hierarchical energy management strategy for plug-in hybrid electric powertrain integrated with dual-mode combustion engine
📅 Year: 2021 | 📊 Cited by: 42 | ⚡ Hybrid vehicles, control systems

📘 Data-driven predictive energy consumption minimization strategy for connected plug-in hybrid electric vehicles
📅 Year: 2023 | 📊 Cited by: 40 | 📡 Connected vehicles, optimization

📘 Experimental study on combustion and emission characteristics of ethanol-gasoline blends in a high compression ratio SI engine
📅 Year: 2023 | 📊 Cited by: 36 | 🔬 Fuel science, engine performance

📘 Learning-based supervisory control of dual mode engine-based hybrid electric vehicle with reliance on multivariate trip information
📅 Year: 2022 | 📊 Cited by: 34 | 🤖 AI control, mobility systems

📘 Integrated thermal and energy management of connected hybrid electric vehicles using deep reinforcement learning
📅 Year: 2023 | 📊 Cited by: 30 | 🧠 Deep learning, hybrid energy systems

Shahrzad Falahat | Deep learning | Best Researcher Award

Dr. Shahrzad Falahat| Deep learning |Best Researcher Award

Lecturer at Shahid Bahonar University of Kerman,Iran.

 

Dr. Shahrzad Falahat is a visionary researcher specializing in computer vision and remote sensing with a proven track record in academic and industrial AI. Holding a Ph.D. in Computer Vision, she has led interdisciplinary AI projects for over five years, collaborating across sectors such as electrical, medical, and railway industries. Her innovations include software for fault detection in power lines, cutting electricity outages by 70%, and automatic cartography tools that significantly improve mapping efficiency. Dr. Falahat’s technical proficiency spans Python, PyTorch, TensorFlow, and embedded AI systems, making her a versatile leader in AI development. Her outstanding contributions, impactful publications, and real-world implementations make her an exceptional candidate for the Best Researcher Award.


🌍 Professional Profile:

Google scholar

Orcid

🏆 Suitability for the Best Researcher Award

 

Dr. Shahrzad Falahat exemplifies excellence in applied AI research, making her a highly suitable candidate for the Best Researcher Award. With a Ph.D. in Computer Vision and over five years of impactful industrial experience, she has led innovative projects that address critical real-world challenges. Her development of AI-powered fault detection software for power transmission lines reduced outages by 70%, while her automated cartography system cut map production time by 80%. She combines deep technical expertise in Python, PyTorch, TensorFlow, and embedded AI with strong project management and cross-sector collaboration. Her work integrates research and practice, resulting in scalable, intelligent solutions with tangible societal benefits, positioning her as a leader in the field of AI and computer vision.

🎓 Education 

Dr. Shahrzad Falahat earned her Ph.D. in Computer Vision, focusing on advanced deep learning techniques and remote sensing applications. Her academic journey equipped her with a robust foundation in machine learning, optimization, and AI-driven image processing. Throughout her doctoral studies, she published influential research on automated systems in industrial and environmental monitoring. Her educational background is enriched by expertise in embedded systems, GPU computing, and multi-platform AI development. With a blend of theoretical insight and practical execution, Dr. Falahat continues to bridge academia and industry, pushing the frontiers of computer vision and applied AI technologies.

🏢 Work Experience 

Dr. Shahrzad Falahat currently serves as a Researcher at Shahid Bahonar University of Kerman, where she leads AI projects across industries including energy, agriculture, and transportation. She has spearheaded projects that translated complex research into deployable AI solutions. Previously, she was a Medical Imaging Data Scientist at Azin Eye Surgery Center, developing real-time diagnostic systems for eye diseases. Her contributions extend to edge AI deployments using NVIDIA Jetson Nano and STM32 AI, and leading product management from conception to deployment. She excels in dataset design, stakeholder collaboration, and technical documentation. Dr. Falahat’s blend of academic depth and real-world implementation underscores her excellence in delivering innovative, scalable AI solutions.

🏅 Awards and Honors 

Dr. Shahrzad Falahat’s contributions to AI-driven innovation have earned her recognition in both research and industrial domains. She has been honored for her work on reducing electricity outages through intelligent fault detection systems and for her impactful software tools that enhance mapping and diagnosis. Her projects have received institutional support, including collaborations with the Islamic Republic of Iran Railways and Azin Eye Surgery Center. She has been an invited presenter at several national workshops and conferences and is respected for her role in bridging AI research with industrial applications. Her consistent excellence in technical leadership, publication, and applied innovation positions her as a distinguished candidate for research excellence awards.

🔬 Research Focus 

Dr. Falahat’s research centers on the intersection of computer vision, deep learning, and remote sensing. She develops intelligent systems for infrastructure monitoring, medical diagnostics, and geospatial mapping. Her key focus lies in real-time AI deployment, optimization of deep learning models, and embedded system integration. Notable projects include automatic fault detection in power lines and real-time eye disease detection using medical imaging, both demonstrating high accuracy and operational efficiency. She is also actively involved in railway infrastructure monitoring. Her work leverages edge computing, cloud AI platforms, and domain-specific datasets to deliver practical, scalable solutions. Dr. Falahat’s applied research addresses real-world challenges, making significant contributions to both technological advancement and societal needs.

📊 Publication Top Notes:

  • Maize tassel detection and counting using a Yolov5-based model
    Cited by: 16
    Author(s): S Falahat, A Karami
    Year: 2023

  • Influence of thickness on the structural, optical and magnetic properties of bismuth ferrite thin films
    Cited by: 15
    Author(s): H Maleki, S Falahatnezhad, M Taraz
    Year: 2018

  • Synthesis and study of structural, optical and magnetic properties of BiFeO3–ZnFe2O4 nanocomposites
    Cited by: 9
    Author(s): S Falahatnezhad, H Maleki
    Year: 2018

  • Deep fusion of hyperspectral and LiDAR images using attention-based CNN
    Cited by: 7
    Author(s): S Falahatnejad, A Karami
    Year: 2022

  • PTSRGAN: Power transmission lines single image super-resolution using a generative adversarial network
    Cited by: 5
    Author(s): S Falahatnejad, A Karami, H Nezamabadi-pour
    Year: 2024

  • Influence of synthesis method on the structural, optical and magnetic properties of BiFeO3–ZnFe2O4 nanocomposites
    Cited by: 5
    Author(s): S Falahatnezhad, H Maleki, AM Badizi, M Noorzadeh
    Year: 2019

  • A comparative study on predicting the characteristics of plasma activated water: artificial neural network (ANN) & support vector regression (SVR)
    Cited by: 2
    Author(s): S Karimian, S Falahat, ZE Bakhsh, MJG Rad, A Barkhordari
    Year: 2024

  • A Spectral-Spatial Augmented Active Learning Method for Hyperspectral Image Classification
    Cited by: 2
    Author(s): S Falahatnejad, A Karami
    Year: 2023

  • PTSRDet: End-to-End Super-Resolution and object-detection approach for small defect detection of power transmission lines
    Cited by: 0
    Author(s): S Falahatnejad, A Karami, H Nezamabadi-pour
    Year: 2025

  • Building Footprint Segmentation Using the Modified YOLOv8 Model
    Cited by: 0
    Author(s): S Falahatnejad, A Karami, R Sharifirad, M Shirani, M Mehrabinejad, …
    Year: 2024