Ammar Alsheghri | Artificial Intelligence | Best Researcher Award

Assist Prof Dr. Ammar Alsheghri | Artificial Intelligence | Best Researcher Award

Assistant Professor at king fahd university of petroleum and minerals, Saudi Arabia

Assist. Prof. Dr. Ammar Alsheghri is a distinguished academic and researcher specializing in materials and mechanical engineering. He currently serves as an Assistant Professor in the Department of Mechanical Engineering at King Fahd University of Petroleum and Minerals (KFUPM) in Dhahran, Saudi Arabia. Dr. Alsheghri earned his Ph.D. in Materials Engineering from McGill University, Canada, in 2020, following his Master’s in Mechanical Engineering from Khalifa University in collaboration with MIT, and a Bachelor’s degree from Khalifa University, UAE. His research spans bioinspired materials design, geometric deep learning, and the optimization of materials for prosthetics and medical applications. He has extensive experience in academia and industry, contributing to innovative projects and holding patents in dental restoration technologies. Dr. Alsheghri’s work is highly recognized through numerous fellowships, scholarships, and awards for research excellence.

Education:

Assist. Prof. Dr. Ammar Alsheghri holds a Ph.D. in Materials Engineering from McGill University, Canada, which he completed in May 2020 with a perfect GPA of 4.0/4.0. During his Ph.D., he was awarded the prestigious Graduate Excellence Fellowship. He earned his Master of Science in Mechanical Engineering from the Masdar Institute of Science and Technology, Khalifa University, UAE, in collaboration with the Massachusetts Institute of Technology (MIT), USA, in May 2015, also achieving a GPA of 4.0/4.0. Dr. Alsheghri obtained his Bachelor of Science in Mechanical Engineering from Khalifa University, UAE, in June 2013, graduating with the highest honors and an impressive GPA of 3.98/4.0.

Professional Experience:

Assist. Prof. Dr. Ammar Alsheghri has an extensive professional background in both academia and industry. Currently, he is an Assistant Professor in the Department of Mechanical Engineering at King Fahd University of Petroleum and Minerals (KFUPM) in Dhahran, Saudi Arabia, a position he has held since August 2023. Prior to this, he served as a Postdoctoral Fellow at Polytechnique Montreal from 2020 to 2022, where he worked on geometric deep learning for dental applications, collaborating with industrial partners to develop customized dental crowns. Dr. Alsheghri also contributed as a Research Assistant at McGill University from 2015 to 2020, where his thesis focused on bioinspired design and optimization of materials for dentures and cellular structures. He has previous experience as a Research Assistant at Masdar Institute of Khalifa University, working on self-healing materials using finite element analysis. In addition to his academic roles, Dr. Alsheghri has substantial industrial experience. He was a Technology Developer at Dragonfly, part of the Comet Group, from 2022 to 2023, focusing on AI-driven scientific imaging and software development. He also worked as a Research & Development Consultant and Intern at Dragonfly, leading projects involving artificial intelligence for material image processing and mechanical properties analysis. His industry roles also include an internship at Diehl Aircabin GmbH in Germany, where he performed stress analysis for the Airbus A380 ceiling and assisted with composite material testing.

Research Interests:

Assist. Prof. Dr. Ammar Alsheghri’s research interests are deeply rooted in the intersection of materials engineering, mechanical engineering, and cutting-edge technologies such as artificial intelligence. His work focuses on bioinspired design and optimization of materials, particularly for dental applications, including the development of dentures and customized prosthetic structures. Dr. Alsheghri is also highly engaged in the field of geometric deep learning, specifically 3D deep learning for applications in dental segmentation and the generation of dental crowns from scanned dental arches. His expertise extends to self-healing materials, mechanics modeling, and finite element analysis (FEA), which he has applied to enhance the structural properties of materials. Additionally, he is interested in AI-driven image processing and computational mechanics, applying these techniques to scientific imaging and material analysis, with the aim of optimizing mechanical properties and structures for various engineering applications.

Skills:

Assist. Prof. Dr. Ammar Alsheghri possesses a diverse and advanced skill set that spans both academia and industry. He is highly proficient in materials engineering, with expertise in bioinspired design and optimization of materials, specifically for dental and prosthetic applications. Dr. Alsheghri excels in finite element analysis (FEA) and computational mechanics, which he has applied to projects involving self-healing materials and lightweight structures. He is also skilled in computer-aided design (CAD) and 3D modeling, having worked on the design and development of dental prostheses and optimized cellular structures. In addition, Dr. Alsheghri has strong capabilities in artificial intelligence, particularly in geometric deep learning and 3D deep learning, which he has applied to the segmentation of dental structures and the design of customized dental crowns. He is experienced in data analysis, image processing, and the use of AI for scientific imaging. His skills in laboratory testing and materials characterization complement his technical expertise, allowing him to contribute to multidisciplinary research and development efforts.

Conclusion:

With an outstanding academic record, a strong research portfolio, multiple patents, and a track record of successful collaborations in both academia and industry, Dr. Ammar Alsheghri stands out as a highly qualified candidate for the Best Researcher Award. His interdisciplinary expertise, particularly in materials engineering, AI, and bioinspired design, positions him as a leader in advancing research and technology in both mechanical and biomedical engineering fields.

Publication Top Noted:

  • Removable partial denture alloys processed by laser‐sintering technique
    • Authors: O Alageel, MN Abdallah, A Alsheghri, J Song, E Caron, F Tamimi
    • Journal: Journal of Biomedical Materials Research Part B: Applied Biomaterials
    • Volume/Issue: 106(3)
    • Pages: 1174-1185
    • Year: 2018
    • DOI: 10.1002/jbm.b.33910
  • Design and cost analysis of a solar photovoltaic powered reverse osmosis plant for Masdar Institute
    • Authors: A Alsheghri, SA Sharief, S Rabbani, NZ Aitzhan
    • Journal: Energy Procedia
    • Volume: 75
    • Pages: 319-324
    • Year: 2015
    • DOI: 10.1016/j.egypro.2015.07.439
  • Finite element implementation and application of a cohesive zone damage-healing model for self-healing materials
    • Authors: AA Alsheghri, RKA Al-Rub
    • Journal: Engineering Fracture Mechanics
    • Volume: 163
    • Pages: 1-22
    • Year: 2016
    • DOI: 10.1016/j.engfracmech.2016.05.020
  • High strength brushite bioceramics obtained by selective regulation of crystal growth with chiral biomolecules
    • Authors: H Moussa, W Jiang, A Alsheghri, A Mansour, A El Hadad, H Pan, R Tang, …
    • Journal: Acta Biomaterialia
    • Volume: 106
    • Pages: 351-359
    • Year: 2020
    • DOI: 10.1016/j.actbio.2020.01.004
  • Composition and characteristics of trabecular bone in osteoporosis and osteoarthritis
    • Authors: I Tamimi, ARG Cortes, JM Sánchez-Siles, JL Ackerman, …
    • Journal: Bone
    • Volume: 140
    • Pages: 115558
    • Year: 2020
    • DOI: 10.1016/j.bone.2020.115558
  • Thermodynamic-based cohesive zone healing model for self-healing materials
    • Authors: AA Alsheghri, RKA Al-Rub
    • Journal: Mechanics Research Communications
    • Volume: 70
    • Pages: 102-113
    • Year: 2015
    • DOI: 10.1016/j.mechrescom.2015.09.007
  • Determining the retention of removable partial dentures
    • Authors: O Alageel, AA Alsheghri, S Algezani, E Caron, F Tamimi
    • Journal: Journal of Prosthetic Dentistry

Vipin Bansal | Artificial Intelligence | Best Scholar Award

Mr. Vipin Bansal | Artificial Intelligence | Best Scholar Award

Research scholar at Chandigarh University, India

Summary:

Mr. Vipin Bansal, based in Gurgaon, India, boasts over 19 years of experience in the IT industry, with a significant focus on artificial intelligence and machine learning. His career has been marked by leadership roles in diverse customer and research projects, particularly in hyperparameter tuning, model optimization, and advanced imagery data analysis. Mr. Bansal has a robust background in generative architectures, including GANs and vision transformers, and is skilled in Explainable AI techniques such as LIME and Grad-CAM. Currently pursuing a PhD in Explainable AI at Chandigarh University, he has held notable positions at Cognizant, Molnlycke HealthCare, and Altran, contributing to impactful solutions across sectors including healthcare and automotive. His expertise spans deep neural architectures, cloud services, and MLOps, underscoring his broad capabilities in developing and deploying sophisticated AI solutions.

 

Profile:

Education:

Mr. Vipin Bansal is currently pursuing a PhD in Explainable AI from Chandigarh University, Punjab, India, reflecting his commitment to advancing the field of artificial intelligence. He holds a Master in Computer Application from Birla Institute of Technology, Ranchi, India, where he completed his studies in 2004. His ongoing doctoral research underscores his dedication to exploring and enhancing AI technologies, particularly in the domain of Explainable AI.

Professional Experience:

Mr. Vipin Bansal currently serves as a Senior Engineering Manager at Cognizant in Gurgaon, India, where he leads the development and deployment of advanced Computer Vision AI solutions. His role involves assisting clients with Azure cloud infrastructure, automating data preparation, and overseeing model training processes. He is responsible for implementing automated pipelines for model deployment, managing computer vision use cases like object detection and segmentation, and leading a team of Data Scientists. Prior to this, he worked as an AI-ML Engineer at Molnlycke HealthCare in Gothenburg, Sweden, where he developed business applications including customer segmentation and sales prediction models, and established Azure cloud pipelines. Mr. Bansal’s earlier experience as a Principal System Engineer at Altran involved creating solutions utilizing geo-location vehicle data and exploring AI ML techniques for data quality analysis and anomaly detection in automotive applications. His work spans across healthcare, automotive, and commercial domains, demonstrating his extensive expertise in AI and machine learning technologies.

Research Interests:

Mr. Vipin Bansal’s research interests lie at the forefront of artificial intelligence and machine learning, with a particular focus on advanced methodologies in hyperparameter tuning, model optimization, and generative architectures. He has extensively explored diverse imagery data models to address segmentation and object detection challenges. His research delves into various generative models, including GANs, diffusion models, and vision transformers, with a keen emphasis on anomaly detection. Additionally, Mr. Bansal is proficient in Explainable AI (XAI) techniques such as LIME, LRP, and Grad-CAM, which enhance the interpretability of machine learning models. His work also encompasses MLOps practices, leveraging cloud services from AWS and Azure to develop scalable AI solutions. His contributions span across healthcare, automotive, and commercial sectors, where he applies his research to create impactful AI-driven solutions.

Skills:

Mr. Vipin Bansal possesses a diverse and advanced skill set in the field of artificial intelligence and machine learning. He is adept at utilizing frameworks such as TensorFlow, Keras, Scikit-learn, and AutoKeras for developing and deploying machine learning models. His expertise extends to deep neural architectures, including DNN, RNN, LSTM, CNN, GCN, and various generative models such as GANs and diffusion architectures. Proficient in Python, Matlab, and C++, Mr. Bansal is skilled in employing tools and technologies like Azure and AWS for MLOps and cloud-based solutions. His capabilities also encompass advanced AI techniques, including semantic segmentation, object detection, and recommendation systems. With experience in GPU and CPU computing, distributed systems, and agile methodologies, he is well-versed in setting up and managing complex data and model pipelines. His comprehensive knowledge of Explainable AI (XAI) techniques, configuration management with Git, and utilization of platforms like Jupyter and Google Collaboratory further underscore his technical proficiency and versatility.

Conclution:

Mr. Vipin Bansal is a highly qualified candidate for the Research for Best Scholar Award. His extensive experience, innovative contributions to AI and machine learning, and leadership in developing advanced solutions across various sectors underscore his suitability for this prestigious recognition. His ongoing research in Explainable AI and successful track record in deploying impactful AI solutions make him a standout candidate for this award.

Publication Tob Noted:

Title: Diabetic Retinopathy Detection through Generative AI Techniques: A Review

Authors: Bansal, V., Jain, A., Kaur Walia, N.

Journal: Results in Optics, 2024, Volume 16, Article 100700