ISMAIL NEGABI | Embedded Cryptographic Systems and Artificial Intelligence | Best Researcher Award

Assist. Prof. Dr ISMAIL NEGABI | Embedded Cryptographic Systems and Artificial Intelligence | Best Researcher Award

Lecturer, Abdelmalek Essaadi University, Morocco

Ismail Negabi is a dedicated researcher and educator specializing in Embedded Cryptographic Systems and Artificial Intelligence. He holds a Doctorate from Université Abdelmalek Essaâdi, where he focused on enhancing cryptographic system security against side-channel attacks using deep learning. With a strong academic background, including a Master’s in Signal Processing and Automatic Learning and a Bachelor’s in Physical Sciences, Ismail has consistently demonstrated excellence in his field. He is currently a primary school teacher and a reviewer for the International Journal of Computer Systems and Digital Systems. Ismail is passionate about leveraging AI and cryptography to address real-world security challenges.

Professional Profile

Google Scholar

Orcid

Scopus

Education 🎓

Ismail Negabi earned his Doctorate in 2023 from Université Abdelmalek Essaâdi, specializing in Embedded Cryptographic Systems and Artificial Intelligence. He completed his Master’s in Signal Processing and Automatic Learning in 2019 and his Bachelor’s in Physical Sciences in 2017, both from Moroccan universities. His academic journey began with a Baccalaureate in Physical and Chemical Sciences in 2011. Throughout his education, Ismail has consistently achieved high honors, including a “Très Honorable” distinction for his doctoral thesis.

Experience 💼

Ismail has a diverse professional background, including roles as a primary school teacher since 2020 and a reviewer for the International Journal of Computer Systems and Digital Systems. He has also worked as a trainer for the General Population and Housing Census in Morocco and completed internships in algorithm development and FPGA-based cryptographic systems. His experience spans teaching, research, and practical applications of AI and cryptography.

Awards and Honors 🏆

Ismail Negabi has received numerous accolades, including the “Très Honorable avec Félicitations” distinction for his doctoral thesis. His research has been published in prestigious journals indexed in Scopus, and he has presented at international conferences. Ismail’s contributions to AI and cryptography have earned him recognition as a promising researcher in his field.

Research Focus 🔍

Ismail’s research focuses on enhancing the security of cryptographic systems using deep learning techniques, particularly against side-channel attacks. He explores the integration of AI with encryption methods like AES to improve embedded system security. His work also extends to applications of deep learning in remote sensing, such as building extraction from satellite images, and anomaly detection for connected objects.

Publication Top Notes 📚

  1. “Building extraction from remote sensing imagery: advanced squeeze-and-excitation residual network based methodology”
  2. “Deep Learning-based Power Analysis Attack for Extracting Advanced Encryption Standard Keys on Microcontroller”
  3. “Convolutional neural network based key generation for security of data through encryption with AES”
  4. “Enhancing Building Extraction from Remote Sensing Images through UNet and Transfer Learning”
  5. “A Modular System based on U-Net for Automatic Building Extraction from very high-resolution satellite images”
  6. “Enhancing Cryptosystem Security with a CNN-based Countermeasure against Power Analysis Attacks”
  7. “Beyond Encryption: How DL Can Break Microcontroller Security Through Power Analysis”
  8. “Encryption of Sensitive Data by Intelligent Cryptosystem based on AES and CNN for Embedded Systems Security”
  9. “Combining Convolutional Neural Network with Feature Extraction for Automatic Building Extraction”
  10. “Towards an Intelligent Cryptosystem Design: Deep Learning Cryptography for Embedded Systems Security”

Conclusion 🌟

Ismail Negabi is a highly accomplished researcher and educator with a passion for advancing the fields of AI and cryptography. His innovative work on deep learning-based cryptographic security and remote sensing applications has made significant contributions to the academic and professional communities. With a strong foundation in education, diverse professional experience, and a commitment to excellence, Ismail continues to inspire and lead in his field.

 

Salim Chehida – Smart grid security – Best Researcher Award

Salim Chehida - Smart grid security - Best Researcher Award

VERIMAG - Université Grenoble alpes - France

AUTHOR PROFILE

Scopus

EARLY ACADEMIC PURSUITS

Salim Chehida's academic journey commenced with an Engineer Degree in Computer Science from the University of Mostaganem, Algeria. He furthered his studies with a Magister Degree in Information Systems Engineering and eventually pursued a Ph.D. in Computer Science specializing in Software Engineering and Systems Security from the University of Oran 1 in Algeria in collaboration with the University of Grenoble Alpes in France.

PROFESSIONAL ENDEAVORS

Dr. Salim Chehida has had a diverse professional career, starting as a Software Engineer at the Finance Direction in Algeria and later transitioning to roles as a Scientific Researcher and Assistant Professor at the University of Mostaganem, Algeria. Currently, he serves as a Research and Development Expert at the University of Grenoble Alpes in France, contributing significantly to the fields of Software Engineering and Deep Learning.

CONTRIBUTIONS AND RESEARCH FOCUS

Dr. Chehida's expertise lies in Software Engineering, particularly in the design, development, security, verification, and validation of software systems. He has made notable contributions to various innovative projects, including those related to cyber-physical systems (CPS) and Internet of Things (IoT) systems. His research focuses on deep learning applications, including image classification, segmentation, and object detection, as well as smart grid security.

IMPACT AND INFLUENCE

Dr. Chehida's research and development work have had a significant impact on academia and industry, particularly in the domains of software engineering and deep learning. His involvement in numerous projects, collaborations with companies and institutions worldwide, and contributions to conferences and publications have established him as a respected expert in his field.

ACADEMIC CITES

Dr. Chehida's publications and technical reports have been widely cited, reflecting the importance and relevance of his research contributions. His work in smart grid security and deep learning applications has garnered attention from researchers and professionals in academia, industry, and government organizations.

LEGACY AND FUTURE CONTRIBUTIONS

As Dr. Chehida continues to advance his research and development endeavors, his legacy in the fields of software engineering and deep learning is assured. His future contributions are expected to further enhance our understanding and application of smart grid security measures and deep learning techniques, addressing critical challenges in cybersecurity and artificial intelligence for years to come.

NOTABLE PUBLICATION

Model-based Self-adaptive Management in a Smart Grid Substation 2023 (2)

Generation and verification of learned stochastic automata using k-NN and statistical model checking 2022 (1)

Learning and analysis of sensors behavior in IoT systems using statistical model checking 2022 (5)

BRAIN-IoT Architecture and Platform for Building IoT Systems 2022 (2)