Ferdib Al Islam | Computer Science | Research Excellence Award

Mr. Ferdib Al Islam | Computer Science | Research Excellence Award

Northern University of Business and Technology Khulna | Bangladesh

Ferdib-Al-Islam is an Assistant Professor of Computer Science and Engineering at Northern University of Business and Technology Khulna, Bangladesh. He holds an M.Sc. and B.Sc. in CSE and has extensive academic and industrial experience spanning software engineering, IoT, and applied artificial intelligence. His research expertise centers on machine learning, deep learning, explainable AI, large language models, computer vision, and multimodal fusion, with a strong emphasis on trustworthy and interpretable AI for healthcare, agriculture, and smart systems. He has authored 30+ peer-reviewed journal and conference publications, including articles in Springer, IEEE, ACM, and Scopus-indexed journals, and has received multiple best paper and gold awards. An active international collaborator and reviewer for leading journals, he contributes to societal impact through AI-driven healthcare diagnostics, smart farming, and assistive technologies.

Citation Metrics (Scopus)

300

200

100
5

Citations
263
h-index
7
Documents
29

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h-index

Documents

Featured Publications

Islam, Md. Rabiul; Godder, T. K.; Ul-Ambia, A.; Ferdib Al-Islam et al. (2025).
Ensemble model-based arrhythmia classification with local interpretable model-agnostic explanations. IAES International Journal of Artificial Intelligence (IJ-AI), Vol. 14, No. 3 • DOI: 10.11591/ijai.v14.i3.pp2012-2025

Akter, L.; Ferdib Al-Islam; Islam, Md. M.; Al-Rakhami, M. S.; Haque, Md. R. (2021).
Prediction of Cervical Cancer from Behavior Risk Using Machine Learning Techniques. SN Computer Science, Vol. 2, No. 3 • DOI: 10.1007/s42979-021-00551-6

Saha, P.; Sadi, M. S.; Aranya, O. F. M. R. R.; Jahan, S.; Al-Islam, F. (2021).
COV-VGX: An automated COVID-19 detection system using X-ray images and transfer learning. Informatics in Medicine Unlocked, Vol. 26 • DOI: 10.1016/j.imu.2021.100741

Rana, Md. M. R.; Adnan, Md. N.; Siddique, Md. M.; Rahman, Md. T.; Ferdib Al-Islam (2024).
Predicting Education Level of the Farmers’ Children of a Developing Country during COVID-19 Using Machine Learning. International Journal of Modern Education and Computer Science (IJMECS), Vol. 16, No. 6 • DOI: 10.5815/ijmecs.2024.06.07

Hossain, S. S.; F. Al-Islam; Islam, Md. R.; Rahman, S.; Parvej, Md. S. (2025).
Autism Spectrum Disorder Identification from Facial Images Using Fine-Tuned Pre-trained Deep Learning Models and Explainable AI Techniques. Semarak International Journal of Applied Psychology, Vol. 5, No. 1, pp. 29–53

Massudi Mahmuddin | Computer Science | Research Excellence Award

Assoc. Prof. Dr. Massudi Mahmuddin | Computer Science | Research Excellence Award

Universiti Utara Malaysia | Malaysia 

Associate Professor Dr. Massudi Mahmuddin is a highly experienced academic and technology leader at Universiti Utara Malaysia (UUM), bringing more than two decades of contributions in teaching, research, administration, and student development. As an Associate Professor at the School of Computing, he has played a pivotal role in shaping academic programmes, strengthening industry collaborations, and nurturing future-ready graduates through innovative, student-centred learning approaches. His extensive leadership portfolio includes serving as Dean of Student Affairs, Director of Student Affairs, and Dean of Student Development and Alumni, where he led major initiatives in holistic student development, strategic planning, and university–community engagement. With a strong background in organizational management, project management, and computing systems, Dr. Massudi’s research focuses on intelligent computer systems, smart networking, artificial intelligence, blockchain technologies, big data analytics, and computer security. His scholarly impact is reflected through numerous indexed publications, international conference contributions, and interdisciplinary research collaborations. He is also actively engaged in academic quality enhancement, supervising postgraduate research, and developing technology-driven solutions aimed at social and educational transformation. Driven by a vision to improve human well-being through technology, Dr. Massudi continues to explore emerging digital innovations that enhance decision-making, cybersecurity, mental health monitoring, and community empowerment. His career reflects a balanced blend of academic excellence, administrative leadership, and a deep commitment to student success, making him a valuable contributor to Malaysia’s growing digital and educational ecosystem.

Citation Metrics (Scopus)

600
500
300
100
0

Citations
671

Documents
82

h-index
13

Citations

Documents

h-index

View Scopus Profile

Featured Publications

Intellectual Property Blockchain
Conference Paper • Citations: 3

Pattern reconfigurable dielectric resonator antenna using capacitor loading for Internet of Things applications
International Journal of Electrical and Computer Engineering, 2023 • Citations: 4

 

S M Nahian Al Sunny | Computer Science | Editorial Board Member

Dr. S M Nahian Al Sunny | Computer Science | Editorial Board Member

Walmart Global Tech | United States

Dr. S. M. Nahian Al Sunny is an accomplished researcher and software engineering professional with extensive experience in data-driven cloud applications, next-generation cyber-physical systems, and large-scale data engineering. With over two years of industry experience and five years of research-focused development, he combines academic rigor with practical innovation to address complex, real-world problems through scalable and intelligent technological solutions. He holds a Ph.D. in Computer Engineering from the University of Arkansas, USA, and a Bachelor’s degree in Electrical and Electronics Engineering from the Bangladesh University of Engineering and Technology. Dr. Sunny’s expertise spans Python, Java, R, advanced data engineering, distributed computing, big data analytics, machine learning pipelines, and cloud platforms including Google Cloud Platform, AWS, and Snowflake. His professional career at Walmart Global Tech involves architecting high-performance Spark/PySpark applications, forecasting systems, anomaly detection frameworks, and ETL pipelines that support decision-making at national scale. His contributions include developing predictive models with accuracies exceeding 90%, engineering multi-variate machine learning pipelines for more than 20,000 retail items, and designing cost-optimization strategies that produced substantial yearly savings in cloud resource utilization. In academia, Dr. Sunny pioneered research in cloud-based cyber-physical manufacturing systems, contributing to the development of MTComm—an Internet-scale communication method for remote machine tool interoperability. His work on IoT-integrated grocery delivery systems, smart edge hubs, and latency-optimized communication architectures demonstrates a strong commitment to advancing Industry 4.0 technologies. Dr. Sunny has published 12 peer-reviewed documents, including 3 journal articles and 9 conference papers, accumulating 487+ citations and an h-index of 8, reflecting the impact and visibility of his research. He has collaborated with interdisciplinary teams across cloud computing, manufacturing automation, robotics, and embedded systems, contributing to systems that hold both industrial and societal relevance. His ongoing work continues to bridge intelligent automation, data engineering, and cloud ecosystems to create future-ready technological solutions.

Profiles: Scopus | Google Scholar

Featured Publications

Hu, L., Nguyen, N. T., Tao, W., Leu, M. C., Liu, X. F., Shahriar, M. R., & Al Sunny, S. M. N. (2018). Modeling of cloud-based digital twins for smart manufacturing with MT Connect. Procedia Manufacturing, 26, 1193–1203.

Liu, X. F., Shahriar, M. R., Al Sunny, S. M. N., Leu, M. C., & Hu, L. (2017). Cyber-physical manufacturing cloud: Architecture, virtualization, communication, and testbed. Journal of Manufacturing Systems, 43, 352–364.

Shahriar, M. R., Al Sunny, S. M. N., Liu, X., Leu, M. C., Hu, L., & Nguyen, N. T. (2018). MTComm-based virtualization and integration of physical machine operations with digital twins in cyber-physical manufacturing cloud. In 2018 5th IEEE International Conference on Cyber Security and Cloud Computing.

Sunny, S. M. N. A., Liu, X. F., & Shahriar, M. R. (2018). Communication method for manufacturing services in a cyber–physical manufacturing cloud. International Journal of Computer Integrated Manufacturing, 31(7), 636–652.

Liu, X. F., Sunny, S. M. N. A., Shahriar, M. R., Leu, M. C., Cheng, M., & Hu, L. (2016). Implementation of MTConnect for open-source 3D printers in cyber physical manufacturing cloud. In International Design Engineering Technical Conferences and Computers and Information in Engineering Conference.

S M Nahian Al Sunny | Computer Science | Editorial Board Member

Dr. S M Nahian Al Sunny | Computer Science | Editorial Board Member

Walmart Global Tech | United States

Dr. S. M. Nahian Al Sunny is an accomplished computer engineer and software professional whose work bridges advanced data-driven engineering, large-scale cloud systems, and next-generation cyber-physical infrastructures. He holds a Ph.D. in Computer Engineering from the University of Arkansas, USA, complemented by a Bachelor of Science in Electrical and Electronics Engineering from the Bangladesh University of Engineering and Technology (BUET). With over two years of industry expertise in software engineering and five years of research-focused development, Dr. Sunny has established himself as a leading contributor in scalable cloud application design, data engineering, and intelligent system optimization. Currently serving as a Software Engineer III at Walmart Global Tech, Dr. Sunny specializes in designing, developing, and optimizing Spark/PySpark applications for forecasting and anomaly detection across diverse, large-scale retail datasets. His contributions include building ETL pipelines in Google Cloud Platform (GCP), designing statistical and machine learning–based forecasting models, and architecting cost-optimization strategies that achieved significant yearly savings. He has also been instrumental in modernizing data workflows by migrating legacy systems to cloud-native architectures, thereby enhancing operational efficiency and scalability. During his doctoral research, Dr. Sunny pioneered the development of MTComm, an Internet-scale communication method for cyber-physical manufacturing. His research portfolio spans IoT-enabled smart systems, edge-based data optimization techniques, autonomous robotic delivery mechanisms, and FPGA-based smart edge hubs. Collectively, his innovations demonstrate measurable improvements in latency, data volume reduction, and remote system operability—significantly advancing the field of cloud-integrated cyber-physical systems. Dr. Sunny has authored 12 peer-reviewed publications, including three journal articles and nine conference papers, with over 500 citations, reflecting the impact and relevance of his contributions. He has collaborated with interdisciplinary research teams and industry partners, consistently translating complex technical concepts into practical, societally beneficial solutions. His work continues to influence the domains of cloud computing, data engineering, and intelligent manufacturing ecosystems on a global scale.

Profiles: Scopus | Google Scholar 

Featured Publications

 

Prof. Zhanwei Liu | Computer Science | Excellence in Innovation Award

Prof. Zhanwei Liu | Computer Science | Excellence in Innovation Award

School of Information Science and Technology, China

Professor Zhanwei Liu is a highly accomplished scholar and master’s supervisor at Shijiazhuang Tiedao University, China, recognized for his pioneering work in intelligent optimization algorithms, computer vision, and cross-disciplinary engineering applications. He holds extensive academic and research experience in algorithmic design, system modeling, and real-world engineering integration. His educational and professional background reflects a deep commitment to advancing the convergence of artificial intelligence and complex systems, with a focus on improving computational efficiency, convergence precision, and robustness in metaheuristic algorithms. As a Professor at the School of Computer and Information Technology, he has played a pivotal role in developing and leading first-class undergraduate programs, mentoring graduate students, and fostering innovation-driven research. His research interests encompass swarm intelligence optimization, multi-UAV path planning, deep learning-based image enhancement, and intelligent system modeling for digital twin and smart infrastructure applications. With a strong command of algorithm development, AI-based modeling, data-driven optimization, and visual computing, Professor Liu has successfully contributed to several national and provincial-level projects, including digital twin platforms and structural health monitoring systems for major high-speed railway networks in China. His research excellence has been recognized through numerous awards and honors, including the Hebei Youth Science and Technology Innovation Award, First and Second Prizes for Scientific and Technological Progress, and Industry-University-Research Collaboration Innovation Award. He also holds more than 20 invention and utility model patents and has received 10 provincial-level industry awards, highlighting his strong innovation and practical problem-solving skills. In conclusion, Professor Zhanwei Liu exemplifies a dynamic blend of academic rigor, engineering innovation, and leadership, driving transformative advances in intelligent systems and digital technologies that contribute meaningfully to global scientific and industrial progress.

Profile: Scopus

Featured Publication

  1. Study of course system adjustment mechanism based on the employment needs. Conference Name.

Professor Zhanwei Liu’s work advances intelligent optimization algorithms and AI-driven engineering solutions, enabling more efficient, precise, and robust system designs. His contributions in multi-UAV path planning, computer vision, and digital twin platforms promote innovation in infrastructure, transportation, and industrial automation, benefiting science, industry, and society globally.

Shahnwaz Afzal | Computer Science | Best Researcher Award

Mr. Shahnwaz Afzal | Computer Science | Best Researcher Award

Department of computer Science, Aligarh Muslim University, India

Shahnawaz Afzal is an emerging researcher in the field of computer science with a strong focus on cryptography, artificial intelligence, and IoT security, having contributed to the development of lightweight cryptographic frameworks and secure communication models for resource-constrained environments. He is currently pursuing his Ph.D. in Computer Science at Aligarh Muslim University, where he has already completed four years of research, building on his academic foundation with an MCA (8.38 CGPA) and a B.Sc. (Hons) in Computer Applications from the same institution. His professional journey includes serving as an Assistant Professor at Aligarh College of Education (2020–2021), where he taught key courses such as Database Management Systems, Networking, Operating Systems, Java, and C++, along with a decade of tutoring experience for academic and competitive examinations. His research interests span lightweight cryptography, AI, machine learning, graph neural networks, and secure healthcare and agricultural applications, supported by skills in Python, R, C, C++, Java, and PHP, as well as expertise in IoT, data science, and deep learning. Afzal has authored seven journal and conference papers indexed in reputed outlets including PLoS One, Security and Privacy, and SN Computer Science, with a citation count of 15 and an h-index of 3, reflecting his growing academic impact. He has also qualified UGC NET and earned the prestigious MANF JRF, later upgraded to Senior Research Fellowship in 2024, alongside university-level merit awards. With seven documents published, recognized citations, and consistent academic achievements, Shahnawaz Afzal is well positioned to contribute impactful innovations in cryptography and AI-driven secure systems, making him a strong candidate for international research recognition.

Profile: Scopus | ORCID | Google Scholar

Featured Publications

  1. lightweight stream ciphers for use in IoT. Proceedings of the 10th International Conference on Computing for Sustainable Global Development (INDIACom). [Citations: 6 | h-index: 5].
  2. Bokhari, M. U., & Afzal, S. (2023). Performance of software and hardware oriented lightweight stream cipher in constraint environment: A review. Proceedings of the 10th International Conference on Computing for Sustainable Global Development (INDIACom). [Citations: 5 | h-index: 5].
  3. Bokhari, M. U., Yadav, G., Zeyauddin, & Afzal, S. (2024). Enhancing mental health prognosis: An investigation of advanced hybrid classifiers with cutting-edge feature engineering and fusion strategies. International Journal of Information Technology, 1–20. [Citations: 4 | h-index: 5].
  4. Bokhari, M. U., Afzal, S., & Yadav, G. (2024). ChaosForge: A lightweight stream cipher fusion of chaotic dynamics and NLFSRs for secure IoT communication. International Journal of Information Technology, 1–11. [Citations: 3 | h-index: 5].
  5. Bokhari, M. U., Afzal, S., Khan, I., & Khan, M. Z. (2025). Securing IoT communications: A novel lightweight stream cipher using DNA cryptography and Grain-80 cipher. SN Computer Science, 6(2), 88. [Citations: 2 | h-index: 5].

Kah Ong Michael Goh | Computer Science | Best Researcher Award

Assist. Prof. Dr. Kah Ong Michael Goh | Computer Science | Best Researcher Award

Associate Professor from Multimedia University | Malaysia

Assoc. Prof. Ts. Dr. Goh Kah Ong Michael is a prominent academician and innovator in the field of Artificial Intelligence, particularly known for his contributions to biometrics, computer vision, image processing, and smart city systems. He is currently serving as an Associate Professor at the Faculty of Information Science and Technology (FIST), Multimedia University (MMU), Malaysia. His professional journey spans over two decades, beginning as a tutor and progressively advancing to senior academic roles, including a tenure as Deputy Dean for Student Affairs and Alumni. Dr. Goh’s work focuses on practical, high-impact research that integrates AI into real-world applications such as traffic management, intelligent authentication, and urban system automation. A hands-on technologist, he has built strong industry ties and led collaborative research projects involving government and private sectors. His accomplishments include numerous international awards and publications, reflecting his ability to merge theoretical depth with applied innovation. Dr. Goh’s contributions extend beyond academia through leadership roles, student mentoring, and his involvement in technology exhibitions and innovation showcases. With an ever-evolving research agenda, he continues to be a valuable contributor to Malaysia’s technological advancement and is a role model for aspiring researchers in AI and computer science.

Professional Profile

Scopus Profile | ORCID Profile | Google Scholar

Education

Dr. Michael Goh pursued all his higher education at Multimedia University (MMU), Malaysia, reflecting a strong and continuous academic association with the institution. He earned his Bachelor of Information Technology (Hons.), majoring in Software Engineering. This undergraduate foundation in software development provided him with a firm grounding in computational thinking and programming. He then obtained his Master of Science in Information Technology by Research, where he began to delve into research-oriented activities, focusing on emerging areas in digital systems and human-computer interaction. His academic progression culminated in the completion of his Doctor of Philosophy (Ph.D.) in Information Technology by Research. His doctoral work emphasized advanced topics in biometrics and contactless identity recognition, a theme that would continue to define his professional research identity. Throughout his academic journey, Dr. Goh has demonstrated exceptional scholarly dedication and subject mastery, which laid the groundwork for his teaching, supervision, and innovative research contributions at MMU. His educational background, centered on a research-intensive model, reflects the synthesis of academic theory and practical innovation that characterizes his work today.

Experience

Assoc. Prof. Dr. Goh Kah Ong Michael has a well-established professional history with Multimedia University, Malaysia, spanning over two decades. He began his career as a Tutor at the Faculty of Information Science & Technology (FIST). He was appointed as a Lecturer and elevated to Senior Lecturer. He served as Deputy Dean of Student Affairs and Alumni, where he provided strategic leadership in academic administration and student engagement. He also had an industrial attachment with Heathmetrics Sdn Bhd, fostering industry-academic collaboration and applying academic research to practical applications. This rich blend of academic and industry experience has honed his capabilities in academic governance, curriculum development, student mentorship, and real-world technology deployment. His ongoing role as Associate Professor continues to leverage his expertise in AI, biometrics, and software development. Through his involvement in university committees, innovation competitions, and cross-institutional collaboration, Dr. Goh demonstrates a commitment to excellence in teaching, research, and societal impact, making him a vital contributor to both MMU and Malaysia’s wider research ecosystem.

Research Interest

Dr. Goh’s research interests encompass a wide spectrum of areas within Artificial Intelligence and digital systems engineering. A significant portion of his work is dedicated to contactless biometric technologies, especially those using palm vein, palm print, and finger vein recognition. These technologies are integral to secure authentication systems and form the core of his early and ongoing research. He has also extensively explored video analytics, pattern recognition, image processing, and data classification for security, healthcare, and smart city applications. One of his signature projects, the “Smart Traffic Impact Assessment System”, represents a major advancement in urban AI, combining real-time data analysis with predictive modeling. Another domain of interest is gait recognition and spatiotemporal feature extraction, applied to age-based classification systems using AI algorithms. His interdisciplinary approach blends software engineering with signal processing and machine learning, leading to innovative tools with societal benefits. Additionally, he is actively engaged in research around reinforcement learning for dynamic pricing systems, integrating AI with economics. Dr. Goh’s projects reflect a strong application-driven research philosophy, pushing boundaries in how AI can be embedded into everyday environments for efficiency, safety, and sustainability.

Research Skills

Dr. Goh possesses a diverse and advanced set of research skills that have been instrumental in developing intelligent digital solutions. His core technical proficiencies include AI modeling, deep learning, video analytics, and multimodal data fusion, particularly in biometric systems. He is highly skilled in software and application development, with extensive experience in developing both academic prototypes and deployable commercial systems. His expertise also extends to database design and management, essential for handling large-scale biometric and visual data. He has a strong command over object recognition and pattern classification techniques using AI and machine learning frameworks. Dr. Goh is also experienced in reinforcement learning algorithms, used in his dynamic pricing and smart city projects. On the academic side, he is adept at writing research proposals, publishing in high-impact journals, and presenting findings at international conferences. His collaborative skills are evidenced by successful multi-author book chapters and interdisciplinary project leadership. Moreover, he excels in mentoring postgraduate students and coordinating innovation competitions. With this unique combination of programming, analytical, leadership, and project management skills, Dr. Goh consistently delivers impactful, high-quality research.

Awards and Honors

Dr. Goh has received numerous awards and recognitions at national and international levels, affirming his excellence in research and innovation. Most notably, he was awarded the ITEX SPECIAL MINDS Thematic Award 2024 and a Gold Medal for his “Smart Traffic Impact Assessment System” at the International Invention, Innovation, Technology Exhibition (ITEX). He also earned multiple accolades for “CloudPark – The Smart City Parking Solution,” including gold medals and top placements in PROCOM and Infineon competitions. His consistent success in innovation is further illustrated  for biometric systems, video puzzle learning tools, and intelligent scanning devices. he received the Outstanding Research Award from Multimedia University, a testament to his sustained scholarly contribution. Earlier recognitions, including the Silver Medal at ITEX for “Palm’n Go – A Touchless Biometric System”, mark the beginning of his decorated research journey. Dr. Goh’s portfolio of over 18 innovation awards highlights his commitment to creating solutions that are both technically robust and socially impactful. These accolades validate his role as a thought leader in biometric AI and smart systems research.

Publication Top Notes

  • “An automated palmprint recognition system”, Image and Vision Computing, 2005 – Cited 396.

  • “PalmHashing: a novel approach for cancelable biometrics”, Information Processing Letters, 2005 – Cited 255.

  • “Touch-less palm print biometrics: Novel design and implementation”, Image and Vision Computing, 2008 – Cited 245.

  • “Facial expression recognition using a hybrid CNN–SIFT aggregator”, International Workshop on Multi-disciplinary Trends in Artificial Intelligence, 2017 – Cited 198.

  • “Palmprint recognition with PCA and ICA”, Proc. Image and Vision Computing New Zealand, 2003 – Cited 163.

Conclusion

Assoc. Prof. Ts. Dr. Goh Kah Ong Michael stands as a shining example of how academic rigor, technological innovation, and community engagement can converge to make a lasting impact. His career is marked by groundbreaking contributions in AI-driven biometrics and smart city solutions, with practical outputs recognized at the highest levels through international innovation awards. As a mentor, educator, and innovator, he continues to shape the future of information technology and digital systems in Malaysia and beyond. His research not only addresses complex technical challenges but also offers scalable solutions that benefit society, including urban traffic management and secure identification technologies. With his impressive publication record, long-term academic service, and forward-looking research agenda, Dr. Goh is well-positioned to assume future leadership roles in research policy, international collaboration, and higher education development. His contributions exemplify excellence in research translation and academic leadership, making him a deserving candidate for international recognition and continued advancement in the global research landscape.

A.V.L.N. SUJITH | Computer Science | Best Researcher Award

Dr. A.V.L.N. SUJITH | Computer Science | Best Researcher Award

Associate Professor from Mallareddy University, India

Dr. A.V.L.N. Sujith is a seasoned academic and researcher in the field of Computer Science and Engineering with over 12 years of experience, including 7 years in leadership roles as Head of Department. He is currently serving as the Head of the Information Technology Department at Malla Reddy University, Hyderabad. Known for his dynamic teaching style and commitment to research, Dr. Sujith has successfully balanced administrative responsibilities with a productive research output. His contributions include over 36 international journal publications, five patents, two textbooks, and significant involvement in funded projects. With a focus on cloud computing, artificial intelligence, and machine learning, he has developed interdisciplinary solutions that bridge technology and real-world applications. His work has earned him national recognition, including prestigious mentoring awards for student innovation competitions. Moreover, Dr. Sujith actively participates in organizing conferences, delivering FDPs, designing curricula, and setting academic strategies to enhance teaching and learning. His publication record includes 633 citations on Google Scholar and over 380 citations on Scopus. He has also completed a post-doctoral fellowship at the University of Louisiana, USA. Through a blend of academic excellence, administrative acumen, and innovative research, Dr. Sujith exemplifies the qualities of a leading academician and is highly regarded in his field.

Professional Profile

Education

Dr. A.V.L.N. Sujith has pursued a strong academic path in Computer Science and Engineering, demonstrating a continuous progression of specialization and expertise. He completed his B.Tech and M.Tech in Computer Science and Engineering from JNTUA University, Ananthapuram, in 2011 and 2013, respectively, securing competitive percentages of 65.57% and 77.35%. He was awarded a Ph.D. in Computer Science and Engineering by the same university in May 2021, further solidifying his foundation in advanced computing research. In addition, he broadened his global exposure and research capabilities by completing a prestigious post-doctoral fellowship at the University of Louisiana at Lafayette, USA, from October 2022 to October 2023. Prior to his higher education, Dr. Sujith completed his Intermediate studies with a 70.02% score and secured 73.5% in SSC, laying the groundwork for his academic journey. His academic trajectory reflects not only a strong technical foundation but also a commitment to lifelong learning and international collaboration. Through his educational background, Dr. Sujith has gained a comprehensive understanding of theoretical and applied aspects of computer science, enabling him to contribute meaningfully to teaching, research, and institutional development.

Professional Experience

Dr. Sujith’s professional journey spans over 13 years in teaching and research across several esteemed institutions in India. His current role is Head of the Department of Information Technology at Malla Reddy University, Hyderabad, starting from May 2024. Prior to this, he served as Head of the CSE Department at Narsimha Reddy Engineering College and Anantha Lakshmi Institute of Technology and Sciences, where he led curriculum reforms, coordinated NBA accreditations, and fostered industry-academia linkages through MoUs. His contributions also include organizing student tech-fests, innovation cells, and securing multiple awards through mentorship in national-level competitions. As an Assistant Professor at Sri Venkateswara College of Engineering, he played a pivotal role in institutional events like Smart India Hackathon and the Chhatra Vishwakarma Awards. He has also served in teaching roles at Vignan Institute of Information Technology, JNTUA College of Engineering, and Sree Vidyanikethan College of Engineering. In each role, Dr. Sujith has demonstrated his strengths in both pedagogy and academic leadership. His ability to drive institutional excellence, mentor faculty and students, and deliver high-impact research outcomes has made him a key contributor to academic innovation and quality education.

Research Interests

Dr. A.V.L.N. Sujith’s research interests are rooted in cutting-edge areas of computer science that have significant real-world applications. His primary focus areas include artificial intelligence, machine learning, cloud computing, virtualization technologies, deep learning, data science, and smart systems. He is particularly interested in the integration of AI with healthcare, agriculture, and business analytics, as evidenced by his interdisciplinary publications and funded projects. His research also extends to intelligent service composition in dynamic cloud environments, green energy systems using nanomaterials, and high-performance computing solutions. Dr. Sujith’s work emphasizes the use of advanced algorithms, hybrid metaheuristic methods, and systematic reviews to address complex computational problems. He has also conducted studies involving QoS-aware service discovery, fuzzy-based models, and fast intra prediction mode decisions in multimedia coding. Moreover, he is engaged in developing pedagogical tools for teaching these advanced technologies, reflecting his dual commitment to research and academic instruction. His diverse research portfolio positions him to contribute significantly to emerging trends in AI and cloud ecosystems, particularly in developing cost-effective, intelligent, and sustainable technological solutions.

Research Skills

Dr. Sujith possesses a wide array of research skills that enhance his effectiveness as a scholar and innovator. His expertise in designing and analyzing algorithms, data modeling, system architecture, and intelligent computing frameworks equips him to solve real-world problems across various domains. He is proficient in using technologies such as VMware, VSphere, Citrix Xen, and Amazon Web Services for cloud deployment, and has hands-on experience with Python, Java, C, and C++ for developing scalable solutions. Dr. Sujith is also skilled in tools like Rational Rose, Apache Tomcat, and SQL/DB2 for enterprise development and database management. His experience in teaching subjects like artificial intelligence, data warehousing, and cloud computing enhances his technical depth. Furthermore, he employs modern research methodologies such as systematic literature reviews, comparative analyses, and modeling using hybrid machine learning algorithms. His published works demonstrate familiarity with various software tools and platforms for data visualization, performance evaluation, and predictive analytics. With certifications from IBM, Microsoft, Google, and NASSCOM, Dr. Sujith continues to upgrade his technical competencies, ensuring that his research remains relevant and impactful in an ever-evolving digital landscape.

Awards and Honors

Dr. Sujith has earned several accolades that highlight his dedication to academic excellence and innovation. Notably, he received the Best Project Mentor Award from the then Vice President of India, Dr. M. Venkaiah Naidu, for mentoring the award-winning project “Automated Agriculture and Sericulture System Using IoT” under the AICTE-ECI-ISTE Chhatra Vishwakarma Awards 2018. He also received the Best Mentor Award in Smart India Hackathon 2018 for leading a team in the hardware category. Additionally, Dr. Sujith was honored with the Best Research Paper Award at a CSI India-organized conference for his contribution to quantum cryptography research. He has also secured funding from DST-IEDC for two innovative agricultural IoT projects. His awards and recognitions reflect his ability to translate academic knowledge into impactful real-world applications. These accomplishments are not just limited to individual recognition but extend to institutional and student success, reinforcing his role as a catalyst for innovation and academic achievement. His leadership in organizing FDPs, conferences, and seminars has further strengthened his standing in the academic community, making him a sought-after mentor and collaborator.

Conclusion

Dr. A.V.L.N. Sujith emerges as a well-rounded academician, combining a rich blend of teaching, research, administrative leadership, and community engagement. His journey from assistant professor to department head is marked by a consistent record of excellence, innovation, and scholarly impact. With an impressive publication portfolio, extensive citation record, and recognized mentorship in national competitions, he has firmly established himself as a leader in the fields of AI, cloud computing, and data science. His proactive role in curriculum design, accreditation, and institutional development further underlines his strategic vision and academic commitment. Dr. Sujith’s ability to secure research funding, author books, and develop skill-based courses showcases his multifaceted approach to academic growth and societal impact. While there is scope for deeper global collaboration and expansion into high-impact journals, his current achievements provide a strong foundation for future advancements. Dr. Sujith represents the ideal profile of a modern educator and researcher—innovative, inspiring, and impact-driven. His contributions continue to elevate the standards of computer science education and research in India, making him a deserving candidate for prestigious academic recognitions and awards.

Publications Top Notes

1. Integrating Nanomaterial and High-Performance Fuzzy-Based Machine Learning Approach for Green Energy Conversion
Authors: Sujith, A.V.L.N.; Swathi, R.; Venkatasubramanian, R.; Venu, N.; Hemalatha, S.; George, T.; Hemlathadhevi, A.; Madhu, P.; Karthick, A.; Muhibbullah, M.; et al.
Year: 2022

2. A Comparative Analysis of Business Machine Learning in Making Effective Financial Decisions Using Structural Equation Model (SEM)
Authors: A.V.L.N. Sujith; Naila Iqbal Qureshi; Venkata Harshavardhan Reddy Dornadula; Abinash Rath; Kolla Bhanu Prakash; Sitesh Kumar Singh; Rana Muhammad Aadil
Year: 2022

3. Multi-temporal Image Analysis for LULC Classification and Change Detection
Authors: Vivekananda, G.N.; Swathi, R.; Sujith, A.V.L.N.
Year: 2021

4. A Multilevel Principal Component Analysis Based QoS Aware Service Discovery and Ranking Framework in Multi-cloud Environment
Authors: Sujith, A.V.L.N.; Rama Mohan Reddy, A.; Madhavi, K.
Year: 2019

5. An Enhanced Faster-RCNN Based Deep Learning Model for Crop Diseases Detection and Classification
Authors: Harish, M.; Sujith, A.V.L.N.; Santhi, K.
Year: 2019

6. EGCOPRAS: QoS-aware Hybrid MCDM Model for Cloud Service Selection in Multi-cloud Environment
Authors: Sujith, A.V.L.N.; Rama Mohan Reddy, A.; Madhavi, K.
Year: 2019

7. QoS-driven Optimal Multi-cloud Service Composition Using Discrete and Fuzzy Integrated Cuckoo Search Algorithm
Authors: Sujith, A.V.L.N.; Reddy, A.R.M.; Madhavi, K.
Year: 2019

8. A Novel Hybrid Quantum Protocol to Enhance Secured Dual Party Computation over Cloud Networks
Authors: Sudhakar Reddy, N.; Padmalatha, V.L.; Sujith, A.V.L.N.
Year: 2018

Mahesh Muthulakshmi. R | Computer Science | Excellence in Research Award

Dr. Mahesh Muthulakshmi. R | Computer Science | Excellence in Research Award

Associate Professor from Saveetha School of Engineering, SIMATS, India

R. Mahesh Muthulakshmi is a proactive and goal-oriented academic professional with over 12 years of rich experience in the field of Computer Science and Engineering. He has consistently demonstrated exceptional time management, problem-solving skills, and a capacity for rapid learning and adaptability. His expertise lies in data security, cloud computing, artificial intelligence, and machine learning, with a particular focus on developing robust security solutions for cloud-based environments. He has published several high-quality research papers in SCI and Scopus-indexed journals and has actively contributed to international and national conferences. In addition to his research, he has played a significant role in organizing technical events, workshops, and international conferences, enhancing his leadership and collaborative abilities. His dedication to continuous learning is reflected in his regular participation in Faculty Development Programs (FDPs) and workshops, further sharpening his technical competencies. Known for his sense of responsibility and reliability, he is committed to contributing positively to his academic community and research field. His profile is characterized by a solid balance of teaching, research, and active engagement in professional bodies, showcasing his well-rounded commitment to academia and research excellence.

Professional Profile

Education

R. Mahesh Muthulakshmi has pursued a strong academic path in the domain of Computer Science and Engineering. He is currently undertaking his doctoral studies (Ph.D.) in Computer Science Engineering at Saveetha School of Engineering, SIMATS University, Chennai, with an expected completion in April 2025. His Ph.D. research focuses on advanced security models and encryption algorithms for industrial and cloud-based applications, indicating his dedication to solving critical challenges in modern computing environments. He holds a Master of Engineering (M.E.) in Computer Science Engineering from VLB Janakiammal College of Engineering and Technology, Coimbatore, affiliated with Anna University, which he completed in May 2009 with first-class honors. His undergraduate journey began with a Bachelor of Engineering (B.E.) in Computer Science Engineering from Kamaraj College of Engineering & Technology, Virudhunagar, also under Anna University, Chennai, which he successfully completed in May 2007 with first-class distinction. His academic trajectory reflects both depth and continuity in his specialized area, forming a strong foundation for his research pursuits. Throughout his education, Mahesh has been focused on practical and innovative problem-solving, which is now evident in his research and professional activities.

Professional Experience

R. Mahesh Muthulakshmi possesses over 12 years of comprehensive teaching and research experience, demonstrating versatility and leadership across reputable academic institutions. He began his career as an Assistant Professor in the Department of Computer Science and Engineering at Nehru College of Engineering and Research Center, Kerala, where he served from January 2009 to June 2010. His teaching career progressed to Sri Raaja Raajan College of Engineering and Technology, Karaikudi, where he worked as an Assistant Professor from June 2010 to December 2010. The most significant phase of his professional journey was at Indira Gandhi College of Engineering and Technology for Women, Chengalpattu, where he contributed as an Assistant Professor from May 2011 to November 2021. During this tenure, he not only imparted technical knowledge but also mentored students, organized conferences, and contributed to the academic community’s growth. His experience spans curriculum development, student counseling, technical event management, and hands-on research, highlighting his ability to balance academic responsibilities with impactful research work. Throughout his career, Mahesh has been recognized for his reliability, adaptability, and passion for delivering quality education while contributing actively to advancing knowledge in his field.

Research Interest

R. Mahesh Muthulakshmi’s research interests are centered around data security, cloud computing, artificial intelligence, machine learning, and optimization algorithms. His primary focus lies in developing secure and efficient encryption models that protect sensitive data in cloud environments, which is crucial in the era of digital transformation. His work addresses emerging threats such as Distributed Denial-of-Service (DDoS) attacks and data breaches, aiming to create robust systems that can withstand security vulnerabilities. Mahesh is also deeply interested in integrating machine learning and AI-based techniques to enhance cybersecurity frameworks and improve the performance of encryption protocols. His research spans topics such as dual generative hyperbolic graph adversarial networks, particle swarm optimization, and cloud data security using advanced cryptographic methods. Additionally, he explores the applications of neural networks for securing data storage and transfer, contributing to the broader field of secure cloud architecture. His dedication to researching the intersection of AI, cloud computing, and data security showcases his commitment to providing cutting-edge solutions to real-world industrial and technological challenges, positioning him as an emerging leader in the cybersecurity and cloud computing domains.

Research Skills

R. Mahesh Muthulakshmi has developed strong and diverse research skills throughout his academic and professional journey, particularly in the areas of data security management, encryption algorithms, and cloud computing systems. He is proficient in designing and implementing advanced cryptographic techniques to secure data in both public and private cloud environments. His research acumen extends to developing machine learning models and integrating artificial intelligence into security protocols to detect and prevent cyber threats such as DDoS attacks. Mahesh has also demonstrated the ability to use optimization algorithms like particle swarm optimization to enhance system performance and security robustness. His practical research skills include data analysis, cloud-based system architecture design, and coding across multiple programming languages, making him technically versatile. Additionally, Mahesh is adept at preparing high-quality research papers, presenting at international conferences, and collaborating with multidisciplinary teams to achieve research objectives. His involvement in workshops and faculty development programs further illustrates his continuous upskilling in emerging technologies such as blockchain, IoT, and generative AI. These research capabilities collectively showcase his ability to contribute meaningful innovations to the fields of cloud computing, data security, and artificial intelligence.

Awards and Honors

R. Mahesh Muthulakshmi has received several awards and recognitions that reflect his excellence in academic and research contributions. Notably, he was honored with the Excellence Award in 2024 by Educators Empowering India, which is a significant acknowledgment of his dedication and impactful work in the educational sector. He also received the Best Poster Award at the Star Submit organized by SIMATS School of Engineering in 2024, further validating his research proficiency and presentation skills. His active participation in numerous national and international Faculty Development Programs (FDPs), workshops, and seminars underscores his commitment to continuous learning and academic excellence. Mahesh’s accolades are complemented by his leadership roles in organizing key events such as the International Conference on Computational Intelligence, Fog Computing, and Cybernetics Systems (ICCIFS-2024) and the International Conference on Communication Engineering and Technology (2018). Additionally, his memberships in prestigious organizations like the International Association of Engineers (IAENG) and the International Association of Computer Science and Information Technology (IACSIT) reflect his strong integration within the global academic and professional community. These honors collectively demonstrate his sustained contributions and dedication to research and education.

Conclusion

R. Mahesh Muthulakshmi exemplifies the qualities of a dedicated researcher and academic professional, with his career reflecting a perfect blend of teaching excellence, innovative research, and active participation in scholarly activities. His focus on data security and cloud computing addresses some of the most pressing technological challenges of the modern era, and his research outputs in SCI and Scopus-indexed journals reinforce the quality and relevance of his work. His proactive approach in participating in faculty development programs, organizing international conferences, and collaborating with peers shows his commitment to continuous growth and academic leadership. Furthermore, his recognition through various awards and active memberships in professional bodies positions him as a respected figure in his field. While expanding international collaborations and increasing his publication footprint in top-tier journals could further elevate his profile, his current contributions already mark him as a valuable asset to the research community. Overall, Mahesh stands out as a deserving candidate for prestigious recognitions such as the Best Researcher Award, with strong potential to continue making meaningful advancements in computer science and engineering.

Publications Top Notes

1. A Robust Approach to Cloud Data Security Using an Amalgamation of AES and Code-Based Cryptography

  • Authors: R.M. Muthulakshmi, T.P. Anithaashri

  • Year: 2024

  • Citations: 2

2. Novel Weight-Improved Particle Swarm Optimization to Enhance Data Security in Cloud

  • Authors: M.M. R

  • Year: 2023

  • Citations: 2

3. An Optimized Dual Generative Hyperbolic Graph Adversarial Network With Multi‐Factor Random Permutation Pseudo Algorithm Based Encryption for Secured Industrial Healthcare Data

  • Authors: R.M. Muthulakshmi, T.P. Anithaashri

  • Year: 2025

4. Enhancing Data Security in Cloud Using Artificial Neural Network with Backward Propagation

  • Authors: R.M. Muthulakshmi, T.P. Anithaashri, C. Nataraj, V.S.N. Talasila

  • Year: 2024

5. Data Security in Cloud Computing Using Maritime Search and Rescue Algorithm

  • Authors: A. Mahesh Muthulakshmi

  • Year: 2024

6. Enhancing the Detection of DDoS Attacks in Cloud Using Linear Discriminant Algorithm

  • Authors: M.M. R, A. T.P.

  • Year: 2023

7. The Security in Online Data Sharing on the Public Server Using Secure Key-Aggregate Cryptosystems with Broadcast Aggregate Keys

  • Authors: R.M. Muthulakshmi

  • Year: 2018

8. Data Access Control in Public Cloud Storage System Using “CP-ABE” Technique

  • Authors: S.K. R. Mahesh Muthulakshmi, Karthiga E., Ramani K.

  • Year: 2018

9. The Darwinism of Big Data Security Through Hadoop Augmentation Security Model

  • Authors: R. Mahesh Muthulakshmi, M.S.M. Sivam, D. Anitha

  • Year: 2016

Shivam Kumar | Computer Science | Best Researcher Award

Mr. Shivam Kumar | Computer Science | Best Researcher Award

Techno International New Town, India

Shivam Kumar is an ambitious and driven undergraduate student specializing in Artificial Intelligence and Machine Learning. Currently pursuing his B.Tech at Techno International New Town under MAKAUT, West Bengal, he maintains a strong academic record with a CGPA of 8.39 as of the 7th semester. Shivam is passionate about applying his analytical and technical skills toward solving real-world problems, particularly in the healthcare and computer vision domains. He has demonstrated a proactive approach to research by publishing papers in both journals and conferences, reflecting his commitment to academic growth and knowledge dissemination. Shivam’s project portfolio showcases his ability to develop end-to-end machine learning pipelines and apply classical algorithms in programming languages such as C++ and Python. In addition to his technical expertise, he has proven teamwork and problem-solving capabilities through active participation in events like the Smart India Hackathon, where his team achieved third place. His goal is to build a career in an innovative and growth-oriented organization, where continuous learning and impactful contributions are valued.

Professional Profile

Education

Shivam Kumar is currently enrolled in a Bachelor of Technology program with a specialization in Artificial Intelligence and Machine Learning at Techno International New Town, affiliated with MAKAUT, West Bengal. Expected to graduate in July 2025, he has maintained a commendable CGPA of 8.39 through rigorous coursework that includes data structures, algorithms, DBMS, computer networks, operating systems, and software engineering. Prior to his undergraduate studies, Shivam completed his higher secondary education (AISSCE) from Jasidih Public School, Jharkhand, with an aggregate score of 72.2%. His foundational schooling was completed at G.D. D.A.V Public School, Jharkhand, where he scored 86.33% in the Class X AISSE examination. This strong academic background has equipped Shivam with solid theoretical knowledge and practical skills that complement his technical and research pursuits in the field of AI and machine learning.

Professional Experience

While still a student, Shivam Kumar has demonstrated practical experience through project-based engagements and active participation in competitive technical events. He has developed a comprehensive machine learning project focused on heart disease prediction, which involved data preprocessing, feature analysis, and model optimization using Python and ML libraries. This hands-on experience reflects his ability to handle complex datasets and apply algorithms to meaningful real-world problems. Additionally, Shivam built a command-line Sudoku solver in C++, demonstrating proficiency in algorithm design, object-oriented programming, and error handling. Beyond projects, Shivam contributed as a team member in the Smart India Hackathon at the college level, where his team secured third place by innovating and presenting effective solutions. Though he has not yet held formal industry positions, these experiences reflect strong foundations in problem-solving, programming, and collaborative development, preparing him well for professional roles in AI, software development, and data science.

Research Interest

Shivam Kumar’s research interests are primarily centered around machine learning applications in healthcare and computer vision. He is particularly passionate about using predictive analytics and ensemble learning techniques to address critical health issues, as reflected in his work on heart disease prediction. His research also extends to image classification, demonstrated by his exploration of fish species identification using convolutional neural networks (CNN) and logistic regression on underwater imagery. These interests align with contemporary challenges in AI, including data imputation, feature selection, and the development of robust models for diverse datasets. Shivam’s focus on applying both classical algorithms and deep learning methods shows his eagerness to understand and contribute to various facets of AI research. His projects and publications suggest a commitment to exploring how AI can be leveraged to improve diagnostic accuracy and environmental monitoring, which could potentially impact medical and ecological fields positively.

Research Skills

Shivam Kumar possesses a strong skill set in programming languages such as C++, Python, and working knowledge of SQL and MySQL for database management. He is proficient in using libraries and tools like Scikit-Learn, NumPy, Pandas, and Matplotlib to build, visualize, and optimize machine learning models. His skills extend to software development environments such as VS Code, Git/GitHub for version control, and operating systems including Unix and Linux. Shivam demonstrates competence in machine learning pipelines involving data preprocessing, handling missing data via imputation techniques, feature selection, and hyperparameter tuning. His command over algorithms, data structures, and object-oriented programming supports his ability to design efficient and maintainable code. Furthermore, Shivam is skilled in conducting exploratory data analysis and deploying classification models, making him well-equipped for research and development roles that require both programming expertise and analytical thinking.

Awards and Honors

Shivam Kumar has achieved notable recognition for his research and technical prowess during his academic journey. He has published a journal paper titled “Empirical Analysis of Machine Learning and Stacking Ensemble Methods for Heart Disease Detection,” showcasing his ability to contribute to peer-reviewed scientific literature. Additionally, he has presented a conference paper on “Fish Classification Using CNN and Logistic Regression from Underwater Images,” which highlights his engagement with computer vision applications. Shivam’s competitive spirit and problem-solving skills earned his team third place in the Smart India Hackathon at the college level, a prestigious nationwide innovation competition that attracts participants from across India. These achievements reflect his dedication to excellence in both academic research and practical innovation. Shivam’s growing list of publications and accolades positions him as a promising young researcher ready to make significant contributions in AI and machine learning.

Conclusion

Shivam Kumar is a highly promising young researcher and technologist with a solid academic foundation and practical research experience in AI and machine learning. His demonstrated ability to conduct meaningful projects, publish research papers, and contribute to team-based competitions underscores his dedication and potential for future success. With strong programming skills, a deep interest in healthcare and computer vision applications, and an eagerness to learn and innovate, Shivam is well-prepared to pursue advanced research or professional roles in cutting-edge technology domains. Continued engagement with collaborative research, expanding publication venues, and gaining industry experience will further enhance his profile. Overall, Shivam’s blend of technical knowledge, research aptitude, and proactive learning attitude makes him an excellent candidate for recognition as a Best Researcher in the student category.

Publications Top Notes

  1. Empirical Analysis of Machine Learning and Stacking Ensemble Methods for Heart Disease Detection

    • Authors: Bikash Sadhukhan, Pratick Gupta, Atulya Narayan, Akshay Kumar Mourya, Shivam Kumar

    • Year: 2025

  2. Fish Classification Using CNN and Logistic Regression from Underwater Images

    • Authors: Shivam Kumar, Pratick Gupta, Pratima Sarkar, Bijoyeta Roy

    • Year: 2023