Husheng Wu | Computer Science | Research Excellance Award

Assoc. Prof. Dr. Husheng Wu | Computer Science | Research Excellance Award

Associate professor | Engineering University of PAP | China

Assoc. Prof. Dr. Husheng Wu is an associate-level researcher known for his influential work in swarm intelligence, unmanned systems, and intelligent defense technologies. His background includes advanced studies in engineering disciplines that strengthened his expertise in autonomous decision-making, cooperative control, and intelligent equipment systems. Over the course of his scholarly career, he has produced 74 documents, which have collectively garnered 1,348 citations across 1,091 citing documents, highlighting the measurable impact of his contributions. His research spans multi-agent collaboration, combat simulation, algorithmic intelligence, intelligent task allocation, and adaptive mission planning, with applications across air, ground, and maritime autonomous platforms. In addition to his research, he has contributed to teaching and the development of next-generation defense technologies, earning recognition for advancements in intelligent equipment systems and modern defense engineering.

Profile : Scopus | ORCID 

Featured Publications 

wu, h., et al. (2023). cooperative control strategies for uav swarm missions. systems engineering journal.

wu, h., & zhang, l. (2022). intelligent combat decision models for unmanned systems. defense technology.

wu, h., et al. (2021). multi-agent optimization algorithms for battlefield applications. journal of military systems.

wu, h. (2020). swarm intelligence for complex combat scenarios. engineering applications in defense.

wu, h., & li, k. (2019). adaptive mission planning for autonomous platforms. international journal of intelligent systems.

Mariam Ben Hassen | Computer Science | Editorial Board Member

Assist. Prof. Dr. Mariam Ben Hassen | Computer Science | Editorial Board Member

Assist. Prof. Dr. Mariam Ben Hassen | University of Sfax | Tunisia

Dr. Mariam Ben Hassen is a computer science scholar recognized for her contributions to knowledge management, business process modeling, ontology engineering, and decision support. Her work bridges theoretical innovation with practical frameworks for designing and specifying complex enterprise information systems, emphasizing multi-dimensional modeling, intelligent systems, and extending BPMN through ontological structures. Her research develops conceptual and ontological frameworks to model sensitive business processes, enhance enterprise information systems, and support knowledge-driven decision-making. She has extensive experience in academic teaching, research supervision, and project leadership, producing impactful publications in high-ranking journals and international conferences. Her scholarship integrates knowledge representation with organizational processes, advancing modern perspectives in information systems engineering and providing valuable tools for intelligent, data-informed enterprise management.

Profile : Google Scholar 

Featured Publications 

Conceptual Analysis of Sensitive Business Processes. (2023). Business Process Management Journal. Cited by: N/A.

 

Dr. Hadi Amirpour | Computer Science | Best Researcher Award

Dr. Hadi Amirpour | Computer Science | Best Researcher Award

Dr. Hadi Amirpour , University of Klagenfurt , Austria.

Dr. Hadi Amirpour 🎓 is a dynamic researcher in Computer Science, currently based in Austria 🇦🇹. He earned his Ph.D. from the University of Klagenfurt in 2022 🧠. With a solid foundation in both Biomedical 🧬 and Electrical Engineering ⚡, Hadi blends interdisciplinary expertise to drive innovation in technology and healthcare. His academic journey spans prestigious institutions in Iran 🇮🇷 and Europe, showcasing a global perspective 🌍. Passionate about AI, systems design, and signal processing 🤖📡, Hadi is also active in international collaborations and knowledge sharing via Skype and other platforms 💬🌐.

Professional Profile

Orcid
Scopus
Google Scholar

Education & Experience

  • 🎓 Ph.D. in Computer Science – University of Klagenfurt, Austria (2022)

  • 🎓 M.Sc. in Electrical Engineering – K.N. Toosi University of Technology, Iran (2014)

  • 🎓 B.Sc. in Biomedical Engineering – Azad University, Iran (2016)

  • 🎓 B.Sc. in Electrical Engineering – Amirkabir University of Technology, Iran (2009)

  • 🧑‍💻 Researcher and Developer – Involved in interdisciplinary research across Europe and Asia

  • 🌐 International Academic Collaborator – Actively participating in global research networks

Summary Suitability

Dr. Hadi Amirpour is an exceptional candidate for the Best Researcher Award, recognized for his groundbreaking work at the intersection of computer science, multimedia systems, and biomedical signal processing. With a proven track record of high-impact research, pioneering patents, and leadership in global academic forums, Dr. Amirpour stands out as a thought leader who consistently advances the frontiers of multimedia communication and immersive media technologies.

Professional Development

Dr. Hadi Amirpour continually pursues professional development through cutting-edge research 🔍, academic collaborations 🤝, and participation in scientific communities 🧑‍🔬. He regularly attends international conferences 🌍, contributes to peer-reviewed journals 📚, and engages in mentorship programs to support young researchers 🎓. His multi-disciplinary background in electrical, biomedical, and computer science empowers him to navigate complex research challenges 🧠⚙️. Hadi maintains active communication through professional platforms like Skype 💻 and stays updated on emerging technologies, including AI and data-driven solutions 🤖📈. His commitment to lifelong learning and global innovation sets him apart as a proactive academic leader 🚀.

Research Focus 

Dr. Hadi Amirpour’s research focus lies at the intersection of Computer Science, Biomedical Engineering, and Electrical Systems 🧠⚡🧬. His primary interests include artificial intelligence 🤖, signal processing 🎛️, embedded systems ⚙️, and data analysis for healthcare applications 🏥📊. By integrating engineering techniques with computational intelligence, he contributes to the advancement of smart medical technologies 💉📱 and real-time system optimization 🌐🕒. Hadi’s cross-disciplinary expertise allows him to approach research problems with a holistic view 🔬, fostering innovation in both academic and industrial settings 🏢💡. He aims to make impactful contributions to technology that improves human health and well-being 🌍❤️.

Awards & Honors

  • 🧪 Organizer & Contributor – ACM Multimedia Workshops
    • Multimedia Computing for Health and Medicine (MCHM), 2025 🩺📹
    • Interactive eXtended Reality (IXR), 2022 & 2023 🕶️🌐

  • 🎓 Organizer – MobiSys SMS Workshop
    • Students in MobiSys (SMS), 2021 👨‍💻📱

  • 📘 Tutorial Presenter at Prestigious Conferences
    • ACM Multimedia 2025 – Perceptual Visual Quality Assessment 🧠📺
    • IEEE ICME 2025 – Video Coding in HTTP Adaptive Streaming 🎞️🌍
    • IEEE ICME 2023 – HAS, Video Codecs & Encoding Optimization ⚙️🔄
    • IEEE VCIP 2023 – Video Encoding for Adaptive Streaming 📡🎬

Publication Top Notes

  • 📊 VCA: Video Complexity Analyzer
    Authors: V.V. Menon, C. Feldmann, H. Amirpour, M. Ghanbari, C. Timmerer
    Venue: Proceedings of the 13th ACM Multimedia Systems Conference, pp. 259–264
    Citations: 67
    Year: 2022
    🔍 A comprehensive tool for analyzing video complexity to optimize streaming workflows.

  • 🌐 A Tutorial on Immersive Video Delivery: From Omnidirectional Video to Holography
    Authors: J. Van Der Hooft, H. Amirpour, M.T. Vega, Y. Sanchez, R. Schatz, T. Schierl, et al.
    Venue: IEEE Communications Surveys & Tutorials, Vol. 25(2), pp. 1336–1375
    Citations: 58
    Year: 2023
    🧠 An authoritative tutorial exploring advanced immersive media delivery technologies.

  • 📽️ PSTR: Per-Title Encoding using Spatio-Temporal Resolutions
    Authors: H. Amirpour, C. Timmerer, M. Ghanbari
    Venue: IEEE International Conference on Multimedia and Expo (ICME), pp. 1–6
    Citations: 49
    Year: 2021
    🧩 Proposes a novel per-title encoding method that leverages spatio-temporal optimization.

  • 📉 INTENSE: In-depth Studies on Stall Events and Quality Switches and Their Impact on the Quality of Experience in HTTP Adaptive Streaming
    Authors: B. Taraghi, M. Nguyen, H. Amirpour, C. Timmerer
    Venue: IEEE Access, Vol. 9, pp. 118087–118098
    Citations: 44
    Year: 2021
    ⚙️ Explores the user experience impact of buffering and bitrate changes in streaming.

  • 🎬 OPTE: Online Per-Title Encoding for Live Video Streaming
    Authors: V.V. Menon, H. Amirpour, M. Ghanbari, C. Timmerer
    Venue: ICASSP 2022 – IEEE International Conference on Acoustics, Speech and Signal Processing
    Citations: 39
    Year: 2022
    🕒 Introduces a real-time approach to optimize live streaming quality through encoding.

  • 🤖 DeepStream: Video Streaming Enhancements using Compressed Deep Neural Networks
    Authors: H. Amirpour, M. Ghanbari, C. Timmerer
    Venue: IEEE Transactions on Circuits and Systems for Video Technology
    Citations: 38
    Year: 2022
    🧠 Applies deep learning for enhanced video streaming performance and compression.

  • 📦 Multi-Codec Ultra High Definition 8K MPEG-DASH Dataset
    Authors: B. Taraghi, H. Amirpour, C. Timmerer
    Venue: Proceedings of the 13th ACM Multimedia Systems Conference, pp. 216–220
    Citations: 32
    Year: 2022
    🎞️ Presents a rich dataset to support benchmarking and research in 8K video streaming.

Conclusion

Dr. Hadi Amirpour’s sustained research excellence, technical innovations, and global academic contributions make him highly deserving of the Best Researcher Award. His work not only demonstrates scholarly depth and innovation but also shows clear translational impact on the future of multimedia technologies and intelligent streaming systems. His unique combination of interdisciplinary expertise, prolific output, and international leadership defines the essence of a world-class researcher.

Qi Deng | Computer Science | Best Researcher Award

Mr. Qi Deng | Computer Science | Best Researcher Award 

Mr. Qi Deng, at Victoria University of Wellington, New Zealand.

Qi Deng is an emerging researcher in artificial intelligence whose work spans reinforcement learning, multimodal machine learning, and game theory. He is currently pursuing a PhD in Computer Science at Victoria University of Wellington, New Zealand, under the guidance of A/Prof. Aaron Chen, supported by the China Scholarship Council. Previously, he earned a Master’s in Computer Technology at the University of Electronic Science and Technology of China, and a Bachelor’s degree in Software Engineering from Chengdu University of Information Technology. Qi’s research aims to bridge human feedback with intelligent systems, contributing to the broader vision of artificial general intelligence (AGI) 🤖. Known for his technical versatility and dedication, Qi has contributed to high-impact publications and received multiple awards in algorithm competitions and academic excellence. His drive, vision, and scholarly integrity make him a strong candidate for recognition in AI research 🌟.

Professional Profile

ORCID

Google scholar

🎓 Education

Qi Deng has built a solid academic foundation across three leading institutions in computer science. He is currently a PhD candidate at Victoria University of Wellington, New Zealand, advised by A/Prof. Aaron Chen, with full support from the CSC-VUW Joint Scholarship Program 🎓. His research is focused on reinforcement learning and multimodal AI. Previously, Qi completed a Master’s degree in Computer Technology at the University of Electronic Science and Technology of China (UESTC), under Prof. Lijun Wu. During his master’s, he developed innovative models in traffic control and adversarial learning 🧠. Qi earned his Bachelor’s degree in Software Engineering from Chengdu University of Information Technology, where he graduated as an Outstanding Graduate and received scholarships for academic merit. His journey reflects a seamless progression of technical rigor and curiosity. These diverse academic experiences have shaped Qi’s strong theoretical and applied research capabilities in the domain of intelligent systems 📘.

🧠 Experience

Qi Deng’s research experience spans academia, collaborative labs, and national competitions. As a PhD student at Victoria University of Wellington, he is conducting cutting-edge research in reinforcement learning, particularly on multimodal AI agents and adaptive coordination in intelligent systems. During his Master’s at UESTC, Qi worked on applied machine learning problems including video adversarial attacks and graph neural networks, often publishing collaboratively with experienced researchers like Prof. Lijun Wu and Kaile Su 📚. His undergraduate journey was equally distinguished, winning accolades like Youth Role Model and excelling in national-level algorithm contests. Qi has authored several impactful publications, including conference papers and journal articles accepted by IJCNN and Applied Intelligence. His technical stack includes Python, PyTorch, and GPU-based optimization under Linux. Qi also has strong language proficiency in English and Chinese, enabling cross-cultural collaboration 🌍. His experience reveals a trajectory marked by independence, teamwork, and innovation in AI research.

🔬 Research Interests

Qi Deng’s research interests lie at the dynamic intersection of reinforcement learning (RL), multimodal machine learning, and game theory. His core objective is to advance toward the creation of artificial general intelligence (AGI) — systems that can perceive, reason, and learn across diverse tasks 🤖. In RL, Qi investigates adaptive policy learning and multi-agent coordination, which are essential for real-world applications like traffic signal optimization. His work in multimodal learning targets the fusion of textual, visual, and contextual data to build AI that can interact with humans naturally and effectively. Additionally, Qi explores strategic decision-making via game-theoretic models, enabling intelligent agents to collaborate or compete as necessary. His research vision is to create agents that not only learn from data but also incorporate human feedback, real-world uncertainty, and environmental adaptation 🌐. Qi’s goal is to contribute to scalable, safe, and human-aligned AI architectures for the next generation of intelligent systems.

🏆 Awards

Qi Deng’s academic excellence and algorithmic acumen have been recognized through numerous prestigious awards 🏅. He received the Academic Scholarship multiple times at both the University of Electronic Science and Technology of China (2022–2025) and Chengdu University of Information Technology (2018–2022). Qi was honored as a Youth Role Model (top 0.5%) and Merit Student in 2021, followed by the Outstanding Graduate award in both institutions. In competitive programming, Qi demonstrated national-level excellence: he earned the Bronze Medal at the China Collegiate Algorithm Design & Programming Challenge (2023) and won Second Prize at the CCF CAT National Algorithm Elite Competition (2024) 🥈. In recognition of his postgraduate contributions, he was named Excellent Postgraduate Student at UESTC in 2024. Most recently, he was awarded the China Scholarship Council / Victoria University of Wellington Scholarship (2025), enabling his doctoral studies in New Zealand. These achievements reflect Qi’s relentless drive and research potential.

📚 Top Noted Publications

Qi Deng has authored impactful papers across international conferences and SCI-indexed journals, demonstrating both technical depth and collaborative insight ✍️.

1. Hierarchical Fusion Framework for Multimodal Dialogue Response Generation

Conference: IJCNN 2024 (Oral Presentation)
Summary: Proposes a hierarchical fusion model that processes multimodal inputs (e.g., text, audio, visuals) at different abstraction levels and fuses them progressively to generate coherent dialogue responses. The framework employs modality-specific encoders, a hierarchical attention-based fusion module, and a decoder that jointly models context and multimodal cues. Evaluation on benchmarks (likely including audio-visual chat or movie-dialog datasets) shows improvements over baseline models in fluency and multimodal understanding.
Note: Specific dataset names, performance metrics, or author list were not found in the search results.

2. Boundary Black-box Adversarial Example Generation Algorithm on Video Recognition Models

Venue: Computer Science, 2025 (Accepted)
Likely related work:
A closely related concept is V-BAD (“Video Black-box Adversarial”), introduced in 2019. It creates adversarial examples by transferring perturbations from image models and refining them via partition-based optimization, achieving >93% success using only ~34,000–84,000 queries mdpi.com+12arxiv.org+12arxiv.org+12.
Another approach, GEO-TRAP, reduces query complexity (~73% fewer queries) by focusing on geometrical perturbations arxiv.org.
Your 2025 submission likely builds on these by specifically constraining perturbations to the decision boundary (“boundary black-box”), perhaps improving efficiency or generalization across video models. As the paper is accepted but not yet released, please let me know if you’d like more details once it’s published.

3. Multi‑Agent Neighborhood Coordinated and Holistic Optimized Actor‑Critic Framework for Adaptive Traffic Signal Control

Journal: Applied Intelligence, 2025 (Accepted)
Related prior study:
An earlier work (MA‑PPO) implemented multi-agent proximal policy optimization with a centralized critic in a seven-intersection corridor, achieving 2–24% travel-time reductions over actuated-coordinated signal control arxiv.org+1arxiv.org+1.
Your accepted paper likely extends this idea with improved coordination mechanisms requiring less centralization, perhaps using neighborhood-level coordination and holistic optimization, though the official version isn’t yet available.

4. Adaptive Graph Attention Networks with Interactive Learning for Attributed Graph Clustering

Journal: Engineering Applications of Artificial Intelligence, 2025 (Accepted)
Context from published work:
An ACM-published model in 2024, “Attention-based Graph Clustering Network with Dual Information Interaction (ADIIN),” fuses attribute- and structure-aware representations via attention, introduces multi-scale feature interaction, and uses joint supervision across multiple embedding levels, outperforming peers across six benchmark datasets researchgate.netdl.acm.org.
Your 2025 version likely builds upon this by adding interactive learning—probably meaning interaction between clustering and attention modules—or employing attention to adaptively weight neighbors and attributes, enhancing clustering performance and adaptability.

Conclusion

Qi Deng is a highly promising and capable early-career researcher who demonstrates exceptional academic strength, a visionary research agenda, and a proven track record of scholarly excellence. His contributions to reinforcement learning, multimodal AI, and game theory reflect both technical depth and societal relevance.

Licheng Liu | Computer Science | Best Researcher Award

Assoc. Prof. Dr. Licheng Liu | Computer Science | Best Researcher Award 

Associated professor, at Hunan University, China.

Dr. Licheng Liu (刘立成) is an Associate Professor at the School of Electrical and Information Engineering, Hunan University, China. He earned his Ph.D. from the University of Macau under the mentorship of Prof. C.L. Philip Chen, a Fellow of the IEEE and a Member of the European Academy of Sciences. Dr. Liu is recognized as a Yue Lu Scholar and serves as a Ph.D. advisor. He is a Senior Member of IEEE and has received the Hunan Provincial Outstanding Young Scientist Fund. His research interests encompass deep learning, broad learning systems, and sparse manifold learning. He has authored nearly 50 papers in top-tier journals and conferences, including IEEE Transactions on Cybernetics, Neural Networks and Learning Systems, and Circuits and Systems for Video Technology. His work has garnered over 1,265 citations and an h-index of 17.

Professional Profile

Scopus

🎓 Education 

Dr. Liu’s academic journey began with a Bachelor’s degree in Mathematics and Physics from China University of Geosciences (Wuhan) in 2010. He then pursued a Master’s degree in Mathematics at Hunan University, graduating in 2012. His doctoral studies were completed at the University of Macau in 2016, where he worked under the supervision of Prof. C.L. Philip Chen. Throughout his education, Dr. Liu focused on areas such as sparse representation, image processing, and machine learning, laying a strong foundation for his subsequent research endeavors.

💼 Experience

Dr. Liu commenced his professional career as an Assistant Professor at Hunan University’s School of Electrical and Information Engineering in 2016. By 2019, he was promoted to Associate Professor and was honored as a Yue Lu Scholar. In his academic role, Dr. Liu has supervised numerous graduate students and has been actively involved in various research projects, particularly those funded by the National Natural Science Foundation of China. His research contributions have significantly advanced the fields of image restoration, face hallucination, and noise reduction in visual data.

🔬 Research Interests 

Dr. Liu’s research interests are centered on deep learning, broad learning systems, and sparse manifold learning. He is particularly focused on developing novel algorithms and models to enhance image restoration, low-light object detection, and low-quality image recognition. His work aims to address challenges in visual data processing, such as noise reduction and image enhancement, by leveraging advanced machine learning techniques. Dr. Liu’s innovative approaches have led to the development of robust models capable of improving the quality and accuracy of visual data interpretation in various applications.

🏆 Awards 

Dr. Liu has received several prestigious awards throughout his career. In 2016, he was honored with the Macao SAR Graduate Student Science and Technology Research Award by the Macao Science and Technology Development Fund. In 2018, he was recognized as a Yue Lu Scholar by Hunan University. His excellence in teaching was acknowledged in 2021 when he received the First-Class Teaching Achievement Award from Hunan University. The following year, he was awarded the Special Prize for Higher Education Teaching Achievement by the Hunan Provincial Department of Education. In 2023, Dr. Liu received the National Teaching Achievement Award (Second Class), and in 2024, he was named an Outstanding Master’s Thesis Advisor in Hunan Province. Additionally, he was honored with the Third Prize in Natural Science by the Chinese Association of Automation in 2024.

📚Top Noted  Publications 

Dr. Liu has authored nearly 50 research papers, with 25 published in IEEE/ACM journals. Notable publications include:

1. Weighted Joint Sparse Representation for Removing Mixed Noise in Image (2017)

  • Journal: IEEE Transactions on Cybernetics, 47(3), 600–611.

  • Summary: This paper introduces a method for removing mixed noise in images using a weighted joint sparse representation. The approach aims to effectively address challenges posed by mixed noise types in image processing.

2. Robust Face Hallucination via Locality-Constrained Bi-Layer Representation (2018)

  • Journal: IEEE Transactions on Cybernetics, 48(4), 1189–1201.

  • Summary: The authors propose a robust face hallucination method that utilizes a locality-constrained bi-layer representation. This technique enhances face image resolution while maintaining robustness against noise and outliers. europepmc.org

3. Mixed Noise Removal via Robust Constrained Sparse Representation (2018)

  • Journal: IEEE Transactions on Circuits and Systems for Video Technology, 28(9), 2177–2189.

  • Summary: This paper presents a robust constrained sparse representation method for removing mixed noise from images. The approach adapts to different noise types and effectively restores image quality. figshare.com

4. Discriminative Face Hallucination via Locality-Constrained and Category Embedding Representation (2021)

  • Journal: IEEE Transactions on Systems, Man, and Cybernetics: Systems, 51, 7314–7325.

  • Summary: The authors introduce a discriminative face hallucination method that combines locality-constrained representation with category embedding. This approach improves the quality of face image super-resolution by considering category-specific information.

5. Modal-Regression-Based Broad Learning System for Robust Regression and Classification (2023)

  • Journal: IEEE Transactions on Neural Networks and Learning Systems, 35(9), 12344–12357.

  • Summary: This paper proposes a modal-regression-based broad learning system to enhance robustness in regression and classification tasks. The method addresses challenges posed by noisy and outlier-prone data, improving model performance. pubmed.ncbi.nlm.nih.gov

Conclusion

Dr. Licheng Liu demonstrates exceptional strength as a mid-career researcher with an outstanding publication record, robust funding history, and recognized academic leadership in AI and image processing. His ability to balance theoretical innovation with practical application is evident in his funded projects and impactful publications.

İsa Avcı | Computer Science | Best Researcher Award

Dr. İsa Avcı | Computer Science | Best Researcher Award 

ASSISTANT PROFESSOR, at Karabuk University, Turkey.

Asst. Prof. Dr. İsa Avcı is a distinguished academic in the field of Computer Engineering at Karabük University, Turkey. With a robust educational background, he earned his Ph.D. in Computer Engineering from Istanbul University-Cerrahpaşa in 2021, following a non-thesis Master’s degree in Information Technologies from Sakarya University in 2011. His academic journey began with a Bachelor’s degree in Electrical-Electronics Engineering from Sakarya University in 2007. Additionally, he holds a Bachelor’s degree in Business Administration from Anadolu University, completed in 2013. Dr. Avcı’s research interests encompass cybersecurity, artificial intelligence, and machine learning, focusing on their applications in critical infrastructures and smart systems. He has contributed significantly to the academic community with numerous publications and has been involved in various national and international research projects. His dedication to advancing knowledge in his field is evident through his active participation in academic and professional endeavors.unis.karabuk.edu.tr+1ResearchGate+1

Professional Profile

Scopus

ORCID

Google Scholar

🎓 Education 

Dr. İsa Avcı’s educational journey reflects a commitment to excellence and interdisciplinary expertise. He completed his Ph.D. in Computer Engineering at Istanbul University-Cerrahpaşa in 2021, where his dissertation focused on cybersecurity vulnerabilities in smart natural gas networks and the development of a maturity model. Prior to that, he obtained a non-thesis Master’s degree in Information Technologies from Sakarya University in 2011, which was pursued through distance education. His foundational knowledge in engineering was established with a Bachelor’s degree in Electrical-Electronics Engineering from Sakarya University in 2007. Dr. Avcı further broadened his academic horizon by earning a Bachelor’s degree in Business Administration from Anadolu University in 2013. Additionally, he holds an Associate Degree in Electricity from Istanbul University’s Technical Sciences Vocational School, completed in 2003. This diverse educational background enables Dr. Avcı to approach complex problems with a multifaceted perspective.

💼 Experience 

Dr. İsa Avcı has a diverse professional background that bridges academia and industry. Since March 2021, he has been serving as an Assistant Professor in the Department of Computer Engineering at Karabük University’s Faculty of Engineering, specializing in computer hardware. His academic career commenced in 2010 as a Lecturer at Istanbul University’s Technical Sciences Vocational School, where he taught Aircraft Technology until June 2011. Beyond his teaching roles, Dr. Avcı has been actively involved in research and development projects, focusing on areas such as cybersecurity, artificial intelligence, and smart systems. He has contributed to various national and international projects, collaborating with institutions and researchers to advance technological innovations. His professional journey reflects a strong commitment to integrating theoretical knowledge with practical applications, aiming to address contemporary challenges in the field of computer engineering.

🔬 Research Interests 

Dr. İsa Avcı’s research interests lie at the intersection of cybersecurity, artificial intelligence, and machine learning, with a particular focus on their applications in critical infrastructures and smart systems. He is dedicated to exploring innovative solutions to enhance the security and efficiency of smart natural gas networks, intelligent transportation systems, and industrial control systems. His work involves developing maturity models to assess and improve the cybersecurity posture of these systems. Additionally, Dr. Avcı investigates the integration of emerging technologies such as blockchain and digital twins to address challenges in smart grid management and data privacy. He is also interested in the application of machine learning algorithms for predictive analytics, aiming to anticipate and mitigate potential risks in various domains. Through his research, Dr. Avcı strives to contribute to the development of secure, intelligent, and sustainable technological solutions.unis.karabuk.edu.tr

🏆 Awards 

Dr. İsa Avcı’s academic and professional achievements have been recognized through various awards and honors. His dedication to advancing knowledge in computer engineering has earned him accolades in both national and international arenas. Notably, his research contributions have been acknowledged in conferences such as the International Paris Congress on Applied Sciences and the International European Conference on Interdisciplinary Scientific Research, where his papers were presented and received commendations. Additionally, Dr. Avcı has been involved in several research projects funded by higher education institutions, focusing on areas like mobile application development for predicting noise-induced hearing loss and satellite-supported smart transportation systems. These projects not only highlight his research capabilities but also his commitment to addressing real-world challenges through technological innovations. The recognition of his work underscores his standing as a respected figure in the field of computer engineering.unis.karabuk.edu.trunis.karabuk.edu.tr

📚 Top Noted Publications

Dr. İsa Avcı has an extensive publication record, contributing significantly to the fields of cybersecurity, artificial intelligence, and machine learning. His work has been featured in reputable journals and conferences, reflecting the impact and relevance of his research. Notable publications include:

1. Energy Management in Microgrids Using Model-Free Deep Reinforcement Learning Approach

  • Journal: IEEE Access

  • Authors: O.A. Talab & I. Avci

  • Publication Year: 2025

  • DOI: 10.1109/ACCESS.2025.3525843

  • Summary: This study presents a model-free deep reinforcement learning approach for real-time energy management in microgrids. Utilizing an actor-critic-based Deep Deterministic Policy Gradient (DDPG) algorithm, the method adapts dynamically to changing system conditions, reducing operational costs and power losses. Numerical simulations demonstrate a 3.19% cost reduction compared to Dueling DQN and a 4% reduction compared to DQN. Directory of Open Access Journals+1Directory of Open Access Journals+1ResearchGate+1acikerisim.karabuk.edu.tr+1acikerisim.karabuk.edu.tr+1Directory of Open Access Journals+1

2. Cybersecurity Defence Mechanism Against DDoS Attack with Explainability

  • Journal: Mesopotamian Journal of CyberSecurity

  • Authors: Alaa Mohammad Mahmood & Dr. Öğr. Üyesi İsa Avcı

  • Publication Year: 2024

  • DOI: 10.58496/MJCS/2024/027

  • Summary: This paper proposes a cybersecurity defense mechanism against Distributed Denial of Service (DDoS) attacks, incorporating explainability to enhance understanding and trust in the detection process. unis.karabuk.edu.tr+1ResearchGate+1

3. A Novel Hybrid Model Detection of Security Vulnerabilities in Industrial Control Systems and IoT Using GCN+LSTM

  • Journal: IEEE Access

  • Authors: Murat Koca & İsa Avcı

  • Publication Year: 2024

  • DOI: 10.1109/ACCESS.2024.3466391

  • Summary: This research introduces a hybrid model combining Graph Convolutional Networks (GCN) and Long Short-Term Memory (LSTM) networks to detect security vulnerabilities in Industrial Control Systems (ICS) and the Internet of Things (IoT). The model achieves a detection accuracy of 99.99% by analyzing spatial and temporal data flows, effectively identifying and mitigating deceptive connectivity disruptions. unis.karabuk.edu.tr+1ResearchGate+1ResearchGate+1Directory of O

Conclusion

Assistant Professor İsa Avcı is a highly active and promising researcher in the fields of cybersecurity, AI, IoT, and deep learning, with a strong commitment to applied research and mentorship. His work demonstrates a wide scope of interdisciplinary engagement, practical impact, and national significance.

Dharmapuri Siri | Computer Science | Best Researcher Award

Dr. Dharmapuri Siri | Computer Science | Best Researcher Award 

Associate Professor, at Gokaraju Rangaraju Institute of Engineering and Technology, India.

Dr. D. Siri is an accomplished academician and researcher specializing in Computer Science and Engineering. Currently serving as an Associate Professor at Gokaraju Rangaraju Institute of Engineering and Technology, Hyderabad, she has over 14 years of teaching experience. Her academic journey includes a B.Tech in Information Technology and an M.Tech in Computer Science and Engineering from JNTU, Hyderabad. She earned her Ph.D. from JJT University, Rajasthan, focusing on software quality enhancement through machine learning techniques. Dr. Siri has contributed significantly to research in areas such as machine learning, deep learning, software engineering, and IoT. Her work has been published in esteemed journals and presented at international conferences. Beyond her academic pursuits, she holds a patent for a “Vehicle with Smart Biometric Device,” reflecting her innovative approach to technology. Her dedication to education and research continues to inspire students and colleagues alike.PMC+1ScienceDirect+1ScienceDirect

Professional Profile

Scopus

ORCID

Google Scholar

🎓 Education

Dr. D. Siri’s educational background is rooted in a strong foundation in computer science and engineering. She completed her B.Tech in Information Technology from Sreenivas Reddy Institute of Technology, Nizamabad, under JNTU, Hyderabad, with a 61.36% score. Pursuing further specialization, she obtained an M.Tech in Computer Science and Engineering from TRR Engineering College, Patancheru, achieving a 65% score. Her academic excellence culminated in a Ph.D. from JJT University, Rajasthan, in 2022, where her research focused on developing a bug prediction model for software quality using machine learning techniques. This comprehensive educational journey equipped Dr. Siri with the knowledge and skills to contribute meaningfully to the field of computer science and engineering.

💼 Experience

Dr. D. Siri’s professional experience spans over 14 years in the field of computer science and engineering education. She began her teaching career as an Assistant Professor in the Department of Information Technology at TRR Engineering College, Inole, Patancheru, from 2008 to 2013. Subsequently, she served as an Assistant Professor in the Department of Computer Science and Engineering at TRR College of Engineering, Inole, Patancheru, from 2013 to 2017. Her journey continued at Malla Reddy Engineering College for Women, Dulapally, Hyderabad, where she worked as an Assistant Professor from 2017 to 2019. Currently, Dr. Siri holds the position of Associate Professor in the Department of Computer Science Engineering at Gokaraju Rangaraju Institute of Engineering and Technology, Hyderabad, since 2024. Throughout her career, she has been dedicated to imparting knowledge and fostering academic growth among students.

🔬 Research Interests

Dr. D. Siri’s research interests lie at the intersection of machine learning, deep learning, software engineering, and Internet of Things (IoT) applications. She has a keen interest in developing intelligent systems that enhance software quality and automate complex processes. Her work includes the development of bug prediction models using machine learning techniques, which aim to improve software reliability and performance. Additionally, Dr. Siri explores the application of deep learning models in various domains, such as underwater imagery for fish species identification and human activity recognition using accelerometer data. Her interdisciplinary approach seeks to address real-world challenges through innovative technological solutions.

🏆 Awards

Dr. D. Siri’s contributions to academia and research have been recognized through various accolades. Her innovative research in machine learning and software engineering has earned her invitations to present at international conferences, including the International Conference on Trends Recent Global Changes in Engineering, Management, Pharmacy, and Science (ICTEMPS-2018) and the International Conference on Recent Challenges in Engineering, Management, Science, and Technology (ICEMST-2021). These platforms have provided her with opportunities to share her insights and collaborate with fellow researchers. Furthermore, her work has been published in reputable journals such as IEEE Access and Heliyon, reflecting the impact and quality of her research. Dr. Siri’s dedication to advancing knowledge and fostering academic excellence continues to be acknowledged by the academic community.

📚 Top Noted Publications

Dr. D. Siri has an extensive publication record in esteemed journals and conferences, contributing significantly to the fields of machine learning, deep learning, and software engineering. Notable among her journal publications are:

1. Analyzing Public Sentiment on the Amazon Website: A GSK-Based Double Path Transformer Network Approach for Sentiment Analysis

  • Published in: IEEE Access, 2024

  • DOI: 10.1109/ACCESS.2024.3278901

  • Summary: This study introduces a novel transformer-based model for sentiment analysis of Amazon product reviews. The model employs a GSK-based double path architecture to capture both global and local contextual information, enhancing the accuracy of sentiment classification. The approach demonstrates significant improvements over traditional methods in processing and interpreting user sentiments.

2. Segmentation Using the IC2T Model and Classification of Diabetic Retinopathy Using the Rock Hyrax Swarm-Based Coordination Attention Mechanism

  • Published in: IEEE Access, 2024

  • DOI: 10.1109/ACCESS.2024.3278902

  • Summary: This paper presents an integrated approach for diabetic retinopathy detection. It utilizes the IC2T model for effective image segmentation and the Rock Hyrax Swarm-Based Coordination Attention Mechanism for precise classification. The proposed method enhances the accuracy and reliability of automated diabetic retinopathy screening systems.

3. Enhanced Deep Learning Models for Automatic Fish Species Identification in Underwater Imagery

  • Published in: Heliyon, August 2024

  • DOI: 10.1016/j.heliyon.2024.e35217

  • Summary: This research develops a two-stage deep learning framework for identifying fish species in underwater images. The first stage applies an Unsharp Mask Filter (UMF) for image preprocessing, followed by a Region-based Fully Convolutional Network (R-FCN) for fish detection. The second stage enhances classification accuracy using an improved ShuffleNetV2 model integrated with a Squeeze and Excitation (SE) module, optimized by the Enhanced Northern Goshawk Optimization (ENGO) algorithm. The models achieve high performance metrics, including 99.94% accuracy.ScienceDirect+2PubMed+2PMC+2PubMed+2PMC+2ScienceDirect+2

4. Segment-Based Unsupervised Deep Learning for Human Activity Recognition Using Accelerometer Data and SBOA-Based Channel Attention Networks

  • Published in: International Research Journal of Multidisciplinary Technovation, 2024

  • DOI: 10.54392/irjmt2461

  • Summary: This paper proposes an unsupervised deep learning approach for human activity recognition (HAR) using accelerometer data. The method incorporates segment-based SimCLR with Segment Feature Decorrelation (SDFD) and utilizes the Secretary Bird Optimization Algorithm (SBOA) to enhance performance. The Channel Attention with Spatial Attention Network (CASANet) is employed to extract key features and spatial dependencies, achieving an average F1 score of 98% on the Mhealth and PAMAP2 datasets.Asian Research Association

Conclusion

Dr. D. Siri demonstrates strong potential and recent momentum in research, particularly through high-volume, multidisciplinary publications and engagement with emerging technologies. Her IEEE publications, patent, and applied research themes strengthen her candidacy.

However, for a highly competitive Best Researcher Award, she would benefit from:

More indexed journal publications,

Evidence of citations/impact,

Greater leadership in research initiatives (e.g., funded projects or Ph.D. guidance).

Computer Science

Introduction to Computer Science:

Computer Science is a dynamic and rapidly evolving field that explores the theory, design, development, and application of computer systems and software. It encompasses a wide range of topics, from programming and algorithms to artificial intelligence and cybersecurity. Computer scientists play a crucial role in shaping the digital world, advancing technology, and solving complex problems.

Artificial Intelligence (AI):

AI focuses on creating intelligent machines capable of learning, reasoning, and problem-solving. It includes areas like machine learning, natural language processing, and computer vision.

Software Development:

Software development involves designing, coding, testing, and maintaining software applications. It’s at the core of creating computer programs and applications for various purposes.

Data Science and Big Data:

Data science deals with extracting valuable insights from large and complex datasets. It includes data analysis, data mining, and machine learning to make data-driven decisions.

Cybersecurity:

Cybersecurity is essential for protecting computer systems, networks, and data from cyber threats and attacks. It encompasses areas like network security, encryption, and ethical hacking.

Computer Graphics and Game Development:

This field focuses on creating visual and interactive experiences in applications, games, and simulations. It involves 2D and 3D graphics, animation, and virtual reality.

Computer Science is at the forefront of technological innovation, influencing every aspect of our lives, from communication and entertainment to healthcare and finance. Exploring these subtopics enables professionals and researchers to harness the power of computers and advance the capabilities of technology.