Vijay Srinivas Tida | Computer Science | Excellence in Research

Dr. Vijay Srinivas Tida | Computer Science | Excellence in Research

Dr. Vijay Srinivas Tida, College of St Benedict and St John’s university, United States

Dr. Vijay Srinivas Tida is a dedicated researcher and academician currently serving as a Tenure-track Assistant Professor at the College of St. Benedict and St. John’s University, Minnesota. With a strong foundation in Electronics, Computer Engineering, and Deep Learning, he has developed a notable reputation in the fields of differential privacy, federated learning, and FPGA hardware acceleration. His Ph.D. dissertation at the University of Louisiana at Lafayette explored optimizing transpose convolution operations—a critical component in CNNs. Dr. Tida’s academic journey has taken him through top institutions including Illinois Institute of Technology and Koneru Lakshmaiah University, consistently achieving high academic honors. He has actively contributed to privacy-preserving machine learning for healthcare and has authored several journal articles and conference papers. Passionate about teaching, he also mentors students in deep learning and hardware systems, making him a valuable contributor to modern computer science education.

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Suitability for Research for Excellence in Research Award: Vijay Srinivas Tida

Vijay Srinivas Tida stands out as a highly deserving candidate for the Research for Excellence in Research Award due to his exceptional contributions in the fields of deep learning optimization, differential privacy, federated learning, and hardware accelerator design. His academic journey reflects consistent excellence, culminating in a Ph.D. in Computer Engineering with a remarkable GPA of 3.9/4.0 from the University of Louisiana at Lafayette. Complemented by a strong foundation in Electrical and Computer Engineering from Illinois Institute of Technology and Electronics and Communication Engineering from Koneru Lakshmaiah University, his educational background is solid and highly relevant.

Throughout his academic and professional career, Vijay has demonstrated a commitment to pioneering research, particularly focusing on the optimization of deep convolutional neural networks, privacy-preserving machine learning models, and hardware security. His doctoral dissertation on optimizing transpose convolution operations and his multiple research projects emphasize innovative approaches that enhance the efficiency and security of AI models, which are critical in today’s technology-driven healthcare and security domains.

🎓 Education

Dr. Vijay Srinivas Tida earned his Ph.D. in Computer Engineering from the University of Louisiana at Lafayette (2018–2023), under the mentorship of Dr. Sonya Hsu and Dr. Xiali Hei, graduating with an impressive GPA of 3.9/4.0. His dissertation focused on optimizing transpose convolution operations for efficient deep learning computation. Prior to this, he completed his Master’s degree in Electrical and Computer Engineering from Illinois Institute of Technology (2016–2018), working with Dr. Erdal Oruklu and maintaining a GPA of 3.8/4.0. He began his academic journey with a Bachelor of Science in Electronics and Communication Engineering from Koneru Lakshmaiah University (2011–2015), guided by Dr. Nalluri Siddaiah, achieving a perfect GPA of 4.0/4.0. His academic background reflects a blend of theoretical knowledge and practical experience in machine learning, hardware design, and optimization algorithms, which forms the core of his current research and teaching interests.

💼 Professional Experience

Dr. Tida’s professional trajectory spans across academic teaching and innovative research. He currently holds the position of Assistant Professor at the College of St. Benedict and St. John’s University, where he teaches and mentors students in computer science. Previously, he served as a Postdoctoral Research Assistant at the University of Louisiana at Lafayette (May–Aug 2023), contributing to projects in privacy-preserving AI and FPGA-based accelerators. From 2018 to 2022, he was a Graduate Teaching Assistant and Lab Instructor, where he taught courses including Computer Architecture and Computer Engineering Labs. He also held Research Assistant roles across institutions like Illinois Institute of Technology and Koneru Lakshmaiah University, engaging in high-impact projects on energy harvesting, sensor security, and neural networks. Dr. Tida’s teaching is complemented by his commitment to community outreach, where he has conducted programming workshops for high school students and offered deep learning sessions to Ph.D. candidates.

🏅 Awards and Recognition

Dr. Tida has been the recipient of numerous honors recognizing both his academic excellence and research contributions. Notably, in 2024, he received $1,750 to attend the prestigious SIGCSE Technical Symposium on Computer Science Education. He was awarded a $6,500 Summer Collaborative Research Grant and $1,000 by the Faculty Development Research Committee for conference travel. In 2023, the College of St. Benedict and St. John’s University provided him with high-performance computing resources worth $16,000. During his doctoral studies, he earned a Dissertation Completion Fellowship and secured consistent Graduate Teaching and Research Assistantships from 2018 to 2022. These accolades reflect his capabilities in leading cutting-edge projects and fostering academic excellence. His continued association with academic conferences such as HICSS and ACM further underscores his recognition within the computing research community.

🌍 Research Skill On Computer Science

Dr. Tida’s research skills encompass a dynamic combination of deep learning, optimization, hardware acceleration, and data privacy. His expertise lies in the development and optimization of Convolutional Neural Networks (CNNs), especially with transpose convolution operations—a subject central to his doctoral work. His focus on Differential Privacy and Federated Learning reflects his commitment to secure and ethical AI, particularly for healthcare data applications. He is adept at hardware-level design using Field Programmable Gate Arrays (FPGAs), enabling real-time and efficient AI computations. With a solid command over Natural Language Processing, he has also published in areas like fake news detection and spam classification using models such as BERT. Dr. Tida’s proficiency spans Python, Arduino C, and hardware descriptive languages, supported by his consistent role in mentoring and peer reviewing. His integration of theoretical algorithms with practical systems development defines his impactful presence in modern computational research.

📖 Publication Top Notes

  • Universal Spam Detection using Transfer Learning of BERT Model
    Author(s): VSTDS Hsu
    Citation: 89
    Year: 2022

  • A reliable diabetic retinopathy grading via transfer learning and ensemble learning with quadratic weighted kappa metric
    Author(s): SV Chilukoti, L Shan, VS Tida, AS Maida, X Hei
    Citation: 45
    Year: 2024

  • Transduction shield: A low-complexity method to detect and correct the effects of EMI injection attacks on sensors
    Author(s): Y Tu, VS Tida, Z Pan, X Hei
    Citation: 38
    Year: 2021

  • Design and Analysis of High Efficient UART on Spartran-6 and Virtex-7 Devices
    Author(s): KH Kishore, CA Kumar, TV Srinivas, GV Govardhan, CNP Kumar, …
    Citation: 20
    Year: Not specified (likely between 2015–2018 based on journal timeline)

  • A unified training process for fake news detection based on fine-tuned BERT model
    Author(s): VS Tida, S Hsu, X Hei
    Citation: 10
    Year: 2022

  • Privacy-Preserving Deep Learning Model for Covid-19 Disease Detection
    Author(s): Vijay Srinivas Tida, Sai Venkatesh Chilukoti, Sonya H. Y. Hsu, Xiali Hei
    Citation: 8
    Year: 2023

  • Kernel-Segregated Transpose Convolution Operation
    Author(s): Vijay Srinivas Tida, Sai Venkatesh Chilukoti, Sonya H. Y. Hsu, Xiali Hei
    Citation: 5
    Year: 2023

  • Deep Learning Approach for Protecting Voice-Controllable Devices From Laser Attacks
    Author(s): VS Tida, R Shah, X Hei
    Citation: 2
    Year: 2022

  • Unified Kernel-Segregated Transpose Convolution Operation
    Author(s): VS Tida, MI Hossen, L Shan, SV Chilukoti, S Hsu, X Hei
    Citation: Not listed
    Year: 2025

  • Differentially private fine-tuned NF-Net to predict GI cancer type
    Author(s): SV Chilukoti, IH Md, L Shan, VS Tida, X Hei
    Citation: Not listed
    Year: 2025

Jordi Rodeiro | Computer Science | Best Researcher Award

Mr. Jordi Rodeiro | Computer Science | Best Researcher Award

 👤 Mr. Jordi Rodeiro, Institut de Recerca Sant Joan de Déu, Spain

Jordi Rodeiro Boliart is an accomplished International Computer Engineering and Sports Science graduate with a Master’s in Data Science and ongoing doctoral studies in Artificial Intelligence at La Salle Bonanova, Barcelona. Jordi is a dynamic professional blending a robust academic foundation with practical expertise. He is dedicated to leveraging data science and AI in health research, particularly autism prediction. With a deep passion for problem-solving and innovation, Jordi has conducted significant work in basketball analytics, biomedical data analysis, and medical imaging. His projects have included building Python tools, web applications, and dashboards that streamline decision-making. Jordi’s multilingual fluency in Catalan, Spanish, and English (C1) and his adaptability, critical thinking, and leadership skills underscore his commitment to excellence. As a mental health researcher, programming professor, and basketball coach, Jordi excels at interdisciplinary collaboration, fostering innovation, and making meaningful contributions to both academia and real-world applications.

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🌟  Summary of Suitability for the Award

Jordi Rodeiro Boliart demonstrates an exceptional combination of academic excellence, multidisciplinary expertise, and impactful research, making him a strong candidate for the Research for Best Researcher Award. His academic journey spans multiple disciplines, including International Computer Engineering, Sports Science, and Data Science, culminating in a PhD in Artificial Intelligence and Autism Prediction. His diverse background equips him with a unique perspective in integrating technology, data science, and health research to address complex societal challenges.

Jordi’s research outputs reflect significant contributions to both applied and theoretical domains. Notably, his final master’s thesis focused on analyzing basketball data to enhance coaching strategies, while his degree project in the biomedical field led to a published scientific paper.

🎓 Education

Jordi Rodeiro Boliart boasts an impressive academic journey beginning with a dual degree in International Computer Engineering (La Salle, UPC) and Sports Science (INEFC Barcelona, UB). He further honed his expertise with a Master’s in Data Science (La Salle Bonanova, Barcelona), culminating in award-winning academic recognition. Currently pursuing a Ph.D. in Artificial Intelligence with a focus on autism prediction, Jordi demonstrates a commitment to cutting-edge research. His educational highlights include a final master’s thesis analyzing basketball data to enhance coaching strategies and a degree project in metabolomics published in a peer-reviewed journal. Jordi has also contributed to projects in medical imaging, such as using x-rays for illness detection. His academic journey is enriched by attending technology seminars at globally renowned institutions like Harvard and MIT, along with specialized training in leadership and organizational behavior. Jordi’s blend of technical and interdisciplinary studies defines his innovative, research-oriented career trajectory.

💼   Professional Experience

Jordi Rodeiro Boliart has a versatile professional background spanning research, teaching, and leadership. As a mental health researcher at Parc Sanitari Sant Joan de Déu, Jordi applies statistics and data science to critical health data, contributing to global assemblies and conferences. He serves as a university professor at La Salle Barcelona, teaching programming, mathematics, and IT software. As a data science intern at Sener, Jordi specialized in Power BI dashboards and analyzing corporate metrics. His engineering research internship included creating biomedical tools for metabolomic analysis, leading to a published paper. Jordi’s sports background complements his tech expertise, with roles as a basketball coach and coordinator, focusing on player development and team strategy. His earlier internships at Alfred Smart Systems and other engineering roles solidified his Python and gateway programming skills. Jordi’s diverse experiences exemplify his ability to integrate technology, data science, and education for impactful contributions.

🏅Awards and Recognitions

Jordi Rodeiro Boliart’s contributions have been widely recognized through various awards and honors. He received the prestigious Malaspina Award as part of the Empower consortium in 2023 and was a HackB finalist in the same year. Jordi was acknowledged with an academic excellence certificate for the best master’s record in Data Science (2023) and emerged as the LS Future Lab – Impact Challenge Hackathon winner in 2022. He represented his university as a National Model United Nations delegate in New York (2022) and participated in an international cooperation project in Perú. Jordi’s outstanding research on metabolomics earned him the opportunity to present at the Metabolomics 2022 conference. Beyond academia, Jordi is a certified Level II basketball coach, an FCBQ leadership trainee, and a master-certified Gannon Baker basketball coach. These accolades reflect his exceptional abilities in technical innovation, leadership, and interdisciplinary collaboration.

🌍  Research Skills On Computer Science

Jordi Rodeiro Boliart excels in applying advanced research methodologies to interdisciplinary challenges. His expertise includes data science, artificial intelligence, and object-oriented programming. Jordi has developed sophisticated tools for biomedical research, basketball analytics, and mental health studies. His doctoral research focuses on autism prediction through AI, combining statistical analysis and data visualization techniques. Jordi’s proficiency spans Python, MATLAB, MySQL, and Power BI, with skills in machine learning and medical image processing. He has designed Python programs to predict basketball outcomes, web apps for metabolomics, and diagnostic tools for x-rays. Jordi’s critical thinking, decision-making, and integrity define his research approach. His ability to present findings, such as at the Metabolomics 2022 conference, underscores his communication and analytical skills. Jordi’s research bridges academia and practical applications, demonstrating a commitment to addressing complex problems in health and technology.

📖 Publication Top Notes

1. The longitudinal relationship among physical activity, loneliness, and mental health in middle-aged and older adults: Results from the Edad con Salud cohort
  • Authors: Jordi Rodeiro, Beatriz Olaya, Josep Maria Haro, Aina Gabarrell-Pascuet, José Luis Ayuso-Mateos, Lea Francia, Cristina Rodríguez-Prada, Blanca Dolz-del-Castellar, Joan Domènech-Abella
  • Year: 2024
  • Citation: DOI: 10.1016/j.mhpa.2024.100667
2. The association of material deprivation with major depressive disorder and the role of loneliness and social support: A cross-sectional study
  • Authors: Joan Domènech-Abella, Carles Muntaner, Jordi Rodeiro, Aina Gabarrell-Pascuet, Josep Maria Haro, José Luis Ayuso-Mateos, Marta Miret, Beatriz Olaya
  • Year: 2024
  • Citation: DOI: 10.1016/j.jad.2024.09.071
3. Feasibility of an occupational e-mental health intervention for enhancing workplace mental health (EMPOWER RCT): Effectiveness and lessons learned (Preprint)
  • Authors: Carlota de Miquel, Christina M. Van der Feltz-Cornelis, Leona Hakkaart-van Roijen, Dorota Merecz-Kot, Marjo Sinokki, Jordi Rodeiro, Jennifer Sweetman, Kaja Staszewska, Ellen Vorstenbosch, Daniele Porricelli et al.
  • Year: 2024
  • Citation: DOI: 10.2196/preprints.66041
4. Trends of use of drugs with suggested shortages and their alternatives across 52 real-world data sources and 18 countries in Europe and North America
  • Authors: Marta Pineda-Moncusí, Alexandros Rekkas, Álvaro Martínez Pérez, Angela Leis, Carlos Lopez Gomez, Eric Fey, Erwin Bruninx, Filip Maljković, Francisco Sánchez-Sáez, Jordi Rodeiro et al.
  • Year: 2024
  • Citation: DOI: 10.1101/2024.08.28.24312695
5. CloMet: A Novel Open-Source and Modular Software Platform That Connects Established Metabolomics Repositories and Data Analysis Resources
  • Authors: Jordi Rodeiro, Ester Vidaña-Vila, Joan Navarro, Roger Mallol
  • Year: 2023

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