laiba Sultan Dar | Time series analysis | Best Researcher Award

Ms. laiba Sultan Dar | Time series analysis | Best Researcher Award 

Phd Student at Abdul wali khan university | Pakistan

Ms. Laiba Sultan Dar is a dedicated researcher and Ph.D. scholar at Abdul Wali Khan University, specializing in time series analysis and decomposition techniques. Her academic journey is marked by a strong foundation in applied mathematics and data analytics, enabling her to contribute effectively to statistical modeling, forecasting, and computational research. She has developed expertise in identifying patterns and trends within large datasets, applying modern analytical frameworks to address complex problems in areas such as economics, climate studies, and system optimization. Her research integrates both theoretical and empirical approaches, focusing on improving the precision and interpretability of time-dependent models. Through her doctoral studies, she has actively engaged in institutional research projects and contributed to scholarly publications in recognized international journals, including those indexed by Scopus and ScienceDirect. Her work demonstrates a balance between mathematical rigor and practical application, particularly in designing adaptive models for real-world data forecasting. In addition to her academic pursuits, Ms. Laiba Sultan Dar has shown growing involvement in research collaborations and interdisciplinary studies that bridge statistical science and technological innovation. Her ability to combine methodological sophistication with computational efficiency has made her research relevant to emerging domains such as artificial intelligence-driven data analysis and predictive modeling. She continuously enhances her research capabilities by incorporating advanced tools and techniques, fostering a deeper understanding of time series dynamics. With a citation index reflecting the recognition of her early scholarly efforts, she remains committed to producing impactful research that advances statistical methodologies and contributes to data-driven decision-making. Her intellectual curiosity and analytical acumen position her as a promising researcher in quantitative sciences. Ms. Laiba Sultan Dar’s long-term goal is to strengthen the integration of mathematical modeling with applied sciences, promoting innovation and scientific development in her field. Her commitment to excellence, collaborative mindset, and ongoing pursuit of research excellence make her a deserving candidate for recognition among emerging scholars in data analytics and statistical research.

Featured Publications:

  • Dar, L., Akmal, A., Naseem, M. A., & Khan, K. U. D. (2011). Impact of stress on employees’ job performance in the business sector of Pakistan. Global Journal of Management and Business Research, 11(6), 1–4.

  • Dar, L. A., Naseem, M. A., Rehman, R. U., & Niazi, G. S. (2011). Corporate governance and firm performance: A case study of Pakistan oil and gas companies listed in Karachi Stock Exchange. Global Journal of Management and Business Research, 11(8), 1–10.

  • Malik, M., Wan, D., Dar, L., Akbar, A., & Naseem, M. A. (2014). The role of work-life balance in job satisfaction and job benefit. Journal of Applied Business Research (JABR), 30(5), 1627–1638.

  • Dar, L. S., Aamir, M., Khan, Z., Bilal, M., Boonsatit, N., & Jirawattanapanit, A. (2022). Forecasting crude oil price volatility by reconstructing EEMD components using ARIMA and FFNN models. Frontiers in Energy Research, 10, 991602.

  • Dar, L. S., Aamir, M., Bibi, S., & Bilal, M. (2025). A novel robust adaptive decomposition approach for solar energy potential using atmospheric transparency and UV radiation indicators. Journal of Radiation Research and Applied Sciences, 18(4), 101946.

  • Dar, L. S., Aamir, M., Hamraz, M., Faiz, N., Emam, W., & Tashkandy, Y. (2025). A robust adaptive signal decomposition method for enhanced mode extraction in financial time series. IEEE Access.

  • Saleem, Q., Dar, L., Shahid, M., & Rana, S. (2012). A quantitative analysis of the role of human resource development in economic growth in Pakistan. International Journal of Management Sciences and Business Research.

  • Bilal, M., Aamir, M., Abdullah, S., Mahmood, N., Khalil, U., Khalid, N., Ahmed, M., & Dar, L. (2022). Assessment of the COVID-19 pandemic’s impact on gasoline prices in Pakistan. VFAST Transactions on Mathematics, 10(2), 52–67.

Weichen Zhang | Deep Learning | Best Researcher Award

Dr. Weichen Zhang | Deep Learning | Best Researcher Award

Postdoc Researcher at University of Sydney, Australia.

Dr. Weichen Zhang 🎓 is a passionate AI Researcher and Engineer specializing in 2D/3D visual applications, currently working as a Postdoctoral Researcher at the University of Sydney 🇦🇺. With a strong academic background and over 8 years of hands-on experience, he has contributed significantly to deep learning, point cloud analysis, and 3D human body reconstruction 🤖. Formerly the R&D Team Lead at Bodymapp Pty Ltd, he led innovations in AI, SLAM, and AWS MLOps pipelines ☁️. His work is well-recognized with publications in top-tier venues like CVPR, T-PAMI, and T-IP, and two U.S. patents for AI technologies 🏆.

Professional Profile:

ORCID

Google Scholar

Suitability for Best Researcher Award – Dr. Weichen Zhang

Dr. Weichen Zhang is an outstanding candidate for the Best Researcher Award due to his groundbreaking contributions to the fields of AI, 2D/3D computer vision, and deep learning. With over 8 years of rich academic and industrial experience, he has demonstrated a rare combination of technical depth, publication excellence, and innovation in applied AI. His research has made substantial impact in areas such as point cloud analysis, 3D human body reconstruction, SLAM, and domain adaptation, positioning him as a rising star in AI and computer vision.

📘 Education

  • 🎓 Ph.D. in Deep Transfer Learning, University of Sydney, Australia (2017–2021)

  • 🎓 B.I.T. (Hons Class I), University of Sydney, Australia (2013–2016)

  • 🎓 High School, Affiliated to Nanjing Normal University, China (2009–2012)

💼 Experience

  • 🧠 Postdoctoral Research Associate, University of Sydney (Sep 2024–Present)

  • 🔬 R&D Team Lead & Research Engineer, Bodymapp Pty Ltd (May 2021–Aug 2024)

  • 👨‍🏫 Academic Tutor, University of Sydney (Jul 2019–Dec 2019)

🛠️ Professional Development 

Dr. Zhang continually evolves his professional skillset through advanced research collaborations 🤝, cross-disciplinary project leadership, and active participation in academic publishing 📚. His professional growth is marked by practical application of machine learning, neural networks, DevOps, and 3D vision technologies across academia and industry. With a strong command of programming languages like Python, C++, and MATLAB, he has built scalable AI systems and AWS MLOps pipelines ☁️. He also contributes to academic instruction, tutoring deep learning and transfer learning concepts. Zhang’s engagement with top research institutions and conferences keeps him at the cutting edge of AI innovation 🚀.

🧪 Research Focus Area

Dr. Weichen Zhang’s research is focused on 2D/3D visual understanding, including point cloud analysis, 3D mesh reconstruction, SLAM, and deep learning model generalization 🔍. His projects span cross-domain recognition, domain adaptation, and privacy-preserving avatar reconstruction technologies 👤. He integrates supervised and unsupervised learning methods to solve complex problems in autonomous driving 🚗, human body tracking, and forestry analytics 🌳. Zhang’s contributions are reflected in CORE A* journals and conferences, showing his commitment to pushing the boundaries of scalable, multimodal, and multi-sensor visual systems in real-world applications 📊.

🏅 Awards and Honours

  • 🥇 Research Training Program (RTP) Scholarship, University of Sydney (2017–2021)

  • 🎖️ Norman I. Price Scholarship, University of Sydney (2018–2019)

  • 🌟 CVPR 2018 Paper Spotlight, Salt Lake City, USA (2018)

  • 🏆 USYD-CSIRO Summer Research Scholarship, University of Sydney (2016–2017)

Publication Top Notes

📘 1. Collaborative and Adversarial Network for Unsupervised Domain Adaptation

  • Authors: W. Zhang, W. Ouyang, W. Li, D. Xu

  • Published in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)

  • Year: 2018

  • Cited by: 628

  • Summary: This paper presents a novel framework combining collaborative learning and adversarial training to improve performance in unsupervised domain adaptation. It effectively aligns feature distributions between source and target domains.

📘 2. Model Compression using Progressive Channel Pruning

  • Authors: J. Guo, W. Zhang, W. Ouyang, D. Xu

  • Published in: IEEE Transactions on Circuits and Systems for Video Technology

  • Year: 2020

  • Cited by: 74

  • Summary: The authors propose a progressive pruning method that reduces the number of channels in convolutional neural networks, enabling model compression with minimal accuracy loss. The method is data-driven and layer-wise.

📘 3. SRDAN: Scale-aware and Range-aware Domain Adaptation Network for Cross-dataset 3D Object Detection

  • Authors: W. Zhang, W. Li, D. Xu

  • Published in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)

  • Year: 2021

  • Cited by: 54

  • Summary: SRDAN is a domain adaptation network designed for 3D object detection. It introduces scale-aware and range-aware components to address distribution shifts between datasets, improving detection across varying sensor configurations.

📘 4. Progressive Modality Cooperation for Multi-modality Domain Adaptation

  • Authors: W. Zhang, D. Xu, J. Zhang, W. Ouyang

  • Published in: IEEE Transactions on Image Processing, Vol. 30, pp. 3293–3306

  • Year: 2021

  • Cited by: 24

  • Summary: This work proposes a progressive learning scheme where different modalities (e.g., RGB and depth) are learned in stages to enhance domain adaptation. The model progressively integrates information, improving generalization.

📘 5. 3D Hand Pose Estimation with Disentangled Cross-Modal Latent Space

  • Authors: J. Gu, Z. Wang, W. Ouyang, W. Zhang, J. Li, L. Zhuo

  • Published in: IEEE Winter Conference on Applications of Computer Vision (WACV), pp. 391–400

  • Year: 2020

  • Cited by: 24

  • Summary: This paper introduces a cross-modal learning framework that disentangles modality-specific and shared features, enabling accurate 3D hand pose estimation from multi-view data.

Conclusion

Dr. Zhang’s sustained contributions to cutting-edge AI research, proven innovation, and recognized leadership in both academia and industry make him an ideal recipient of the Best Researcher Award. His visionary work continues to push the boundaries of what is possible in machine learning and computer vision, with real-world impact and academic distinction.