Iliyas Khan | Statistics | Best Researcher Award

Dr. Iliyas Khan | Statistics | Best Researcher Award

Teaching Assistance at Universiti Teknologi PETRONAS, Malaysia

Dr. Iliyas Karim Khan is a dedicated researcher specializing in machine learning, statistical modeling, forecasting, and big data analysis. He holds a Ph.D. from Universiti Teknologi PETRONAS (UTP), Malaysia, along with advanced degrees in statistics from Peshawar University, Pakistan. With a strong publication record in Q1 journals, his research focuses on optimizing clustering algorithms, particularly in K-means clustering and data science applications. His expertise extends to programming and statistical tools such as Python, SPSS, Stata, and EViews. Dr. Khan has gained extensive teaching experience, serving as a Teaching Assistant at UTP and a Subject Specialist in Pakistan. He was recognized with a Publication Recognition Achievement (2024) at UTP, underscoring his research contributions. His work is instrumental in improving data-driven decision-making and computational efficiency, making him a valuable asset in the academic and research community. His commitment to innovation and education positions him as a promising leader in his field.

Professional Profile 

Google Scholar
Scopus Profile

Education

Dr. Iliyas Karim Khan has a strong academic background in statistics and data science. He earned his Ph.D. in 2024 from Universiti Teknologi PETRONAS (UTP), Malaysia, focusing on optimizing machine learning algorithms. Prior to that, he completed an M.Phil. (2016) and M.Sc. (2014) in Statistics from Peshawar University, Pakistan, and a B.Sc. in Statistics (2012) from SBBU Sheringhal, Upper Dir, Pakistan. His foundational studies in science and engineering were completed at BISE Peshawar, along with a B.Ed. (2015) for pedagogical training. His educational journey reflects his commitment to advanced research in big data analysis, forecasting, and statistical modeling. Throughout his studies, he has demonstrated exceptional analytical skills, contributing to high-impact research in data clustering and computational efficiency. His academic achievements have positioned him as a promising researcher in the field of machine learning and statistical analytics, making significant contributions to data science methodologies.

Professional Experience

Dr. Iliyas Karim Khan has gained extensive teaching and research experience across multiple institutions. He worked as a Teaching Assistant at Universiti Teknologi PETRONAS (UTP), Malaysia, where he was actively involved in data science research and statistical analysis. In Pakistan, he served as a Subject Specialist at GHSS Bang Chitral for four years, strengthening his expertise in applied statistics and data analysis. His teaching career also includes one year at Abbottabad University of Science and Technology, where he mentored students in statistical modeling and machine learning techniques. Additionally, he completed an internship at the University of Peshawar and taught at Darban Degree College, Chitral. His experience encompasses curriculum development, student mentoring, and advanced research in statistical computing, making him an accomplished educator and researcher. His hands-on expertise in Python, SPSS, Stata, and EViews further enhances his ability to train future data scientists and statisticians.

Research Interest

Dr. Iliyas Karim Khan’s research revolves around machine learning, big data analytics, statistical modeling, and forecasting. His primary focus is on clustering algorithms, particularly enhancing the K-means clustering method for improved efficiency and accuracy. His work addresses key challenges in data science, such as non-spherical data, outlier handling, and optimal cluster selection, which have significant implications for AI-driven decision-making. Additionally, he explores computational time optimization and statistical accuracy in clustering techniques, contributing to the advancement of data-driven methodologies. His studies extend to forecasting models, applied statistical techniques, and real-world big data applications. Through numerous Q1 journal publications, he has proposed innovative solutions for refining data science models. His research is highly relevant in industries reliant on machine learning, artificial intelligence, and predictive analytics, positioning him as a key contributor to the evolution of data-centric technologies and computational intelligence.

Awards and Honors

Dr. Iliyas Karim Khan’s academic excellence and research contributions have been recognized through prestigious accolades. In 2024, he received the “Publication Recognition Achievement” award from Universiti Teknologi PETRONAS (UTP), Malaysia, honoring his impactful research in machine learning and statistical analysis. His Q1 journal publications in high-impact journals demonstrate his ability to produce innovative and widely acknowledged research. Additionally, his contributions to data clustering and computational efficiency have been well-received within the academic and research communities. His work on addressing K-means clustering limitations and enhancing algorithmic efficiency has been cited extensively, highlighting its significance in data science and artificial intelligence. His growing recognition in machine learning and big data analytics marks him as a promising scholar in his field. Through his research, he continues to make valuable contributions that shape the future of data-driven decision-making and statistical computing.

Conclusion

Dr. Iliyas Karim Khan is an exceptional researcher, educator, and innovator in the field of machine learning, statistical modeling, and big data analysis. His strong academic background, extensive teaching experience, and high-impact research make him a significant contributor to computational intelligence and data science advancements. His studies on enhancing K-means clustering efficiency, outlier handling, and computational time optimization have added valuable insights to the field. Through prestigious publications and academic honors, he has demonstrated his expertise in refining statistical methodologies for real-world applications. His proficiency in Python, SPSS, Stata, and advanced statistical techniques enables him to bridge the gap between theoretical advancements and practical applications in data science. As he continues to explore new frontiers in machine learning and predictive analytics, his work is expected to have a lasting impact on data-driven industries and AI-based decision-making systems.

Publications Top Noted

  • Title: Determining the Optimal Number of Clusters by Enhanced Gap Statistic in K-Mean Algorithm
    Authors: Iliyas Karim Khan, HB Daud, NB Zainuddin, R Sokkalingam, M Farooq, ME Baig, …
    Year: 2024
    Citations: 7
    Source: Egyptian Informatics Journal, Volume 27, Article 100504

  • Title: Numerical Solution of Heat Equation Using Modified Cubic B-Spline Collocation Method
    Authors: M Iqbal, N Zainuddin, H Daud, R Kanan, R Jusoh, A Ullah, Iliyas Karim Khan
    Year: 2024
    Citations: 3
    Source: Journal of Advanced Research in Numerical Heat Transfer, Volume 20, Pages 23-35

  • Title: Numerical Solution by Kernelized Rank Order Distance (KROD) for Non-Spherical Data Conversion to Spherical Data
    Authors: Iliyas Karim Khan, HB Daud, R Sokkalingam, NB Zainuddin, A Abdussamad, …
    Year: 2024
    Citations: 2
    Source: AIP Conference Proceedings, Volume 3123 (1)

  • Title: A Modified Basis of Cubic B-Spline with Free Parameter for Linear Second Order Boundary Value Problems: Application to Engineering Problems
    Authors: M Iqbal, N Zainuddin, H Daud, R Kanan, H Soomro, R Jusoh, A Ullah, …
    Year: 2024
    Citations: 1
    Source: Journal of King Saud University-Science, Volume 36 (9), Article 103397

  • Title: Standardizing Reference Data in Gap Statistic for Selection of Optimal Number of Clusters in K-Means Algorithm
    Authors: Iliyas Karim Khan, H Daud, N Zainuddin, R Sokkalingam
    Year: 2025
    Source: Alexandria Engineering Journal, Volume 118, Pages 246-260

  • Title: A Hybrid Stacked Sparse Autoencoder (HSSAE) Model for Predicting Type 2 Diabetes
    Authors: A Abdussamad, H Daud, R Sokkalingam, M Zubair, Iliyas Karim Khan, Z Mahmood
    Year: 2025
    Source: To be published

  • Title: A Mini Review of the State-of-the-Art Development in Oil Recovery Under the Influence of Geometries in Nanoflood
    Authors: M Zafar, H Sakidin, A Hussain, M Sheremet, I Dzulkarnain, R Safdar, …
    Year: 2024
    Source: Journal of Advanced Research in Micro and Nano Engineering, Volume 26 (1), Pages 83-101

  • Title: Exploring K-Means Clustering Efficiency: Accuracy and Computational Time Across Multiple Datasets
    Authors: Iliyas Karim Khan, H Daud, N Zainuddin, R Sokkalingam, A Abdussamad, AS Azad, …
    Year: 2024
    Source: Journal of Advanced Research in Applied Sciences and Engineering Technology

  • Title: Forecasting the Southeast Asian Currencies Against the British Pound Sterling Using Probability Distributions
    Authors: Iliyas Karim Khan, Ahmad Abubakar Suleiman, Hanita Daud, Mahmod Othman, Abdullah …
    Year: 2023
    Source: Data Science Insights, Volume 1 (1), Pages 31-51

  • Title: Addressing Limitations of the K-Means Clustering Algorithm: Outliers, Non-Spherical Data, and Optimal Cluster Selection
    Authors: Iliyas Karim Khan, Abdussamad, Abdul Museeb, Inayat Agha
    Year: 2024
    Citations: 4
    Source: AIMS Mathematics, Volume 9, Pages 25070-25097

 

 

Samuel Sii | Statistics | Best Researcher Award

Dr. Samuel Sii | Statistics | Best Researcher Award

Registrar at Austin Health, Australia

Dr. Samuel Sii is a dedicated urology researcher and clinician specializing in prostate cancer, surgical innovation, and post-radical prostatectomy outcomes. He earned his Bachelor of Medicine and Bachelor of Surgery (Honours) from Monash University (2017) and has since advanced his career as a Urology Registrar and Research Fellow at Austin Health, Melbourne. His research contributions include multiple publications in esteemed journals such as SIUJ, BJUI, and BJUI Compass, focusing on improving patient outcomes through innovative surgical techniques. As a member of the Urological Society of Australia and New Zealand (USANZ), he actively engages in the medical community. His work on “Mapping the Shifting Landscape of Urological Innovation” reflects his commitment to advancing the field. While his research is promising, expanding collaborations, securing grants, and increasing citation impact would further elevate his profile. Dr. Sii’s dedication and expertise position him as a rising researcher in urology.

Professional Profile 

ORCID Profile

Education

Dr. Samuel Sii completed his Bachelor of Medicine and Bachelor of Surgery (Honours) from Monash University in 2017, a prestigious medical degree that provided him with a strong foundation in clinical practice and medical research. His academic journey has been characterized by excellence, with a particular focus on urology, surgical techniques, and oncology. Throughout his education, he demonstrated a keen interest in prostate cancer research and surgical innovation, leading him to pursue further specialization in urology. His rigorous training at Monash University equipped him with critical analytical skills, problem-solving abilities, and a deep understanding of medical science, enabling him to transition seamlessly into clinical and research roles. His education has laid the groundwork for his contributions to evidence-based medicine, particularly in improving post-radical prostatectomy outcomes and advancing urological surgical methodologies.

Professional Experience

Dr. Samuel Sii has built an impressive career in urology and medical research, with a primary focus on prostate cancer, surgical innovation, and post-radical prostatectomy outcomes. He started as a Principal House Officer and Registrar in Urology at Sunshine Coast Hospital and Health Service, where he gained hands-on clinical experience in patient care and surgical procedures. Currently, he serves as a Research Fellow at Austin Health, Melbourne, a role that allows him to integrate clinical expertise with cutting-edge research. His experience spans patient management, surgical interventions, and academic research, making him a valuable contributor to the field of urology. His work on “Mapping the Shifting Landscape of Urological Innovation” highlights his dedication to medical advancements. Additionally, his membership in the Urological Society of Australia and New Zealand (USANZ) underscores his commitment to professional growth and collaboration within the global medical community.

Research Interest

Dr. Sii’s research is centered on prostate cancer, surgical innovation, and post-radical prostatectomy outcomes, reflecting his dedication to improving patient care and surgical techniques. His work aims to enhance urological surgical methodologies, optimize treatment strategies for prostate cancer, and improve long-term outcomes for patients undergoing radical prostatectomy. He has published in prestigious journals such as SIUJ, BJUI, and BJUI Compass, demonstrating the academic impact of his research. His interest in minimally invasive procedures and technological advancements in urology places him at the forefront of innovation in the field. While he has made significant contributions, expanding his research into robot-assisted surgery, artificial intelligence applications in diagnostics, and personalized medicine in urology could further broaden his impact. His research aligns with global efforts to enhance surgical precision, reduce recovery times, and improve cancer prognosis, making his contributions highly relevant to modern medical science.

Awards and Honors

Although specific awards and honors are not listed, Dr. Samuel Sii’s recognition within the academic and medical community is evident through his research publications and professional affiliations. His contributions to prostate cancer research and surgical innovation have been acknowledged in journals such as SIUJ, BJUI, and BJUI Compass, which are widely respected in the medical field. His selection as a Research Fellow at Austin Health further signifies his expertise and leadership potential in urological research. Additionally, his membership in the Urological Society of Australia and New Zealand (USANZ) highlights his active involvement in the professional medical community. To further enhance his profile, receiving research grants, young investigator awards, or innovation prizes in urology would strengthen his credentials. His continued dedication to medical advancements suggests that he is on a promising trajectory for future recognition at national and international levels.

Conclusion

Dr. Samuel Sii is a rising researcher in the field of urology, with a strong foundation in clinical practice, academic research, and surgical innovation. His work on prostate cancer, surgical advancements, and post-radical prostatectomy outcomes has contributed to the ongoing evolution of treatment strategies in urology. While his research achievements and professional experience make him a competitive candidate for the Best Researcher Award, expanding his collaborations, securing research grants, and increasing citation impact would further elevate his academic standing. His commitment to evidence-based medicine, continuous learning, and professional engagement positions him as an influential figure in the medical research community. With a focus on cutting-edge surgical methodologies and technological integration in urology, Dr. Sii is well-poised to make lasting contributions to the field.

Publications Top Noted

  • Title: Utility of PSA Free-to-Total Ratio for Clinically Significant Prostate Cancer in Men with a PSA Level of <4 ng/mL

    • Authors: Samuel Sii, Nathan Papa, Ting Wai Yiu, Dixon Teck Sing Woon
    • Year: 2024
    • Citation: Sii S, Papa N, Yiu TW, Woon DTS. Utility of PSA Free-to-Total Ratio for Clinically Significant Prostate Cancer in Men with a PSA Level of <4 ng/mL. BJU International. 2024.
    • Source: PubMed
  • Title: Contemporary Status of Diagnostic Endoluminal Ultrasound and Optical Coherence Tomography in the Ureter

    • Authors: Samuel Sii, Jeremy Bolton, Jake Tempo, Damien Bolton
    • Year: 2024
    • Citation: Sii S, Bolton J, Tempo J, Bolton D. Contemporary Status of Diagnostic Endoluminal Ultrasound and Optical Coherence Tomography in the Ureter. BJU International. 2024.
    • Source: ResearchGate
  • Title: Lessons from a Population-Based Bladder Cancer Registry: Exploring Why Survival Is Not Improving

    • Authors: Jake Tempo, Samuel Sii, Joseph Ischia, Michael O’Callaghan
    • Year: 2024
    • Citation: Tempo J, Sii S, Ischia J, O’Callaghan M. Lessons from a Population-Based Bladder Cancer Registry: Exploring Why Survival Is Not Improving. BJU International. 2024.
    • Source: ResearchGate
  • Title: Surgical Site Infection After Gastrointestinal Surgery in High-Income, Middle-Income, and Low-Income Countries: A Prospective, International, Multicentre Cohort Study

    • Authors: Aneel Bhangu, Adesoji O. Ademuyiwa, María Lorena Aguilera, Ruth Blanco, Samuel Sii, et al.
    • Year: 2018
    • Citation: Bhangu A, Ademuyiwa AO, Aguilera ML, Blanco R, Sii S, et al. Surgical Site Infection After Gastrointestinal Surgery in High-Income, Middle-Income, and Low-Income Countries: A Prospective, International, Multicentre Cohort Study. The Lancet Infectious Diseases. 2018;18(5):516-525.
    • Source: The Lancet Infectious Diseases
  • Title: Mapping the Shifting Landscape of Urological Innovation

    • Authors: Samuel Sii, David Homewood, Brendan Dittmer, Kalonji Nzembela, Mahesha Weerakoon, Jonathan S. O’Brien, Damien Bolton, Nathan Lawrentschuk, Niall M. Corcoran, and Dinesh K. Agarwal
    • Year: 2025
    • Citation: Sii S, Homewood D, Dittmer B, Nzembela K, Weerakoon M, O’Brien JS, Bolton D, Lawrentschuk N, Corcoran NM, Agarwal DK. Mapping the Shifting Landscape of Urological Innovation. Soc. Int. Urol. J. 2025; 6(1):22.
    • Source: The Lancet Infectious Diseases