Dr. Ali Anaissi | Data Science | Best Researcher Award
Senior Lecturer at University of Technology Sydney, Australia
Dr. Ali Anaissi 🎓 is a seasoned data scientist and academic, currently a Senior Lecturer at the University of Technology Sydney 🇦🇺 and Deputy Director of the Master of Data Science and Innovation. With a Ph.D. in Data Science from UTS 🧠 and a background in Computer & Communication Engineering, he brings a rich blend of academic and industry experience. He has worked at prestigious institutions including the University of Sydney and CSIRO-Data61 🔬. His research spans machine learning, anomaly detection, and structural health monitoring, contributing significantly to data-driven innovations 🤖📊.
Professional Profile:
Education & Experience🎓
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🎓 Ph.D. in Data Science, University of Technology Sydney (2009–2013)
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🎓 Bachelor’s in Computer & Communication Engineering, Islamic University of Lebanon (2000–2005)
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👨🏫 Senior Lecturer, UTS (2022–Present)
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👨🏫 Lecturer, University of Sydney (2017–2022)
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🧪 Research Scientist, CSIRO–Data61 (2015–2017)
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👨💻 Software Developer, Agile Technologies, Lebanon (2004–2008)
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🧑🏫 Research Assistant, Tutor & Lecturer, UTS (2010–2016)
Professional Development📚
Dr. Anaissi continually enhances his expertise through active participation in professional and academic development activities 📈. He engages in international conferences, publishes high-impact research articles 📑, and collaborates with industry partners on real-world data science challenges 🌐. His role as a mentor to Ph.D. candidates fosters growth in the next generation of researchers 👨🎓👩🎓. He is also involved in curriculum development and education innovation at UTS and the University of Sydney 📘💡. These efforts reflect his commitment to bridging theory and practice, ensuring his work remains at the forefront of data science advancement 🚀🔍.
Research Focus🧠
Dr. Anaissi’s research lies at the intersection of data science, machine learning, and real-world application domains 🤖📊. His core focus includes anomaly detection, structural health monitoring, cyber security analytics 🔐, and predictive modeling. By developing intelligent algorithms and data-driven models, he improves the accuracy, safety, and efficiency of engineering and cyber systems ⚙️🛰️. He often works on interdisciplinary teams, blending data science with civil engineering, health informatics, and IT infrastructure. His innovations contribute to smarter decision-making systems, with a strong emphasis on explainability and robust performance across diverse environments 🌍🧪.
Awards & Honors🏅
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🏆 Honors Distinction (2005) – Awarded for outstanding dissertation on Face Detection and Recognition 📸🧠
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🥇 Academic Achievement Award – Recognized for excellence in academic performance during undergraduate studies 🎓📘
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🌟 Best Paper Presentation (various conferences) – For impactful research presentations in data analytics and AI forums 🎤📊
Publication Top Notes
1. A Balanced Iterative Random Forest for Gene Selection from Microarray Data
Authors: A. Anaissi, P.J. Kennedy, M. Goyal, D.R. Catchpoole
Published in: BMC Bioinformatics, 2013, Volume 14, Article 1, Pages 1–10
Citations: 93
DOI: 10.1186/1471-2105-14-261
Summary:
This study presents a Balanced Iterative Random Forest (BIRF) algorithm for gene selection from high-dimensional microarray datasets. The method iteratively refines feature subsets to enhance classification performance while addressing class imbalance. It was evaluated on multiple cancer datasets and showed improvements in both gene selection stability and classification accuracy over existing methods.
2. Ensemble Feature Learning of Genomic Data Using Support Vector Machine
Authors: A. Anaissi, M. Goyal, D.R. Catchpoole, A. Braytee, P.J. Kennedy
Published in: PLOS ONE, 2016, Volume 11, Issue 6, e0157330
Citations: 52
DOI: 10.1371/journal.pone.0157330
Summary:
The authors propose an ensemble feature learning approach that integrates SVMs and gene ranking techniques to extract key genomic features from cancer data. The approach is validated using pediatric acute lymphoblastic leukemia (ALL) data, enhancing classification accuracy and interpretability for biomarker discovery.
3. Smart Pothole Detection System Using Vehicle-Mounted Sensors and Machine Learning
Authors: A. Anaissi, N.L.D. Khoa, T. Rakotoarivelo, M.M. Alamdari, Y. Wang
Published in: Journal of Civil Structural Health Monitoring, 2019, Volume 9, Pages 91–102
Citations: 45
DOI: 10.1007/s13349-019-00313-5
Summary:
This work introduces a machine learning-based system for real-time pothole detection using vehicle-mounted accelerometers and gyroscopes. A supervised learning model is trained to classify road conditions, providing a low-cost, scalable solution for road infrastructure monitoring.
4. A Tensor-Based Structural Damage Identification and Severity Assessment
Authors: A. Anaissi, M. Makki Alamdari, T. Rakotoarivelo, N.L.D. Khoa
Published in: Sensors, 2018, Volume 18, Issue 1, Article 111
Citations: 42
DOI: 10.3390/s18010111
Summary:
The authors propose a tensor decomposition-based method to assess structural damage using vibration data. The approach not only detects damage but also estimates severity, offering a robust solution for structural health monitoring (SHM) systems.
5. hsa-miR-29c and hsa-miR-135b Differential Expression as Potential Biomarker of Gastric Carcinogenesis
Authors: A.F. Vidal, A.M.P. Cruz, L. Magalhães, A.L. Pereira, A.K.M. Anaissi, N.C.F. Alves, et al.
Published in: World Journal of Gastroenterology, 2016, Volume 22, Issue 6, Pages 2060–2070
Citations: 42
DOI: 10.3748/wjg.v22.i6.2060
Summary:
This biomedical study investigates the differential expression of microRNAs hsa-miR-29c and hsa-miR-135b as biomarkers for gastric cancer. The research combines molecular profiling with clinical data, suggesting these miRNAs as promising early diagnostic markers for gastric carcinogenesis.
Conclusion
Dr. Ali Anaissi embodies the ideal candidate for a Best Researcher Award. His multi-dimensional research profile, impactful publications, dedicated supervision, and leadership roles make him a standout in the field of data science and applied AI.
He not only advances scientific knowledge but also translates it into real-world solutions, addressing global challenges in smart cities, healthcare, cybersecurity, and infrastructure resilience.