Dr. Mohsin Masood – Data Scientist – Best Researcher Award 

Dr. Mohsin Masood - Data Scientist - Best Researcher Award 

Imperial College London - United Kingdom

Author Profile 

GOOGLE SCHOLAR 

🎓 Early academic pursuits

Mohsin Masood began his academic journey with a strong foundation in computer science, securing a merit-based msc funding grant from the university of east london (2011–2012). his early academic achievements laid the groundwork for advanced training in health data science, culminating in a phd in statistical modelling from the university of strathclyde, funded by a competitive grant (2014–2017). his scholarly curiosity extended internationally through the erasmus exchange research grant at vsb-technical university of ostrava (2015–2018), where he deepened his expertise in predictive modelling and bioinformatics. during this phase, his interest in power electronics and algorithmic optimization in medical diagnostics emerged as an interdisciplinary focus.

💼 Professional endeavors

With over a decade of experience, mohsin has held impactful roles across academia and research institutions. as an assistant professor in computer science at abasyn university (2018–2022), he designed and taught advanced courses in ai, ml, and data science, incorporating real-world applications in epidemiology and digital health. later, as a senior research fellow at the university of leeds (2022–2023), he led data engineering for a large-scale 2.9 million patient cohort, employing advanced machine learning and nlp tools to analyze multimorbidity and Data Scientist cardiovascular risks. currently, he serves as a research associate at imperial college london (2023–present), where he leads predictive modelling projects on population health, integrating datasets like uk biobank, sail databank, and triphic. he also fosters collaborations with institutions such as sheffield university and a* university of singapore.

🧠 Contributions and research focus

Mohsin’s core research focus lies in multimorbidity, disease progression modelling, and epidemiological risk assessment, particularly within cardiovascular and pulmonary health Data Scientist domains. he applies deep learning, survival analysis, and multistate modelling to interpret complex patient trajectories and disease clustering. his work with electronic health records (ehrs) like hospital episode statistics (hes) reflects a commitment to improving precision medicine. integrating technologies from power electronics into patient monitoring systems has been a unique dimension of his research, promoting real-time diagnostics and health alerts. he has also contributed to educational leadership by mentoring bsc and msc students in ai-based health science projects.

🌍 Impact and influence

Mohsin’s influence extends beyond academia through his involvement in cross-institutional research, digital outreach, and public health strategy. at imperial’s national heart and lung institute (nhli), he manages social media communications to boost public engagement with medical data science. his high-impact publications have contributed to the growing intersection of Data Scientist computational modelling and health outcomes, often cited in cardiovascular and cancer research communities. he is recognized for bridging the gap between statistical modelling and power electronics, showing how smart analytics can optimize hardware for healthcare delivery.

📚 Academic cites

His academic influence is reflected in high citation counts across journals focusing on biostatistics, machine learning in medicine, and epidemiology. notable contributions include projects funded by imperial nhli’s pilot project award (2023–2024) and royan pharmaceutical’s breast cancer research grant (2020–2021). his statistical toolkits and predictive algorithms are widely referenced in studies involving survival analysis, deep learning applications in ehrs, and risk prediction modelling.

🧬 Legacy and future contributions

Mohsin’s legacy lies in fostering a data-driven healthcare ecosystem where interdisciplinary tools empower clinicians and researchers alike. he aims to develop scalable, explainable ai systems for public health, enabling real-time decision-making in hospitals and remote settings. leveraging power electronics, he envisions the integration of wearable technologies with ai for early disease detection and patient monitoring. his commitment to mentoring the next generation of health data scientists ensures a lasting academic and societal impact.

Notable Publications 

  • Title: Emotion classification and crowd source sensing; a lexicon based approach
    Authors: R. Kamal, M.A. Shah, C. Maple, M. Masood, A. Wahid, A. Mehmood
    Journal: IEEE Access

  • Title: An improved particle swarm algorithm for multi-objectives based optimization in MPLS/GMPLS networks
    Authors: M. Masood, M.M. Fouad, R. Kamal, I. Glesk, I.U. Khan
    Journal: IEEE Access

  • Title: Energy efficient software defined networking algorithm for wireless sensor networks
    Authors: M. Masood, M.M. Fouad, S. Seyedzadeh, I. Glesk
    Journal: Transportation Research Procedia

  • Title: Proposing bat inspired heuristic algorithm for the optimization of GMPLS networks
    Authors: M. Masood, M.M. Fouad, I. Glesk
    Journal: 2017 25th Telecommunication Forum (TELFOR)

  • Title: Analysis of artificial intelligence-based metaheuristic algorithm for MPLS network optimization
    Authors: M. Masood, M.M. Fouad, I. Glesk
    Journal: 2018 20th International Conference on Transparent Optical Networks (ICTON)

Dr. Reza Mohebian – AI in Oil and Gas Exploration – Best Researcher Award

Dr. Reza Mohebian - AI in Oil and Gas Exploration - Best Researcher Award

Tehran University - Iran

Author Profile

GOOGLE SCHOLAR

Early academic pursuits 🎓

Reza Mohebian's academic journey began with a bachelor's degree in mining engineering from the university of science & technology in tehran, iran, in 2008. he then pursued his master's degree in geophysics, specializing in seismology, at the university of tehran, where his thesis focused on detecting oil-filled channels using advanced spectral attributes. reza's passion for geophysics led him to complete his ph.d. at the university of tehran, where he explored seismic facies analysis using intelligent systems, solidifying his foundation in both geophysics and petroleum exploration.

Professional endeavors 🏛️

since 2020, reza has been serving as a faculty member in the petroleum exploration department at the school of mining engineering, university of tehran. his expertise and leadership led to his appointment as the director of the key laboratory of geophysics and petroleum exploration in 2021. reza’s career is also marked by his significant role as a representative of iran’s ministry of science, research, and technology in the petroleum ministry from 2017 to 2018, contributing to the development of commercial software packages for petroleum exploration.

Contributions and research focus 🔬

Reza’s research is centered on seismic geophysics and petroleum exploration. his ph.d. research in seismic facies analysis, using intelligent systems, introduced novel methods for oil and gas detection. his work extends to the application of artificial neural networks in mineral potential mapping, and his contribution to spectral  AI in Oil and Gas Exploration decomposition techniques is encapsulated in his book on identifying oil reservoirs. reza’s research blends computational intelligence with geophysics, making significant advancements in the field of seismic exploration.

Accolades and recognition 🏅

Reza Mohebian’s work in geophysics has garnered recognition both within academic circles and the petroleum industry. his book on spectral decomposition methods is a significant contribution to the field and is widely used by professionals and students. as the director of a key laboratory at the university of tehran, he plays a AI in Oil and Gas Exploration pivotal role in advancing geophysical research in iran. his innovative approaches to seismic data interpretation have solidified his reputation as a leading expert in petroleum exploration.

Impact and influence 🌍

Reza’s influence extends beyond academia, impacting the broader field of petroleum exploration in iran. through his work in developing in-house software solutions AI in Oil and Gas Exploration for the petroleum ministry, he has contributed to technological advancements that benefit the entire industry. his teaching and mentorship at the university of tehran have shaped the next generation of geophysicists, ensuring his influence continues to resonate in future explorations and research.

Legacy and future contributions 🔮

Reza Mohebian’s legacy is built on his pioneering work in geophysics, particularly in the application of intelligent systems for seismic exploration. his continued research in seismic geomechanics and advanced geostatistics promises to further enhance our understanding of oil reservoir detection and seismic data analysis. with a strong academic foundation and a forward-thinking approach, reza’s future contributions will undoubtedly leave a lasting impact on both iran’s petroleum industry and the global field of geophysics.

Notable Publications 

  1. Analysis and potential ecological risk assessment of heavy metals in the surface soils collected from various land uses around Shazand Oil Refinery Complex, Arak, Iran
    Authors: M. Mohebian, S. Sobhanardakani, L. Taghavi, J. Ghoddousi
    Journal: Arabian Journal of Geosciences, 14, 1-16, 2021
  2. Characterization of hydraulic flow units from seismic attributes and well data based on a new fuzzy procedure using ANFIS and FCM algorithms, example from an Iranian carbonate reservoir
    Authors: R. Mohebian, M.A. Riahi, A. Kadkhodaie
    Journal: Carbonates and Evaporites, 34, 349-358, 2019
  3. Detection of channel by seismic texture analysis using Grey Level Co-occurrence Matrix based attributes
    Authors: R. Mohebian, M.A. Riahi, O. Yousefi
    Journal: Journal of Geophysics and Engineering, 15(5), 1953-1962, 2018
  4. Detection of the gas-bearing zone in a carbonate reservoir using multi-class relevance vector machines (RVM): comparison of its performance with SVM and PNN
    Authors: R. Mohebian, M.A. Riahi, M. Afjeh
    Journal: Carbonates and Evaporites, 33, 347-357, 2018
  5. Channel detection using instantaneous spectral attributes in one of the SW Iran oil fields
    Authors: R. Mohebian, M. Yari, M.A. Riahi, R. Ghanati
    Journal: Bollettino di Geofisica Teorica ed Applicata, 54(3)