Sohail Ahmad | Applied Statistics | Best Researcher Award

Dr. Sohail Ahmad | Applied Statistics | Best Researcher Award

Dr. Sohail Ahmad | Quaid e Azam University Islamabad | Pakistan

Dr. Sohail Ahmad is an emerging researcher specializing in causal inference and the application of deep learning techniques to statistical modeling. His work focuses on directed acyclic graphs (DAGs) for uncovering causal relationships in observational data, with applications in epidemiology, public health, and healthcare policy evaluation. He integrates transformer-based models and variational autoencoders for counterfactual reasoning, treatment effect estimation, and personalized medicine using electronic health records. Dr. Ahmad earned his Ph.D. in Applied Statistics from Central South University, China, and holds an MPhil and Bachelor’s degree in Statistics from Quaid-i-Azam University, Pakistan. He has published extensively in high-impact journals, including Applied Intelligence, Scientific Reports, and AIMS Mathematics. His professional experience includes roles as a visiting lecturer and data analyst, alongside participation in international conferences and workshops. He has earned multiple professional certifications in causal inference and data science and received scholarships and national awards for academic excellence, reflecting his dedication, innovation, and growing impact in statistical research.

Publication Profile

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Education

Dr. Sohail Ahmad has pursued a comprehensive academic journey in the field of statistics, demonstrating a strong foundation in both theoretical and applied aspects of the discipline. He earned his Ph.D. in Applied Statistics from Central South University, China, where his research focused on integrating deep learning and statistical approaches for causal inference, exploring innovative methods to model complex relationships in observational data. Prior to his doctoral studies, he completed an MPhil in Statistics at Quaid-i-Azam University, Islamabad, Pakistan, where his thesis addressed the estimation of distribution functions under various sampling schemes, contributing to methodological advancements in survey analysis. Dr. Ahmad began his academic career with a Bachelor’s degree in Statistics from the same university, developing a generalized exponential-type estimator for population mean using auxiliary attributes, which laid the groundwork for his expertise in sampling theory and statistical estimation. His education reflects a consistent trajectory of rigorous research training, analytical skills, and specialization in modern statistical and machine learning techniques.

Experience

Dr. Sohail Ahmad has gained valuable academic and professional experience in the field of statistics through roles in teaching, research, and data analysis. He served as a visiting and contract lecturer at the Statistics Department of Government Post Graduate Jahanzeb College in Swat, Pakistan, where he was involved in delivering lectures, guiding students, and supporting curriculum development, fostering both theoretical understanding and practical application of statistical concepts. Prior to this, he worked as a teaching assistant and data analyst at the Department of Statistics, Quaid-i-Azam University, Islamabad, under the supervision of Prof. Dr. Javid Shabbir. In this role, Dr. Ahmad contributed to academic research projects, assisted in data management and statistical analyses, and supported faculty in developing research methodologies and practical solutions for real-world problems. His experience demonstrates a combination of teaching excellence, research proficiency, and analytical skills, highlighting his capability to contribute meaningfully to both educational and research-oriented environments in statistics.

Professional Certifications

Dr. Sohail Ahmad has actively enhanced his expertise in statistics, data science, and causal inference through a series of professional certifications and online courses from prestigious institutions. He completed advanced courses in causal inference from Columbia University, equipping him with in-depth knowledge of graphical models, counterfactual reasoning, and modern techniques for analyzing observational data. In addition, he pursued data science certifications from IBM, including foundational and applied courses in data analysis, tools, and methodologies, which strengthened his practical skills in programming, data management, and predictive modeling. Dr. Ahmad also completed a COVID-19 contact tracing course through Johns Hopkins University, reflecting his commitment to applying statistical and analytical skills to real-world public health challenges. Complementing these achievements, he participated in the 90th IKECEST Training Program for Silk Road Engineering Science and Technology Development, and an advanced Excel course focusing on data analysis and dashboard creation. These certifications highlight his dedication to continuous learning and professional growth

Awards

Dr. Sohail Ahmad has been recognized for his academic excellence and active participation in extracurricular activities throughout his educational journey. He received a prestigious scholarship from Quaid-i-Azam University, Islamabad, in recognition of his outstanding academic performance and dedication to statistical research. He was awarded a Prime Minister Laptop on merit, honoring his achievements as a distinguished student. Beyond academics, Dr. Ahmad has actively engaged in extracurricular and leadership activities that demonstrate his broader interests and commitment to personal development. He participated in the National Youth Carnival-17 at Quaid-i-Azam University, which provided a platform for networking, collaboration, and skill enhancement among young leaders. Additionally, he took part in the Peace Model United Nations (MNU) and the Youth Counselling Summit, reflecting his interest in global issues, diplomacy, and youth development. These awards and participations highlight his well-rounded profile, combining academic rigor with social engagement and leadership potential.

Research Focus

Dr. Sohail Ahmad’s research primarily focuses on the intersection of statistical methodology and modern machine learning techniques, with a strong emphasis on causal inference and estimator development. His work on generalized exponential-type and unbiased ratio estimators, as well as population distribution function estimation using auxiliary information, reflects a deep expertise in survey sampling, finite population analysis, and statistical estimation. In parallel, he explores advanced causal inference frameworks by integrating transformer-based deep learning models and variational autoencoders to estimate individual treatment effects and model latent confounders, particularly for applications in health and social sciences. This combination of classical statistical theory and cutting-edge machine learning allows him to address complex real-world problems, including treatment effect estimation, predictive modeling using electronic health records, and methodological advancements for observational studies. Dr. Ahmad’s publications demonstrate a consistent focus on improving the accuracy, interpretability, and applicability of statistical models, positioning him at the forefront of research in applied statistics and causal machine learning.

Publication Top Notes

A generalized exponential-type estimator for population mean using auxiliary attributes
Years: 2021
Citations: 27

Finite population distribution function estimation using auxiliary information under simple random sampling
Years: 2021
Citations: 16

A simulation study: An enhanced generalized class of estimators for estimation of population proportion using twofold auxiliary attribute
Years: 2023
Citations: 11

An improved family of unbiased ratio estimators for a population distribution function
Years: 2025
Citations: 6

Evaluation of agricultural wastes as a sustainable carbon source for the production of Ξ²-glucosidase from Bacillus stercoris, its purification and characterization
Years: 2023
Citations: 4

TV-CCANM: a transformer variational inference in confounding cascade additive noise model for causal effect estimation
Years: 2025
Citations: 1

Conclusion

Dr. Sohail Ahmad exhibits significant strengths in both methodological development and real-world application of statistical and machine learning approaches for causal inference. His contributions to the integration of deep learning with causal frameworks demonstrate originality and forward-thinking vision, especially in health-related research. While there is room for growth in terms of leadership visibility and research independence, his trajectory suggests a strong upward path. Given his current achievements, academic promise, and global engagement, Dr. Ahmad is indeed a suitable candidate for the Research for Best Researcher Award, representing both current excellence and future potential in advancing causal inference and applied statistics.

Adam Kapelner | Statistics | Best Faculty Award

Prof. Adam Kapelner | Statistics | Best Faculty Award

Prof. Adam Kapelner, Queens College CUNY, United States

πŸ“Š Prof. Adam Kapelner is an Associate Professor of Mathematics at Queens College, CUNY, where he also directs the Undergraduate Data Science and Statistics Program. He earned his Ph.D. in Statistics from the Wharton School, University of Pennsylvania (2014). His research focuses on experimental design, randomization, machine learning, and statistical software. He has been a visiting scholar at The Technion, Israel. Recognized for excellence in teaching and research, he received the President’s Award for Teaching (2023) and an NSF Graduate Fellowship. He actively publishes and speaks at international conferences. πŸ†πŸ“ˆπŸŽ“

Publication Profile

Google Schlolar

Academic Background

Prof. Adam Kapelner holds a Ph.D. in Statistics (2014) from the Wharton School, University of Pennsylvania, where he was advised by Abba Krieger and Edward George. He also earned an A.M. in Statistics (2012) from Wharton under the guidance of Dean Foster. His academic journey began at Stanford University, where he completed a B.S. in Mathematical & Computational Science (2006), with minors in Physics & Economics. πŸ“ŠπŸ”¬ His strong foundation in statistics, mathematics, and computational science has significantly contributed to his expertise in data analysis and statistical modeling. πŸ“ˆπŸ“š

Academic EmploymentΒ 

Prof. Adam Kapelner is an Associate Professor of Mathematics at Queens College (since August 2021) and has been the Director of the Undergraduate Data Science and Statistics Program since 2019. Previously, he served as an Assistant Professor of Mathematics (2014–2021). πŸ“ŠπŸ“š In addition to his role at Queens College, he has been a Visiting Scholar at The Technion – Israel Institute of Technology since 2018, contributing to the Faculty of Industrial Engineering & Management. πŸ«πŸ”¬ His expertise in statistics, data science, and mathematical modeling continues to shape the next generation of scholars. πŸŽ―πŸ“ˆ

Research Interest

Prof. Adam Kapelner’s research spans experimental design, randomization, and statistical software development. πŸŽ²πŸ“Š He explores data science and machine learning, applying advanced statistical methods to real-world problems. πŸ€–πŸ“ˆ His work includes crowdsourced social science experiments, leveraging public participation for innovative research. 🌍🧠 Additionally, he focuses on biomedical applications, using statistical modeling to enhance healthcare analytics. πŸ₯🧬 Prof. Kapelner is also passionate about educational technology, integrating data-driven approaches to improve learning experiences. πŸŽ“πŸ’‘ His interdisciplinary expertise contributes significantly to advancing statistical methodologies and their applications across multiple domains. πŸš€πŸ“‰

Honors & AwardsΒ 

Prof. Adam Kapelner has received numerous accolades for his teaching, research, and academic contributions. πŸŽ“πŸ“Š In March 2023, he was honored with the President’s Award for Excellence in Teaching. πŸ‘¨β€πŸ«πŸ… His research in economic behavior earned him a Highly Cited Research Certificate (2017). πŸ“ˆπŸ“œ He was a National Science Foundation Graduate Research Fellow (2010-2013) and received the J. Parker Bursk Memorial Award for Excellence in Research (2013). πŸ…πŸ”¬ His dedication to teaching was recognized with the Donald S. Murray Award (2012), and he was an Intel Science Talent Search Semifinalist early in his career. πŸš€πŸŽ–οΈ

Teaching ExperienceΒ 

Prof. Adam Kapelner has extensive teaching experience in statistics, probability, and data science. πŸŽ“πŸ“Š At Queens College, CUNY, he teaches courses such as Computational Statistics for Data Science, Probability Theory, Statistical Theory, and Machine Learning Fundamentals. πŸ“ˆπŸ€– Since 2014, he has also instructed Bayesian Modeling, Statistical Inference, and Advanced Probability. πŸ“ŠπŸ“š Previously, at The Wharton School, University of Pennsylvania, he taught Predictive Analytics and Probability & Statistics while also serving as a teaching assistant for multiple statistics courses, including Linear Regression and MBA-level Statistics. πŸŽ“πŸ“‰ His expertise has shaped many aspiring statisticians and data scientists. πŸš€πŸ“–

Industry Experience

Prof. Adam Kapelner has a diverse industry background in data science, software engineering, and consulting. πŸ“ŠπŸ’» Since 2014, he has provided private consulting in prediction modeling, data mining, and statistical testing for tech, real estate, and finance clients. πŸ’πŸ“ˆ He worked as a Data Scientist at Coatue, optimizing algorithmic trading. πŸ€–πŸ“‰ As Founder & CTO of DictionarySquared, he developed a web app for vocabulary learning, securing federal grant funding. πŸš€πŸ“š He was also Eventbrite’s first engineer, helping design its platform. πŸ’‘ At Stanford University, he developed image-processing software for biomedical research using machine learning. πŸ”¬πŸ“Š

Research Focus

Dr. Adam Kapelner specializes in statistical learning, Bayesian additive regression trees (BART), and data-driven decision-making. His work spans machine learning, causal inference, and predictive modeling 🎯. Notable contributions include BART-based predictive analytics, individual conditional expectation plots, and efficient experimental designs πŸ“ˆ. His interdisciplinary research extends to social media-based well-being predictions, crowdsourcing motivation, and personalized medicine πŸ’‘. He has also explored biostatistics, oncology-related immune analysis, and ketogenic therapies for cancer 🧬. His impactful research blends theoretical innovation with practical applications, advancing both statistics and computational methods πŸ”.

Publication Top Notes

1️⃣ Peeking inside the black box: Visualizing statistical learning with plots of individual conditional expectation – Journal of Computational and Graphical Statistics, 2015, Cited by: 1718 πŸ“ŠπŸ“ˆ

2️⃣ Breaking Monotony with Meaning: Motivation in Crowdsourcing Markets – Journal of Economic Behavior & Organization, 2013, Cited by: 584 πŸ’‘πŸ‘₯

3️⃣ bartMachine: Machine Learning with Bayesian Additive Regression Trees – Journal of Statistical Software, 2016, Cited by: 451 πŸ€–πŸ“‰

4️⃣ Predicting individual well-being through the language of social media – Biocomputing 2016 Proceedings, 2016, Cited by: 244 πŸ“±πŸ§ 

5️⃣ Variable selection for BART: an application to gene regulation – Journal of Statistical Software, 2014, Cited by: 205 πŸ§¬πŸ“Š

6️⃣ Preventing Satisficing in Online Surveys – Proceedings of CrowdConf, 2010, Cited by: 143 πŸ“πŸ“‘

7️⃣ Prediction with missing data via Bayesian additive regression trees – Canadian Journal of Statistics, 2015, Cited by: 105 πŸ“‰πŸ“ˆ

8️⃣ Spatial organization of dendritic cells within tumor draining lymph nodes impacts clinical outcome in breast cancer patients – Journal of Translational Medicine, 2013, Cited by: 60 πŸ§ͺπŸŽ—

9️⃣ Quantitative, architectural analysis of immune cell subsets in tumor-draining lymph nodes from breast cancer patients and healthy lymph nodes – PLOS ONE, 2010, Cited by: 60 πŸ”¬πŸ¦ 

πŸ”Ÿ Nearly random designs with greatly improved balance – Biometrika, 2019, Cited by: 46 πŸ“ŠπŸ“

1️⃣1️⃣ Matching on-the-fly: Sequential allocation with higher power and efficiency – Biometrics, 2014, Cited by: 40 🏹🎯