Dr. Christopher Prashad | Predictive Modelling | Best Researcher Award
PhD at York University, Canada
Christopher Prashad is a highly skilled and ambitious PhD candidate specializing in Data Science with a focus on public health. He has demonstrated proficiency in designing and executing advanced quantitative research, particularly in mathematical modeling, machine learning, and statistical analysis. Prashad excels in extracting actionable insights from complex datasets and has proven his ability to collaborate effectively across teams. His research and work in mathematical and statistical methods have contributed to multiple fields, including public health, finance, and education. He is committed to simplifying complex technical concepts, making them more accessible to non-experts. His academic journey reflects a deep passion for using data science to make a meaningful impact on decision-making and public policy, particularly in healthcare and epidemiology. With a solid foundation in statistics and programming, he is poised to continue contributing significantly to research and applications in these domains.
Professional Profile
Education
Christopher Prashadās educational journey demonstrates a strong academic foundation, especially in mathematics, statistics, and data science. He is currently pursuing a PhD in Mathematics and Statistics at York University, with a focus on Data Science for Public Health, which he is expected to complete by June 2025. Prashad has also undertaken a MicroMasters program in Finance at the Massachusetts Institute of Technology (MIT) Sloan School of Management, set to finish in January 2025. Prior to this, he earned an MA in Mathematics and Statistics from York University, specializing in Theoretical and Applied Statistics, and a BSc in Mathematics and Chemistry from the University of Toronto. His academic achievements reflect his strong commitment to applying mathematical and statistical methods to a wide array of research fields, including public health, finance, and epidemiology.
Professional Experience
Prashad’s professional experience spans both academic and industry settings. As a Mathematics for Public Health Researcher at the Fields Centre for Quantitative Analysis and Modelling at York University, in collaboration with Sanofi Pasteur, he contributed significantly to mathematical modeling research, specifically in healthcare and epidemiology. He worked closely with pharmaceutical companies and regulatory organizations, providing evidence-based support for public health policy. His earlier experience as a Statistician at Western Universityās Faculty of Education involved longitudinal studies examining the impact of STEM education workshops. As a Course Director at York University, Prashad created and delivered lectures and tutorials on research and statistical methods for health studies. His leadership and mentoring roles in graduate projects further highlight his capacity to manage complex research initiatives and foster collaborative environments.
Research Interests
Christopher Prashadās research interests lie at the intersection of mathematics, statistics, and public health. His current focus is on utilizing advanced mathematical modeling and machine learning techniques to address challenges in epidemiology, public health policy, and healthcare analytics. He is particularly interested in the application of stochastic simulations, state-space models, and time-series analysis to infectious disease dynamics, including COVID-19 and influenza-like illnesses. Prashad also explores the role of machine learning in forecasting epidemic trends and the use of advanced statistical methods to inform public health decisions. In addition, his work involves optimizing statistical models for analyzing community mobility, insurance coverage, and investment products, showcasing a diverse range of applications of his quantitative research skills.
Research Skills
Christopher Prashad possesses a diverse set of research skills, with expertise in both theoretical and applied mathematics and statistics. He is proficient in advanced quantitative techniques such as stochastic simulation, probabilistic programming, and covariance estimation. His deep knowledge of machine learning, multivariate statistics, and optimization algorithms allows him to work with complex datasets and develop models for forecasting and decision-making. Prashad is highly skilled in programming and data analysis using tools like Python, R, MATLAB, and SQL, and he has hands-on experience with platforms like Bloomberg and Refinitiv. His ability to apply these methods to real-world problems in public health, finance, and education further exemplifies his versatility as a researcher.
Awards and Honors
Christopher Prashad has received several accolades for his academic and research contributions. In 2023, he placed third in the Canadian Statistical Sciences Instituteās (CANSSI) National Meme Competition, a testament to his creativity and engagement with the statistical community. He was also awarded the NSERC/Mitacs/Sanofi Alliance Award in 2022 for his applied research in vaccine mathematics, modeling, and manufacturing, which he conducted at the Laboratory for Industrial and Applied Mathematics (LIAM). In recognition of his academic excellence, he was granted the York Graduate Fellowship in 2022. Prashadās success in his doctoral research is also reflected in his outstanding performance in comprehensive exams in Mathematics & Statistics, further establishing his academic capabilities.
Conclusion
Christopher Prashad is an exceptional researcher whose work in mathematical modeling, data science, and public health stands out for its depth and applicability. His technical skills, collaborative approach, and passion for making complex data accessible make him a strong candidate for the Best Researcher Award. Prashadās ability to generate insights from complex datasets and apply those insights to real-world problemsāparticularly in healthcare and epidemiologyāhas positioned him as a valuable contributor to both academic and industry-driven research initiatives. With his strong academic background, research skills, and accomplishments, Christopher Prashad has demonstrated his potential to drive meaningful advances in the field of data science and public health.
Publication Top Notes
- Stochastic Threshold Analysis for Mean-Reverting SIRS Model
- Submitted to: Journal of Theoretical Biology
- Status: Forthcoming (Expected December 2024)
- Citation Information: N/A (Yet to be published)
- Problems and Solutions in Modern Finance, Financial Accounting, Mathematical Methods for Quantitative Finance, and Derivatives Markets
- Status: Independently published (Expected December 2024)
- Citation Information: N/A (Yet to be published)
- Assessing the Impact of Community Mobility on COVID-19 Dynamics
- Submitted to: PLOS Computational Biology
- Status: Forthcoming (Expected November 2024)
- Citation Information: N/A (Yet to be published)
- State-Space Modelling for Infectious Disease Surveillance Data: Stochastic Simulation Techniques and Structural Change Detection
- To be published in: Journal of Infectious Disease Modelling, Primer Articles
- Status: Forthcoming (Expected October 2024)
- Citation Information: N/A (Yet to be published)
- State-Space Modelling for Infectious Disease Surveillance Data: Dynamic Regression and Covariance Analysis
- To be published in: Journal of Infectious Disease Modelling, Primer Articles
- Status: Submitted (August 2024)
- Citation Information: N/A (Submitted)