Skip to Main Content

INFORMATION FOR

    Harsh Parikh

    he/him/his
    Assistant Professor of Biostatistics
    DownloadHi-Res Photo

    Causal Evidence and Decisions Studio

    Education

    PhD
    Duke University, Computer Science (2023)


    MS
    Duke University, Economics and Computation (2018)


    BTech
    Indian Institute of Technology Delhi, Computer Science and Engineering (2015)


    About

    Titles

    Assistant Professor of Biostatistics

    Affiliate Faculty, Public Health Data Science and Data Equity

    Positions outside Yale

    Guest Researcher, Danish Centre for Health Economics, University of Southern Denmark; Affiliate, Biostatistics, Johns Hopkins Bloomberg School of Public Health; Applied Scientist III [Part-time], Supply Chain Optimization Technologies (SCOT), Amazon.com

    Biography

    I develop machine learning–aided causal inference approaches to solve high-stakes problems that are: (i) Accurate, enabling estimation of heterogeneous treatment effects in complex scenarios with limited data; (ii) Trustworthy, allowing domain experts to understand the machinery, validate underlying assumptions, and identify where predictions may be unreliable; and (iii) Domain-conscious, leveraging domain context and knowledge to come up with applicable solutions, reducing the research-to-practice gap.

    Last Updated on February 23, 2026.

    Appointments

    Other Departments & Organizations

    Education & Training

    PhD
    Duke University, Computer Science (2023)
    MS
    Duke University, Economics and Computation (2018)
    BTech
    Indian Institute of Technology Delhi, Computer Science and Engineering (2015)

    Research

    Overview

    My research focuses on developing (interpretable) causal inference approaches for aiding decisions in high-stakes complex scenarios. My collaborators and I have used my research to address challenges in healthcare, public health, and social sciences. Decision-making in these critical domains is fraught with difficulties stemming from, but not limited to, the intricate interplay of factors, including the heterogeneity of causal effects across subpopulations, the substantial costs associated with suboptimal decisions, and the inherent complexities in the available data, all of which complicate the assessment of risk-benefit trade-offs. In pursuit of more effective solutions, my work is centered around the development of causal inference methodologies that are:

    Accurate: to ensure accurate estimation of heterogeneous causal effects, even in scenarios with data limitations, offering decision-makers a reliable foundation upon which to base their choices.

    Trustworthy: to empower domain experts to comprehend the inner workings of the causal inference process. This not only enables experts to validate the underlying assumptions but also guarantees patients' safety.

    Domain-conscious: to bridge the research-to-practice gap and yield solutions that are readily implementable. I leverage the context and domain knowledge to tailor solutions specific to a subject matter.

    Medical Research Interests

    Causality; Data Analytics; Data Science; India; Machine Learning

    Public Health Interests

    Applied Probability; Bayesian Statistics; Epidemiology Methods; GIS/Disease Mapping; Global Health; Infectious Diseases; Modeling; Network Analysis; Randomized Trials; Statistical Computing; Stochastic Processes; Survival Analysis

    Research at a Glance

    Publications Timeline

    A big-picture view of Harsh Parikh's research output by year.
    8Publications
    93Citations

    Publications

    2025

    2024

    2023

    2020

    2019

    Get In Touch

    Contacts

    Administrative Support

    Locations

    • 60 College Street

      Academic Office

      Fl Second Floor, Rm 200

      New Haven, CT 06510