👨‍🏫 Teaching

One of my favorite things about grad school is the opportunity to teach! Courses listed in reverse chronological order.


2025


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    SOC 225 Data and Society (undergraduate)
    Instructor: Dr. Zack W. Almquist
    TA: Adam Visokay
    Autumn 2025. Social implications of the digital revolution, including ethical issues associated with algorithmic design and privacy. Discusses data science as a new occupation that uses data to understand or influence people's behavior. Students will use a sociological lens to explore how our increasingly digital lifestyle changes institutions and social relations.

2024

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    Math Camp: Center for Statistics and the Social Sciences (graduate)
    Instructor: Adam Visokay
    Instructor: Jessica P. Kunke
    Summer 2024. Algebra, Functions, Matrix Algebra, Calculus, Probability Distributions, Introduction to Statistics & Maximum Likelihood.
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    SOC 110 Survey of Sociology (undergraduate)
    Instructor: Dr. Rosalind Kicheler
    TA: Adam Visokay
    Spring 2024. Human interaction, social institutions, social stratification, socialization, deviance, social control, social and cultural change.

2023

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    STAT 221 Statistical Concepts and Methods for the Social Sciences (undergraduate)
    Instructor: Dr. Emanuela Furfaro
    TA: Adam Visokay
    Winter 2024. Develops statistical literacy. Examines objectives and pitfalls of statistical studies; study designs, data analysis, inference; graphical and numerical summaries of numerical and categorical data; correlation and regression; estimation, confidence intervals, and significance tests. Emphasizes social science examples and cases.

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    STAT 221 Statistical Concepts and Methods for the Social Sciences (undergraduate)
    Instructor: Dr. William Brown
    TA: Adam Visokay
    Fall 2024. Develops statistical literacy. Examines objectives and pitfalls of statistical studies; study designs, data analysis, inference; graphical and numerical summaries of numerical and categorical data; correlation and regression; estimation, confidence intervals, and significance tests. Emphasizes social science examples and cases.