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Statistical Fundamentals (1 of 8): Population Distributions, Sampling Distributions, and Central Limit Theorem

Statistical Fundamentals: A Visual Approach Series

This series will use R and Python to help develop an intuition for fundamental statistical concepts using data visualization. These workshops are equally suitable to those hoping to enhance their ability to interpret common statistical tests and concepts as it is for those applying statistical modelling to their work. No background in statistics is required, but some familiarity with R or Python will be advantageous. You may wish to review the asynchronous content of either R Fundamentals for Data Analysis or Python Basics for Data Analysis, or keep an eye out for the next time these workshops are offered.

Population Distributions, Sampling Distributions, and Central Limit Theorem (workshop 1 of 8): This session will introduce participants to the foundational concepts of statistical inference, including population distributions, sampling distribution, and the process of random sampling.

By the end of this session, participants should be able to visualize and understand population distributions, illustrate random sampling processes, recognize the normalizing effect of larger samples on sampling distributions, and demonstrate the Central Limit Theorem visually.

Questions? Please reach out to the Centre for Scholarly Communication at csc.ok@ubc.ca.

A full schedule of workshops can be found at csc.ok.ubc.ca/workshops/

Date:
Thursday, January 15, 2026
Time:
1:00pm - 2:00pm
Room:
LIB 111
Location:
Okanagan - Centre for Scholarly Communication
Audience:
  Faculty     Graduate     Post-Doc     Staff     Undergraduate  
Categories:
  Data  
Presenter(s):
Alex Jack

Registration is required. There are 30 in-person seats available. There are 50 online seats available.

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Presenter(s)

Alex Jack

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