Skip to content
View iangault's full-sized avatar

Block or report iangault

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don’t include any personal information such as legal names or email addresses. Markdown is supported. This note will only be visible to you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
iangault/README.md

Ian Gault

Applied Data Scientist | Environmental Chemistry • Toxicology • Machine Learning • Data Infrastructure

LinkedIn Email Website

About Me 🚶🏻‍♂️

UBC UAlberta RPBio

I’m an Applied Data Scientist with a background in environmental science, toxicology, and health risk assessment, currently completing my Master of Data Science at the University of British Columbia (June 2026).

Over the past six years, I’ve worked in regulated consulting environments translating complex scientific data into defensible, evidence-based decisions. My work combines statistical analysis, machine learning, and reproducible workflows, with a strong focus on uncertainty, risk interpretation, and real-world impact.

I’m particularly interested in computational biology, environmental health, scalable data systems, and scientific machine learning applications.


What I Know 🧠

Programming & Databases

Python R SQL MongoDB

Machine Learning & Data Science

Pandas NumPy scikit-learn PyTorch

Data Engineering & Scalable Analytics

DuckDB Arrow AWS Docker

Visualization & Applications

Streamlit Shiny Plotly

Development & Reproducibility

Git Bash Conda renv Makefile Quarto

Pinned Loading

  1. iangault.github.io iangault.github.io Public

    Personal portfolio and professional website for Ian Gault — Data Scientist and Registered Professional Biologist.

    HTML

  2. DSCI-532_2026_TempTales DSCI-532_2026_TempTales Public

    Solo rebuild of a UBC MDS capstone dashboard — Python Shiny app exploring global temperature trends (1860–2012) with Altair, Plotly, DuckDB, pytest/Playwright CI, and an AI assistant tab via GitHub…

    Jupyter Notebook