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DearKarl/README.md

About Me

I somehow stayed at university long enough to turn undergraduate entropy into a maths PhD, collecting priors, posteriors, and enough caffeine to reject the null hypothesis along the way.

karl.status("now")
curiosity       O(∞)
current_mode    machine learning, human playing
working_style   git stash
research_mood   n=1
life_cycle      coffee -> code -> cope
coffee_level    p < 0.05
default_answer  "it depends"
bug_strategy    pray

Current Lab

Project What it explores Link
coming_soon experiments currently being cleaned, renamed, and made less embarrassing
under_review small research projects waiting for future Karl to document them properly
work_in_progress plots, priors, bugs, and other signs of academic life

GitHub Analytics

Karl's GitHub streak stats Karl's top languages

GitHub Activity

Contribution Graph

Contribution Flow

Contribution graph animation
Small debug ritual
1. Make the smallest reproducible example.
2. Check the assumptions before checking the code.
3. Plot the weird part.
4. Delete the clever thing if the plain thing works.
5. Leave a note for future Karl.

Toolkit

Research Stack

Built as a living README: part lab notebook, part dashboard, part reminder to stay curious.

Pinned Loading

  1. hedgehog1 hedgehog1 Public

    TypeScript

  2. bayesian-methods-lab bayesian-methods-lab Public

    Bayesian Methods Lab: exploratory research on Bayesian modeling, posterior inference, uncertainty quantification, and robust prediction, beginning with Bayesian regression foundations.

    Python 1