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Howdy!

I'm an MSc in Statistical Science student at Oxford passionate about causal inference, forecasting, and energy.

  • 🎓 Stats, Econometrics & Operations Research, Economics at Oxford, Maastricht (Exchange at Texas A&M), and Heidelberg
  • 🔭 Currently working on matrix completion methods for causal inference and panel data forecasting (Now available on Pip)
  • 🌱 Interested in asking and answering useful questions using data
  • 📢 Experienced in communicating technical material
  • 🚀 Future goal: Applying statistical methods to energy markets and commodity trading

Skills

  • Python: (pandas, NumPy, PyTorch, sklearn, JAX, Optuna, XGBoost)
  • R (Base, tidyverse, data.table, fect, fixest, modelsummary, ...)
  • You can find some of my projects on machine learning and data visualisation on my personal website, as well as in the GitHub highlights right below this text.

Interests

📸 Photography | 🏔️ Mountaineering | 🏎️ Formula 1

Feel free to connect and reach out, I am always working on and looking for interesting projects and inspirations!

LinkedIn

Tobias Schnabel's Projects

bayesian-econometrics icon bayesian-econometrics

Final Assignment for Maastricht University EBS 2072: Introduction to Software in Econometrics

fin-ecmt icon fin-ecmt

Problem Sets and Final Exam for Texas A&M ECMT 670: Machine Learning in Econometrics

jba-algorithms-with-imdb icon jba-algorithms-with-imdb

Project on standard sorting and search algorithms for Algorithms with Python Track on JetBrains Academy

jba-dominoes icon jba-dominoes

Project implementing command-line version of dominoes for the Algorithms with Python Track on JetBrains Academy

mcnnm icon mcnnm

Lightweight Implementation of the Matrix Completion Estimator for Panel Data presented by Athey et al. (2021)

operations-research icon operations-research

Programming projects carried out with @RDHMN and @obbepulles for Maastricht University EBC2106: Operations Research

sml-practical icon sml-practical

Group project for Oxford University SB 2.2 Statistical Machine Learning

stata-macro-paper icon stata-macro-paper

Stata Project for Country Paper, EBC1020: Macroeconomics, Maastricht University

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