- Data Science Applications focusing on football analytics ⚽
- Building Products for Practical Applications in Football:
- TactiMation - A flexible tactics animation board
- Wosonars - Twitter bot to automate query-based player visualizations
- xGBoard - Interactive application to get xG values for shots based on a CNN model
- MplFooty - Gallery of football analytics vizzes created using matplotlib
- Futbolista - Julia package to make football analytics tasks easier
- Statistical Modelling for Predictive Football Analytics:
- Expected Goals Model
- Expected Threat Models
- Bayesian Modelling of Players' Performance Levels
- Implementing and Explaining Football Research Papers:
- Valuing Actions by Estimating Probabilities
- Match Simulation Models
- Expected Threat Models
- Clustering players based on roles
- Creating Static Visualizations for story-telling purposes:
- A link to some of my static vizzes can be found here
- Building Products for Practical Applications in Football:
Working from home
Data Science/Football Analytics.
Python/R/Julia/C++.
This account has most of my public/hobby projects
-
Accenture
- India
- sharmaabhishekk.github.io
- @abhisheksh_98
Pinned Loading
Something went wrong, please refresh the page to try again.
If the problem persists, check the GitHub status page or contact support.
If the problem persists, check the GitHub status page or contact support.