By now I'm actively learning about Data Science Topics and I think the better way to learn is practicing. In this order, I have this repository where I made short projects in order to show and practice what i've learned.
- Data_visualization: A calendar plot about USDPEN prices.
 - FeatureEncoding Challenge: Kaggle competition about encoding techniques.
 - Finance_with_Python: Markowitz Optimization Notebook and a Little Backtest for Forwards and Options Portfolio.
 - Peru Exports Model: A Ml-forecast approach for Peruvian non-traditional exports.
 - Pytorch Training: Notebooks about Pytorch topics and features.
 - Retail Churn Model: A churn-case with real encrypted data for a well know company.
 - Retail Sales Model: Sales prediction for a internal Kaggle competition of SaturdaysAI-Lima
 - Topic Modelling: LDA methods for Alicorp Financial statements (run on local)
 - MLFlow Training: A Simple Deployment with MLFlow Models & Packaging.