LeoArtaza

LeoArtaza

Geek Repo

Github PK Tool:Github PK Tool

LeoArtaza's repositories

Counter-Strike-Calendar-Scraper

This script scrapes liquipedia.net for the upcoming CS S-Tier events and creates a calendar file which you can then add to your personal calendar.

Language:Jupyter NotebookStargazers:1Issues:0Issues:0

precio-dolar-real

App web para visualizar en un gráfico interactivo el tipo de cambio real histórico del dólar blue en Argentina.

Language:PythonStargazers:1Issues:1Issues:0

2k5_to_2k8

This script takes rosters exported from videogame ESPN NFL 2K5 and turns them into a format that can be imported into All-Pro Football 2k8 using King Javo's APF editor.

Language:PythonStargazers:0Issues:1Issues:0

EY-Data-Challenge-2023

Code and explanation of my work for the EY Data Challenge 2023 which consisted on predicting rice yields based on satellite images.

Language:Jupyter NotebookStargazers:0Issues:0Issues:0

faster-whisper

Faster Whisper with sequences whitelist

Language:PythonLicense:MITStargazers:0Issues:0Issues:0

ISLM-Demand-Interactive-Plot

This script lets you interact with the IS-LM variables for aggregate demand to see the equilibrium change in all the graphs of the model at the same time.

Language:PythonLicense:CC0-1.0Stargazers:0Issues:1Issues:0

Mercado-Libre-Data-Challenge-2020

Solución para el Data Challenge 2020 de Mercado Libre.

Language:Jupyter NotebookStargazers:0Issues:0Issues:0

Rocket-League-Replay-ML

Data Analysis & Machine Learning modeling for my own Rocket League replay data.

Language:Jupyter NotebookStargazers:0Issues:0Issues:0

rocketLeagueRustParser

Rust parser for raw rocket league replay files

Language:RustLicense:MITStargazers:0Issues:0Issues:0

Scraper-Argenprop

Scraping de Argenprop periódico, usando Beautiful Soup en Python, y almacenando los datos en un csv.

Language:PythonStargazers:0Issues:1Issues:0

TP-Final-Econ-Internacional-II

Análisis estadístico de un efecto de shock en los precios de commodities en Python para un trabajo final de materia.

Language:Jupyter NotebookStargazers:0Issues:0Issues:0

TP-Final-PCA-Metodos-Cuantitativos

Se realiza un análisis manual de PCA en un conjunto de datos de aplicaciones de Play Store, sumado a un análisis exploratorio, comparando los resultados con scikit-learn y concluyendo que las dos componentes principales representan el éxito del juego y su relación calidad/precio.

Language:Jupyter NotebookStargazers:0Issues:0Issues:0