gtsa's repositories

How_well_do_you_perform_your_work-out---ML_Case-Study

In this project we can see in action and in detail a big part of the ML pipeline (data wrangling,model building, model evaluation) that comprises different algorithms and approaches such as Decision Trees (RPART), Linear Discriminant Analysis (LDA), Gradient Boosting Machne (GBM), Random Forest (RF) Support Vector Machine (SVM) with or without Model Stacking, with or without Dimensionality Reduction (with Principal Component Analysis (PCA) or Near-Zero Variance Predictors Filtering)

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Iris_dataset_Interactive_Regression--Shiny_Application

This project builds an interactive tool that, based on the iris dataset, predicts the width of the sepals/petals given their corresponding length.

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Binary_Classification--Car_Accident_Severity_Prediction

This is a ML Accident Severity Predicting project

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Statistical_Inference-Simulation_n_Inferential_Data_Analysis

In this project, based on the *mtcars* dataset (from the 1974 Motor Trend US magazine) we are interested in the comprehension of the relationships between dataset's cars' fuel consumption and a set of variables, trying, in particular, to model and quantify the one between the consumption and the car's transimission type.

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Consumption_vs_Transmission_mtcars---Regression_Model_Building

In this project, based on the *mtcars* dataset (from the 1974 Motor Trend US magazine) we are interested in the comprehension of the relationships between dataset's cars' fuel consumption and a set of variables, trying, in particular, to model and quantify the one between the consumption and the car's transimission type.

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Daily_Activity_Monitoring--Exploratory_Data_Analysis

Peer Assessment 1 for Reproducible Research

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dotfiles

Default configuration for Le Wagon's students

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Electric_Power_Consumption--Exploratory_Data_Analysis

This project's goal is simply to examine how household energy usage varies over a 2-day period in February 2007, reconstructing some specific plots using the base plotting system.

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github-stats-transparent

Automatically generate summary GitHub statistics images for your profile using Actions, no server required

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gtsa

My personal repository

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i-mosaic

A music social media app that connects users through their love for music. Users share experiences, follow friends, and discover new music together. Focused on data-driven insights, it offers personalized music recommendations and visualizations based on user interactions and preferences, showcasing the power of data in enhancing user experiences

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Impact_of_severe_weather_events_USA_1950-2011--Exploratory_Data_Analysis

This brief report is examining the most damaging types of weather events in terms of fatalities and economic impact throughout the USA from 1950 to 2011. Severe weather events can cause both public health and economic problems for communities and municipalities. Many severe events can result in fatalities, injuries, and property damage, and preventing such outcomes to the extent possible is a key concern. This project involves exploring the U.S. National Oceanic and Atmospheric Administration’s (NOAA) storm database. This database tracks characteristics of major storms and weather events in the United States, including when and where they occur, as well as estimates of any fatalities, injuries, and property damage.

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My_Google_Maps_saved_places--Leaflet_application

Basic Leaflet application with my Google Maps' saved places until 22/01/20

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US_Fine_Particulate_Matter--Exploratory_Data_Analysis

This project's goal is to explore the National Emissions Inventory database and see what it say about fine particulate matter pollution in the United states over the 10-year period 1999–2008.

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World_Temperature_last_150_years--Plotly_application

The following illustrates the change in global surface temperature relative to 1951-1980 average temperatures.

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