# P4: Exploratory Data Analysis > In this project, exploratory data analysis is conducted to explore the variables, structure, patterns, oddities, and underlying relationships of factors that affect red wine quality. When I worked on this project, it helped me learn a great deal about EDA i.e., to use plots to understand the distribution of a variable and to check for patterns and their relationships with other variables. Moreover, I learned to create a logical flow when building up from single-variable analysis to multivariate analysis. ## Files - `wineQualityReds.csv` – This dataset is publicly available for research in the [UCI Machine Learning Repository](https://archive.ics.uci.edu/ml/datasets/wine+quality). - `Red_Wine_Quality.rmd` – Main RMD project file containing the analysis. - `Red_Wine_Quality.html` – HTML file knitted from the project file. - `Red_Wine_Quality.R` - R code extract (with documentation). - `References.txt` – List of references. ## Requirements This project was developed using **RStudio** Version 1.0.153 – © 2009-2017 RStudio, Inc (**R** Version 3.4.2). The required packages are `ggplot2`, `gridExtra`, `GGally`, `ggthemes`, `dplyr`, `knitr` and `memisc`. ## License [Modified MIT License © Pranav Suri](/License.txt)