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hey everybody today weamp;#39;re making some beautiful bar charts in r using ggplot iamp;#39;ve already loaded up tidyverse and pulled up the relevant help file for geombar iamp;#39;ve also set my theme to minimal iamp;#39;m a little tired of the gray background on all of my plots iamp;#39;m going to do a couple of different examples to start i want to use the car seats data set which is included in the islr2 package thatamp;#39;s a package of data sets supporting the textbook introduction to statistical learning with applications in r which i highly recommend letamp;#39;s start by glimpsing our data set with glimpse um car seats and letamp;#39;s pull up the help file for that as well with question mark car seats so here you can see that we have a simulated data set of 400 different stores that are selling car seats we have information like the sales the price the competitoramp;#39;s price and so on to start iamp;#39;m going to be interested in shelving location and you can s