Handling missing data
In this recipe, you will find out how to create a correlation matrix from DataFrame
of numbers whose entries can contain missing values.
Getting ready
Make sure you have the CSV.jl
and DataFrames.jl
 packages installed. If they are missing, add them using the following commands:
julia> using Pkg julia> Pkg.add("DataFrames") julia> Pkg.add("CSV")
Also, download the following file and load it into a variable called df
by using the following commands:
julia> download("https://openmv.net/file/class-grades.csv", "grades.csv") julia> using CSV, DataFrames, Statistics julia> df = CSV.read("grades.csv");
Note
In the GitHub repository for this recipe, you will find the commands.txt
 file, which contains the presented sequence of shell and Julia commands. An additional example related to this recipe can be found in the cor.jl
file. The grades.csv
file is also stored in the repository, in case you have problems with downloading it.
Now, continue working...