What is try keyword in julia

This recipe explains what is try keyword in julia

Recipe Objective

This recipe explains about try keyword in julia.

Build Expedia Hotel Recommendation System using Machine Learning

Handling Errors in Julia

Keywords are predefined words that constitute a special meaning. We use the try keyword to prevent errors to execute the program. It generates a warning that this code might not perform the specific operation but will not stop the code from execution.

function cuberoot(n::Number)
    try
       cbrt(n)
    catch error
       if isa(error, DomainError)
          cbrt(complex(n))
       end
    end
end

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