R Example for Beginners – R Program to find sequence, sum and mean of given numbers
In this Learn by Coding example, we are explaining how to write an R program to find the sequence, sum, and mean of the given numbers. Here we are using built-in functions seq, mean, sum for this calculation. The numbers are passed to these functions directly here. To generating regular sequences seq is a standard generic with a default method. Whereas sum returns the sum of all the values present in its arguments. The sum of the values dividing with the number of values in a data series is calculated using the mean function.
- seq(from, to)
- sum(…, na.rm = FALSE)
- mean(x, trim = 0, na.rm = FALSE, …)
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