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Alpha
This lesson is in the alpha phase, which means that it has been taught once and lesson authors are iterating on feedback.
Introduction to R
Using RStudio can make programming in R much more productive.
R’s basic data types are character, numeric, integer, complex, and
logical.
R’s basic data structures include the vector, list, matrix, data
frame, and factors. Some of these structures require that all members be
of the same data type (e.g. vectors, matrices) while others permit
multiple data types (e.g. lists, data frames).
Objects may have attributes, such as name, dimension, and
class.
Use variable <- value to assign a value to a
variable in order to record it in memory.
Objects are created on demand whenever a value is assigned to
them.
The function dim gives the dimensions of a data
frame.
Use object[x, y] to select a single element from a data
frame.
Use from:to to specify a sequence that includes the
indices from from to to.
All the indexing and subsetting that works on data frames also works
on vectors.
Use # to add comments to programs.
Use mean, max, min and
sd to calculate simple statistics.
Use apply to calculate statistics across the rows or
columns of a data frame.
Use plot to create simple visualizations.
Data in data frames can be addressed by index (subsetting), by
logical vector, or by name (columns only).
Use the $ operator to address a column by name.
Import data from a .csv file using the read.csv(...)
function.
Understand some of the key arguments available for importing the
data properly, including header,
stringsAsFactors, as.is, and
strip.white.
Write data to a new .csv file using the write.csv(...)
function
Understand some of the key arguments available for exporting the
data properly, such as row.names, col.names,
and na.
Factors are used to represent categorical data.
Factors can be ordered or unordered .
Some R functions have special methods for handling factors.
Define a function using
name <- function(...args...) {...body...}.
Call a function using name(...values...).
R looks for variables in the current stack frame before looking for
them at the top level.
Use help(thing) to view help for something.
Put comments at the beginning of functions to provide help for that
function.
Annotate your code!
Specify default values for arguments when defining a function using
name = value in the argument list.
Arguments can be passed by matching based on name, by position, or
by omitting them (in which case the default value is used).
Save a plot in a pdf file using pdf("name.pdf") and
stop writing to the pdf file with dev.off().
Use if (condition) to start a conditional statement,
else if (condition) to provide additional tests, and
else to provide a default.
The bodies of conditional statements must be surrounded by curly
braces { }.
Use == to test for equality.
X && Y is only true if both X and Y are
true.
X || Y is true if either X or Y, or both, are
true.
Use for (variable in collection) to process the
elements of a collection one at a time.
The body of a for loop is surrounded by curly braces
({}).
Use length(thing) to determine the length of something
that contains other values.
Use
list.files(path = "path", pattern = "pattern", full.names = TRUE)
to create a list of files whose names match a pattern.
Where possible, use vectorised operations instead of
for loops to make code faster and more concise.
Use functions such as apply instead of for
loops to operate on the values in a data structure.
Start each program with a description of what it does.
Then load all required packages.
Consider what working directory you are in when sourcing a
script.
Use comments to mark off sections of code.
Put function definitions at the top of your file, or in a separate
file if there are many.
Name and style code consistently.
Break code into small, discrete pieces.
Factor out common operations rather than repeating them.
Keep all of the source files for a project in one directory and use
relative paths to access them.
Keep track of the memory used by your program.
Always start with a clean environment instead of saving the
workspace.
Keep track of session information in your project folder.
Have someone else review your code.
Use version control.