I'm the author of the video tutorial mentioned in the question. Here's a summary of the functions relevant to this discussion:
data.frame() is R's function for creating regular data frames.
data_frame() is dplyr's function for creating local data frames.
as_data_frame() are dplyr's functions for converting a regular data frame (or a list) into a local data frame.
So, what is the difference between regular and local data frames? Very little. A local data frame is just a regular data frame that has been wrapped with the
tbl_df class for nicer printing. (The data is still stored in a regular data frame "under the hood".)
Specifically, printing a local data frame only shows the first 10 rows, and as many columns as can fit on your screen. (You can see an example of this behavior at the top of the RMarkdown document from my first dplyr video tutorial, which precedes the tutorial linked above).
All dplyr functions return a local data frame by default, though you can convert it back to a regular data frame using the
data.frame() function. One reason to do that is if you prefer the way that regular data frames print, namely that you want to see more rows or more columns. However, dplyr allows you to do this without converting it:
# print a local data frame (10 rows, variable number of columns)
# print 15 rows
print(flights, n = 15)
# print all rows (don't run this, since it has 336,776 rows)
print(flights, n = Inf)
# print all columns
print(flights, width = Inf)
dplyr has a vignette about data frames that provides more technical details.