read_log(file, col_names = FALSE, col_types = NULL, skip = 0, n_max = -1, progress = interactive())
Files ending in .gz
, .bz2
, .xz
, or .zip
will
be automatically uncompressed. Files starting with http://
,
https://
, ftp://
, or ftps://
will be automatically
downloaded. Remote gz files can also be automatically downloaded &
decompressed.
Literal data is most useful for examples and tests. It must contain at least one new line to be recognised as data (instead of a path).
TRUE
, FALSE
or a character vector
of column names. If TRUE
, the first row of the input will be used as the column
names, and will not be included in the data frame. If FALSE
, column
names will be generated automatically: X1, X2, X3 etc.
If col_names
is a character vector, the values will be used as the
names of the columns, and the first row of the input will be read into
the first row of the output data frame.
NULL
, a cols
, specification of
a string. See vignette("column-types")
for more details. If NULL
, all column types will be imputed from the first 1000 rows
on the input. This is convenient (and fast), but not robust. If the
imputation fails, you'll need to supply the correct types yourself.
If a column specification created by cols
, it must contain
one "collector
" for each column. If you only want to read a
subset of the columns, use cols_only
.
Alternatively, you can use a compact string representation where each
character represents one column:
c = character, i = integer, n = number, d = double,
l = logical, D = date, T = date time, t = time, ? = guess, or
_
/-
to skip the column.
read_log(system.file("extdata/example.log", package = "readr"))
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