These functions uses the Arrow C++ CSV reader to read into a tibble
.
Arrow C++ options have been mapped to argument names that follow those of
readr::read_delim()
, and col_select
was inspired by vroom::vroom()
.
Usage
read_delim_arrow(
file,
delim = ",",
quote = "\"",
escape_double = TRUE,
escape_backslash = FALSE,
schema = NULL,
col_names = TRUE,
col_types = NULL,
col_select = NULL,
na = c("", "NA"),
quoted_na = TRUE,
skip_empty_rows = TRUE,
skip = 0L,
parse_options = NULL,
convert_options = NULL,
read_options = NULL,
as_data_frame = TRUE,
timestamp_parsers = NULL
)
read_csv_arrow(
file,
quote = "\"",
escape_double = TRUE,
escape_backslash = FALSE,
schema = NULL,
col_names = TRUE,
col_types = NULL,
col_select = NULL,
na = c("", "NA"),
quoted_na = TRUE,
skip_empty_rows = TRUE,
skip = 0L,
parse_options = NULL,
convert_options = NULL,
read_options = NULL,
as_data_frame = TRUE,
timestamp_parsers = NULL
)
read_tsv_arrow(
file,
quote = "\"",
escape_double = TRUE,
escape_backslash = FALSE,
schema = NULL,
col_names = TRUE,
col_types = NULL,
col_select = NULL,
na = c("", "NA"),
quoted_na = TRUE,
skip_empty_rows = TRUE,
skip = 0L,
parse_options = NULL,
convert_options = NULL,
read_options = NULL,
as_data_frame = TRUE,
timestamp_parsers = NULL
)
Arguments
- file
A character file name or URI, literal data (either a single string or a raw vector), an Arrow input stream, or a
FileSystem
with path (SubTreeFileSystem
).If a file name, a memory-mapped Arrow InputStream will be opened and closed when finished; compression will be detected from the file extension and handled automatically. If an input stream is provided, it will be left open.
To be recognised as literal data, the input must be wrapped with
I()
.- delim
Single character used to separate fields within a record.
- quote
Single character used to quote strings.
- escape_double
Does the file escape quotes by doubling them? i.e. If this option is
TRUE
, the value""""
represents a single quote,\"
.- escape_backslash
Does the file use backslashes to escape special characters? This is more general than
escape_double
as backslashes can be used to escape the delimiter character, the quote character, or to add special characters like\\n
.- schema
Schema that describes the table. If provided, it will be used to satisfy both
col_names
andcol_types
.- col_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. IfFALSE
, column names will be generated by Arrow, starting with "f0", "f1", ..., "fN". Alternatively, you can specify a character vector of column names.- col_types
A compact string representation of the column types, an Arrow Schema, or
NULL
(the default) to infer types from the data.- col_select
A character vector of column names to keep, as in the "select" argument to
data.table::fread()
, or a tidy selection specification of columns, as used indplyr::select()
.- na
A character vector of strings to interpret as missing values.
- quoted_na
Should missing values inside quotes be treated as missing values (the default) or strings. (Note that this is different from the the Arrow C++ default for the corresponding convert option,
strings_can_be_null
.)- skip_empty_rows
Should blank rows be ignored altogether? If
TRUE
, blank rows will not be represented at all. IfFALSE
, they will be filled with missings.- skip
Number of lines to skip before reading data.
- parse_options
see file reader options. If given, this overrides any parsing options provided in other arguments (e.g.
delim
,quote
, etc.).- convert_options
- read_options
- as_data_frame
Should the function return a
tibble
(default) or an Arrow Table?- timestamp_parsers
User-defined timestamp parsers. If more than one parser is specified, the CSV conversion logic will try parsing values starting from the beginning of this vector. Possible values are:
NULL
: the default, which uses the ISO-8601 parsera character vector of strptime parse strings
a list of TimestampParser objects
Details
read_csv_arrow()
and read_tsv_arrow()
are wrappers around
read_delim_arrow()
that specify a delimiter.
Note that not all readr
options are currently implemented here. Please file
an issue if you encounter one that arrow
should support.
If you need to control Arrow-specific reader parameters that don't have an
equivalent in readr::read_csv()
, you can either provide them in the
parse_options
, convert_options
, or read_options
arguments, or you can
use CsvTableReader directly for lower-level access.
Specifying column types and names
By default, the CSV reader will infer the column names and data types from the file, but there are a few ways you can specify them directly.
One way is to provide an Arrow Schema in the schema
argument,
which is an ordered map of column name to type.
When provided, it satisfies both the col_names
and col_types
arguments.
This is good if you know all of this information up front.
You can also pass a Schema
to the col_types
argument. If you do this,
column names will still be inferred from the file unless you also specify
col_names
. In either case, the column names in the Schema
must match the
data's column names, whether they are explicitly provided or inferred. That
said, this Schema
does not have to reference all columns: those omitted
will have their types inferred.
Alternatively, you can declare column types by providing the compact string representation
that readr
uses to the col_types
argument. This means you provide a
single string, one character per column, where the characters map to Arrow
types analogously to the readr
type mapping:
"c":
utf8()
"i":
int32()
"n":
float64()
"d":
float64()
"l":
bool()
"f":
dictionary()
"D":
date32()
"t":
time32()
(Theunit
arg is set to the default value"ms"
)"_":
null()
"-":
null()
"?": infer the type from the data
If you use the compact string representation for col_types
, you must also
specify col_names
.
Regardless of how types are specified, all columns with a null()
type will
be dropped.
Note that if you are specifying column names, whether by schema
or
col_names
, and the CSV file has a header row that would otherwise be used
to idenfity column names, you'll need to add skip = 1
to skip that row.
Examples
tf <- tempfile()
on.exit(unlink(tf))
write.csv(mtcars, file = tf)
df <- read_csv_arrow(tf)
dim(df)
#> [1] 32 12
# Can select columns
df <- read_csv_arrow(tf, col_select = starts_with("d"))
# Specifying column types and names
write.csv(data.frame(x = c(1, 3), y = c(2, 4)), file = tf, row.names = FALSE)
read_csv_arrow(tf, schema = schema(x = int32(), y = utf8()), skip = 1)
#> # A tibble: 2 x 2
#> x y
#> <int> <chr>
#> 1 1 2
#> 2 3 4
read_csv_arrow(tf, col_types = schema(y = utf8()))
#> # A tibble: 2 x 2
#> x y
#> <int> <chr>
#> 1 1 2
#> 2 3 4
read_csv_arrow(tf, col_types = "ic", col_names = c("x", "y"), skip = 1)
#> # A tibble: 2 x 2
#> x y
#> <int> <chr>
#> 1 1 2
#> 2 3 4
# Note that if a timestamp column contains time zones,
# the string "T" `col_types` specification won't work.
# To parse timestamps with time zones, provide a [Schema] to `col_types`
# and specify the time zone in the type object:
tf <- tempfile()
write.csv(data.frame(x = "1970-01-01T12:00:00+12:00"), file = tf, row.names = FALSE)
read_csv_arrow(
tf,
col_types = schema(x = timestamp(unit = "us", timezone = "UTC"))
)
#> # A tibble: 1 x 1
#> x
#> <dttm>
#> 1 1970-01-01 00:00:00
# Read directly from strings with `I()`
read_csv_arrow(I("x,y\n1,2\n3,4"))
#> # A tibble: 2 x 2
#> x y
#> <int> <int>
#> 1 1 2
#> 2 3 4
read_delim_arrow(I(c("x y", "1 2", "3 4")), delim = " ")
#> # A tibble: 2 x 2
#> x y
#> <int> <int>
#> 1 1 2
#> 2 3 4