A Scanner iterates over a Dataset's fragments and returns data
according to given row filtering and column projection. A ScannerBuilder
can help create one.
Factory
Scanner$create() wraps the ScannerBuilder interface to make a Scanner.
It takes the following arguments:
dataset: ADatasetorarrow_dplyr_queryobject, as returned by thedplyrmethods onDataset.projection: A character vector of column names to select columns or a named list of expressionsfilter: AExpressionto filter the scanned rows by, orTRUE(default) to keep all rows.use_threads: logical: should scanning use multithreading? DefaultTRUE...: Additional arguments, currently ignored
Methods
ScannerBuilder has the following methods:
$Project(cols): Indicate that the scan should only return columns given bycols, a character vector of column names or a named list of Expression.$Filter(expr): Filter rows by an Expression.$UseThreads(threads): logical: should the scan use multithreading? The method's default input isTRUE, but you must call the method to enable multithreading because the scanner default isFALSE.$BatchSize(batch_size): integer: Maximum row count of scanned record batches, default is 32K. If scanned record batches are overflowing memory then this method can be called to reduce their size.$schema: Active binding, returns the Schema of the Dataset$Finish(): Returns aScanner
Scanner currently has a single method, $ToTable(), which evaluates the
query and returns an Arrow Table.
Examples
# Set up directory for examples
tf <- tempfile()
dir.create(tf)
on.exit(unlink(tf))
write_dataset(mtcars, tf, partitioning="cyl")
ds <- open_dataset(tf)
scan_builder <- ds$NewScan()
scan_builder$Filter(Expression$field_ref("hp") > 100)
#> ScannerBuilder
scan_builder$Project(list(hp_times_ten = 10 * Expression$field_ref("hp")))
#> ScannerBuilder
# Once configured, call $Finish()
scanner <- scan_builder$Finish()
# Can get results as a table
as.data.frame(scanner$ToTable())
#> hp_times_ten
#> 1 1130
#> 2 1090
#> 3 1100
#> 4 1100
#> 5 1100
#> 6 1050
#> 7 1230
#> 8 1230
#> 9 1750
#> 10 1750
#> 11 2450
#> 12 1800
#> 13 1800
#> 14 1800
#> 15 2050
#> 16 2150
#> 17 2300
#> 18 1500
#> 19 1500
#> 20 2450
#> 21 1750
#> 22 2640
#> 23 3350
# Or as a RecordBatchReader
scanner$ToRecordBatchReader()
#> RecordBatchReader
#> hp_times_ten: double
#>
#> See $metadata for additional Schema metadata