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Writes a Spark dataframe stream into an ORC stream.
stream_write_orc(x, path, mode = c("append", "complete", "update"),
trigger = stream_trigger_interval(), checkpoint = file.path(path,
"checkpoints", random_string("")), options = list(), ...)
A Spark DataFrame or dplyr operation
The destination path. Needs to be accessible from the cluster. Supports the "hdfs://", "s3a://" and "file://" protocols.
Specifies how data is written to a streaming sink. Valid values are
"append"
, "complete"
or "update"
.
The trigger for the stream query, defaults to micro-batches runnnig
every 5 seconds. See stream_trigger_interval
and
stream_trigger_continuous
.
The location where the system will write all the checkpoint information to guarantee end-to-end fault-tolerance.
A list of strings with additional options.
Optional arguments; currently unused.
Other Spark stream serialization: stream_read_csv
,
stream_read_json
,
stream_read_kafka
,
stream_read_orc
,
stream_read_parquet
,
stream_read_scoket
,
stream_read_text
,
stream_write_console
,
stream_write_csv
,
stream_write_json
,
stream_write_kafka
,
stream_write_memory
,
stream_write_parquet
,
stream_write_text
# NOT RUN {
sc <- spark_connect(master = "local")
sdf_len(sc, 10) %>% spark_write_orc("orc-in")
stream <- stream_read_orc(sc, "orc-in") %>% stream_write_orc("orc-out")
stream_stop(stream)
# }
# NOT RUN {
# }
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