Source code for pyspark.sql.streaming

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import sys
import json

if sys.version >= '3':
    intlike = int
    basestring = unicode = str
else:
    intlike = (int, long)

from abc import ABCMeta, abstractmethod

from pyspark import since, keyword_only
from pyspark.rdd import ignore_unicode_prefix
from pyspark.sql.column import _to_seq
from pyspark.sql.readwriter import OptionUtils, to_str
from pyspark.sql.types import *
from pyspark.sql.utils import StreamingQueryException

__all__ = ["StreamingQuery", "StreamingQueryManager", "DataStreamReader", "DataStreamWriter"]


[docs]class StreamingQuery(object): """ A handle to a query that is executing continuously in the background as new data arrives. All these methods are thread-safe. .. note:: Experimental .. versionadded:: 2.0 """ def __init__(self, jsq): self._jsq = jsq @property @since(2.0) def id(self): """Returns the unique id of this query that persists across restarts from checkpoint data. That is, this id is generated when a query is started for the first time, and will be the same every time it is restarted from checkpoint data. There can only be one query with the same id active in a Spark cluster. Also see, `runId`. """ return self._jsq.id().toString() @property @since(2.1) def runId(self): """Returns the unique id of this query that does not persist across restarts. That is, every query that is started (or restarted from checkpoint) will have a different runId. """ return self._jsq.runId().toString() @property @since(2.0) def name(self): """Returns the user-specified name of the query, or null if not specified. This name can be specified in the `org.apache.spark.sql.streaming.DataStreamWriter` as `dataframe.writeStream.queryName("query").start()`. This name, if set, must be unique across all active queries. """ return self._jsq.name() @property @since(2.0) def isActive(self): """Whether this streaming query is currently active or not. """ return self._jsq.isActive() @since(2.0)
[docs] def awaitTermination(self, timeout=None): """Waits for the termination of `this` query, either by :func:`query.stop()` or by an exception. If the query has terminated with an exception, then the exception will be thrown. If `timeout` is set, it returns whether the query has terminated or not within the `timeout` seconds. If the query has terminated, then all subsequent calls to this method will either return immediately (if the query was terminated by :func:`stop()`), or throw the exception immediately (if the query has terminated with exception). throws :class:`StreamingQueryException`, if `this` query has terminated with an exception """ if timeout is not None: if not isinstance(timeout, (int, float)) or timeout < 0: raise ValueError("timeout must be a positive integer or float. Got %s" % timeout) return self._jsq.awaitTermination(int(timeout * 1000)) else: return self._jsq.awaitTermination()
@property @since(2.1) def status(self): """ Returns the current status of the query. """ return json.loads(self._jsq.status().json()) @property @since(2.1) def recentProgress(self): """Returns an array of the most recent [[StreamingQueryProgress]] updates for this query. The number of progress updates retained for each stream is configured by Spark session configuration `spark.sql.streaming.numRecentProgressUpdates`. """ return [json.loads(p.json()) for p in self._jsq.recentProgress()] @property @since(2.1) def lastProgress(self): """ Returns the most recent :class:`StreamingQueryProgress` update of this streaming query or None if there were no progress updates :return: a map """ lastProgress = self._jsq.lastProgress() if lastProgress: return json.loads(lastProgress.json()) else: return None @since(2.0)
[docs] def processAllAvailable(self): """Blocks until all available data in the source has been processed and committed to the sink. This method is intended for testing. .. note:: In the case of continually arriving data, this method may block forever. Additionally, this method is only guaranteed to block until data that has been synchronously appended data to a stream source prior to invocation. (i.e. `getOffset` must immediately reflect the addition). """ return self._jsq.processAllAvailable()
@since(2.0)
[docs] def stop(self): """Stop this streaming query. """ self._jsq.stop()
@since(2.1)
[docs] def explain(self, extended=False): """Prints the (logical and physical) plans to the console for debugging purpose. :param extended: boolean, default ``False``. If ``False``, prints only the physical plan. >>> sq = sdf.writeStream.format('memory').queryName('query_explain').start() >>> sq.processAllAvailable() # Wait a bit to generate the runtime plans. >>> sq.explain() == Physical Plan == ... >>> sq.explain(True) == Parsed Logical Plan == ... == Analyzed Logical Plan == ... == Optimized Logical Plan == ... == Physical Plan == ... >>> sq.stop() """ # Cannot call `_jsq.explain(...)` because it will print in the JVM process. # We should print it in the Python process. print(self._jsq.explainInternal(extended))
@since(2.1)
[docs] def exception(self): """ :return: the StreamingQueryException if the query was terminated by an exception, or None. """ if self._jsq.exception().isDefined(): je = self._jsq.exception().get() msg = je.toString().split(': ', 1)[1] # Drop the Java StreamingQueryException type info stackTrace = '\n\t at '.join(map(lambda x: x.toString(), je.getStackTrace())) return StreamingQueryException(msg, stackTrace) else: return None
[docs]class StreamingQueryManager(object): """A class to manage all the :class:`StreamingQuery` StreamingQueries active. .. note:: Experimental .. versionadded:: 2.0 """ def __init__(self, jsqm): self._jsqm = jsqm @property @ignore_unicode_prefix @since(2.0) def active(self): """Returns a list of active queries associated with this SQLContext >>> sq = sdf.writeStream.format('memory').queryName('this_query').start() >>> sqm = spark.streams >>> # get the list of active streaming queries >>> [q.name for q in sqm.active] [u'this_query'] >>> sq.stop() """ return [StreamingQuery(jsq) for jsq in self._jsqm.active()] @ignore_unicode_prefix @since(2.0)
[docs] def get(self, id): """Returns an active query from this SQLContext or throws exception if an active query with this name doesn't exist. >>> sq = sdf.writeStream.format('memory').queryName('this_query').start() >>> sq.name u'this_query' >>> sq = spark.streams.get(sq.id) >>> sq.isActive True >>> sq = sqlContext.streams.get(sq.id) >>> sq.isActive True >>> sq.stop() """ return StreamingQuery(self._jsqm.get(id))
@since(2.0)
[docs] def awaitAnyTermination(self, timeout=None): """Wait until any of the queries on the associated SQLContext has terminated since the creation of the context, or since :func:`resetTerminated()` was called. If any query was terminated with an exception, then the exception will be thrown. If `timeout` is set, it returns whether the query has terminated or not within the `timeout` seconds. If a query has terminated, then subsequent calls to :func:`awaitAnyTermination()` will either return immediately (if the query was terminated by :func:`query.stop()`), or throw the exception immediately (if the query was terminated with exception). Use :func:`resetTerminated()` to clear past terminations and wait for new terminations. In the case where multiple queries have terminated since :func:`resetTermination()` was called, if any query has terminated with exception, then :func:`awaitAnyTermination()` will throw any of the exception. For correctly documenting exceptions across multiple queries, users need to stop all of them after any of them terminates with exception, and then check the `query.exception()` for each query. throws :class:`StreamingQueryException`, if `this` query has terminated with an exception """ if timeout is not None: if not isinstance(timeout, (int, float)) or timeout < 0: raise ValueError("timeout must be a positive integer or float. Got %s" % timeout) return self._jsqm.awaitAnyTermination(int(timeout * 1000)) else: return self._jsqm.awaitAnyTermination()
@since(2.0)
[docs] def resetTerminated(self): """Forget about past terminated queries so that :func:`awaitAnyTermination()` can be used again to wait for new terminations. >>> spark.streams.resetTerminated() """ self._jsqm.resetTerminated()
class Trigger(object): """Used to indicate how often results should be produced by a :class:`StreamingQuery`. .. note:: Experimental .. versionadded:: 2.0 """ __metaclass__ = ABCMeta @abstractmethod def _to_java_trigger(self, sqlContext): """Internal method to construct the trigger on the jvm. """ pass class ProcessingTime(Trigger): """A trigger that runs a query periodically based on the processing time. If `interval` is 0, the query will run as fast as possible. The interval should be given as a string, e.g. '2 seconds', '5 minutes', ... .. note:: Experimental .. versionadded:: 2.0 """ def __init__(self, interval): if type(interval) != str or len(interval.strip()) == 0: raise ValueError("interval should be a non empty interval string, e.g. '2 seconds'.") self.interval = interval def _to_java_trigger(self, sqlContext): return sqlContext._sc._jvm.org.apache.spark.sql.streaming.ProcessingTime.create( self.interval)
[docs]class DataStreamReader(OptionUtils): """ Interface used to load a streaming :class:`DataFrame` from external storage systems (e.g. file systems, key-value stores, etc). Use :func:`spark.readStream` to access this. .. note:: Experimental. .. versionadded:: 2.0 """ def __init__(self, spark): self._jreader = spark._ssql_ctx.readStream() self._spark = spark def _df(self, jdf): from pyspark.sql.dataframe import DataFrame return DataFrame(jdf, self._spark) @since(2.0)
[docs] def format(self, source): """Specifies the input data source format. .. note:: Experimental. :param source: string, name of the data source, e.g. 'json', 'parquet'. >>> s = spark.readStream.format("text") """ self._jreader = self._jreader.format(source) return self
@since(2.0)
[docs] def schema(self, schema): """Specifies the input schema. Some data sources (e.g. JSON) can infer the input schema automatically from data. By specifying the schema here, the underlying data source can skip the schema inference step, and thus speed up data loading. .. note:: Experimental. :param schema: a :class:`pyspark.sql.types.StructType` object >>> s = spark.readStream.schema(sdf_schema) """ from pyspark.sql import SparkSession if not isinstance(schema, StructType): raise TypeError("schema should be StructType") spark = SparkSession.builder.getOrCreate() jschema = spark._jsparkSession.parseDataType(schema.json()) self._jreader = self._jreader.schema(jschema) return self
@since(2.0)
[docs] def option(self, key, value): """Adds an input option for the underlying data source. .. note:: Experimental. >>> s = spark.readStream.option("x", 1) """ self._jreader = self._jreader.option(key, to_str(value)) return self
@since(2.0)
[docs] def options(self, **options): """Adds input options for the underlying data source. .. note:: Experimental. >>> s = spark.readStream.options(x="1", y=2) """ for k in options: self._jreader = self._jreader.option(k, to_str(options[k])) return self
@since(2.0)
[docs] def load(self, path=None, format=None, schema=None, **options): """Loads a data stream from a data source and returns it as a :class`DataFrame`. .. note:: Experimental. :param path: optional string for file-system backed data sources. :param format: optional string for format of the data source. Default to 'parquet'. :param schema: optional :class:`pyspark.sql.types.StructType` for the input schema. :param options: all other string options >>> json_sdf = spark.readStream.format("json") \\ ... .schema(sdf_schema) \\ ... .load(tempfile.mkdtemp()) >>> json_sdf.isStreaming True >>> json_sdf.schema == sdf_schema True """ if format is not None: self.format(format) if schema is not None: self.schema(schema) self.options(**options) if path is not None: if type(path) != str or len(path.strip()) == 0: raise ValueError("If the path is provided for stream, it needs to be a " + "non-empty string. List of paths are not supported.") return self._df(self._jreader.load(path)) else: return self._df(self._jreader.load())
@since(2.0)
[docs] def json(self, path, schema=None, primitivesAsString=None, prefersDecimal=None, allowComments=None, allowUnquotedFieldNames=None, allowSingleQuotes=None, allowNumericLeadingZero=None, allowBackslashEscapingAnyCharacter=None, mode=None, columnNameOfCorruptRecord=None, dateFormat=None, timestampFormat=None): """ Loads a JSON file stream (`JSON Lines text format or newline-delimited JSON <http://jsonlines.org/>`_) and returns a :class`DataFrame`. If the ``schema`` parameter is not specified, this function goes through the input once to determine the input schema. .. note:: Experimental. :param path: string represents path to the JSON dataset, or RDD of Strings storing JSON objects. :param schema: an optional :class:`pyspark.sql.types.StructType` for the input schema. :param primitivesAsString: infers all primitive values as a string type. If None is set, it uses the default value, ``false``. :param prefersDecimal: infers all floating-point values as a decimal type. If the values do not fit in decimal, then it infers them as doubles. If None is set, it uses the default value, ``false``. :param allowComments: ignores Java/C++ style comment in JSON records. If None is set, it uses the default value, ``false``. :param allowUnquotedFieldNames: allows unquoted JSON field names. If None is set, it uses the default value, ``false``. :param allowSingleQuotes: allows single quotes in addition to double quotes. If None is set, it uses the default value, ``true``. :param allowNumericLeadingZero: allows leading zeros in numbers (e.g. 00012). If None is set, it uses the default value, ``false``. :param allowBackslashEscapingAnyCharacter: allows accepting quoting of all character using backslash quoting mechanism. If None is set, it uses the default value, ``false``. :param mode: allows a mode for dealing with corrupt records during parsing. If None is set, it uses the default value, ``PERMISSIVE``. * ``PERMISSIVE`` : sets other fields to ``null`` when it meets a corrupted \ record and puts the malformed string into a new field configured by \ ``columnNameOfCorruptRecord``. When a schema is set by user, it sets \ ``null`` for extra fields. * ``DROPMALFORMED`` : ignores the whole corrupted records. * ``FAILFAST`` : throws an exception when it meets corrupted records. :param columnNameOfCorruptRecord: allows renaming the new field having malformed string created by ``PERMISSIVE`` mode. This overrides ``spark.sql.columnNameOfCorruptRecord``. If None is set, it uses the value specified in ``spark.sql.columnNameOfCorruptRecord``. :param dateFormat: sets the string that indicates a date format. Custom date formats follow the formats at ``java.text.SimpleDateFormat``. This applies to date type. If None is set, it uses the default value value, ``yyyy-MM-dd``. :param timestampFormat: sets the string that indicates a timestamp format. Custom date formats follow the formats at ``java.text.SimpleDateFormat``. This applies to timestamp type. If None is set, it uses the default value value, ``yyyy-MM-dd'T'HH:mm:ss.SSSZZ``. >>> json_sdf = spark.readStream.json(tempfile.mkdtemp(), schema = sdf_schema) >>> json_sdf.isStreaming True >>> json_sdf.schema == sdf_schema True """ self._set_opts( schema=schema, primitivesAsString=primitivesAsString, prefersDecimal=prefersDecimal, allowComments=allowComments, allowUnquotedFieldNames=allowUnquotedFieldNames, allowSingleQuotes=allowSingleQuotes, allowNumericLeadingZero=allowNumericLeadingZero, allowBackslashEscapingAnyCharacter=allowBackslashEscapingAnyCharacter, mode=mode, columnNameOfCorruptRecord=columnNameOfCorruptRecord, dateFormat=dateFormat, timestampFormat=timestampFormat) if isinstance(path, basestring): return self._df(self._jreader.json(path)) else: raise TypeError("path can be only a single string")
@since(2.0)
[docs] def parquet(self, path): """Loads a Parquet file stream, returning the result as a :class:`DataFrame`. You can set the following Parquet-specific option(s) for reading Parquet files: * ``mergeSchema``: sets whether we should merge schemas collected from all \ Parquet part-files. This will override ``spark.sql.parquet.mergeSchema``. \ The default value is specified in ``spark.sql.parquet.mergeSchema``. .. note:: Experimental. >>> parquet_sdf = spark.readStream.schema(sdf_schema).parquet(tempfile.mkdtemp()) >>> parquet_sdf.isStreaming True >>> parquet_sdf.schema == sdf_schema True """ if isinstance(path, basestring): return self._df(self._jreader.parquet(path)) else: raise TypeError("path can be only a single string")
@ignore_unicode_prefix @since(2.0)
[docs] def text(self, path): """ Loads a text file stream and returns a :class:`DataFrame` whose schema starts with a string column named "value", and followed by partitioned columns if there are any. Each line in the text file is a new row in the resulting DataFrame. .. note:: Experimental. :param paths: string, or list of strings, for input path(s). >>> text_sdf = spark.readStream.text(tempfile.mkdtemp()) >>> text_sdf.isStreaming True >>> "value" in str(text_sdf.schema) True """ if isinstance(path, basestring): return self._df(self._jreader.text(path)) else: raise TypeError("path can be only a single string")
@since(2.0)
[docs] def csv(self, path, schema=None, sep=None, encoding=None, quote=None, escape=None, comment=None, header=None, inferSchema=None, ignoreLeadingWhiteSpace=None, ignoreTrailingWhiteSpace=None, nullValue=None, nanValue=None, positiveInf=None, negativeInf=None, dateFormat=None, timestampFormat=None, maxColumns=None, maxCharsPerColumn=None, maxMalformedLogPerPartition=None, mode=None): """Loads a CSV file stream and returns the result as a :class:`DataFrame`. This function will go through the input once to determine the input schema if ``inferSchema`` is enabled. To avoid going through the entire data once, disable ``inferSchema`` option or specify the schema explicitly using ``schema``. .. note:: Experimental. :param path: string, or list of strings, for input path(s). :param schema: an optional :class:`pyspark.sql.types.StructType` for the input schema. :param sep: sets the single character as a separator for each field and value. If None is set, it uses the default value, ``,``. :param encoding: decodes the CSV files by the given encoding type. If None is set, it uses the default value, ``UTF-8``. :param quote: sets the single character used for escaping quoted values where the separator can be part of the value. If None is set, it uses the default value, ``"``. If you would like to turn off quotations, you need to set an empty string. :param escape: sets the single character used for escaping quotes inside an already quoted value. If None is set, it uses the default value, ``\``. :param comment: sets the single character used for skipping lines beginning with this character. By default (None), it is disabled. :param header: uses the first line as names of columns. If None is set, it uses the default value, ``false``. :param inferSchema: infers the input schema automatically from data. It requires one extra pass over the data. If None is set, it uses the default value, ``false``. :param ignoreLeadingWhiteSpace: defines whether or not leading whitespaces from values being read should be skipped. If None is set, it uses the default value, ``false``. :param ignoreTrailingWhiteSpace: defines whether or not trailing whitespaces from values being read should be skipped. If None is set, it uses the default value, ``false``. :param nullValue: sets the string representation of a null value. If None is set, it uses the default value, empty string. Since 2.0.1, this ``nullValue`` param applies to all supported types including the string type. :param nanValue: sets the string representation of a non-number value. If None is set, it uses the default value, ``NaN``. :param positiveInf: sets the string representation of a positive infinity value. If None is set, it uses the default value, ``Inf``. :param negativeInf: sets the string representation of a negative infinity value. If None is set, it uses the default value, ``Inf``. :param dateFormat: sets the string that indicates a date format. Custom date formats follow the formats at ``java.text.SimpleDateFormat``. This applies to date type. If None is set, it uses the default value value, ``yyyy-MM-dd``. :param timestampFormat: sets the string that indicates a timestamp format. Custom date formats follow the formats at ``java.text.SimpleDateFormat``. This applies to timestamp type. If None is set, it uses the default value value, ``yyyy-MM-dd'T'HH:mm:ss.SSSZZ``. :param maxColumns: defines a hard limit of how many columns a record can have. If None is set, it uses the default value, ``20480``. :param maxCharsPerColumn: defines the maximum number of characters allowed for any given value being read. If None is set, it uses the default value, ``-1`` meaning unlimited length. :param mode: allows a mode for dealing with corrupt records during parsing. If None is set, it uses the default value, ``PERMISSIVE``. * ``PERMISSIVE`` : sets other fields to ``null`` when it meets a corrupted record. When a schema is set by user, it sets ``null`` for extra fields. * ``DROPMALFORMED`` : ignores the whole corrupted records. * ``FAILFAST`` : throws an exception when it meets corrupted records. >>> csv_sdf = spark.readStream.csv(tempfile.mkdtemp(), schema = sdf_schema) >>> csv_sdf.isStreaming True >>> csv_sdf.schema == sdf_schema True """ self._set_opts( schema=schema, sep=sep, encoding=encoding, quote=quote, escape=escape, comment=comment, header=header, inferSchema=inferSchema, ignoreLeadingWhiteSpace=ignoreLeadingWhiteSpace, ignoreTrailingWhiteSpace=ignoreTrailingWhiteSpace, nullValue=nullValue, nanValue=nanValue, positiveInf=positiveInf, negativeInf=negativeInf, dateFormat=dateFormat, timestampFormat=timestampFormat, maxColumns=maxColumns, maxCharsPerColumn=maxCharsPerColumn, maxMalformedLogPerPartition=maxMalformedLogPerPartition, mode=mode) if isinstance(path, basestring): return self._df(self._jreader.csv(path)) else: raise TypeError("path can be only a single string")
[docs]class DataStreamWriter(object): """ Interface used to write a streaming :class:`DataFrame` to external storage systems (e.g. file systems, key-value stores, etc). Use :func:`DataFrame.writeStream` to access this. .. note:: Experimental. .. versionadded:: 2.0 """ def __init__(self, df): self._df = df self._spark = df.sql_ctx self._jwrite = df._jdf.writeStream() def _sq(self, jsq): from pyspark.sql.streaming import StreamingQuery return StreamingQuery(jsq) @since(2.0)
[docs] def outputMode(self, outputMode): """Specifies how data of a streaming DataFrame/Dataset is written to a streaming sink. Options include: * `append`:Only the new rows in the streaming DataFrame/Dataset will be written to the sink * `complete`:All the rows in the streaming DataFrame/Dataset will be written to the sink every time these is some updates * `update`:only the rows that were updated in the streaming DataFrame/Dataset will be written to the sink every time there are some updates. If the query doesn't contain aggregations, it will be equivalent to `append` mode. .. note:: Experimental. >>> writer = sdf.writeStream.outputMode('append') """ if not outputMode or type(outputMode) != str or len(outputMode.strip()) == 0: raise ValueError('The output mode must be a non-empty string. Got: %s' % outputMode) self._jwrite = self._jwrite.outputMode(outputMode) return self
@since(2.0)
[docs] def format(self, source): """Specifies the underlying output data source. .. note:: Experimental. :param source: string, name of the data source, which for now can be 'parquet'. >>> writer = sdf.writeStream.format('json') """ self._jwrite = self._jwrite.format(source) return self
@since(2.0)
[docs] def option(self, key, value): """Adds an output option for the underlying data source. .. note:: Experimental. """ self._jwrite = self._jwrite.option(key, to_str(value)) return self
@since(2.0)
[docs] def options(self, **options): """Adds output options for the underlying data source. .. note:: Experimental. """ for k in options: self._jwrite = self._jwrite.option(k, to_str(options[k])) return self
@since(2.0)
[docs] def partitionBy(self, *cols): """Partitions the output by the given columns on the file system. If specified, the output is laid out on the file system similar to Hive's partitioning scheme. .. note:: Experimental. :param cols: name of columns """ if len(cols) == 1 and isinstance(cols[0], (list, tuple)): cols = cols[0] self._jwrite = self._jwrite.partitionBy(_to_seq(self._spark._sc, cols)) return self
@since(2.0)
[docs] def queryName(self, queryName): """Specifies the name of the :class:`StreamingQuery` that can be started with :func:`start`. This name must be unique among all the currently active queries in the associated SparkSession. .. note:: Experimental. :param queryName: unique name for the query >>> writer = sdf.writeStream.queryName('streaming_query') """ if not queryName or type(queryName) != str or len(queryName.strip()) == 0: raise ValueError('The queryName must be a non-empty string. Got: %s' % queryName) self._jwrite = self._jwrite.queryName(queryName) return self
@keyword_only @since(2.0)
[docs] def trigger(self, processingTime=None): """Set the trigger for the stream query. If this is not set it will run the query as fast as possible, which is equivalent to setting the trigger to ``processingTime='0 seconds'``. .. note:: Experimental. :param processingTime: a processing time interval as a string, e.g. '5 seconds', '1 minute'. >>> # trigger the query for execution every 5 seconds >>> writer = sdf.writeStream.trigger(processingTime='5 seconds') """ from pyspark.sql.streaming import ProcessingTime trigger = None if processingTime is not None: if type(processingTime) != str or len(processingTime.strip()) == 0: raise ValueError('The processing time must be a non empty string. Got: %s' % processingTime) trigger = ProcessingTime(processingTime) if trigger is None: raise ValueError('A trigger was not provided. Supported triggers: processingTime.') self._jwrite = self._jwrite.trigger(trigger._to_java_trigger(self._spark)) return self
@ignore_unicode_prefix @since(2.0)
[docs] def start(self, path=None, format=None, outputMode=None, partitionBy=None, queryName=None, **options): """Streams the contents of the :class:`DataFrame` to a data source. The data source is specified by the ``format`` and a set of ``options``. If ``format`` is not specified, the default data source configured by ``spark.sql.sources.default`` will be used. .. note:: Experimental. :param path: the path in a Hadoop supported file system :param format: the format used to save :param outputMode: specifies how data of a streaming DataFrame/Dataset is written to a streaming sink. * `append`:Only the new rows in the streaming DataFrame/Dataset will be written to the sink * `complete`:All the rows in the streaming DataFrame/Dataset will be written to the sink every time these is some updates * `update`:only the rows that were updated in the streaming DataFrame/Dataset will be written to the sink every time there are some updates. If the query doesn't contain aggregations, it will be equivalent to `append` mode. :param partitionBy: names of partitioning columns :param queryName: unique name for the query :param options: All other string options. You may want to provide a `checkpointLocation` for most streams, however it is not required for a `memory` stream. >>> sq = sdf.writeStream.format('memory').queryName('this_query').start() >>> sq.isActive True >>> sq.name u'this_query' >>> sq.stop() >>> sq.isActive False >>> sq = sdf.writeStream.trigger(processingTime='5 seconds').start( ... queryName='that_query', outputMode="append", format='memory') >>> sq.name u'that_query' >>> sq.isActive True >>> sq.stop() """ self.options(**options) if outputMode is not None: self.outputMode(outputMode) if partitionBy is not None: self.partitionBy(partitionBy) if format is not None: self.format(format) if queryName is not None: self.queryName(queryName) if path is None: return self._sq(self._jwrite.start()) else: return self._sq(self._jwrite.start(path))
def _test(): import doctest import os import tempfile from pyspark.sql import Row, SparkSession, SQLContext import pyspark.sql.streaming os.chdir(os.environ["SPARK_HOME"]) globs = pyspark.sql.streaming.__dict__.copy() try: spark = SparkSession.builder.getOrCreate() except py4j.protocol.Py4JError: spark = SparkSession(sc) globs['tempfile'] = tempfile globs['os'] = os globs['spark'] = spark globs['sqlContext'] = SQLContext.getOrCreate(spark.sparkContext) globs['sdf'] = \ spark.readStream.format('text').load('python/test_support/sql/streaming') globs['sdf_schema'] = StructType([StructField("data", StringType(), False)]) globs['df'] = \ globs['spark'].readStream.format('text').load('python/test_support/sql/streaming') (failure_count, test_count) = doctest.testmod( pyspark.sql.streaming, globs=globs, optionflags=doctest.ELLIPSIS | doctest.NORMALIZE_WHITESPACE | doctest.REPORT_NDIFF) globs['spark'].stop() if failure_count: exit(-1) if __name__ == "__main__": _test()