>> spark = ( ... SparkSession.builder ... .master("local") ... .appName("Word Count") ... .config("spark.some.config.option", "some-value") ... .getOrCreate() ... ) Create a Spark session with Spark Connect. >>> spark = ( ... SparkSession.builder ... .remote("sc://localhost") ... .appName("Word Count") ... .config("spark.some.config.option", "some-value") ... .getOrCreate() ... ) # doctest: +SKIP """ class Builder: """Builder for :class:`SparkSession`.""" _lock = RLock() def __init__(self) -> None: self._options: Dict[str, Any] = {} @overload def config(self, *, conf: SparkConf) -> "SparkSession.Builder": ... @overload def config(self, key: str, value: Any) -> "SparkSession.Builder": ... @overload def config(self, *, map: Dict[str, "OptionalPrimitiveType"]) -> "SparkSession.Builder": ... def config( self, key: Optional[str] = None, value: Optional[Any] = None, conf: Optional[SparkConf] = None, *, map: Optional[Dict[str, "OptionalPrimitiveType"]] = None, ) -> "SparkSession.Builder": """Sets a config option. Options set using this method are automatically propagated to both :class:`SparkConf` and :class:`SparkSession`'s own configuration. .. versionadded:: 2.0.0 .. versionchanged:: 3.4.0 Supports Spark Connect. Parameters ---------- key : str, optional a key name string for configuration property value : str, optional a value for configuration property conf : :class:`SparkConf`, optional an instance of :class:`SparkConf` map: dictionary, optional a dictionary of configurations to set .. versionadded:: 3.4.0 Returns ------- :class:`SparkSession.Builder` Examples -------- For an existing class:`SparkConf`, use `conf` parameter. >>> from pyspark.conf import SparkConf >>> SparkSession.builder.config(conf=SparkConf()) >> SparkSession.builder.config("spark.some.config.option", "some-value") >> SparkSession.builder.config( ... map={"spark.some.config.number": 123, "spark.some.config.float": 0.123}) None: """ Helper function that validates the combination of startup URLs and raises an exception if incompatible options are selected. """ if "spark.master" in self._options and ( "spark.remote" in self._options or "SPARK_REMOTE" in os.environ ): raise RuntimeError( "Spark master cannot be configured with Spark Connect server; " "however, found URL for Spark Connect [%s]" % self._options.get("spark.remote", os.environ.get("SPARK_REMOTE")) ) if "spark.remote" in self._options and ( "spark.master" in self._options or "MASTER" in os.environ ): raise RuntimeError( "Spark Connect server cannot be configured with Spark master; " "however, found URL for Spark master [%s]" % self._options.get("spark.master", os.environ.get("MASTER")) ) if "spark.remote" in self._options: remote = cast(str, self._options.get("spark.remote")) if ("SPARK_REMOTE" in os.environ and os.environ["SPARK_REMOTE"] != remote) and ( "SPARK_LOCAL_REMOTE" in os.environ and not remote.startswith("local") ): raise RuntimeError( "Only one Spark Connect client URL can be set; however, got a " "different URL [%s] from the existing [%s]" % (os.environ["SPARK_REMOTE"], remote) ) def master(self, master: str) -> "SparkSession.Builder": """Sets the Spark master URL to connect to, such as "local" to run locally, "local[4]" to run locally with 4 cores, or "spark://master:7077" to run on a Spark standalone cluster. .. versionadded:: 2.0.0 Parameters ---------- master : str a url for spark master Returns ------- :class:`SparkSession.Builder` Examples -------- >>> SparkSession.builder.master("local") "SparkSession.Builder": """Sets the Spark remote URL to connect to, such as "sc://host:port" to run it via Spark Connect server. .. versionadded:: 3.4.0 Parameters ---------- url : str URL to Spark Connect server Returns ------- :class:`SparkSession.Builder` Examples -------- >>> SparkSession.builder.remote("sc://localhost") # doctest: +SKIP "SparkSession.Builder": """Sets a name for the application, which will be shown in the Spark web UI. If no application name is set, a randomly generated name will be used. .. versionadded:: 2.0.0 .. versionchanged:: 3.4.0 Supports Spark Connect. Parameters ---------- name : str an application name Returns ------- :class:`SparkSession.Builder` Examples -------- >>> SparkSession.builder.appName("My app") "SparkSession.Builder": """Enables Hive support, including connectivity to a persistent Hive metastore, support for Hive SerDes, and Hive user-defined functions. .. versionadded:: 2.0.0 Returns ------- :class:`SparkSession.Builder` Examples -------- >>> SparkSession.builder.enableHiveSupport() "SparkSession": """Gets an existing :class:`SparkSession` or, if there is no existing one, creates a new one based on the options set in this builder. .. versionadded:: 2.0.0 .. versionchanged:: 3.4.0 Supports Spark Connect. Returns ------- :class:`SparkSession` Examples -------- This method first checks whether there is a valid global default SparkSession, and if yes, return that one. If no valid global default SparkSession exists, the method creates a new SparkSession and assigns the newly created SparkSession as the global default. >>> s1 = SparkSession.builder.config("k1", "v1").getOrCreate() >>> s1.conf.get("k1") == "v1" True The configuration of the SparkSession can be changed afterwards >>> s1.conf.set("k1", "v1_new") >>> s1.conf.get("k1") == "v1_new" True In case an existing SparkSession is returned, the config options specified in this builder will be applied to the existing SparkSession. >>> s2 = SparkSession.builder.config("k2", "v2").getOrCreate() >>> s1.conf.get("k1") == s2.conf.get("k1") == "v1_new" True >>> s1.conf.get("k2") == s2.conf.get("k2") == "v2" True """ from pyspark.context import SparkContext from pyspark.conf import SparkConf opts = dict(self._options) with self._lock: if ( "SPARK_CONNECT_MODE_ENABLED" in os.environ or "SPARK_REMOTE" in os.environ or "spark.remote" in opts ): with SparkContext._lock: from pyspark.sql.connect.session import SparkSession as RemoteSparkSession if ( SparkContext._active_spark_context is None and SparkSession._instantiatedSession is None ): url = opts.get("spark.remote", os.environ.get("SPARK_REMOTE")) if url.startswith("local"): os.environ["SPARK_LOCAL_REMOTE"] = "1" RemoteSparkSession._start_connect_server(url, opts) url = "sc://localhost" os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1" opts["spark.remote"] = url return RemoteSparkSession.builder.config(map=opts).getOrCreate() elif "SPARK_LOCAL_REMOTE" in os.environ: url = "sc://localhost" os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1" opts["spark.remote"] = url return RemoteSparkSession.builder.config(map=opts).getOrCreate() else: raise RuntimeError( "Cannot start a remote Spark session because there " "is a regular Spark session already running." ) session = SparkSession._instantiatedSession if session is None or session._sc._jsc is None: sparkConf = SparkConf() for key, value in self._options.items(): sparkConf.set(key, value) # This SparkContext may be an existing one. sc = SparkContext.getOrCreate(sparkConf) # Do not update `SparkConf` for existing `SparkContext`, as it's shared # by all sessions. session = SparkSession(sc, options=self._options) else: getattr( getattr(session._jvm, "SparkSession$"), "MODULE$" ).applyModifiableSettings(session._jsparkSession, self._options) return session # Spark Connect-specific API def create(self) -> "SparkSession": """Creates a new SparkSession. Can only be used in the context of Spark Connect and will throw an exception otherwise. .. versionadded:: 3.5.0 Returns ------- :class:`SparkSession` Notes ----- This method will update the default and/or active session if they are not set. """ opts = dict(self._options) if "SPARK_REMOTE" in os.environ or "spark.remote" in opts: from pyspark.sql.connect.session import SparkSession as RemoteSparkSession # Validate that no incompatible configuration options are selected. self._validate_startup_urls() url = opts.get("spark.remote", os.environ.get("SPARK_REMOTE")) if url.startswith("local"): raise RuntimeError( "Creating new SparkSessions with `local` " "connection string is not supported." ) # Mark this Spark Session as Spark Connect. This prevents that local PySpark is # used in conjunction with Spark Connect mode. os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1" opts["spark.remote"] = url return RemoteSparkSession.builder.config(map=opts).create() else: raise RuntimeError( "SparkSession.builder.create() can only be used with Spark Connect; " "however, spark.remote was not found." ) # TODO(SPARK-38912): Replace @classproperty with @classmethod + @property once support for # Python 3.8 is dropped. # # In Python 3.9, the @property decorator has been made compatible with the # @classmethod decorator (https://docs.python.org/3.9/library/functions.html#classmethod) # # @classmethod + @property is also affected by a bug in Python's docstring which was backported # to Python 3.9.6 (https://github.com/python/cpython/pull/28838)">

pyspark.sql.session — PySpark 3.5.5 documentation (original) (raw)

Licensed to the Apache Software Foundation (ASF) under one or more

contributor license agreements. See the NOTICE file distributed with

this work for additional information regarding copyright ownership.

The ASF licenses this file to You under the Apache License, Version 2.0

(the "License"); you may not use this file except in compliance with

the License. You may obtain a copy of the License at

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software

distributed under the License is distributed on an "AS IS" BASIS,

WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.

See the License for the specific language governing permissions and

limitations under the License.

import os import sys import warnings from collections.abc import Sized from functools import reduce from threading import RLock from types import TracebackType from typing import ( Any, ClassVar, Dict, Iterable, List, Optional, Tuple, Type, Union, Set, cast, no_type_check, overload, TYPE_CHECKING, )

from py4j.java_gateway import JavaObject

from pyspark import SparkConf, SparkContext from pyspark.rdd import RDD from pyspark.sql.column import _to_java_column from pyspark.sql.conf import RuntimeConfig from pyspark.sql.dataframe import DataFrame from pyspark.sql.functions import lit from pyspark.sql.pandas.conversion import SparkConversionMixin from pyspark.sql.readwriter import DataFrameReader from pyspark.sql.sql_formatter import SQLStringFormatter from pyspark.sql.streaming import DataStreamReader from pyspark.sql.types import ( AtomicType, DataType, StructField, StructType, _make_type_verifier, _infer_schema, _has_nulltype, _merge_type, _create_converter, _parse_datatype_string, _from_numpy_type, ) from pyspark.errors.exceptions.captured import install_exception_handler from pyspark.sql.utils import is_timestamp_ntz_preferred, to_str, try_remote_session_classmethod from pyspark.errors import PySparkValueError, PySparkTypeError, PySparkRuntimeError

if TYPE_CHECKING: from pyspark.sql._typing import AtomicValue, RowLike, OptionalPrimitiveType from pyspark.sql.catalog import Catalog from pyspark.sql.pandas._typing import ArrayLike, DataFrameLike as PandasDataFrameLike from pyspark.sql.streaming import StreamingQueryManager from pyspark.sql.udf import UDFRegistration from pyspark.sql.udtf import UDTFRegistration

# Running MyPy type checks will always require pandas and
# other dependencies so importing here is fine.
from pyspark.sql.connect.client import SparkConnectClient

all = ["SparkSession"]

def _monkey_patch_RDD(sparkSession: "SparkSession") -> None: @no_type_check def toDF(self, schema=None, sampleRatio=None): """ Converts current :class:RDD into a :class:DataFrame

    This is a shorthand for ``spark.createDataFrame(rdd, schema, sampleRatio)``

    Parameters
    ----------
    schema : :class:`pyspark.sql.types.DataType`, str or list, optional
        a :class:`pyspark.sql.types.DataType` or a datatype string or a list of
        column names, default is None.  The data type string format equals to
        :class:`pyspark.sql.types.DataType.simpleString`, except that top level struct type can
        omit the ``struct<>`` and atomic types use ``typeName()`` as their format, e.g. use
        ``byte`` instead of ``tinyint`` for :class:`pyspark.sql.types.ByteType`.
        We can also use ``int`` as a short name for :class:`pyspark.sql.types.IntegerType`.
    sampleRatio : float, optional
        the sample ratio of rows used for inferring

    Returns
    -------
    :class:`DataFrame`

    Examples
    --------
    >>> rdd = spark.range(1).rdd.map(lambda x: tuple(x))
    >>> rdd.collect()
    [(0,)]
    >>> rdd.toDF().show()
    +---+
    | _1|
    +---+
    |  0|
    +---+
    """
    return sparkSession.createDataFrame(self, schema, sampleRatio)

RDD.toDF = toDF  # type: ignore[assignment]

TODO(SPARK-38912): This method can be dropped once support for Python 3.8 is dropped

In Python 3.9, the @property decorator has been made compatible with the

@classmethod decorator (https://docs.python.org/3.9/library/functions.html#classmethod)

@classmethod + @property is also affected by a bug in Python's docstring which was backported

to Python 3.9.6 (https://github.com/python/cpython/pull/28838)

class classproperty(property): """Same as Python's @property decorator, but for class attributes.

Examples
--------
>>> class Builder:
...    def build(self):
...        return MyClass()
...
>>> class MyClass:
...     @classproperty
...     def builder(cls):
...         print("instantiating new builder")
...         return Builder()
...
>>> c1 = MyClass.builder
instantiating new builder
>>> c2 = MyClass.builder
instantiating new builder
>>> c1 == c2
False
>>> isinstance(c1.build(), MyClass)
True
"""

def __get__(self, instance: Any, owner: Any = None) -> "SparkSession.Builder":
    # The "type: ignore" below silences the following error from mypy:
    # error: Argument 1 to "classmethod" has incompatible
    # type "Optional[Callable[[Any], Any]]";
    # expected "Callable[..., Any]"  [arg-type]
    return classmethod(self.fget).__get__(None, owner)()  # type: ignore

[docs]class SparkSession(SparkConversionMixin): """The entry point to programming Spark with the Dataset and DataFrame API.

A SparkSession can be used to create :class:`DataFrame`, register :class:`DataFrame` as
tables, execute SQL over tables, cache tables, and read parquet files.
To create a :class:`SparkSession`, use the following builder pattern:

.. versionchanged:: 3.4.0
    Supports Spark Connect.

.. autoattribute:: builder
   :annotation:

Examples
--------
Create a Spark session.

>>> spark = (
...     SparkSession.builder
...         .master("local")
...         .appName("Word Count")
...         .config("spark.some.config.option", "some-value")
...         .getOrCreate()
... )

Create a Spark session with Spark Connect.

>>> spark = (
...     SparkSession.builder
...         .remote("sc://localhost")
...         .appName("Word Count")
...         .config("spark.some.config.option", "some-value")
...         .getOrCreate()
... )  # doctest: +SKIP
"""

class Builder:
    """Builder for :class:`SparkSession`."""

    _lock = RLock()

    def __init__(self) -> None:
        self._options: Dict[str, Any] = {}

    @overload
    def config(self, *, conf: SparkConf) -> "SparkSession.Builder":
        ...

    @overload
    def config(self, key: str, value: Any) -> "SparkSession.Builder":
        ...

    @overload
    def config(self, *, map: Dict[str, "OptionalPrimitiveType"]) -> "SparkSession.Builder":
        ...

    def config(
        self,
        key: Optional[str] = None,
        value: Optional[Any] = None,
        conf: Optional[SparkConf] = None,
        *,
        map: Optional[Dict[str, "OptionalPrimitiveType"]] = None,
    ) -> "SparkSession.Builder":
        """Sets a config option. Options set using this method are automatically propagated to
        both :class:`SparkConf` and :class:`SparkSession`'s own configuration.

        .. versionadded:: 2.0.0

        .. versionchanged:: 3.4.0
            Supports Spark Connect.

        Parameters
        ----------
        key : str, optional
            a key name string for configuration property
        value : str, optional
            a value for configuration property
        conf : :class:`SparkConf`, optional
            an instance of :class:`SparkConf`
        map: dictionary, optional
            a dictionary of configurations to set

            .. versionadded:: 3.4.0

        Returns
        -------
        :class:`SparkSession.Builder`

        Examples
        --------
        For an existing class:`SparkConf`, use `conf` parameter.

        >>> from pyspark.conf import SparkConf
        >>> SparkSession.builder.config(conf=SparkConf())
        <pyspark.sql.session.SparkSession.Builder...

        For a (key, value) pair, you can omit parameter names.

        >>> SparkSession.builder.config("spark.some.config.option", "some-value")
        <pyspark.sql.session.SparkSession.Builder...

        Additionally, you can pass a dictionary of configurations to set.

        >>> SparkSession.builder.config(
        ...     map={"spark.some.config.number": 123, "spark.some.config.float": 0.123})
        <pyspark.sql.session.SparkSession.Builder...
        """
        with self._lock:
            if conf is not None:
                for (k, v) in conf.getAll():
                    self._validate_startup_urls()
                    self._options[k] = v
            elif map is not None:
                for k, v in map.items():  # type: ignore[assignment]
                    v = to_str(v)  # type: ignore[assignment]
                    self._validate_startup_urls()
                    self._options[k] = v
            else:
                value = to_str(value)
                self._validate_startup_urls()
                self._options[cast(str, key)] = value
            return self

    def _validate_startup_urls(
        self,
    ) -> None:
        """
        Helper function that validates the combination of startup URLs and raises an exception
        if incompatible options are selected.
        """
        if "spark.master" in self._options and (
            "spark.remote" in self._options or "SPARK_REMOTE" in os.environ
        ):
            raise RuntimeError(
                "Spark master cannot be configured with Spark Connect server; "
                "however, found URL for Spark Connect [%s]"
                % self._options.get("spark.remote", os.environ.get("SPARK_REMOTE"))
            )
        if "spark.remote" in self._options and (
            "spark.master" in self._options or "MASTER" in os.environ
        ):
            raise RuntimeError(
                "Spark Connect server cannot be configured with Spark master; "
                "however, found URL for Spark master [%s]"
                % self._options.get("spark.master", os.environ.get("MASTER"))
            )

        if "spark.remote" in self._options:
            remote = cast(str, self._options.get("spark.remote"))
            if ("SPARK_REMOTE" in os.environ and os.environ["SPARK_REMOTE"] != remote) and (
                "SPARK_LOCAL_REMOTE" in os.environ and not remote.startswith("local")
            ):
                raise RuntimeError(
                    "Only one Spark Connect client URL can be set; however, got a "
                    "different URL [%s] from the existing [%s]"
                    % (os.environ["SPARK_REMOTE"], remote)
                )

    def master(self, master: str) -> "SparkSession.Builder":
        """Sets the Spark master URL to connect to, such as "local" to run locally, "local[4]"
        to run locally with 4 cores, or "spark://master:7077" to run on a Spark standalone
        cluster.

        .. versionadded:: 2.0.0

        Parameters
        ----------
        master : str
            a url for spark master

        Returns
        -------
        :class:`SparkSession.Builder`

        Examples
        --------
        >>> SparkSession.builder.master("local")
        <pyspark.sql.session.SparkSession.Builder...
        """
        return self.config("spark.master", master)

    def remote(self, url: str) -> "SparkSession.Builder":
        """Sets the Spark remote URL to connect to, such as "sc://host:port" to run
        it via Spark Connect server.

        .. versionadded:: 3.4.0

        Parameters
        ----------
        url : str
            URL to Spark Connect server

        Returns
        -------
        :class:`SparkSession.Builder`

        Examples
        --------
        >>> SparkSession.builder.remote("sc://localhost")  # doctest: +SKIP
        <pyspark.sql.session.SparkSession.Builder...
        """
        return self.config("spark.remote", url)

    def appName(self, name: str) -> "SparkSession.Builder":
        """Sets a name for the application, which will be shown in the Spark web UI.

        If no application name is set, a randomly generated name will be used.

        .. versionadded:: 2.0.0

        .. versionchanged:: 3.4.0
            Supports Spark Connect.

        Parameters
        ----------
        name : str
            an application name

        Returns
        -------
        :class:`SparkSession.Builder`

        Examples
        --------
        >>> SparkSession.builder.appName("My app")
        <pyspark.sql.session.SparkSession.Builder...
        """
        return self.config("spark.app.name", name)

    def enableHiveSupport(self) -> "SparkSession.Builder":
        """Enables Hive support, including connectivity to a persistent Hive metastore, support
        for Hive SerDes, and Hive user-defined functions.

        .. versionadded:: 2.0.0

        Returns
        -------
        :class:`SparkSession.Builder`

        Examples
        --------
        >>> SparkSession.builder.enableHiveSupport()
        <pyspark.sql.session.SparkSession.Builder...
        """
        return self.config("spark.sql.catalogImplementation", "hive")

    def getOrCreate(self) -> "SparkSession":
        """Gets an existing :class:`SparkSession` or, if there is no existing one, creates a
        new one based on the options set in this builder.

        .. versionadded:: 2.0.0

        .. versionchanged:: 3.4.0
            Supports Spark Connect.

        Returns
        -------
        :class:`SparkSession`

        Examples
        --------
        This method first checks whether there is a valid global default SparkSession, and if
        yes, return that one. If no valid global default SparkSession exists, the method
        creates a new SparkSession and assigns the newly created SparkSession as the global
        default.

        >>> s1 = SparkSession.builder.config("k1", "v1").getOrCreate()
        >>> s1.conf.get("k1") == "v1"
        True

        The configuration of the SparkSession can be changed afterwards

        >>> s1.conf.set("k1", "v1_new")
        >>> s1.conf.get("k1") == "v1_new"
        True

        In case an existing SparkSession is returned, the config options specified
        in this builder will be applied to the existing SparkSession.

        >>> s2 = SparkSession.builder.config("k2", "v2").getOrCreate()
        >>> s1.conf.get("k1") == s2.conf.get("k1") == "v1_new"
        True
        >>> s1.conf.get("k2") == s2.conf.get("k2") == "v2"
        True
        """
        from pyspark.context import SparkContext
        from pyspark.conf import SparkConf

        opts = dict(self._options)

        with self._lock:
            if (
                "SPARK_CONNECT_MODE_ENABLED" in os.environ
                or "SPARK_REMOTE" in os.environ
                or "spark.remote" in opts
            ):
                with SparkContext._lock:
                    from pyspark.sql.connect.session import SparkSession as RemoteSparkSession

                    if (
                        SparkContext._active_spark_context is None
                        and SparkSession._instantiatedSession is None
                    ):
                        url = opts.get("spark.remote", os.environ.get("SPARK_REMOTE"))

                        if url.startswith("local"):
                            os.environ["SPARK_LOCAL_REMOTE"] = "1"
                            RemoteSparkSession._start_connect_server(url, opts)
                            url = "sc://localhost"

                        os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1"
                        opts["spark.remote"] = url
                        return RemoteSparkSession.builder.config(map=opts).getOrCreate()
                    elif "SPARK_LOCAL_REMOTE" in os.environ:
                        url = "sc://localhost"
                        os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1"
                        opts["spark.remote"] = url
                        return RemoteSparkSession.builder.config(map=opts).getOrCreate()
                    else:
                        raise RuntimeError(
                            "Cannot start a remote Spark session because there "
                            "is a regular Spark session already running."
                        )

            session = SparkSession._instantiatedSession
            if session is None or session._sc._jsc is None:
                sparkConf = SparkConf()
                for key, value in self._options.items():
                    sparkConf.set(key, value)
                # This SparkContext may be an existing one.
                sc = SparkContext.getOrCreate(sparkConf)
                # Do not update `SparkConf` for existing `SparkContext`, as it's shared
                # by all sessions.
                session = SparkSession(sc, options=self._options)
            else:
                getattr(
                    getattr(session._jvm, "SparkSession$"), "MODULE$"
                ).applyModifiableSettings(session._jsparkSession, self._options)
            return session

    # Spark Connect-specific API
    def create(self) -> "SparkSession":
        """Creates a new SparkSession. Can only be used in the context of Spark Connect
        and will throw an exception otherwise.

        .. versionadded:: 3.5.0

        Returns
        -------
        :class:`SparkSession`

        Notes
        -----
        This method will update the default and/or active session if they are not set.
        """
        opts = dict(self._options)
        if "SPARK_REMOTE" in os.environ or "spark.remote" in opts:
            from pyspark.sql.connect.session import SparkSession as RemoteSparkSession

            # Validate that no incompatible configuration options are selected.
            self._validate_startup_urls()

            url = opts.get("spark.remote", os.environ.get("SPARK_REMOTE"))
            if url.startswith("local"):
                raise RuntimeError(
                    "Creating new SparkSessions with `local` "
                    "connection string is not supported."
                )

            # Mark this Spark Session as Spark Connect. This prevents that local PySpark is
            # used in conjunction with Spark Connect mode.
            os.environ["SPARK_CONNECT_MODE_ENABLED"] = "1"
            opts["spark.remote"] = url
            return RemoteSparkSession.builder.config(map=opts).create()
        else:
            raise RuntimeError(
                "SparkSession.builder.create() can only be used with Spark Connect; "
                "however, spark.remote was not found."
            )

# TODO(SPARK-38912): Replace @classproperty with @classmethod + @property once support for
# Python 3.8 is dropped.
#
# In Python 3.9, the @property decorator has been made compatible with the
# @classmethod decorator (https://docs.python.org/3.9/library/functions.html#classmethod)
#
# @classmethod + @property is also affected by a bug in Python's docstring which was backported
# to Python 3.9.6 (https://github.com/python/cpython/pull/28838)

[docs] @classproperty def builder(cls) -> Builder: """Creates a :class:Builder for constructing a :class:SparkSession.

    .. versionchanged:: 3.4.0
        Supports Spark Connect.
    """
    return cls.Builder()


_instantiatedSession: ClassVar[Optional["SparkSession"]] = None
_activeSession: ClassVar[Optional["SparkSession"]] = None

def __init__(
    self,
    sparkContext: SparkContext,
    jsparkSession: Optional[JavaObject] = None,
    options: Dict[str, Any] = {},
):
    self._sc = sparkContext
    self._jsc = self._sc._jsc
    self._jvm = self._sc._jvm

    assert self._jvm is not None

    if jsparkSession is None:
        if (
            self._jvm.SparkSession.getDefaultSession().isDefined()
            and not self._jvm.SparkSession.getDefaultSession().get().sparkContext().isStopped()
        ):
            jsparkSession = self._jvm.SparkSession.getDefaultSession().get()
            getattr(getattr(self._jvm, "SparkSession$"), "MODULE$").applyModifiableSettings(
                jsparkSession, options
            )
        else:
            jsparkSession = self._jvm.SparkSession(self._jsc.sc(), options)
    else:
        getattr(getattr(self._jvm, "SparkSession$"), "MODULE$").applyModifiableSettings(
            jsparkSession, options
        )
    self._jsparkSession = jsparkSession
    _monkey_patch_RDD(self)
    install_exception_handler()
    # If we had an instantiated SparkSession attached with a SparkContext
    # which is stopped now, we need to renew the instantiated SparkSession.
    # Otherwise, we will use invalid SparkSession when we call Builder.getOrCreate.
    if (
        SparkSession._instantiatedSession is None
        or SparkSession._instantiatedSession._sc._jsc is None
    ):
        SparkSession._instantiatedSession = self
        SparkSession._activeSession = self
        assert self._jvm is not None
        self._jvm.SparkSession.setDefaultSession(self._jsparkSession)
        self._jvm.SparkSession.setActiveSession(self._jsparkSession)

def _repr_html_(self) -> str:
    return """
        <div>
            <p><b>SparkSession - {catalogImplementation}</b></p>
            {sc_HTML}
        </div>
    """.format(
        catalogImplementation=self.conf.get("spark.sql.catalogImplementation"),
        sc_HTML=self.sparkContext._repr_html_(),
    )

@property
def _jconf(self) -> "JavaObject":
    """Accessor for the JVM SQL-specific configurations"""
    return self._jsparkSession.sessionState().conf()

[docs] def newSession(self) -> "SparkSession": """ Returns a new :class:SparkSession as new session, that has separate SQLConf, registered temporary views and UDFs, but shared :class:SparkContext and table cache.

    .. versionadded:: 2.0.0

    Returns
    -------
    :class:`SparkSession`
        Spark session if an active session exists for the current thread

    Examples
    --------
    >>> spark.newSession()
    <...SparkSession object ...>
    """
    return self.__class__(self._sc, self._jsparkSession.newSession())

[docs] @classmethod @try_remote_session_classmethod def getActiveSession(cls) -> Optional["SparkSession"]: """ Returns the active :class:SparkSession for the current thread, returned by the builder

    .. versionadded:: 3.0.0

    .. versionchanged:: 3.5.0
        Supports Spark Connect.

    Returns
    -------
    :class:`SparkSession`
        Spark session if an active session exists for the current thread

    Examples
    --------
    >>> s = SparkSession.getActiveSession()
    >>> df = s.createDataFrame([('Alice', 1)], ['name', 'age'])
    >>> df.select("age").show()
    +---+
    |age|
    +---+
    |  1|
    +---+
    """
    from pyspark import SparkContext

    sc = SparkContext._active_spark_context
    if sc is None:
        return None
    else:
        assert sc._jvm is not None
        if sc._jvm.SparkSession.getActiveSession().isDefined():
            SparkSession(sc, sc._jvm.SparkSession.getActiveSession().get())
            return SparkSession._activeSession
        else:
            return None

[docs] @classmethod @try_remote_session_classmethod def active(cls) -> "SparkSession": """ Returns the active or default :class:SparkSession for the current thread, returned by the builder.

    .. versionadded:: 3.5.0

    Returns
    -------
    :class:`SparkSession`
        Spark session if an active or default session exists for the current thread.
    """
    session = cls.getActiveSession()
    if session is None:
        session = cls._instantiatedSession
        if session is None:
            raise PySparkRuntimeError(
                error_class="NO_ACTIVE_OR_DEFAULT_SESSION",
                message_parameters={},
            )
    return session


@property
def sparkContext(self) -> SparkContext:
    """
    Returns the underlying :class:`SparkContext`.

    .. versionadded:: 2.0.0

    Returns
    -------
    :class:`SparkContext`

    Examples
    --------
    >>> spark.sparkContext
    <SparkContext master=... appName=...>

    Create an RDD from the Spark context

    >>> rdd = spark.sparkContext.parallelize([1, 2, 3])
    >>> rdd.collect()
    [1, 2, 3]
    """
    return self._sc

@property
def version(self) -> str:
    """
    The version of Spark on which this application is running.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Returns
    -------
    str
        the version of Spark in string.

    Examples
    --------
    >>> _ = spark.version
    """
    return self._jsparkSession.version()

@property
def conf(self) -> RuntimeConfig:
    """Runtime configuration interface for Spark.

    This is the interface through which the user can get and set all Spark and Hadoop
    configurations that are relevant to Spark SQL. When getting the value of a config,
    this defaults to the value set in the underlying :class:`SparkContext`, if any.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Returns
    -------
    :class:`pyspark.sql.conf.RuntimeConfig`

    Examples
    --------
    >>> spark.conf
    <pyspark...RuntimeConf...>

    Set a runtime configuration for the session

    >>> spark.conf.set("key", "value")
    >>> spark.conf.get("key")
    'value'
    """
    if not hasattr(self, "_conf"):
        self._conf = RuntimeConfig(self._jsparkSession.conf())
    return self._conf

@property
def catalog(self) -> "Catalog":
    """Interface through which the user may create, drop, alter or query underlying
    databases, tables, functions, etc.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Returns
    -------
    :class:`Catalog`

    Examples
    --------
    >>> spark.catalog
    <...Catalog object ...>

    Create a temp view, show the list, and drop it.

    >>> spark.range(1).createTempView("test_view")
    >>> spark.catalog.listTables()
    [Table(name='test_view', catalog=None, namespace=[], description=None, ...
    >>> _ = spark.catalog.dropTempView("test_view")
    """
    from pyspark.sql.catalog import Catalog

    if not hasattr(self, "_catalog"):
        self._catalog = Catalog(self)
    return self._catalog

@property
def udf(self) -> "UDFRegistration":
    """Returns a :class:`UDFRegistration` for UDF registration.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Returns
    -------
    :class:`UDFRegistration`

    Examples
    --------
    Register a Python UDF, and use it in SQL.

    >>> strlen = spark.udf.register("strlen", lambda x: len(x))
    >>> spark.sql("SELECT strlen('test')").show()
    +------------+
    |strlen(test)|
    +------------+
    |           4|
    +------------+
    """
    from pyspark.sql.udf import UDFRegistration

    return UDFRegistration(self)

@property
def udtf(self) -> "UDTFRegistration":
    """Returns a :class:`UDTFRegistration` for UDTF registration.

    .. versionadded:: 3.5.0

    Returns
    -------
    :class:`UDTFRegistration`

    Notes
    -----
    Supports Spark Connect.
    """
    from pyspark.sql.udtf import UDTFRegistration

    return UDTFRegistration(self)

[docs] def range( self, start: int, end: Optional[int] = None, step: int = 1, numPartitions: Optional[int] = None, ) -> DataFrame: """ Create a :class:DataFrame with single :class:pyspark.sql.types.LongType column named id, containing elements in a range from start to end (exclusive) with step value step.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Parameters
    ----------
    start : int
        the start value
    end : int, optional
        the end value (exclusive)
    step : int, optional
        the incremental step (default: 1)
    numPartitions : int, optional
        the number of partitions of the DataFrame

    Returns
    -------
    :class:`DataFrame`

    Examples
    --------
    >>> spark.range(1, 7, 2).show()
    +---+
    | id|
    +---+
    |  1|
    |  3|
    |  5|
    +---+

    If only one argument is specified, it will be used as the end value.

    >>> spark.range(3).show()
    +---+
    | id|
    +---+
    |  0|
    |  1|
    |  2|
    +---+
    """
    if numPartitions is None:
        numPartitions = self._sc.defaultParallelism

    if end is None:
        jdf = self._jsparkSession.range(0, int(start), int(step), int(numPartitions))
    else:
        jdf = self._jsparkSession.range(int(start), int(end), int(step), int(numPartitions))

    return DataFrame(jdf, self)


def _inferSchemaFromList(
    self, data: Iterable[Any], names: Optional[List[str]] = None
) -> StructType:
    """
    Infer schema from list of Row, dict, or tuple.

    Parameters
    ----------
    data : iterable
        list of Row, dict, or tuple
    names : list, optional
        list of column names

    Returns
    -------
    :class:`pyspark.sql.types.StructType`
    """
    if not data:
        raise PySparkValueError(
            error_class="CANNOT_INFER_EMPTY_SCHEMA",
            message_parameters={},
        )
    infer_dict_as_struct = self._jconf.inferDictAsStruct()
    infer_array_from_first_element = self._jconf.legacyInferArrayTypeFromFirstElement()
    prefer_timestamp_ntz = is_timestamp_ntz_preferred()
    schema = reduce(
        _merge_type,
        (
            _infer_schema(
                row,
                names,
                infer_dict_as_struct=infer_dict_as_struct,
                infer_array_from_first_element=infer_array_from_first_element,
                prefer_timestamp_ntz=prefer_timestamp_ntz,
            )
            for row in data
        ),
    )
    if _has_nulltype(schema):
        raise PySparkValueError(
            error_class="CANNOT_DETERMINE_TYPE",
            message_parameters={},
        )
    return schema

def _inferSchema(
    self,
    rdd: RDD[Any],
    samplingRatio: Optional[float] = None,
    names: Optional[List[str]] = None,
) -> StructType:
    """
    Infer schema from an RDD of Row, dict, or tuple.

    Parameters
    ----------
    rdd : :class:`RDD`
        an RDD of Row, dict, or tuple
    samplingRatio : float, optional
        sampling ratio, or no sampling (default)
    names : list, optional

    Returns
    -------
    :class:`pyspark.sql.types.StructType`
    """
    first = rdd.first()
    if isinstance(first, Sized) and len(first) == 0:
        raise PySparkValueError(
            error_class="CANNOT_INFER_EMPTY_SCHEMA",
            message_parameters={},
        )

    infer_dict_as_struct = self._jconf.inferDictAsStruct()
    infer_array_from_first_element = self._jconf.legacyInferArrayTypeFromFirstElement()
    prefer_timestamp_ntz = is_timestamp_ntz_preferred()
    if samplingRatio is None:
        schema = _infer_schema(
            first,
            names=names,
            infer_dict_as_struct=infer_dict_as_struct,
            prefer_timestamp_ntz=prefer_timestamp_ntz,
        )
        if _has_nulltype(schema):
            for row in rdd.take(100)[1:]:
                schema = _merge_type(
                    schema,
                    _infer_schema(
                        row,
                        names=names,
                        infer_dict_as_struct=infer_dict_as_struct,
                        infer_array_from_first_element=infer_array_from_first_element,
                        prefer_timestamp_ntz=prefer_timestamp_ntz,
                    ),
                )
                if not _has_nulltype(schema):
                    break
            else:
                raise PySparkValueError(
                    error_class="CANNOT_DETERMINE_TYPE",
                    message_parameters={},
                )
    else:
        if samplingRatio < 0.99:
            rdd = rdd.sample(False, float(samplingRatio))
        schema = rdd.map(
            lambda row: _infer_schema(
                row,
                names,
                infer_dict_as_struct=infer_dict_as_struct,
                infer_array_from_first_element=infer_array_from_first_element,
                prefer_timestamp_ntz=prefer_timestamp_ntz,
            )
        ).reduce(_merge_type)
    return schema

def _createFromRDD(
    self,
    rdd: RDD[Any],
    schema: Optional[Union[DataType, List[str]]],
    samplingRatio: Optional[float],
) -> Tuple[RDD[Tuple], StructType]:
    """
    Create an RDD for DataFrame from an existing RDD, returns the RDD and schema.
    """
    if schema is None or isinstance(schema, (list, tuple)):
        struct = self._inferSchema(rdd, samplingRatio, names=schema)
        converter = _create_converter(struct)
        tupled_rdd = rdd.map(converter)
        if isinstance(schema, (list, tuple)):
            for i, name in enumerate(schema):
                struct.fields[i].name = name
                struct.names[i] = name

    elif isinstance(schema, StructType):
        struct = schema
        tupled_rdd = rdd

    else:
        raise PySparkTypeError(
            error_class="NOT_LIST_OR_NONE_OR_STRUCT",
            message_parameters={
                "arg_name": "schema",
                "arg_type": type(schema).__name__,
            },
        )

    # convert python objects to sql data
    internal_rdd = tupled_rdd.map(struct.toInternal)
    return internal_rdd, struct

def _createFromLocal(
    self, data: Iterable[Any], schema: Optional[Union[DataType, List[str]]]
) -> Tuple[RDD[Tuple], StructType]:
    """
    Create an RDD for DataFrame from a list or pandas.DataFrame, returns
    the RDD and schema.
    """
    # make sure data could consumed multiple times
    if not isinstance(data, list):
        data = list(data)

    if schema is None or isinstance(schema, (list, tuple)):
        struct = self._inferSchemaFromList(data, names=schema)
        converter = _create_converter(struct)
        tupled_data: Iterable[Tuple] = map(converter, data)
        if isinstance(schema, (list, tuple)):
            for i, name in enumerate(schema):
                struct.fields[i].name = name
                struct.names[i] = name

    elif isinstance(schema, StructType):
        struct = schema
        tupled_data = data

    else:
        raise PySparkTypeError(
            error_class="NOT_LIST_OR_NONE_OR_STRUCT",
            message_parameters={
                "arg_name": "schema",
                "arg_type": type(schema).__name__,
            },
        )

    # convert python objects to sql data
    internal_data = [struct.toInternal(row) for row in tupled_data]
    return self._sc.parallelize(internal_data), struct

@staticmethod
def _create_shell_session() -> "SparkSession":
    """
    Initialize a :class:`SparkSession` for a pyspark shell session. This is called from
    shell.py to make error handling simpler without needing to declare local variables in
    that script, which would expose those to users.
    """
    import py4j
    from pyspark.conf import SparkConf
    from pyspark.context import SparkContext

    try:
        # Try to access HiveConf, it will raise exception if Hive is not added
        conf = SparkConf()
        assert SparkContext._jvm is not None
        if conf.get("spark.sql.catalogImplementation", "hive").lower() == "hive":
            SparkContext._jvm.org.apache.hadoop.hive.conf.HiveConf()
            return SparkSession.builder.enableHiveSupport().getOrCreate()
        else:
            return SparkSession._getActiveSessionOrCreate()
    except (py4j.protocol.Py4JError, TypeError):
        if conf.get("spark.sql.catalogImplementation", "").lower() == "hive":
            warnings.warn(
                "Fall back to non-hive support because failing to access HiveConf, "
                "please make sure you build spark with hive"
            )

    return SparkSession._getActiveSessionOrCreate()

@staticmethod
def _getActiveSessionOrCreate(**static_conf: Any) -> "SparkSession":
    """
    Returns the active :class:`SparkSession` for the current thread, returned by the builder,
    or if there is no existing one, creates a new one based on the options set in the builder.

    NOTE that 'static_conf' might not be set if there's an active or default Spark session
    running.
    """
    spark = SparkSession.getActiveSession()
    if spark is None:
        builder = SparkSession.builder
        for k, v in static_conf.items():
            builder = builder.config(k, v)
        spark = builder.getOrCreate()
    return spark

@overload
def createDataFrame(
    self,
    data: Iterable["RowLike"],
    schema: Union[List[str], Tuple[str, ...]] = ...,
    samplingRatio: Optional[float] = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: "RDD[RowLike]",
    schema: Union[List[str], Tuple[str, ...]] = ...,
    samplingRatio: Optional[float] = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: Iterable["RowLike"],
    schema: Union[StructType, str],
    *,
    verifySchema: bool = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: "RDD[RowLike]",
    schema: Union[StructType, str],
    *,
    verifySchema: bool = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: "RDD[AtomicValue]",
    schema: Union[AtomicType, str],
    verifySchema: bool = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: Iterable["AtomicValue"],
    schema: Union[AtomicType, str],
    verifySchema: bool = ...,
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self, data: "PandasDataFrameLike", samplingRatio: Optional[float] = ...
) -> DataFrame:
    ...

@overload
def createDataFrame(
    self,
    data: "PandasDataFrameLike",
    schema: Union[StructType, str],
    verifySchema: bool = ...,
) -> DataFrame:
    ...

[docs] def createDataFrame( # type: ignore[misc] self, data: Union[RDD[Any], Iterable[Any], "PandasDataFrameLike", "ArrayLike"], schema: Optional[Union[AtomicType, StructType, str]] = None, samplingRatio: Optional[float] = None, verifySchema: bool = True, ) -> DataFrame: """ Creates a :class:DataFrame from an :class:RDD, a list, a :class:pandas.DataFrame or a :class:numpy.ndarray.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Parameters
    ----------
    data : :class:`RDD` or iterable
        an RDD of any kind of SQL data representation (:class:`Row`,
        :class:`tuple`, ``int``, ``boolean``, etc.), or :class:`list`,
        :class:`pandas.DataFrame` or :class:`numpy.ndarray`.
    schema : :class:`pyspark.sql.types.DataType`, str or list, optional
        a :class:`pyspark.sql.types.DataType` or a datatype string or a list of
        column names, default is None. The data type string format equals to
        :class:`pyspark.sql.types.DataType.simpleString`, except that top level struct type can
        omit the ``struct<>``.

        When ``schema`` is a list of column names, the type of each column
        will be inferred from ``data``.

        When ``schema`` is ``None``, it will try to infer the schema (column names and types)
        from ``data``, which should be an RDD of either :class:`Row`,
        :class:`namedtuple`, or :class:`dict`.

        When ``schema`` is :class:`pyspark.sql.types.DataType` or a datatype string, it must
        match the real data, or an exception will be thrown at runtime. If the given schema is
        not :class:`pyspark.sql.types.StructType`, it will be wrapped into a
        :class:`pyspark.sql.types.StructType` as its only field, and the field name will be
        "value". Each record will also be wrapped into a tuple, which can be converted to row
        later.
    samplingRatio : float, optional
        the sample ratio of rows used for inferring. The first few rows will be used
        if ``samplingRatio`` is ``None``.
    verifySchema : bool, optional
        verify data types of every row against schema. Enabled by default.

        .. versionadded:: 2.1.0

    Returns
    -------
    :class:`DataFrame`

    Notes
    -----
    Usage with `spark.sql.execution.arrow.pyspark.enabled=True` is experimental.

    Examples
    --------
    Create a DataFrame from a list of tuples.

    >>> spark.createDataFrame([('Alice', 1)]).show()
    +-----+---+
    |   _1| _2|
    +-----+---+
    |Alice|  1|
    +-----+---+

    Create a DataFrame from a list of dictionaries.

    >>> d = [{'name': 'Alice', 'age': 1}]
    >>> spark.createDataFrame(d).show()
    +---+-----+
    |age| name|
    +---+-----+
    |  1|Alice|
    +---+-----+

    Create a DataFrame with column names specified.

    >>> spark.createDataFrame([('Alice', 1)], ['name', 'age']).show()
    +-----+---+
    | name|age|
    +-----+---+
    |Alice|  1|
    +-----+---+

    Create a DataFrame with the explicit schema specified.

    >>> from pyspark.sql.types import *
    >>> schema = StructType([
    ...    StructField("name", StringType(), True),
    ...    StructField("age", IntegerType(), True)])
    >>> spark.createDataFrame([('Alice', 1)], schema).show()
    +-----+---+
    | name|age|
    +-----+---+
    |Alice|  1|
    +-----+---+

    Create a DataFrame with the schema in DDL formatted string.

    >>> spark.createDataFrame([('Alice', 1)], "name: string, age: int").show()
    +-----+---+
    | name|age|
    +-----+---+
    |Alice|  1|
    +-----+---+

    Create an empty DataFrame.
    When initializing an empty DataFrame in PySpark, it's mandatory to specify its schema,
    as the DataFrame lacks data from which the schema can be inferred.

    >>> spark.createDataFrame([], "name: string, age: int").show()
    +----+---+
    |name|age|
    +----+---+
    +----+---+

    Create a DataFrame from Row objects.

    >>> from pyspark.sql import Row
    >>> Person = Row('name', 'age')
    >>> df = spark.createDataFrame([Person("Alice", 1)])
    >>> df.show()
    +-----+---+
    | name|age|
    +-----+---+
    |Alice|  1|
    +-----+---+

    Create a DataFrame from a pandas DataFrame.

    >>> spark.createDataFrame(df.toPandas()).show()  # doctest: +SKIP
    +-----+---+
    | name|age|
    +-----+---+
    |Alice|  1|
    +-----+---+
    >>> spark.createDataFrame(pandas.DataFrame([[1, 2]])).collect()  # doctest: +SKIP
    +---+---+
    |  0|  1|
    +---+---+
    |  1|  2|
    +---+---+
    """
    SparkSession._activeSession = self
    assert self._jvm is not None
    self._jvm.SparkSession.setActiveSession(self._jsparkSession)
    if isinstance(data, DataFrame):
        raise PySparkTypeError(
            error_class="SHOULD_NOT_DATAFRAME",
            message_parameters={"arg_name": "data"},
        )

    if isinstance(schema, str):
        schema = cast(Union[AtomicType, StructType, str], _parse_datatype_string(schema))
    elif isinstance(schema, (list, tuple)):
        # Must re-encode any unicode strings to be consistent with StructField names
        schema = [x.encode("utf-8") if not isinstance(x, str) else x for x in schema]

    try:
        import pandas as pd

        has_pandas = True
    except Exception:
        has_pandas = False

    try:
        import numpy as np

        has_numpy = True
    except Exception:
        has_numpy = False

    if has_numpy and isinstance(data, np.ndarray):
        # `data` of numpy.ndarray type will be converted to a pandas DataFrame,
        # so pandas is required.
        from pyspark.sql.pandas.utils import require_minimum_pandas_version

        require_minimum_pandas_version()
        if data.ndim not in [1, 2]:
            raise PySparkValueError(
                error_class="INVALID_NDARRAY_DIMENSION",
                message_parameters={"dimensions": "1 or 2"},
            )

        if data.ndim == 1 or data.shape[1] == 1:
            column_names = ["value"]
        else:
            column_names = ["_%s" % i for i in range(1, data.shape[1] + 1)]

        if schema is None and not self._jconf.arrowPySparkEnabled():
            # Construct `schema` from `np.dtype` of the input NumPy array
            # TODO: Apply the logic below when self._jconf.arrowPySparkEnabled() is True
            spark_type = _from_numpy_type(data.dtype)
            if spark_type is not None:
                schema = StructType(
                    [StructField(name, spark_type, nullable=True) for name in column_names]
                )

        data = pd.DataFrame(data, columns=column_names)

    if has_pandas and isinstance(data, pd.DataFrame):
        # Create a DataFrame from pandas DataFrame.
        return super(SparkSession, self).createDataFrame(  # type: ignore[call-overload]
            data, schema, samplingRatio, verifySchema
        )
    return self._create_dataframe(
        data, schema, samplingRatio, verifySchema  # type: ignore[arg-type]
    )


def _create_dataframe(
    self,
    data: Union[RDD[Any], Iterable[Any]],
    schema: Optional[Union[DataType, List[str]]],
    samplingRatio: Optional[float],
    verifySchema: bool,
) -> DataFrame:
    if isinstance(schema, StructType):
        verify_func = _make_type_verifier(schema) if verifySchema else lambda _: True

        @no_type_check
        def prepare(obj):
            verify_func(obj)
            return obj

    elif isinstance(schema, DataType):
        dataType = schema
        schema = StructType().add("value", schema)

        verify_func = (
            _make_type_verifier(dataType, name="field value")
            if verifySchema
            else lambda _: True
        )

        @no_type_check
        def prepare(obj):
            verify_func(obj)
            return (obj,)

    else:

        def prepare(obj: Any) -> Any:
            return obj

    if isinstance(data, RDD):
        rdd, struct = self._createFromRDD(data.map(prepare), schema, samplingRatio)
    else:
        rdd, struct = self._createFromLocal(map(prepare, data), schema)
    assert self._jvm is not None
    jrdd = self._jvm.SerDeUtil.toJavaArray(rdd._to_java_object_rdd())
    jdf = self._jsparkSession.applySchemaToPythonRDD(jrdd.rdd(), struct.json())
    df = DataFrame(jdf, self)
    df._schema = struct
    return df

[docs] def sql( self, sqlQuery: str, args: Optional[Union[Dict[str, Any], List]] = None, **kwargs: Any ) -> DataFrame: """Returns a :class:DataFrame representing the result of the given query. When kwargs is specified, this method formats the given string by using the Python standard formatter. The method binds named parameters to SQL literals or positional parameters from args. It doesn't support named and positional parameters in the same SQL query.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect and parameterized SQL.

    .. versionchanged:: 3.5.0
        Added positional parameters.

    Parameters
    ----------
    sqlQuery : str
        SQL query string.
    args : dict or list
        A dictionary of parameter names to Python objects or a list of Python objects
        that can be converted to SQL literal expressions. See
        <a href="https://spark.apache.org/docs/latest/sql-ref-datatypes.html">
        Supported Data Types</a> for supported value types in Python.
        For example, dictionary keys: "rank", "name", "birthdate";
        dictionary or list values: 1, "Steven", datetime.date(2023, 4, 2).
        A value can be also a `Column` of literal expression, in that case it is taken as is.

        .. versionadded:: 3.4.0

    kwargs : dict
        Other variables that the user wants to set that can be referenced in the query

        .. versionchanged:: 3.3.0
           Added optional argument ``kwargs`` to specify the mapping of variables in the query.
           This feature is experimental and unstable.

    Returns
    -------
    :class:`DataFrame`

    Examples
    --------
    Executing a SQL query.

    >>> spark.sql("SELECT * FROM range(10) where id > 7").show()
    +---+
    | id|
    +---+
    |  8|
    |  9|
    +---+

    Executing a SQL query with variables as Python formatter standard.

    >>> spark.sql(
    ...     "SELECT * FROM range(10) WHERE id > {bound1} AND id < {bound2}", bound1=7, bound2=9
    ... ).show()
    +---+
    | id|
    +---+
    |  8|
    +---+

    >>> mydf = spark.range(10)
    >>> spark.sql(
    ...     "SELECT {col} FROM {mydf} WHERE id IN {x}",
    ...     col=mydf.id, mydf=mydf, x=tuple(range(4))).show()
    +---+
    | id|
    +---+
    |  0|
    |  1|
    |  2|
    |  3|
    +---+

    >>> spark.sql('''
    ...   SELECT m1.a, m2.b
    ...   FROM {table1} m1 INNER JOIN {table2} m2
    ...   ON m1.key = m2.key
    ...   ORDER BY m1.a, m2.b''',
    ...   table1=spark.createDataFrame([(1, "a"), (2, "b")], ["a", "key"]),
    ...   table2=spark.createDataFrame([(3, "a"), (4, "b"), (5, "b")], ["b", "key"])).show()
    +---+---+
    |  a|  b|
    +---+---+
    |  1|  3|
    |  2|  4|
    |  2|  5|
    +---+---+

    Also, it is possible to query using class:`Column` from :class:`DataFrame`.

    >>> mydf = spark.createDataFrame([(1, 4), (2, 4), (3, 6)], ["A", "B"])
    >>> spark.sql("SELECT {df.A}, {df[B]} FROM {df}", df=mydf).show()
    +---+---+
    |  A|  B|
    +---+---+
    |  1|  4|
    |  2|  4|
    |  3|  6|
    +---+---+

    And substitude named parameters with the `:` prefix by SQL literals.

    >>> spark.sql("SELECT * FROM {df} WHERE {df[B]} > :minB", {"minB" : 5}, df=mydf).show()
    +---+---+
    |  A|  B|
    +---+---+
    |  3|  6|
    +---+---+

    Or positional parameters marked by `?` in the SQL query by SQL literals.

    >>> spark.sql(
    ...   "SELECT * FROM {df} WHERE {df[B]} > ? and ? < {df[A]}",
    ...   args=[5, 2], df=mydf).show()
    +---+---+
    |  A|  B|
    +---+---+
    |  3|  6|
    +---+---+
    """

    formatter = SQLStringFormatter(self)
    if len(kwargs) > 0:
        sqlQuery = formatter.format(sqlQuery, **kwargs)
    try:
        if isinstance(args, Dict):
            litArgs = {k: _to_java_column(lit(v)) for k, v in (args or {}).items()}
        else:
            assert self._jvm is not None
            litArgs = self._jvm.PythonUtils.toArray(
                [_to_java_column(lit(v)) for v in (args or [])]
            )
        return DataFrame(self._jsparkSession.sql(sqlQuery, litArgs), self)
    finally:
        if len(kwargs) > 0:
            formatter.clear()

[docs] def table(self, tableName: str) -> DataFrame: """Returns the specified table as a :class:DataFrame.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Parameters
    ----------
    tableName : str
        the table name to retrieve.

    Returns
    -------
    :class:`DataFrame`

    Examples
    --------
    >>> spark.range(5).createOrReplaceTempView("table1")
    >>> spark.table("table1").sort("id").show()
    +---+
    | id|
    +---+
    |  0|
    |  1|
    |  2|
    |  3|
    |  4|
    +---+
    """
    return DataFrame(self._jsparkSession.table(tableName), self)


@property
def read(self) -> DataFrameReader:
    """
    Returns a :class:`DataFrameReader` that can be used to read data
    in as a :class:`DataFrame`.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Returns
    -------
    :class:`DataFrameReader`

    Examples
    --------
    >>> spark.read
    <...DataFrameReader object ...>

    Write a DataFrame into a JSON file and read it back.

    >>> import tempfile
    >>> with tempfile.TemporaryDirectory() as d:
    ...     # Write a DataFrame into a JSON file
    ...     spark.createDataFrame(
    ...         [{"age": 100, "name": "Hyukjin Kwon"}]
    ...     ).write.mode("overwrite").format("json").save(d)
    ...
    ...     # Read the JSON file as a DataFrame.
    ...     spark.read.format('json').load(d).show()
    +---+------------+
    |age|        name|
    +---+------------+
    |100|Hyukjin Kwon|
    +---+------------+
    """
    return DataFrameReader(self)

@property
def readStream(self) -> DataStreamReader:
    """
    Returns a :class:`DataStreamReader` that can be used to read data streams
    as a streaming :class:`DataFrame`.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.5.0
        Supports Spark Connect.

    Notes
    -----
    This API is evolving.

    Returns
    -------
    :class:`DataStreamReader`

    Examples
    --------
    >>> spark.readStream
    <pyspark...DataStreamReader object ...>

    The example below uses Rate source that generates rows continuously.
    After that, we operate a modulo by 3, and then write the stream out to the console.
    The streaming query stops in 3 seconds.

    >>> import time
    >>> df = spark.readStream.format("rate").load()
    >>> df = df.selectExpr("value % 3 as v")
    >>> q = df.writeStream.format("console").start()
    >>> time.sleep(3)
    >>> q.stop()
    """
    return DataStreamReader(self)

@property
def streams(self) -> "StreamingQueryManager":
    """Returns a :class:`StreamingQueryManager` that allows managing all the
    :class:`StreamingQuery` instances active on `this` context.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.5.0
        Supports Spark Connect.

    Notes
    -----
    This API is evolving.

    Returns
    -------
    :class:`StreamingQueryManager`

    Examples
    --------
    >>> spark.streams
    <pyspark...StreamingQueryManager object ...>

    Get the list of active streaming queries

    >>> sq = spark.readStream.format(
    ...     "rate").load().writeStream.format('memory').queryName('this_query').start()
    >>> sqm = spark.streams
    >>> [q.name for q in sqm.active]
    ['this_query']
    >>> sq.stop()
    """
    from pyspark.sql.streaming import StreamingQueryManager

    return StreamingQueryManager(self._jsparkSession.streams())

[docs] def stop(self) -> None: """ Stop the underlying :class:SparkContext.

    .. versionadded:: 2.0.0

    .. versionchanged:: 3.4.0
        Supports Spark Connect.

    Examples
    --------
    >>> spark.stop()  # doctest: +SKIP
    """
    from pyspark.sql.context import SQLContext

    self._sc.stop()
    # We should clean the default session up. See SPARK-23228.
    assert self._jvm is not None
    self._jvm.SparkSession.clearDefaultSession()
    self._jvm.SparkSession.clearActiveSession()
    SparkSession._instantiatedSession = None
    SparkSession._activeSession = None
    SQLContext._instantiatedContext = None


def __enter__(self) -> "SparkSession":
    """
    Enable 'with SparkSession.builder.(...).getOrCreate() as session: app' syntax.

    .. versionadded:: 2.0.0

    Examples
    --------
    >>> with SparkSession.builder.master("local").getOrCreate() as session:
    ...     session.range(5).show()  # doctest: +SKIP
    +---+
    | id|
    +---+
    |  0|
    |  1|
    |  2|
    |  3|
    |  4|
    +---+
    """
    return self

def __exit__(
    self,
    exc_type: Optional[Type[BaseException]],
    exc_val: Optional[BaseException],
    exc_tb: Optional[TracebackType],
) -> None:
    """
    Enable 'with SparkSession.builder.(...).getOrCreate() as session: app' syntax.

    Specifically stop the SparkSession on exit of the with block.

    .. versionadded:: 2.0.0

    Examples
    --------
    >>> with SparkSession.builder.master("local").getOrCreate() as session:
    ...     session.range(5).show()  # doctest: +SKIP
    +---+
    | id|
    +---+
    |  0|
    |  1|
    |  2|
    |  3|
    |  4|
    +---+
    """
    self.stop()

# SparkConnect-specific API
@property
def client(self) -> "SparkConnectClient":
    """
    Gives access to the Spark Connect client. In normal cases this is not necessary to be used
    and only relevant for testing.

    .. versionadded:: 3.4.0

    Returns
    -------
    :class:`SparkConnectClient`

    Notes
    -----
    This API is unstable, and a developer API. It returns non-API instance
    :class:`SparkConnectClient`.
    This is an API dedicated to Spark Connect client only. With regular Spark Session, it throws
    an exception.
    """
    raise RuntimeError(
        "SparkSession.client is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def addArtifacts( self, *path: str, pyfile: bool = False, archive: bool = False, file: bool = False ) -> None: """ Add artifact(s) to the client session. Currently only local files are supported.

    .. versionadded:: 3.5.0

    Parameters
    ----------
    *path : tuple of str
        Artifact's URIs to add.
    pyfile : bool
        Whether to add them as Python dependencies such as .py, .egg, .zip or .jar files.
        The pyfiles are directly inserted into the path when executing Python functions
        in executors.
    archive : bool
        Whether to add them as archives such as .zip, .jar, .tar.gz, .tgz, or .tar files.
        The archives are unpacked on the executor side automatically.
    file : bool
        Add a file to be downloaded with this Spark job on every node.
        The ``path`` passed can only be a local file for now.

    Notes
    -----
    This is an API dedicated to Spark Connect client only. With regular Spark Session, it throws
    an exception.
    """
    raise RuntimeError(
        "SparkSession.addArtifact(s) is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )


addArtifact = addArtifacts

[docs] def copyFromLocalToFs(self, local_path: str, dest_path: str) -> None: """ Copy file from local to cloud storage file system. If the file already exits in destination path, old file is overwritten.

    .. versionadded:: 3.5.0

    Parameters
    ----------
    local_path: str
        Path to a local file. Directories are not supported.
        The path can be either an absolute path or a relative path.
    dest_path: str
        The cloud storage path to the destination the file will
        be copied to.
        The path must be an an absolute path.

    Notes
    -----
    This API is a developer API.
    Also, this is an API dedicated to Spark Connect client only. With regular
    Spark Session, it throws an exception.
    """
    raise RuntimeError(
        "SparkSession.copyFromLocalToFs is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def interruptAll(self) -> List[str]: """ Interrupt all operations of this session currently running on the connected server.

    .. versionadded:: 3.5.0

    Returns
    -------
    list of str
        List of operationIds of interrupted operations.

    Notes
    -----
    There is still a possibility of operation finishing just as it is interrupted.
    """
    raise RuntimeError(
        "SparkSession.interruptAll is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def interruptTag(self, tag: str) -> List[str]: """ Interrupt all operations of this session with the given operation tag.

    .. versionadded:: 3.5.0

    Returns
    -------
    list of str
        List of operationIds of interrupted operations.

    Notes
    -----
    There is still a possibility of operation finishing just as it is interrupted.
    """
    raise RuntimeError(
        "SparkSession.interruptTag is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def interruptOperation(self, op_id: str) -> List[str]: """ Interrupt an operation of this session with the given operationId.

    .. versionadded:: 3.5.0

    Returns
    -------
    list of str
        List of operationIds of interrupted operations.

    Notes
    -----
    There is still a possibility of operation finishing just as it is interrupted.
    """
    raise RuntimeError(
        "SparkSession.interruptOperation is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def addTag(self, tag: str) -> None: """ Add a tag to be assigned to all the operations started by this thread in this session.

    .. versionadded:: 3.5.0

    Parameters
    ----------
    tag : list of str
        The tag to be added. Cannot contain ',' (comma) character or be an empty string.
    """
    raise RuntimeError(
        "SparkSession.addTag is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def removeTag(self, tag: str) -> None: """ Remove a tag previously added to be assigned to all the operations started by this thread in this session. Noop if such a tag was not added earlier.

    .. versionadded:: 3.5.0

    Parameters
    ----------
    tag : list of str
        The tag to be removed. Cannot contain ',' (comma) character or be an empty string.
    """
    raise RuntimeError(
        "SparkSession.removeTag is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def getTags(self) -> Set[str]: """ Get the tags that are currently set to be assigned to all the operations started by this thread.

    .. versionadded:: 3.5.0

    Returns
    -------
    set of str
        Set of tags of interrupted operations.
    """
    raise RuntimeError(
        "SparkSession.getTags is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

[docs] def clearTags(self) -> None: """ Clear the current thread's operation tags.

    .. versionadded:: 3.5.0
    """
    raise RuntimeError(
        "SparkSession.clearTags is only supported with Spark Connect; "
        "however, the current Spark session does not use Spark Connect."
    )

def _test() -> None: import os import doctest import pyspark.sql.session

os.chdir(os.environ["SPARK_HOME"])

globs = pyspark.sql.session.__dict__.copy()
globs["spark"] = (
    SparkSession.builder.master("local[4]").appName("sql.session tests").getOrCreate()
)
(failure_count, test_count) = doctest.testmod(
    pyspark.sql.session,
    globs=globs,
    optionflags=doctest.ELLIPSIS | doctest.NORMALIZE_WHITESPACE,
)
globs["spark"].stop()
if failure_count:
    sys.exit(-1)

if name == "main": _test()