标签:spark
Spark SQL allows relational queries expressed in SQL, HiveQL, or Scala to be executed using Spark. At the core of this component is a new type of RDD, SchemaRDD. SchemaRDDs are composed of Row objects, along with a schema that describes the data types of each column in the row. A SchemaRDD is similar to a table in a traditional relational database. A SchemaRDD can be created from an existing RDD, a Parquet file, a JSON dataset, or by running HiveQL against data stored in Apache Hive.
All of the examples on this page use sample data included in the Spark distribution and can be run in the spark-shell
.
Spark SQL is currently an alpha component. While we will minimize API changes, some APIs may change in future releases.
The entry point into all relational functionality in Spark is the SQLContext class, or one of its descendants. To create a basic SQLContext, all you need is a SparkContext.
val sc: SparkContext // An existing SparkContext.
val sqlContext = new org.apache.spark.sql.SQLContext(sc)
// createSchemaRDD is used to implicitly convert an RDD to a SchemaRDD.
import sqlContext.createSchemaRDD
In addition to the basic SQLContext, you can also create a HiveContext, which provides a superset of the functionality provided by the basic SQLContext. Additional features include the ability to write queries using the more complete HiveQL parser, access to HiveUDFs, and the ability to read data from Hive tables. To use a HiveContext, you do not need to have an existing Hive setup, and all of the data sources available to a SQLContext are still available. HiveContext is only packaged separately to avoid including all of Hive’s dependencies in the default Spark build. If these dependencies are not a problem for your application then using HiveContext is recommended for the 1.2 release of Spark. Future releases will focus on bringing SQLContext up to feature parity with a HiveContext.
The specific variant of SQL that is used to parse queries can also be selected using the spark.sql.dialect
option. This parameter
can be changed using either the setConf
method on a SQLContext or by using a SET
key=value
command in SQL. For a SQLContext, the only dialect available is “sql” which uses a simple SQL parser provided by Spark SQL. In a HiveContext, the default is “hiveql”, though “sql” is also available. Since the HiveQL parser is much more complete,
this is recommended for most use cases.
Spark SQL supports operating on a variety of data sources through the SchemaRDD
interface. A SchemaRDD can be operated on as normal
RDDs and can also be registered as a temporary table. Registering a SchemaRDD as a table allows you to run SQL queries over its data. This section describes the various methods for loading data into a SchemaRDD.
Spark SQL supports two different methods for converting existing RDDs into SchemaRDDs. The first method uses reflection to infer the schema of an RDD that contains specific types of objects. This reflection based approach leads to more concise code and works well when you already know the schema while writing your Spark application.
The second method for creating SchemaRDDs is through a programmatic interface that allows you to construct a schema and then apply it to an existing RDD. While this method is more verbose, it allows you to construct SchemaRDDs when the columns and their types are not known until runtime.
The Scala interaface for Spark SQL supports automatically converting an RDD containing case classes to a SchemaRDD. The case class defines the schema of the table. The names of the arguments to the case class are read using reflection and become the names of the columns. Case classes can also be nested or contain complex types such as Sequences or Arrays. This RDD can be implicitly converted to a SchemaRDD and then be registered as a table. Tables can be used in subsequent SQL statements.
// sc is an existing SparkContext.
val sqlContext = new org.apache.spark.sql.SQLContext(sc)
// createSchemaRDD is used to implicitly convert an RDD to a SchemaRDD.
import sqlContext.createSchemaRDD
// Define the schema using a case class.
// Note: Case classes in Scala 2.10 can support only up to 22 fields. To work around this limit,
// you can use custom classes that implement the Product interface.
case class Person(name: String, age: Int)
// Create an RDD of Person objects and register it as a table.
val people = sc.textFile("examples/src/main/resources/people.txt").map(_.split(",")).map(p => Person(p(0), p(1).trim.toInt))
people.registerTempTable("people")
// SQL statements can be run by using the sql methods provided by sqlContext.
val teenagers = sqlContext.sql("SELECT name FROM people WHERE age >= 13 AND age <= 19")
// The results of SQL queries are SchemaRDDs and support all the normal RDD operations.
// The columns of a row in the result can be accessed by ordinal.
teenagers.map(t => "Name: " + t(0)).collect().foreach(println)
When case classes cannot be defined ahead of time (for example, the structure of records is encoded in a string, or a text dataset will be parsed and fields will be projected differently for different users), a SchemaRDD
can
be created programmatically with three steps.
Row
s from the original RDD;StructType
matching the structure of Row
s
in the RDD created in Step 1.Row
s via applySchema
method
provided by SQLContext
.For example:
// sc is an existing SparkContext.
val sqlContext = new org.apache.spark.sql.SQLContext(sc)
// Create an RDD
val people = sc.textFile("examples/src/main/resources/people.txt")
// The schema is encoded in a string
val schemaString = "name age"
// Import Spark SQL data types and Row.
import org.apache.spark.sql._
// Generate the schema based on the string of schema
val schema =
StructType(
schemaString.split(" ").map(fieldName => StructField(fieldName, StringType, true)))
// Convert records of the RDD (people) to Rows.
val rowRDD = people.map(_.split(",")).map(p => Row(p(0), p(1).trim))
// Apply the schema to the RDD.
val peopleSchemaRDD = sqlContext.applySchema(rowRDD, schema)
// Register the SchemaRDD as a table.
peopleSchemaRDD.registerTempTable("people")
// SQL statements can be run by using the sql methods provided by sqlContext.
val results = sqlContext.sql("SELECT name FROM people")
// The results of SQL queries are SchemaRDDs and support all the normal RDD operations.
// The columns of a row in the result can be accessed by ordinal.
results.map(t => "Name: " + t(0)).collect().foreach(println)
Parquet is a columnar format that is supported by many other data processing systems. Spark SQL provides support for both reading and writing Parquet files that automatically preserves the schema of the original data.
Using the data from the above example:
// sqlContext from the previous example is used in this example.
// createSchemaRDD is used to implicitly convert an RDD to a SchemaRDD.
import sqlContext.createSchemaRDD
val people: RDD[Person] = ... // An RDD of case class objects, from the previous example.
// The RDD is implicitly converted to a SchemaRDD by createSchemaRDD, allowing it to be stored using Parquet.
people.saveAsParquetFile("people.parquet")
// Read in the parquet file created above. Parquet files are self-describing so the schema is preserved.
// The result of loading a Parquet file is also a SchemaRDD.
val parquetFile = sqlContext.parquetFile("people.parquet")
//Parquet files can also be registered as tables and then used in SQL statements.
parquetFile.registerTempTable("parquetFile")
val teenagers = sqlContext.sql("SELECT name FROM parquetFile WHERE age >= 13 AND age <= 19")
teenagers.map(t => "Name: " + t(0)).collect().foreach(println)
Configuration of Parquet can be done using the setConf
method on SQLContext or by running SET
key=value
commands using SQL.
Property Name | Default | Meaning |
---|---|---|
spark.sql.parquet.binaryAsString |
false | Some other Parquet-producing systems, in particular Impala and older versions of Spark SQL, do not differentiate between binary data and strings when writing out the Parquet schema. This flag tells Spark SQL to interpret binary data as a string to provide compatibility with these systems. |
spark.sql.parquet.cacheMetadata |
false | Turns on caching of Parquet schema metadata. Can speed up querying of static data. |
spark.sql.parquet.compression.codec |
snappy | Sets the compression codec use when writing Parquet files. Acceptable values include: uncompressed, snappy, gzip, lzo. |
Spark SQL can automatically infer the schema of a JSON dataset and load it as a SchemaRDD. This conversion can be done using one of two methods in a SQLContext:
jsonFile
- loads data from a directory of JSON files where each line of the files is a JSON object.jsonRdd
- loads data from an existing RDD where each element of the RDD is a string containing a JSON
object.// sc is an existing SparkContext.
val sqlContext = new org.apache.spark.sql.SQLContext(sc)
// A JSON dataset is pointed to by path.
// The path can be either a single text file or a directory storing text files.
val path = "examples/src/main/resources/people.json"
// Create a SchemaRDD from the file(s) pointed to by path
val people = sqlContext.jsonFile(path)
// The inferred schema can be visualized using the printSchema() method.
people.printSchema()
// root
// |-- age: IntegerType
// |-- name: StringType
// Register this SchemaRDD as a table.
people.registerTempTable("people")
// SQL statements can be run by using the sql methods provided by sqlContext.
val teenagers = sqlContext.sql("SELECT name FROM people WHERE age >= 13 AND age <= 19")
// Alternatively, a SchemaRDD can be created for a JSON dataset represented by
// an RDD[String] storing one JSON object per string.
val anotherPeopleRDD = sc.parallelize(
"""{"name":"Yin","address":{"city":"Columbus","state":"Ohio"}}""" :: Nil)
val anotherPeople = sqlContext.jsonRDD(anotherPeopleRDD)
Spark SQL also supports reading and writing data stored in Apache Hive. However, since Hive has a large number of dependencies, it is not included in the
default Spark assembly. In order to use Hive you must first run “sbt/sbt -Phive assembly/assembly
” (or use -Phive
for
maven). This command builds a new assembly jar that includes Hive. Note that this Hive assembly jar must also be present on all of the worker nodes, as they will need access to the Hive serialization and deserialization libraries (SerDes) in order to access
data stored in Hive.
Configuration of Hive is done by placing your hive-site.xml
file in conf/
.
When working with Hive one must construct a HiveContext
, which inherits from SQLContext
,
and adds support for finding tables in in the MetaStore and writing queries using HiveQL. Users who do not have an existing Hive deployment can still create a HiveContext. When not configured by the hive-site.xml, the context automatically creates metastore_db
and warehouse
in
the current directory.
// sc is an existing SparkContext.
val sqlContext = new org.apache.spark.sql.hive.HiveContext(sc)
sqlContext.sql("CREATE TABLE IF NOT EXISTS src (key INT, value STRING)")
sqlContext.sql("LOAD DATA LOCAL INPATH ‘examples/src/main/resources/kv1.txt‘ INTO TABLE src")
// Queries are expressed in HiveQL
sqlContext.sql("FROM src SELECT key, value").collect().foreach(println)
For some workloads it is possible to improve performance by either caching data in memory, or by turning on some experimental options.
Spark SQL can cache tables using an in-memory columnar format by calling cacheTable("tableName")
. Then Spark SQL will scan only
required columns and will automatically tune compression to minimize memory usage and GC pressure. You can call uncacheTable("tableName")
to
remove the table from memory.
Note that if you call cache
rather than cacheTable
,
tables will not be cached using the in-memory columnar format, and therefore cacheTable
is strongly recommended for this
use case.
Configuration of in-memory caching can be done using the setConf
method on SQLContext or by running SET
key=value
commands using SQL.
Property Name | Default | Meaning |
---|---|---|
spark.sql.inMemoryColumnarStorage.compressed |
false | When set to true Spark SQL will automatically select a compression codec for each column based on statistics of the data. |
spark.sql.inMemoryColumnarStorage.batchSize |
1000 | Controls the size of batches for columnar caching. Larger batch sizes can improve memory utilization and compression, but risk OOMs when caching data. |
The following options can also be used to tune the performance of query execution. It is possible that these options will be deprecated in future release as more optimizations are performed automatically.
Property Name | Default | Meaning |
---|---|---|
spark.sql.autoBroadcastJoinThreshold |
10000 | Configures the maximum size in bytes for a table that will be broadcast to all worker nodes when performing a join. By setting this value to -1 broadcasting can be disabled. Note that currently statistics are only supported for Hive Metastore tables where the command `ANALYZE TABLE <tableName> COMPUTE STATISTICS noscan` has been run. |
spark.sql.codegen |
false | When true, code will be dynamically generated at runtime for expression evaluation in a specific query. For some queries with complicated expression this option can lead to significant speed-ups. However, for simple queries this can actually slow down query execution. |
spark.sql.shuffle.partitions |
200 | Configures the number of partitions to use when shuffling data for joins or aggregations. |
Spark SQL also supports interfaces for running SQL queries directly without the need to write any code.
The Thrift JDBC server implemented here corresponds to the HiveServer2
in
Hive 0.12. You can test the JDBC server with the beeline script that comes with either Spark or Hive 0.12.
To start the JDBC server, run the following in the Spark directory:
./sbin/start-thriftserver.sh
The default port the server listens on is 10000. To listen on customized host and port, please set the HIVE_SERVER2_THRIFT_PORT
andHIVE_SERVER2_THRIFT_BIND_HOST
environment
variables. You may run ./sbin/start-thriftserver.sh --help
for a complete list of all available options. Now you can use beeline
to test the Thrift JDBC server:
./bin/beeline
Connect to the JDBC server in beeline with:
beeline> !connect jdbc:hive2://localhost:10000
Beeline will ask you for a username and password. In non-secure mode, simply enter the username on your machine and a blank password. For secure mode, please follow the instructions given in the beeline documentation.
Configuration of Hive is done by placing your hive-site.xml
file in conf/
.
You may also use the beeline script that comes with Hive.
The Spark SQL CLI is a convenient tool to run the Hive metastore service in local mode and execute queries input from the command line. Note that the Spark SQL CLI cannot talk to the Thrift JDBC server.
To start the Spark SQL CLI, run the following in the Spark directory:
./bin/spark-sql
Configuration of Hive is done by placing your hive-site.xml
file in conf/
.
You may run ./bin/spark-sql --help
for a complete list of all available options.
s To set a Fair Scheduler pool for a JDBC client session, users can set the spark.sql.thriftserver.scheduler.pool
variable:
SET spark.sql.thriftserver.scheduler.pool=accounting;
In Shark, default reducer number is 1 and is controlled by the property mapred.reduce.tasks
. Spark SQL deprecates this property
in favor ofspark.sql.shuffle.partitions
, whose default value is 200. Users may customize this property via SET
:
SET spark.sql.shuffle.partitions=10;
SELECT page, count(*) c
FROM logs_last_month_cached
GROUP BY page ORDER BY c DESC LIMIT 10;
You may also put this property in hive-site.xml
to override the default value.
For now, the mapred.reduce.tasks
property is still recognized, and is converted to spark.sql.shuffle.partitions
automatically.
The shark.cache
table property no longer exists, and tables whose name end with _cached
are
no longer automatically cached. Instead, we provide CACHE TABLE
and UNCACHE
TABLE
statements to let user control table caching explicitly:
CACHE TABLE logs_last_month;
UNCACHE TABLE logs_last_month;
NOTE: CACHE TABLE tbl
is lazy, similar to .cache
on
an RDD. This command only marks tbl
to ensure that partitions are cached when calculated but doesn’t actually cache it until a
query that touches tbl
is executed. To force the table to be cached, you may simply count the table immediately after executing CACHE
TABLE
:
CACHE TABLE logs_last_month;
SELECT COUNT(1) FROM logs_last_month;
Several caching related features are not supported yet:
Spark SQL is designed to be compatible with the Hive Metastore, SerDes and UDFs. Currently Spark SQL is based on Hive 0.12.0.
The Spark SQL Thrift JDBC server is designed to be “out of the box” compatible with existing Hive installations. You do not need to modify your existing Hive Metastore or change the data placement or partitioning of your tables.
Spark SQL supports the vast majority of Hive features, such as:
SELECT
GROUP BY
ORDER BY
CLUSTER BY
SORT BY
=
, ?
, ==
, <>
, <
, >
, >=
, <=
,
etc)+
, -
, *
, /
, %
,
etc)AND
, &&
, OR
, ||
,
etc)sign
, ln
, cos
,
etc)instr
, length
, printf
,
etc)JOIN
{LEFT|RIGHT|FULL} OUTER JOIN
LEFT SEMI JOIN
CROSS JOIN
SELECT col FROM ( SELECT a + b AS col from t1) t2
CREATE TABLE
CREATE TABLE AS SELECT
ALTER TABLE
TINYINT
SMALLINT
INT
BIGINT
BOOLEAN
FLOAT
DOUBLE
STRING
BINARY
TIMESTAMP
ARRAY<>
MAP<>
STRUCT<>
Below is a list of Hive features that we don’t support yet. Most of these features are rarely used in Hive deployments.
Major Hive Features
Esoteric Hive Features
key
< 10
”), Spark SQL will output wrong result for the NULL
tuple.UNION
type and DATE
typeHive Input/Output Formats
Hive Optimizations
A handful of Hive optimizations are not yet included in Spark. Some of these (such as indexes) are less important due to Spark SQL’s in-memory computational model. Others are slotted for future releases of Spark SQL.
SET
spark.sql.shuffle.partitions=[num_tasks];
”.STREAMTABLE
hint in join: Spark SQL does not follow the STREAMTABLE
hint.Language-Integrated queries are experimental and currently only supported in Scala.
Spark SQL also supports a domain specific language for writing queries. Once again, using the data from the above examples:
// sc is an existing SparkContext.
val sqlContext = new org.apache.spark.sql.SQLContext(sc)
// Importing the SQL context gives access to all the public SQL functions and implicit conversions.
import sqlContext._
val people: RDD[Person] = ... // An RDD of case class objects, from the first example.
// The following is the same as ‘SELECT name FROM people WHERE age >= 10 AND age <= 19‘
val teenagers = people.where(‘age >= 10).where(‘age <= 19).select(‘name)
teenagers.map(t => "Name: " + t(0)).collect().foreach(println)
The DSL uses Scala symbols to represent columns in the underlying table, which are identifiers prefixed with a tick (‘
). Implicit
conversions turn these symbols into expressions that are evaluated by the SQL execution engine. A full list of the functions supported can be found in theScalaDoc.
ByteType
: Represents 1-byte signed integer numbers. The range of numbers is from -128
to 127
.ShortType
: Represents 2-byte signed integer numbers. The range of numbers is from -32768
to 32767
.IntegerType
: Represents 4-byte signed integer numbers. The range of numbers is from -2147483648
to 2147483647
.LongType
: Represents 8-byte signed integer numbers. The range of numbers is from -9223372036854775808
to 9223372036854775807
.FloatType
: Represents 4-byte single-precision floating point numbers.DoubleType
: Represents 8-byte double-precision floating point numbers.DecimalType
:StringType
: Represents character string values.BinaryType
: Represents byte sequence values.BooleanType
: Represents boolean values.TimestampType
: Represents values comprising values of fields year, month, day, hour, minute, and second.ArrayType(elementType, containsNull)
: Represents values comprising a sequence of elements with the type of elementType
.containsNull
is
used to indicate if elements in a ArrayType
value can have null
values.MapType(keyType, valueType, valueContainsNull)
: Represents values comprising a set of key-value pairs. The data type of keys
are described by keyType
and the data type of values are described by valueType
.
For a MapType
value, keys are not allowed to have null
values. valueContainsNull
is
used to indicate if values of a MapType
value can have null
values.StructType(fields)
: Represents values with the structure described by a sequence of StructField
s
(fields
).
StructField(name, dataType, nullable)
: Represents a field in a StructType
.
The name of a field is indicated by name
. The data type of a field is indicated by dataType
. nullable
is
used to indicate if values of this fields can have null
values.All data types of Spark SQL are located in the package org.apache.spark.sql
. You can
access them by doing
import org.apache.spark.sql._
Data type | Value type in Scala | API to access or create a data type |
---|---|---|
ByteType | Byte | ByteType |
ShortType | Short | ShortType |
IntegerType | Int | IntegerType |
LongType | Long | LongType |
FloatType | Float | FloatType |
DoubleType | Double | DoubleType |
DecimalType | scala.math.sql.BigDecimal | DecimalType |
StringType | String | StringType |
BinaryType | Array[Byte] | BinaryType |
BooleanType | Boolean | BooleanType |
TimestampType | java.sql.Timestamp | TimestampType |
ArrayType | scala.collection.Seq |
ArrayType(elementType, [containsNull]) Note: The default value of containsNull is false. |
MapType | scala.collection.Map |
MapType(keyType, valueType, [valueContainsNull]) Note: The default value of valueContainsNull is true. |
StructType | org.apache.spark.sql.Row |
StructType(fields) Note: fields is a Seq of StructFields. Also, two fields with the same name are not allowed. |
StructField | The value type in Scala of the data type of this field (For example, Int for a StructField with the data type IntegerType) | StructField(name, dataType, nullable) |
Spark1.1.0 Spark SQL Programming Guide
标签:spark
原文地址:http://blog.csdn.net/luyee2010/article/details/39291173