import org.apache.spark.SparkConf;
import org.apache.spark.api.java.JavaRDD;
import org.apache.spark.api.java.JavaSparkContext;
import org.apache.spark.api.java.function.Function;
import org.apache.spark.sql.*;
import org.apache.spark.sql.types.DataTypes;
import org.apache.spark.sql.types.StructField;
import org.apache.spark.sql.types.StructType;
import java.util.ArrayList;
import java.util.List;
public class SparkSQLLoadSaveOps {
public static void main(String[] args) {
SparkConf conf = new SparkConf().setMaster("local").setAppName("SparkSQLLoadSaveOps");
JavaSparkContext sc = new JavaSparkContext(conf);
SQLContext = new SQLContext(sc);
/**
* read()是DataFrameReader类型,load可以将数据读取出来
*/
DataFrame peopleDF = sqlContext.read().format("json").load("E:\\Spark\\Sparkinstanll_package\\Big_Data_Software\\spark-1.6.0-bin-hadoop2.6\\examples\\src\\main\\resources\\people.json");
/**
* 直接对DataFrame进行操作
* Json: 是一种自解释的格式,读取Json的时候怎么判断其是什么格式?
* 通过扫描整个Json。扫描之后才会知道元数据
*/
//通过mode来指定输出文件的是append。创建新文件来追加文件
peopleDF.select("name").write().mode(SaveMode.Append).save("E:\\personNames");
}
}
/**
* :: Experimental ::
* Returns a [[DataFrameReader]] that can be used to read data in as a [[DataFrame]].
* {{{
* sqlContext.read.parquet("/path/to/file.parquet")
* sqlContext.read.schema(schema).json("/path/to/file.json")
* }}}
*
* @group genericdata
* @since 1.4.0
*/
@Experimental
//创建DataFrameReader实例,获得了DataFrameReader引用
def read: DataFrameReader = new DataFrameReader(this)
/**
* Specifies the input data source format.
*
* @since 1.4.0
*/
def format(source: String): DataFrameReader = {
this.source = source
this
}
/**
* Loads input in as a [[DataFrame]], for data sources that require a path (e.g. data backed by
* a local or distributed file system).
*
* @since 1.4.0
*/
// TODO: Remove this one in Spark 2.0.
def load(path: String): DataFrame = {
option("path", path).load()
}
/**
* Selects a set of columns. This is a variant of `select` that can only select
* existing columns using column names (i.e. cannot construct expressions).
*
* {{{
* // The following two are equivalent:
* df.select("colA", "colB")
* df.select($"colA", $"colB")
* }}}
* @group dfops
* @since 1.3.0
*/
@scala.annotation.varargs
def select(col: String, cols: String*): DataFrame = select((col +: cols).map(Column(_)) : _*)
/** * :: Experimental :: * Interface for saving the content of the [[DataFrame]] out into external storage. * * @group output * @since 1.4.0 */ @Experimental def write: DataFrameWriter = new DataFrameWriter(this)
/**
* Specifies the behavior when data or table already exists. Options include:
// Overwrite是覆盖
* - `SaveMode.Overwrite`: overwrite the existing data.
//创建新的文件,然后追加
* - `SaveMode.Append`: append the data.
* - `SaveMode.Ignore`: ignore the operation (i.e. no-op).
* - `SaveMode.ErrorIfExists`: default option, throw an exception at runtime.
*
* @since 1.4.0
*/
def mode(saveMode: SaveMode): DataFrameWriter = {
this.mode = saveMode
this
}
/**
* Saves the content of the [[DataFrame]] at the specified path.
*
* @since 1.4.0
*/
def save(path: String): Unit = {
this.extraOptions += ("path" -> path)
save()
}
/**
* Returns the dataset stored at path as a DataFrame,
* using the default data source configured by spark.sql.sources.default.
*
* @group genericdata
* @deprecated As of 1.4.0, replaced by `read().load(path)`. This will be removed in Spark 2.0.
*/
@deprecated("Use read.load(path). This will be removed in Spark 2.0.", "1.4.0")
def load(path: String): DataFrame = {
//此时的read就是DataFrameReader
read.load(path)
}
/**
* Loads input in as a [[DataFrame]], for data sources that require a path (e.g. data backed by
* a local or distributed file system).
*
* @since 1.4.0
*/
// TODO: Remove this one in Spark 2.0.
def load(path: String): DataFrame = {
option("path", path).load()
}
/**
* Loads input in as a [[DataFrame]], for data sources that don't require a path (e.g. external
* key-value stores).
*
* @since 1.4.0
*/
def load(): DataFrame = {
//对传入的Source进行解析
val resolved = ResolvedDataSource(
sqlContext,
userSpecifiedSchema = userSpecifiedSchema,
partitionColumns = Array.empty[String],
provider = source,
options = extraOptions.toMap)
DataFrame(sqlContext, LogicalRelation(resolved.relation))
}
/**
* Specifies the input data source format.Built-in options include “parquet”,”json”,etc.
*
* @since 1.4.0
*/
def format(source: String): DataFrameReader = {
this.source = source //FileType
this
}
/** * :: Experimental :: * Interface for saving the content of the [[DataFrame]] out into external storage. * * @group output * @since 1.4.0 */ @Experimental def write: DataFrameWriter = new DataFrameWriter(this) 1
/**
* :: Experimental ::
* Interface used to write a [[DataFrame]] to external storage systems (e.g. file systems,
* key-value stores, etc). Use [[DataFrame.write]] to access this.
*
* @since 1.4.0
*/
@Experimental
final class DataFrameWriter private[sql](df: DataFrame) {
/**
* Specifies the behavior when data or table already exists. Options include:
* - `SaveMode.Overwrite`: overwrite the existing data.
* - `SaveMode.Append`: append the data.
* - `SaveMode.Ignore`: ignore the operation (i.e. no-op).
//默认操作
* - `SaveMode.ErrorIfExists`: default option, throw an exception at runtime.
*
* @since 1.4.0
*/
def mode(saveMode: SaveMode): DataFrameWriter = {
this.mode = saveMode
this
}
/**
* Specifies the behavior when data or table already exists. Options include:
* - `overwrite`: overwrite the existing data.
* - `append`: append the data.
* - `ignore`: ignore the operation (i.e. no-op).
* - `error`: default option, throw an exception at runtime.
*
* @since 1.4.0
*/
def mode(saveMode: String): DataFrameWriter = {
this.mode = saveMode.toLowerCase match {
case "overwrite" => SaveMode.Overwrite
case "append" => SaveMode.Append
case "ignore" => SaveMode.Ignore
case "error" | "default" => SaveMode.ErrorIfExists
case _ => throw new IllegalArgumentException(s"Unknown save mode: $saveMode. " +
"Accepted modes are 'overwrite', 'append', 'ignore', 'error'.")
}
this
}
/**
* Saves the content of the [[DataFrame]] at the specified path.
*
* @since 1.4.0
*/
def save(path: String): Unit = {
this.extraOptions += ("path" -> path)
save()
}
/**
* Saves the content of the [[DataFrame]] as the specified table.
*
* @since 1.4.0
*/
def save(): Unit = {
ResolvedDataSource(
df.sqlContext,
source,
partitioningColumns.map(_.toArray).getOrElse(Array.empty[String]),
mode,
extraOptions.toMap,
df)
}
// This is used to set the default data source
val DEFAULT_DATA_SOURCE_NAME = stringConf("spark.sql.sources.default",
defaultValue = Some("org.apache.spark.sql.parquet"),
doc = "The default data source to use in input/output.")
/**
* Returns the object itself.
* @group basic
* @since 1.3.0
*/
// This is declared with parentheses to prevent the Scala compiler from treating
// `rdd.toDF("1")` as invoking this toDF and then apply on the returned DataFrame.
def toDF(): DataFrame = this
/**
* Displays the [[DataFrame]] in a tabular form. For example:
* {{{
* year month AVG('Adj Close) MAX('Adj Close)
* 1980 12 0.503218 0.595103
* 1981 01 0.523289 0.570307
* 1982 02 0.436504 0.475256
* 1983 03 0.410516 0.442194
* 1984 04 0.450090 0.483521
* }}}
* @param numRows Number of rows to show
* @param truncate Whether truncate long strings. If true, strings more than 20 characters will
* be truncated and all cells will be aligned right
*
* @group action
* @since 1.5.0
*/
// scalastyle:off println
def show(numRows: Int, truncate: Boolean): Unit = println(showString(numRows, truncate))
// scalastyle:on println
/**
* Compose the string representing rows for output
* @param _numRows Number of rows to show
* @param truncate Whether truncate long strings and align cells right
*/
private[sql] def showString(_numRows: Int, truncate: Boolean = true): String = {
val numRows = _numRows.max(0)
val sb = new StringBuilder
val takeResult = take(numRows + 1)
val hasMoreData = takeResult.length > numRows
val data = takeResult.take(numRows)
val numCols = schema.fieldNames.length
机械节能产品生产企业官网模板...
大气智能家居家具装修装饰类企业通用网站模板...
礼品公司网站模板
宽屏简约大气婚纱摄影影楼模板...
蓝白WAP手机综合医院类整站源码(独立后台)...苏ICP备2024110244号-2 苏公网安备32050702011978号 增值电信业务经营许可证编号:苏B2-20251499 | Copyright 2018 - 2025 源码网商城 (www.ymwmall.com) 版权所有