Spark SQL External Data Sources JDBC官方实现写测试
通过Spark SQL External Data Sources JDBC实现将RDD的数据写入到MySQL数据库中。
jdbc.scala重要API介绍:
/**
* Save this RDD to a JDBC database at `url` under the table name `table`.
* This will run a `CREATE TABLE` and a bunch of `INSERT INTO` statements.
* If you pass `true` for `allowExisting`, it will drop any table with the
* given name; if you pass `false`, it will throw if the table already
* exists.
*/
def createJDBCTable(url: String, table: String, allowExisting: Boolean) /**
* Save this RDD to a JDBC database at `url` under the table name `table`.
* Assumes the table already exists and has a compatible schema. If you
* pass `true` for `overwrite`, it will `TRUNCATE` the table before
* performing the `INSERT`s.
*
* The table must already exist on the database. It must have a schema
* that is compatible with the schema of this RDD; inserting the rows of
* the RDD in order via the simple statement
* `INSERT INTO table VALUES (?, ?, ..., ?)` should not fail.
*/
def insertIntoJDBC(url: String, table: String, overwrite: Boolean)
import org.apache.spark.sql.SQLContext
import org.apache.spark.sql.Row
import org.apache.spark.sql.types._ val sqlContext = new SQLContext(sc)
import sqlContext._ #数据准备
val url = "jdbc:mysql://hadoop000:3306/test?user=root&password=root" val arr2x2 = Array[Row](Row.apply("dave", 42), Row.apply("mary", 222))
val arr1x2 = Array[Row](Row.apply("fred", 3))
val schema2 = StructType(StructField("name", StringType) :: StructField("id", IntegerType) :: Nil) val arr2x3 = Array[Row](Row.apply("dave", 42, 1), Row.apply("mary", 222, 2))
val schema3 = StructType(StructField("name", StringType) :: StructField("id", IntegerType) :: StructField("seq", IntegerType) :: Nil) import org.apache.spark.sql.jdbc._ ================================CREATE======================================
val srdd = sqlContext.applySchema(sc.parallelize(arr2x2), schema2) srdd.createJDBCTable(url, "person", false)
sqlContext.jdbcRDD(url, "person").collect.foreach(println)
[dave,42]
[mary,222] ==============================CREATE with overwrite========================================
val srdd = sqlContext.applySchema(sc.parallelize(arr2x3), schema3)
srdd.createJDBCTable(url, "person2", false)
sqlContext.jdbcRDD(url, "person2").collect.foreach(println)
[mary,222,2]
[dave,42,1] val srdd2 = sqlContext.applySchema(sc.parallelize(arr1x2), schema2)
srdd2.createJDBCTable(url, "person2", true)
sqlContext.jdbcRDD(url, "person2").collect.foreach(println)
[fred,3] ================================CREATE then INSERT to append======================================
val srdd = sqlContext.applySchema(sc.parallelize(arr2x2), schema2)
val srdd2 = sqlContext.applySchema(sc.parallelize(arr1x2), schema2)
srdd.createJDBCTable(url, "person3", false)
sqlContext.jdbcRDD(url, "person3").collect.foreach(println)
[mary,222]
[dave,42] srdd2.insertIntoJDBC(url, "person3", false)
sqlContext.jdbcRDD(url, "person3").collect.foreach(println)
[mary,222]
[dave,42]
[fred,3] ================================CREATE then INSERT to truncate======================================
val srdd = sqlContext.applySchema(sc.parallelize(arr2x2), schema2)
val srdd2 = sqlContext.applySchema(sc.parallelize(arr1x2), schema2) srdd.createJDBCTable(url, "person4", false)
sqlContext.jdbcRDD(url, "person4").collect.foreach(println)
[dave,42]
[mary,222] srdd2.insertIntoJDBC(url, "person4", true)
[fred,3] ================================Incompatible INSERT to append======================================
val srdd = sqlContext.applySchema(sc.parallelize(arr2x2), schema2)
val srdd2 = sqlContext.applySchema(sc.parallelize(arr2x3), schema3)
srdd.createJDBCTable(url, "person5", false)
srdd2.insertIntoJDBC(url, "person5", true)
java.sql.SQLException: Column count doesn't match value count at row 1
Spark SQL External Data Sources JDBC官方实现写测试的更多相关文章
- Spark SQL External Data Sources JDBC官方实现读测试
在最新的master分支上官方提供了Spark JDBC外部数据源的实现,先尝为快. 通过spark-shell测试: import org.apache.spark.sql.SQLContext v ...
- Spark SQL External Data Sources JDBC简易实现
在spark1.2版本中最令我期待的功能是External Data Sources,通过该API可以直接将External Data Sources注册成一个临时表,该表可以和已经存在的表等通过sq ...
- Spark SQL 之 Data Sources
#Spark SQL 之 Data Sources 转载请注明出处:http://www.cnblogs.com/BYRans/ 数据源(Data Source) Spark SQL的DataFram ...
- Spark(3) - External Data Source
Introduction Spark provides a unified runtime for big data. HDFS, which is Hadoop's filesystem, is t ...
- Spark SQL External DataSource简介
随着Spark1.2的发布,Spark SQL开始正式支持外部数据源.这使得Spark SQL支持了更多的类型数据源,如json, parquet, avro, csv格式.只要我们愿意,我们可以开发 ...
- How to: Provide Credentials for the Dashboards Module when Using External Data Sources
XAF中使用dashboard模块时,如果使用了sql数据源,可以使用此方法提供连接信息 https://www.devexpress.com/Support/Center/Question/Deta ...
- 【转载】Spark SQL之External DataSource外部数据源
http://blog.csdn.net/oopsoom/article/details/42061077 一.Spark SQL External DataSource简介 随着Spark1.2的发 ...
- Apache Spark 2.2.0 中文文档 - Spark SQL, DataFrames and Datasets Guide | ApacheCN
Spark SQL, DataFrames and Datasets Guide Overview SQL Datasets and DataFrames 开始入门 起始点: SparkSession ...
- What’s new for Spark SQL in Apache Spark 1.3(中英双语)
文章标题 What’s new for Spark SQL in Apache Spark 1.3 作者介绍 Michael Armbrust 文章正文 The Apache Spark 1.3 re ...
随机推荐
- Linux学习 : 裸板调试 之 使用MMU
MMU(Memory Management Unit,内存管理单元),操作系统通过使用处理器的MMU功能实现以下:1)虚拟内存.有了虚拟内存,可以在处理器上运行比实际物理内存大的应用程序.为了使用虚拟 ...
- 反向Ajax,实现服务器向客户端推送消息
反向Ajax的基本概念是客户端不必从服务器获取信息,服务器会把相关信息直接推送到客户端.这样做的目的是解决Ajax传统Web模型所带来的一个限制:实时信息很难从技术上解决.原因是,客户端必须联系服务器 ...
- ubuntu auto install update
sudo apt-get update sudo apt-get dist-upgrade 32bit mode sudo dpkg --add-architecture i386
- Unity3D DllNotFoundException/System.DllNotFoundException
Unity System.DllNotFoundException Unity Fallback handler could not load library D:/91yGame/SparrowCD ...
- 《深入浅出Node.js》第4章 异步编程
@by Ruth92(转载请注明出处) 第4章 异步编程 Node 能够迅速成功并流行起来的原因: V8 和 异步 I/O 在性能上带来的提升: 前后端 JavaScript 编程风格一致 一.函数式 ...
- 如何快速编写Vim语法高亮文件
这里有一份中文的入门文档,但是太长了,不想读,所以有本文 最快的办法,就是找一个语法相近的语法高亮文件,稍微改一下 自己从头写的话,首先搞定关键字: syntax case match "是 ...
- Python 基礎 - while流程判斷
接續上次的代碼,是不是只有執行一次才就結束,想要再繼續猜,就要在執行一次,是不是有點挺麻煩的? 所以這次我們就來再多做一點點功能進去,讓代碼可以多次循環地執行代碼,Go.... 首先,我們先來了解一下 ...
- unique函数的作用
unique() 去重函数 unique()函数是一个去重函数,STL中unique的函数 unique的功能是去除相邻的重复元素(只保留一个),还有一个容易忽视的特性是它并不真正把重复的元素删除.他 ...
- python编码-1
help帮助系统,一个好的方法是直接看自带的帮助,尽量不用baidu help()是进入交互式帮助界面 quit是退出交互式帮助界面 [root@kvm1 python]# python Python ...
- MySQL物理文件组成
日志文件 错误日志:Error Log 错误日志记录了MySQL运行过程中所有较为严重的警告和错误信息,以及MySQL Server每次启动和关闭的详细信息.在默认情况下,系统记录错误日志的功能是关闭 ...