hortonworks spark

Discover hortonworks spark, include the articles, news, trends, analysis and practical advice about hortonworks spark on alibabacloud.com

Spark cultivation Path (advanced)--spark Getting started to Mastery: Tenth Spark SQL case scenario (i)

Zhou Zhihu L.Holiday, finally can spare time to update the blog ....1. Get DataThis article provides a detailed introduction to Sparksql's content by using the Spark project git log on GitHub as the data.The Data Acquisition command is as follows:[[emailprotected] spark]# git log --pretty=format:‘{"commit":"%H","author":"%an","author_email":"%ae","date":"%ad","message":"%f"}‘ > sparktest.jsonThe output of

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (4)

Restart idea: Restart idea: After restart, enter the following interface: Step 4: Compile scala code in idea: First, select "create new project" on the interface that we entered in the previous step ": Select the "Scala" option in the list on the left: To facilitate future development, select the "SBT" option on the right: Click "Next" to go to the next step and set the name and directory of the scala project: Click "finish" to create the project: Because we have selec

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 2) (1)

follows: Step 1: Modify the host name in/etc/hostname and configure the ing between the host name and IP address in/etc/hosts: We use the master machine as the master node of hadoop. First, let's take a look at the IP address of the master machine: The IP address of the current host is "192.168.184.20 ". Modify the host name in/etc/hostname: Enter the configuration file: We can see the default name when installing ubuntu. The name of the machine in the configuration file is

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 2) (3)

. From the configuration above, we can see that we use the master node as the master node and as the data processing node. This is due to the consideration of three copies of our data and the limited number of machines. Copy the master configured masters and slaves files to the conf folder under the hadoop installation directory of slave1 and slave2 respectively: Go to the slave1 or slave2 node to check the content of the masters and slaves files: It is found that the copy is completel

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 2)

slave2 machines. In this case, the id_rsa.pub of slave1 is sent to the master, as shown below: At the same time, the slave2 id_rsa.pub is sent to the master, as shown below: Check whether the data has been copied on the master: Now we can see that the public keys of slave1 and slave2 nodes have been transmitted. All public keys are integrated on the master node: Copy the master's public key information authorized_keys to the. SSH directory of slave1 and slave1: Log on to slave1

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 5) (6)

The command to end historyserver is as follows: Step 4: Verify the hadoop distributed Cluster First, create two directories on the HDFS file system. The creation process is as follows: /Data/wordcount in HDFS is used to store the data files of the wordcount example provided by hadoop. The program running result is output to the/output/wordcount directory, through web control, we can find that we have successfully created two folders: Next, upload the data of the local file to the HDFS

Spark Ecological and Spark architecture

Spark Overview Spark is a general-purpose large-scale data processing engine. Can be simply understood as Spark is a large data distributed processing framework.Spark is a distributed computing framework based on the map reduce algorithm, but the Spark intermediate output and result output can be stored in memory, thu

Locally developed spark code uploads the spark Cluster service and runs it (based on the Spark website documentation)

Open idea under the SRC under main under Scala right click to create a Scala class named Simpleapp, the content is as followsOrg.apache.spark.SparkContext org.apache.spark.sparkcontext._ org.apache.spark.SparkConf"a"). Count () numbs = logdata.filter (line = Line.contains ("B")). Count () println ("Lines with a:%s, Lines with B:%s". Format (Numas, numbs))}} Packaging files:File-->>projectstructure-click artificats-->> click the Green Plus-click jar-->> Select from module with Depe

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (2)

Step 2: Use the spark cache mechanism to observe the Efficiency Improvement Based on the above content, we are executing the following statement: 650) This. width = 650; "src =" http://s3.51cto.com/wyfs02/M00/49/AF/wKioL1QY8tmiGO95AAG6MKKe5vI885.jpg "style =" float: none; "Title =" 1.png" alt = "wkiol1qy8tmigo95aag6mkke5vi885.jpg"/> 650) This. width = 650; "src =" http://s3.51cto.com/wyfs02/M00/49/AD/wKiom1QY8sLjnB_KAAHXbDhuD_I646.jpg "style =" float

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (2)

Step 2: Use the spark cache mechanism to observe the Efficiency Improvement Based on the above content, we are executing the following statement: It is found that the same calculation result is 15. In this case, go to the Web console: The console clearly shows that we performed the "count" Operation twice. Now we will execute the "Sparks" variable for the "cache" Operation: Run the Count operation to view the Web console: At this tim

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (2)

Step 2: Use the spark cache mechanism to observe the Efficiency Improvement Based on the above content, we are executing the following statement: It is found that the same calculation result is 15. In this case, go to the Web console: The console clearly shows that we performed the "count" Operation twice. Now we will execute the "Sparks" variable for the "cache" Operation: Run the Count operation to view the Web console: At this time, we found

Big data why Spark is chosen

Big data why Spark is chosenSpark is a memory-based, open-source cluster computing system designed for faster data analysis. Spark, a small team based at the University of California's AMP lab Matei, uses Scala to develop its core code with only 63 Scala files, very lightweight. Spark provides an open-source cluster computing environment similar to Hadoop, but ba

Spark structured data processing: Spark SQL, Dataframe, and datasets

Label:This article explains the structured data processing of spark, including: Spark SQL, DataFrame, DataSet, and Spark SQL services. This article focuses on the structured data processing of the spark 1.6.x, but because of the rapid development of spark (the writing time o

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (8)

Step 5: test the spark IDE development environment The following error message is displayed when we directly select sparkpi and run it: The prompt shows that the master machine running spark cannot be found. In this case, you need to configure the sparkpi execution environment: Select Edit configurations to go to the configuration page: In program arguments, enter "local ": This configuration i

Spark API Programming Hands-on -08-based on idea using Spark API Development Spark Program-02

Next package, use Project structure's artifacts:Using the From modules with dependencies:Select Main Class:Click "OK":Change the name to Sparkdemojar:Because Scala and spark are installed on each machine, you can delete both Scala and spark-related jar files:Next Build:Select "Build Artifacts":The rest of the operation is to upload the jar package to the server, and then execute the

Spark card in spark context, running appears spark Exception encountered while connecting to the Server:javax.security.sasl.SaslException

Reason:Running the spark code with the root userWorkaround: Run spark with a non-administrator account[[Email protected] Bin]$./Add-User.ShWhatType of userDoYou wish to add?A) Management User (Mgmt-Users.Properties)B) Application User (Application-Users.Properties)(A):BEnterThe details of theNewUser to add.Realm (Applicationrealm) : Applicationrealm ---->> Careful Here . YouNeed to typeThisor leave it blank

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (3)

/49/D5/wKioL1QbpNKDWXo_AAElnZLjV4U229.jpg "style =" float: none; "Title =" 14.png" alt = "wkiol1qbpnkdwxo_aaelnzljv4u229.jpg"/> Select "yes" to enable automatic installation of scala plug-in idea. 650) This. width = 650; "src =" http://s3.51cto.com/wyfs02/M00/49/D3/wKiom1QbpLijqttNAAE3LTevJ5I077.jpg "style =" float: none; "Title =" 15.png" alt = "wkiom1qbplijqttnaae3ltevj5i077.jpg"/> In this case, it takes about 2 minutes to download and install the SDK. Of course, the download time varies depen

[Spark Asia Pacific Research Institute Series] the path to spark practice-Chapter 1 building a spark cluster (step 4) (6)

; "src =" http://s3.51cto.com/wyfs02/M02/4A/13/wKioL1QiJJPzxOm0AAFxk_FS8AU762.jpg "style =" float: none; "Title =" 51.png" alt = "wkiol1qijjpzxom0aafxk_fs8au762.jpg"/> We found that we fully used the new background and correctly ran the program, which is much faster than the first operation. This article is from the spark Asia Pacific Research Institute blog, please be sure to keep this source http://rockyspark.blog.51cto.com/2229525/1557591 [

Azure HDInsight and Spark Big Data Combat (ii)

instructions to download the document and run it for later spark programs.wget Http://en.wikipedia.org/wiki/HortonworksCopy the data to HDFs in the Hadoop cluster,Hadoop fs-put ~/hortonworks/user/guest/hortonworksIn many spark examples using Scala and Java application Demonstrations, this example uses Pyspark to demonstrate the use of the Python voice-based

Big Data learning: What Spark is and how to perform data analysis with spark

Share with you what spark is? How to analyze data with spark, and small partners who are interested in big data to learn about it.Big Data Online LearningWhat is Apache Spark?Apache Spark is a cluster computing platform designed for speed and general purpose.From a speed point of view,

Total Pages: 15 1 .... 3 4 5 6 7 .... 15 Go to: Go

Contact Us

The content source of this page is from Internet, which doesn't represent Alibaba Cloud's opinion; products and services mentioned on that page don't have any relationship with Alibaba Cloud. If the content of the page makes you feel confusing, please write us an email, we will handle the problem within 5 days after receiving your email.

If you find any instances of plagiarism from the community, please send an email to: info-contact@alibabacloud.com and provide relevant evidence. A staff member will contact you within 5 working days.

A Free Trial That Lets You Build Big!

Start building with 50+ products and up to 12 months usage for Elastic Compute Service

  • Sales Support

    1 on 1 presale consultation

  • After-Sales Support

    24/7 Technical Support 6 Free Tickets per Quarter Faster Response

  • Alibaba Cloud offers highly flexible support services tailored to meet your exact needs.