mirror of
https://github.com/apache/zeppelin
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197 lines
6.7 KiB
Markdown
197 lines
6.7 KiB
Markdown
---
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layout: page
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title: "Tutorial"
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description: "Tutorial is valid for Spark 1.3 and higher"
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group: tutorial
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---
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<!--
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Licensed under the Apache License, Version 2.0 (the "License");
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you may not use this file except in compliance with the License.
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You may obtain a copy of the License at
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http://www.apache.org/licenses/LICENSE-2.0
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Unless required by applicable law or agreed to in writing, software
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distributed under the License is distributed on an "AS IS" BASIS,
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WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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See the License for the specific language governing permissions and
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limitations under the License.
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-->
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### Zeppelin Tutorial
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We will assume you have Zeppelin installed already. If that's not the case, see [Install](../install/install.html).
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Zeppelin's current main backend processing engine is [Apache Spark](https://spark.apache.org). If you're new to the system, you might want to start by getting an idea of how it processes data to get the most out of Zeppelin.
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<br />
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### Tutorial with Local File
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#### Data Refine
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Before you start Zeppelin tutorial, you will need to download [bank.zip](http://archive.ics.uci.edu/ml/machine-learning-databases/00222/bank.zip).
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First, to transform data from csv format into RDD of `Bank` objects, run following script. This will also remove header using `filter` function.
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```scala
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val bankText = sc.textFile("yourPath/bank/bank-full.csv")
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case class Bank(age:Integer, job:String, marital : String, education : String, balance : Integer)
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// split each line, filter out header (starts with "age"), and map it into Bank case class
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val bank = bankText.map(s=>s.split(";")).filter(s=>s(0)!="\"age\"").map(
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s=>Bank(s(0).toInt,
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s(1).replaceAll("\"", ""),
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s(2).replaceAll("\"", ""),
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s(3).replaceAll("\"", ""),
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s(5).replaceAll("\"", "").toInt
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)
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)
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// convert to DataFrame and create temporal table
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bank.toDF().registerTempTable("bank")
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```
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<br />
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#### Data Retrieval
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Suppose we want to see age distribution from `bank`. To do this, run:
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```sql
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%sql select age, count(1) from bank where age < 30 group by age order by age
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```
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You can make input box for setting age condition by replacing `30` with `${maxAge=30}`.
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```sql
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%sql select age, count(1) from bank where age < ${maxAge=30} group by age order by age
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```
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Now we want to see age distribution with certain marital status and add combo box to select marital status. Run:
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```sql
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%sql select age, count(1) from bank where marital="${marital=single,single|divorced|married}" group by age order by age
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```
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<br />
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### Tutorial with Streaming Data
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#### Data Refine
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Since this tutorial is based on Twitter's sample tweet stream, you must configure authentication with a Twitter account. To do this, take a look at [Twitter Credential Setup](https://databricks-training.s3.amazonaws.com/realtime-processing-with-spark-streaming.html#twitter-credential-setup). After you get API keys, you should fill out credential related values(`apiKey`, `apiSecret`, `accessToken`, `accessTokenSecret`) with your API keys on following script.
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This will create a RDD of `Tweet` objects and register these stream data as a table:
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```scala
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import org.apache.spark.streaming._
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import org.apache.spark.streaming.twitter._
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import org.apache.spark.storage.StorageLevel
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import scala.io.Source
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import scala.collection.mutable.HashMap
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import java.io.File
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import org.apache.log4j.Logger
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import org.apache.log4j.Level
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import sys.process.stringSeqToProcess
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/** Configures the Oauth Credentials for accessing Twitter */
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def configureTwitterCredentials(apiKey: String, apiSecret: String, accessToken: String, accessTokenSecret: String) {
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val configs = new HashMap[String, String] ++= Seq(
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"apiKey" -> apiKey, "apiSecret" -> apiSecret, "accessToken" -> accessToken, "accessTokenSecret" -> accessTokenSecret)
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println("Configuring Twitter OAuth")
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configs.foreach{ case(key, value) =>
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if (value.trim.isEmpty) {
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throw new Exception("Error setting authentication - value for " + key + " not set")
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}
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val fullKey = "twitter4j.oauth." + key.replace("api", "consumer")
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System.setProperty(fullKey, value.trim)
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println("\tProperty " + fullKey + " set as [" + value.trim + "]")
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}
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println()
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}
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// Configure Twitter credentials
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val apiKey = "xxxxxxxxxxxxxxxxxxxxxxxxx"
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val apiSecret = "xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx"
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val accessToken = "xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx"
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val accessTokenSecret = "xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx"
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configureTwitterCredentials(apiKey, apiSecret, accessToken, accessTokenSecret)
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import org.apache.spark.streaming.twitter._
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val ssc = new StreamingContext(sc, Seconds(2))
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val tweets = TwitterUtils.createStream(ssc, None)
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val twt = tweets.window(Seconds(60))
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case class Tweet(createdAt:Long, text:String)
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twt.map(status=>
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Tweet(status.getCreatedAt().getTime()/1000, status.getText())
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).foreachRDD(rdd=>
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// Below line works only in spark 1.3.0.
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// For spark 1.1.x and spark 1.2.x,
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// use rdd.registerTempTable("tweets") instead.
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rdd.toDF().registerAsTable("tweets")
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)
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twt.print
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ssc.start()
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```
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<br />
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#### Data Retrieval
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For each following script, every time you click run button you will see different result since it is based on real-time data.
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Let's begin by extracting maximum 10 tweets which contain the word "girl".
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```sql
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%sql select * from tweets where text like '%girl%' limit 10
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```
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This time suppose we want to see how many tweets have been created per sec during last 60 sec. To do this, run:
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```sql
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%sql select createdAt, count(1) from tweets group by createdAt order by createdAt
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```
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You can make user-defined function and use it in Spark SQL. Let's try it by making function named `sentiment`. This function will return one of the three attitudes(positive, negative, neutral) towards the parameter.
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```scala
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def sentiment(s:String) : String = {
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val positive = Array("like", "love", "good", "great", "happy", "cool", "the", "one", "that")
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val negative = Array("hate", "bad", "stupid", "is")
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var st = 0;
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val words = s.split(" ")
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positive.foreach(p =>
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words.foreach(w =>
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if(p==w) st = st+1
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)
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)
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negative.foreach(p=>
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words.foreach(w=>
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if(p==w) st = st-1
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)
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)
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if(st>0)
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"positivie"
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else if(st<0)
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"negative"
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else
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"neutral"
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}
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// Below line works only in spark 1.3.0.
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// For spark 1.1.x and spark 1.2.x,
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// use sqlc.registerFunction("sentiment", sentiment _) instead.
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sqlc.udf.register("sentiment", sentiment _)
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```
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To check how people think about girls using `sentiment` function we've made above, run this:
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```sql
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%sql select sentiment(text), count(1) from tweets where text like '%girl%' group by sentiment(text)
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```
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