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阿裏雲E-MapReduce Pig 作業配置

E-MapReduce 中,用戶申請集群的時候,默認為用戶提供了 Pig 環境,用戶可以直接使用 Pig 來創建和操作自己的表和數據。操作步驟如下。

1.用戶需要提前準備好 Pig 的腳本,例如:

 ```shell
 /*
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 * or more contributor license agreements.  See the NOTICE file
 * distributed with this work for additional information
 * regarding copyright ownership.  The ASF licenses this file
 * to you under the Apache License, Version 2.0 (the
 * "License"); you may not use this file except in compliance
 * with the License.  You may obtain a copy of the License at
 *
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 *
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 * distributed under the License is distributed on an "AS IS" BASIS,
 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
 * See the License for the specific language governing permissions and
 * limitations under the License.
 */
 -- Query Phrase Popularity (Hadoop cluster)
 -- This script processes a search query log file from the Excite search engine and finds search phrases that occur with particular high frequency during certain times of the day. 
 -- Register the tutorial JAR file so that the included UDFs can be called in the script.
 REGISTER oss://emr/checklist/jars/chengtao/pig/tutorial.jar;
 -- Use the  PigStorage function to load the excite log file into the “raw” bag as an array of records.
 -- Input: (user,time,query) 
 raw = LOAD 'oss://emr/checklist/data/chengtao/pig/excite.log.bz2' USING PigStorage('\t') AS (user, time, query);
 -- Call the NonURLDetector UDF to remove records if the query field is empty or a URL. 
 clean1 = FILTER raw BY org.apache.pig.tutorial.NonURLDetector(query);
 -- Call the ToLower UDF to change the query field to lowercase. 
 clean2 = FOREACH clean1 GENERATE user, time, org.apache.pig.tutorial.ToLower(query) as query;
 -- Because the log file only contains queries for a single day, we are only interested in the hour.
 -- The excite query log timestamp format is YYMMDDHHMMSS.
 -- Call the ExtractHour UDF to extract the hour (HH) from the time field.
 houred = FOREACH clean2 GENERATE user, org.apache.pig.tutorial.ExtractHour(time) as hour, query;
 -- Call the NGramGenerator UDF to compose the n-grams of the query.
 ngramed1 = FOREACH houred GENERATE user, hour, flatten(org.apache.pig.tutorial.NGramGenerator(query)) as ngram;
 -- Use the  DISTINCT command to get the unique n-grams for all records.
 ngramed2 = DISTINCT ngramed1;
 -- Use the  GROUP command to group records by n-gram and hour. 
 hour_frequency1 = GROUP ngramed2 BY (ngram, hour);
 -- Use the  COUNT function to get the count (occurrences) of each n-gram. 
 hour_frequency2 = FOREACH hour_frequency1 GENERATE flatten($0), COUNT($1) as count;
 -- Use the  GROUP command to group records by n-gram only. 
 -- Each group now corresponds to a distinct n-gram and has the count for each hour.
 uniq_frequency1 = GROUP hour_frequency2 BY group::ngram;
 -- For each group, identify the hour in which this n-gram is used with a particularly high frequency.
 -- Call the ScoreGenerator UDF to calculate a "popularity" score for the n-gram.
 uniq_frequency2 = FOREACH uniq_frequency1 GENERATE flatten($0), flatten(org.apache.pig.tutorial.ScoreGenerator($1));
 -- Use the  FOREACH-GENERATE command to assign names to the fields. 
 uniq_frequency3 = FOREACH uniq_frequency2 GENERATE $1 as hour, $0 as ngram, $2 as score, $3 as count, $4 as mean;
 -- Use the  FILTER command to move all records with a score less than or equal to 2.0.
 filtered_uniq_frequency = FILTER uniq_frequency3 BY score > 2.0;
 -- Use the  ORDER command to sort the remaining records by hour and score. 
 ordered_uniq_frequency = ORDER filtered_uniq_frequency BY hour, score;
 -- Use the  PigStorage function to store the results. 
 -- Output: (hour, n-gram, score, count, average_counts_among_all_hours)
 STORE ordered_uniq_frequency INTO 'oss://emr/checklist/data/chengtao/pig/script1-hadoop-results' USING PigStorage();

2.將該腳本保存到一個腳本文件中,例如叫 script1-hadoop-oss.pig,然後將該腳本上傳到 OSS 的某個目錄中(例如:oss://path/to/script1-hadoop-oss.pig)。

3.進入阿裏雲 E-MapReduce 控製台作業列表。

4.單擊該頁右上角的創建作業,進入創建作業頁麵。

5.填寫作業名稱。

6.選擇 Pig 作業類型,表示創建的作業是一個 Pig 作業。這種類型的作業,其後台實際上是通過以下的方式提交。

pig [user provided parameters]
7.在應用參數選項框中填入 Pig 命令後續的參數。例如,如果需要使用剛剛上傳到 OSS 的 Pig 腳本,則填寫如下:

-x mapreduce ossref://emr/checklist/jars/chengtao/pig/script1-hadoop-oss.pig
您也可以單擊選擇 OSS 路徑,從 OSS 中進行瀏覽和選擇,係統會自動補齊 OSS 上 Pig 腳本的絕對路徑。請務必將 Pig 腳本的前綴修改為 ossref(單擊切換資源類型),以保證 E-MapReduce 可以正確下載該文件。

8.選擇執行失敗後策略。

9.單擊確定,Pig 作業即定義完成。

最後更新:2017-09-01 01:02:49

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