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| Title | Views | Posted | 
|---|---|---|
| 2141 | 09-25-2017 11:22 PM | |
| 7104 | 09-22-2017 08:04 PM | |
| 6052 | 02-03-2017 09:28 PM | |
| 4507 | 05-10-2016 05:04 AM | |
| 1392 | 05-04-2016 08:22 PM | 
			
    
	
		
		
		07-07-2018
	
		
		08:54 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 In certain Apache Hadoop use cases we want to get the checksum of files stored in HDFS. This is specifically useful when we are moving data from/to hdfs to verify the file was transferred correctly.   Earlier there was no easy way to compare that but starting Apache Hadoop 3.1 we can compare the checksums of a file stored in hdfs and  a file stored locally. HDFS-13056  The default checksum algorithm for hdfs chunks is CRC32C. A client can override it by overriding dfs.checksum.type (can be either CRC32 or CRC32C). This is not a cryptographically strong checksum, however it can be used for quick comparison.  When we run the checksum command (hdfs dfs -checksum) for a hdfs file it calculates MD5 of MD5 of checksums of individual chunks (each chunk is typically 512 bytes long). However this is not very useful for comparison with a local copy.  Example  For example, the below command computes the checksum of the file hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar stored in HDFS:  hdfs dfs -checksum /tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar
/tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar MD5-of-0MD5-of-512CRC32C  000002000000000000000000c16859d1d071c6b1ffc9c8557d4909f1  However this checksum is not easily comparable to that of a local copy. Instead we can calculate the CRC32C checksum of the whole file by adding -Ddfs.checksum.combine.mode=COMPOSITE_CRC to same command:  bin/hdfs dfs -Ddfs.checksum.combine.mode=COMPOSITE_CRC -checksum /tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar
/tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar COMPOSITE-CRC32C  3799db55  Property dfs.checksum.combine.mode=COMPOSITE_CRC tells hdfs to calculate combined CRC of individual CRCs instead of calculating MD5-of-Md5-of-Crcs.  It is important to note here that we can calculate checksum of type CRC32C or CRC32 for a hdfs file depending upon how it was originally written. For example we can't calculate CRC32 for file in above example as its chunks was originally written with CRC32C checksums.  If we want to get CRC32 of above file we need to specify dfs.checksum.type as CRC32 while writing that file.  hdfs dfs -Ddfs.checksum.type=CRC32 -put  hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar /tmp
hdfs dfs -checksum /tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar
/tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar MD5-of-0MD5-of-512CRC32  0000020000000000000000009f26e871c80d4cbd78b8d42897e5b364
hdfs dfs  -Ddfs.checksum.combine.mode=COMPOSITE_CRC -checksum /tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar
/tmp/hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar COMPOSITE-CRC32 c1ddb422  This checksum can be easily compared to checksum of same file in local file system with the crc32 command.  crc32 hadoop-common-2.7.3.2.6.3.0-SNAPSHOT.jar
c1ddb422 
						
					
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		03-29-2018
	
		
		10:22 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
	
		2 Kudos
		
	
				
		
	
		
					
							 
	Ozone is an Object store for Hadoop. It  is a redundant, distributed object store built by leveraging primitives present in HDFS. Below are some key features of ozone:  
	
 A Hadoop compatible file system called Ozone File system that allows programs like Hive or Spark to run against Ozone without any modifications.  Ozone supports RPC and REST API for accessing the store.  Built to support billions of keys in distributed environment.  Ozone can run concurrently with HDFS.     Like many other object stores, Ozone has a notion of volume. Only Administrators can create Volumes. Users create buckets in the volumes.  To store data inside a bucket, users create keys.  An ozone file system allows other Hadoop ecosystem applications like Hive and Spark to use ozone. Once a bucket is created, it is trivial to create an ozone file system.  A 10-thousand foot view of Ozone  
   OzoneManager (Om) acts as namespace manager. All ozone entities like volumes, buckets and keys are managed by Om. Om talks to an independent block manager (Storage Container Manager, SCM) to get blocks and passes it on to the Ozone client.  SCM: Storage Container Manager is the block and cluster manager for Ozone.  Block: Blocks are similar to blocks in HDFS. They are replicated blocks of data.   These components map very closely to the existing HDFS NameNode and DataNodes. The most significant difference is the presence of a block manager, SCM.  Using Ozone  
  
	The easiest way to run ozone is to try it out using the docker. To build Ozone from source, please checkout the hadoop sources from github. Then checkout the ozone branch, HDFS-7240 and build it.  
 git checkout HDFS-7240
  You can build ozone by running the following build command.  mvn clean package -DskipTests=true -Dmaven.javadoc.skip=true -Pdist -Phdsl -Dtar -DskipShade  
	skipShade is just to make compilation faster and not really required.  Running Ozone via Docker  
	This assumes that you have a running docker setup on the machine. Please run following commands to see ozone in action.   Go to the directory where the docker compose files exist.   	
  cd hadoop-dist/target/compose/ozone   Start ozone.   docker-compose up -d  
 Log into the datanode container   docker exec -it ozone_datanode_1  bash  
 Run the ozone load generator    ./bin/oz freon  Take a look at  OzoneManager UI, to see all the requests made by Freon http://localhost:9874/  Congratulations! on your first ozone deployment. In the next part of this tutorial we will cover oz command shell and look at how to use ozone to store files. 
						
					
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		10-17-2017
	
		
		04:47 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 @John Carter, It will depend on kind of latency, processing, and data volume you will be handling. Both are different approaches. Sqoop as you know will run mapreduce jobs while Nifi use case will be on streaming side. Given right resources both will work. 
						
					
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		09-26-2017
	
		
		02:36 AM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							@Teja Damineni  Good to know that your data is safe. Recommend taking regular backup of NameNode metadata to avoid any future issues. 
						
					
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		09-25-2017
	
		
		11:22 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 @Teja Damineni   If I perform a re-installation (of both Ambari-server and Namenode) on the same node with fresh OS installed, will it wipe my data ?  If you have taken backup of NameNode metadata you can use it to reset the NameNode. Without the backup you can't recover your data.   What about the services ?do I have to completely remove all services and re-install them ?   If you have backup of ambari database you can use it to reinitialize ambari to its old state, else you have to reinstall everything. 
						
					
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		09-25-2017
	
		
		10:57 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 Hi @Bin Ye  Check for entry of "dfs.namenode.name.dir" in config files. Try to grep /hadoop/hdfs/namenode/current in config dir and see if you can locate the config file which is over-riding your settings. 
						
					
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		09-22-2017
	
		
		08:04 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 Hi @Bin Ye, Check NameNode logs and share any error/exception. Some common issues:   hostname specified in "fs.default.name" is valid. Also check if that port is not used by existing service.  Proper file permission for dirs specified in "dfs.name.dir" and "dfs.data.dir"  
						
					
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		09-22-2017
	
		
		07:36 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
	
		1 Kudo
		
	
				
		
	
		
					
							@John Carter Using executeStreamCommand will also work. Alternatively if you want to use sqoop for all the transfer you can wrap the sqoop command in shell script and use ExecuteProcess. You can decide after weighting pros and cons of various approaches. With actual processing inside nifi you will get inbuilt fault tolerance and monitoring. 
						
					
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		09-14-2017
	
		
		09:20 PM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 @kerra Check if HiveServer2 you are trying to connect is configured properly in knox. Also check if HiveServer2 is set to   hive.server2.transport.mode=http    If zookeeper hosts are accessible than i will recommend using  discovery as it will auto detect port,host and other details. Are you able to connect to hive via beeline?  
						
					
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		09-14-2017
	
		
		01:39 AM
	
	
	
	
	
	
	
	
	
	
	
	
	
	
		
	
				
		
			
					
				
		
	
		
					
							 @John Carter, depending on actual use case you have couple of options to choose in Nifi. In simplest form we can read hive records using "SelectHiveQL" which can output records in either csv or avro format. You can pass those records to "PutDatabaseRecord" processor which can read data in several formats including avro, csv.  For this to work we need to configure below services:   HiveConnectionPool (for "SelectHiveQL")  Record Reader (Avro,CSV)   DBCPConnectionPool       This is one simple example. You can build more complex flows(which may involve filter, join, split or aggregation) based on actual requirements. 
						
					
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