Hadoop






BigData:


•Big data is a term used to describe the voluminous amount of unstructuredand semi-structured data a company creates.
•Data that would take too much time and cost too much money to load intoa relational database for analysis.

 • Big data doesnt refer to any specific quantity, the term is often used whenspeaking about petabytes and exabytes of data.





What Caused The Problem? Standard Hard Drive SizeYear (in Mb) Data Transfer Rate Year (Mbps) 1990 1370 1990 4.4 2010 1000000 2010 100
Increase in processing time may not be as helpful because
• Network bandwidth is now more of a limiting factor
• Physical limits of processor chips have been reached  Time to read entire disk= 10000 seconds or 3 Hours!  A standard disk is 1 Terabyte  The transfer speed is around 100 MB/s So What Is The Problem?
So What do We Do?
•The obvious solution is that we use multiple processors to solve the same problem by fragmenting it into pieces.
•Imagine if we had 100 drives, each holding one hundredth of the data. Working in parallel, we could read the data in under two minutes.
Distributed Computing-
Multiple computers connected via a network 
Parallelization- Multiple processors or CPU’s in a single machine Distributed Computing VsParallelization
 Examples Cray-2 was a four-processor ECL vector supercomputer made by Cray Research starting in 1985
Network Associated Problems  Combine the data after analysis  Hardware failure Distributed ComputingThe key issues involved in this Solution:
Simulating an internet size network for network experiments  Index the Web (Google)  Simulating several 100’s of characters- LOTRs  Multiplying Large Matrices  IBM Deep Blue What Can We Do With A DistributedComputer System?
Problems In Distributed Computing
Hardware Failure:
As soon as we start using many pieces of hardware, the chance that one will fail is fairly high.


Combine the data after analysis:
Most analysis tasks need to be able to combine the data in some way; data read from one disk may need to be combined with the data from any of the other 99 disks.



 To The Rescue!Apache Hadoop is a framework for running applications onlarge cluster built of commodity hardware.A common way of avoiding data loss is through replication:redundant copies of the data are kept by the system so that in theevent of failure, there is another copy available. The HadoopDistributed Filesystem (HDFS), takes care of this problem.The second problem is solved by a simple programming model-Mapreduce. Hadoop is the popular open source implementationof MapReduce, a powerful tool designed for deep analysis andtransformation of very large data sets.

What Else is Hadoop?
A reliable shared storage and analysis system. There are other subprojects of Hadoop that provide complementary services, or build on the core to add higher-level abstractions The various subprojects of hadoop include:



  •  Core
  •  Avro
  •  Pig
  •  HBase
  •  Zookeeper
  •  Hive
  •  Chukwa
Hadoop provides a simplified programming model which allows the user to quickly write and test distributed systems, and its’ efficient, automatic distribution of data and work across machines and in turn utilizing the underlying parallelism of the CPU cores.  Hadoop will tie these smaller and more reasonably priced machines together into a single cost-effective compute cluster.  The theoretical 1000-CPU machine would cost a very large amount of money, far more than 1,000 single-CPU. Hadoop Approach to DistributedComputing
MapReduce

The other workers continue to operate as though nothing  By restricting the communication between nodes, Hadoop makes the distributed system much more reliable. Individual node failures can be worked around by restarting tasks on other machines.  Hadoop limits the amount of communication which can be performed by the processes, as each individual record is processed by a task in isolation from one another MapReduce  (out_value list)à(out_key, intermediate_value)Reduce: (out_key, intermediate_value)àwent wrong, leaving the challenging aspects of partially restarting the program to the underlying Hadoop layer.Map : (in_value,in_key)
MapReduce is an associated implementation for processing and generating large data sets.  Programs written in this functional style are automatically parallelized and executed on a large cluster of commodity machines  MapReduce is a programming model What is MapReduce?

Map, written by the user, takes an input pair and produces a set of intermediate key/value pairs. The MapReduce library groups together all intermediate values associated with the same intermediate key I and passes them to the Reduce function.
The Programming Model Of MapReduce


The Reduce function, also written by the user, accepts an intermediate key I and a set of values for that key. It merges together these values to form a possibly smaller set of values 

Emit(AsString(result));Ø result += ParseInt(v);Ø
 for each v in values:Ø
 int result = 0;Ø
 // values: a list of countsØ
 // key: a wordØ reduce(String key, Iterator values):Ø EmitIntermediate(w, "1");Ø
for each word w in value:Ø
 // value: document contentsØ
 // key: document nameØ
Example:  This abstraction allows us to handle lists of values that are too large to fit in memory.
Orientation of Nodes Data Locality Optimization:
The computer nodes and the storage nodes are the same. The Map-Reduceframework and the Distributed File System run on the same set of nodes. Thisconfiguration allows the framework to effectively schedule tasks on the nodes wheredata is already present, resulting in very high aggregate bandwidth across thecluster.If this is not possible: The computation is done by another processor on the samerack. “Moving Computation is Cheaper than Moving Data”
A MapReduce job is a unit of work that the client wants to be performed:
it consists of the input data, the MapReduce program, and configuration information. Hadoop runs the job by dividing it into tasks, of which there are two types: map tasks and reduce tasks  Typically both the input and the output of the job are stored in a file-system. The framework takes care of scheduling tasks, monitoring them and re-executes the failed tasks.  The framework sorts the outputs of the maps, which are then input to the reduce tasks.  A Map-Reduce job usually splits the input data-set into independent chunks which are processed by the map tasks in a completely parallel manner. How MapReduce Works
If a tasks fails, the jobtracker can reschedule it on a different tasktracker.  Tasktrackers run tasks and send progress reports to the jobtracker, which keeps a record of the overall progress of each job.  The jobtracker coordinates all the jobs run on the system by scheduling tasks to run on tasktrackers.  There are two types of nodes that control the job execution process: tasktrackers and jobtrackers

Fault Tolerance


Map tasks write their output to local disk, not to HDFS. Map output is intermediate output: it’s processed by reduce tasks to produce the final output, and once the job is complete the map output can be thrown away. So storing it in HDFS, with replication, would be a waste of time. It is also possible that the node running the map task fails before the map output has been consumed by the reduce task.  BUT if splits are too small, then the overhead of managing the splits and of map task creation begins to dominate the total job execution time. For most jobs, a good split size tends to be the size of a HDFS block, 64 MB by default.WHY?  The quality of the load balancing increases as the splits become more fine- grained.  Input splits: Hadoop divides the input to a MapReduce job into fixed-size pieces called input splits, or just splits. Hadoop creates one map task for each split, which runs the user-defined map function for each record in the split. Input Splits
Reduce tasks don’t have the advantage of data locality—the input to a single reduce task is normally the output from all mappers. Input to Reduce Tasks

MapReduce data flow with a single reduce task


MapReduce data flow with multiple reduce tasks



MapReduce data flow with no reduce tasks

Combiner Functions
•Many MapReduce jobs are limited by the bandwidth available on the cluster.
•In order to minimize the data transferred between the map and reduce tasks, combinerfunctions are introduced.
•Hadoop allows the user to specify a combiner function to be run on the map output—thecombiner function’s output forms the input to the reduce function.
•Combiner finctions can help cut down the amount of data shuffled between the maps andthe reduces.
Hadoop Streaming:
•Hadoop provides an API to MapReduce that allows you to write your map and reduce functions in languages other than Java.
•Hadoop Streaming uses Unix standard streams as the interface between Hadoop and your program, so you can use any language that can read standard input and write to standard output to write your MapReduce program.
Hadoop Pipes:
•Hadoop Pipes is the name of the C++ interface to Hadoop MapReduce.
•Unlike Streaming, which uses standard input and output to communicate withthe map and reduce code, Pipes uses sockets as the channel over which thetasktracker communicates with the process running the C++ map or reducefunction. JNI is not used.
HDFS, the Hadoop Distributed File System, is a distributed file system designed to hold very large amounts of data (terabytes or even petabytes), and provide high-throughput access to this information.  Hadoop comes with a distributed filesystem called HDFS, which stands for Hadoop Distributed Filesystem.  Filesystems that manage the storage across a network of machines are called distributed filesystems. HADOOP DISTRIBUTEDFILESYSTEM (HDFS)
Problems In Distributed File SystemsMaking distributed filesystems is more complex than regular disk filesystems. Thisis because the data is spanned over multiple nodes, so all the complications ofnetwork programming kick in.
•Hardware FailureAn HDFS instance may consist of hundreds or thousands of server machines, each storingpart of the file system’s data. The fact that there are a huge number of components and thateach component has a non-trivial probability of failure means that some component of HDFSis always non-functional. Therefore, detection of faults and quick, automatic recovery fromthem is a core architectural goal of HDFS.

•Large Data Sets Applications that run on HDFS have large data sets. A typical file in HDFS is gigabytes toterabytes in size. Thus, HDFS is tuned to support large files. It should provide highaggregate data bandwidth and scale to hundreds of nodes in a single cluster. It shouldsupport tens of millions of files in a single instance.
Goals of HDFS Streaming Data Access Applications that run on HDFS need streaming access to their data sets. They arenot general purpose applications that typically run on general purpose file systems.HDFS is designed more for batch processing rather than interactive use by users.The emphasis is on high throughput of data access rather than low latency of dataaccess. POSIX imposes many hard requirements that are not needed forapplications that are targeted for HDFS. POSIX semantics in a few key areas hasbeen traded to increase data throughput rates. Simple Coherency Model HDFS applications need a write-once-read-many access model for files. A fileonce created, written, and closed need not be changed. This assumption simplifiesdata coherency issues and enables high throughput data access. A Map/Reduceapplication or a web crawler application fits perfectly with this model. There is a planto support appending-writes to files in the future.
A computation requested by an application is much more efficient if it is executed near the data it operates on. This is especially true when the size of the data set is huge. This minimizes network congestion and increases the overall throughput of the system. The assumption is that it is often better to migrate the computation closer to where the data is located rather than moving the data to where the application is running. HDFS provides interfaces for applications to move themselves closer to where the data is located. Portability Across Heterogeneous Hardware and Software Platforms HDFS has been designed to be easily portable from one platform to another. This facilitates widespread adoption of HDFS as a platform of choice for a large set of applications. “Moving Computation is Cheaper than Moving Data”
Streaming data access HDFS is built around the idea that the most efficient data processing pattern is a write-once, read-many-times pattern. A dataset is typically generated or copied from source, then various analyses are performed on that dataset over time. Each analysis will involve a large proportion of the dataset, so the time to read the whole dataset is more important than the latency in reading the first record.  Very large files Files that are hundreds of megabytes, gigabytes, or terabytes in size. There are Hadoop clusters running today that store petabytes of data. Design of HDFS
Multiple writers, arbitrary file modifications Files in HDFS may be written to by a single writer. Writes are always made at the end of the file. There is no support for multiple writers, or for modifications at arbitrary offsets in the file. (These might be supported in the future, but they are likely to be relatively inefficient.)  Low-latency data access Applications that require low-latency access to data, in the tens of milliseconds range, will not work well with HDFS. Remember HDFS is optimized for delivering a high throughput of data, and this may be at the expense of latency. HBase (Chapter 12) is currently a better choice for low-latency access.
Lots of small files Since the namenode holds filesystem metadata in memory, the limit to the number of files in a filesystem is governed by the amount of memory on the namenode. As a rule of thumb, each file, directory, and block takes about 150 bytes. So, for example, if you had one million files, each taking one block, you would need at least 300 MB of memory. While storing millions of files is feasible, billions is beyond the capability of current hardware.
Commodity hardware Hadoop doesn’t require expensive, highly reliable hardware to run on. It’s designed to run on clusters of commodity hardware for which the chance of node failure across the cluster is high, at least for large clusters. HDFS is designed to carry on working without a noticeable interruption to the user in the face of such failure. It is also worth examining the applications for which using HDFS does not work so well. While this may change in the future, these are areas where HDFS is not a good fit today:
Concepts of HDFS:
Blocks:
• A block is the minimum amount of data that can be read or written.• 64 MB by default.
• Files in HDFS are broken into block-sized chunks, which are stored as independent units.
• HDFS blocks are large compared to disk blocks, and the reason is to minimize the cost of seeks. By making a block large enough, the time to transfer the data from the disk can be made to be significantly larger than the time to seek to the start of the block. Thus the time to transfer a large file made of multiple blocks operates at the disk transfer rate. Block Abstraction
Be Blocks provide fault tolerance and availability. To insure against corrupted blocks and disk and machine failure, each block is replicated to a small number of physically separate machines (typically three). If a block becomes unavailable, a copy can be read from another location in a way that is transparent to the client.  Making the unit of abstraction a block rather than a file simplifies the storage subsystem.  A file can be larger than any single disk in the network. There’s nothing that requires the blocks from a file to be stored on the same disk, so they can take advantage of any of the disks in the cluster. nefits of Block Abstraction
Hadoop Archives can be used as input to MapReduce.  Hadoop Archives, or HAR files, are a file archiving facility that packs files into HDFS blocks more efficiently, thereby reducing namenode memory usage while still allowing transparent access to files.  HDFS stores small files inefficiently, since each file is stored in a block, and block metadata is held in memory by the namenode. Thus, a large number of small files can eat up a lot of memory on the namenode. Hadoop Archives
Archives are immutable once they have been created. To add or remove files, you must recreate the archive  There is currently no support for archive compression, although the files that go into the archive can be compressed Limitations of Archiving
Datanodes are the work horses of the filesystem. They store and retrieve blocks when they are told to (by clients or the namenode), and they report back to the namenode periodically with lists of blocks that they are storing.  The namenode manages the filesystem namespace. It maintains the filesystem tree and the metadata for all the files and directories in the tree.  A HDFS cluster has two types of node operating in a master- worker pattern: a namenode (the master) and a number of datanodes (workers). Namenodes and Datanodes
Without the namenode, the filesystem cannot be used. In fact, if the machine running the namenode were obliterated, all the files on the filesystem would be lost since there would be no way of knowing how to reconstruct the files from the blocks on the datanodes.
Important to make the namenode resilient to failure, and Hadoop provides two mechanisms for this:2. is to back up the files that make up the persistent state of the filesystem metadata. Hadoop can be configured so that the namenode writes its persistent state to multiple filesystems.3. Another solution is to run a secondary namenode. The secondary namenode usually runs on a separate physical machine, since it requires plenty of CPU and as much memory as the namenode to perform the merge. It keeps a copy of the merged namespace image, which can be used in the event of the namenode failing
The Namenode maintains the file system namespace. Any change to the file system namespace or its properties is recorded by the Namenode. An application can specify the number of replicas of a file that should be maintained by HDFS. The number of copies of a file is called the replication factor of that file. This information is stored by the Namenode.  HDFS does not yet implement user quotas or access permissions. HDFS does not support hard links or soft links. However, the HDFS architecture does not preclude implementing these features.  HDFS supports a traditional hierarchical file organization. A user or an application can create and remove files, move a file from one directory to another, rename a file, create directories and store files inside these directories. File System Namespace
When the replication factor is three, HDFS’s placement policy is to put one replica on one node in the local rack, another on a different node in the local rack, and the last on a different node in a different rack.  A Blockreport contains a list of all blocks on a DataNode.  The NameNode makes all decisions regarding replication of blocks. It periodically receives a Heartbeat and a Blockreport from each of the DataNodes in the cluster. Receipt of a Heartbeat implies that the DataNode is functioning properly.  The blocks of a file are replicated for fault tolerance.  Data Replication.