What is BIG DATA?
Big Data is nothing but an assortment of such a huge and complex data
 that it becomes very tedious to capture, store, process, retrieve and 
analyze it with the help of on-hand database management tools or 
traditional data processing techniques.
Can you give some examples of Big Data?
There are many real life examples of Big Data! Facebook is generating
 500+ terabytes of data per day, NYSE (New York Stock Exchange) 
generates about 1 terabyte of new trade data per day, a jet airline 
collects 10 terabytes of censor data for every 30 minutes of flying 
time. All these are day to day examples of Big Data!
Can you give a detailed overview about the Big Data being generated by Facebook?
As of December 31, 2012, there are 1.06 billion monthly active users 
on facebook and 680 million mobile users. On an average, 3.2 billion 
likes and comments are posted every day on Facebook. 72% of web audience
 is on Facebook. And why not! There are so many activities going on 
facebook from wall posts, sharing images, videos, writing comments and 
liking posts, etc.  In fact, Facebook started using Hadoop in mid-2009 
and was one of the initial users of Hadoop.
According to IBM, what are the three characteristics of Big Data?
According to IBM, the three characteristics of Big Data are:
Volume: Facebook generating 500+ terabytes of data per day.
Velocity: Analyzing 2 million records each day to identify the reason for losses.
Variety: images, audio, video, sensor data, log files, etc.
Velocity: Analyzing 2 million records each day to identify the reason for losses.
Variety: images, audio, video, sensor data, log files, etc.
How Big is ‘Big Data’?
With time, data volume is growing exponentially. Earlier we used to 
talk about Megabytes or Gigabytes. But time has arrived when we talk 
about data volume in terms of terabytes, petabytes and also zettabytes! 
Global data volume was around 1.8ZB in 2011 and is expected to be 7.9ZB 
in 2015. It is also known that the global information doubles in every 
two years!
How analysis of Big Data is useful for organizations?
Effective analysis of Big Data provides a lot of business advantage 
as organizations will learn which areas to focus on and which areas are 
less important. Big data analysis provides some early key indicators 
that can prevent the company from a huge loss or help in grasping a 
great opportunity with open hands! A precise analysis of Big Data helps 
in decision making! For instance, nowadays people rely so much on 
Facebook and Twitter before buying any product or service. All thanks to
 the Big Data explosion.
Who are ‘Data Scientists’?
Data scientists are soon replacing business analysts or data 
analysts. Data scientists are experts who find solutions to analyze 
data. Just as web analysis, we have data scientists who have good 
business insight as to how to handle a business challenge. Sharp data 
scientists are not only involved in dealing business problems, but also 
choosing the relevant issues that can bring value-addition to the 
organization.
What is Hadoop?
Hadoop is a framework that allows for distributed processing of large
 data sets across clusters of commodity computers using a simple 
programming model.
Why the name ‘Hadoop’?
Hadoop doesn’t have any expanding version like ‘oops’. The charming 
yellow elephant you see is basically named after Doug’s son’s toy 
elephant!
Why do we need Hadoop?
Everyday a large amount of unstructured data is getting dumped into 
our machines. The major challenge is not to store large data sets in our
 systems but to retrieve and analyze the big data in the organizations, 
that too data present in different machines at different locations. In 
this situation a necessity for Hadoop arises. Hadoop has the ability to 
analyze the data present in different machines at different locations 
very quickly and in a very cost effective way. It uses the concept of 
MapReduce which enables it to divide the query into small parts and 
process them in parallel. This is also known as parallel computing.
The link Why Hadoop gives you a detailed explanation about why Hadoop is gaining so much popularity!
What are some of the characteristics of Hadoop framework?
Hadoop framework is written in Java. It is designed to solve problems
 that involve analyzing large data (e.g. petabytes). The programming 
model is based on Google’s MapReduce. The infrastructure is based on 
Google’s Big Data and Distributed File System. Hadoop handles large 
files/data throughput and supports data intensive distributed 
applications. Hadoop is scalable as more nodes can be easily added to 
it.
Give a brief overview of Hadoop history.
In 2002, Doug Cutting created an open source, web crawler project.
In 2004, Google published MapReduce, GFS papers.
In 2006, Doug Cutting developed the open source, Mapreduce and HDFS project.
In 2008, Yahoo ran 4,000 node Hadoop cluster and Hadoop won terabyte sort benchmark.
In 2009, Facebook launched SQL support for Hadoop.
In 2004, Google published MapReduce, GFS papers.
In 2006, Doug Cutting developed the open source, Mapreduce and HDFS project.
In 2008, Yahoo ran 4,000 node Hadoop cluster and Hadoop won terabyte sort benchmark.
In 2009, Facebook launched SQL support for Hadoop.
Give examples of some companies that are using Hadoop structure?
A lot of companies are using the Hadoop structure such as Cloudera, 
EMC, MapR, Hortonworks, Amazon, Facebook, eBay, Twitter, Google and so 
on.
What is the basic difference between traditional RDBMS and Hadoop?
Traditional RDBMS is used for transactional systems to report and archive the data, whereas Hadoop is
 an approach to store huge amount of data in the distributed file system
 and process it. RDBMS will be useful when you want to seek one record 
from Big data, whereas, Hadoop will be useful when you want Big data in 
one shot and perform analysis on that later.
What is structured and unstructured data?
Structured data is the data that is easily identifiable as it is 
organized in a structure. The most common form of structured data is a 
database where specific information is stored in tables, that is, rows
 and columns. Unstructured data refers to any data that cannot be 
identified easily. It could be in the form of images, videos, documents,
 email, logs and random text. It is not in the form of rows and columns.
What are the core components of Hadoop?
Core components of Hadoop are HDFS and MapReduce. HDFS is basically 
used to store large data sets and MapReduce is used to process such 
large data sets.
What is HDFS?
HDFS is a file system designed for storing very large files with 
streaming data access patterns, running clusters on commodity hardware.
What are the key features of HDFS?
HDFS is highly fault-tolerant, with high throughput, suitable for 
applications with large data sets, streaming access to file system data 
and can be built out of commodity hardware.
What is Fault Tolerance?
Suppose you have a file stored in a system, and due to some technical
 problem that file gets destroyed. Then there is no chance of getting 
the data back present in that file. To avoid such situations, Hadoop has
 introduced the feature of fault tolerance in HDFS. In Hadoop, when we 
store a file, it automatically gets replicated at two other locations 
also. So even if one or two of the systems collapse, the file is still 
available on the third system.
Replication causes data redundancy then why is is pursued in HDFS?
HDFS works with commodity hardware (systems with average 
configurations) that has high chances of getting crashed any time. Thus,
 to make the entire system highly fault-tolerant, HDFS replicates and 
stores data in different places. Any data on HDFS gets stored at atleast
 3 different locations. So, even if one of them is corrupted and the 
other is unavailable for some time for any reason, then data can be 
accessed from the third one. Hence, there is no chance of losing the 
data. This replication factor helps us to attain the feature of Hadoop 
called Fault Tolerant.
Since the data is replicated thrice in HDFS, does it mean that any calculation done on one node will also be replicated on the other two?
Since there are 3 nodes, when we send the MapReduce programs, 
calculations will be done only on the original data. The master node 
will know which node exactly has that particular data. In case, if one 
of the nodes is not responding, it is assumed to be failed. Only then, 
the required calculation will be done on the second replica.
What is throughput? How does HDFS get a good throughput?
Throughput is the amount of work done in a unit time. It 
describes how fast the data is getting accessed from the system and it 
is usually used to measure performance of the system. In HDFS, when we 
want to perform a task or an action, then the work is divided and shared
  among different systems. So all the systems will be executing the 
tasks assigned to them independently and in parallel. So the work will 
be completed in a very short period of time. In this way, the HDFS gives
 good throughput. By reading data in parallel, we decrease the actual 
time to read data tremendously.
What is streaming access?
As HDFS works on the principle of ‘Write Once, Read Many‘, the
 feature of streaming access is extremely important in HDFS. HDFS 
focuses not so much on storing the data but how to retrieve it at the 
fastest possible speed, especially while analyzing logs. In HDFS, 
reading the complete data is more important than the time taken to fetch
 a single record from the data.
What is a commodity hardware? Does commodity hardware include RAM?
Commodity hardware is a non-expensive system which is not of high 
quality or high-availability. Hadoop can be installed in any average 
commodity hardware. We don’t need super computers or high-end hardware 
to work on Hadoop. Yes, Commodity hardware includes RAM because there 
will be some services which will be running on RAM.
What is a Namenode?
Namenode is the master node on which job tracker runs and consists of
 the metadata. It maintains and manages the blocks which are present on 
the datanodes. It is a high-availability machine and single point of 
failure in HDFS.
Is Namenode also a commodity?
No. Namenode can never be a commodity hardware because the entire 
HDFS rely on it. It is the single point of failure in HDFS. Namenode has
 to be a high-availability machine.
What is a metadata?
Metadata is the information about the data stored in datanodes such as location of the file, size of the file and so on.
What is a Datanode?
Datanodes are the slaves which are deployed on each machine and 
provide the actual storage. These are responsible for serving read and 
write requests for the clients.
Why do we use HDFS for applications having large data sets and not when there are lot of small files?
HDFS is more suitable for large amount of data sets in a single file 
as compared to small amount of data spread across multiple files. This 
is because Namenode is a very expensive high performance system, so it 
is not prudent to occupy the space in the Namenode by unnecessary amount
 of metadata that is generated for multiple small files. So, when there 
is a large amount of data in a single file, name node will occupy less 
space. Hence for getting optimized performance, HDFS supports large data
 sets instead of multiple small files.
What is a daemon?
Daemon is a process or service that runs in background. In general, 
we use this word in UNIX environment. The equivalent of Daemon in 
Windows is “services” and in Dos is ” TSR”.
What is a job tracker?
Job tracker is a daemon that runs on a namenode for submitting and 
tracking MapReduce jobs in Hadoop. It assigns the tasks to the different
 task tracker. In a Hadoop cluster, there will be only one job tracker 
but many task trackers. It is the single point of failure for Hadoop and
 MapReduce Service. If the job tracker goes down all the running jobs 
are halted. It receives heartbeat from task tracker based on which Job 
tracker decides whether the assigned task is completed or not.
What is a task tracker?
Task tracker is also a daemon that runs on datanodes. Task Trackers 
manage the execution of individual tasks on slave node. When a client 
submits a job, the job tracker will initialize the job and divide the 
work and assign them to different task trackers to perform MapReduce 
tasks. While performing this action, the task tracker will be 
simultaneously communicating with job tracker by sending heartbeat. If 
the job tracker does not receive heartbeat from task tracker within 
specified time, then it will assume that task tracker has crashed and 
assign that task to another task tracker in the cluster.
Is Namenode machine same as datanode machine as in terms of hardware?
It depends upon the cluster you are trying to create. The Hadoop VM 
can be there on the same machine or on another machine. For instance, in
 a single node cluster, there is only one machine, whereas in the 
development or in a testing environment, Namenode and datanodes are on 
different machines.
What is a heartbeat in HDFS?
A heartbeat is a signal indicating that it is alive. A datanode sends
 heartbeat to Namenode and task tracker will send its heart beat to job 
tracker. If the Namenode or job tracker does not receive heart beat then
 they will decide that there is some problem in datanode or task tracker
 is unable to perform the assigned task.
Are Namenode and job tracker on the same host?
No, in practical environment, Namenode is on a separate host and job tracker is on a separate host.
What is a ‘block’ in HDFS?
A ‘block’ is the minimum amount of data that can be read or written. 
In HDFS, the default block size is 64 MB as contrast to the block size 
of 8192 bytes in Unix/Linux. Files in HDFS are broken down into 
block-sized chunks, which are stored as independent units. HDFS blocks 
are large as compared to disk blocks, particularly to minimize the cost 
of seeks.
If a particular file is 50 mb, will the HDFS block still consume 64 mb as the default size?
No, not at all! 64 mb is just a unit where the data will be stored. 
In this particular situation, only 50 mb will be consumed by an HDFS 
block and 14 mb will be free to store something else. It is the 
MasterNode that does data allocation in an efficient manner.
What are the benefits of block transfer?
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. Making the unit of abstraction a block rather than a file 
simplifies the storage subsystem. 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.
If we want to copy 10 blocks from one machine to another, but another machine can copy only 8.5 blocks, can the blocks be broken at the time of replication?
In HDFS, blocks cannot be broken down. Before copying the blocks from
 one machine to another, the Master node will figure out what is the 
actual amount of space required, how many block are being used, how much
 space is available, and it will allocate the blocks accordingly.
How indexing is done in HDFS?
Hadoop has its own way of indexing. Depending upon the block size, 
once the data is stored, HDFS will keep on storing the last part of the 
data which will say where the next part of the data will be. In fact, 
this is the base of HDFS.
If a data Node is full how it’s identified?
When data is stored in datanode, then the metadata of that data will 
be stored in the Namenode. So Namenode will identify if the data node is
 full.
If datanodes increase, then do we need to upgrade Namenode?
While installing the Hadoop system, Namenode is determined based on 
the size of the clusters. Most of the time, we do not need to upgrade 
the Namenode because it does not store the actual data, but just the 
metadata, so such a requirement rarely arise.
Are job tracker and task trackers present in separate machines?
Yes, job tracker and task tracker are present in different machines. 
The reason is job tracker is a single point of failure for the Hadoop 
MapReduce service. If it goes down, all running jobs are halted.
When we send a data to a node, do we allow settling in time, before sending another data to that node?
Yes, we do.
Does hadoop always require digital data to process?
Yes.  Hadoop always require digital data to be processed.
On what basis Namenode will decide which datanode to write on?
As the Namenode has the metadata (information) related to all the data nodes, it knows which datanode is free.
Doesn’t Google have its very own version of DFS?
Yes, Google owns a DFS known as “Google File System (GFS)”  developed by Google Inc. for its own use.
Who is a ‘user’ in HDFS?
A user is like you or me, who has some query or who needs some kind of data.
Is client the end user in HDFS?
No, Client is an application which runs on your machine, which is 
used to interact with the Namenode (job tracker) or datanode (task 
tracker).
What is the communication channel between client and namenode/datanode?
The mode of communication is SSH.
What is a rack?
Rack is a storage area with all the datanodes put together. These 
datanodes can be physically located at different places. Rack is a 
physical collection of datanodes which are stored at a single location. 
There can be multiple racks in a single location.
On what basis data will be stored on a rack?
When the client is ready to load a file into the cluster, the content
 of the file will be divided into blocks. Now the client consults the 
Namenode and gets 3 datanodes for every block of the file which 
indicates where the block should be stored. While placing the datanodes,
 the key rule followed is “for every block of data, two copies will exist in one rack, third copy in a different rack“. This rule is known as “Replica Placement Policy“.
Do we need to place 2nd and 3rd data in rack 2 only?
Yes, this is to avoid datanode failure.
What if rack 2 and datanode fails?
If both rack2 and datanode present in rack 1 fails then there is no 
chance of getting data from it. In order to avoid such situations, we 
need to replicate that data more number of times instead of replicating 
only thrice. This can be done by changing the value in replication 
factor which is set to 3 by default.
What is a Secondary Namenode? Is it a substitute to the Namenode?
The secondary Namenode constantly reads the data from the RAM of the 
Namenode and writes it into the hard disk or the file system. It is not a
 substitute to the Namenode, so if the Namenode fails, the entire Hadoop
 system goes down.
What is the difference between Gen1 and Gen2 Hadoop with regards to the Namenode?
In Gen 1 Hadoop, Namenode is the single point of failure. In Gen 2 
Hadoop, we have what is known as Active and Passive Namenodes kind of a 
structure. If the active Namenode fails, passive Namenode takes over the
 charge.
What is MapReduce?
Map Reduce is the ‘heart‘ of Hadoop that consists of two parts
 – ‘map’ and ‘reduce’. Maps and reduces are programs for processing 
data. ‘Map’ processes the data first to give some intermediate output 
which is further processed by ‘Reduce’ to generate the final output. 
Thus, MapReduce allows for distributed processing of the map and 
reduction operations.
Can you explain how do ‘map’ and ‘reduce’ work?
Namenode takes the input and divide it into parts and assign them to 
data nodes. These datanodes process the tasks assigned to them and make a
 key-value pair and returns the intermediate output to the Reducer. The 
reducer collects this key value pairs of all the datanodes and combines 
them and generates the final output.
What is ‘Key value pair’ in HDFS?
Key value pair is the intermediate data generated by maps and sent to reduces for generating the final output.
What is the difference between MapReduce engine and HDFS cluster?
HDFS cluster is the name given to the whole configuration of master 
and slaves where data is stored. Map Reduce Engine is the programming 
module which is used to retrieve and analyze data.
Is map like a pointer?
No, Map is not like a pointer.
Do we require two servers for the Namenode and the datanodes?
Yes, we need two different servers for the Namenode and the 
datanodes. This is because Namenode requires highly configurable system 
as it stores information about the location details of all the files 
stored in different datanodes and on the other hand, datanodes require 
low configuration system.
Why are the number of splits equal to the number of maps?
The number of maps is equal to the number of input splits because we want the key and value pairs of all the input splits.
Is a job split into maps?
No, a job is not split into maps. Spilt is created for the file. The 
file is placed on datanodes in blocks. For each split,  a map is needed.
Which are the two types of ‘writes’ in HDFS?
There are two types of writes in HDFS: posted and non-posted write.
 Posted Write is when we write it and forget about it, without worrying 
about the acknowledgement. It is similar to our traditional Indian 
post. In a Non-posted Write, we wait for the acknowledgement. It is 
similar to the today’s courier services. Naturally, non-posted write is 
more expensive than the posted write. It is much more expensive, though 
both writes are asynchronous.
Why ‘Reading‘ is done in parallel and ‘Writing‘ is not in HDFS?
Reading is done in parallel because by doing so we can access the data fast. But we do not perform the write operation in parallel. The reason is that if we perform the write operation
 in parallel, then it might result in data inconsistency. For example, 
you have a file and two nodes are trying to write data into the file in 
parallel, then the first node does not know what the second node has 
written and vice-versa. So, this makes it confusing which data to be 
stored and accessed.
Can Hadoop be compared to NOSQL database like Cassandra?
Though NOSQL is the closet technology that can be compared to 
Hadoop, it has its own pros and cons. There is no DFS in NOSQL. Hadoop 
is not a database. It’s a filesystem (HDFS) and distributed programming 
framework (MapReduce).
How can I install Cloudera VM in my system?
When you enrol for the hadoop course at Edureka, you can download the Hadoop Installation steps.pdf file from our dropbox. This will be shared with you by an e-mail.
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