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BIG DATA
Basic Concepts
Introduction
Big data is a collection of large datasets that cannot be
processed using traditional computing techniques.
Big data involves the data produced by different devices
and applications
Big Data is a term used to describe a collection of
data that is huge in size and yet growing exponentially
with time.
Source
BIG DATA
Black Box Data
Social Media Data
Stock Exchange Data
Power Grid Data
Transport Data
Unstructured data
Search Engine Data
Structured data
Source
Black Box Data
Voices of the flight crew
Recordings of microphones and earphones
Performance information of the aircraft
Social Media Data
FaceBook Data
Twitter Data
Pintrest Data
Source
Purchased share by customer
Sold share by customer
Complete stock data
Model of vehicle
Capacity of vehicle
Distance related data
Stock Exchange Data
Transport Data
Benefits
BIG DATA
Understand the market
conditions
Control online
reputation
New Product
Development
Time Reductions
3 V’s
BIG DATA
Variety Volume
The data is increasing
at a very fast rate. It is
estimated that the
volume of data will
double in every 2
years.
Data comes in all formats
that may be structured,
numeric in the traditional
database or the
unstructured text
documents, video, audio,
email, stock ticker data.
The amount of
data which we deal
with is of very large
size of Peta bytes.
Velocity
Technologies
BIG DATA Technologies
This include systems like
MongoDB that provide
operational capabilities for real-
time, interactive workloads
where data is primarily captured
and stored.
Operational
Big Data
Analytical
Big Data
These includes systems like
Massively Parallel Processing (MPP)
database systems and Map Reduce
that provide analytical capabilities
for retrospective and complex
analysis that may touch most or all
of the data.
Challenges
BIG DATA
Capturing data
Searching
Transfer
Storage Presentation
Sharing
Curation Analysis
Solution
BIG DATA
Map Reduce paradigm is
applied to data distributed
over network to find the
required output.
Hadoop is open source so
the cost is no more an
issue.
Pig, Hive can be used to
analyze the data.
This huge amount of data,
Hadoop uses HDFS
(Hadoop Distributed File
System).
Storage
Analyze Cost
Processing
References
Thank
You

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Big data - Basics

  • 2. Introduction Big data is a collection of large datasets that cannot be processed using traditional computing techniques. Big data involves the data produced by different devices and applications Big Data is a term used to describe a collection of data that is huge in size and yet growing exponentially with time.
  • 3. Source BIG DATA Black Box Data Social Media Data Stock Exchange Data Power Grid Data Transport Data Unstructured data Search Engine Data Structured data
  • 4. Source Black Box Data Voices of the flight crew Recordings of microphones and earphones Performance information of the aircraft Social Media Data FaceBook Data Twitter Data Pintrest Data
  • 5. Source Purchased share by customer Sold share by customer Complete stock data Model of vehicle Capacity of vehicle Distance related data Stock Exchange Data Transport Data
  • 6. Benefits BIG DATA Understand the market conditions Control online reputation New Product Development Time Reductions
  • 7. 3 V’s BIG DATA Variety Volume The data is increasing at a very fast rate. It is estimated that the volume of data will double in every 2 years. Data comes in all formats that may be structured, numeric in the traditional database or the unstructured text documents, video, audio, email, stock ticker data. The amount of data which we deal with is of very large size of Peta bytes. Velocity
  • 8. Technologies BIG DATA Technologies This include systems like MongoDB that provide operational capabilities for real- time, interactive workloads where data is primarily captured and stored. Operational Big Data Analytical Big Data These includes systems like Massively Parallel Processing (MPP) database systems and Map Reduce that provide analytical capabilities for retrospective and complex analysis that may touch most or all of the data.
  • 9. Challenges BIG DATA Capturing data Searching Transfer Storage Presentation Sharing Curation Analysis
  • 10. Solution BIG DATA Map Reduce paradigm is applied to data distributed over network to find the required output. Hadoop is open source so the cost is no more an issue. Pig, Hive can be used to analyze the data. This huge amount of data, Hadoop uses HDFS (Hadoop Distributed File System). Storage Analyze Cost Processing