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Seminar
On
BIG DATA
INTRODUCTION
 Big Data may well be the Next Big Thing in the IT world.
 Big data burst upon the scene in the first decade of the
21st century.
 The first organizations to embrace it were online and
startup firms. Firms like Google, eBay, LinkedIn, and
Facebook were built around big data from the beginning.
 Like many new information technologies, big data can
bring about dramatic cost reductions, substantial
improvements in the time required to perform a computing
task, or new product and service offerings.
WHAT IS BIG DATA?
 ‘Big Data’ is similar to ‘small data’, but bigger in size
 but having data bigger it requires different
approaches:
 Techniques, tools and architecture
 an aim to solve new problems or old problems in a
better way
 Big Data generates value from the storage and
processing of very large quantities of digital
information that cannot be analyzed with traditional
computing techniques.
WHAT IS BIG DATA
 Walmart handles more than 1 million customer
transactions every hour.
• Facebook handles 40 billion photos from its user base.
• Decoding the human genome originally took 10years to
process; now it can be achieved in one week.
THREE CHARACTERISTICS OF BIG DATA
V3S
Volume
• Data
quantity
Velocity
• Data
Speed
Variety
• Data
Types
1ST CHARACTER OF BIG DATA
VOLUME
•A typical PC might have had 10 gigabytes of storage in 2000.
•Today, Facebook ingests 500 terabytes of new data every
day.
•Boeing 737 will generate 240 terabytes of flight data during a
single flight across the US.
2ND CHARACTER OF BIG DATA
VELOCITY
 Clickstreams and ad impressions capture user behavior
at millions of events per second
 high-frequency stock trading algorithms reflect market
changes within microseconds
 machine to machine processes exchange data between
billions of devices
 infrastructure and sensors generate massive log data in
real-time
 on-line gaming systems support millions of concurrent
users, each producing multiple inputs per second.
3RD CHARACTER OF BIG DATA
VARIETY
 Big Data isn't just numbers, dates, and strings.
Big Data is also geospatial data, 3D data, audio
and video, and unstructured text, including log
files and social media.
 Traditional database systems were designed to
address smaller volumes of structured data,
fewer updates or a predictable, consistent data
structure.
 Big Data analysis includes different types of data
STORING BIG DATA
 Analyzing your data characteristics
 Selecting data sources for analysis
 Eliminating redundant data
 Establishing the role of NoSQL
 Overview of Big Data stores
 Data models: key value, graph, document, column-family
 Hadoop Distributed File System
 HBase
 Hive
PROCESSING BIG DATA
 Integrating disparate data stores
 Mapping data to the programming framework
 Connecting and extracting data from storage
 Transforming data for processing
 Subdividing data in preparation for Hadoop MapReduce
 Employing Hadoop MapReduce
 Creating the components of Hadoop MapReduce jobs
 Distributing data processing across server farms
 Executing Hadoop MapReduce jobs
 Monitoring the progress of job flows
THE STRUCTURE OF BIG DATA
 Structured
• Most traditional data
sources
 Semi-structured
• Many sources of big data
 Unstructured
• Video data, audio data
11
WHY BIG DATA
• Growth of Big Data is needed
– Increase of storage capacities
– Increase of processing power
– Availability of data(different data types)
WHY BIG DATA
•FB generates 10TB
daily
•Twitter generates 7TB
of data
Daily
•IBM claims 90% of
today’s
stored data was
generated
in just the last two years.
HOW IS BIG DATA DIFFERENT?
1) Automatically generated by a machine
(e.g. Sensor embedded in an engine)
2) Typically an entirely new source of data
(e.g. Use of the internet)
3) Not designed to be friendly
(e.g. Text streams)
14
BIG DATA SOURCES
Users
Application
Systems
Sensors
Large and growing files
(Big data files)
DATA GENERATION POINTS
EXAMPLES
Mobile Devices
Readers/Scanners
Science facilities
Microphones
Cameras
Social Media
Programs/ Software
BIG DATA ANALYTICS
 Examining large amount of data
 Appropriate information (about data)
 Identification of hidden patterns, unknown correlations
 Better business decisions: strategic and operational
 Effective marketing, customer satisfaction, increased
revenue
TYPES OF TOOLS USED IN BIG-DATA
 Where processing is hosted?
 Distributed Servers / Cloud (e.g. Amazon EC2)
 Where data is stored?
 Distributed Storage (e.g. Amazon S3)
 What is the programming model?
 Distributed Processing (e.g. MapReduce)
 How data is stored & indexed?
 High-performance schema-free databases (e.g. MongoDB)
 What operations are performed on data?
 Analytic / Semantic Processing
Application Of Big Data analytics
Homeland
Security
Smarter
Healthcare Multi-channel
sales
Telecom
Manufacturing
Traffic Control Trading
Analytics
Search
Quality
RISKS OF BIG DATA
• Will be so overwhelmed
• Need the right people and solve the right problems
• Costs escalate too fast
• Isn’t necessary to capture 100%
• Many sources of big data
is privacy
• self-regulation (data compression)
• Legal regulation
20
HOW BIG DATA IMPACTS ON IT
• Big data is a troublesome force presenting
opportunities with challenges to IT organizations.
 By 2015 4.4 million IT jobs in Big Data ; 1.9 million
is in US itself
 In 2017, Data scientist’s was No. 1 Job in the
Harvard’s ranking.
BENEFITS OF BIG DATA
•Real-time big data isn’t just a process for storing
petabytes or exabytes of data in a data warehouse,
It’s about the ability to make better decisions and take
meaningful actions at the right time.
•Fast forward to the present and technologies like
Hadoop give you the scale and flexibility to store data
before you know how you are going to process it.
•Technologies such as MapReduce,Hive and Impala
enable you to run queries without changing the data
structures underneath.
THANK YOU.

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Big data-ppt

  • 1. www.studymafia.org Submitted To: Submitted By: www.studymafia.org www.studymafia.org Seminar On BIG DATA
  • 2. INTRODUCTION  Big Data may well be the Next Big Thing in the IT world.  Big data burst upon the scene in the first decade of the 21st century.  The first organizations to embrace it were online and startup firms. Firms like Google, eBay, LinkedIn, and Facebook were built around big data from the beginning.  Like many new information technologies, big data can bring about dramatic cost reductions, substantial improvements in the time required to perform a computing task, or new product and service offerings.
  • 3. WHAT IS BIG DATA?  ‘Big Data’ is similar to ‘small data’, but bigger in size  but having data bigger it requires different approaches:  Techniques, tools and architecture  an aim to solve new problems or old problems in a better way  Big Data generates value from the storage and processing of very large quantities of digital information that cannot be analyzed with traditional computing techniques.
  • 4. WHAT IS BIG DATA  Walmart handles more than 1 million customer transactions every hour. • Facebook handles 40 billion photos from its user base. • Decoding the human genome originally took 10years to process; now it can be achieved in one week.
  • 5. THREE CHARACTERISTICS OF BIG DATA V3S Volume • Data quantity Velocity • Data Speed Variety • Data Types
  • 6. 1ST CHARACTER OF BIG DATA VOLUME •A typical PC might have had 10 gigabytes of storage in 2000. •Today, Facebook ingests 500 terabytes of new data every day. •Boeing 737 will generate 240 terabytes of flight data during a single flight across the US.
  • 7. 2ND CHARACTER OF BIG DATA VELOCITY  Clickstreams and ad impressions capture user behavior at millions of events per second  high-frequency stock trading algorithms reflect market changes within microseconds  machine to machine processes exchange data between billions of devices  infrastructure and sensors generate massive log data in real-time  on-line gaming systems support millions of concurrent users, each producing multiple inputs per second.
  • 8. 3RD CHARACTER OF BIG DATA VARIETY  Big Data isn't just numbers, dates, and strings. Big Data is also geospatial data, 3D data, audio and video, and unstructured text, including log files and social media.  Traditional database systems were designed to address smaller volumes of structured data, fewer updates or a predictable, consistent data structure.  Big Data analysis includes different types of data
  • 9. STORING BIG DATA  Analyzing your data characteristics  Selecting data sources for analysis  Eliminating redundant data  Establishing the role of NoSQL  Overview of Big Data stores  Data models: key value, graph, document, column-family  Hadoop Distributed File System  HBase  Hive
  • 10. PROCESSING BIG DATA  Integrating disparate data stores  Mapping data to the programming framework  Connecting and extracting data from storage  Transforming data for processing  Subdividing data in preparation for Hadoop MapReduce  Employing Hadoop MapReduce  Creating the components of Hadoop MapReduce jobs  Distributing data processing across server farms  Executing Hadoop MapReduce jobs  Monitoring the progress of job flows
  • 11. THE STRUCTURE OF BIG DATA  Structured • Most traditional data sources  Semi-structured • Many sources of big data  Unstructured • Video data, audio data 11
  • 12. WHY BIG DATA • Growth of Big Data is needed – Increase of storage capacities – Increase of processing power – Availability of data(different data types)
  • 13. WHY BIG DATA •FB generates 10TB daily •Twitter generates 7TB of data Daily •IBM claims 90% of today’s stored data was generated in just the last two years.
  • 14. HOW IS BIG DATA DIFFERENT? 1) Automatically generated by a machine (e.g. Sensor embedded in an engine) 2) Typically an entirely new source of data (e.g. Use of the internet) 3) Not designed to be friendly (e.g. Text streams) 14
  • 15. BIG DATA SOURCES Users Application Systems Sensors Large and growing files (Big data files)
  • 16. DATA GENERATION POINTS EXAMPLES Mobile Devices Readers/Scanners Science facilities Microphones Cameras Social Media Programs/ Software
  • 17. BIG DATA ANALYTICS  Examining large amount of data  Appropriate information (about data)  Identification of hidden patterns, unknown correlations  Better business decisions: strategic and operational  Effective marketing, customer satisfaction, increased revenue
  • 18. TYPES OF TOOLS USED IN BIG-DATA  Where processing is hosted?  Distributed Servers / Cloud (e.g. Amazon EC2)  Where data is stored?  Distributed Storage (e.g. Amazon S3)  What is the programming model?  Distributed Processing (e.g. MapReduce)  How data is stored & indexed?  High-performance schema-free databases (e.g. MongoDB)  What operations are performed on data?  Analytic / Semantic Processing
  • 19. Application Of Big Data analytics Homeland Security Smarter Healthcare Multi-channel sales Telecom Manufacturing Traffic Control Trading Analytics Search Quality
  • 20. RISKS OF BIG DATA • Will be so overwhelmed • Need the right people and solve the right problems • Costs escalate too fast • Isn’t necessary to capture 100% • Many sources of big data is privacy • self-regulation (data compression) • Legal regulation 20
  • 21. HOW BIG DATA IMPACTS ON IT • Big data is a troublesome force presenting opportunities with challenges to IT organizations.  By 2015 4.4 million IT jobs in Big Data ; 1.9 million is in US itself  In 2017, Data scientist’s was No. 1 Job in the Harvard’s ranking.
  • 22. BENEFITS OF BIG DATA •Real-time big data isn’t just a process for storing petabytes or exabytes of data in a data warehouse, It’s about the ability to make better decisions and take meaningful actions at the right time. •Fast forward to the present and technologies like Hadoop give you the scale and flexibility to store data before you know how you are going to process it. •Technologies such as MapReduce,Hive and Impala enable you to run queries without changing the data structures underneath.