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Big Data, Big Rewards
Prepared by:
Ismail Bin Mahedin (P13D122P)
Samat Haron Bin Joll (P13D123P)
Hjh Sulzarina Bt Hj. Mohamed (P13D119P)
Dayang Suhana Bt Awang Bujang (P13D152P
- CASE STUDY
What is Big
Data?
Big data is being generated by everything around us at
all times. Every digital process and social media
exchange produces it. Systems, sensors and mobile
devices transmit it. Big data is arriving from multiple
sources at an alarming velocity, volume and variety.
To extract meaningful value from big data, you need
optimal processing power, analytics capabilities and
Data Volume Trend
1.Describe the kinds of “big
data” collected by the
organizations described in
this case.
British Library: It collects data from typical library resources like books,
periodicals, and newspapers. In addition, it must store and collect data
from Web sites that no longer exist but must be preserved for historical
purposes. Data from over 6 billion searches must also be stored.
Law enforcement agencies: Collect data on criminal complaints,
national crime records, and public records.
Vestas Wind Energy: Collects data from 43,000 turbines in 66 countries;
collects location-based data to help determine the best location for
turbines; currently stores 2.8 petabytes of data and includes
approximately 178 parameters, such as barometric pressure, humidity,
wind direction, temperature, wind velocity, and other company
historical data; plans to add global deforestation metrics, satellite
images, geospatial data, and data on phases of the moon and tides.
Hertz: Gathers data from Web surveys, emails, text messages, Web site
traffic patterns, and data generated at all of Hertz’s 8300 locations in
146 countries.
New text-mining software described in the case can
shorten data analysis to hours or minutes and produce
better results. Businesses can react faster to solve problems,
satisfy customers, and change work processes. Managers
can detect emerging issues and pinpoint troubled areas of
the business at many different managerial levels. Managers
can discover patterns and relationships in the data and
summarize the information more quickly and more easily
The British Library and Vestas use Hadoop so it can process
large amounts of data quickly and efficiently. Hertz uses
sentiment analysis to determine customer satisfaction. Law
enforcement agencies use Web mining techniques to help
determine potential criminal acts. They also use analytics to
predict future crime patterns.
2. List and describe the business intelligence
technologies described in this case.
The British Library is able to
maintain historical records of
events and provide users
with more information about
its past. It can now process
information requests more
quickly and easily. The
technology it uses provides
an insight engine that helps
extract, annotate, ad
visually analyze vast
amounts of unstructured
Web data, delivering the
results via a Web browser.
Criminals and criminal
organizations are
increasingly using the
Internet to coordinate and
perpetrate their crimes. New
tools allow agencies to
analyze data from a wide
array of sources and apply
analytics to predict future
crime patterns.
Vestas is able to collect more
data that can reduce the
resolution of its grid patterns
from 17 x 17 miles to 32 x 32
feet to establish exact wind
flow patterns at particular
locations. That further
increases the accuracy of its
turbine placement models.
Hertz stores all of its data
centrally instead of within
each branch, reducing time
spent processing data and
improving company
response time to customer
feedback and changes in
sentiment.
Vestas used its big data to help find the best places to
install its wind turbines. It is able to manage and
analyze location and weather data with models that
are much more powerful and precise. The new
technology enables the company to forecast optimal
turbine placement in 15 minutes instead of three
weeks, saving a month of development time for a
turbine site and enabling customers to achieve a return
on investment much more quickly.
Hertz used it data analysis generated from different
sources to determine the cause of delays at its
Philadelphia locations and adjusted staffing levels
during peak times and ensuring a manager was
present to resolve any issues.
Law enforcement agencies use their data analysis to
predict future crime patterns and become more
proactive in its efforts to fight crime and stop it before it
occurs.
5. What kinds
of
organizations
are most likely
to need “big
data”
management
and
analytical
tools? Why?
Organizations that have an
active presence on the Web
or on social media sites need
to use big data management
and analytical tools to process
the numerous unstructured
data that can help them
make better, more timely
decisions. Businesses that
generate big data from
manufacturing, retailing, and
customer service need the
tools that the technology can
provide.
ThankYou
Data Information Knowledge

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Big Data Case Study Reveals Business Rewards

  • 1. Big Data, Big Rewards Prepared by: Ismail Bin Mahedin (P13D122P) Samat Haron Bin Joll (P13D123P) Hjh Sulzarina Bt Hj. Mohamed (P13D119P) Dayang Suhana Bt Awang Bujang (P13D152P - CASE STUDY
  • 2. What is Big Data? Big data is being generated by everything around us at all times. Every digital process and social media exchange produces it. Systems, sensors and mobile devices transmit it. Big data is arriving from multiple sources at an alarming velocity, volume and variety. To extract meaningful value from big data, you need optimal processing power, analytics capabilities and
  • 3.
  • 5. 1.Describe the kinds of “big data” collected by the organizations described in this case.
  • 6. British Library: It collects data from typical library resources like books, periodicals, and newspapers. In addition, it must store and collect data from Web sites that no longer exist but must be preserved for historical purposes. Data from over 6 billion searches must also be stored. Law enforcement agencies: Collect data on criminal complaints, national crime records, and public records. Vestas Wind Energy: Collects data from 43,000 turbines in 66 countries; collects location-based data to help determine the best location for turbines; currently stores 2.8 petabytes of data and includes approximately 178 parameters, such as barometric pressure, humidity, wind direction, temperature, wind velocity, and other company historical data; plans to add global deforestation metrics, satellite images, geospatial data, and data on phases of the moon and tides. Hertz: Gathers data from Web surveys, emails, text messages, Web site traffic patterns, and data generated at all of Hertz’s 8300 locations in 146 countries.
  • 7. New text-mining software described in the case can shorten data analysis to hours or minutes and produce better results. Businesses can react faster to solve problems, satisfy customers, and change work processes. Managers can detect emerging issues and pinpoint troubled areas of the business at many different managerial levels. Managers can discover patterns and relationships in the data and summarize the information more quickly and more easily The British Library and Vestas use Hadoop so it can process large amounts of data quickly and efficiently. Hertz uses sentiment analysis to determine customer satisfaction. Law enforcement agencies use Web mining techniques to help determine potential criminal acts. They also use analytics to predict future crime patterns. 2. List and describe the business intelligence technologies described in this case.
  • 8.
  • 9. The British Library is able to maintain historical records of events and provide users with more information about its past. It can now process information requests more quickly and easily. The technology it uses provides an insight engine that helps extract, annotate, ad visually analyze vast amounts of unstructured Web data, delivering the results via a Web browser. Criminals and criminal organizations are increasingly using the Internet to coordinate and perpetrate their crimes. New tools allow agencies to analyze data from a wide array of sources and apply analytics to predict future crime patterns. Vestas is able to collect more data that can reduce the resolution of its grid patterns from 17 x 17 miles to 32 x 32 feet to establish exact wind flow patterns at particular locations. That further increases the accuracy of its turbine placement models. Hertz stores all of its data centrally instead of within each branch, reducing time spent processing data and improving company response time to customer feedback and changes in sentiment.
  • 10.
  • 11. Vestas used its big data to help find the best places to install its wind turbines. It is able to manage and analyze location and weather data with models that are much more powerful and precise. The new technology enables the company to forecast optimal turbine placement in 15 minutes instead of three weeks, saving a month of development time for a turbine site and enabling customers to achieve a return on investment much more quickly. Hertz used it data analysis generated from different sources to determine the cause of delays at its Philadelphia locations and adjusted staffing levels during peak times and ensuring a manager was present to resolve any issues. Law enforcement agencies use their data analysis to predict future crime patterns and become more proactive in its efforts to fight crime and stop it before it occurs.
  • 12. 5. What kinds of organizations are most likely to need “big data” management and analytical tools? Why? Organizations that have an active presence on the Web or on social media sites need to use big data management and analytical tools to process the numerous unstructured data that can help them make better, more timely decisions. Businesses that generate big data from manufacturing, retailing, and customer service need the tools that the technology can provide.
  • 13.