Big Data Analytics What it is and why it matters
History and evolution of big data analytics
The concept of big data has been around for years; most
organizations now understand that if they capture all the data that streams
into their businesses, they can apply analytics and get significant value from
it. But even in the 1950s, decades before anyone uttered the term “big data,”
businesses were using basic analytics (essentially numbers in a spreadsheet
that were manually examined) to uncover insights and trends.
The new benefits that big data analytics brings to the
table, however, are speed and efficiency. Whereas a few years ago a business
would have gathered information, run analytics and unearthed information that
could be used for future decisions, today that business can identify insights
for immediate decisions. The ability to work faster – and stay agile – gives
organizations a competitive edge they didn’t have before.
The Importance of Big Data Analytics Graphic
Why is big data analytics important?
Big data analytics helps organizations harness their data
and use it to identify new opportunities. That, in turn, leads to smarter
business moves, more efficient operations, higher profits and happier
customers. In his report Big Data in Big Companies, IIA Director of Research
Tom Davenport interviewed more than 50 businesses to understand how they used
big data. He found they got value in the following ways:
Cost reduction. Big data technologies such as Hadoop and
cloud-based analytics bring significant cost advantages when it comes to
storing large amounts of data – plus they can identify more efficient ways of
doing business.
Faster, better decision making. With the speed of Hadoop and
in-memory analytics, combined with the ability to analyze new sources of data,
businesses are able to analyze information immediately – and make decisions
based on what they’ve learned.
New products and services. With the ability to gauge customer
needs and satisfaction through analytics comes the power to give customers what
they want. Davenport points out that with big data analytics, more companies
are creating new products to meet customers’ needs.
Read the white paper
Big data analytics in today’s world
Most organizations have big data. And many understand the
need to harness that data and extract value from it. But how? These resources
cover the latest thinking on the intersection of big data and analytics.
Statistics and Machine Learning at Scale
The concept of machine learning has been around for decades
and now it can now be applied to huge quantities of data.
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Bringing the power of SAS® to Hadoop
Want to get even more value from Hadoop? This paper presents
the SAS portfolio of solutions that help you apply business analytics to
Hadoop.
Read white paper
Health care and big data analytics
A big data boom is on the horizon, so it’s more important
than ever to take control of your health information. This webinar explains how
big data analytics plays a role.
Watch the webinar
The hard work behind analytics
To understand the opportunities of business analytics, MIT
Sloan Management Review conducted its sixth annual survey of executives,
managers and analytics professionals.
Read review
Who’s using it?
Think of a business that relies on quick, agile decisions to
stay competitive, and most likely big data analytics is involved in making that
business tick. Here’s how different types of organizations might use the
technology:
Life Sciences
Clinical research is a slow and expensive process, with
trials failing for a variety of reasons. Advanced analytics, artificial
intelligence (AI) and the Internet of Medical Things (IoMT) unlocks the
potential of improving speed and efficiency at every stage of clinical research
by delivering more intelligent, automated solutions.
Big Data Analytics for Life Sciences
Banking
Financial institutions gather and access analytical insight
from large volumes of unstructured data in order to make sound financial
decisions. Big data analytics allows them to access the information they need
when they need it, by eliminating overlapping, redundant tools and systems.
Big Data Analytics for Banking
Manufacturing
For manufacturers, solving problems is nothing new. They
wrestle with difficult problems on a daily basis - from complex supply chains,
to motion applications, to labor constraints and equipment breakdowns. That's
why big data analytics is essential in the manufacturing industry, as it has
allowed competitive organizations to discover new cost saving opportunities and
revenue opportunities.
Big Data Analytics for Manufacturing
Health Care
Big data is a given in the health care industry. Patient
records, health plans, insurance information and other types of information can
be difficult to manage – but are full of key insights once analytics are
applied. That’s why big data analytics technology is so important to heath
care. By analyzing large amounts of information – both structured and
unstructured – quickly, health care providers can provide lifesaving diagnoses
or treatment options almost immediately.
Big Data Analytics for Health Care
Government
Certain government agencies face a big challenge: tighten
the budget without compromising quality or productivity. This is particularly
troublesome with law enforcement agencies, which are struggling to keep crime
rates down with relatively scarce resources. And that’s why many agencies use
big data analytics; the technology streamlines operations while giving the
agency a more holistic view of criminal activity.
Big Data Analytics for Government
Retail
Customer service has evolved in the past several years, as
savvier shoppers expect retailers to understand exactly what they need, when
they need it. Big data analytics technology helps retailers meet those demands.
Armed with endless amounts of data from customer loyalty programs, buying
habits and other sources, retailers not only have an in-depth understanding of
their customers, they can also predict trends, recommend new products – and
boost profitability.
Big Data Analytics for Retail
Learn More About Industries Using This Technology
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The main goal of a formal organizational strategy for data
and analytics is typically to improve decision making with analytics in a wide
realm of activities. [And] our survey results and interviews offer strong
evidence that successful analytics strategies dramatically shift how decisions
are made in the organization.
From the white paper Beyond the Hype: The Hard Work Behind
Analytics Success
Advanced analytics helps Rogers Communications become more
customer-centric
Rogers Communications is striving to enhance customer
satisfaction and preserve its leadership in Canada’s media and
telecommunications sector.
Learn how advanced analytics helped Rogers Communication cut
down customer complaints in half by delivering customers the right service at
the right time.
Get the full story
How it works and key technologies
There’s no single technology that encompasses big data
analytics. Of course, there’s advanced analytics that can be applied to big
data, but in reality several types of technology work together to help you get
the most value from your information. Here are the biggest players:
Machine Learning. Machine learning, a specific subset of AI
that trains a machine how to learn, makes it possible to quickly and
automatically produce models that can analyze bigger, more complex data and
deliver faster, more accurate results – even on a very large scale. And by
building precise models, an organization has a better chance of identifying
profitable opportunities – or avoiding unknown risks.
Data management. Data needs to be high quality and
well-governed before it can be reliably analyzed. With data constantly flowing
in and out of an organization, it's important to establish repeatable processes
to build and maintain standards for data quality. Once data is reliable,
organizations should establish a master data management program that gets the
entire enterprise on the same page.
Data mining. Data mining technology helps you examine large
amounts of data to discover patterns in the data – and this information can be
used for further analysis to help answer complex business questions. With data
mining software, you can sift through all the chaotic and repetitive noise in
data, pinpoint what's relevant, use that information to assess likely outcomes,
and then accelerate the pace of making informed decisions.
Hadoop. This open source software framework can store large
amounts of data and run applications on clusters of commodity hardware. It has
become a key technology to doing business due to the constant increase of data
volumes and varieties, and its distributed computing model processes big data
fast. An additional benefit is that Hadoop's open source framework is free and
uses commodity hardware to store large quantities of data.
In-memory analytics. By analyzing data from system memory
(instead of from your hard disk drive), you can derive immediate insights from
your data and act on them quickly. This technology is able to remove data prep
and analytical processing latencies to test new scenarios and create models;
it's not only an easy way for organizations to stay agile and make better
business decisions, it also enables them to run iterative and interactive
analytics scenarios.
Predictive analytics. Predictive analytics technology uses
data, statistical algorithms and machine-learning techniques to identify the
likelihood of future outcomes based on historical data. It's all about
providing a best assessment on what will happen in the future, so organizations
can feel more confident that they're making the best possible business
decision. Some of the most common applications of predictive analytics include
fraud detection, risk, operations and marketing.
Text mining. With text mining technology, you can analyze
text data from the web, comment fields, books and other text-based sources to
uncover insights you hadn't noticed before. Text mining uses machine learning
or natural language processing technology to comb through documents – emails,
blogs, Twitter feeds, surveys, competitive intelligence and more – to help you
analyze large amounts of information and discover new topics and term
relationships.[Source]-https://www.sas.com/en_in/insights/analytics/big-data-analytics.html
Asterix
Solution’s big data course is designed to help applications scale up from single servers to
thousands of machines. With the rate at which memory cost decreased the
processing speed of data never increased and hence loading the large set of
data is still a big headache and here comes Hadoop as the solution for it.
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