The document discusses six analytics trends that are likely to influence business in coming years:
1. Analytics is expanding across enterprises as organizations move towards becoming insight-driven.
2. Cognitive technologies and machines are evolving to work alongside humans in complementing roles.
3. Cybersecurity is becoming more predictive and proactive to anticipate threats.
4. The Internet of Things is enabling new innovations through aggregating and analyzing sensor data.
5. Companies are taking creative steps to address the shortage of analytics talent.
6. Analytics success requires a mix of both new and familiar topics as analytics becomes embedded in decision making.
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- Global breakdown of B2B social presence
- Sector by sector analysis of the B2B market
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- Unique applications of social media intelligence for B2B businesses
The wearable trend is here and its impact will be broad and significant. From fitness, to wellness and beyond, wearable technology will be a major part of the internet of things movement.
COVID 19 has been a caution light worldwide. We must realise that this calamity or crisis happen and is inevitable. It has provoked previously inconceivable uses of technology in all walks of life. Among the socio economic disturbance caused by covid 19, technology will play a vital role in rebuilding the future. This technology transformation or reshaping will result in a contact less society. The current collaboration tools provide for substandard interactions. This review article is an attempt to check out the importance of technology post COVID 19 so that another pandemic would see mankind facing it with modern technologies. Aleena Sabrin | Ajmal Ali | Sarath Krishnan T | Dr. Noha Laj "Technology Post COVID19 - A Review" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-4 | Issue-6 , October 2020, URL: https://www.ijtsrd.com/papers/ijtsrd33648.pdf Paper Url: https://www.ijtsrd.com/engineering/civil-engineering/33648/technology-post-covid19--a-review/aleena-sabrin
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Accenture in collaboration with Microsoft conducted for the first time in Greece a study on Artificial Intelligence under the theme "Greece: With an AI to the Future". This study surfaces Greek public’s perception, hopes and fears on AI. It reveals the AI awareness and readiness of Greek organizations and estimates the projected economic growth that AI can infuse to the Greek economy over the next 15 years. Read also https://accntu.re/2DMA5GC
The following B2B report examines how over 200 American and British B2B organizations perform on social, and provides guidance on how such enterprises can truly take advantage of social data.
Discover:
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- Global breakdown of B2B social presence
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- Unique applications of social media intelligence for B2B businesses
The wearable trend is here and its impact will be broad and significant. From fitness, to wellness and beyond, wearable technology will be a major part of the internet of things movement.
COVID 19 has been a caution light worldwide. We must realise that this calamity or crisis happen and is inevitable. It has provoked previously inconceivable uses of technology in all walks of life. Among the socio economic disturbance caused by covid 19, technology will play a vital role in rebuilding the future. This technology transformation or reshaping will result in a contact less society. The current collaboration tools provide for substandard interactions. This review article is an attempt to check out the importance of technology post COVID 19 so that another pandemic would see mankind facing it with modern technologies. Aleena Sabrin | Ajmal Ali | Sarath Krishnan T | Dr. Noha Laj "Technology Post COVID19 - A Review" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-4 | Issue-6 , October 2020, URL: https://www.ijtsrd.com/papers/ijtsrd33648.pdf Paper Url: https://www.ijtsrd.com/engineering/civil-engineering/33648/technology-post-covid19--a-review/aleena-sabrin
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growth as compared to their competitors—a widening divide that Accenture calls the “Digital Achievement Gap.” upload by Shamayun Miah Management Consultant Accenture
Accenture's Technology Vision 2021 details emerging technology trends that will help companies get back on track & build their future post COVID-19. Read more.
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A recent study revealed that digital leaders (the top 10 percent of
companies leading technology innovation) achieve 2–3x revenue
growth as compared to their competitors—a widening divide that Accenture calls the “Digital Achievement Gap.” upload by Shamayun Miah Management Consultant Accenture
Accenture's Technology Vision 2021 details emerging technology trends that will help companies get back on track & build their future post COVID-19. Read more.
We focus on finding new ways to apply technology and invention to create a positive and lasting impact for people and communities. Our 2017 Corporate Citizenship Report explores our goals, progress and performance across our global operations during our most recent fiscal year. Learn more: https://accntu.re/2GBVqoZ
Accenture's Technology Vision 2021 details emerging technology trends that will help companies get back on track & build their future post COVID-19. Read more.
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Accenture’s 2021 Technology Vision for SAP Solutions explores five technology trends that enable SAP customers to chart a path to future growth. https://accntu.re/3vIvYoQ
ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING Goodbuzz Inc.
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Running title TRENDS IN COMPUTER INFORMATION SYSTEMS1TRENDS I.docxanhlodge
Running title: TRENDS IN COMPUTER INFORMATION SYSTEMS 1
TRENDS IN COMPUTER INFORMATION SYSTEMS 4
Trends in Computer Information Systems, and the Rise to Business Intelligence
Shad Martin
School for Professional Studies
St. Louis University
ENG 2005 Dr. Rebecca Wood
November 23, 2016
Introduction
Our quest to increase our knowledge of Computer Information Systems has produced a number of benefits to humanity. The innovation humans have discovered in Computer Information Systems has led to new sub-areas of study for students and professionals to continue their progression to master all that Computer Information Systems has to offer. Amy Web of the Harvard Business Review reported 8 Tech Trends to Watch in 2016, She noted, “In order to chart the best way forward, you must understand emerging trends: what they are, what they aren’t, and how they operate. Such trends are more than shiny objects; they’re manifestations of sustained changes within an industry sector, society, or human behavior. Trends are a way of seeing and interpreting our current reality, providing a useful framework to organize our thinking, especially when we’re hunting for the unknown. Fads pass. Trends help us forecast the future” (Harvard Business Review, 2015). In short, Amy’s reference to understanding the emerging trends in Computer Information can provide a framework from which, students, professionals, and scientists to conscientiously create a path towards optimizing their efforts. Ensuring we have a fundamental approach to analyze data will enhance our understanding of this subject further.
In this paper I will expound on three of the top trends used to provide insight into the data produced from the advancements in Computer Information Systems. These trends or methods are taking place in my workplace within a financial institution, and in many other industries. It is important to note this paper does not provide an inclusive list of all methodologies that exist. Individuals can now leverage analytics to synthesize insights from data to identify emerging risk, manage operational risks, identify trends, improve compliance, and customer satisfaction. Data in and by itself is not always useful. Regardless of the data source, trained professional must understand the best approach to structure the data to make it more useful. In this paper, I will touch on three popular methodology trends occurring in Computer Information Systems. Students and professionals who work with large data would benefit from having a solid understanding of the fundamental principles of Business Intelligence as data scientific approach and when to use these methodologies.
The rise of Business Intelligence
Computer Information Systems allow many companies to gather and generate large amounts of data on their customers, business activities, potential merger targets, and risks found in their organization. These large sets of data have given rise to vari.
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2. Analytics Trends 2016 | The next evolution | 2
As we enter our third year of identifying the analytics
trends that are likely to influence the trajectory of the
business world in coming years, it’s clear that some trends
aren’t going away. Instead, they are evolving at a rapid
pace. In the world of science, such rapid evolution
demands closer analysis—and the same is true with
these analytics trends. They deserve a fresh look.
Meanwhile, others have a short half-life. They enter the conversation quickly
and converge just as fast, and soon they are assimilated. By that time, they’re not
trends—they’re reality. Take the topic of big data, for example. A few years ago, it
was treated as an up-and-coming trend. Now it’s just the air we breathe in analytics,
influencing business strategy and commanding substantial investment every day.
Perhaps that’s why Google Trends search analysis shows that the term, which
had strong growth beginning in late 2010, is experiencing decline.
This year, we’re taking stock of a mix of both new and familiar topics that
are shaping an “everywhere analytics” world—where analytics, science, data,
and reasoning are embedded into the decision-making process, every day,
everywhere in the organization.
Six significant trends are in play.
www.deloitte.com/us/AnalyticsTrends #AnalyticsTrends2016
3. Impact
Impact on society
High
Industries most impacted
Health Care, Online, Professional
Services, and Retail
Impact on business
High
Expected peak
5 years
Business domains that will lead the charge
HR, IT, and Marketing
Analytics Trends 2016 | The next evolution | 3
Are machines coming for us?
The newsstand rhetoric posits that smart machines
will soon take over our jobs. Fear not—there’s still
a place for us. Humans have always added value to
machines as processes become automated, and
this is likely to continue.
Still, the cognitive age is clearly upon us, as
indicated by more than $1 billion in venture capital
funding for cognitive technologies in 2014 and 2015.
Analysts project that overall market revenue for cognitive
solutions will exceed $60 billion by 2025.1
As cognitive
technology evolves, it is likely to become just another tool
in the toolbox—very useful for the right application but
not replacing traditional analytics capabilities that also
complement the human thought process. The
man-machine dichotomy is not “either-or.”
It is unequivocally “both-and.”
Complementing one another
There are likely to be a variety of ways in which smart
people and smart machines will work alongside each
other. Some humans will have to build and implement
cognitive technologies, of course. Others will ensure that
those technologies fit into a work process and monitor
their performance. And some humans will complement
computers in roles machines can’t perform well, such as
those involving high levels of creativity, caring, or empathy.
Paving the way to a collaborative future
Of course, these combinations of technology and people
won’t happen seamlessly or automatically. Organizations
will need to examine knowledge-intensive processes and
determine which tasks can best be performed by machines
and which by humans. Some degree of retraining may be
necessary. And—let’s face it—there may be some job loss
as well. Smart companies will think about these issues
early in the game and help employees prepare for a
collaborative future with smart machines.
Case Study: LifeLearn Sofie
In North America, most veterinarians are general practitioners, and while specialists may be available by referral,
veterinarians are often required to have expertise across many disciplines, species, and breeds. That’s where
cognitive computing comes in.
LifeLearn, a Canadian veterinary technology company, is developing a cognitive computing system called Sofie (running
on IBM Watson) that would give veterinarians access to extensive, up-to-date knowledge on animal diseases, their specific
treatments, and develop individualized patient care plans. Sofie will allow veterinarians to pose freeform questions about
animal diseases, their specific treatment, and insights to inform individual patient care plans. All of which are updated
frequently with the latest scientific literature. In addition, Sofie will help veterinarians create personalized patient care plans
based on a pet’s own hereditary susceptibilities, lifestyle characteristics, and geography-specific risk factors.
Like many cognitive computing systems, Sofie extends the reach of humans—it doesn’t replace them.
1 Source: International Data Corporation
The man-machine dichotomy blurs
4. Impact
Impact on society
Medium
Industries most impacted
Financial Services, Retail, and
Telecommunications
Impact on business
High
Expected peak
3 years
Business domains that will lead the charge
IT, Marketing, and Production
Analytics Trends 2016 | The next evolution | 4
So soon?
As little as a year ago, you would be hard-pressed
to find an organization that was making enterprise-
level analytics investments. Instead, most were just
working to implement or improve targeted analytics
capabilities in a few key areas—which seemed to be
enough of a challenge.
How quickly things change
Today, building on analytics successes in discrete
disciplines, leaders are beginning to take serious steps
toward connecting these successes to create something
bigger—something we call the insight-driven organization
(IDO). The IDO goes beyond the selective use of insights
to fuel decision-making in individual parts of the business.
It deploys a tightly knitted combination of strategy, people,
processes, and data—in addition to technology—
to deliver insights at the point of action every day,
everywhere in the organization.
Laying the groundwork
What does this look like in practice? Some leaders
are beginning to talk about “analytics transformation” or
“industrialized analytics.” Short of that, many are already
making decisions predicated on an IDO future—weighing
the decision to build more data warehouses versus
building on a big data infrastructure, for example. In both
scenarios, what has changed is the scope of expectations.
Notching small analytics victories in targeted parts of the
business may not be enough for much longer. For leaders
with their eyes on the prize, it’s all about connecting
analytics capabilities across the enterprise.
Analytics expands across the enterprise
Case Study: UPMC Health Plan
UPMC is a Pittsburgh-based health plan organization that, like many, uses analytics insights throughout its care
provision and payment processes. But the depth of its deployment of analytics across the organization is extraordinary.
For example, UPMC has created a “learning engine” to institutionalize the generation and application of analytical
insights. The engine consists of an analytical platform that augments traditional modeling tools with machine learning
capabilities and has a “groomed data layer” designed to offer a single point of truth throughout the organization.
The result? Big insights—throughout the organization. For example, UPMC has identified which customers are
more likely to engage successfully with disease management offerings. It predicts and manages readmission risk for
patients at the point of discharge. And it has also been able to identify children at increased risk of lead poisoning
who haven’t yet been screened.
All of this is powered by a deep, coordinated team of analytics talent—nearly 100 analysts and data scientists led by
a chief analytics officer and deployed in a hub-and-spoke model that uses both centralized and embedded analysts.
5. Impact
Impact on society
High
Industries most impacted
Federal and State Government,
Financial Services, and Retail
Impact on business
High
Expected peak
3 years
Business domains that will lead the charge
IT and Security
Analytics Trends 2016 | The next evolution | 5
The plot thickens
Last year’s supertrend, still front and center, continues
to grow in importance as more and more organizations
experience the losses in value and reputation that can
result from a security gap. And we’re not just talking
about protecting data. Product design and other IP are
also vulnerable to theft and sabotage. The problem is
likely to grow as cybercriminals become more skilled in
infiltrating technology architectures and systems that
weren’t designed from the ground up through a security
lens. Ironically, concerns about cybersecurity could—and
perhaps in some cases should—slow the adoption of other
trends that drive innovation.
Organizations with a sophisticated approach to
cybersecurity are no longer satisfied with locking the doors
after the robbery has been committed. International Data
Corporation (IDC) estimates that US federal government
agencies alone would spend more than $14.5 billion on IT
security in 2015. And the worldwide financial services
industry would spend $27.4 billion on information security
and fraud prevention.2
Going on the offensive
Organizations such as these are beginning to employ
more predictive approaches to threat intelligence and
monitoring—in short, going on the offensive. This may
mean automated scanning of Internet “chatter” by far-
flung groups and individuals who may intend cyberharm.
It may involve analyzing past hacks and breaches to
create predictive models of which threats are likely to
surface next. In many firms, it also means systematic and
continuous probing of the organization’s own defenses to
make sure that others don’t find a security hole first.
A moving target creates new demands
Companies adopting these types of offensive steps will no
doubt find that they need new capabilities. Many cyber
professionals don’t have the skills to do predictive threat
intelligence or predictive analysis of past breaches. At the
very least, extensive collaboration between analytics and
cyber professionals may be required. And cybersecurity
projects will need to rapidly move up the priority list for
analytics groups.
Cybersecurity: A good defense isn’t enough
Case Study: Financial Data and Technology Firm
For a leading data and technology firm that supports the financial services industry, cybersecurity is of
paramount importance.
“We’re really moving toward anticipating and predicting threats,” says the firm’s head of cybersecurity. “We’re
also trying to understand the threat landscape in different parts of the world—which is where external data
and analytics come in.” Today, this company is using rule-based technologies to identify and pursue anomalies
within its key systems. It’s also using advanced math to preprogram potential threats.
Externally, this group is analyzing huge swaths of human behavior data, in channels such as social media and
IRC, to understand the most likely sources of threats and to know when employees may be traveling in global
hot spots of threatening activity. These models are not currently fully automated but instead are “incredibly
helpful in focusing our human analysts,” says this cybersecurity leader.
2 Source: International Data Corporation, “Big Data and Predictive Analytics: On the Cybersecurity Front Line,” February 2015.
6. Impact
Impact on society
High
Industries most impacted
Consumer Products, Insurance, Oil and
Gas, and State and Local Government
Impact on business
High
Expected peak
5 years
Business domains that will lead the charge
Customer Service, IT, and
Product Development
Analytics Trends 2016 | The next evolution | 6
A new source of innovation
Innovation has always been a key force in transforming
business and society. Increasingly, innovation is occurring as
the result of aggregating and analyzing data to create new
products and services. The Internet of Things (IoT) is rapidly
evolving from the realm of interesting gadgets to include
tracking people as “things” to form new business models—
think Uber—and influence people’s behaviors.
Real investment
This innovation is taking place in both consumer-focused
and business-to-business (B2B) industries. International Data
Corporation (IDC) estimates that the worldwide IoT market
will grow from $655.8 billion in 2014 to $1.7 trillion in 2020.
Devices, connectivity, and IT services will likely make up
two-thirds of the IoT market in 2020, with devices (modules/
sensors) alone representing more than 30 percent of the total.3
Building on existing infrastructure
Many businesses are finding that much of the infrastructure
they need for IoT applications is already in place. Auto
insurance firms, for example, are now using customer
smartphone data to power “pay as you drive” applications.
Some health insurance firms are monitoring—and giving
discounts for—customer fitness activities as revealed by
wearable tracking devices. In B2B industries like shipping, long-
distance trucks and locomotives equipped with GPS and other
sensor devices enable companies to offer services to optimize
routes, analyze driving, and make recommendations on the
cheapest places to fuel up.
IoT-based innovations are also likely to benefit the broader
society. Transportation will likely become more energy- and
time-efficient. Partnerships between cities and businesses
could lead to more transparent and economical government
services. Garbage trucks, for example, could be equipped with
devices that recognize potholes in streets and alert cities about
them. Parking apps could reduce the time and energy that
drivers waste while looking for open spaces.
It’s difficult to think of an industry that can’t be transformed
or improved by the IoT. While considerable effort remains to
develop IoT standards and link up sensor-based data, there
are already many possible applications that can provide value
today—including helping people improve fitness, enhance
efficiency, and save money.
The Internet of Things—and people, too
Case Study: City of Boston
Some of the earliest adopters of the IoT have been municipal governments. Boston, with a number of high-profile university
labs and tech startups, has been one of the most aggressive adopters. In traffic and parking applications, the city has partnered
with ride-sharing startups to monitor real-time data on traffic backups while also supplying information on road closures and
parade routes to these companies’ online maps. Meanwhile, citizens can find empty parking spots using their smartphones—
then use the phones to pay for parking. They are also using apps to rate and report on street conditions.
Boston was also one of the first cities to adopt BigBelly trash cans, which continuously report on how full they are so that they
can be emptied more efficiently. Elsewhere, “smart benches” can be used for charging smartphones and reporting on noise
and pollution levels.
While the application of the IoT to city administration has really only just begun, Boston, along with cities such as Singapore,
Amsterdam, Toronto, and others, is part of the vanguard of addressing how smart, connected devices can transform urban living.
3 Sources: International Data Corporation, “IDC’s Worldwide Internet of Things Taxonomy, 2015,”
“Worldwide Internet of Things Forecast, 2015-2020,” “Worldwide IoT Spending Guide by Vertical”
7. Impact
Impact on society
Medium
Industries most impacted
Consumer Products, Federal and
State Government, and Health Care
Impact on business
High
Expected peak
1 year
Business domains that will lead the charge
HR and IT
Analytics Trends 2016 | The next evolution | 7
Companies bridge the talent gap
Case study: Cisco Systems
Having decided that analytics and data science skills are key competencies for its organization, Cisco Systems has
created an aggressive program for cultivating data scientists and data-savvy managers. The company has launched
a five-month training program in partnership with two universities to teach employees from all functions the
fundamentals of data science. To date, more than 200 employees have been trained. And for those who acquire
the necessary skills, Cisco has created a well-defined career path in data science, with several roles that offer
increased responsibilities and compensation over time.
Cisco’s Data Science office has also maintained a laser focus on improving awareness and understanding among
managers on data and analytics issues—including a two-day program for executives. The company has created
a number of physical Data Labs that serve as platforms for helping different parts of the company act on the
opportunities identified through analytics.
A deepening shortage
By now it’s obvious that universities and colleges can’t crank
out data scientists fast enough to keep up with business
demands. And they certainly can’t produce experienced
analysts from a two- or four-year program. Forty percent of
respondents to a 2015 MIT Sloan Management Review survey
say they have difficulty hiring analytical talent. Only 17 percent
of “analytically challenged” firms say they have the talent they
need. Among companies reported to be "analytics innovators,"
74 percent said they had the analytics talent needed.
Getting creative
International Data Corporation (IDC) predicts a need for
181,000 people with deep analytical skills in the US by 2018
and a requirement for five times that number of positions
with data management and interpretation capabilities.1
To complicate matters, there is no clear set of capabilities
that define a “data scientist,” because different problems
require different skill sets. Some organizations are taking a
multipronged approach by supplementing campus recruiting
with alternatives—from turning to managed analytics to
cultivating in-house talent.
With a rising number of analytics and data science
programs at universities—more than 100 in the
US alone—recruitment efforts in analytics are red hot today.
Organizations recruiting at these campuses will likely find
more success if they work closely with the programs on
internships and student projects. Once recruited, these
graduates are more likely to stay and do productive work if
they have meaningful career paths and have the ability to
work with others with similar skills and backgrounds.
Tapping the talent ecosystem
Of course, analytics talent doesn’t have to be directly
employed by the organization. Some companies
are consciously developing ecosystems of external providers.
One, for example, has selected multiple services partners in
the areas of business intelligence, predictive analytics, data
science, and cognitive technology. The company continually
monitors the efforts of these partners to recruit and
develop qualified people and to keep up with new
technologies and methods.
These are by no means extreme steps. Smart companies
are realizing that analytical talent is critical to their success
and in short supply. They know they must get serious about
preparing or partnering with this strategic workforce if they
hope to successfully execute their strategies.
1 Source: International Data Corporation
8. Impact
Impact on society
High
Industries most impacted
Consumer, Financial Services, Health Care,
Retail, Telecommunications, and Travel
Impact on business
High
Business domains that will lead the charge
Customer Service, Finance,
Marketing, and Supply Chain
Expected peak
5 years
Analytics Trends 2016 | The next evolution | 8
Scientists were into analytics before it was cool
Any conversation about the new world of business analytics
should come with a caveat: It’s not really new. Businesses
have been engaging in analytics for years—decades, even.
It may be more accurate to say that analytics is experiencing
a major renaissance, ushered in by big advances and
investments in technological and data capabilities. As a
result, business analytics has reached a next level of maturity.
Business isn’t the only field notable for major advances
in analytics through the years. If anything, there may be
a stronger case for the sciences leading the vanguard of
analytics. Universities, research labs, and other science-
focused organizations have been applying and refining
analytics approaches to solve some incredibly complex
problems through the years, in everything from molecular
biology and astrophysics to the social sciences and beyond.
In many cases, they don’t even use the word “analytics.”
For them, it’s all science.
Cross-pollination between science and business
This environment—marked by a reinvigorated interest in
business analytics combined with separate-but-related
advances in analytics in the sciences—is one that is ripe
for cross-pollination. Already we are beginning to see
techniques borrowed from the world of science and applied
to business challenges. In one example, an organization
leveraged tools used by DNA researchers as the keys to
unlocking insights buried in tens of thousands of emails.
These developments are in their nascent stages now, but
there are plenty of signs of a coming explosion in shared
analytics tools, techniques, and processes between the
sciences and the business world.
It’s already happening
Looking for evidence? Some signs of the inevitable merging
of science and business capabilities have already been widely
observed. In one high-profile example, a prominent private
company lured dozens of scientists from a major research
university—a coup for the company and a tough loss for the
university. Look for more ripple effects—good and bad—as
the worlds of business and science continue intermingling.
From major airlines and insurers to oil and gas and beyond,
the business community is actively hunting for science-based
approaches that can give them the edge.
Business borrows from the sciences
Case study: Financial Services
Imagine being on the receiving end of half a million consumer messages a year—and any single one of them could contain
information that causes serious trouble for your organization if not handled quickly. If the wrong message falls through
the cracks, you could be exposed to a ton of risk immediately. Now imagine that you have only a few hundred employees
responsible for making sense of all those messages.
That was the problem facing a financial services organization—and the reason it turned to text analytics. With text analytics,
it’s possible to parse individual messages for key phrases and terms that would allow them to be automatically directed to the
right handler. But when this organization needed to take its text analytics capabilities to the next level, it turned to the world of
science—specifically bioinformatics, in which scientists are working to match sequences of DNA. After all, DNA is represented
by a series of letters that occur in non-random patterns, not unlike the words and phrases in emails and feedback forms.
Using algorithms originally developed to compare DNA sequences, this organization cracked the code on thousands of
messages received every day. This approach was deployed in the organization’s workflow to tag, route, and prioritize
messages, allowing the company to get its customer interactions back under control.