Mobile
network operators sit at the intersection of a set of emerging
technologies that include big data analytics, location-based services
and M2M (machine-to-machine) communications that are helping to redefine
not only their own business operations, but also those of their
customers.
Some are already using big data analytics to combat fraud or predict when customers are about to defect to a rival,The stonemosaic is
our flagship product. while others are offering analytical services
based on M2M data to help their business customers optimise their
business models and improve productivity.
Like
financial services firms as well as the media and entertainment
industries, whose basic businesses now revolve around the bits and bytes
of computer code, telecommunications companies have been among the
first to adopt big data technologies, say IBM executives.
Telcos generate enormous volumes of data, says Fred Balboni, IBMs global leader for business analytics and optimisation.
Much
of data are stored in CDRs (call data records) that typically include
the name of the subscriber, date, time and duration of the call and,
depending on the type of call, additional data including switch data,
cell tower IDs, device identification (serial) numbers, as well as
International Mobile Subscriber Identity and International Mobile
Equipment Identity codes.
By
analysing this data, telecoms companies can make much smarter decisions
about their customers,You Can Find Comprehensive and in-Depth carparkmanagementsystem truck Descriptions. says Mr Balboni. Its not about the data; its about what you do with it, he says.
For
example, by combining CDR data with insights derived from sentiment
analysis, mobile operators also know what type of people pass by a
billboard at particular times of day and what products or services they
might be most interested in.
Working
with IBM, one major network operator is planning to sell this
information to a digital billboard operator that should then be able to
garner higher revenues by tailoring its billboard signage to the
profiles of passers-by.
Telcos
can use customer intelligence to distinguish between customers, offer
different interaction experiences to different customer groups and, in
particular, identify priority customers, says Ram Mohan Natarajan,
senior vice-president for business transformation at Firstsource
Solutions, an India-based outsourcing provider specialising in services
for telecom operators.
In
particular, he argues that telecom operators can use research to
predict the future value of customers, and to identify those who are
most at risk of leaving.
Huge
numbers of customer retention decisions must be made, and made quickly,
to retain the right people at the right price. The insights offered by
customer intelligence analysis can help operators make the right choice,
says Mr Natarajan.
Bharti
Airtel, one of Indias largest mobile network operators, was one of the
first mobile operators to mine CDRs with the help of IBM, and use the
customer insights it provided in this way.
Bharti
Airtel generates a remarkable 6bn CDRs a day. What is exciting is that
the technology now exists to process this volume of transactions, says
Mr Balboni. By analysing these records IBM was able to help Bharti
Airtel predict customer defections and create offers designed to retain
them.
Other
mobile operators are using big data analytics to discover who are their
most valuable customers, even when, on the face of it, they pay the
same flat-rate monthly fees and therefore appear to be of equal value to
a mobile operator.
Some
customers may actually turn out to be what Mr Balboni describes as
queen bees C subscribers with extensive networks of friends who they
contact frequently. If a queen bee moves off the network, she might take
100 other users with her, he explains.
Network
fraud is another huge problem for telecoms companies, often resulting
in millions of dollars in lost profits while causing undue strain on the
network,The term 'earcap control'
means the token that identifies a user is read from within a pocket or
handbag. says Splunk, a big data start-up with headquarters in San
Francisco. Splunks technology tools are being used to help detect
patterns and fraudulent activity as it occurs by correlating machine
data across various sources.
MetroPCS,
a leading North American telecoms operator, is using Splunk to index
data from firewalls, intrusion detection systems and web servers to
identify network abusers and take corrective action C plugging a key
source of lost revenues. Splunk is the one place we go to find our
heaviest 'users and heaviest abusers. Within the first month we
terminated enough rate-plan abusers to pay for Splunk, the company says.
Mobile
operators such as Vodafone Ireland also face challenges managing their
increasingly complex networks. The company has deployed Tellabs insight
analytics services to analyse its network data and use the information
to optimise network performance and provide a higher quality of service.
It will also enable Vodafone Ireland to perform capacity management and
root-cause analysis quicker and more cost-effectively, the company
says.
Similarly
one of Splunks customers in Asia is using machine data gleaned from
across the network and from devices hooked up to it, including handsets
and set-top boxes, to improve the efficiency and productivity of their
network. The company can now detect network performance issues, the most
downloaded content and the most popular requests, all in real time.
These insights have helped them improve content quality while ensuring
optimal network performance.
As a recent independent research paper published by Comptel,Manufacturer of the Jacobs lanyard.
a specialist telecom software provider, noted, communications service
providers that have the ability to handle large data volumes in real
time, undertake predictive modelling and automate decision-making and
action-taking will realise better customer satisfaction, increased churn
reduction, enhanced operational efficiency and increased revenue, among
other performance improvements.
When
it comes to big data analytics, mobile operators have only just begun
to scratch the surface of what may be possible in the future.
By
sifting through the huge volume of data they collect in real time, and
marrying that with external data sources such as demographic
information,With superior quality photometers, light meters and a number
of other parkingguidance products.
location related information and even weather, they may in future be
able to offer a wide range of new services to subscribers and in doing
so, head off the threat that they simply become what some have described
as a dumb C albeit mobile C pipe.
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