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BIG DATA ANALYTICS
THAT EXCEL
ADGS
presents
Text
Are you still relying on 1950’s math
theory to analyze, classify and
extract data?
Don’t worry you’re not alone, the
majority of industry does as well.
But, do you really want to follow the
inefficiency of the majority in this age
when volumes, variety and velocity of
information being produced is on a
trajectory and business value as well
as mission-critical processes that drive
revenue or mitigate risk are hidden in
that information?
44 TRILLION
GIGABYTES
OF DIGITAL
INFORMATION WILL
BE CREATED GLOBALLY
IN 2020
It is predicated that 44 Zetabytes, or 44 trillion
Gigbytes, of digital information will be created
globally in 2020, and 80% of the information
produced is unstructured. In addition to
structured database stored information there
is a huge variety in the types and nature of
information being created:
All of this information must be tapped into to
extract valuable information. To compound the
challenge, there is also the expectation that the
velocity at which this information is updated and
made available is close to real time.
Communications
(Emails, instant messages, blog posts, etc.)
Management Information
(Diary entries, workflows, etc.)
Information Products
(Leaflets, websites, web/podcasts,
newsfeeds, etc.)
Media Assets
(Photos, video, sound files, infographics, etc.)
Surveillance Information
(Log files, BI reports, monitoring data etc.)
THAT’S WHY
WE CREATED
TASMO
TASMO is an AI-based solution that captures
structured and unstructured data using any data
source from your company. It analyzes text and
understands the nature of the communication,
as well as which data elements are relevant to
the business process. Even with ever-increasing
variations of communications and documents,
TASMO can match a broad range of inputs with
the relevant process.
That understanding is generated through Natural
Language Processing (NLP), which is the heart of
TASMO.
Therefore, TASMO is able to find concepts and
correlations across dispersed data sources other
programs can’t.
Additionally, we built in a self-learning engine that
can analyze thousands of cases to understand the
ways to classify different types of communication,
learn new structures, and in certain instances pro-
vide predictive outcomes.
It involves identifying and
analyzing the structure
of words.
1
It draws the exact meaning
or the dictionary meaning
from the text.
3
The meaning of any sentence
depends upon the meaning
of the sentence just before it.
4
What was said is re
interpreted on what it
actually meant.
5
It involves the analysis of
words in the sentence for
grammar and arrangement
in a manner that shows
the relationship among
the words.
2
To complete the TASMO experience, it builds
graphical reports that provide managers with
simple insights for their decision making process.
So what’s holding you back
from reaping the key benefits:
Providing all stakeholders
access to critical business
information
Creating value from business
information
Eliminating the labour
intensive processes of
categorizing, sorting, and
extracting data
Still need a nudge to get out
of the 1950’s modus operandi?
Then consider that the
respected analyst firm
Gartner believes that
companies that use
AI based analytics
best are...
2X More likely to have top-
quartile financial performance
5X More likely to make
decisions “much faster than
the competition”
3X More likely to execute
decisions as intended
2X More likely to use data
very frequently when making
decisions
Don’t let your valuable data go to waste.
Discover the magic of TASMO and
extract real value! Here are just a few
real-world examples of how TASMO
works its magic:
E-COMMERCE
Improve customer intelligence, gain insight on
purchasing habits and predict potential future
consumption interests. (Warehouse stocking
requirements, etc.)
RISK MANAGEMENT
Easily mine and analyze regulatory, compliance and
security measures to minimize the risk of fraud.
MARKETING
Understand and gauge customer sentiment
towards a product, a service or a company across
the online media spectrum.
HUMAN RESOURCES
Build an extensive employee profile to include work
and company lifetime communications. Identify
positive or negative tendencies in employees.
Collect professional information, performance
reviews, job matching, etc.
DOCUMENT ARCHIVING
Find, scan, collect and classify old documents
according to document text content.
MEDICAL
Determine the efficiency of a specific treatment
based on a collection of analysis and reports made
by hundred of professionals over the years.
PHARMACEUTICAL
Collect and analyze probation drug test procedure
results and statistics.
LEGAL
Predict the output of a trial based on a collection of
court transcripts, or estimates the chances of
recidivism.
TENDER MANAGEMENT
Scan and analyze tender offers to provide
relevant information without the need for humans
to read the whole offer.
CYBER SECURITY
Scan and correlate log files to research security
breaches. Find the attacker’s original point-of-
entry and the subsequent consequences.
FORENSIC INVESTIGATION
Search for information about an event or incident
in all the available documents.
RESEARCH & DEVELOPMENT
Scan archived documents and test results to
support current R&D efforts.
ADGS Computer Systems

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ADGS Computer Systems

  • 1. BIG DATA ANALYTICS THAT EXCEL ADGS presents Text
  • 2. Are you still relying on 1950’s math theory to analyze, classify and extract data? Don’t worry you’re not alone, the majority of industry does as well. But, do you really want to follow the inefficiency of the majority in this age when volumes, variety and velocity of information being produced is on a trajectory and business value as well as mission-critical processes that drive revenue or mitigate risk are hidden in that information?
  • 3. 44 TRILLION GIGABYTES OF DIGITAL INFORMATION WILL BE CREATED GLOBALLY IN 2020 It is predicated that 44 Zetabytes, or 44 trillion Gigbytes, of digital information will be created globally in 2020, and 80% of the information produced is unstructured. In addition to structured database stored information there is a huge variety in the types and nature of information being created: All of this information must be tapped into to extract valuable information. To compound the challenge, there is also the expectation that the velocity at which this information is updated and made available is close to real time. Communications (Emails, instant messages, blog posts, etc.) Management Information (Diary entries, workflows, etc.) Information Products (Leaflets, websites, web/podcasts, newsfeeds, etc.) Media Assets (Photos, video, sound files, infographics, etc.) Surveillance Information (Log files, BI reports, monitoring data etc.)
  • 4. THAT’S WHY WE CREATED TASMO TASMO is an AI-based solution that captures structured and unstructured data using any data source from your company. It analyzes text and understands the nature of the communication, as well as which data elements are relevant to the business process. Even with ever-increasing variations of communications and documents, TASMO can match a broad range of inputs with the relevant process. That understanding is generated through Natural Language Processing (NLP), which is the heart of TASMO. Therefore, TASMO is able to find concepts and correlations across dispersed data sources other programs can’t. Additionally, we built in a self-learning engine that can analyze thousands of cases to understand the ways to classify different types of communication, learn new structures, and in certain instances pro- vide predictive outcomes. It involves identifying and analyzing the structure of words. 1 It draws the exact meaning or the dictionary meaning from the text. 3 The meaning of any sentence depends upon the meaning of the sentence just before it. 4 What was said is re interpreted on what it actually meant. 5 It involves the analysis of words in the sentence for grammar and arrangement in a manner that shows the relationship among the words. 2
  • 5. To complete the TASMO experience, it builds graphical reports that provide managers with simple insights for their decision making process. So what’s holding you back from reaping the key benefits: Providing all stakeholders access to critical business information Creating value from business information Eliminating the labour intensive processes of categorizing, sorting, and extracting data
  • 6. Still need a nudge to get out of the 1950’s modus operandi? Then consider that the respected analyst firm Gartner believes that companies that use AI based analytics best are... 2X More likely to have top- quartile financial performance 5X More likely to make decisions “much faster than the competition” 3X More likely to execute decisions as intended 2X More likely to use data very frequently when making decisions
  • 7. Don’t let your valuable data go to waste. Discover the magic of TASMO and extract real value! Here are just a few real-world examples of how TASMO works its magic: E-COMMERCE Improve customer intelligence, gain insight on purchasing habits and predict potential future consumption interests. (Warehouse stocking requirements, etc.) RISK MANAGEMENT Easily mine and analyze regulatory, compliance and security measures to minimize the risk of fraud. MARKETING Understand and gauge customer sentiment towards a product, a service or a company across the online media spectrum. HUMAN RESOURCES Build an extensive employee profile to include work and company lifetime communications. Identify positive or negative tendencies in employees. Collect professional information, performance reviews, job matching, etc. DOCUMENT ARCHIVING Find, scan, collect and classify old documents according to document text content. MEDICAL Determine the efficiency of a specific treatment based on a collection of analysis and reports made by hundred of professionals over the years. PHARMACEUTICAL Collect and analyze probation drug test procedure results and statistics. LEGAL Predict the output of a trial based on a collection of court transcripts, or estimates the chances of recidivism. TENDER MANAGEMENT Scan and analyze tender offers to provide relevant information without the need for humans to read the whole offer. CYBER SECURITY Scan and correlate log files to research security breaches. Find the attacker’s original point-of- entry and the subsequent consequences. FORENSIC INVESTIGATION Search for information about an event or incident in all the available documents. RESEARCH & DEVELOPMENT Scan archived documents and test results to support current R&D efforts.