SlideShare une entreprise Scribd logo
1  sur  14
Télécharger pour lire hors ligne
EMPOWERING ENTERPRISE THROUGH
AUGMENTED CURIOSITY
“We cannot solve our problems with the same thinking we
used when we created them.” Albert Einstein
SpeedTrack, Inc. is a technology company with
significant scientific and R&D experience that
has developed, patented and brought to market
revolutionary software. This technology
eliminates the structural barriers associated
with conventional data integration, analytics,
mining and reporting to release actionable
insights to the masses. The commercial
application and benefits of the technology have
been validated with customers with both SaaS
products and on premises custom solutions,
demonstrating a system with near limitless
possibilities in search, analytics, discovery and
prediction. SpeedTrack is launching into
markets that are screaming for solutions that
liberate actionable information from the vast
disparate data silos.
Introduction
ST
PORTFOLIO
• A data management system
SpeedTrack is Not
• Another me-to business intelligence/
analytics OLAP cube
• An open source base application
with SQL query tools
• A data warehouse solution for
integrating disparate databases
• Visualization or reporting
tool for displaying results
for your BI/BA application
Hit The Ground Running With SpeedTrack
Prototype in Weeks
No 3rd party software and consultants required
• On-The-Fly Ad Hoc discovery
• Easy data import - any data source
• No need for product integration
• Turn passive data into business drivers
• Confidential data never leaves your environment
• So intuitive - little to no training required
• High Value/Low cost scalability
4
The Problem:
Too much data, Too little information, Too much friction
The Solution: Eliminate structural barriers to information
5
Metric: Total Time to Information
Goal = Immediate
New Paradigm
Information Navigation
• Value is in the Information
• Associations Define Information
• Independent of Data Structure
• No Knowledge of Data Required
• Guidance Enables Discovery
• Scalable n-Dimensional Ad Hoc
• Freely Merge Information
6
Conventional IT
Store & Query Data
• Focus on Storing Data
• Dependent on Data
Structure
• Must Know What to
Query
• n-Dimensional Ad Hoc is
not Practical
• Integration is a Challenge
True Paradigm Shift
From Data To Actionable Information
“We cannot solve our problems with the same thinking we used when we
created them.” Albert Einstein
Guided Information Access (GIA)
A Window to Your Information
Scalable Ad Hoc Insight Discovery
Improved Access to Actionable Insights Drive:
More Efficient Operations
Better Decisions
Increased Profit Margins
Competitive Advantage
Real time
Informed Decisions
How they are
associated
What their frequency is
Every Word
In every sentence
Every Value
7
TIE/GIA Platform
Eliminates Costly/Restrictive Processes
TIE: Inexpensive, Flexible, High Value
Platform That Everyone Can Use
Extract All Positive Associations
(light implementation set-up required)
from ALL Data Sourcestext
Legacy Data
Databases
Oracle, SQL, DB2, etc...
Text Files/Documents/
Machine data
• Structured
• Un-structured
• Semi-structured
ANY Source DATA
• File Management
• Data Integration/Mapping
• n-Dimensional Ah-Hoc Search Capability
TIE Server
Association Matrix
GIA: Guided Search UI
• Easy to Use, Intuitive
• Fast, Saves Time
• Guides User to
Information They Might
Otherwise Miss
text
text
text
Query Against
Matrix Not Data
So What? TIE/GIA Benefits
SpeedTrack vs. Relational Database Technology
Relational Database SpeedTrack Benefits
Data
Storage
Requires well defined data structures
handled through fixed data schemas.
Difficult to integrate disparate data and
hybrid data (text).
Not dependent on any set
data structure. No unique
schemas required. Handles
all forms of data.
Data can be stored anywhere does not
have to be local. Easy to integrate
disparate data. Universal way to
handle all data types.
Search Allows ANY query to be run, searches
the database to try and return set of
records that match. Extremely CPU
intensive and slow for ad-hoc queries.
Impractical to make queries intelligent. IT
expertise needed to write ad-hoc queries.
Most ad-hoc = no results found or
millions of results no intelligent way to
marrow results w/o re-running query.
Does not need to perform
any searches. All possible
searched terms are
referenced as addresses of
their locations. Lay user
generated ad-hoc queries.
Step-By-Step reductive
search method.
a. 100% guaranteed relevant
search result
b. Guided navigation displays
remaining search terms which
enables user to further refine
search results.
c. Complex Boolean queries
created with a simple mouse
clicks.
Relational Database SpeedTrack Benefits
Data Cubes
for Analytics
Require special procedures (called
building the data cube) and
applications for On Line Analytical
Processing (OLAP) to analyze data
using a number of fields or
dimensions. Limit is typically 6-7
before exponential size growth limits
practicality
The Associative Matrix can
handle a practically
unlimited number of fields
or dimensions for
simultaneous analysis.
Solves n-dimensionality problem for
BI/BA analysis. Eliminates the need to
build and maintain dozens of OLAP
cubes to handle high dimensionality.
Greatly reduces cost and maintenance.
Unmatched performance for large
number of dimensions.
Scalability for
Analytics
Inherent limitations cause cube size
storage to grow exponentially,
making dimensions above 10 for
large data sizes impractical
approaching petabytes. Stores all
data that is needed to create the
search results.
The Associative Matrix
stores only POSITIVE
search combinations.
The result is a solution to the Curse of
Dimensionality or n-dimensional
problem. Enables a single high (100’s)
dimensional cube which scales linearly
rather than exponentially. Make
previously impossible analytics possible
at low cost.
So What? TIE/GIA Benefits
SpeedTrack vs. Relational Database Technology
Relational Database GIA Benefits
Text
Navigation
Not designed to efficiently
handle text searches and
navigation. Possible key word
searches but highly inefficient.
No way to “see” all the
associated documents and
search terms.
Same search platform
as GIA structured data.
Powerful Boolean text
searches.
Guided navigation provides insight
into ALL words in every document,
e-mail, report, text file, etc. Search
by keywords, words in a sentence,
subject/title. Allows for easy
generation of complex search
queries by lay users
Alternatives
Data Visibility
and Data
Discovery
No inherent visibility into the
contents of the database. Only
top level field headings.
Visibility into every value
of every field contained
within the data.
User has the unique ability to see
every search alternative and every
data association contained within
the data population. The results in
discoveries of hidden associations
and interaction between data
dimensions which cannot be seen
otherwise.
So What? TIE/GIA Benefits
SpeedTrack vs. Relational Database Technology
What We Offer
13
• n-dimensional Ad-Hoc capability
• Cloud or “On Prem”
• Interactive dashboards, reports, mapping
• Scalability
• Minimum footprint/low cost/low maintenance
• Rapid implementation time
• No 3rd party licenses or outside support required
• Minimizes Total Time to Information (TTI)
Questions?

Contenu connexe

Tendances

You're the New CDO, Now What?
You're the New CDO, Now What?You're the New CDO, Now What?
You're the New CDO, Now What?Caserta
 
Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino Data Lab
 
Creating an Enterprise AI Strategy
Creating an Enterprise AI StrategyCreating an Enterprise AI Strategy
Creating an Enterprise AI StrategyAtScale
 
How Machine Learning Will Transform Finance
How Machine Learning Will Transform FinanceHow Machine Learning Will Transform Finance
How Machine Learning Will Transform FinanceRich Clayton
 
Rahat Yasir: Enterprise Data & AI Strategy & Platform Designing
Rahat Yasir: Enterprise Data & AI Strategy & Platform DesigningRahat Yasir: Enterprise Data & AI Strategy & Platform Designing
Rahat Yasir: Enterprise Data & AI Strategy & Platform DesigningLviv Startup Club
 
Big data
Big dataBig data
Big data26Nia
 
Solution Architecture US healthcare
Solution Architecture US healthcare Solution Architecture US healthcare
Solution Architecture US healthcare sumiteshkr
 
000 introduction to big data analytics 2021
000   introduction to big data analytics  2021000   introduction to big data analytics  2021
000 introduction to big data analytics 2021Dendej Sawarnkatat
 
Analytics & Data Strategy 101 by Deko Dimeski
Analytics & Data Strategy 101 by Deko DimeskiAnalytics & Data Strategy 101 by Deko Dimeski
Analytics & Data Strategy 101 by Deko DimeskiDeko Dimeski
 
Data driven decision making through analytics and IoT
Data driven decision making through analytics and IoTData driven decision making through analytics and IoT
Data driven decision making through analytics and IoTAachen Data & AI Meetup
 
Consumer Data Management
Consumer Data ManagementConsumer Data Management
Consumer Data Managementijtsrd
 
Big Data Use-Cases across industries (Georg Polzer, Teralytics)
Big Data Use-Cases across industries (Georg Polzer, Teralytics)Big Data Use-Cases across industries (Georg Polzer, Teralytics)
Big Data Use-Cases across industries (Georg Polzer, Teralytics)Swiss Big Data User Group
 
Big data and Predictive Analytics By : Professor Lili Saghafi
Big data and Predictive Analytics By : Professor Lili SaghafiBig data and Predictive Analytics By : Professor Lili Saghafi
Big data and Predictive Analytics By : Professor Lili SaghafiProfessor Lili Saghafi
 
Importance of data analytics for business
Importance of data analytics for businessImportance of data analytics for business
Importance of data analytics for businessBranliticSocial
 
Commercializing Alternative Data
Commercializing Alternative DataCommercializing Alternative Data
Commercializing Alternative DataDatabricks
 
Transform Your Downstream Cloud Analytics with Data Quality 
Transform Your Downstream Cloud Analytics with Data Quality Transform Your Downstream Cloud Analytics with Data Quality 
Transform Your Downstream Cloud Analytics with Data Quality Precisely
 

Tendances (20)

You're the New CDO, Now What?
You're the New CDO, Now What?You're the New CDO, Now What?
You're the New CDO, Now What?
 
Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...
 
Creating an Enterprise AI Strategy
Creating an Enterprise AI StrategyCreating an Enterprise AI Strategy
Creating an Enterprise AI Strategy
 
Data analytics
Data analyticsData analytics
Data analytics
 
Data analytics
Data analyticsData analytics
Data analytics
 
How Machine Learning Will Transform Finance
How Machine Learning Will Transform FinanceHow Machine Learning Will Transform Finance
How Machine Learning Will Transform Finance
 
Rahat Yasir: Enterprise Data & AI Strategy & Platform Designing
Rahat Yasir: Enterprise Data & AI Strategy & Platform DesigningRahat Yasir: Enterprise Data & AI Strategy & Platform Designing
Rahat Yasir: Enterprise Data & AI Strategy & Platform Designing
 
Big data
Big dataBig data
Big data
 
Solution Architecture US healthcare
Solution Architecture US healthcare Solution Architecture US healthcare
Solution Architecture US healthcare
 
000 introduction to big data analytics 2021
000   introduction to big data analytics  2021000   introduction to big data analytics  2021
000 introduction to big data analytics 2021
 
Analytics & Data Strategy 101 by Deko Dimeski
Analytics & Data Strategy 101 by Deko DimeskiAnalytics & Data Strategy 101 by Deko Dimeski
Analytics & Data Strategy 101 by Deko Dimeski
 
Lean Data Lineage v10
Lean Data Lineage v10Lean Data Lineage v10
Lean Data Lineage v10
 
Data driven decision making through analytics and IoT
Data driven decision making through analytics and IoTData driven decision making through analytics and IoT
Data driven decision making through analytics and IoT
 
Consumer Data Management
Consumer Data ManagementConsumer Data Management
Consumer Data Management
 
Lean Data Lineage
Lean Data LineageLean Data Lineage
Lean Data Lineage
 
Big Data Use-Cases across industries (Georg Polzer, Teralytics)
Big Data Use-Cases across industries (Georg Polzer, Teralytics)Big Data Use-Cases across industries (Georg Polzer, Teralytics)
Big Data Use-Cases across industries (Georg Polzer, Teralytics)
 
Big data and Predictive Analytics By : Professor Lili Saghafi
Big data and Predictive Analytics By : Professor Lili SaghafiBig data and Predictive Analytics By : Professor Lili Saghafi
Big data and Predictive Analytics By : Professor Lili Saghafi
 
Importance of data analytics for business
Importance of data analytics for businessImportance of data analytics for business
Importance of data analytics for business
 
Commercializing Alternative Data
Commercializing Alternative DataCommercializing Alternative Data
Commercializing Alternative Data
 
Transform Your Downstream Cloud Analytics with Data Quality 
Transform Your Downstream Cloud Analytics with Data Quality Transform Your Downstream Cloud Analytics with Data Quality 
Transform Your Downstream Cloud Analytics with Data Quality 
 

En vedette

The name game – chapter 6
The name game – chapter 6The name game – chapter 6
The name game – chapter 6rexsims2
 
The name game – chapter 5
The name game – chapter 5The name game – chapter 5
The name game – chapter 5rexsims2
 
The name game – chapter 7
The name game – chapter 7The name game – chapter 7
The name game – chapter 7rexsims2
 
The Name Game – Chapter 4
The Name Game – Chapter 4The Name Game – Chapter 4
The Name Game – Chapter 4rexsims2
 
The Name Game - An Alphabet Legacy - Chapter 1
The Name Game - An Alphabet Legacy - Chapter 1The Name Game - An Alphabet Legacy - Chapter 1
The Name Game - An Alphabet Legacy - Chapter 1rexsims2
 
The name game – chapter 8
The name game – chapter 8The name game – chapter 8
The name game – chapter 8rexsims2
 
HEA-MA創意整合工作是簡介
HEA-MA創意整合工作是簡介HEA-MA創意整合工作是簡介
HEA-MA創意整合工作是簡介維益 劉
 
The How-To Legacy: Volume 3
The How-To Legacy: Volume 3The How-To Legacy: Volume 3
The How-To Legacy: Volume 3rexsims2
 
tugas pp
tugas pptugas pp
tugas ppRIDHO88
 
The Name Game - An Alphabet Legacy - Chapter 2
The Name Game - An Alphabet Legacy - Chapter 2The Name Game - An Alphabet Legacy - Chapter 2
The Name Game - An Alphabet Legacy - Chapter 2rexsims2
 
The Name Game - An Alphabet Legacy - Chapter 3
The Name Game - An Alphabet Legacy - Chapter 3The Name Game - An Alphabet Legacy - Chapter 3
The Name Game - An Alphabet Legacy - Chapter 3rexsims2
 
Concepts and Challenges of Text Retrieval for Search Engine
Concepts and Challenges of Text Retrieval for Search EngineConcepts and Challenges of Text Retrieval for Search Engine
Concepts and Challenges of Text Retrieval for Search EngineGan Keng Hoon
 

En vedette (14)

The name game – chapter 6
The name game – chapter 6The name game – chapter 6
The name game – chapter 6
 
The name game – chapter 5
The name game – chapter 5The name game – chapter 5
The name game – chapter 5
 
ENGLISH Ingles compu
ENGLISH Ingles compuENGLISH Ingles compu
ENGLISH Ingles compu
 
The name game – chapter 7
The name game – chapter 7The name game – chapter 7
The name game – chapter 7
 
The Name Game – Chapter 4
The Name Game – Chapter 4The Name Game – Chapter 4
The Name Game – Chapter 4
 
The Name Game - An Alphabet Legacy - Chapter 1
The Name Game - An Alphabet Legacy - Chapter 1The Name Game - An Alphabet Legacy - Chapter 1
The Name Game - An Alphabet Legacy - Chapter 1
 
GSRD 2015
GSRD 2015GSRD 2015
GSRD 2015
 
The name game – chapter 8
The name game – chapter 8The name game – chapter 8
The name game – chapter 8
 
HEA-MA創意整合工作是簡介
HEA-MA創意整合工作是簡介HEA-MA創意整合工作是簡介
HEA-MA創意整合工作是簡介
 
The How-To Legacy: Volume 3
The How-To Legacy: Volume 3The How-To Legacy: Volume 3
The How-To Legacy: Volume 3
 
tugas pp
tugas pptugas pp
tugas pp
 
The Name Game - An Alphabet Legacy - Chapter 2
The Name Game - An Alphabet Legacy - Chapter 2The Name Game - An Alphabet Legacy - Chapter 2
The Name Game - An Alphabet Legacy - Chapter 2
 
The Name Game - An Alphabet Legacy - Chapter 3
The Name Game - An Alphabet Legacy - Chapter 3The Name Game - An Alphabet Legacy - Chapter 3
The Name Game - An Alphabet Legacy - Chapter 3
 
Concepts and Challenges of Text Retrieval for Search Engine
Concepts and Challenges of Text Retrieval for Search EngineConcepts and Challenges of Text Retrieval for Search Engine
Concepts and Challenges of Text Retrieval for Search Engine
 

Similaire à SpeedTrack Tech Overview 2015

Big Data Evolution
Big Data EvolutionBig Data Evolution
Big Data Evolutionitnewsafrica
 
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Denodo
 
Qiagram
QiagramQiagram
Qiagramjwppz
 
Unlocking New Insights with Information Discovery
Unlocking New Insights with Information DiscoveryUnlocking New Insights with Information Discovery
Unlocking New Insights with Information DiscoveryAlithya
 
Harness the power of data
Harness the power of dataHarness the power of data
Harness the power of dataHarsha MV
 
What Data Do You Have and Where is It?
What Data Do You Have and Where is It? What Data Do You Have and Where is It?
What Data Do You Have and Where is It? Caserta
 
Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedcedrinemadera
 
Data lake benefits
Data lake benefitsData lake benefits
Data lake benefitsRicky Barron
 
data_blending
data_blendingdata_blending
data_blendingsubit1615
 
BAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneyBAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneySai Paravastu
 
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing Keynote
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing KeynoteArchitecting Data For The Modern Enterprise - Data Summit 2017, Closing Keynote
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing KeynoteCaserta
 
Building a New Platform for Customer Analytics
Building a New Platform for Customer Analytics Building a New Platform for Customer Analytics
Building a New Platform for Customer Analytics Caserta
 
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav MisraFrom Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav MisraMolly Alexander
 
Intro of Key Features of Soft CAAT Ent Software
Intro of Key Features of Soft CAAT Ent SoftwareIntro of Key Features of Soft CAAT Ent Software
Intro of Key Features of Soft CAAT Ent Softwarerafeq
 
Data_Harmonization_ClearStory
Data_Harmonization_ClearStoryData_Harmonization_ClearStory
Data_Harmonization_ClearStoryWilliam Davis
 
Introduction to Data Science
Introduction to Data ScienceIntroduction to Data Science
Introduction to Data ScienceCaserta
 
DevOps Spain 2019. Olivier Perard-Oracle
DevOps Spain 2019. Olivier Perard-OracleDevOps Spain 2019. Olivier Perard-Oracle
DevOps Spain 2019. Olivier Perard-OracleatSistemas
 
Big Data Analytics Architecture Powerpoint Presentation Slides
Big Data Analytics Architecture Powerpoint Presentation SlidesBig Data Analytics Architecture Powerpoint Presentation Slides
Big Data Analytics Architecture Powerpoint Presentation SlidesSlideTeam
 
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Nathan Bijnens
 
Balancing Data Governance and Innovation
Balancing Data Governance and InnovationBalancing Data Governance and Innovation
Balancing Data Governance and InnovationCaserta
 

Similaire à SpeedTrack Tech Overview 2015 (20)

Big Data Evolution
Big Data EvolutionBig Data Evolution
Big Data Evolution
 
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
 
Qiagram
QiagramQiagram
Qiagram
 
Unlocking New Insights with Information Discovery
Unlocking New Insights with Information DiscoveryUnlocking New Insights with Information Discovery
Unlocking New Insights with Information Discovery
 
Harness the power of data
Harness the power of dataHarness the power of data
Harness the power of data
 
What Data Do You Have and Where is It?
What Data Do You Have and Where is It? What Data Do You Have and Where is It?
What Data Do You Have and Where is It?
 
Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-shared
 
Data lake benefits
Data lake benefitsData lake benefits
Data lake benefits
 
data_blending
data_blendingdata_blending
data_blending
 
BAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneyBAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, Sydney
 
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing Keynote
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing KeynoteArchitecting Data For The Modern Enterprise - Data Summit 2017, Closing Keynote
Architecting Data For The Modern Enterprise - Data Summit 2017, Closing Keynote
 
Building a New Platform for Customer Analytics
Building a New Platform for Customer Analytics Building a New Platform for Customer Analytics
Building a New Platform for Customer Analytics
 
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav MisraFrom Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra
From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra
 
Intro of Key Features of Soft CAAT Ent Software
Intro of Key Features of Soft CAAT Ent SoftwareIntro of Key Features of Soft CAAT Ent Software
Intro of Key Features of Soft CAAT Ent Software
 
Data_Harmonization_ClearStory
Data_Harmonization_ClearStoryData_Harmonization_ClearStory
Data_Harmonization_ClearStory
 
Introduction to Data Science
Introduction to Data ScienceIntroduction to Data Science
Introduction to Data Science
 
DevOps Spain 2019. Olivier Perard-Oracle
DevOps Spain 2019. Olivier Perard-OracleDevOps Spain 2019. Olivier Perard-Oracle
DevOps Spain 2019. Olivier Perard-Oracle
 
Big Data Analytics Architecture Powerpoint Presentation Slides
Big Data Analytics Architecture Powerpoint Presentation SlidesBig Data Analytics Architecture Powerpoint Presentation Slides
Big Data Analytics Architecture Powerpoint Presentation Slides
 
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)
 
Balancing Data Governance and Innovation
Balancing Data Governance and InnovationBalancing Data Governance and Innovation
Balancing Data Governance and Innovation
 

SpeedTrack Tech Overview 2015

  • 1. EMPOWERING ENTERPRISE THROUGH AUGMENTED CURIOSITY “We cannot solve our problems with the same thinking we used when we created them.” Albert Einstein
  • 2. SpeedTrack, Inc. is a technology company with significant scientific and R&D experience that has developed, patented and brought to market revolutionary software. This technology eliminates the structural barriers associated with conventional data integration, analytics, mining and reporting to release actionable insights to the masses. The commercial application and benefits of the technology have been validated with customers with both SaaS products and on premises custom solutions, demonstrating a system with near limitless possibilities in search, analytics, discovery and prediction. SpeedTrack is launching into markets that are screaming for solutions that liberate actionable information from the vast disparate data silos. Introduction ST
  • 3. PORTFOLIO • A data management system SpeedTrack is Not • Another me-to business intelligence/ analytics OLAP cube • An open source base application with SQL query tools • A data warehouse solution for integrating disparate databases • Visualization or reporting tool for displaying results for your BI/BA application
  • 4. Hit The Ground Running With SpeedTrack Prototype in Weeks No 3rd party software and consultants required • On-The-Fly Ad Hoc discovery • Easy data import - any data source • No need for product integration • Turn passive data into business drivers • Confidential data never leaves your environment • So intuitive - little to no training required • High Value/Low cost scalability 4
  • 5. The Problem: Too much data, Too little information, Too much friction The Solution: Eliminate structural barriers to information 5 Metric: Total Time to Information Goal = Immediate
  • 6. New Paradigm Information Navigation • Value is in the Information • Associations Define Information • Independent of Data Structure • No Knowledge of Data Required • Guidance Enables Discovery • Scalable n-Dimensional Ad Hoc • Freely Merge Information 6 Conventional IT Store & Query Data • Focus on Storing Data • Dependent on Data Structure • Must Know What to Query • n-Dimensional Ad Hoc is not Practical • Integration is a Challenge True Paradigm Shift From Data To Actionable Information “We cannot solve our problems with the same thinking we used when we created them.” Albert Einstein
  • 7. Guided Information Access (GIA) A Window to Your Information Scalable Ad Hoc Insight Discovery Improved Access to Actionable Insights Drive: More Efficient Operations Better Decisions Increased Profit Margins Competitive Advantage Real time Informed Decisions How they are associated What their frequency is Every Word In every sentence Every Value 7
  • 9. TIE: Inexpensive, Flexible, High Value Platform That Everyone Can Use Extract All Positive Associations (light implementation set-up required) from ALL Data Sourcestext Legacy Data Databases Oracle, SQL, DB2, etc... Text Files/Documents/ Machine data • Structured • Un-structured • Semi-structured ANY Source DATA • File Management • Data Integration/Mapping • n-Dimensional Ah-Hoc Search Capability TIE Server Association Matrix GIA: Guided Search UI • Easy to Use, Intuitive • Fast, Saves Time • Guides User to Information They Might Otherwise Miss text text text Query Against Matrix Not Data
  • 10. So What? TIE/GIA Benefits SpeedTrack vs. Relational Database Technology Relational Database SpeedTrack Benefits Data Storage Requires well defined data structures handled through fixed data schemas. Difficult to integrate disparate data and hybrid data (text). Not dependent on any set data structure. No unique schemas required. Handles all forms of data. Data can be stored anywhere does not have to be local. Easy to integrate disparate data. Universal way to handle all data types. Search Allows ANY query to be run, searches the database to try and return set of records that match. Extremely CPU intensive and slow for ad-hoc queries. Impractical to make queries intelligent. IT expertise needed to write ad-hoc queries. Most ad-hoc = no results found or millions of results no intelligent way to marrow results w/o re-running query. Does not need to perform any searches. All possible searched terms are referenced as addresses of their locations. Lay user generated ad-hoc queries. Step-By-Step reductive search method. a. 100% guaranteed relevant search result b. Guided navigation displays remaining search terms which enables user to further refine search results. c. Complex Boolean queries created with a simple mouse clicks.
  • 11. Relational Database SpeedTrack Benefits Data Cubes for Analytics Require special procedures (called building the data cube) and applications for On Line Analytical Processing (OLAP) to analyze data using a number of fields or dimensions. Limit is typically 6-7 before exponential size growth limits practicality The Associative Matrix can handle a practically unlimited number of fields or dimensions for simultaneous analysis. Solves n-dimensionality problem for BI/BA analysis. Eliminates the need to build and maintain dozens of OLAP cubes to handle high dimensionality. Greatly reduces cost and maintenance. Unmatched performance for large number of dimensions. Scalability for Analytics Inherent limitations cause cube size storage to grow exponentially, making dimensions above 10 for large data sizes impractical approaching petabytes. Stores all data that is needed to create the search results. The Associative Matrix stores only POSITIVE search combinations. The result is a solution to the Curse of Dimensionality or n-dimensional problem. Enables a single high (100’s) dimensional cube which scales linearly rather than exponentially. Make previously impossible analytics possible at low cost. So What? TIE/GIA Benefits SpeedTrack vs. Relational Database Technology
  • 12. Relational Database GIA Benefits Text Navigation Not designed to efficiently handle text searches and navigation. Possible key word searches but highly inefficient. No way to “see” all the associated documents and search terms. Same search platform as GIA structured data. Powerful Boolean text searches. Guided navigation provides insight into ALL words in every document, e-mail, report, text file, etc. Search by keywords, words in a sentence, subject/title. Allows for easy generation of complex search queries by lay users Alternatives Data Visibility and Data Discovery No inherent visibility into the contents of the database. Only top level field headings. Visibility into every value of every field contained within the data. User has the unique ability to see every search alternative and every data association contained within the data population. The results in discoveries of hidden associations and interaction between data dimensions which cannot be seen otherwise. So What? TIE/GIA Benefits SpeedTrack vs. Relational Database Technology
  • 13. What We Offer 13 • n-dimensional Ad-Hoc capability • Cloud or “On Prem” • Interactive dashboards, reports, mapping • Scalability • Minimum footprint/low cost/low maintenance • Rapid implementation time • No 3rd party licenses or outside support required • Minimizes Total Time to Information (TTI)