SlideShare a Scribd company logo
1 of 3
Download to read offline
Atomc DB
Here are some ideas on business challenges AtomicDB addresses
and some specific strategies:
Business Challenges in the New Data Economy
Challenge #1: We have so many disparate databases that do not talk to each other -no
idea of how our business really looks
AtomicDB: we are an aggregation engine- combine all disparate data into one source, and
make as many custom models from that as you want -we solve the Data Warehouse prob-
lem
Challenge #2 - We have problem with information retrieval from our data
AtomicDB: we are a correlation engine- we do not search for data, we retrieve information
Challenge #3: Our data stores keep growing fast and cost more and more
AtomicDB: we are a single instance storage system- no duplicates; we decrease true Big Da-
ta storage footprint by 60-90%, significantly decreasing your costs
Challenge #4: Is our IT infrastructure ready to meet today's/tomorrows needs?
AtomicDB: we provide you with the speed, scale, security, and capability to compete in the
new Data Economy
Challenge #5: Our report run times are very long and custom reports are near impossible
to get or take a long time
AtomicDB: we are real-time and always up to date -as new data enters the system auto-
matically updates such that a "report" is always the current information and immediately
available; new reports can easily be created instantly in real time without programming
Business Challenges
Atomc DB
Challenge #6: We do not want to disrupt our current work environment by adding a new
system
AtomicDB: AtomicDB is New DATABASE / Information Management Science (disruptive
technology ) that does not disrupt your current environment- without any interference we
can co-exist with all systems yet deliver you new capability
Challenge #7: We want to increase our speed access to relevant data
AtomicDB: AtomicDB has no QUERY Language
Challenge #8: ETL process is long and expensive
AtomicDB: this is essentially non-existent with AtomicDB
Challenge #9: IT Development time is very long in our organization
AtomicDB: AtomicDB decreases this by 70% as we eliminate many of the processes required
in the structured relational environments
Challenge #10: Make sense of our Data
AtomicDB: Atomic DB allows you to Correlate/Aggregate as many Data sources ( disparate
Databases ) as needed.. and then Query an unlimited combination of information
Challenge #11: IT costs are a huge part of our budget
AtomicDB: AtomicDB will help you save money and increase performance
Challenge #12: Business Intelligence and analytics is becoming more and more important
to our business
AtomicDB: AtomicDB provides server solutions along these lines.. We presently have a full
adapter to www.pentaho.com SAS platform as well as out in house CAMS product.
Business Challenges
Contact Info
Jean Michel LeTennier jm@atomicdb.net
John Carroll john@atomicdb.net
Dr Phil Templeton ptempleton@atomicdb.net
http://www.atomicdb.net

More Related Content

What's hot

The METL Process in Investment Banking
The METL Process in Investment BankingThe METL Process in Investment Banking
The METL Process in Investment Banking
Antony Benzing
 
Data massage! databases scaled from one to one million nodes (ulf wendel)
Data massage! databases scaled from one to one million nodes (ulf wendel)Data massage! databases scaled from one to one million nodes (ulf wendel)
Data massage! databases scaled from one to one million nodes (ulf wendel)
Zhang Bo
 
Aginity "Big Data" Research Lab
Aginity "Big Data" Research LabAginity "Big Data" Research Lab
Aginity "Big Data" Research Lab
kevinflorian
 
Object relational and extended relational databases
Object relational and extended relational databasesObject relational and extended relational databases
Object relational and extended relational databases
Suhad Jihad
 
NoSQL_Databases
NoSQL_DatabasesNoSQL_Databases
NoSQL_Databases
Rick Perry
 
Object persistence
Object persistenceObject persistence
Object persistence
Vlad Vega
 

What's hot (20)

The METL Process in Investment Banking
The METL Process in Investment BankingThe METL Process in Investment Banking
The METL Process in Investment Banking
 
No sql – rise of the clusters
No sql – rise of the clustersNo sql – rise of the clusters
No sql – rise of the clusters
 
Introduction of big data unit 1
Introduction of big data unit 1Introduction of big data unit 1
Introduction of big data unit 1
 
Data massage! databases scaled from one to one million nodes (ulf wendel)
Data massage! databases scaled from one to one million nodes (ulf wendel)Data massage! databases scaled from one to one million nodes (ulf wendel)
Data massage! databases scaled from one to one million nodes (ulf wendel)
 
Big Data Unit 4 - Hadoop
Big Data Unit 4 - HadoopBig Data Unit 4 - Hadoop
Big Data Unit 4 - Hadoop
 
Artigo no sql x relational
Artigo no sql x relationalArtigo no sql x relational
Artigo no sql x relational
 
data science chapter-4,5,6
data science chapter-4,5,6data science chapter-4,5,6
data science chapter-4,5,6
 
PATTERNS07 - Data Representation in C#
PATTERNS07 - Data Representation in C#PATTERNS07 - Data Representation in C#
PATTERNS07 - Data Representation in C#
 
Aginity "Big Data" Research Lab
Aginity "Big Data" Research LabAginity "Big Data" Research Lab
Aginity "Big Data" Research Lab
 
Data Engineering Basics
Data Engineering BasicsData Engineering Basics
Data Engineering Basics
 
Introduction to database with ms access.hetvii
Introduction to database with ms access.hetviiIntroduction to database with ms access.hetvii
Introduction to database with ms access.hetvii
 
Object relational and extended relational databases
Object relational and extended relational databasesObject relational and extended relational databases
Object relational and extended relational databases
 
2007 Mark Logic User Conference Keynote
2007 Mark Logic User Conference Keynote2007 Mark Logic User Conference Keynote
2007 Mark Logic User Conference Keynote
 
Object oriented databases
Object oriented databasesObject oriented databases
Object oriented databases
 
NoSQL_Databases
NoSQL_DatabasesNoSQL_Databases
NoSQL_Databases
 
MongoDB NoSQL database a deep dive -MyWhitePaper
MongoDB  NoSQL database a deep dive -MyWhitePaperMongoDB  NoSQL database a deep dive -MyWhitePaper
MongoDB NoSQL database a deep dive -MyWhitePaper
 
Intake 38 data access 1
Intake 38 data access 1Intake 38 data access 1
Intake 38 data access 1
 
How Graph Databases started the Multi Model revolution
How Graph Databases started the Multi Model revolutionHow Graph Databases started the Multi Model revolution
How Graph Databases started the Multi Model revolution
 
Big Data with SQL Server
Big Data with SQL ServerBig Data with SQL Server
Big Data with SQL Server
 
Object persistence
Object persistenceObject persistence
Object persistence
 

Similar to AtomiDB Business Challenges

Microsoft Sql Server 2016 Is Now Live
Microsoft Sql Server 2016 Is Now LiveMicrosoft Sql Server 2016 Is Now Live
Microsoft Sql Server 2016 Is Now Live
Amber Moore
 
Bimodal IT and EDW Modernization
Bimodal IT and EDW ModernizationBimodal IT and EDW Modernization
Bimodal IT and EDW Modernization
Robert Gleave
 

Similar to AtomiDB Business Challenges (20)

Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!
 
Run Oracle Apps in the Cloud with dashDB
Run Oracle Apps in the Cloud with dashDBRun Oracle Apps in the Cloud with dashDB
Run Oracle Apps in the Cloud with dashDB
 
The Evolution of a Scrappy Startup to a Successful Web Service
The Evolution of a Scrappy Startup to a Successful Web ServiceThe Evolution of a Scrappy Startup to a Successful Web Service
The Evolution of a Scrappy Startup to a Successful Web Service
 
Oracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management PlatformaOracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management Platforma
 
Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?
 
Idera live 2021: Managing Databases in the Cloud - the First Step, a Succes...
Idera live 2021:   Managing Databases in the Cloud - the First Step, a Succes...Idera live 2021:   Managing Databases in the Cloud - the First Step, a Succes...
Idera live 2021: Managing Databases in the Cloud - the First Step, a Succes...
 
ScyllaDB Virtual Workshop
ScyllaDB Virtual WorkshopScyllaDB Virtual Workshop
ScyllaDB Virtual Workshop
 
Microsoft Sql Server 2016 Is Now Live
Microsoft Sql Server 2016 Is Now LiveMicrosoft Sql Server 2016 Is Now Live
Microsoft Sql Server 2016 Is Now Live
 
DBT ELT approach for Advanced Analytics.pptx
DBT ELT approach for Advanced Analytics.pptxDBT ELT approach for Advanced Analytics.pptx
DBT ELT approach for Advanced Analytics.pptx
 
Framing the Argument: How to Scale Faster with NoSQL
Framing the Argument: How to Scale Faster with NoSQLFraming the Argument: How to Scale Faster with NoSQL
Framing the Argument: How to Scale Faster with NoSQL
 
Boosting the Performance of your Rails Apps
Boosting the Performance of your Rails AppsBoosting the Performance of your Rails Apps
Boosting the Performance of your Rails Apps
 
Vectorization whitepaper
Vectorization whitepaperVectorization whitepaper
Vectorization whitepaper
 
Final project cafe coffe
Final project cafe coffeFinal project cafe coffe
Final project cafe coffe
 
Bimodal IT and EDW Modernization
Bimodal IT and EDW ModernizationBimodal IT and EDW Modernization
Bimodal IT and EDW Modernization
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
Hadoop and the Data Warehouse: Point/Counter Point
Hadoop and the Data Warehouse: Point/Counter PointHadoop and the Data Warehouse: Point/Counter Point
Hadoop and the Data Warehouse: Point/Counter Point
 
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
 
Hadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedInHadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedIn
 
VendorReview_IBMDB2
VendorReview_IBMDB2VendorReview_IBMDB2
VendorReview_IBMDB2
 
Migrating from Oracle to Postgres
Migrating from Oracle to PostgresMigrating from Oracle to Postgres
Migrating from Oracle to Postgres
 

More from JEAN-MICHEL LETENNIER

More from JEAN-MICHEL LETENNIER (6)

ADB introduction
ADB introductionADB introduction
ADB introduction
 
Towards a New Data Modelling Architecture - Part 1
Towards a New Data Modelling Architecture - Part 1Towards a New Data Modelling Architecture - Part 1
Towards a New Data Modelling Architecture - Part 1
 
ADB NYSE Show JM
ADB NYSE Show JMADB NYSE Show JM
ADB NYSE Show JM
 
AtomiDB Dr Ashis Banerjee reviews
AtomiDB Dr Ashis Banerjee reviewsAtomiDB Dr Ashis Banerjee reviews
AtomiDB Dr Ashis Banerjee reviews
 
AtomicDBCoreTech_White Papaer
AtomicDBCoreTech_White PapaerAtomicDBCoreTech_White Papaer
AtomicDBCoreTech_White Papaer
 
AtomiDB FAQs
AtomiDB FAQsAtomiDB FAQs
AtomiDB FAQs
 

AtomiDB Business Challenges

  • 1. Atomc DB Here are some ideas on business challenges AtomicDB addresses and some specific strategies: Business Challenges in the New Data Economy Challenge #1: We have so many disparate databases that do not talk to each other -no idea of how our business really looks AtomicDB: we are an aggregation engine- combine all disparate data into one source, and make as many custom models from that as you want -we solve the Data Warehouse prob- lem Challenge #2 - We have problem with information retrieval from our data AtomicDB: we are a correlation engine- we do not search for data, we retrieve information Challenge #3: Our data stores keep growing fast and cost more and more AtomicDB: we are a single instance storage system- no duplicates; we decrease true Big Da- ta storage footprint by 60-90%, significantly decreasing your costs Challenge #4: Is our IT infrastructure ready to meet today's/tomorrows needs? AtomicDB: we provide you with the speed, scale, security, and capability to compete in the new Data Economy Challenge #5: Our report run times are very long and custom reports are near impossible to get or take a long time AtomicDB: we are real-time and always up to date -as new data enters the system auto- matically updates such that a "report" is always the current information and immediately available; new reports can easily be created instantly in real time without programming Business Challenges
  • 2. Atomc DB Challenge #6: We do not want to disrupt our current work environment by adding a new system AtomicDB: AtomicDB is New DATABASE / Information Management Science (disruptive technology ) that does not disrupt your current environment- without any interference we can co-exist with all systems yet deliver you new capability Challenge #7: We want to increase our speed access to relevant data AtomicDB: AtomicDB has no QUERY Language Challenge #8: ETL process is long and expensive AtomicDB: this is essentially non-existent with AtomicDB Challenge #9: IT Development time is very long in our organization AtomicDB: AtomicDB decreases this by 70% as we eliminate many of the processes required in the structured relational environments Challenge #10: Make sense of our Data AtomicDB: Atomic DB allows you to Correlate/Aggregate as many Data sources ( disparate Databases ) as needed.. and then Query an unlimited combination of information Challenge #11: IT costs are a huge part of our budget AtomicDB: AtomicDB will help you save money and increase performance Challenge #12: Business Intelligence and analytics is becoming more and more important to our business AtomicDB: AtomicDB provides server solutions along these lines.. We presently have a full adapter to www.pentaho.com SAS platform as well as out in house CAMS product. Business Challenges
  • 3. Contact Info Jean Michel LeTennier jm@atomicdb.net John Carroll john@atomicdb.net Dr Phil Templeton ptempleton@atomicdb.net http://www.atomicdb.net