SlideShare a Scribd company logo
1 of 32
Download to read offline
page
FAST DATA CHOICES:
FIVE STEPS FOR EVALUATING
ALTERNATIVE BUSINESS AND
TECHNOLOGY OPTIONS
Executive Webinar
Series on Fast Data
page© 2016 VoltDB
EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY
3.  Fast Data Choices: Five Steps for Evaluating
Alternative Business and Technology Options
2
Dennis Duckworth, Director
Product Marketing
VoltDB
Mike Bowen,
Lead Architect, Full360
See	
  it	
  here:	
  voltdb.com/webinars	
  
page© 2016 VoltDB
EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY
1.  Fast Data for Competitive Advantage: 4 Steps to
Expand your Opportunity
2.  How First to Value Beats First to Market: Case
Studies of Fast Data Success
3.  Fast Data Choices: Five Steps for Evaluating
Alternative Business and Technology Options
3
page© 2016 VoltDB
EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY
1.  Fast Data for Competitive Advantage: 4 Steps to
Expand your Opportunity
4
Bruce Reading, CEO
VoltDB
David Peters, CEO
Emagine International
See	
  it	
  here:	
  voltdb.com/webinars	
  
Because we need to
interact with the
customer in the
moment – when it
really counts
Emagine International
Real-time Event Decisioning - why does Real-time matter?
Emagine
Real-time DB Selection Framework
Key Requirements:
Speed: Sub 250
millisecond response times
TPS = Millions
Data Integrity
Fit: Real-time analytics and
execution complementing
batch technology - based
on LAMBDA architecture
Implementation support
(post sales)
page© 2016 VoltDB
EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY
2.  How First to Value Beats First to Market: Case
Studies of Fast Data Success
7
Peter Vescuso, CMO
VoltDB
Niall Norton, CEO
Openet
See	
  it	
  here:	
  voltdb.com/webinars	
  
8	
  ©	
  Copyright	
  2016	
  Openet	
  –	
  Company	
  ConfidenCal	
  	
  
For	
  Use	
  Under	
  Non-­‐Disclosure	
  Only	
  
•  Smarter	
  Engagement	
  with	
  Customers	
  –	
  use	
  smart	
  data	
  and	
  enable	
  a	
  
beJer	
  customer	
  experience	
  and	
  enable	
  service	
  providers	
  to	
  compete	
  for	
  a	
  
bigger	
  share	
  of	
  customers’	
  digital	
  spend.	
  
Smarter	
  Engagement	
  with	
  Customers	
  
How	
  do	
  you	
  become	
  more	
  relevant	
  to	
  your	
  customers?	
  
9	
  ©	
  Copyright	
  2016	
  Openet	
  –	
  Company	
  ConfidenCal	
  	
  
For	
  Use	
  Under	
  Non-­‐Disclosure	
  Only	
  
• Smarter	
  Engagement	
  with	
  Real-­‐
<me	
  Data	
  –	
  understand	
  customer	
  
context	
  in	
  real-­‐Cme.	
  Use	
  this	
  to	
  
push	
  personalized,	
  contextually	
  
aware	
  offers.	
  
Smarter	
  Engagement	
  with	
  Fast	
  Data	
  
10	
  ©	
  Copyright	
  2016	
  Openet	
  –	
  Company	
  ConfidenCal	
  	
  
For	
  Use	
  Under	
  Non-­‐Disclosure	
  Only	
  
•  Telecoms	
  is	
  transforming	
  
•  Everyone	
  has	
  a	
  strategy	
  but	
  needs	
  the	
  
flexibility	
  to	
  adapt	
  in	
  Cmes	
  of	
  change	
  
•  Those	
  who	
  don’t	
  best	
  adapt	
  to	
  change	
  will	
  be	
  
leU	
  behind	
  
•  Legacy	
  way	
  of	
  doing	
  business	
  and	
  systems	
  will	
  
soon	
  be	
  obsolete	
  
•  Not	
  just	
  about	
  big	
  data.	
  It’s	
  using	
  data	
  in	
  a	
  
fast	
  and	
  smart	
  way	
  to	
  drive	
  change	
  and	
  open	
  
new	
  revenue	
  streams	
  
•  It’s	
  about	
  enabling	
  change	
  
Summing	
  Up	
  –	
  Openet	
  and	
  VoltDB	
  
page© 2016 VoltDB
EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY
1.  Fast Data for Competitive Advantage: 4 Steps to
Expand your Opportunity
2.  How First to Value Beats First to Market: Case
Studies of Fast Data Success
3.  Fast Data Choices: Five Steps for Evaluating
Alternative Business and Technology Options
11
page© 2016 VoltDB
FIVE STEPS TO FAST DATA SUCCESS
1.  Identify your fast data opportunity
2.  Assess your existing infrastructure
3.  Get agreement on success criteria
4.  Understand the business and technical
implications
5.  Prototype, Pilot, Refine
12
page© 2016 VoltDB
1. IDENTIFY YOUR FAST DATA OPPORTUNITY
•  Fast data applications share characteristics:
•  Need to respond in real-time to streams of data
events
•  Not [just] a dashboard or look-up app
•  Emphasis on real-time action
•  Assemble your candidates and vet with
team
•  Which is the most urgent?
•  Needs real business value (ROI) with
reasonable timeline (TTV) and investment
(TCO)
13
page© 2016 VoltDB
IT TAKES A TEAM!
BUSINESS  +  TECHNICAL  =  3
•  Business side knows what the
business needs to do...and what it
can/cannot afford (time, money)
•  Technical side knows about existing
systems and what is/not possible
•  Keep each other grounded in reality...
•  Financial, Customer, Competitive
environment
•  Physics, Technology capabilities/
limitations
14
page© 2016 VoltDB
2. ASSESS EXISTING INFRASTRUCTURE
•  You don’t need to rip/replace
everything
•  Try to make use of existing systems
that work well, quickly and reliably,
like data warehouses
•  Know when best-of-breed
components beat all-in-one
•  Avoid complexity, keep it simple
enough – but no simpler
15
page© 2016 VoltDB
3. GET AGREEMENT ON SUCCESS CRITERIA
•  Describe the project’s primary purpose
•  Scope the project– narrow to pain points that
need to be solved
•  Define success – meaningful and achievable
•  Identify sub-projects and build a timetable
•  Identify risks to existing production systems
and isolate them
•  Don’t forget test & QA
•  Build a success profile so you know it when
you see it
•  Document everything
16
page© 2016 VoltDB
4. UNDERSTAND THE BUSINESS & TECHNOLOGY IMPLICATIONS
•  Are you solving an analytics problem or a transactional
problem?
•  Real-time or batch? Can you afford to wait for correct
answers?
•  Is data integrity important? Is correct data in real-time a
must-have, a nice-to-have, a who-needs-it?
•  Think about: FOSS or commercial version?
•  Best-of-breed products vs. DIY Apache stack?
•  Beware Complexity as well as over-simplifications (one
product that does many things...poorly)
•  Cloud or on-premises or both (hybrid)?
•  Do your people have the necessary skills?
•  Don’t forget reference checks – analysts, users like you,
open source community
17
page© 2016 VoltDB
5. PROTOTYPE, PILOT, REFINE
•  Prototype, don’t PoC
•  Be realistic about resources and timelines
•  Download software and pilot your use cases
•  Test results against your success profile
•  Successful?
•  Yes: Congratulations! Next stop, production
•  No: Post-mortem and try again
18
FAST DATA
VOLTDB EXPERIENCES AT FULL360
FULL 360
WHO
Data Guys focused on
AWS Cloud
Cloud Since 2007
DW / BI / Financial Apps
Wall Street + F500
Experience
WHAT
Multi-Tier DW Managed
Services
Data Management
Platform
DevOps / IOT / Next
Gen
Big Data / Wide Data /
Fast Data
THREE CASE STUDIES
Gaming – Events Processing
Aviation - Mobile Streaming
Aviation - Microservices
ONLINE GAMING
Gaming Events Analysis
•  Bingo / Slots
•  Realtime Economy
•  Realtime Decisions
ONLINE GAMING
High Performance Simply Done
•  95 Game Events
•  Volt Java Classes + SQL
•  Full360 Tools
•  30K TPS speed (2 x M1.xlarge)
•  9 M rows / day = 3.285 B / year
COMPARE TO PAYPAL
https://www.paypal.com/webapps/mpp/about
MEMBER FULFILLMENT (HUB)
•  Embedded in Full360 Platform (Actor Model)
•  Amazon SQS (Simple Queue Service)
•  Send promotional template to mobile app (4K payload)
•  11 million members
•  Multiple target channels
•  Mobile App
•  REST APIs
EMBEDDED VOLTDB
HUB PERFORMANCE
•  3.75 Million Messages: 14 sec
•  Single instance M4.xlarge
•  More than SQS can handle
•  More economical than DynamoDB
FREQUENT FLYER
MICROSERVICES
•  Enable realtime burn channels
•  Best practices for point burn & earn
•  Enable tailored offers in realtime
•  Support batch synch
•  Allow independent function
LESSONS LEARNED
•  Java + SQL = Low TCO
•  Integrated System = Easy Debugging
•  Currency Transactions Require ACID
•  VoltDB simplifies endpoints
•  Upstream Control
•  Transformations in Streaming
VOLTDB
Blazing Performance
Clarifies Architecture
Redefines Streaming
page© 2016 VoltDB
GET THE FACTS – IN THE FAST DATA STRATEGY GUIDE
•  You will get more detail about all of these
steps in a Fast Data Strategy Guide
•  Coming soon to an email box near you
31
page© 2016 VoltDB
QUESTIONS?
•  Use the chat window to type in your questions
•  Try VoltDB yourself:
Ø  Free trial of the Enterprise Edition:
•  voltdb.com/download
•  Email us at: info@voltdb.com
•  Watch the Executive Webinar Series (again): voltdb.com/webinars
32

More Related Content

What's hot

Transforming Your Business with Fast Data – Five Use Case Examples
Transforming Your Business with Fast Data – Five Use Case ExamplesTransforming Your Business with Fast Data – Five Use Case Examples
Transforming Your Business with Fast Data – Five Use Case ExamplesVoltDB
 
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...VoltDB
 
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...VoltDB
 
How First to Value Beats First to Market: Case Studies of Fast Data Success
How First to Value Beats First to Market: Case Studies of Fast Data SuccessHow First to Value Beats First to Market: Case Studies of Fast Data Success
How First to Value Beats First to Market: Case Studies of Fast Data SuccessVoltDB
 
Memory Database Technology is Driving a New Cycle of Business Innovation
Memory Database Technology is Driving a New Cycle of Business InnovationMemory Database Technology is Driving a New Cycle of Business Innovation
Memory Database Technology is Driving a New Cycle of Business InnovationVoltDB
 
How to Build Fast Data Applications: Evaluating the Top Contenders
How to Build Fast Data Applications: Evaluating the Top ContendersHow to Build Fast Data Applications: Evaluating the Top Contenders
How to Build Fast Data Applications: Evaluating the Top ContendersVoltDB
 
The Expert Guide to Fast Data
The Expert Guide to Fast Data The Expert Guide to Fast Data
The Expert Guide to Fast Data VoltDB
 
How to Build Cloud-based Microservice Environments with Docker and VoltDB
How to Build Cloud-based Microservice Environments with Docker and VoltDBHow to Build Cloud-based Microservice Environments with Docker and VoltDB
How to Build Cloud-based Microservice Environments with Docker and VoltDBVoltDB
 
Fast Data – the New Big Data
Fast Data – the New Big DataFast Data – the New Big Data
Fast Data – the New Big DataVoltDB
 
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDB
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDBReal-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDB
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDBVoltDB
 
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...VoltDB
 
Big Data at a Gaming Company: Spil Games
Big Data at a Gaming Company: Spil GamesBig Data at a Gaming Company: Spil Games
Big Data at a Gaming Company: Spil GamesRob Winters
 
Architecting for Real-Time Big Data Analytics
Architecting for Real-Time Big Data AnalyticsArchitecting for Real-Time Big Data Analytics
Architecting for Real-Time Big Data AnalyticsRob Winters
 
Billions of Rows, Millions of Insights, Right Now
Billions of Rows, Millions of Insights, Right NowBillions of Rows, Millions of Insights, Right Now
Billions of Rows, Millions of Insights, Right NowRob Winters
 
HP Discover: Real Time Insights from Big Data
HP Discover: Real Time Insights from Big DataHP Discover: Real Time Insights from Big Data
HP Discover: Real Time Insights from Big DataRob Winters
 
2016 09 measurecamp - event data modeling
2016 09 measurecamp - event data modeling2016 09 measurecamp - event data modeling
2016 09 measurecamp - event data modelingyalisassoon
 
Data flow in the data center
Data flow in the data centerData flow in the data center
Data flow in the data centerAdam Cataldo
 
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Big Data Spain
 
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014Jaroslav Gergic
 

What's hot (20)

Transforming Your Business with Fast Data – Five Use Case Examples
Transforming Your Business with Fast Data – Five Use Case ExamplesTransforming Your Business with Fast Data – Five Use Case Examples
Transforming Your Business with Fast Data – Five Use Case Examples
 
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...
Eat Your Data and Have It Too: Get the Blazing Performance of In-Memory Opera...
 
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...
Fast Data for Competitive Advantage: 4 Steps to Expand your Window of Opportu...
 
How First to Value Beats First to Market: Case Studies of Fast Data Success
How First to Value Beats First to Market: Case Studies of Fast Data SuccessHow First to Value Beats First to Market: Case Studies of Fast Data Success
How First to Value Beats First to Market: Case Studies of Fast Data Success
 
Memory Database Technology is Driving a New Cycle of Business Innovation
Memory Database Technology is Driving a New Cycle of Business InnovationMemory Database Technology is Driving a New Cycle of Business Innovation
Memory Database Technology is Driving a New Cycle of Business Innovation
 
How to Build Fast Data Applications: Evaluating the Top Contenders
How to Build Fast Data Applications: Evaluating the Top ContendersHow to Build Fast Data Applications: Evaluating the Top Contenders
How to Build Fast Data Applications: Evaluating the Top Contenders
 
The Expert Guide to Fast Data
The Expert Guide to Fast Data The Expert Guide to Fast Data
The Expert Guide to Fast Data
 
How to Build Cloud-based Microservice Environments with Docker and VoltDB
How to Build Cloud-based Microservice Environments with Docker and VoltDBHow to Build Cloud-based Microservice Environments with Docker and VoltDB
How to Build Cloud-based Microservice Environments with Docker and VoltDB
 
Fast Data – the New Big Data
Fast Data – the New Big DataFast Data – the New Big Data
Fast Data – the New Big Data
 
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDB
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDBReal-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDB
Real-time Big Data Analytics in the IBM SoftLayer Cloud with VoltDB
 
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...
VoltDB and Flytxt Present: Building a Single Technology Platform for Real-Tim...
 
Big Data at a Gaming Company: Spil Games
Big Data at a Gaming Company: Spil GamesBig Data at a Gaming Company: Spil Games
Big Data at a Gaming Company: Spil Games
 
Architecting for Real-Time Big Data Analytics
Architecting for Real-Time Big Data AnalyticsArchitecting for Real-Time Big Data Analytics
Architecting for Real-Time Big Data Analytics
 
Billions of Rows, Millions of Insights, Right Now
Billions of Rows, Millions of Insights, Right NowBillions of Rows, Millions of Insights, Right Now
Billions of Rows, Millions of Insights, Right Now
 
HP Discover: Real Time Insights from Big Data
HP Discover: Real Time Insights from Big DataHP Discover: Real Time Insights from Big Data
HP Discover: Real Time Insights from Big Data
 
2016 09 measurecamp - event data modeling
2016 09 measurecamp - event data modeling2016 09 measurecamp - event data modeling
2016 09 measurecamp - event data modeling
 
Data flow in the data center
Data flow in the data centerData flow in the data center
Data flow in the data center
 
VoltDB 소개
VoltDB 소개VoltDB 소개
VoltDB 소개
 
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
 
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014
Big Data Pipeline for Analytics at Scale @ FIT CVUT 2014
 

Viewers also liked

How to build streaming data applications - evaluating the top contenders
How to build streaming data applications - evaluating the top contendersHow to build streaming data applications - evaluating the top contenders
How to build streaming data applications - evaluating the top contendersAkmal Chaudhri
 
VoltDB : A Technical Overview
VoltDB : A Technical OverviewVoltDB : A Technical Overview
VoltDB : A Technical OverviewTim Callaghan
 
Understanding the Operational Database Infrastructure for IoT and Fast Data
Understanding the Operational Database Infrastructure for IoT and Fast DataUnderstanding the Operational Database Infrastructure for IoT and Fast Data
Understanding the Operational Database Infrastructure for IoT and Fast DataVoltDB
 
Powering Fast Data and the Hadoop Ecosystem with VoltDB and Hortonworks
Powering Fast Data and the Hadoop Ecosystem with VoltDB and HortonworksPowering Fast Data and the Hadoop Ecosystem with VoltDB and Hortonworks
Powering Fast Data and the Hadoop Ecosystem with VoltDB and HortonworksHortonworks
 
Understanding the Top Four Use Cases for IoT
Understanding the Top Four Use Cases for IoTUnderstanding the Top Four Use Cases for IoT
Understanding the Top Four Use Cases for IoTVoltDB
 
Real time Analytics with Apache Kafka and Apache Spark
Real time Analytics with Apache Kafka and Apache SparkReal time Analytics with Apache Kafka and Apache Spark
Real time Analytics with Apache Kafka and Apache SparkRahul Jain
 

Viewers also liked (6)

How to build streaming data applications - evaluating the top contenders
How to build streaming data applications - evaluating the top contendersHow to build streaming data applications - evaluating the top contenders
How to build streaming data applications - evaluating the top contenders
 
VoltDB : A Technical Overview
VoltDB : A Technical OverviewVoltDB : A Technical Overview
VoltDB : A Technical Overview
 
Understanding the Operational Database Infrastructure for IoT and Fast Data
Understanding the Operational Database Infrastructure for IoT and Fast DataUnderstanding the Operational Database Infrastructure for IoT and Fast Data
Understanding the Operational Database Infrastructure for IoT and Fast Data
 
Powering Fast Data and the Hadoop Ecosystem with VoltDB and Hortonworks
Powering Fast Data and the Hadoop Ecosystem with VoltDB and HortonworksPowering Fast Data and the Hadoop Ecosystem with VoltDB and Hortonworks
Powering Fast Data and the Hadoop Ecosystem with VoltDB and Hortonworks
 
Understanding the Top Four Use Cases for IoT
Understanding the Top Four Use Cases for IoTUnderstanding the Top Four Use Cases for IoT
Understanding the Top Four Use Cases for IoT
 
Real time Analytics with Apache Kafka and Apache Spark
Real time Analytics with Apache Kafka and Apache SparkReal time Analytics with Apache Kafka and Apache Spark
Real time Analytics with Apache Kafka and Apache Spark
 

Similar to Fast Data Choices: 5 Strategies for Evaluating Alternative Business and Technology Options

Pivoting event streaming, from PROJECTS to a PLATFORM
Pivoting event streaming, from PROJECTS to a PLATFORMPivoting event streaming, from PROJECTS to a PLATFORM
Pivoting event streaming, from PROJECTS to a PLATFORMconfluent
 
AWS May Webinar Series - Industry Trends and Best Practices for Cloud Adoption
AWS May Webinar Series - Industry Trends and Best Practices for Cloud AdoptionAWS May Webinar Series - Industry Trends and Best Practices for Cloud Adoption
AWS May Webinar Series - Industry Trends and Best Practices for Cloud AdoptionAmazon Web Services
 
Operating a Highly Available Cloud Service
Operating a Highly Available Cloud ServiceOperating a Highly Available Cloud Service
Operating a Highly Available Cloud ServiceDepankar Neogi
 
Presentación Paco Bermejo - La Noche del Sector Financiero
Presentación Paco Bermejo - La Noche del Sector FinancieroPresentación Paco Bermejo - La Noche del Sector Financiero
Presentación Paco Bermejo - La Noche del Sector FinancieroJorge Puebla Fernández
 
Duet enterprise executive overview
Duet enterprise executive overviewDuet enterprise executive overview
Duet enterprise executive overviewYi Guoyong
 
AWS Webcast - Sales Productivity Solutions with MicroStrategy and Redshift
AWS Webcast - Sales Productivity Solutions with MicroStrategy and RedshiftAWS Webcast - Sales Productivity Solutions with MicroStrategy and Redshift
AWS Webcast - Sales Productivity Solutions with MicroStrategy and RedshiftAmazon Web Services
 
EzDataMunch_Corporate_Qlikview2015
EzDataMunch_Corporate_Qlikview2015EzDataMunch_Corporate_Qlikview2015
EzDataMunch_Corporate_Qlikview2015milanmvd
 
The Connected Consumer – Real-time Customer 360
The Connected Consumer – Real-time Customer 360The Connected Consumer – Real-time Customer 360
The Connected Consumer – Real-time Customer 360Capgemini
 
Starter Kit for Collaboration from Karuana @ Microsoft IT
Starter Kit for Collaboration from Karuana @ Microsoft ITStarter Kit for Collaboration from Karuana @ Microsoft IT
Starter Kit for Collaboration from Karuana @ Microsoft ITKaruana Gatimu
 
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...Jag Ramaswamy
 
Data Analytics in Digital Transformation
Data Analytics in Digital TransformationData Analytics in Digital Transformation
Data Analytics in Digital TransformationMukund Babbar
 
Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsDenodo
 
Customer Event Hub - the modern Customer 360° view
Customer Event Hub - the modern Customer 360° viewCustomer Event Hub - the modern Customer 360° view
Customer Event Hub - the modern Customer 360° viewGuido Schmutz
 
Destination Digital: Tracking Progress to Continue First Class Performance
Destination Digital: Tracking Progress to Continue First Class PerformanceDestination Digital: Tracking Progress to Continue First Class Performance
Destination Digital: Tracking Progress to Continue First Class PerformanceNGA Human Resources
 
Assessing New Database Capabilities – Multi-Model
Assessing New Database Capabilities – Multi-ModelAssessing New Database Capabilities – Multi-Model
Assessing New Database Capabilities – Multi-ModelDATAVERSITY
 
Analytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2BAnalytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2BVeronica Kirn
 
Guiding Principles on Effective Rapid Application Development
Guiding Principles on Effective Rapid Application Development Guiding Principles on Effective Rapid Application Development
Guiding Principles on Effective Rapid Application Development QuickBase, Inc.
 
Designing Enterprise Applications for Speed and Agility
Designing Enterprise Applications for Speed and AgilityDesigning Enterprise Applications for Speed and Agility
Designing Enterprise Applications for Speed and AgilityKenandy
 

Similar to Fast Data Choices: 5 Strategies for Evaluating Alternative Business and Technology Options (20)

Pivoting event streaming, from PROJECTS to a PLATFORM
Pivoting event streaming, from PROJECTS to a PLATFORMPivoting event streaming, from PROJECTS to a PLATFORM
Pivoting event streaming, from PROJECTS to a PLATFORM
 
AWS May Webinar Series - Industry Trends and Best Practices for Cloud Adoption
AWS May Webinar Series - Industry Trends and Best Practices for Cloud AdoptionAWS May Webinar Series - Industry Trends and Best Practices for Cloud Adoption
AWS May Webinar Series - Industry Trends and Best Practices for Cloud Adoption
 
Operating a Highly Available Cloud Service
Operating a Highly Available Cloud ServiceOperating a Highly Available Cloud Service
Operating a Highly Available Cloud Service
 
Presentación Paco Bermejo - La Noche del Sector Financiero
Presentación Paco Bermejo - La Noche del Sector FinancieroPresentación Paco Bermejo - La Noche del Sector Financiero
Presentación Paco Bermejo - La Noche del Sector Financiero
 
Duet enterprise executive overview
Duet enterprise executive overviewDuet enterprise executive overview
Duet enterprise executive overview
 
AWS Webcast - Sales Productivity Solutions with MicroStrategy and Redshift
AWS Webcast - Sales Productivity Solutions with MicroStrategy and RedshiftAWS Webcast - Sales Productivity Solutions with MicroStrategy and Redshift
AWS Webcast - Sales Productivity Solutions with MicroStrategy and Redshift
 
EzDataMunch_Corporate_Qlikview2015
EzDataMunch_Corporate_Qlikview2015EzDataMunch_Corporate_Qlikview2015
EzDataMunch_Corporate_Qlikview2015
 
Real time analytics in Big Data
Real time analytics in Big DataReal time analytics in Big Data
Real time analytics in Big Data
 
The Connected Consumer – Real-time Customer 360
The Connected Consumer – Real-time Customer 360The Connected Consumer – Real-time Customer 360
The Connected Consumer – Real-time Customer 360
 
KidoZen紹介資料
KidoZen紹介資料KidoZen紹介資料
KidoZen紹介資料
 
Starter Kit for Collaboration from Karuana @ Microsoft IT
Starter Kit for Collaboration from Karuana @ Microsoft ITStarter Kit for Collaboration from Karuana @ Microsoft IT
Starter Kit for Collaboration from Karuana @ Microsoft IT
 
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...
2010-InnovationAwardCoca Cola Enterprises_The Value of Automating Order Manag...
 
Data Analytics in Digital Transformation
Data Analytics in Digital TransformationData Analytics in Digital Transformation
Data Analytics in Digital Transformation
 
Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard Rails
 
Customer Event Hub - the modern Customer 360° view
Customer Event Hub - the modern Customer 360° viewCustomer Event Hub - the modern Customer 360° view
Customer Event Hub - the modern Customer 360° view
 
Destination Digital: Tracking Progress to Continue First Class Performance
Destination Digital: Tracking Progress to Continue First Class PerformanceDestination Digital: Tracking Progress to Continue First Class Performance
Destination Digital: Tracking Progress to Continue First Class Performance
 
Assessing New Database Capabilities – Multi-Model
Assessing New Database Capabilities – Multi-ModelAssessing New Database Capabilities – Multi-Model
Assessing New Database Capabilities – Multi-Model
 
Analytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2BAnalytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2B
 
Guiding Principles on Effective Rapid Application Development
Guiding Principles on Effective Rapid Application Development Guiding Principles on Effective Rapid Application Development
Guiding Principles on Effective Rapid Application Development
 
Designing Enterprise Applications for Speed and Agility
Designing Enterprise Applications for Speed and AgilityDesigning Enterprise Applications for Speed and Agility
Designing Enterprise Applications for Speed and Agility
 

More from VoltDB

TripleLift: Preparing for a New Programmatic Ad-Tech World
TripleLift: Preparing for a New Programmatic Ad-Tech WorldTripleLift: Preparing for a New Programmatic Ad-Tech World
TripleLift: Preparing for a New Programmatic Ad-Tech WorldVoltDB
 
Acting on Real-time Behavior: How Peak Games Won Transactions
Acting on Real-time Behavior: How Peak Games Won TransactionsActing on Real-time Behavior: How Peak Games Won Transactions
Acting on Real-time Behavior: How Peak Games Won TransactionsVoltDB
 
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...VoltDB
 
Why you really want SQL in a Real-Time Enterprise Environment
Why you really want SQL in a Real-Time Enterprise EnvironmentWhy you really want SQL in a Real-Time Enterprise Environment
Why you really want SQL in a Real-Time Enterprise EnvironmentVoltDB
 
The Two Generals Problem
The Two Generals ProblemThe Two Generals Problem
The Two Generals ProblemVoltDB
 
The 10 MS Rule: Getting to 'Yes' with Fast Data & Hadoop
The 10 MS Rule: Getting to 'Yes' with Fast Data & HadoopThe 10 MS Rule: Getting to 'Yes' with Fast Data & Hadoop
The 10 MS Rule: Getting to 'Yes' with Fast Data & HadoopVoltDB
 
The State of Streaming Analytics: The Need for Speed and Scale
The State of Streaming Analytics: The Need for Speed and ScaleThe State of Streaming Analytics: The Need for Speed and Scale
The State of Streaming Analytics: The Need for Speed and ScaleVoltDB
 
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data Continuum
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data ContinuumFast Data: Achieving Real-Time Data Analysis Across the Financial Data Continuum
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data ContinuumVoltDB
 
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...VoltDB
 

More from VoltDB (9)

TripleLift: Preparing for a New Programmatic Ad-Tech World
TripleLift: Preparing for a New Programmatic Ad-Tech WorldTripleLift: Preparing for a New Programmatic Ad-Tech World
TripleLift: Preparing for a New Programmatic Ad-Tech World
 
Acting on Real-time Behavior: How Peak Games Won Transactions
Acting on Real-time Behavior: How Peak Games Won TransactionsActing on Real-time Behavior: How Peak Games Won Transactions
Acting on Real-time Behavior: How Peak Games Won Transactions
 
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...
Kyle Kingsbury Talks about the Jepsen Test: What VoltDB Learned About Data Ac...
 
Why you really want SQL in a Real-Time Enterprise Environment
Why you really want SQL in a Real-Time Enterprise EnvironmentWhy you really want SQL in a Real-Time Enterprise Environment
Why you really want SQL in a Real-Time Enterprise Environment
 
The Two Generals Problem
The Two Generals ProblemThe Two Generals Problem
The Two Generals Problem
 
The 10 MS Rule: Getting to 'Yes' with Fast Data & Hadoop
The 10 MS Rule: Getting to 'Yes' with Fast Data & HadoopThe 10 MS Rule: Getting to 'Yes' with Fast Data & Hadoop
The 10 MS Rule: Getting to 'Yes' with Fast Data & Hadoop
 
The State of Streaming Analytics: The Need for Speed and Scale
The State of Streaming Analytics: The Need for Speed and ScaleThe State of Streaming Analytics: The Need for Speed and Scale
The State of Streaming Analytics: The Need for Speed and Scale
 
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data Continuum
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data ContinuumFast Data: Achieving Real-Time Data Analysis Across the Financial Data Continuum
Fast Data: Achieving Real-Time Data Analysis Across the Financial Data Continuum
 
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...
How to Build Real-Time Streaming Analytics with an In-memory, Scale-out SQL D...
 

Recently uploaded

Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...kellynguyen01
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...panagenda
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsAndolasoft Inc
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfkalichargn70th171
 
How To Troubleshoot Collaboration Apps for the Modern Connected Worker
How To Troubleshoot Collaboration Apps for the Modern Connected WorkerHow To Troubleshoot Collaboration Apps for the Modern Connected Worker
How To Troubleshoot Collaboration Apps for the Modern Connected WorkerThousandEyes
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionSolGuruz
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Steffen Staab
 
Professional Resume Template for Software Developers
Professional Resume Template for Software DevelopersProfessional Resume Template for Software Developers
Professional Resume Template for Software DevelopersVinodh Ram
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfkalichargn70th171
 
Optimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVOptimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVshikhaohhpro
 
why an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfwhy an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfjoe51371421
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providermohitmore19
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Modelsaagamshah0812
 
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...gurkirankumar98700
 
Clustering techniques data mining book ....
Clustering techniques data mining book ....Clustering techniques data mining book ....
Clustering techniques data mining book ....ShaimaaMohamedGalal
 
DNT_Corporate presentation know about us
DNT_Corporate presentation know about usDNT_Corporate presentation know about us
DNT_Corporate presentation know about usDynamic Netsoft
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...harshavardhanraghave
 

Recently uploaded (20)

Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.js
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
 
How To Troubleshoot Collaboration Apps for the Modern Connected Worker
How To Troubleshoot Collaboration Apps for the Modern Connected WorkerHow To Troubleshoot Collaboration Apps for the Modern Connected Worker
How To Troubleshoot Collaboration Apps for the Modern Connected Worker
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with Precision
 
Exploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the ProcessExploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the Process
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
Professional Resume Template for Software Developers
Professional Resume Template for Software DevelopersProfessional Resume Template for Software Developers
Professional Resume Template for Software Developers
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
 
Optimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVOptimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTV
 
why an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfwhy an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdf
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
 
Clustering techniques data mining book ....
Clustering techniques data mining book ....Clustering techniques data mining book ....
Clustering techniques data mining book ....
 
DNT_Corporate presentation know about us
DNT_Corporate presentation know about usDNT_Corporate presentation know about us
DNT_Corporate presentation know about us
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
 
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS LiveVip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
 

Fast Data Choices: 5 Strategies for Evaluating Alternative Business and Technology Options

  • 1. page FAST DATA CHOICES: FIVE STEPS FOR EVALUATING ALTERNATIVE BUSINESS AND TECHNOLOGY OPTIONS Executive Webinar Series on Fast Data
  • 2. page© 2016 VoltDB EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY 3.  Fast Data Choices: Five Steps for Evaluating Alternative Business and Technology Options 2 Dennis Duckworth, Director Product Marketing VoltDB Mike Bowen, Lead Architect, Full360 See  it  here:  voltdb.com/webinars  
  • 3. page© 2016 VoltDB EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY 1.  Fast Data for Competitive Advantage: 4 Steps to Expand your Opportunity 2.  How First to Value Beats First to Market: Case Studies of Fast Data Success 3.  Fast Data Choices: Five Steps for Evaluating Alternative Business and Technology Options 3
  • 4. page© 2016 VoltDB EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY 1.  Fast Data for Competitive Advantage: 4 Steps to Expand your Opportunity 4 Bruce Reading, CEO VoltDB David Peters, CEO Emagine International See  it  here:  voltdb.com/webinars  
  • 5. Because we need to interact with the customer in the moment – when it really counts Emagine International Real-time Event Decisioning - why does Real-time matter?
  • 6. Emagine Real-time DB Selection Framework Key Requirements: Speed: Sub 250 millisecond response times TPS = Millions Data Integrity Fit: Real-time analytics and execution complementing batch technology - based on LAMBDA architecture Implementation support (post sales)
  • 7. page© 2016 VoltDB EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY 2.  How First to Value Beats First to Market: Case Studies of Fast Data Success 7 Peter Vescuso, CMO VoltDB Niall Norton, CEO Openet See  it  here:  voltdb.com/webinars  
  • 8. 8  ©  Copyright  2016  Openet  –  Company  ConfidenCal     For  Use  Under  Non-­‐Disclosure  Only   •  Smarter  Engagement  with  Customers  –  use  smart  data  and  enable  a   beJer  customer  experience  and  enable  service  providers  to  compete  for  a   bigger  share  of  customers’  digital  spend.   Smarter  Engagement  with  Customers   How  do  you  become  more  relevant  to  your  customers?  
  • 9. 9  ©  Copyright  2016  Openet  –  Company  ConfidenCal     For  Use  Under  Non-­‐Disclosure  Only   • Smarter  Engagement  with  Real-­‐ <me  Data  –  understand  customer   context  in  real-­‐Cme.  Use  this  to   push  personalized,  contextually   aware  offers.   Smarter  Engagement  with  Fast  Data  
  • 10. 10  ©  Copyright  2016  Openet  –  Company  ConfidenCal     For  Use  Under  Non-­‐Disclosure  Only   •  Telecoms  is  transforming   •  Everyone  has  a  strategy  but  needs  the   flexibility  to  adapt  in  Cmes  of  change   •  Those  who  don’t  best  adapt  to  change  will  be   leU  behind   •  Legacy  way  of  doing  business  and  systems  will   soon  be  obsolete   •  Not  just  about  big  data.  It’s  using  data  in  a   fast  and  smart  way  to  drive  change  and  open   new  revenue  streams   •  It’s  about  enabling  change   Summing  Up  –  Openet  and  VoltDB  
  • 11. page© 2016 VoltDB EXECUTIVE WEBINAR SERIES: FAST DATA STRATEGY 1.  Fast Data for Competitive Advantage: 4 Steps to Expand your Opportunity 2.  How First to Value Beats First to Market: Case Studies of Fast Data Success 3.  Fast Data Choices: Five Steps for Evaluating Alternative Business and Technology Options 11
  • 12. page© 2016 VoltDB FIVE STEPS TO FAST DATA SUCCESS 1.  Identify your fast data opportunity 2.  Assess your existing infrastructure 3.  Get agreement on success criteria 4.  Understand the business and technical implications 5.  Prototype, Pilot, Refine 12
  • 13. page© 2016 VoltDB 1. IDENTIFY YOUR FAST DATA OPPORTUNITY •  Fast data applications share characteristics: •  Need to respond in real-time to streams of data events •  Not [just] a dashboard or look-up app •  Emphasis on real-time action •  Assemble your candidates and vet with team •  Which is the most urgent? •  Needs real business value (ROI) with reasonable timeline (TTV) and investment (TCO) 13
  • 14. page© 2016 VoltDB IT TAKES A TEAM! BUSINESS  +  TECHNICAL  =  3 •  Business side knows what the business needs to do...and what it can/cannot afford (time, money) •  Technical side knows about existing systems and what is/not possible •  Keep each other grounded in reality... •  Financial, Customer, Competitive environment •  Physics, Technology capabilities/ limitations 14
  • 15. page© 2016 VoltDB 2. ASSESS EXISTING INFRASTRUCTURE •  You don’t need to rip/replace everything •  Try to make use of existing systems that work well, quickly and reliably, like data warehouses •  Know when best-of-breed components beat all-in-one •  Avoid complexity, keep it simple enough – but no simpler 15
  • 16. page© 2016 VoltDB 3. GET AGREEMENT ON SUCCESS CRITERIA •  Describe the project’s primary purpose •  Scope the project– narrow to pain points that need to be solved •  Define success – meaningful and achievable •  Identify sub-projects and build a timetable •  Identify risks to existing production systems and isolate them •  Don’t forget test & QA •  Build a success profile so you know it when you see it •  Document everything 16
  • 17. page© 2016 VoltDB 4. UNDERSTAND THE BUSINESS & TECHNOLOGY IMPLICATIONS •  Are you solving an analytics problem or a transactional problem? •  Real-time or batch? Can you afford to wait for correct answers? •  Is data integrity important? Is correct data in real-time a must-have, a nice-to-have, a who-needs-it? •  Think about: FOSS or commercial version? •  Best-of-breed products vs. DIY Apache stack? •  Beware Complexity as well as over-simplifications (one product that does many things...poorly) •  Cloud or on-premises or both (hybrid)? •  Do your people have the necessary skills? •  Don’t forget reference checks – analysts, users like you, open source community 17
  • 18. page© 2016 VoltDB 5. PROTOTYPE, PILOT, REFINE •  Prototype, don’t PoC •  Be realistic about resources and timelines •  Download software and pilot your use cases •  Test results against your success profile •  Successful? •  Yes: Congratulations! Next stop, production •  No: Post-mortem and try again 18
  • 20. FULL 360 WHO Data Guys focused on AWS Cloud Cloud Since 2007 DW / BI / Financial Apps Wall Street + F500 Experience WHAT Multi-Tier DW Managed Services Data Management Platform DevOps / IOT / Next Gen Big Data / Wide Data / Fast Data
  • 21. THREE CASE STUDIES Gaming – Events Processing Aviation - Mobile Streaming Aviation - Microservices
  • 22. ONLINE GAMING Gaming Events Analysis •  Bingo / Slots •  Realtime Economy •  Realtime Decisions
  • 23. ONLINE GAMING High Performance Simply Done •  95 Game Events •  Volt Java Classes + SQL •  Full360 Tools •  30K TPS speed (2 x M1.xlarge) •  9 M rows / day = 3.285 B / year
  • 25. MEMBER FULFILLMENT (HUB) •  Embedded in Full360 Platform (Actor Model) •  Amazon SQS (Simple Queue Service) •  Send promotional template to mobile app (4K payload) •  11 million members •  Multiple target channels •  Mobile App •  REST APIs
  • 27. HUB PERFORMANCE •  3.75 Million Messages: 14 sec •  Single instance M4.xlarge •  More than SQS can handle •  More economical than DynamoDB
  • 28. FREQUENT FLYER MICROSERVICES •  Enable realtime burn channels •  Best practices for point burn & earn •  Enable tailored offers in realtime •  Support batch synch •  Allow independent function
  • 29. LESSONS LEARNED •  Java + SQL = Low TCO •  Integrated System = Easy Debugging •  Currency Transactions Require ACID •  VoltDB simplifies endpoints •  Upstream Control •  Transformations in Streaming
  • 31. page© 2016 VoltDB GET THE FACTS – IN THE FAST DATA STRATEGY GUIDE •  You will get more detail about all of these steps in a Fast Data Strategy Guide •  Coming soon to an email box near you 31
  • 32. page© 2016 VoltDB QUESTIONS? •  Use the chat window to type in your questions •  Try VoltDB yourself: Ø  Free trial of the Enterprise Edition: •  voltdb.com/download •  Email us at: info@voltdb.com •  Watch the Executive Webinar Series (again): voltdb.com/webinars 32