SlideShare une entreprise Scribd logo
1  sur  26
1Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
The Power of your Data Achieved –
Next Gen Modernization
October 2016
2Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Karim Damji, Saama
Karim is VP, Product Management, and joined Saama from
Plantronics, where he led software strategy and product
management, focusing on driving developer platforms,
strategic partner integrations and contextually enabled UC
solutions.
Prior to joining Plantronics, Karim served in leadership
positions spanning business development, product
management, sales and network engineering at Cisco, Vocera
Communications, MobileIron and DiVitas. Karim spent 7 years
at Cisco building global VoIP and WAN networks, eventually
transitioning to product architecture positions. At Vocera
Communications, Karim was the founding product manager
responsible for driving product concept to market-leading
solutions.
Eric Thorsen, Hortonworks
Eric Thorsen is VP, Industry Solutions at Hortonworks,
with a specialty in Retail and Consumer Products.
Eric holds over 25 years of technology expertise. Prior to
joining Hortonworks, Eric was a VP with SAP, managing
strategic customers in Retail and CP industries. Focusing
on business value and impact of technology on business
imperatives, Eric has counseled grocers, e-commerce,
durables and hardline manufacturers, as well as fashion
and specialty retailers.
Eric’s focus on open source big data provides strategic
direction for revenue and margin gain, greater consumer
loyalty, and cost-takeout opportunities.
Today’s Speakers
3Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Agenda
Modern Data Trends
What a Modern Data Platform Looks Like
Case Studies
Key Takeaways
4Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
4ZB
DATA
44ZB
DATA
TOMORROW
INTERNET
OF
ANYTHING
5Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Polling #1 – Maturity Curve
How mature is your organization regarding Hadoop – open source data management?
1. Aware – Big data is discussed but not reflected in the business strategy. There is
general awareness of the benefits of Big Data.
2. Exploring – The enterprise recognizes the potential for data to be used to generate
business insights.
3. Optimizing – The enterprise business strategy encourages the use of insights from data
within business processes.
4. Transforming – Data drives continuous business model innovation and competitive
advantage.
6Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Data Drives the Connected Car
Insurance
Premiums
Warranties
Recalls
Pricing
Models
Design
Innovation
Autonomous
Driving
Connected
City Infotainment
Sensors
Scheduled
Maintenance
Predictive
Maintenance
Route
Optimization
INSURANCE
COMPANIES
GOVERNMENT
AGENCIES
INFOTAINMENT
PROVIDERS
SOFTWARE
COMPANIES
AUTO
MAKERS
7Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 7Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Modern Data Applications
deliver the value of actionable
intelligence only possible with
both data in motion and data at
rest.
The Connected Car is
an example of
a Modern Data
Application
DATA IN MOTION DATA AT REST
8Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 8Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Modern Data
Applications require
architectures that
connect the cloud with
the data center.
CONNECTING THE CLOUD
WITH THE DATA CENTER
Modern Data
Applications
and the Data
Architecture
9Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Survey #2 - Cloud
How does your organization approach cloud?
1. All on-site and intend to stay that way
2. Primarily on-premise, but have some cloud applications
3. Hybrid mode between cloud and on-premise but trending towards cloud
4. “Cloud-first” strategy
10Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 10Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Hortonworks solutions come
with enterprise-ready security,
governance,
and operations, to deliver
Actionable Intelligence with
confidence
Ready for
Any Enterprise
11Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Merck’s Journey
Improving Life Sciences Manufacturing Yields
Presents a Complex Data Discovery Challenge
Vaccine manufacturing requires precise control of complex fermentation processes
Two batches of a vaccine, produced using an identical manufacturing process, can exhibit
significant yield variances
Batches that fail quality standards can cost $1 million each
Merck analyzed one vaccine: 10 years of manufacturing data stored across 16 systems
12Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Merck’s Journey
Scientific
Search
Sensor Data
Storage
Vaccine Yield
Optimization
Innovate
Renovate
The Journey to
the Golden Batch
Combined 10 years data
amounted to 1 billion records
5.5 million batch comparisons
1st year yield boost of 40K more
doses  $10M profit impact
McKinsey: 50% yield improvement
Epidemiology
D ATA
D I S C OV E RY
A C T I V E
A R C H I V E
D A T A
D I S C O V E R Y
D A T A
D I S C O V E R Y
The Golden
Batch
13Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Cardinal Health’s Journey
Data Ingest Constrained Analysis of the Medical Supply Chain at Fuse by Cardinal
Health
Cardinal Health supplies equipment and medicines to 85% of US hospitals and clinics
Limited visibility into the entire supply chain prevented suppliers from understanding how their
drugs were prescribed
Acute pharmacists couldn’t see all the product options that they could prescribe for various
conditions
14Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Cardinal Health’s Journey
Drug Supply
Chain Analytics
Sensor Data
Ingest
Prescription
Archive
Pandemic
Response
Outcome-based
Medicine
Clinical Decision
Support
Public
Data
Ingest
Drug Cost
Optimization
Single
Patient
Record
Cardinal Health
Launched a New Line
of Business
Fuse by Cardinal Health aims to
make healthcare safer and more
cost-effective
Team enriches supply chain data with
public sources – bringing suppliers,
providers and patients closer together
Data processing speeds doubled
Fuse shows suppliers how their drugs
are used
Innovate
Renovate
Balanced
Medical Supply
Chain
PREDICTIVE
ANALYTICS
P R E D I C T I V E
A N A L Y T I C S
E T L
O N B O A R D
D A T A
D I S C O V E R Y
D A T A
E N R I C H M E N T
D A T A
E N R I C H M E N T
A C T I V E
A R C H I V E
P R E D I C T I V E
A N A L Y T I C S
S I N G L E
V I E W
15Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Mercy’s Journey
Mercy Medical System Sought a Data Lake for a Single View of its Patients – “One
Patient, One Record”
Existing platform impeded goal of enriching Epic data for 1 million patients over 35
Hospitals and 500 clinics
Moving Epic EMR data to Clarity EDW took 24 hours and was “never going to enable
real-time analytics”. Now that takes 3-5 minutes with HDP
Improved billing processes resulted in $1M additional annual revenue
from newly documented secondary diagnoses and care
16Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
PREDICTIVE
ANALYTICS
Mercy’s Journey
Billing Vital
Signs
Single
Patient
Record
Lab
Notes
Privacy
Database
Medical
Decision
Support
Device
Data
Ingest
Preventive
Care
Epic
Enrichment
OPEX
Efficiency
Epic EMR
Replication
Better Health
Through Data
Searches of free-text lab notes,
speed researcher insight from
“never” to “seconds”
Ingest of ICU vital signs
increased by 900X, letting clinicians
respond more quickly
Mercy is building real-time
tools to support surgical decisions
and preventive care
Innovate
Renovate
Better Health
D A T A
D I S C O V E R Y
S I N G L E
V I E W
D A T A
D I S C O V E R Y
S I N G L E
V I E W
A C T I V E
A R C H I V E
A C T I V E
A R C H I V E
A C T I V E
A R C H I V E
D A T A
E N R I C H M E N T
E T L
O N B O A R D
P R E D I C T I V E
A N A L Y T I C S
17Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 17Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Payment
Tracking
Due
Diligence
Social
Mapping
Product
Design
M & ACall
Analysis
Machine
Data
Defect
Detecting
Factory
Yields
Customer
Support
Basket
Analysis
Segments
Customer
Retention
Sentiment
Analysis
Optimize
Inventories
Supply
Chain
Cross-
Sell
Vendor
Scorecards
Ad
Placement
Cyber
Security
Disaster
Mitigation
Investment
Planning
Ad
Placement
Risk
Modeling
Proactive
Repair
Inventory
Predictions
Next
Product Recs
OPEX
Reduction
Historical
Records
Mainframe
Offloads
Device
Data
Ingest
Rapid
Reporting
Digital
Protection
Data
as a
Service
Fraud
Prevention
Public
Data
Capture
INNOVATE
RENOVATE
E X P LOR E OP T I M I Z E T R A N S F OR M
ACTIVE
ARCHIVE
ETL
ONBOARD
DATA
ENRICHMENT
DATA
DISCOVERY
SINGLE
VIEW
PREDICTIVE
ANALYTICS
M&A
Storage
Blending
M&A
Ingest
Integration
18Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Practical Approach to Modernization
We’ve looked at the reasons for modernization
Following slides cover a real customer success story and our approach to modernization in
a real life scenario
Including what the customers tell us about the benefits they achieved
19Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Source Systems
Case Study – A Large Insurance Company
RDBMS
DATA Files
Enterprise Data
Warehouse
Data Mart
Data Mart
Data Mart
Business Requirements
10-12% Rationalized and
Transformed
Aggregated
Need Additional Attributes
1
High Data Fidelity
for Modeling
2
Analyzing
Unstructured Data
3
Unknown
Unknowns
Landing
Zone
20Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Survey #3 – Business Agility
Are you able serve your business’ ever evolving analytics need?
1. Very Well – Architecture is very flexible and able to serve most fast changing business
needs
2. Well Enough – Able to serve 50 to 60% of the changing business needs
3. Not so well – Able to serve 10 to 20% of the changing business needs
4. Not at all – Business requirements driven, new needs require a full change
management process
21Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Saama’s Modern Analytics Framework
Connectors for
multiple sources:
• Structured
• Unstructured
• Real Time
geospatial
• Syndicated
• Social Media
Elastic Search and
Indexing
Fast (Millisecond)
Search
Highly Scalable for
massive amounts of
data
Distributed and
Scalable Processing
Consuming and
Storing Large Data
Sets
Access to Raw
Granular Data
Self-Service for
Modeling and Data
Science
Fluid Analytics
Data Extraction Layer Business Intelligence/Analytics Layer
Data Aggregation Layer Layer
Raw Transactional Data Layer – Lowest Grain
Data Integration
Data Storage
COBOL / VSAM / DB2, PIG, SQOOP, STORM, MAP - REDUCE
DATAACQUISITION Profit Stats Loss Stats Scorecards Quote Conversions Ratios Customer 360 Product 360 Others
FILE SYSTEM
Sales
Legacy Data
Marketing Booking Quotes Customer Service IVR Web Logs D&B Syndicated
Structured Data Unstructured Data External Data
Reference Data
Master Data
Hierarchies
Notes Images IVR
Web & Mobile System Logs
D&B
Social Others
PUSH AND/OR PULL PUSH AND/OR PULL
Billing Backlog
Syndicated
PUSH AND/OR PULL
Schema on Read
Future Proofing
Analytics
Highly flexible for
exploring unknown-
unknowns
DATAWAREHOUSE/DATALAKE
22Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
What our Customers Told Us
Fraud Analytics
We are now focusing on the
right claims to investigate
and catch more fraudulent
claims based on the
predictive scoring model,
the uptick is already +0.5%
on actual fraud caught
Agency Dashboard
Real-time search of the
customer/ prospect has
hugely helped us in serving
and upselling, while
substantially increasing
customer satisfaction and
engagement
Decommission
The platform has enabled
us to accelerate the
decommissioning to legacy
systems while adhering to
regulatory requirements,
saving us 10s of millions
Subrogation
We are already see an
uptick in subrogation claims
by 5%, saving us close to
$10 million, thanks to
machine learning
algorithms and analytics
Special Investigation Unit Insurance Agent CIO Head of Claims
Machine Learning and
Modeling
Elastic Search
Low Cost Hot/Warm
Storage
Raw Streaming Data
23Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Key Takeaways
Modernizing Analytics is more of a need than a want
Modern Analytics are based on the Hadoop Ecosystem
To deliver Modern Analytics, Saama’s Framework builds on top of the Hadoop ecosystem and
adds
• Schema on Read - Data Models
• Elastic Search
• Data Flows
• Algorithms
• Aggregation
• Analytics
Saama can deliver a complete Modernization of Analytics using Saama’s Framework and
Hortonworks HDP
24Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
About Saama
5000+
Engagements
900+
Employees
50+
Global 250
3000+
Algorithms
1
Purpose
Accelerating Business Outcomes using
Data Driven Insights
25Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
About Hortonworks
Leader in Connected Data Platforms
Publicly traded on NASDAQ: HDP
Hortonworks DataFlow for data in motion
Hortonworks Data Platform for data at rest
Powering new modern data applications
Partnering for Customer Success
Leader in open-source community, focused
on innovation to meet enterprise needs
Unrivaled support subscriptions
Founded in 2011
Original 24 Architects, Developers,
Operators of Hadoop from Yahoo!
950+
E M P L O Y E E S
1500+
E C O S Y S T E M
PA R T N E R S
26Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved
Q&A
Or questions to
crystal.black@saama.com

Contenu connexe

Tendances

Transform You Business with Big Data and Hortonworks
Transform You Business with Big Data and HortonworksTransform You Business with Big Data and Hortonworks
Transform You Business with Big Data and Hortonworks
Hortonworks
 
Global Data Management – a practical framework to rethinking enterprise, oper...
Global Data Management – a practical framework to rethinking enterprise, oper...Global Data Management – a practical framework to rethinking enterprise, oper...
Global Data Management – a practical framework to rethinking enterprise, oper...
DataWorks Summit
 
Hilton's enterprise data journey
Hilton's enterprise data journeyHilton's enterprise data journey
Hilton's enterprise data journey
DataWorks Summit
 
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017 Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
Hortonworks
 
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
DataWorks Summit/Hadoop Summit
 

Tendances (20)

Big Data, Hadoop, Hortonworks and Microsoft HDInsight
Big Data, Hadoop, Hortonworks and Microsoft HDInsightBig Data, Hadoop, Hortonworks and Microsoft HDInsight
Big Data, Hadoop, Hortonworks and Microsoft HDInsight
 
Leverage Big Data to Enhance Customer Experience in Telecommunications – with...
Leverage Big Data to Enhance Customer Experience in Telecommunications – with...Leverage Big Data to Enhance Customer Experience in Telecommunications – with...
Leverage Big Data to Enhance Customer Experience in Telecommunications – with...
 
Transform You Business with Big Data and Hortonworks
Transform You Business with Big Data and HortonworksTransform You Business with Big Data and Hortonworks
Transform You Business with Big Data and Hortonworks
 
Hadoop 2.0: YARN to Further Optimize Data Processing
Hadoop 2.0: YARN to Further Optimize Data ProcessingHadoop 2.0: YARN to Further Optimize Data Processing
Hadoop 2.0: YARN to Further Optimize Data Processing
 
Global Data Management – a practical framework to rethinking enterprise, oper...
Global Data Management – a practical framework to rethinking enterprise, oper...Global Data Management – a practical framework to rethinking enterprise, oper...
Global Data Management – a practical framework to rethinking enterprise, oper...
 
The Value of the Modern Data Architecture with Apache Hadoop and Teradata
The Value of the Modern Data Architecture with Apache Hadoop and Teradata The Value of the Modern Data Architecture with Apache Hadoop and Teradata
The Value of the Modern Data Architecture with Apache Hadoop and Teradata
 
How Customers are Optimizing their EDW for Fast, Secure, and Effective Insights
How Customers are Optimizing their EDW for Fast, Secure, and Effective InsightsHow Customers are Optimizing their EDW for Fast, Secure, and Effective Insights
How Customers are Optimizing their EDW for Fast, Secure, and Effective Insights
 
Fighting Financial Crime with Artificial Intelligence
Fighting Financial Crime with Artificial IntelligenceFighting Financial Crime with Artificial Intelligence
Fighting Financial Crime with Artificial Intelligence
 
Webinar turbo charging_data_science_hawq_on_hdp_final
Webinar turbo charging_data_science_hawq_on_hdp_finalWebinar turbo charging_data_science_hawq_on_hdp_final
Webinar turbo charging_data_science_hawq_on_hdp_final
 
Hadoop Summit Tokyo HDP Sandbox Workshop
Hadoop Summit Tokyo HDP Sandbox Workshop Hadoop Summit Tokyo HDP Sandbox Workshop
Hadoop Summit Tokyo HDP Sandbox Workshop
 
Hadoop and Data Virtualization - A Case Study by VHA
Hadoop and Data Virtualization - A Case Study by VHAHadoop and Data Virtualization - A Case Study by VHA
Hadoop and Data Virtualization - A Case Study by VHA
 
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
 
Hadoop Crash Course
Hadoop Crash CourseHadoop Crash Course
Hadoop Crash Course
 
Hybrid Cloud Strategy for Big Data and Analytics
Hybrid Cloud Strategy for Big Data and Analytics Hybrid Cloud Strategy for Big Data and Analytics
Hybrid Cloud Strategy for Big Data and Analytics
 
The Challenge of Driving Business Value from the Analytics of Things (AOT)
The Challenge of Driving Business Value from the Analytics of Things (AOT)The Challenge of Driving Business Value from the Analytics of Things (AOT)
The Challenge of Driving Business Value from the Analytics of Things (AOT)
 
Hilton's enterprise data journey
Hilton's enterprise data journeyHilton's enterprise data journey
Hilton's enterprise data journey
 
Eliminating the Challenges of Big Data Management Inside Hadoop
Eliminating the Challenges of Big Data Management Inside HadoopEliminating the Challenges of Big Data Management Inside Hadoop
Eliminating the Challenges of Big Data Management Inside Hadoop
 
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017 Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
Enterprise Data Science at Scale Meetup - IBM and Hortonworks - Oct 2017
 
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
A Tale of Two Regulations: Cross-Border Data Protection For Big Data Under GD...
 
Zementis hortonworks-webinar-2014-09
Zementis hortonworks-webinar-2014-09Zementis hortonworks-webinar-2014-09
Zementis hortonworks-webinar-2014-09
 

En vedette

Big Data and Cloud Computing
Big Data and Cloud ComputingBig Data and Cloud Computing
Big Data and Cloud Computing
Farzad Nozarian
 

En vedette (20)

Dynamic Column Masking and Row-Level Filtering in HDP
Dynamic Column Masking and Row-Level Filtering in HDPDynamic Column Masking and Row-Level Filtering in HDP
Dynamic Column Masking and Row-Level Filtering in HDP
 
S3Guard: What's in your consistency model?
S3Guard: What's in your consistency model?S3Guard: What's in your consistency model?
S3Guard: What's in your consistency model?
 
Hortonworks Data Cloud for AWS
Hortonworks Data Cloud for AWS Hortonworks Data Cloud for AWS
Hortonworks Data Cloud for AWS
 
Getting involved with Open Source at the ASF
Getting involved with Open Source at the ASFGetting involved with Open Source at the ASF
Getting involved with Open Source at the ASF
 
Scaling real time streaming architectures with HDF and Dell EMC Isilon
Scaling real time streaming architectures with HDF and Dell EMC IsilonScaling real time streaming architectures with HDF and Dell EMC Isilon
Scaling real time streaming architectures with HDF and Dell EMC Isilon
 
Apache Ambari: Past, Present, Future
Apache Ambari: Past, Present, FutureApache Ambari: Past, Present, Future
Apache Ambari: Past, Present, Future
 
Pivotal - Advanced Analytics for Telecommunications
Pivotal - Advanced Analytics for Telecommunications Pivotal - Advanced Analytics for Telecommunications
Pivotal - Advanced Analytics for Telecommunications
 
How to Use Apache Zeppelin with HWX HDB
How to Use Apache Zeppelin with HWX HDBHow to Use Apache Zeppelin with HWX HDB
How to Use Apache Zeppelin with HWX HDB
 
Hortonworks Data in Motion Webinar Series Part 7 Apache Kafka Nifi Better Tog...
Hortonworks Data in Motion Webinar Series Part 7 Apache Kafka Nifi Better Tog...Hortonworks Data in Motion Webinar Series Part 7 Apache Kafka Nifi Better Tog...
Hortonworks Data in Motion Webinar Series Part 7 Apache Kafka Nifi Better Tog...
 
Edw Optimization Solution
Edw Optimization Solution Edw Optimization Solution
Edw Optimization Solution
 
How to manage Hortonworks HDB Resources with YARN
How to manage Hortonworks HDB Resources with YARNHow to manage Hortonworks HDB Resources with YARN
How to manage Hortonworks HDB Resources with YARN
 
Hive - 1455: Cloud Storage
Hive - 1455: Cloud StorageHive - 1455: Cloud Storage
Hive - 1455: Cloud Storage
 
Credit Card Analytics on a Connected Data Platform
Credit Card Analytics on a Connected Data PlatformCredit Card Analytics on a Connected Data Platform
Credit Card Analytics on a Connected Data Platform
 
Hortonworks Data In Motion Series Part 4
Hortonworks Data In Motion Series Part 4Hortonworks Data In Motion Series Part 4
Hortonworks Data In Motion Series Part 4
 
Webinar Series Part 5 New Features of HDF 5
Webinar Series Part 5 New Features of HDF 5Webinar Series Part 5 New Features of HDF 5
Webinar Series Part 5 New Features of HDF 5
 
Crash Course in Cloud Computing
Crash Course in Cloud ComputingCrash Course in Cloud Computing
Crash Course in Cloud Computing
 
Cloud Computing And Virtualization
Cloud Computing And VirtualizationCloud Computing And Virtualization
Cloud Computing And Virtualization
 
Data Virtualization Primer - Introduction
Data Virtualization Primer - IntroductionData Virtualization Primer - Introduction
Data Virtualization Primer - Introduction
 
Cloud Computing & Big Data
Cloud Computing & Big DataCloud Computing & Big Data
Cloud Computing & Big Data
 
Big Data and Cloud Computing
Big Data and Cloud ComputingBig Data and Cloud Computing
Big Data and Cloud Computing
 

Similaire à The Power of your Data Achieved - Next Gen Modernization

Defining a Digitalization Reference Architecture for the Pharma Industry
Defining a Digitalization Reference Architecture for the Pharma IndustryDefining a Digitalization Reference Architecture for the Pharma Industry
Defining a Digitalization Reference Architecture for the Pharma Industry
Capgemini
 
NI Automated Test Outlook 2016
NI Automated Test Outlook 2016NI Automated Test Outlook 2016
NI Automated Test Outlook 2016
Hank Lydick
 
STS. Smarter devices. Smarter test systems.
STS. Smarter devices. Smarter test systems.STS. Smarter devices. Smarter test systems.
STS. Smarter devices. Smarter test systems.
Hank Lydick
 
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaperFuture-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
Jane Roberts
 

Similaire à The Power of your Data Achieved - Next Gen Modernization (20)

Modernizing Architecture for a Complete Data Strategy
Modernizing Architecture for a Complete Data StrategyModernizing Architecture for a Complete Data Strategy
Modernizing Architecture for a Complete Data Strategy
 
Predictable Disruption - Tech Vision 2016 Trend 4
Predictable Disruption - Tech Vision 2016 Trend 4Predictable Disruption - Tech Vision 2016 Trend 4
Predictable Disruption - Tech Vision 2016 Trend 4
 
Predictable Disruption - Tech Vision 2016 Trend 4
Predictable Disruption - Tech Vision 2016 Trend 4Predictable Disruption - Tech Vision 2016 Trend 4
Predictable Disruption - Tech Vision 2016 Trend 4
 
2559 Big Data Pack
2559 Big Data Pack2559 Big Data Pack
2559 Big Data Pack
 
Drug Discovery Innovation in a Precompetitive Cloud Platform (LFS302-S) - AWS...
Drug Discovery Innovation in a Precompetitive Cloud Platform (LFS302-S) - AWS...Drug Discovery Innovation in a Precompetitive Cloud Platform (LFS302-S) - AWS...
Drug Discovery Innovation in a Precompetitive Cloud Platform (LFS302-S) - AWS...
 
Strategic Sourcing in the Digital Economy
Strategic Sourcing in the Digital EconomyStrategic Sourcing in the Digital Economy
Strategic Sourcing in the Digital Economy
 
Choice View Pitch
Choice View PitchChoice View Pitch
Choice View Pitch
 
DSS Newsletter v12
DSS Newsletter v12DSS Newsletter v12
DSS Newsletter v12
 
Powering the Future of Data  
Powering the Future of Data	   Powering the Future of Data	   
Powering the Future of Data  
 
Defining a Digitalization Reference Architecture for the Pharma Industry
Defining a Digitalization Reference Architecture for the Pharma IndustryDefining a Digitalization Reference Architecture for the Pharma Industry
Defining a Digitalization Reference Architecture for the Pharma Industry
 
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS SubmissionManaging The Risk of Open Payments - Validate Spend Report Before CMS Submission
Managing The Risk of Open Payments - Validate Spend Report Before CMS Submission
 
Oracle big data publix sector 1
Oracle big data publix sector 1Oracle big data publix sector 1
Oracle big data publix sector 1
 
SAP Fuqua Tech Symposium 2016 Keynote: Driving Live Customer Experiences
SAP Fuqua Tech Symposium 2016 Keynote: Driving Live Customer ExperiencesSAP Fuqua Tech Symposium 2016 Keynote: Driving Live Customer Experiences
SAP Fuqua Tech Symposium 2016 Keynote: Driving Live Customer Experiences
 
North america data centre server Market PPT 2021: Size, Growth, Demand and F...
North america data centre server  Market PPT 2021: Size, Growth, Demand and F...North america data centre server  Market PPT 2021: Size, Growth, Demand and F...
North america data centre server Market PPT 2021: Size, Growth, Demand and F...
 
NI Automated Test Outlook 2016
NI Automated Test Outlook 2016NI Automated Test Outlook 2016
NI Automated Test Outlook 2016
 
STS. Smarter devices. Smarter test systems.
STS. Smarter devices. Smarter test systems.STS. Smarter devices. Smarter test systems.
STS. Smarter devices. Smarter test systems.
 
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaperFuture-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
Future-proof-Architecture-for-Streaming-Data-Analytics-WhitePaper
 
People First: The Primacy of People in the Communications Industry
People First: The Primacy of People  in the Communications IndustryPeople First: The Primacy of People  in the Communications Industry
People First: The Primacy of People in the Communications Industry
 
Enabling patient-centricity-pfizer
Enabling patient-centricity-pfizerEnabling patient-centricity-pfizer
Enabling patient-centricity-pfizer
 
Enabling Patient Centricity for Pfizer through AWS Cloud (LFS301-S-i) - AWS r...
Enabling Patient Centricity for Pfizer through AWS Cloud (LFS301-S-i) - AWS r...Enabling Patient Centricity for Pfizer through AWS Cloud (LFS301-S-i) - AWS r...
Enabling Patient Centricity for Pfizer through AWS Cloud (LFS301-S-i) - AWS r...
 

Plus de Hortonworks

Plus de Hortonworks (20)

Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next LevelHortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
 
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT StrategyIoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
 
Getting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with CloudbreakGetting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with Cloudbreak
 
Johns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log EventsJohns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log Events
 
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad GuysCatch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
 
HDF 3.2 - What's New
HDF 3.2 - What's NewHDF 3.2 - What's New
HDF 3.2 - What's New
 
Curing Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging ManagerCuring Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging Manager
 
Interpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical EnvironmentsInterpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical Environments
 
IBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data LandscapeIBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data Landscape
 
Premier Inside-Out: Apache Druid
Premier Inside-Out: Apache DruidPremier Inside-Out: Apache Druid
Premier Inside-Out: Apache Druid
 
Accelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at ScaleAccelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at Scale
 
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATATIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
 
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
 
Delivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: ClearsenseDelivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: Clearsense
 
Making Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with EaseMaking Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with Ease
 
Webinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World PresentationWebinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World Presentation
 
Driving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data ManagementDriving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data Management
 
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming FeaturesHDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
 
Unlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDCUnlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDC
 
4 Essential Steps for Managing Sensitive Data
4 Essential Steps for Managing Sensitive Data4 Essential Steps for Managing Sensitive Data
4 Essential Steps for Managing Sensitive Data
 

Dernier

CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
giselly40
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 

Dernier (20)

Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 

The Power of your Data Achieved - Next Gen Modernization

  • 1. 1Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved The Power of your Data Achieved – Next Gen Modernization October 2016
  • 2. 2Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Karim Damji, Saama Karim is VP, Product Management, and joined Saama from Plantronics, where he led software strategy and product management, focusing on driving developer platforms, strategic partner integrations and contextually enabled UC solutions. Prior to joining Plantronics, Karim served in leadership positions spanning business development, product management, sales and network engineering at Cisco, Vocera Communications, MobileIron and DiVitas. Karim spent 7 years at Cisco building global VoIP and WAN networks, eventually transitioning to product architecture positions. At Vocera Communications, Karim was the founding product manager responsible for driving product concept to market-leading solutions. Eric Thorsen, Hortonworks Eric Thorsen is VP, Industry Solutions at Hortonworks, with a specialty in Retail and Consumer Products. Eric holds over 25 years of technology expertise. Prior to joining Hortonworks, Eric was a VP with SAP, managing strategic customers in Retail and CP industries. Focusing on business value and impact of technology on business imperatives, Eric has counseled grocers, e-commerce, durables and hardline manufacturers, as well as fashion and specialty retailers. Eric’s focus on open source big data provides strategic direction for revenue and margin gain, greater consumer loyalty, and cost-takeout opportunities. Today’s Speakers
  • 3. 3Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Agenda Modern Data Trends What a Modern Data Platform Looks Like Case Studies Key Takeaways
  • 4. 4Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 4ZB DATA 44ZB DATA TOMORROW INTERNET OF ANYTHING
  • 5. 5Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Polling #1 – Maturity Curve How mature is your organization regarding Hadoop – open source data management? 1. Aware – Big data is discussed but not reflected in the business strategy. There is general awareness of the benefits of Big Data. 2. Exploring – The enterprise recognizes the potential for data to be used to generate business insights. 3. Optimizing – The enterprise business strategy encourages the use of insights from data within business processes. 4. Transforming – Data drives continuous business model innovation and competitive advantage.
  • 6. 6Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Data Drives the Connected Car Insurance Premiums Warranties Recalls Pricing Models Design Innovation Autonomous Driving Connected City Infotainment Sensors Scheduled Maintenance Predictive Maintenance Route Optimization INSURANCE COMPANIES GOVERNMENT AGENCIES INFOTAINMENT PROVIDERS SOFTWARE COMPANIES AUTO MAKERS
  • 7. 7Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 7Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Modern Data Applications deliver the value of actionable intelligence only possible with both data in motion and data at rest. The Connected Car is an example of a Modern Data Application DATA IN MOTION DATA AT REST
  • 8. 8Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 8Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Modern Data Applications require architectures that connect the cloud with the data center. CONNECTING THE CLOUD WITH THE DATA CENTER Modern Data Applications and the Data Architecture
  • 9. 9Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Survey #2 - Cloud How does your organization approach cloud? 1. All on-site and intend to stay that way 2. Primarily on-premise, but have some cloud applications 3. Hybrid mode between cloud and on-premise but trending towards cloud 4. “Cloud-first” strategy
  • 10. 10Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 10Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Hortonworks solutions come with enterprise-ready security, governance, and operations, to deliver Actionable Intelligence with confidence Ready for Any Enterprise
  • 11. 11Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Merck’s Journey Improving Life Sciences Manufacturing Yields Presents a Complex Data Discovery Challenge Vaccine manufacturing requires precise control of complex fermentation processes Two batches of a vaccine, produced using an identical manufacturing process, can exhibit significant yield variances Batches that fail quality standards can cost $1 million each Merck analyzed one vaccine: 10 years of manufacturing data stored across 16 systems
  • 12. 12Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Merck’s Journey Scientific Search Sensor Data Storage Vaccine Yield Optimization Innovate Renovate The Journey to the Golden Batch Combined 10 years data amounted to 1 billion records 5.5 million batch comparisons 1st year yield boost of 40K more doses  $10M profit impact McKinsey: 50% yield improvement Epidemiology D ATA D I S C OV E RY A C T I V E A R C H I V E D A T A D I S C O V E R Y D A T A D I S C O V E R Y The Golden Batch
  • 13. 13Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Cardinal Health’s Journey Data Ingest Constrained Analysis of the Medical Supply Chain at Fuse by Cardinal Health Cardinal Health supplies equipment and medicines to 85% of US hospitals and clinics Limited visibility into the entire supply chain prevented suppliers from understanding how their drugs were prescribed Acute pharmacists couldn’t see all the product options that they could prescribe for various conditions
  • 14. 14Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Cardinal Health’s Journey Drug Supply Chain Analytics Sensor Data Ingest Prescription Archive Pandemic Response Outcome-based Medicine Clinical Decision Support Public Data Ingest Drug Cost Optimization Single Patient Record Cardinal Health Launched a New Line of Business Fuse by Cardinal Health aims to make healthcare safer and more cost-effective Team enriches supply chain data with public sources – bringing suppliers, providers and patients closer together Data processing speeds doubled Fuse shows suppliers how their drugs are used Innovate Renovate Balanced Medical Supply Chain PREDICTIVE ANALYTICS P R E D I C T I V E A N A L Y T I C S E T L O N B O A R D D A T A D I S C O V E R Y D A T A E N R I C H M E N T D A T A E N R I C H M E N T A C T I V E A R C H I V E P R E D I C T I V E A N A L Y T I C S S I N G L E V I E W
  • 15. 15Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Mercy’s Journey Mercy Medical System Sought a Data Lake for a Single View of its Patients – “One Patient, One Record” Existing platform impeded goal of enriching Epic data for 1 million patients over 35 Hospitals and 500 clinics Moving Epic EMR data to Clarity EDW took 24 hours and was “never going to enable real-time analytics”. Now that takes 3-5 minutes with HDP Improved billing processes resulted in $1M additional annual revenue from newly documented secondary diagnoses and care
  • 16. 16Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved PREDICTIVE ANALYTICS Mercy’s Journey Billing Vital Signs Single Patient Record Lab Notes Privacy Database Medical Decision Support Device Data Ingest Preventive Care Epic Enrichment OPEX Efficiency Epic EMR Replication Better Health Through Data Searches of free-text lab notes, speed researcher insight from “never” to “seconds” Ingest of ICU vital signs increased by 900X, letting clinicians respond more quickly Mercy is building real-time tools to support surgical decisions and preventive care Innovate Renovate Better Health D A T A D I S C O V E R Y S I N G L E V I E W D A T A D I S C O V E R Y S I N G L E V I E W A C T I V E A R C H I V E A C T I V E A R C H I V E A C T I V E A R C H I V E D A T A E N R I C H M E N T E T L O N B O A R D P R E D I C T I V E A N A L Y T I C S
  • 17. 17Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved 17Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Payment Tracking Due Diligence Social Mapping Product Design M & ACall Analysis Machine Data Defect Detecting Factory Yields Customer Support Basket Analysis Segments Customer Retention Sentiment Analysis Optimize Inventories Supply Chain Cross- Sell Vendor Scorecards Ad Placement Cyber Security Disaster Mitigation Investment Planning Ad Placement Risk Modeling Proactive Repair Inventory Predictions Next Product Recs OPEX Reduction Historical Records Mainframe Offloads Device Data Ingest Rapid Reporting Digital Protection Data as a Service Fraud Prevention Public Data Capture INNOVATE RENOVATE E X P LOR E OP T I M I Z E T R A N S F OR M ACTIVE ARCHIVE ETL ONBOARD DATA ENRICHMENT DATA DISCOVERY SINGLE VIEW PREDICTIVE ANALYTICS M&A Storage Blending M&A Ingest Integration
  • 18. 18Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Practical Approach to Modernization We’ve looked at the reasons for modernization Following slides cover a real customer success story and our approach to modernization in a real life scenario Including what the customers tell us about the benefits they achieved
  • 19. 19Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Source Systems Case Study – A Large Insurance Company RDBMS DATA Files Enterprise Data Warehouse Data Mart Data Mart Data Mart Business Requirements 10-12% Rationalized and Transformed Aggregated Need Additional Attributes 1 High Data Fidelity for Modeling 2 Analyzing Unstructured Data 3 Unknown Unknowns Landing Zone
  • 20. 20Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Survey #3 – Business Agility Are you able serve your business’ ever evolving analytics need? 1. Very Well – Architecture is very flexible and able to serve most fast changing business needs 2. Well Enough – Able to serve 50 to 60% of the changing business needs 3. Not so well – Able to serve 10 to 20% of the changing business needs 4. Not at all – Business requirements driven, new needs require a full change management process
  • 21. 21Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Saama’s Modern Analytics Framework Connectors for multiple sources: • Structured • Unstructured • Real Time geospatial • Syndicated • Social Media Elastic Search and Indexing Fast (Millisecond) Search Highly Scalable for massive amounts of data Distributed and Scalable Processing Consuming and Storing Large Data Sets Access to Raw Granular Data Self-Service for Modeling and Data Science Fluid Analytics Data Extraction Layer Business Intelligence/Analytics Layer Data Aggregation Layer Layer Raw Transactional Data Layer – Lowest Grain Data Integration Data Storage COBOL / VSAM / DB2, PIG, SQOOP, STORM, MAP - REDUCE DATAACQUISITION Profit Stats Loss Stats Scorecards Quote Conversions Ratios Customer 360 Product 360 Others FILE SYSTEM Sales Legacy Data Marketing Booking Quotes Customer Service IVR Web Logs D&B Syndicated Structured Data Unstructured Data External Data Reference Data Master Data Hierarchies Notes Images IVR Web & Mobile System Logs D&B Social Others PUSH AND/OR PULL PUSH AND/OR PULL Billing Backlog Syndicated PUSH AND/OR PULL Schema on Read Future Proofing Analytics Highly flexible for exploring unknown- unknowns DATAWAREHOUSE/DATALAKE
  • 22. 22Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved What our Customers Told Us Fraud Analytics We are now focusing on the right claims to investigate and catch more fraudulent claims based on the predictive scoring model, the uptick is already +0.5% on actual fraud caught Agency Dashboard Real-time search of the customer/ prospect has hugely helped us in serving and upselling, while substantially increasing customer satisfaction and engagement Decommission The platform has enabled us to accelerate the decommissioning to legacy systems while adhering to regulatory requirements, saving us 10s of millions Subrogation We are already see an uptick in subrogation claims by 5%, saving us close to $10 million, thanks to machine learning algorithms and analytics Special Investigation Unit Insurance Agent CIO Head of Claims Machine Learning and Modeling Elastic Search Low Cost Hot/Warm Storage Raw Streaming Data
  • 23. 23Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Key Takeaways Modernizing Analytics is more of a need than a want Modern Analytics are based on the Hadoop Ecosystem To deliver Modern Analytics, Saama’s Framework builds on top of the Hadoop ecosystem and adds • Schema on Read - Data Models • Elastic Search • Data Flows • Algorithms • Aggregation • Analytics Saama can deliver a complete Modernization of Analytics using Saama’s Framework and Hortonworks HDP
  • 24. 24Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved About Saama 5000+ Engagements 900+ Employees 50+ Global 250 3000+ Algorithms 1 Purpose Accelerating Business Outcomes using Data Driven Insights
  • 25. 25Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved About Hortonworks Leader in Connected Data Platforms Publicly traded on NASDAQ: HDP Hortonworks DataFlow for data in motion Hortonworks Data Platform for data at rest Powering new modern data applications Partnering for Customer Success Leader in open-source community, focused on innovation to meet enterprise needs Unrivaled support subscriptions Founded in 2011 Original 24 Architects, Developers, Operators of Hadoop from Yahoo! 950+ E M P L O Y E E S 1500+ E C O S Y S T E M PA R T N E R S
  • 26. 26Copyright © 2016, Saama Technologies and Hortonworks Inc. All Rights Reserved Q&A Or questions to crystal.black@saama.com