SlideShare a Scribd company logo
1 of 16
© 2018 Data Dynamics, Inc. © 2018 Data Dynamics, Inc. Restricted and Confidential
5 PB Financial Optimization
Powered by Data Dynamics StorageX
© 2018 Data Dynamics, Inc.
The CIO Agenda: Data Driven Digital Enterprise
2
IT FOCUS ON ENGAGEMENT
SHORTEN TIME TO VALUE
DRIVE NEW BUSINESS
KNOW THE CUSTOMER THROUGH DATA
ACCELERATE HYBRID CLOUD
CREATE BUSINESS ANALYTICS
CAPABILITIES
© 2018 Data Dynamics, Inc.
How does your enterprise use 5PB?
3
Customer Transactions Tick / Market Data
Financial Data
Economic Data
Internal & Client
Communications
Employee Files
© 2018 Data Dynamics, Inc.
How often do you access those files?
4
SCENARIO 1:
A trader tracks daily performance
of financial models.
LAST ACCESSED DATE: < 30 Days
SCENARIO 2:
Each department accesses numbers
for quarterly earnings reports.
LAST ACCESSED DATE: 30-90 Days
SCENARIO 3:
An app continually stores
historical financial information.
LAST ACCESSED DATE: > 90 Days
© 2018 Data Dynamics, Inc.
How much of your 5PBs falls
into those access times?
5
Last Accessed PBs % of Data
> 90 Days 3.25 65%
30-90 Days 0.75 15%
< 30 Days 1.0 20%
© 2018 Data Dynamics, Inc.
ROI of Tackling Only 10% of 5PBs
6
File Servers
(SMB and NFS)
Network Attached
Storage
$0.50 / GB Month TCO
$500K / PB Month TCO
$0.05 / GB Month TCO
$50K / PB Month TCO
Save $450K / PB Month
For Each PB Moved to Object
Legacy Last
Accessed
TBs COST / PB Month
< 90 Days 500 $25K
OPTIMIZING:
MOVE 500TBS TO OBJECT AFTER 90 DAYS
Case COST / PB Month
BAU $250K
Optimized $25K
Monthly
Savings
Total: $225K
THE CASE FOR 500 TBS
VS
S3 Cloud Storage
Cloud
© 2018 Data Dynamics, Inc.
Low-Hanging Fruit: Orphaned User Data
When employees leave a firm, their
data may not be deleted.
It’s left on primary storage.
The data is backed-up, creating
multiple copies on primary and tape
storage.
7
© 2018 Data Dynamics, Inc.
Low-Hanging Fruit: Orphaned User Data
StorageX can identify files belonging to
users no longer with the firm.
Create a StorageX movement policy to
place the files on S3-compatible object
storage.
8
© 2018 Data Dynamics, Inc.
Orphaned User Data: Real-World Example
9
Top-five US
Brokerage Firm
Orphaned Data
of 4500 Users
With Totaling
2PBs
(444 GB / User Avg.)
@ $500K / PB Month TCO @ $50K / PB Month TCOVS
OLD NAS NEW OBJECT $10.8MM
Annualized Savings
$12MM
Annualized TCO
$1.2MM
Annualized TCO
© 2018 Data Dynamics, Inc.
More Low-Hanging Fruit: Tick Data
Tick data created.
Copied over and over on primary
storage.
Analyzed on scratchpad; analysis and
source data copied over and over.
10
© 2018 Data Dynamics, Inc.
More Low-Hanging Fruit: Tick Data
StorageX policy-based movement places tick
data on S3 platform with custom tagging for
recallability.
Tick data pulled as needed from S3, analyzed
on scratchpad, and placed back into S3 or
discarded as desired.
Result: create a data lake or library repository
while avoiding cost.
11
© 2018 Data Dynamics, Inc.
Real-World Example: Tick Data
12
A Large Financial Firm One App with +40 years
of Stored Tick Data
With And
Data Currently Growing @
2TB / Month (NFS)
Each App Maintains Own
Tick Data Repository ~1PB / App
© 2018 Data Dynamics, Inc.
Real-World Example: Tick Data
13
~1PB
@ $500K / PB Month TCO @ $50K / PB Month TCOVS
OLD NAS NEW OBJECT $5.4MM
Annualized Savings
$6MM
Annualized TCO
$600K
Annualized TCO
© 2018 Data Dynamics, Inc.
Business Benefits of Proactively Managing Data
14
Plan & Report
on Data Management
Set Automatic Management Policies
for Optimal Performance & Cost
Identify Critical
or Dark Data
Uncover Business
Intelligence & Analytics
Custom Tag Data for Easy
Access & Categorization
© 2018 Data Dynamics, Inc.15
© 2018 Data Dynamics, Inc.16
www.datadynamicsinc.com
sales@datdyn.com

More Related Content

What's hot

Why HR Should Consider Agile Modern Data Delivery Platform
Why HR Should Consider Agile Modern Data Delivery PlatformWhy HR Should Consider Agile Modern Data Delivery Platform
Why HR Should Consider Agile Modern Data Delivery Platformsyed_javed
 
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricUsing Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricCambridge Semantics
 
Big Data Fabric 2.0 Drives Data Democratization
Big Data Fabric 2.0 Drives Data DemocratizationBig Data Fabric 2.0 Drives Data Democratization
Big Data Fabric 2.0 Drives Data DemocratizationCambridge Semantics
 
Google BigQuery is the future of Analytics! (Google Developer Conference)
Google BigQuery is the future of Analytics! (Google Developer Conference)Google BigQuery is the future of Analytics! (Google Developer Conference)
Google BigQuery is the future of Analytics! (Google Developer Conference)Rasel Rana
 
Storage software use ‘continues to expand’
Storage software use ‘continues to expand’Storage software use ‘continues to expand’
Storage software use ‘continues to expand’John Davis
 
Business Insight
Business InsightBusiness Insight
Business InsightMicrosoft
 
Tamr | MDM and the Data Unification Imperative
Tamr | MDM and the Data Unification ImperativeTamr | MDM and the Data Unification Imperative
Tamr | MDM and the Data Unification ImperativeTamr_Inc
 
Big Query - Utilizing Google Data Warehouse for Media Analytics
Big Query - Utilizing Google Data Warehouse for Media AnalyticsBig Query - Utilizing Google Data Warehouse for Media Analytics
Big Query - Utilizing Google Data Warehouse for Media Analyticshafeeznazri
 
Big Data Ecosystem at InMobi, Nasscom ATC 2013 Noida
Big Data Ecosystem at InMobi, Nasscom ATC 2013 NoidaBig Data Ecosystem at InMobi, Nasscom ATC 2013 Noida
Big Data Ecosystem at InMobi, Nasscom ATC 2013 NoidaSharad Agarwal
 
Cortana Analytics Workshop: Azure Data Catalog
Cortana Analytics Workshop: Azure Data CatalogCortana Analytics Workshop: Azure Data Catalog
Cortana Analytics Workshop: Azure Data CatalogMSAdvAnalytics
 
Big Data Fabric: A Recipe for Big Data Initiatives
Big Data Fabric: A Recipe for Big Data InitiativesBig Data Fabric: A Recipe for Big Data Initiatives
Big Data Fabric: A Recipe for Big Data InitiativesDenodo
 
Making advanced analytics accessible to more companies
Making advanced analytics accessible to more companiesMaking advanced analytics accessible to more companies
Making advanced analytics accessible to more companiesMárton Kodok
 
DevTalks Keynote Powering interactive data analysis with Google BigQuery
DevTalks Keynote Powering interactive data analysis with Google BigQueryDevTalks Keynote Powering interactive data analysis with Google BigQuery
DevTalks Keynote Powering interactive data analysis with Google BigQueryMárton Kodok
 
Necessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services SectorNecessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services SectorDataWorks Summit
 
Cloud Cost Management and Apache Spark with Xuan Wang
Cloud Cost Management and Apache Spark with Xuan WangCloud Cost Management and Apache Spark with Xuan Wang
Cloud Cost Management and Apache Spark with Xuan WangDatabricks
 
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...Applied Data Science Part 3: Getting dirty; data preparation and feature crea...
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...Dataiku
 

What's hot (20)

Why HR Should Consider Agile Modern Data Delivery Platform
Why HR Should Consider Agile Modern Data Delivery PlatformWhy HR Should Consider Agile Modern Data Delivery Platform
Why HR Should Consider Agile Modern Data Delivery Platform
 
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricUsing Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
 
Big Data Fabric 2.0 Drives Data Democratization
Big Data Fabric 2.0 Drives Data DemocratizationBig Data Fabric 2.0 Drives Data Democratization
Big Data Fabric 2.0 Drives Data Democratization
 
Architecting for Big Data with AWS
Architecting for Big Data with AWSArchitecting for Big Data with AWS
Architecting for Big Data with AWS
 
Google BigQuery is the future of Analytics! (Google Developer Conference)
Google BigQuery is the future of Analytics! (Google Developer Conference)Google BigQuery is the future of Analytics! (Google Developer Conference)
Google BigQuery is the future of Analytics! (Google Developer Conference)
 
Storage software use ‘continues to expand’
Storage software use ‘continues to expand’Storage software use ‘continues to expand’
Storage software use ‘continues to expand’
 
Business Insight
Business InsightBusiness Insight
Business Insight
 
Tamr | MDM and the Data Unification Imperative
Tamr | MDM and the Data Unification ImperativeTamr | MDM and the Data Unification Imperative
Tamr | MDM and the Data Unification Imperative
 
Big Query - Utilizing Google Data Warehouse for Media Analytics
Big Query - Utilizing Google Data Warehouse for Media AnalyticsBig Query - Utilizing Google Data Warehouse for Media Analytics
Big Query - Utilizing Google Data Warehouse for Media Analytics
 
Thilga
ThilgaThilga
Thilga
 
Big Data Ecosystem at InMobi, Nasscom ATC 2013 Noida
Big Data Ecosystem at InMobi, Nasscom ATC 2013 NoidaBig Data Ecosystem at InMobi, Nasscom ATC 2013 Noida
Big Data Ecosystem at InMobi, Nasscom ATC 2013 Noida
 
Cortana Analytics Workshop: Azure Data Catalog
Cortana Analytics Workshop: Azure Data CatalogCortana Analytics Workshop: Azure Data Catalog
Cortana Analytics Workshop: Azure Data Catalog
 
Big Data Fabric: A Recipe for Big Data Initiatives
Big Data Fabric: A Recipe for Big Data InitiativesBig Data Fabric: A Recipe for Big Data Initiatives
Big Data Fabric: A Recipe for Big Data Initiatives
 
Clustrix Infographic
Clustrix InfographicClustrix Infographic
Clustrix Infographic
 
Making advanced analytics accessible to more companies
Making advanced analytics accessible to more companiesMaking advanced analytics accessible to more companies
Making advanced analytics accessible to more companies
 
DevTalks Keynote Powering interactive data analysis with Google BigQuery
DevTalks Keynote Powering interactive data analysis with Google BigQueryDevTalks Keynote Powering interactive data analysis with Google BigQuery
DevTalks Keynote Powering interactive data analysis with Google BigQuery
 
Bigquery 101
Bigquery 101Bigquery 101
Bigquery 101
 
Necessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services SectorNecessity of Data Lakes in the Financial Services Sector
Necessity of Data Lakes in the Financial Services Sector
 
Cloud Cost Management and Apache Spark with Xuan Wang
Cloud Cost Management and Apache Spark with Xuan WangCloud Cost Management and Apache Spark with Xuan Wang
Cloud Cost Management and Apache Spark with Xuan Wang
 
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...Applied Data Science Part 3: Getting dirty; data preparation and feature crea...
Applied Data Science Part 3: Getting dirty; data preparation and feature crea...
 

Similar to Optimize 5PB Financial Data Storage with Object Storage

Leap to Next Generation Data Management with Denodo 7.0
Leap to Next Generation Data Management with Denodo 7.0Leap to Next Generation Data Management with Denodo 7.0
Leap to Next Generation Data Management with Denodo 7.0Denodo
 
Big Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataBig Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataMatt Stubbs
 
Big Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataBig Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataMatt Stubbs
 
Modern data integration expert sessions
Modern data integration expert sessionsModern data integration expert sessions
Modern data integration expert sessionsJessicaMurrell3
 
Modern Data Integration Expert Session Webinar
Modern Data Integration Expert Session Webinar Modern Data Integration Expert Session Webinar
Modern Data Integration Expert Session Webinar ibi
 
The new dominant companies are running on data
The new dominant companies are running on data The new dominant companies are running on data
The new dominant companies are running on data SnapLogic
 
Moneyball: Using Advanced Account Insights for Effective ABM Activation
Moneyball: Using Advanced Account Insights for Effective ABM ActivationMoneyball: Using Advanced Account Insights for Effective ABM Activation
Moneyball: Using Advanced Account Insights for Effective ABM ActivationEngagio
 
Future of Power: Big Data - Søren Ravn
Future of Power: Big Data - Søren RavnFuture of Power: Big Data - Søren Ravn
Future of Power: Big Data - Søren RavnIBM Danmark
 
Hadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyHadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyDataWorks Summit
 
IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018Paula Koziol
 
Entry Points – How to Get Rolling with Big Data Analytics
Entry Points – How to Get Rolling with Big Data AnalyticsEntry Points – How to Get Rolling with Big Data Analytics
Entry Points – How to Get Rolling with Big Data AnalyticsInside Analysis
 
Big Data Use Cases
Big Data Use CasesBig Data Use Cases
Big Data Use Casesaziksa
 
Aziksa hadoop for buisness users2 santosh jha
Aziksa hadoop for buisness users2 santosh jhaAziksa hadoop for buisness users2 santosh jha
Aziksa hadoop for buisness users2 santosh jhaData Con LA
 
Data Wearhouse (Dw) concepts
Data Wearhouse (Dw)  conceptsData Wearhouse (Dw)  concepts
Data Wearhouse (Dw) conceptsBeing Topper
 
Big data processing with PubSub, Dataflow, and BigQuery
Big data processing with PubSub, Dataflow, and BigQueryBig data processing with PubSub, Dataflow, and BigQuery
Big data processing with PubSub, Dataflow, and BigQueryThuyen Ho
 
ACDKOCHI19 - Next Generation Data Analytics Platform on AWS
ACDKOCHI19 - Next Generation Data Analytics Platform on AWSACDKOCHI19 - Next Generation Data Analytics Platform on AWS
ACDKOCHI19 - Next Generation Data Analytics Platform on AWSAWS User Group Kochi
 
Capgemini’s Data WARP: Accelerate your Journey to Insights
Capgemini’s Data WARP: Accelerate your Journey to InsightsCapgemini’s Data WARP: Accelerate your Journey to Insights
Capgemini’s Data WARP: Accelerate your Journey to InsightsCapgemini
 
Big Data & Analytics perspectives in Banking
Big Data & Analytics perspectives in BankingBig Data & Analytics perspectives in Banking
Big Data & Analytics perspectives in BankingGianpaolo Zampol
 
IBM Storage at FIS InFocus 2019
IBM Storage at FIS InFocus 2019IBM Storage at FIS InFocus 2019
IBM Storage at FIS InFocus 2019Paula Koziol
 

Similar to Optimize 5PB Financial Data Storage with Object Storage (20)

Leap to Next Generation Data Management with Denodo 7.0
Leap to Next Generation Data Management with Denodo 7.0Leap to Next Generation Data Management with Denodo 7.0
Leap to Next Generation Data Management with Denodo 7.0
 
Big Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataBig Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on Data
 
Big Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on DataBig Data LDN 2017: The New Dominant Companies Are Running on Data
Big Data LDN 2017: The New Dominant Companies Are Running on Data
 
Modern data integration expert sessions
Modern data integration expert sessionsModern data integration expert sessions
Modern data integration expert sessions
 
Modern Data Integration Expert Session Webinar
Modern Data Integration Expert Session Webinar Modern Data Integration Expert Session Webinar
Modern Data Integration Expert Session Webinar
 
The new dominant companies are running on data
The new dominant companies are running on data The new dominant companies are running on data
The new dominant companies are running on data
 
Moneyball: Using Advanced Account Insights for Effective ABM Activation
Moneyball: Using Advanced Account Insights for Effective ABM ActivationMoneyball: Using Advanced Account Insights for Effective ABM Activation
Moneyball: Using Advanced Account Insights for Effective ABM Activation
 
Future of Power: Big Data - Søren Ravn
Future of Power: Big Data - Søren RavnFuture of Power: Big Data - Søren Ravn
Future of Power: Big Data - Søren Ravn
 
Hadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyHadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata Company
 
IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018
 
Entry Points – How to Get Rolling with Big Data Analytics
Entry Points – How to Get Rolling with Big Data AnalyticsEntry Points – How to Get Rolling with Big Data Analytics
Entry Points – How to Get Rolling with Big Data Analytics
 
Big Data Use Cases
Big Data Use CasesBig Data Use Cases
Big Data Use Cases
 
Aziksa hadoop for buisness users2 santosh jha
Aziksa hadoop for buisness users2 santosh jhaAziksa hadoop for buisness users2 santosh jha
Aziksa hadoop for buisness users2 santosh jha
 
Data Wearhouse (Dw) concepts
Data Wearhouse (Dw)  conceptsData Wearhouse (Dw)  concepts
Data Wearhouse (Dw) concepts
 
Big data processing with PubSub, Dataflow, and BigQuery
Big data processing with PubSub, Dataflow, and BigQueryBig data processing with PubSub, Dataflow, and BigQuery
Big data processing with PubSub, Dataflow, and BigQuery
 
ACDKOCHI19 - Next Generation Data Analytics Platform on AWS
ACDKOCHI19 - Next Generation Data Analytics Platform on AWSACDKOCHI19 - Next Generation Data Analytics Platform on AWS
ACDKOCHI19 - Next Generation Data Analytics Platform on AWS
 
Non-Relational Revolution
Non-Relational RevolutionNon-Relational Revolution
Non-Relational Revolution
 
Capgemini’s Data WARP: Accelerate your Journey to Insights
Capgemini’s Data WARP: Accelerate your Journey to InsightsCapgemini’s Data WARP: Accelerate your Journey to Insights
Capgemini’s Data WARP: Accelerate your Journey to Insights
 
Big Data & Analytics perspectives in Banking
Big Data & Analytics perspectives in BankingBig Data & Analytics perspectives in Banking
Big Data & Analytics perspectives in Banking
 
IBM Storage at FIS InFocus 2019
IBM Storage at FIS InFocus 2019IBM Storage at FIS InFocus 2019
IBM Storage at FIS InFocus 2019
 

Recently uploaded

Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service DewasVip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewasmakika9823
 
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...anilsa9823
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Servicediscovermytutordmt
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdfRenandantas16
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Serviceritikaroy0888
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst SummitHolger Mueller
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageMatteo Carbone
 
Cash Payment 9602870969 Escort Service in Udaipur Call Girls
Cash Payment 9602870969 Escort Service in Udaipur Call GirlsCash Payment 9602870969 Escort Service in Udaipur Call Girls
Cash Payment 9602870969 Escort Service in Udaipur Call GirlsApsara Of India
 
rishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfrishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfmuskan1121w
 
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc.../:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...lizamodels9
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth MarketingShawn Pang
 
Catalogue ONG NUOC PPR DE NHAT .pdf
Catalogue ONG NUOC PPR DE NHAT      .pdfCatalogue ONG NUOC PPR DE NHAT      .pdf
Catalogue ONG NUOC PPR DE NHAT .pdfOrient Homes
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in managementchhavia330
 
Pharma Works Profile of Karan Communications
Pharma Works Profile of Karan CommunicationsPharma Works Profile of Karan Communications
Pharma Works Profile of Karan Communicationskarancommunications
 
Intro to BCG's Carbon Emissions Benchmark_vF.pdf
Intro to BCG's Carbon Emissions Benchmark_vF.pdfIntro to BCG's Carbon Emissions Benchmark_vF.pdf
Intro to BCG's Carbon Emissions Benchmark_vF.pdfpollardmorgan
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMRavindra Nath Shukla
 

Recently uploaded (20)

Forklift Operations: Safety through Cartoons
Forklift Operations: Safety through CartoonsForklift Operations: Safety through Cartoons
Forklift Operations: Safety through Cartoons
 
Best Practices for Implementing an External Recruiting Partnership
Best Practices for Implementing an External Recruiting PartnershipBest Practices for Implementing an External Recruiting Partnership
Best Practices for Implementing an External Recruiting Partnership
 
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service DewasVip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
 
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Mehrauli Delhi 💯Call Us 🔝8264348440🔝
 
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Service
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Service
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst Summit
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usage
 
Cash Payment 9602870969 Escort Service in Udaipur Call Girls
Cash Payment 9602870969 Escort Service in Udaipur Call GirlsCash Payment 9602870969 Escort Service in Udaipur Call Girls
Cash Payment 9602870969 Escort Service in Udaipur Call Girls
 
rishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfrishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdf
 
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc.../:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...
/:Call Girls In Jaypee Siddharth - 5 Star Hotel New Delhi ➥9990211544 Top Esc...
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
 
Catalogue ONG NUOC PPR DE NHAT .pdf
Catalogue ONG NUOC PPR DE NHAT      .pdfCatalogue ONG NUOC PPR DE NHAT      .pdf
Catalogue ONG NUOC PPR DE NHAT .pdf
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in management
 
Pharma Works Profile of Karan Communications
Pharma Works Profile of Karan CommunicationsPharma Works Profile of Karan Communications
Pharma Works Profile of Karan Communications
 
Intro to BCG's Carbon Emissions Benchmark_vF.pdf
Intro to BCG's Carbon Emissions Benchmark_vF.pdfIntro to BCG's Carbon Emissions Benchmark_vF.pdf
Intro to BCG's Carbon Emissions Benchmark_vF.pdf
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
 
Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSM
 

Optimize 5PB Financial Data Storage with Object Storage

  • 1. © 2018 Data Dynamics, Inc. © 2018 Data Dynamics, Inc. Restricted and Confidential 5 PB Financial Optimization Powered by Data Dynamics StorageX
  • 2. © 2018 Data Dynamics, Inc. The CIO Agenda: Data Driven Digital Enterprise 2 IT FOCUS ON ENGAGEMENT SHORTEN TIME TO VALUE DRIVE NEW BUSINESS KNOW THE CUSTOMER THROUGH DATA ACCELERATE HYBRID CLOUD CREATE BUSINESS ANALYTICS CAPABILITIES
  • 3. © 2018 Data Dynamics, Inc. How does your enterprise use 5PB? 3 Customer Transactions Tick / Market Data Financial Data Economic Data Internal & Client Communications Employee Files
  • 4. © 2018 Data Dynamics, Inc. How often do you access those files? 4 SCENARIO 1: A trader tracks daily performance of financial models. LAST ACCESSED DATE: < 30 Days SCENARIO 2: Each department accesses numbers for quarterly earnings reports. LAST ACCESSED DATE: 30-90 Days SCENARIO 3: An app continually stores historical financial information. LAST ACCESSED DATE: > 90 Days
  • 5. © 2018 Data Dynamics, Inc. How much of your 5PBs falls into those access times? 5 Last Accessed PBs % of Data > 90 Days 3.25 65% 30-90 Days 0.75 15% < 30 Days 1.0 20%
  • 6. © 2018 Data Dynamics, Inc. ROI of Tackling Only 10% of 5PBs 6 File Servers (SMB and NFS) Network Attached Storage $0.50 / GB Month TCO $500K / PB Month TCO $0.05 / GB Month TCO $50K / PB Month TCO Save $450K / PB Month For Each PB Moved to Object Legacy Last Accessed TBs COST / PB Month < 90 Days 500 $25K OPTIMIZING: MOVE 500TBS TO OBJECT AFTER 90 DAYS Case COST / PB Month BAU $250K Optimized $25K Monthly Savings Total: $225K THE CASE FOR 500 TBS VS S3 Cloud Storage Cloud
  • 7. © 2018 Data Dynamics, Inc. Low-Hanging Fruit: Orphaned User Data When employees leave a firm, their data may not be deleted. It’s left on primary storage. The data is backed-up, creating multiple copies on primary and tape storage. 7
  • 8. © 2018 Data Dynamics, Inc. Low-Hanging Fruit: Orphaned User Data StorageX can identify files belonging to users no longer with the firm. Create a StorageX movement policy to place the files on S3-compatible object storage. 8
  • 9. © 2018 Data Dynamics, Inc. Orphaned User Data: Real-World Example 9 Top-five US Brokerage Firm Orphaned Data of 4500 Users With Totaling 2PBs (444 GB / User Avg.) @ $500K / PB Month TCO @ $50K / PB Month TCOVS OLD NAS NEW OBJECT $10.8MM Annualized Savings $12MM Annualized TCO $1.2MM Annualized TCO
  • 10. © 2018 Data Dynamics, Inc. More Low-Hanging Fruit: Tick Data Tick data created. Copied over and over on primary storage. Analyzed on scratchpad; analysis and source data copied over and over. 10
  • 11. © 2018 Data Dynamics, Inc. More Low-Hanging Fruit: Tick Data StorageX policy-based movement places tick data on S3 platform with custom tagging for recallability. Tick data pulled as needed from S3, analyzed on scratchpad, and placed back into S3 or discarded as desired. Result: create a data lake or library repository while avoiding cost. 11
  • 12. © 2018 Data Dynamics, Inc. Real-World Example: Tick Data 12 A Large Financial Firm One App with +40 years of Stored Tick Data With And Data Currently Growing @ 2TB / Month (NFS) Each App Maintains Own Tick Data Repository ~1PB / App
  • 13. © 2018 Data Dynamics, Inc. Real-World Example: Tick Data 13 ~1PB @ $500K / PB Month TCO @ $50K / PB Month TCOVS OLD NAS NEW OBJECT $5.4MM Annualized Savings $6MM Annualized TCO $600K Annualized TCO
  • 14. © 2018 Data Dynamics, Inc. Business Benefits of Proactively Managing Data 14 Plan & Report on Data Management Set Automatic Management Policies for Optimal Performance & Cost Identify Critical or Dark Data Uncover Business Intelligence & Analytics Custom Tag Data for Easy Access & Categorization
  • 15. © 2018 Data Dynamics, Inc.15
  • 16. © 2018 Data Dynamics, Inc.16 www.datadynamicsinc.com sales@datdyn.com