SlideShare a Scribd company logo
1 of 18
Download to read offline
Multi-Domain Enterprise Reference Data
MDM & Data Governance Summit – New York 2012
16 October 2012
WWW.MDM.SUMMIT.COM
Credit Suisse Overview
2
Credit Suisse provides companies, institutional clients and high-net-worth
private clients worldwide, as well as retail clients in Switzerland, with
advisory services, comprehensive solutions, and excellent products.
• Active in over 50 countries
• 48,000 + Employees
• Pre tax income: CHF 3.2 Billion (2011)
Organized into:
• Private Banking
• Investment Banking
• Asset Management
WWW.MDM.SUMMIT.COM
Reference Data
3
Reference Data
Any foundational data that provides the basis to generate, structure, categorize, or describe
business transactions; and is the basis to view, monitor, analyze and report on these
transactions.
Examples
• Client, Counterparty
• Chart of Accounts
• Booking Codes
• Product
• Legal Entity
• Organization
• Currency
• Calendar
Market Data
While Market Data can be considered a sub-type of Reference Data, it is treated separately
because of its unique low-latency (real time) requirements.
Why is Reference
Data Important?
Reference Data is a core asset of the bank which should be managed and governed in a
systematic fashion. Reference Data impacts most aspects of the banks operations. When
reference data is not used consistently, with commonly understood semantics and sources, it
will lead to multiple points of entry/updates resulting in manual fixes and downstream errors.
Business Imperatives Technology Imperatives
• Take ownership of data and its quality
• Provide information by adding context to data
• Ensure consistent usage across business processes
• Eliminate manual fixes and workarounds
• Meet regulatory requirements
• Transform data into information asset
• Reduce number of point to point interfaces
• Increase re-use using managed interfaces
• Reduce complexity by eliminating complex data flows
• Enable Business to view information instead of data by
providing appropriate tools and technology
• Support Operational Independence
• Provide Multi Entity Capabilities
WWW.MDM.SUMMIT.COM
Current Challenges
4
Reference Data
Challenges
• Inconsistent views of reference data used by different applications lead to incorrect &
inconsistent business metrics & reports.
• Multiple sources for a single reference data class (e.g. Counterparty) lead to confusion,
inconsistent representations of reference data.
• Poor understanding of reference data sources leads to multiple systems acting as
reference data enrichment and distribution points, increasing complexity and decreasing
consistency.
• Lack of governance for reference data means no clear ownership and no consistent
quality control processes for many reference data classes.
• Complex data flows and poorly understood data dependencies
Examples
• Different versions of Book codes used within Risk and Finance
• Different Legal Entity hierarchies (out of synch when changes are made)
• Different MIS hierarchies (over 500 versions currently stored)
Reference Data Interfaces Legacy Interfaces to/from Risk and Finance
• PeopleSoft GL is a large provider of reference data
today
• It provides 740 reference data feeds, including
• GL Accounts
• Consolidation Accounts
• Book
• Org Structures, and others
WWW.MDM.SUMMIT.COM
Vision: Multi-Domain Reference Data Strategy
5
Vision
To implement a multi-domain reference data management capability that provides
consistent, validated, well-formed and well-governed reference data, for all reference data
domains (classes) owned and managed by Back Office IT.1
Business Value
• Providing accurate, consistent reference data will reduce reporting and analysis errors
caused by incorrect reference data, and will reduce the overall cost of managing and
governing reference data.
IT Architecture
Value
• Significant reduction in the number and complexity of reference data interfaces, and
simplification of application logic as all reference data management functions are
centralized in a reference data hub.
1.Excludes Product and Client reference data
Common Data Model
Ensure a common understanding of our
data and how it should be used. Introduce
a framework to organize our complex data
landscape
Define our data
Central Platform
Central Governance
Make the right data easily accessible
at the right time
Central data governance ensuring clear
ownership and correct usage of the
shared data across the divisions
Control our data
Share our data
Objectives
WWW.MDM.SUMMIT.COM
Vision: Future State
6
Future State
High re-usability of data
objects
Use of “true” MDM tools for
reference data lifecycle
management
Reduced investment in
personalized engineered
hardware solutions
Transparent routing and
entitlement
Consistent semantics
Consistent data management
framework
Business Impact
Eliminate Interpretation Risk
High levels of automation
supporting authoring,
stewardship, governance
Consistent user adoption
Lower cost; lower innovation
threshold
Increased data quality
Integrated data
Flexible IT investment
WWW.MDM.SUMMIT.COM
RDH as a Shared Component Across Our Architecture
7
Reduce Complexity & Improve Efficiency through use of common technology components across
organizational domains.
Risk
Finance
Corporate Services
Data Warehousing
RDH
• Addresses data quality,
data standards
• Eliminates “resellers” of
reference data
• Offers a single version of
the truth
• Centralizes reference
data functions for lower
cost of ownership
WWW.MDM.SUMMIT.COM
Defining Our Data – Reference Data Terminology & Taxonomy
8
Organizational
Structure
Entity
Agreement
Ledger
Economic
Resource
Party
Product/
Service
Subject AreaData Domain
Classification
Codes
Org Unit CS Division MIS Unit Department Regions
Legal Entity
Servicing
Entity
Jurisdiction
Client regulatory Approvals
Standard Settlement
Instructions
Legal
Contracts
Chart of
Accounts
Trading
Book Info
Premises
Counter-
party
Client
Financial
Market
Stock
Exchange
External
Bodies
WorkerVendor
Financial
Instrument
Product
Framework
End of Day
Prices
Corporate
Actions
Issue RestrictionsIndices
Formulas Valuations Currency Reference Rates
Reference Data Classes
Currency
Code
Country
Code
Calendar
Language
Code
Industry
Code
Time
Zones
Locales
Transaction
Types
Instrument Credit rating Credit Suisse Rating
Tax
Category
Master Data
Structural Data
Classification
Data
Organization
Enity (OE)
Terms & Conditions
WWW.MDM.SUMMIT.COM
Defining Our Data – Common Data Model
9
Business Glossary Business Object Models
Logical Data Models
Service Data Models
Business Glossary of target design
describing definition, usage,
ownership and data governance
aspects for reference data class
data elements.
Business Object Models
describing relationships and
dependencies.
Logical Data Models
To drive the development of the
Service Data Models.
Service Data Models
for distributing data as a SOA
service to consumers.
WWW.MDM.SUMMIT.COM
Control our Data - Governance for Reference Data Management
10
Our Approach
Approach
• Minimum Governance Model defined
• Sourcing
• Definition
• Management
• Distribution
• Data Quality
• If minimum governance is met, approved as a managed interface to Golden Source
Opportunistic
• Use every opportunity to push data governance
• Couple of serious issues related to data quality that was escalated to ExB. Used
this to setup a STC comprising of CFO, CIO and GC and a Governance Board of all
COO’s in Back Office
• Regulatory push to handle contract data as reference data. Used this to include IB
in the Data Governance Board
Focus on Value-Add
• Avoided the pitfall of trying to define organizations and roles (viewed as too academic)
• As long as Minimum Governance Model is implemented, it was good enough, thereby
avoiding lengthy discussions of who should be called what (Data Steward, Data Tsar,
Data Provider, Data Owner, Data Governance, Data Conference etc.,)
WWW.MDM.SUMMIT.COM
Share our Data - Target Technology
11
Orchestra Networks
EBX from Orchestra Networks selected as standard tool for managing Structural and
Classification reference data.
• Selected after Gartner vendor short list and RFP process completed Dec. 2011
• Approved by Architecture STC for Structural and Classification data
• Offers configuration-based tool with little to no coding required
• Provides robust support for data governance, with workflow that can be adapted to our
business operating model
• Also selected by Asset Management for their client and product MDM tool
Operational Pilot
• Operational pilot completed in April, 2012
• Gain detailed understanding of production footprint, configuration requirements, time to
market considerations, and integration with other CS tools and platforms.
Broader
Opportunity
• Opportunity exists to leverage this technology investment to support Master Data
management, addressing the challenges of PB and IB
• E.g. managing derivative contract content (IB contract life cycle management
initiative)
• IB Client Data Management program is evaluating Orchestra Networks and assessing
its suitability for their requirements
WWW.MDM.SUMMIT.COM
Share our Data - Target Technology
12
Analysis based on Product Risk and Vendor Risk. Product Risk is based on market success of the product
and the maturity of the market. Vendor Risk is based on the reputation and stability of the Vendor
High Risk • No market penetration
• Beta version
• E.g., Oracle Fusion Products
Product Risk
Low Risk • Stable product with very high market
penetration
• Mature market
• E.g., Oracle Database
Medium
Risk
• Stable product with medium market
penetration
• Growth mode
• E.g., Oracle Universal Content Management
High Risk • In conception stage. No Enterprise customers
• Not profitable. No cash flow
• Unknown in the market place
Vendor Risk
Low Risk • Stable company with high revenues and stable balance
sheet
• Well recognized in the market place
Medium
Risk
• Has multiple enterprise customers using the Vendor
• Is profitable with a positive cash flow/Risk of being
acquired
• Recognized by analysts/markets as viable alternative
Product Risk Profile is Medium
Orchestra Network’s EBX product was short listed #1 by Gartner
Vendor Risk Profile is Medium
Used in BNP Paribas and various other banks/industries
Mitigation Mitigation
• Vendor relationship with the competency center to help evolve
the product and future direction
• Ensure single code base is maintained across customers
• Provide references to other clients (already done with Citibank and ANZ)
to increase market share
• Provide visibility to vendor with speaking engagements at conferences
(currently being done)
WWW.MDM.SUMMIT.COM
Reference Data Onboarding Strategy (1 of 2)
13
Ref Data Hub
Authoring
Management
Governance
Distribution
Data Stewards
Governance Body
Consuming
Apps
Consuming
Apps
Match/Merge
Authoring
Optional
Ref Data Hub
Authoring
Management
Governance
Distribution
Data
Stewards
Consuming
Apps
Consuming
Apps
IB & PB Ref Data Prgm
BO RDH Prgm
1.Multiple
Reference Data
Sources
(e.g. Client,
Product)
• Multiple sources for the same
reference data class require
(potentially sophisticated) Matching
(de-duplication) and Merging (attribute
survivorship) capability
• Authoring (creating of new instances)
remains with the sources
• Management and governance takes
place in the hub, with optional
feedback loop to the sources of record
• All consuming apps acquire from Ref
Data Hub
2.Authoring
External to RDH
(e.g. Currency,
Industry Codes)
• Ref Data Hub acts as golden source;
source of record is external to RDH
(can be external to CS)
• All authoring and management (e.g.
hierarchy maintenance) performed by
data stewards in source of record
• Ref data is loaded into Ref Data Hub
on a periodic basis
• Governance activities take place in Ref
Data Hub
• All consuming apps acquire from Ref
Data Hub
WWW.MDM.SUMMIT.COM
Reference Data Onboarding Strategy (2 of 2)
14
Ref Data Hub
Authoring
Management
Governance
Distribution
Consuming
Apps
Consuming
Apps
One-Time
Load
(Optional)
Ref Data Hub
Authoring
Management
Governance
Distribution
Data
Stewards
Governance Body
Consuming
Apps
Consuming
Apps
Ref Data Hub
Authoring
Management
Governance
Distribution
Data Stewards
Governance Body
3. Simple
Authoring in
RDH
(e.g. GL COA,
Calendar)
• Ref Data Hub acts as source of record
and golden source
• Optional initial data load from external
source
• All authoring and management (e.g.
hierarchy maintenance) performed by
data stewards in Ref Data Hub
• Governance activities take place in Ref
Data Hub
• All consuming apps acquire from Ref
Data Hub
4. Complex
Authoring in
RDH
(e.g. Book)
• Complex management processes (e.g.
complex workflows) require a two-step
onboarding process
• Initially, existing source of record is
used, and ref data is loaded into hub
for governance and distribution
• Later when sophisticated management
processes have been implemented in
Ref Data Hub, it becomes the source
of record, eliminating dependency on
external source.
• All consuming apps acquire from Ref
Data Hub
WWW.MDM.SUMMIT.COM
Reference Data Adoption Strategy
15
• The existing Golden Source
systems have a large number of
point-to-point interfaces
• The majority of consumers are
sourcing data from a non-golden
source system which leads to
reduced control over the quality
and timeliness of the delivered
reference data
• Our adoption strategy will first
focus on significantly reducing
existing point-to-point interfaces
and maintenance costs by
migrating inter-domain
consumers directly attached to
the Golden Sources
• As a second step, we are
planning to connect existing
Data Hubs to the RDH. This will
immediately provide high quality
and timely data to a large
number of consumers
CurrentState2012-2013Focus
WWW.MDM.SUMMIT.COM
Reference Data Hub – Goals for 2012
16
Initiative Data Classes Description
Corporate
Structural Data
• Worker
• Facilities
• Organization
• Reference data available in RDH
• 2012 focus is on adoption
• 84 consuming systems identified for initial
migration
Strategic Risk
Program
• Book • Reference data available in RHD
• 2012 focus is on adoption
Contract Lifecycle
Management
• Contract Data • Focus is onboarding and adoption
PB Platform
Renewal and MEC
• Language
• Calendar
• Regions
• Division
• Focus is onboarding and adoption
OnePPM • Project Portfolio
• Product Portfolio
• Focus is onboarding and adoption
OneGL • GL Chart of Accounts • Focus is onboarding and adoption
• Locale/Country
• State
• Currency
• Servicing Entity
2012 Goals
• A true horizontal service to provide/consume reference data across BO
IT, eliminating the need for disparate reference data hubs
• Standardized process for deploying Reference Data
• Align with major initiatives/functions to supply required reference data
WWW.MDM.SUMMIT.COM
Lessons Learned
17
Governance
Challenges
The challenges of implementing Data Governance
• Top Down
• Getting a dedicated data governance organization has been challenging
• No pushback on the idea but hard to decide who takes responsibility, how to fund
the central group and the business case
• Bottom’s Up
• Standard answer “Everything is working fine”
• Hard to get visibility into manual workaround and fixes being done and relating to
data quality issue
• The cynical response being data governance is hard and selecting a preferred
approach or standard often boils down to making a pragmatic decision between sub
optimal options
• The lack of data governance “maturity” complicated by the demand for “one bank data”
– clear data visibility and accountability between front office and back office
Application
Engineering
Challenges
Defining a clear roadmap for application design change
• Assessing the degree and appetite for change: migrating reference data as a function
of individual applications to leveraging a common component used across our sweet of
applications
• Developing “data adapters” to bridge strategic service data models to legacy point to
point interfaces to manage the risk associated with change
• Establishing the right metrics to measure progress and to drive the business case for
change
Summary
Never let a crisis go to waste
• Regulation is the new factor here – this is a genuine opportunity to change the way
reference data is sourced, managed and distributed
WWW.MDM.SUMMIT.COM 18
Q & A

More Related Content

What's hot

Enterprise Data Management
Enterprise Data ManagementEnterprise Data Management
Enterprise Data Management
Bhavendra Chavan
 

What's hot (20)

Strategic Business Requirements for Master Data Management Systems
Strategic Business Requirements for Master Data Management SystemsStrategic Business Requirements for Master Data Management Systems
Strategic Business Requirements for Master Data Management Systems
 
MDM and Reference Data
MDM and Reference DataMDM and Reference Data
MDM and Reference Data
 
Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)
 
Webinar: How Banks Manage Reference Data with MongoDB
 Webinar: How Banks Manage Reference Data with MongoDB Webinar: How Banks Manage Reference Data with MongoDB
Webinar: How Banks Manage Reference Data with MongoDB
 
Data Governance: Keystone of Information Management Initiatives
Data Governance: Keystone of Information Management InitiativesData Governance: Keystone of Information Management Initiatives
Data Governance: Keystone of Information Management Initiatives
 
The Importance of MDM - Eternal Management of the Data Mind
The Importance of MDM - Eternal Management of the Data MindThe Importance of MDM - Eternal Management of the Data Mind
The Importance of MDM - Eternal Management of the Data Mind
 
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business GoalsBuilding a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business Goals
 
Becoming a Data-Driven Organization - Aligning Business & Data Strategy
Becoming a Data-Driven Organization - Aligning Business & Data StrategyBecoming a Data-Driven Organization - Aligning Business & Data Strategy
Becoming a Data-Driven Organization - Aligning Business & Data Strategy
 
Creating a Data-Driven Organization, Crunchconf, October 2015
Creating a Data-Driven Organization, Crunchconf, October 2015Creating a Data-Driven Organization, Crunchconf, October 2015
Creating a Data-Driven Organization, Crunchconf, October 2015
 
Master Data Management
Master Data ManagementMaster Data Management
Master Data Management
 
Lessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDMLessons in Data Modeling: Data Modeling & MDM
Lessons in Data Modeling: Data Modeling & MDM
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Data, Information And Knowledge Management Framework And The Data Management ...
Data, Information And Knowledge Management Framework And The Data Management ...Data, Information And Knowledge Management Framework And The Data Management ...
Data, Information And Knowledge Management Framework And The Data Management ...
 
Enterprise Data Management
Enterprise Data ManagementEnterprise Data Management
Enterprise Data Management
 
Master Data Management - Practical Strategies for Integrating into Your Data ...
Master Data Management - Practical Strategies for Integrating into Your Data ...Master Data Management - Practical Strategies for Integrating into Your Data ...
Master Data Management - Practical Strategies for Integrating into Your Data ...
 
New Analytic Uses of Master Data Management in the Enterprise
New Analytic Uses of Master Data Management in the EnterpriseNew Analytic Uses of Master Data Management in the Enterprise
New Analytic Uses of Master Data Management in the Enterprise
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Master Data Management methodology
Master Data Management methodologyMaster Data Management methodology
Master Data Management methodology
 
Essential Reference and Master Data Management
Essential Reference and Master Data ManagementEssential Reference and Master Data Management
Essential Reference and Master Data Management
 
Enterprise Data Management
Enterprise Data ManagementEnterprise Data Management
Enterprise Data Management
 

Similar to Credit Suisse: Multi-Domain Enterprise Reference Data

Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Nathan Bijnens
 
TekMindz Master Data Management Capabilities
TekMindz Master Data Management CapabilitiesTekMindz Master Data Management Capabilities
TekMindz Master Data Management Capabilities
Akshay Pandita
 
Modernizing Integration with Data Virtualization
Modernizing Integration with Data VirtualizationModernizing Integration with Data Virtualization
Modernizing Integration with Data Virtualization
Denodo
 
Cloud Services Brokerage Demystified
Cloud Services Brokerage DemystifiedCloud Services Brokerage Demystified
Cloud Services Brokerage Demystified
Zach Gardner
 

Similar to Credit Suisse: Multi-Domain Enterprise Reference Data (20)

Master data management
Master data managementMaster data management
Master data management
 
Increasing Agility Through Data Virtualization
Increasing Agility Through Data VirtualizationIncreasing Agility Through Data Virtualization
Increasing Agility Through Data Virtualization
 
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)
 
GDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data VirtualizationGDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data Virtualization
 
Bridging Data Gaps with a Solid Data Foundation - A Key Imperative for Today’...
Bridging Data Gaps with a Solid Data Foundation - A Key Imperative for Today’...Bridging Data Gaps with a Solid Data Foundation - A Key Imperative for Today’...
Bridging Data Gaps with a Solid Data Foundation - A Key Imperative for Today’...
 
09 mdm tool comaprison
09 mdm tool comaprison09 mdm tool comaprison
09 mdm tool comaprison
 
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data VirtualizationKASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
 
How a Logical Data Fabric Enhances the Customer 360 View
How a Logical Data Fabric Enhances the Customer 360 ViewHow a Logical Data Fabric Enhances the Customer 360 View
How a Logical Data Fabric Enhances the Customer 360 View
 
Data Virtualization for Compliance – Creating a Controlled Data Environment
Data Virtualization for Compliance – Creating a Controlled Data EnvironmentData Virtualization for Compliance – Creating a Controlled Data Environment
Data Virtualization for Compliance – Creating a Controlled Data Environment
 
IT6701 Information Management - Unit III
IT6701 Information Management - Unit IIIIT6701 Information Management - Unit III
IT6701 Information Management - Unit III
 
DQS & MDS in SQL Server 2016
DQS & MDS in SQL Server 2016DQS & MDS in SQL Server 2016
DQS & MDS in SQL Server 2016
 
TekMindz Master Data Management Capabilities
TekMindz Master Data Management CapabilitiesTekMindz Master Data Management Capabilities
TekMindz Master Data Management Capabilities
 
Education Seminar: Self-service BI, Logical Data Warehouse and Data Lakes
Education Seminar: Self-service BI, Logical Data Warehouse and Data LakesEducation Seminar: Self-service BI, Logical Data Warehouse and Data Lakes
Education Seminar: Self-service BI, Logical Data Warehouse and Data Lakes
 
Modernizing Integration with Data Virtualization
Modernizing Integration with Data VirtualizationModernizing Integration with Data Virtualization
Modernizing Integration with Data Virtualization
 
MDM & BI Strategy For Large Enterprises
MDM & BI Strategy For Large EnterprisesMDM & BI Strategy For Large Enterprises
MDM & BI Strategy For Large Enterprises
 
CRM-UG Summit Phoenix 2018 - What is Common Data Model and how to use it?
CRM-UG Summit Phoenix 2018 - What is Common Data Model and how to use it?CRM-UG Summit Phoenix 2018 - What is Common Data Model and how to use it?
CRM-UG Summit Phoenix 2018 - What is Common Data Model and how to use it?
 
Cloud Services Brokerage Demystified
Cloud Services Brokerage DemystifiedCloud Services Brokerage Demystified
Cloud Services Brokerage Demystified
 
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit UnionsWebinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
 
Reinvent Your Data Management Strategy for Successful Digital Transformation
Reinvent Your Data Management Strategy for Successful Digital TransformationReinvent Your Data Management Strategy for Successful Digital Transformation
Reinvent Your Data Management Strategy for Successful Digital Transformation
 
When and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data ArchitectureWhen and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data Architecture
 

More from Orchestra Networks

Sabre: Master Reference Data in the Large Enterprise
Sabre: Master Reference Data in the Large EnterpriseSabre: Master Reference Data in the Large Enterprise
Sabre: Master Reference Data in the Large Enterprise
Orchestra Networks
 

More from Orchestra Networks (20)

Sabre: Mastering a strong foundation for operational excellence and enhanced ...
Sabre: Mastering a strong foundation for operational excellence and enhanced ...Sabre: Mastering a strong foundation for operational excellence and enhanced ...
Sabre: Mastering a strong foundation for operational excellence and enhanced ...
 
Plateforme du Bâtiment: Product Master Data Management
Plateforme du Bâtiment: Product Master Data ManagementPlateforme du Bâtiment: Product Master Data Management
Plateforme du Bâtiment: Product Master Data Management
 
Netspend: Maintaining "High Operations Tempo" via Multidomain MDM
Netspend: Maintaining "High Operations Tempo" via Multidomain MDMNetspend: Maintaining "High Operations Tempo" via Multidomain MDM
Netspend: Maintaining "High Operations Tempo" via Multidomain MDM
 
Amadeus: Multidomain MDM
Amadeus: Multidomain MDMAmadeus: Multidomain MDM
Amadeus: Multidomain MDM
 
Axpo Trading: Master Data Management in the Energy Sector
Axpo Trading: Master Data Management in the Energy SectorAxpo Trading: Master Data Management in the Energy Sector
Axpo Trading: Master Data Management in the Energy Sector
 
SBM Offshore: How MDM is changing our way of working
SBM Offshore: How MDM is changing our way of workingSBM Offshore: How MDM is changing our way of working
SBM Offshore: How MDM is changing our way of working
 
Vaasan: Product master data consolidation
Vaasan: Product master data consolidationVaasan: Product master data consolidation
Vaasan: Product master data consolidation
 
MDM & RDM: Enabling a One Company Supply Chain in a Decentralized Environment
MDM & RDM: Enabling a One Company Supply Chain in a Decentralized EnvironmentMDM & RDM: Enabling a One Company Supply Chain in a Decentralized Environment
MDM & RDM: Enabling a One Company Supply Chain in a Decentralized Environment
 
Beyond Oracle EPM metadata synchronization
Beyond Oracle EPM metadata synchronizationBeyond Oracle EPM metadata synchronization
Beyond Oracle EPM metadata synchronization
 
Médecins Sans Frontières/Doctors Without Borders: The Codification Project
Médecins Sans Frontières/Doctors Without Borders: The Codification ProjectMédecins Sans Frontières/Doctors Without Borders: The Codification Project
Médecins Sans Frontières/Doctors Without Borders: The Codification Project
 
Sabre: Master Reference Data in the Large Enterprise
Sabre: Master Reference Data in the Large EnterpriseSabre: Master Reference Data in the Large Enterprise
Sabre: Master Reference Data in the Large Enterprise
 
Mastering Oracle® Hyperion EPM Metadata in a distributed organization
Mastering Oracle® Hyperion EPM Metadata in a distributed organizationMastering Oracle® Hyperion EPM Metadata in a distributed organization
Mastering Oracle® Hyperion EPM Metadata in a distributed organization
 
Acolyance: Applying MDM to Drive ERP Success & ROI
Acolyance: Applying MDM to Drive ERP Success & ROIAcolyance: Applying MDM to Drive ERP Success & ROI
Acolyance: Applying MDM to Drive ERP Success & ROI
 
Accurate BI &MDM Lead to successful Project Execution!
Accurate BI &MDM Lead to successful Project Execution!Accurate BI &MDM Lead to successful Project Execution!
Accurate BI &MDM Lead to successful Project Execution!
 
Taming the Raving Rabbids: The Ubisoft MDM Journey
Taming the Raving Rabbids: The Ubisoft MDM JourneyTaming the Raving Rabbids: The Ubisoft MDM Journey
Taming the Raving Rabbids: The Ubisoft MDM Journey
 
United Technologies, Hands On Reference Data Management For Corporate Finance...
United Technologies, Hands On Reference Data Management For Corporate Finance...United Technologies, Hands On Reference Data Management For Corporate Finance...
United Technologies, Hands On Reference Data Management For Corporate Finance...
 
Multidomain MDM at Amadeus
Multidomain MDM at AmadeusMultidomain MDM at Amadeus
Multidomain MDM at Amadeus
 
Technip Multidomain MDM Journey
Technip Multidomain MDM JourneyTechnip Multidomain MDM Journey
Technip Multidomain MDM Journey
 
Driving Multidomain MDM simultaneously to ERP harmonization
Driving Multidomain MDM simultaneously to ERP harmonizationDriving Multidomain MDM simultaneously to ERP harmonization
Driving Multidomain MDM simultaneously to ERP harmonization
 
Understanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron ZornesUnderstanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron Zornes
 

Recently uploaded

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 

Recently uploaded (20)

Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
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...
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
Evaluating the top large language models.pdf
Evaluating the top large language models.pdfEvaluating the top large language models.pdf
Evaluating the top large language models.pdf
 
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
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
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)
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.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
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
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...
 

Credit Suisse: Multi-Domain Enterprise Reference Data

  • 1. Multi-Domain Enterprise Reference Data MDM & Data Governance Summit – New York 2012 16 October 2012
  • 2. WWW.MDM.SUMMIT.COM Credit Suisse Overview 2 Credit Suisse provides companies, institutional clients and high-net-worth private clients worldwide, as well as retail clients in Switzerland, with advisory services, comprehensive solutions, and excellent products. • Active in over 50 countries • 48,000 + Employees • Pre tax income: CHF 3.2 Billion (2011) Organized into: • Private Banking • Investment Banking • Asset Management
  • 3. WWW.MDM.SUMMIT.COM Reference Data 3 Reference Data Any foundational data that provides the basis to generate, structure, categorize, or describe business transactions; and is the basis to view, monitor, analyze and report on these transactions. Examples • Client, Counterparty • Chart of Accounts • Booking Codes • Product • Legal Entity • Organization • Currency • Calendar Market Data While Market Data can be considered a sub-type of Reference Data, it is treated separately because of its unique low-latency (real time) requirements. Why is Reference Data Important? Reference Data is a core asset of the bank which should be managed and governed in a systematic fashion. Reference Data impacts most aspects of the banks operations. When reference data is not used consistently, with commonly understood semantics and sources, it will lead to multiple points of entry/updates resulting in manual fixes and downstream errors. Business Imperatives Technology Imperatives • Take ownership of data and its quality • Provide information by adding context to data • Ensure consistent usage across business processes • Eliminate manual fixes and workarounds • Meet regulatory requirements • Transform data into information asset • Reduce number of point to point interfaces • Increase re-use using managed interfaces • Reduce complexity by eliminating complex data flows • Enable Business to view information instead of data by providing appropriate tools and technology • Support Operational Independence • Provide Multi Entity Capabilities
  • 4. WWW.MDM.SUMMIT.COM Current Challenges 4 Reference Data Challenges • Inconsistent views of reference data used by different applications lead to incorrect & inconsistent business metrics & reports. • Multiple sources for a single reference data class (e.g. Counterparty) lead to confusion, inconsistent representations of reference data. • Poor understanding of reference data sources leads to multiple systems acting as reference data enrichment and distribution points, increasing complexity and decreasing consistency. • Lack of governance for reference data means no clear ownership and no consistent quality control processes for many reference data classes. • Complex data flows and poorly understood data dependencies Examples • Different versions of Book codes used within Risk and Finance • Different Legal Entity hierarchies (out of synch when changes are made) • Different MIS hierarchies (over 500 versions currently stored) Reference Data Interfaces Legacy Interfaces to/from Risk and Finance • PeopleSoft GL is a large provider of reference data today • It provides 740 reference data feeds, including • GL Accounts • Consolidation Accounts • Book • Org Structures, and others
  • 5. WWW.MDM.SUMMIT.COM Vision: Multi-Domain Reference Data Strategy 5 Vision To implement a multi-domain reference data management capability that provides consistent, validated, well-formed and well-governed reference data, for all reference data domains (classes) owned and managed by Back Office IT.1 Business Value • Providing accurate, consistent reference data will reduce reporting and analysis errors caused by incorrect reference data, and will reduce the overall cost of managing and governing reference data. IT Architecture Value • Significant reduction in the number and complexity of reference data interfaces, and simplification of application logic as all reference data management functions are centralized in a reference data hub. 1.Excludes Product and Client reference data Common Data Model Ensure a common understanding of our data and how it should be used. Introduce a framework to organize our complex data landscape Define our data Central Platform Central Governance Make the right data easily accessible at the right time Central data governance ensuring clear ownership and correct usage of the shared data across the divisions Control our data Share our data Objectives
  • 6. WWW.MDM.SUMMIT.COM Vision: Future State 6 Future State High re-usability of data objects Use of “true” MDM tools for reference data lifecycle management Reduced investment in personalized engineered hardware solutions Transparent routing and entitlement Consistent semantics Consistent data management framework Business Impact Eliminate Interpretation Risk High levels of automation supporting authoring, stewardship, governance Consistent user adoption Lower cost; lower innovation threshold Increased data quality Integrated data Flexible IT investment
  • 7. WWW.MDM.SUMMIT.COM RDH as a Shared Component Across Our Architecture 7 Reduce Complexity & Improve Efficiency through use of common technology components across organizational domains. Risk Finance Corporate Services Data Warehousing RDH • Addresses data quality, data standards • Eliminates “resellers” of reference data • Offers a single version of the truth • Centralizes reference data functions for lower cost of ownership
  • 8. WWW.MDM.SUMMIT.COM Defining Our Data – Reference Data Terminology & Taxonomy 8 Organizational Structure Entity Agreement Ledger Economic Resource Party Product/ Service Subject AreaData Domain Classification Codes Org Unit CS Division MIS Unit Department Regions Legal Entity Servicing Entity Jurisdiction Client regulatory Approvals Standard Settlement Instructions Legal Contracts Chart of Accounts Trading Book Info Premises Counter- party Client Financial Market Stock Exchange External Bodies WorkerVendor Financial Instrument Product Framework End of Day Prices Corporate Actions Issue RestrictionsIndices Formulas Valuations Currency Reference Rates Reference Data Classes Currency Code Country Code Calendar Language Code Industry Code Time Zones Locales Transaction Types Instrument Credit rating Credit Suisse Rating Tax Category Master Data Structural Data Classification Data Organization Enity (OE) Terms & Conditions
  • 9. WWW.MDM.SUMMIT.COM Defining Our Data – Common Data Model 9 Business Glossary Business Object Models Logical Data Models Service Data Models Business Glossary of target design describing definition, usage, ownership and data governance aspects for reference data class data elements. Business Object Models describing relationships and dependencies. Logical Data Models To drive the development of the Service Data Models. Service Data Models for distributing data as a SOA service to consumers.
  • 10. WWW.MDM.SUMMIT.COM Control our Data - Governance for Reference Data Management 10 Our Approach Approach • Minimum Governance Model defined • Sourcing • Definition • Management • Distribution • Data Quality • If minimum governance is met, approved as a managed interface to Golden Source Opportunistic • Use every opportunity to push data governance • Couple of serious issues related to data quality that was escalated to ExB. Used this to setup a STC comprising of CFO, CIO and GC and a Governance Board of all COO’s in Back Office • Regulatory push to handle contract data as reference data. Used this to include IB in the Data Governance Board Focus on Value-Add • Avoided the pitfall of trying to define organizations and roles (viewed as too academic) • As long as Minimum Governance Model is implemented, it was good enough, thereby avoiding lengthy discussions of who should be called what (Data Steward, Data Tsar, Data Provider, Data Owner, Data Governance, Data Conference etc.,)
  • 11. WWW.MDM.SUMMIT.COM Share our Data - Target Technology 11 Orchestra Networks EBX from Orchestra Networks selected as standard tool for managing Structural and Classification reference data. • Selected after Gartner vendor short list and RFP process completed Dec. 2011 • Approved by Architecture STC for Structural and Classification data • Offers configuration-based tool with little to no coding required • Provides robust support for data governance, with workflow that can be adapted to our business operating model • Also selected by Asset Management for their client and product MDM tool Operational Pilot • Operational pilot completed in April, 2012 • Gain detailed understanding of production footprint, configuration requirements, time to market considerations, and integration with other CS tools and platforms. Broader Opportunity • Opportunity exists to leverage this technology investment to support Master Data management, addressing the challenges of PB and IB • E.g. managing derivative contract content (IB contract life cycle management initiative) • IB Client Data Management program is evaluating Orchestra Networks and assessing its suitability for their requirements
  • 12. WWW.MDM.SUMMIT.COM Share our Data - Target Technology 12 Analysis based on Product Risk and Vendor Risk. Product Risk is based on market success of the product and the maturity of the market. Vendor Risk is based on the reputation and stability of the Vendor High Risk • No market penetration • Beta version • E.g., Oracle Fusion Products Product Risk Low Risk • Stable product with very high market penetration • Mature market • E.g., Oracle Database Medium Risk • Stable product with medium market penetration • Growth mode • E.g., Oracle Universal Content Management High Risk • In conception stage. No Enterprise customers • Not profitable. No cash flow • Unknown in the market place Vendor Risk Low Risk • Stable company with high revenues and stable balance sheet • Well recognized in the market place Medium Risk • Has multiple enterprise customers using the Vendor • Is profitable with a positive cash flow/Risk of being acquired • Recognized by analysts/markets as viable alternative Product Risk Profile is Medium Orchestra Network’s EBX product was short listed #1 by Gartner Vendor Risk Profile is Medium Used in BNP Paribas and various other banks/industries Mitigation Mitigation • Vendor relationship with the competency center to help evolve the product and future direction • Ensure single code base is maintained across customers • Provide references to other clients (already done with Citibank and ANZ) to increase market share • Provide visibility to vendor with speaking engagements at conferences (currently being done)
  • 13. WWW.MDM.SUMMIT.COM Reference Data Onboarding Strategy (1 of 2) 13 Ref Data Hub Authoring Management Governance Distribution Data Stewards Governance Body Consuming Apps Consuming Apps Match/Merge Authoring Optional Ref Data Hub Authoring Management Governance Distribution Data Stewards Consuming Apps Consuming Apps IB & PB Ref Data Prgm BO RDH Prgm 1.Multiple Reference Data Sources (e.g. Client, Product) • Multiple sources for the same reference data class require (potentially sophisticated) Matching (de-duplication) and Merging (attribute survivorship) capability • Authoring (creating of new instances) remains with the sources • Management and governance takes place in the hub, with optional feedback loop to the sources of record • All consuming apps acquire from Ref Data Hub 2.Authoring External to RDH (e.g. Currency, Industry Codes) • Ref Data Hub acts as golden source; source of record is external to RDH (can be external to CS) • All authoring and management (e.g. hierarchy maintenance) performed by data stewards in source of record • Ref data is loaded into Ref Data Hub on a periodic basis • Governance activities take place in Ref Data Hub • All consuming apps acquire from Ref Data Hub
  • 14. WWW.MDM.SUMMIT.COM Reference Data Onboarding Strategy (2 of 2) 14 Ref Data Hub Authoring Management Governance Distribution Consuming Apps Consuming Apps One-Time Load (Optional) Ref Data Hub Authoring Management Governance Distribution Data Stewards Governance Body Consuming Apps Consuming Apps Ref Data Hub Authoring Management Governance Distribution Data Stewards Governance Body 3. Simple Authoring in RDH (e.g. GL COA, Calendar) • Ref Data Hub acts as source of record and golden source • Optional initial data load from external source • All authoring and management (e.g. hierarchy maintenance) performed by data stewards in Ref Data Hub • Governance activities take place in Ref Data Hub • All consuming apps acquire from Ref Data Hub 4. Complex Authoring in RDH (e.g. Book) • Complex management processes (e.g. complex workflows) require a two-step onboarding process • Initially, existing source of record is used, and ref data is loaded into hub for governance and distribution • Later when sophisticated management processes have been implemented in Ref Data Hub, it becomes the source of record, eliminating dependency on external source. • All consuming apps acquire from Ref Data Hub
  • 15. WWW.MDM.SUMMIT.COM Reference Data Adoption Strategy 15 • The existing Golden Source systems have a large number of point-to-point interfaces • The majority of consumers are sourcing data from a non-golden source system which leads to reduced control over the quality and timeliness of the delivered reference data • Our adoption strategy will first focus on significantly reducing existing point-to-point interfaces and maintenance costs by migrating inter-domain consumers directly attached to the Golden Sources • As a second step, we are planning to connect existing Data Hubs to the RDH. This will immediately provide high quality and timely data to a large number of consumers CurrentState2012-2013Focus
  • 16. WWW.MDM.SUMMIT.COM Reference Data Hub – Goals for 2012 16 Initiative Data Classes Description Corporate Structural Data • Worker • Facilities • Organization • Reference data available in RDH • 2012 focus is on adoption • 84 consuming systems identified for initial migration Strategic Risk Program • Book • Reference data available in RHD • 2012 focus is on adoption Contract Lifecycle Management • Contract Data • Focus is onboarding and adoption PB Platform Renewal and MEC • Language • Calendar • Regions • Division • Focus is onboarding and adoption OnePPM • Project Portfolio • Product Portfolio • Focus is onboarding and adoption OneGL • GL Chart of Accounts • Focus is onboarding and adoption • Locale/Country • State • Currency • Servicing Entity 2012 Goals • A true horizontal service to provide/consume reference data across BO IT, eliminating the need for disparate reference data hubs • Standardized process for deploying Reference Data • Align with major initiatives/functions to supply required reference data
  • 17. WWW.MDM.SUMMIT.COM Lessons Learned 17 Governance Challenges The challenges of implementing Data Governance • Top Down • Getting a dedicated data governance organization has been challenging • No pushback on the idea but hard to decide who takes responsibility, how to fund the central group and the business case • Bottom’s Up • Standard answer “Everything is working fine” • Hard to get visibility into manual workaround and fixes being done and relating to data quality issue • The cynical response being data governance is hard and selecting a preferred approach or standard often boils down to making a pragmatic decision between sub optimal options • The lack of data governance “maturity” complicated by the demand for “one bank data” – clear data visibility and accountability between front office and back office Application Engineering Challenges Defining a clear roadmap for application design change • Assessing the degree and appetite for change: migrating reference data as a function of individual applications to leveraging a common component used across our sweet of applications • Developing “data adapters” to bridge strategic service data models to legacy point to point interfaces to manage the risk associated with change • Establishing the right metrics to measure progress and to drive the business case for change Summary Never let a crisis go to waste • Regulation is the new factor here – this is a genuine opportunity to change the way reference data is sourced, managed and distributed