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NIIT Technologies White Paper
Reference Data Management in Financial
Services Industry
Reference Data Management in Financial
Services Industry
Vinit Sharma
Reference Data Management 1
Introduction 3
Data Management 3
Drivers behind Data Management 3
Data Classification 4
Reference Data Management in Financial Services 4
Challenges of Reference Data Management 5
Our Reference Data Management Process 5
Implementation 6
Conclusion 8
NIIT Experience and Benefits 8
About Author 9
About NIIT Technologies 9
CONTENTS
INVESTMENT
REVENUEREVENUE
INVESTMENT
INVESTMENT
INVESTMENT
FINANCE
FINANCE
FINANCE
FINAANCE
FINANCE
WEALTH
MARKET
MARKET
MATKET
CAPITAL
CAPITALCAPITAL
CARGO CAPITAL
ECONOMICS
ECONOMICS
BANKING
Data Management is becoming increasingly challenging in the
financial services industry. Financial institutions, exchanges, and
market participants are undergoing significant and fundamental
transformation. In this context, it is extremely important to manage
creation and maintenance of data to ensure its relevance and
mitigate any risks arising out of data inconsistency. Data accuracy
and reliability is vital for a financial organization as it is mission
critical and a key enabler for all its business operations including
trade execution, risk management or compliance reporting.
Effective data management calls for seamless integration between
all elements of the overall data management lifecycle.
• Strategy
• Governance
• Operations
• Review, analysis and actions
In most financial institutions data is spread across multiple regions,
departments and systems. Several of these entities have to
reference data pertaining to parent company; however, there is no
central source of data. Instead, the entities have their own
nomenclature and data sources piled in silos and redundant
systems designed to extract and process data for individual
requirements. Apart from being an inefficient design, it is extremely
cost ineffective and prone to data inconsistency.
Reference Data Management (RDM) is a solution that addresses all
the above stated issues. It is a methodology of managing the
creation and maintenance of data that can be shared across
multiple regions, departments and systems. RDM collates data
from multiple sources, normalizes it into a standard format,
Introduction
Data management is the development and execution of
architectures, policies, practices, and procedures to manage the
information lifecycle needs of an enterprise in an effective manner.
validates the data for accuracy, and consolidates it into a single
consistent data copy for distribution.
This white paper analyses the need for Reference Data
Management in the financial services industry and elucidates the
challenges associated with its implementation. The paper also
focuses on the critical elements of RDM implementation and some
of the major benefits an organization can derive by implementing a
robust Reference Data Management into its IT infrastructure.
Data Management
Fundamental changes in the financial services industry have
created a significant impact on data management platforms. Some
of the key drivers of change are:
Diverse Instruments
In the quest to offer compelling products toclients, brokers/dealers
have created many innovative financial instruments. Currently, there
are more than eight million instruments, each requiring a firm to
maintain detailed, timely and accurate information. Derivative
issues are only one example of financially engineered securities
that did not exist just a few years ago. These new financial
products and their complex terms have become a challenge for
executives managing financial information.
Drivers behind Data Management
3
Changes in Market Mechanism
Trade execution mechanisms have been altered by the shifting
composition of market participants. For example, there has been a
rapid increase in the number of hedge funds and the emergence of
mega “buy-side” firms, many of which use program trading and
other algorithmic execution models. Decimalization and program
trading have led to a reduction in trade size with a corresponding
increase in volume. These factors have put a strain on data
management platforms as they are required to deliver high volumes
of data with low latency to black-box trading systems.
Regulations and Compliance
Regulation and compliance are also key drivers in the march
towards an improved data management platform. The emergence
of Basel II, Sarbanes-Oxley and other key risk and compliance
considerations has forced firms to place high priority on production
of accurate and timely data to feed internal risk management
systems. As a result, institutions must now meet a more stringent
fiduciary responsibility to provide correct data to regulatory
agencies. Faulty information can result in dire consequences and
catastrophic financial exposure.
Data Aggregators’s Expanding Role
The industry’s demand for a wide range of security attributes
and pricing information has given rise to an entire sub-industry
populated by vendors who specialize in financial data capture
and distribution. These vendors are playing an increasingly
significant role in managing and providing data. However,
managing multiple sources of data creates cost and consistency
issues that must be fixed.
categories, each with its own set of characteristics. Each of these
categories may have strong dependencies on each other.
However, failure to recognize these differences is risky. Projects
that do not address the unique nature of each data category will
invariably encounter problems and are likely tofail.
Primarily data can be categorized into the following types:
Transaction Activity Data - It represents the transactions that
operational systems are designed to automate.
Transaction Audit Data – It is the data that tracks the progress of
an individual transaction such as web logs and database logs.
Enterprise Structure Data – This is the data that represents the
structure of an enterprise, particularly for reporting business activity
by responsibility. It includes organizational structure and charts of
accounts.
Master Data – Master Data represents the parties to the
transaction of the enterprise. It describes the interactions when a
transaction occurs.
Reference Data – Reference Data is any kind of data that is used
solely to categorize other data found in a database, or solely for
relating data in a database to information beyond the boundaries of
the enterprise. In financial services, it includes descriptive
information about securities, corporations and individuals.
Market Data – In financial services, market data refers to real time
or historical information about prices.
Derived Data – Derived data refers to data that is derived from
other data. It is calculated by various calculators and models made
available to a wide range of applications.
4
Data is not a homogoneous entity. It consists of different
Data Classification
Most Relevant
to Design
Metadata
Increasing:
• Semantic Content
• Data Quality Importance
DATABASE
• Volume of Data
• Rates of Update
• Population Later in Time
• Shorter Life Span
Reference Data
Master Data
Enterprise Structure Data
Transaction Activity Data
Transaction Audit Data
Most Relevant
to Outside World
Most Relevant
to Business
Most Relevant
to Technology
Fig. 1 Categories of Data
Some of the common challenges financial institutions face are –
• Challenges in managing exponential increase of asset classess,
new securities and volume
Challenges of Reference Data ManagementChallenges of Reference Data Management
NIIT Technologies deploys new methodologies, proprietary
software, and tools from industry leading software vendors to tackle
reference data management challenges. There are many third party
product providers who focus on specific elements in the chain of
reference data management without having a holistic view of the
complexities surrounding the entire life cycle of reference data. Our
Reference Data Management (RDM) processes focus on these
complexities and are divided into four critical stages –
Data Acquisition
a. Data is acquired via robust market facing interfaces such as
Bloomberg, Reuters, and JJ Kenney
b. Data is continuously updated and monitored as it is critical for
successful data acquisition
Data Validation and Mapping
a. Automated reference data validation and mapping is done via
rule engines as Exception Management and lot of support is
required to perform manual data mapping
Data Enrichment and Transformation
a. Reference data is enriched and standardized
b. A golden copy of the data is created for instrument pricing
Data Distribution
a. Golden data is distributed to external third party systems
b. Audit trail and action tracking is performed as it is extremely
important at this stage
Our Reference Data Management ProcessOur Reference Data Management Process
Increased global regulatory pressure coupled with fragmented
regulatory landscape is making financial institutions realize the
value of putting a data governance strategy in place. Improving
data quality is an ongoing effort and financial institutions are facing
the challenge of improving their technology infrastructure to
address this issue. Reference data management projects are major
technology investments to improve data quality. Data integration
and the concept of a single source is a massive challenge
especially in APAC banks as data is still being managed in silos.
Increasing volume of data means working with multiple data
sources. Client data and the single view of the customer is a critical
area driven by regulations such a Anti Money Laundering (AML)
and Know Your Customer (KYC).
Historically firms have maintained, built and managed their own
security and client master databases in isolation from other market
participants. As these organizations expanded organically or
through acquisition, data silos matching each line of business
emerged. Most of these data platforms are similar in style and
content within and across firms. Typically they are maintained
through a combination of automated data feeds from external
vendors, internal applications and manual entries and adjustments.
It is not uncommon for these platforms to contain aging
infrastructure and disparate, highly de-centralized data stores.
• Duplicate data vendor purchase, expensive manual data cleansing
and poor data management leading to high aggregate costs
• Challenges in managing multiple securities masters, multiple
repositories and different sources of all asset classes across
different geographical markets
• Different identifiers (CUSIP,ISIN,SEDOL,internal identifier) used
by front offices and middle offices
5
Reference Data Management in
Financial Services
Based on the fundamental components of the data life cycle, NIIT
Technologies has developed a nine-step solution for end-to-end
reference data management. Our reference data management
solution enables firms to manage the entire reference data
environment - from vendor data rationalization to enterprise
reference data architecture design and integration; from indexing to
automated data cleansing and distribution. Our reference data
management offering includes the following elements:
Reference and Data Rationalization – This process workflow
creates a cross reference of each data element and rationalizes
reference data spend by identifying duplicate purchases.
Enterprise Data Architecture Assessment &Package
Implementations –This process is used to evaluate current
architecture, align it with future growth plans and identify
constraints for the enterprise reference data architecture.
Index and Normalize Securities Data – Uses a set of industry
standard tools, to create a consistent and single enterprise-wide
key matrix for all securities.
Automated Data Cleansing System – This system supports a
rule based commercial reference data cleansing systems to
process reference data.
Data Validation and Mapping – This process automates data
mapping and data validation based on rules engine. This prevents
automatic overrides.
Corporate Actions Processing – Helps maintain security
reference data by automatically applying corporate actions with
manual support for complex electives.
New Securities Setup – Enables continuous monitoring of
security masters and sets up new securities on demand.
ImplementationImplementation
Settlement PlatformSettlement Platform 6
Market Facing Client Facing
Reference Data Management
Rule & Configuration Engine
Server & Graphical User Interface
Financial
Instruments
Provider Specific
Data Updates Data Integrity Monitoring Audit Trail Action Tracking
Instrument Type Specific Market Specific Client Specific
Data
Acquisition
DataMapping
Data
Transformation
DataValidation
DataDistribution
Issuers
Instrument
Prices
Data Enrichment Validated Data
Records
Market Client
Exception
Management
Corporate
Actions
Daily & Annual
Tax Figures
Information Gathering Data Normalization & Validation Data Delivery
Data Receiver
• Accounting
• Compliance
• Back Office
Vendor Feeds
Data Vendors
Fig 2 Reference Data Management Solution
7
Enterprise Reference Data Distribution – Enable BOCADE
(Buy Once Clean and Distribute Everywhere) reference data
distribution across the enterprise and build audit capability for price
requests.
Instrument Pricing – Provides timely and accurate instrument
pricing data to bankers and financial advisors.
Reference Data Efficiency Dashboard – Makes RDMS black
box transparent by monitoring reference data consumption, quality
and cleansing status.
It includes pre-defined extensible data models and access methods
with powerful applications to centrally manage the quality and
lifecycle of business data.
Clean, consolidated and accurate data seamlessly propagated
throughout the enterprise can save companies millions of dollars a
year; dramatically increasing supply chain and selling efficiencies;
improve customer loyalty; and support sound corporate gover-
nance. NIIT Technologies has the implementation know-how to
develop and utilize best data management practices with proven
industry knowledge. These strengths have led to a large ecosystem
with a large number of partners.
Companies around the world are consolidating data; modernizing
applications; re-engineering business process; improving customer
loyalty scores and managing risk more efficiently by making use of
NIIT Technologies’ Reference Data Management solution.
NIIT Technologies reference data management solution delivers a
single, well defined, accurate, relevant, complete, and consistent
view of the data across multiple regions, departments and systems.
The results for companies that have implemented these solutions
are dramatic. They are successfully achieving the elusive goal – that
of a consolidated version of the data across the enterprise.
Strong Industry Focus
NIIT has several thousand person years of experience in designing,
building and maintaining large-scale applications for day-to-day
business and has considerable experience in Front Office, Middle
Office and Back Office operations. As per the Datamonitor Black
Book of Outsourcing 2010 survey, in the overall satisfaction ratings,
NIIT Technologies is ranked number 1 in the Data Management
Services. NIIT’s team has working knowledge of Charles River,
Calypso, Advent Moxy, Linedata Longview, MacGregor ITG, Eze
Castle, Omgeo, Bloomberg, Reuters, Yodlee solutions such as
“Yodlee Account Data gathering” and many other tools and
products used in the industry.
Financial services organizations deal with numerous financial instru-
ments ranging from stocks and funds to derivatives so as to meet
the requirements of the ever-increasing demands of the global
securities marketplace. As such they need to tackle a huge amount
of data to trade and keep track of these instruments.
NIIT Technologies Reference Data Management (RDM) solution
helps clients rationalize the process of reference data consumption.
It is designed to consolidate, cleanse, govern, and distribute these
key business data objects across the enterprise and across time.
ConclusionConclusion
NIIT Experience and Benefits
Fig 3 Reference Data Management Offerings
HolisticRDMSOffering
Reference and Data Rationalization
Index and Normalize securities data
Automated data cleansing systems
Data Validation & Mapping
New securities setup
Corporate actions processing
Enterprise reference data distribution
Instrument Pricing
Reference data efficiency dashboard
Enterprise data architecture assessment &
package implementations
Access to large resource base
NIIT has a large resource base of over 5000 analysts and consul-
tants and hence is able to quickly source professionals with the
desired skill sets required for the project. Furthermore, we also
possess the capability to ensure a quick ramp-up of project
resources when in need.
8
NIIT offerings span business and technology consulting, application
development and management services, IT infrastructure services,
and business process outsourcing. Our services to customer-
partners across the world has led to the evolution of a strong value-
optimizing framework for offering similar services through a cost
effective delivery model that can be used in single shore, dual or
multi shore formats.
Mature Best-in-class Process Framework
NIIT software factories are ISO 27001, CMMi Level 5 and PCM Level
5 accredited. Our resources are therefore well versed with operating
in a highly mature process oriented and secure environment and
bring this expertise to all client engagements.
Technology Bandwidth
A global IT sourcing organization | 21 locations and 14 countries | 7000+ professionals | Level 5 of SEI-CMMi, ver1.2
ISO 27001 certified | Level 5 of People CMM Framework
D_09_220612
Write to us at marketing@niit-tech.com www.niit-tech.com
NIIT Technologies is a leading IT solutions organization, servicing customers in North America,
Europe, Middle East, Asia and Australia. The company offers services in Application
Development and Maintenance, Managed Services, Cloud Computing and Business Process
Outsourcing to organizations in the Financial Services, Insurance, Travel, Transportation and
Logistics, Manufacturing and Distribution and Government sectors.
The company’s deep domain knowledge and new approaches to customer experience
management with robust outsourcing capabilities, and a dual shore delivery model, have made
NIIT Technologies a preferred IT partner for global majors in these chosen industries. Profound
and enduring customer engagements have become a hallmark of NIIT Technologies.
NIIT Technologies vision is to be the “First Choice” of services for the focused segments
serviced. The company has a simple strategy - to focus and differentiate. It competes on the
strength of its specialization.
Over the years the company has forged extremely rewarding relationships with global majors, a
testimony to mutual commitment and its ability to retain marquee clients, drawing repeat
business from them. Whether it is global banking and insurance major, leading Asset
Management solutions provider, the Number Two cement manufacturer, or travel big-wigs, NIIT
Technologies has been able to scale its interactions with these marquee clients into extremely
meaningful, multi-year "collaborations.
About NIIT Technologies
Vinit Sharma is a Business Solution designer within the Banking and Financial Services practice
at NIIT Technologies Ltd. He has over 8 years of experience. His expertise includes Capital
Markets, Corporate Finance, Credit Card and US Mortgage business.
About the Author
Europe
Singapore
India
NIIT Technologies Ltd.
Corporate Heights (Tapasya)
Plot No. 5, EFGH, Sector 126
Noida-Greater Noida Expressway
Noida – 201301, U.P., India
Ph: +91 1 120 399 9555
Fax: +91 1 120 399 9150
Americas
NIIT Technologies Inc.,
1050 Crown Pointe Parkway
5th
Floor, Atlanta, GA 30338, USA
Ph: +1 (770) 551 9494
Toll Free: +1 (888) 454 NIIT
Fax: +1 (770) 551 9229
NIIT Technologies Limited
2nd
Floor, 47 Mark Lane
London - EC3R 7QQ, U.K.
Ph: +44 (0) 20 70020700
Fax: +44 (0) 20 70020701
NIIT Technologies Pte. Limited
31 Kaki Bukit Road 3
#05-13 Techlink
Singapore 417818
Ph: +65 68488300
Fax: +65 68488322

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Reference data management in financial services industry

  • 1. www.niit-tech.com NIIT Technologies White Paper Reference Data Management in Financial Services Industry Reference Data Management in Financial Services Industry Vinit Sharma
  • 2. Reference Data Management 1 Introduction 3 Data Management 3 Drivers behind Data Management 3 Data Classification 4 Reference Data Management in Financial Services 4 Challenges of Reference Data Management 5 Our Reference Data Management Process 5 Implementation 6 Conclusion 8 NIIT Experience and Benefits 8 About Author 9 About NIIT Technologies 9 CONTENTS
  • 3. INVESTMENT REVENUEREVENUE INVESTMENT INVESTMENT INVESTMENT FINANCE FINANCE FINANCE FINAANCE FINANCE WEALTH MARKET MARKET MATKET CAPITAL CAPITALCAPITAL CARGO CAPITAL ECONOMICS ECONOMICS BANKING Data Management is becoming increasingly challenging in the financial services industry. Financial institutions, exchanges, and market participants are undergoing significant and fundamental transformation. In this context, it is extremely important to manage creation and maintenance of data to ensure its relevance and mitigate any risks arising out of data inconsistency. Data accuracy and reliability is vital for a financial organization as it is mission critical and a key enabler for all its business operations including trade execution, risk management or compliance reporting. Effective data management calls for seamless integration between all elements of the overall data management lifecycle. • Strategy • Governance • Operations • Review, analysis and actions In most financial institutions data is spread across multiple regions, departments and systems. Several of these entities have to reference data pertaining to parent company; however, there is no central source of data. Instead, the entities have their own nomenclature and data sources piled in silos and redundant systems designed to extract and process data for individual requirements. Apart from being an inefficient design, it is extremely cost ineffective and prone to data inconsistency. Reference Data Management (RDM) is a solution that addresses all the above stated issues. It is a methodology of managing the creation and maintenance of data that can be shared across multiple regions, departments and systems. RDM collates data from multiple sources, normalizes it into a standard format, Introduction Data management is the development and execution of architectures, policies, practices, and procedures to manage the information lifecycle needs of an enterprise in an effective manner. validates the data for accuracy, and consolidates it into a single consistent data copy for distribution. This white paper analyses the need for Reference Data Management in the financial services industry and elucidates the challenges associated with its implementation. The paper also focuses on the critical elements of RDM implementation and some of the major benefits an organization can derive by implementing a robust Reference Data Management into its IT infrastructure. Data Management Fundamental changes in the financial services industry have created a significant impact on data management platforms. Some of the key drivers of change are: Diverse Instruments In the quest to offer compelling products toclients, brokers/dealers have created many innovative financial instruments. Currently, there are more than eight million instruments, each requiring a firm to maintain detailed, timely and accurate information. Derivative issues are only one example of financially engineered securities that did not exist just a few years ago. These new financial products and their complex terms have become a challenge for executives managing financial information. Drivers behind Data Management 3
  • 4. Changes in Market Mechanism Trade execution mechanisms have been altered by the shifting composition of market participants. For example, there has been a rapid increase in the number of hedge funds and the emergence of mega “buy-side” firms, many of which use program trading and other algorithmic execution models. Decimalization and program trading have led to a reduction in trade size with a corresponding increase in volume. These factors have put a strain on data management platforms as they are required to deliver high volumes of data with low latency to black-box trading systems. Regulations and Compliance Regulation and compliance are also key drivers in the march towards an improved data management platform. The emergence of Basel II, Sarbanes-Oxley and other key risk and compliance considerations has forced firms to place high priority on production of accurate and timely data to feed internal risk management systems. As a result, institutions must now meet a more stringent fiduciary responsibility to provide correct data to regulatory agencies. Faulty information can result in dire consequences and catastrophic financial exposure. Data Aggregators’s Expanding Role The industry’s demand for a wide range of security attributes and pricing information has given rise to an entire sub-industry populated by vendors who specialize in financial data capture and distribution. These vendors are playing an increasingly significant role in managing and providing data. However, managing multiple sources of data creates cost and consistency issues that must be fixed. categories, each with its own set of characteristics. Each of these categories may have strong dependencies on each other. However, failure to recognize these differences is risky. Projects that do not address the unique nature of each data category will invariably encounter problems and are likely tofail. Primarily data can be categorized into the following types: Transaction Activity Data - It represents the transactions that operational systems are designed to automate. Transaction Audit Data – It is the data that tracks the progress of an individual transaction such as web logs and database logs. Enterprise Structure Data – This is the data that represents the structure of an enterprise, particularly for reporting business activity by responsibility. It includes organizational structure and charts of accounts. Master Data – Master Data represents the parties to the transaction of the enterprise. It describes the interactions when a transaction occurs. Reference Data – Reference Data is any kind of data that is used solely to categorize other data found in a database, or solely for relating data in a database to information beyond the boundaries of the enterprise. In financial services, it includes descriptive information about securities, corporations and individuals. Market Data – In financial services, market data refers to real time or historical information about prices. Derived Data – Derived data refers to data that is derived from other data. It is calculated by various calculators and models made available to a wide range of applications. 4 Data is not a homogoneous entity. It consists of different Data Classification Most Relevant to Design Metadata Increasing: • Semantic Content • Data Quality Importance DATABASE • Volume of Data • Rates of Update • Population Later in Time • Shorter Life Span Reference Data Master Data Enterprise Structure Data Transaction Activity Data Transaction Audit Data Most Relevant to Outside World Most Relevant to Business Most Relevant to Technology Fig. 1 Categories of Data
  • 5. Some of the common challenges financial institutions face are – • Challenges in managing exponential increase of asset classess, new securities and volume Challenges of Reference Data ManagementChallenges of Reference Data Management NIIT Technologies deploys new methodologies, proprietary software, and tools from industry leading software vendors to tackle reference data management challenges. There are many third party product providers who focus on specific elements in the chain of reference data management without having a holistic view of the complexities surrounding the entire life cycle of reference data. Our Reference Data Management (RDM) processes focus on these complexities and are divided into four critical stages – Data Acquisition a. Data is acquired via robust market facing interfaces such as Bloomberg, Reuters, and JJ Kenney b. Data is continuously updated and monitored as it is critical for successful data acquisition Data Validation and Mapping a. Automated reference data validation and mapping is done via rule engines as Exception Management and lot of support is required to perform manual data mapping Data Enrichment and Transformation a. Reference data is enriched and standardized b. A golden copy of the data is created for instrument pricing Data Distribution a. Golden data is distributed to external third party systems b. Audit trail and action tracking is performed as it is extremely important at this stage Our Reference Data Management ProcessOur Reference Data Management Process Increased global regulatory pressure coupled with fragmented regulatory landscape is making financial institutions realize the value of putting a data governance strategy in place. Improving data quality is an ongoing effort and financial institutions are facing the challenge of improving their technology infrastructure to address this issue. Reference data management projects are major technology investments to improve data quality. Data integration and the concept of a single source is a massive challenge especially in APAC banks as data is still being managed in silos. Increasing volume of data means working with multiple data sources. Client data and the single view of the customer is a critical area driven by regulations such a Anti Money Laundering (AML) and Know Your Customer (KYC). Historically firms have maintained, built and managed their own security and client master databases in isolation from other market participants. As these organizations expanded organically or through acquisition, data silos matching each line of business emerged. Most of these data platforms are similar in style and content within and across firms. Typically they are maintained through a combination of automated data feeds from external vendors, internal applications and manual entries and adjustments. It is not uncommon for these platforms to contain aging infrastructure and disparate, highly de-centralized data stores. • Duplicate data vendor purchase, expensive manual data cleansing and poor data management leading to high aggregate costs • Challenges in managing multiple securities masters, multiple repositories and different sources of all asset classes across different geographical markets • Different identifiers (CUSIP,ISIN,SEDOL,internal identifier) used by front offices and middle offices 5 Reference Data Management in Financial Services
  • 6. Based on the fundamental components of the data life cycle, NIIT Technologies has developed a nine-step solution for end-to-end reference data management. Our reference data management solution enables firms to manage the entire reference data environment - from vendor data rationalization to enterprise reference data architecture design and integration; from indexing to automated data cleansing and distribution. Our reference data management offering includes the following elements: Reference and Data Rationalization – This process workflow creates a cross reference of each data element and rationalizes reference data spend by identifying duplicate purchases. Enterprise Data Architecture Assessment &Package Implementations –This process is used to evaluate current architecture, align it with future growth plans and identify constraints for the enterprise reference data architecture. Index and Normalize Securities Data – Uses a set of industry standard tools, to create a consistent and single enterprise-wide key matrix for all securities. Automated Data Cleansing System – This system supports a rule based commercial reference data cleansing systems to process reference data. Data Validation and Mapping – This process automates data mapping and data validation based on rules engine. This prevents automatic overrides. Corporate Actions Processing – Helps maintain security reference data by automatically applying corporate actions with manual support for complex electives. New Securities Setup – Enables continuous monitoring of security masters and sets up new securities on demand. ImplementationImplementation Settlement PlatformSettlement Platform 6 Market Facing Client Facing Reference Data Management Rule & Configuration Engine Server & Graphical User Interface Financial Instruments Provider Specific Data Updates Data Integrity Monitoring Audit Trail Action Tracking Instrument Type Specific Market Specific Client Specific Data Acquisition DataMapping Data Transformation DataValidation DataDistribution Issuers Instrument Prices Data Enrichment Validated Data Records Market Client Exception Management Corporate Actions Daily & Annual Tax Figures Information Gathering Data Normalization & Validation Data Delivery Data Receiver • Accounting • Compliance • Back Office Vendor Feeds Data Vendors Fig 2 Reference Data Management Solution
  • 7. 7 Enterprise Reference Data Distribution – Enable BOCADE (Buy Once Clean and Distribute Everywhere) reference data distribution across the enterprise and build audit capability for price requests. Instrument Pricing – Provides timely and accurate instrument pricing data to bankers and financial advisors. Reference Data Efficiency Dashboard – Makes RDMS black box transparent by monitoring reference data consumption, quality and cleansing status. It includes pre-defined extensible data models and access methods with powerful applications to centrally manage the quality and lifecycle of business data. Clean, consolidated and accurate data seamlessly propagated throughout the enterprise can save companies millions of dollars a year; dramatically increasing supply chain and selling efficiencies; improve customer loyalty; and support sound corporate gover- nance. NIIT Technologies has the implementation know-how to develop and utilize best data management practices with proven industry knowledge. These strengths have led to a large ecosystem with a large number of partners. Companies around the world are consolidating data; modernizing applications; re-engineering business process; improving customer loyalty scores and managing risk more efficiently by making use of NIIT Technologies’ Reference Data Management solution. NIIT Technologies reference data management solution delivers a single, well defined, accurate, relevant, complete, and consistent view of the data across multiple regions, departments and systems. The results for companies that have implemented these solutions are dramatic. They are successfully achieving the elusive goal – that of a consolidated version of the data across the enterprise. Strong Industry Focus NIIT has several thousand person years of experience in designing, building and maintaining large-scale applications for day-to-day business and has considerable experience in Front Office, Middle Office and Back Office operations. As per the Datamonitor Black Book of Outsourcing 2010 survey, in the overall satisfaction ratings, NIIT Technologies is ranked number 1 in the Data Management Services. NIIT’s team has working knowledge of Charles River, Calypso, Advent Moxy, Linedata Longview, MacGregor ITG, Eze Castle, Omgeo, Bloomberg, Reuters, Yodlee solutions such as “Yodlee Account Data gathering” and many other tools and products used in the industry. Financial services organizations deal with numerous financial instru- ments ranging from stocks and funds to derivatives so as to meet the requirements of the ever-increasing demands of the global securities marketplace. As such they need to tackle a huge amount of data to trade and keep track of these instruments. NIIT Technologies Reference Data Management (RDM) solution helps clients rationalize the process of reference data consumption. It is designed to consolidate, cleanse, govern, and distribute these key business data objects across the enterprise and across time. ConclusionConclusion NIIT Experience and Benefits Fig 3 Reference Data Management Offerings HolisticRDMSOffering Reference and Data Rationalization Index and Normalize securities data Automated data cleansing systems Data Validation & Mapping New securities setup Corporate actions processing Enterprise reference data distribution Instrument Pricing Reference data efficiency dashboard Enterprise data architecture assessment & package implementations
  • 8. Access to large resource base NIIT has a large resource base of over 5000 analysts and consul- tants and hence is able to quickly source professionals with the desired skill sets required for the project. Furthermore, we also possess the capability to ensure a quick ramp-up of project resources when in need. 8 NIIT offerings span business and technology consulting, application development and management services, IT infrastructure services, and business process outsourcing. Our services to customer- partners across the world has led to the evolution of a strong value- optimizing framework for offering similar services through a cost effective delivery model that can be used in single shore, dual or multi shore formats. Mature Best-in-class Process Framework NIIT software factories are ISO 27001, CMMi Level 5 and PCM Level 5 accredited. Our resources are therefore well versed with operating in a highly mature process oriented and secure environment and bring this expertise to all client engagements. Technology Bandwidth
  • 9. A global IT sourcing organization | 21 locations and 14 countries | 7000+ professionals | Level 5 of SEI-CMMi, ver1.2 ISO 27001 certified | Level 5 of People CMM Framework D_09_220612 Write to us at marketing@niit-tech.com www.niit-tech.com NIIT Technologies is a leading IT solutions organization, servicing customers in North America, Europe, Middle East, Asia and Australia. The company offers services in Application Development and Maintenance, Managed Services, Cloud Computing and Business Process Outsourcing to organizations in the Financial Services, Insurance, Travel, Transportation and Logistics, Manufacturing and Distribution and Government sectors. The company’s deep domain knowledge and new approaches to customer experience management with robust outsourcing capabilities, and a dual shore delivery model, have made NIIT Technologies a preferred IT partner for global majors in these chosen industries. Profound and enduring customer engagements have become a hallmark of NIIT Technologies. NIIT Technologies vision is to be the “First Choice” of services for the focused segments serviced. The company has a simple strategy - to focus and differentiate. It competes on the strength of its specialization. Over the years the company has forged extremely rewarding relationships with global majors, a testimony to mutual commitment and its ability to retain marquee clients, drawing repeat business from them. Whether it is global banking and insurance major, leading Asset Management solutions provider, the Number Two cement manufacturer, or travel big-wigs, NIIT Technologies has been able to scale its interactions with these marquee clients into extremely meaningful, multi-year "collaborations. About NIIT Technologies Vinit Sharma is a Business Solution designer within the Banking and Financial Services practice at NIIT Technologies Ltd. He has over 8 years of experience. His expertise includes Capital Markets, Corporate Finance, Credit Card and US Mortgage business. About the Author Europe Singapore India NIIT Technologies Ltd. Corporate Heights (Tapasya) Plot No. 5, EFGH, Sector 126 Noida-Greater Noida Expressway Noida – 201301, U.P., India Ph: +91 1 120 399 9555 Fax: +91 1 120 399 9150 Americas NIIT Technologies Inc., 1050 Crown Pointe Parkway 5th Floor, Atlanta, GA 30338, USA Ph: +1 (770) 551 9494 Toll Free: +1 (888) 454 NIIT Fax: +1 (770) 551 9229 NIIT Technologies Limited 2nd Floor, 47 Mark Lane London - EC3R 7QQ, U.K. Ph: +44 (0) 20 70020700 Fax: +44 (0) 20 70020701 NIIT Technologies Pte. Limited 31 Kaki Bukit Road 3 #05-13 Techlink Singapore 417818 Ph: +65 68488300 Fax: +65 68488322