The information model at Banco de Portugal: innovative and flexible data solutions 1
|
|
|
- Alfred Francis
- 10 years ago
- Views:
Transcription
1 The information model at Banco de Portugal: innovative and flexible data solutions 1 João Cadete de Matos Director, Statistics Department 1. Introduction Efficient management of information is of the foremost importance to central banks. To cope with the tasks for which it is incumbent, the Banco de Portugal, as indeed most national central banks, need to manage huge amounts of data and other information. Therefore, to reap the benefits of ongoing advancements in IT systems it is critical to set up capable and flexible information models, while guaranteeing and improving the integrity, control, transparency and sharing of data. With this in mind, Banco de Portugal (hereinafter referred as the Bank ) is revamping its information model, including a streamlined governance structure, a revisited relationships management model and a continually improving information architecture based on micro data and a Data Warehouse (DW). 2. Integrated Management of Information The new integrated management of information model is intended to contribute to the: Elimination of unjustified redundancies. Definition of efficient mechanisms for compiling information. Improvement of the quality and integrity of data. Dissemination and agile consultation of the information. Attaining these goals presupposes an effective cooperation between different functions of the Bank, based on sharing of knowledge and the identification of the information needs of both users and producers. The starting point is the conduction of a systematic and rigorous survey on the information requirements that are essential to pursuing the different tasks of the Bank. 1 I would to thank Luís D Aguiar, António Silva and Alexandra Miguel, from the Statistics Department, for their valuable contributions to this paper.
2 Three dimensions constitute the cornerstones of the integrated information model: the governance structure, a relationships management model and information architecture based on micro data and a DW Governance Structure The definition of an Information Governance Structure aims to ensure proper alignment between the strategic and operational levels of decision, which are mediated by the information management level of decision. The Statistics Department is in charge of the operational management, including: a. Coordinating and monitoring the process of collecting quantitative information from external entities. b. Ensuring the central point of contact of the Bank with external entities on the reporting of quantitative information. c. Promoting, in conjunction with the IT Department and the user departments, the: Organization of information architectures, namely by identifying objects, features and respective relationships and configuring the domains of integration to manage. Definition of concepts and creation of metadata associated with different information objects in order to avoid duplication and facilitate the understanding/utilization of information. Creation of catalogues/dictionaries/repositories of information available on particular operating systems. d. Monitoring the interaction and timely reporting of information to and from external entities. e. Analyzing the changing needs of quantitative information identified by other departments. f. Guaranteeing the quality of information, defining indicators of their use and ensuring its relevance and auditability. In this context, the various departments that are originators/users of information have the decentralized responsibility, in collaboration with the department responsible for the centralized management of information, of analyzing in a critical manner the information and metadata that is most important for them and ensure its quality. They also collaborate on the identification of the functional requirements, having in mind the integrated and shared management of information the identification of functional requirements is the basis for the consolidation of logical and technological architecture. Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 2
3 The several departments involved including the department responsible for the operational management of information the Statistic Department must create structures that guarantee the coordination of the projects that are implemented Relationships Management The relationships management between the various actors seeks to introduce greater efficiency in the communication process, normalizing and formatting it in the perspective of the customer. It is based in two principles: i. Information is a key asset of the Bank so it must be managed in an integrated way. ii. The exploration and analysis of information are distributed activities, typically related with the needs and tasks of each department. An efficient management of information should be based on shared management, which requires a separation of responsibility between the originator/user of information and the manager of information. The first is best done in a decentralized way by each department, while the latter should be concentrated in a single department. In fact, given that information is a common good it should be managed by specialists these specialists are better placed to collect, classify, manipulate, store, recover and disseminate information. Moreover, to the users departments and the department that manages the information the relationship model includes two other players: the suppliers of information and the external clients Information Architecture: Micro databases and a Data Warehouse The Information Architecture is the infrastructural base of the information management and its aim consists of ensuring the quality, auditability and manageability of the data. It also serves to establish levels of responsibility in the management of information, separating the activities related to the organization and processing of information from the analysis and exploration activities. It is based in five layers where the division between the information management and the exploration and analytics activities occurs from the 3rd to the 4th layer (Figure 1). To facilitate the integration of the different domains and reduce the production burden and eliminate redundancies it is important to develop high quality reference tables and to maintain upto date metadata and catalogs. We will turn our focus on two key aspects of the Information model the predominant use of micro data as input and the DW. These two aspects are related to the organization and processing of information activities but have a strong influence on the analytical and exploration capabilities of the information model. Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 3
4 Figure 1 The Information Model Micro data The increasing demand for comprehensive, detailed and high quality information has led the Bank to opt to increase its statistical exploration of available micro databases. In fact, conventional data collecting systems cannot keep on expanding indefinitely to keep up with the ever increasing need to fill information gaps or future data requirements 2 (Figure 2). In this respect, several advantages can be observed in micro data such as, good population coverage, increased flexibility, relatively low reporting costs and more rapid response to ad hoc data requirements. Figure 2 Micro data Strengths and Opportunities 2 Please refer to Menezes, P. & D Aguiar, L. (2013a) for a list of motives for not pursuing recurrently this approach. Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 4
5 At the Statistics Department our micro databases already provide a good coverage of the economies financial assets and liabilities, by sector and financial instrument (Figure 3). The Securities Statistics Integrated System (SSIS) gives us granular information on all kinds of securities; the Central Credit Register (CCR) has micro data regarding loans to all sectors; the Central Balance Sheet Database (CBSD) gives us a complete view on the non financial sector assets and liabilities; the Balance Sheet Information (BSI) on Financial Corporations has granular information on the assets and liabilities of the sector; the BoP/IIP system supplies micro data on the assets and liabilities of the Rest of the World sector. To complete the picture, it would be feasible to get information on Insurance and Technical Reserves and also more granular information regarding the General Government sector. However, our most immediate goal is to get granular data on Currency and Deposits, which would allow us, in the shortest possible time, to have very reasonable micro data coverage of the economies total financial assets and liabilities. Figure 3 National financial accounts: financial assets and liabilities, by sector and financial instrument An example that can attest to the advantages of micro data has very recently been observed in Portugal. From 2011 to 2014 the country has been under a Financial Assistance Programme led by the International Monetary Fund (IMF), the European Commission and the European Central Bank (ECB) the so called Troika. Considering that one of Portugal s woes is related to high nonfinancial sector private (and public) indebtedness, the Troika specifically asked the Bank to produce a comprehensive range of statistics related to non financial indebtedness. Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 5
6 Using the available micro databases, namely the Central Balance Sheet Database (CBSD), the Securities Statistics Integrated System (SSIS) and the Central Credit Register (CCR), and taking advantage of the reference tables and related administrative sources, the Bank was able to go beyond what was requested and started to publish, in the beginning of , very detailed statistics on non financial sector indebtedness, including break downs by sector, companies size, exporting vs non exporting companies, financing sector, types of loans, loans maturities, etc. Figures 4 and 5 are a good example of the kind of information that we have started to publish. Figure 4 Non financial sector indebtedness Figure 5 Loans to non financial corporations, yearly rate 3 Please see the press release on the new chapter on non financial indebtedness. Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 6
7 Data warehouse Clearly, the use of micro data could allow us to develop innovative statistical products faster and in a more cost efficient manner in case a DW is available. Such a structure is currently being set up and the Bank foresees great advantages in the future from its exploration. A DW guarantees a central access point to every statistical data, independently of the input source or the production process a common technological infrastructure across multiple information systems makes it easier to integrate and reuse components and promotes data access efficiency and transparency to final users. A DW strategy typically falls in one of the following cases: A top down approach, whereby a central DW is first constructed, from which are then extracted specific data marts for each business process. It allows the integration of multiple information domains, achieved through a global development effort. However, its intrinsic difficulty, together with the time and cost required to obtain the first results, explain its high failure rate. A bottom up approach, whereby several data marts are first developed, on the basis of which the global DW is incrementally built. This allows for reducing the risk of the projects and speeds up the achievement of the first results. The problem with this approach is that it often results in new information silos, when successive isolated projects fail to promote the integration of data from different sources. Figure 6 Data Warehouse Incremental approach The Bank opted for the second approach, on the grounds that in our case there is an intermediate area the so called working data store, where production processes take place, accessing data from different domains already stored in the DW unlike the more common situations, in which Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 7
8 data flows from source systems only in one direction and the construction of the DW has no upstream impacts. In fact, the additional complexity arising from this dual dependency, in which information providing processes are at the same time clients of the DW, suggests following an incremental approach (Figure 6). 3. Quality management and audit operations Quality is an essential element to secure confidence in the production and dissemination of statistics. In the field of statistical quality management, the Statistics Department has established a Statistics Audit Unit (hereinafter referred as the Unit ) which deals with transversal subjects such as, statistical audit operations and also the production of Quality Reports and Quality Manuals. This work goes beyond the quality control procedures and working arrangements implemented in each specific domain of statistical compilation, and helps ensure an effective statistical quality control. Concerning statistical audit operations the Unit: (i) analyses and evaluates the different phases of statistical production procedures in place; (ii) analyses the organizational and functioning aspects; (iii) evaluates the efficiency of the procedures; (iv) contributes to enhance methods and applied techniques by issuing suggestions and/or recommendations; and (v) encourages and promotes the sharing and comparing of best practices and procedures among the different areas of the Statistics Department. The operations concluded so far have produced a significant number of recommendations and suggestions that either have already been implemented by the units under audit or are in a process of being implemented. Once a year, Quality Reports (compiler oriented) are produced to assess the quality of the current statistical compilation. These reports focus on statistical results, basing the analysis on a series of quality indicators for the various statistics, taking into account their specific nature and critical points in their compilation process. To this end, the Data Quality Assessment Framework s basic structure (the IMF s benchmark to assess statistical quality) is used as the key reference for this analysis. Another area of current work relates to the preparation of Quality Manuals (user oriented) on the statistics in charge of the Bank. This activity aims at improving the knowledge and increasing the transparency of both the production processes and the quality control procedures in place, with the purpose of enhancing the users confidence in the statistics compiled. Up to now, two documents (published as Supplements to the Monthly Statistical Bulletin) have been produced in the field of statistical quality control: Quality management in Banco de Portugal s statistics, January 2012, and Quality management in monetary financial institutions balance sheet statistics, September Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 8
9 4. Concluding remarks The integrated information model is an ongoing project of continual improvement and its final aim is to guarantee flexible and efficient data solutions that contribute effectively to the different and evolving tasks of the Bank. To that end, good definitions of the governance structure and relationships model are essential. However, it is the multi dominium information architecture, with a strong emphasis on the use of micro data and the development of a DW that, ultimately, constitute the extra added value and the innovative solution of Banco the Portugal s information model by allowing greater flexibility to adapt to changing needs and respond to ad hoc requests in a cost efficient manner both to the compiler and the respondents while guaranteeing very high standards of quality References: Almeida, Ana M et al (2011) Promoting enhanced responsiveness to users data needs: the experience of the Banco de Portugal in exploring the statistical potential of micro databases, 58th World Statistics Congress. Dublin. October Cadete de Matos, João (2012) Drawn to excellence a sample of issues critical for compiling and disseminating central bank statistics, Joint Meeting of the y BIS and the jspe. Almada. July Cadete de Matos, J. & Marques, C. (2012) Innovative solutions to compile balance of payments statistics minimising costs and ensuring quality, Seminar on Business Related Statistics. Luxembourg. February Martins, C. et al (2008) Arquitectura de BI Sistema de Informação Estatística, Banco de Portugal, June 2008 (not available in English). Menezes, P. & D Aguiar, L. (2012) Reaping the benefits of integrating the micro databases available at the Banco de Portugal, XIX Jornadas de Classificação e Análise de Dados (JOCLAD2012). Tomar. March Menezes, P. & D Aguiar, L. (2013) Impact and Benefits of Micro Databases Integration on the Statistics of the Banco de Portugal, 59th World Statistics Congress. Hong Kong, August Sanchas, R. & Aguiar, M. (2012) Business intelligence in statistical systems: a stepwise approach, XIX Jornadas de Classificação e Análise de Dados (JOCLAD2012). Tomar. March New chapter on non financial sector indebtedness, Press Release, Banco de Portugal, February Supplement to the Banco de Portugal Statistical Bulletin : Papers presented in the Workshop on Integrated Management, Porto, June Cadete de Matos, João The information model at Banco de Portugal: innovative and flexible data solutions, May 2014 Page 9
THOMAS RAVN PRACTICE DIRECTOR [email protected]. An Effective Approach to Master Data Management. March 4 th 2010, Reykjavik WWW.PLATON.
An Effective Approach to Master Management THOMAS RAVN PRACTICE DIRECTOR [email protected] March 4 th 2010, Reykjavik WWW.PLATON.NET Agenda Introduction to MDM The aspects of an effective MDM program How
Data Warehouse Overview. Srini Rengarajan
Data Warehouse Overview Srini Rengarajan Please mute Your cell! Agenda Data Warehouse Architecture Approaches to build a Data Warehouse Top Down Approach Bottom Up Approach Best Practices Case Example
Deploying Governed Data Discovery to Centralized and Decentralized Teams. Why Tableau and QlikView fall short
Deploying Governed Data Discovery to Centralized and Decentralized Teams Why Tableau and QlikView fall short Agenda 1. Managed self-service» The need of managed self-service» Issues with real-world BI
Business Intelligence and Analytics: Leveraging Information for Value Creation and Competitive Advantage
PRACTICES REPORT BEST PRACTICES SURVEY: AGGREGATE FINDINGS REPORT Business Intelligence and Analytics: Leveraging Information for Value Creation and Competitive Advantage April 2007 Table of Contents Program
Best Practices for Deploying Managed Self-Service Analytics and Why Tableau and QlikView Fall Short
Best Practices for Deploying Managed Self-Service Analytics and Why Tableau and QlikView Fall Short Vijay Anand, Director, Product Marketing Agenda 1. Managed self-service» The need of managed self-service»
META DATA QUALITY CONTROL ARCHITECTURE IN DATA WAREHOUSING
META DATA QUALITY CONTROL ARCHITECTURE IN DATA WAREHOUSING Ramesh Babu Palepu 1, Dr K V Sambasiva Rao 2 Dept of IT, Amrita Sai Institute of Science & Technology 1 MVR College of Engineering 2 [email protected]
Management Update: The Cornerstones of Business Intelligence Excellence
G00120819 T. Friedman, B. Hostmann Article 5 May 2004 Management Update: The Cornerstones of Business Intelligence Excellence Business value is the measure of success of a business intelligence (BI) initiative.
Enterprise Services Integration Transforming Features into Services
Enterprise Services Integration Transforming Features into Services The complexity of information systems for health sector organizations is a global challenge that results in an exponential increase in
Welcome to online seminar on. Oracle Agile PLM BI. Presented by: Rapidflow Apps Inc. January, 2011
Welcome to online seminar on Oracle Agile PLM BI Presented by: Rapidflow Apps Inc. January, 2011 Agenda Agile PLM BI Overview What is Agile BI? Who Needs Agile PLM BI? What does it offer? PLM Business
Fifteenth Meeting of the IMF Committee on Balance of Payments Statistics Canberra, Australia, October 21 25, 2001
BOPCOM-02/55 Fifteenth Meeting of the IMF Committee on Balance of Payments Statistics Canberra, Australia, October 21 25, 2001 Implementation of BPM5 in Compiling Balance of Payments Statistics of Hong
European Reporting Framework (ERF) - a possible solution to reporting challenges for banks
European Reporting Framework (ERF) - a possible solution to reporting challenges for banks STS 010 "Micro data for multipurpose data provision 60th World Statistics Congress ISI2015 Rio de Janeiro, Brazil
Enabling Data Quality
Enabling Data Quality Establishing Master Data Management (MDM) using Business Architecture supported by Information Architecture & Application Architecture (SOA) to enable Data Quality. 1 Background &
Data quality and metadata
Chapter IX. Data quality and metadata This draft is based on the text adopted by the UN Statistical Commission for purposes of international recommendations for industrial and distributive trade statistics.
Implementing Oracle BI Applications during an ERP Upgrade
Implementing Oracle BI Applications during an ERP Upgrade Summary Jamal Syed BI Practice Lead Emerging solutions 20 N. Wacker Drive Suite 1870 Chicago, IL 60606 Emerging Solutions, a professional services
Building a Data Quality Scorecard for Operational Data Governance
Building a Data Quality Scorecard for Operational Data Governance A White Paper by David Loshin WHITE PAPER Table of Contents Introduction.... 1 Establishing Business Objectives.... 1 Business Drivers...
ABOUT US WHO WE ARE. Helping you succeed against the odds...
ACCURACY DELIVERED ABOUT US WHO WE ARE BizAcuity is a fast growing Business intelligence strategy company, providing reliable, scalable and cost effective consultancy and services to clients across the
POLAR IT SERVICES. Business Intelligence Project Methodology
POLAR IT SERVICES Business Intelligence Project Methodology Table of Contents 1. Overview... 2 2. Visualize... 3 3. Planning and Architecture... 4 3.1 Define Requirements... 4 3.1.1 Define Attributes...
CAPABILITY MATURITY MODEL & ASSESSMENT
ENTERPRISE DATA GOVERNANCE CAPABILITY MATURITY MODEL & ASSESSMENT www.datalynx.com.au Data Governance Data governance is a key mechanism for establishing control of corporate data assets and enhancing
Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff
Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff The Challenge IT Executives are challenged with issues around data, compliancy, regulation and making confident decisions on their business
MDM and Data Warehousing Complement Each Other
Master Management MDM and Warehousing Complement Each Other Greater business value from both 2011 IBM Corporation Executive Summary Master Management (MDM) and Warehousing (DW) complement each other There
An Introduction to Master Data Management (MDM)
An Introduction to Master Data Management (MDM) Presented by: Robert Quinn, Sr. Solutions Architect FYI Business Solutions Agenda Introduction MDM Definition MDM Terms Best Practices Data Challenges MDM
Make the right decisions with Distribution Intelligence
Make the right decisions with Distribution Intelligence Bengt Jensfelt, Business Product Manager, Distribution Intelligence, April 2010 Introduction It is not so very long ago that most companies made
Effecting Data Quality Improvement through Data Virtualization
Effecting Data Quality Improvement through Data Virtualization Prepared for Composite Software by: David Loshin Knowledge Integrity, Inc. June, 2010 2010 Knowledge Integrity, Inc. Page 1 Introduction The
Service Oriented Architecture and the DBA Kathy Komer Aetna Inc. New England DB2 Users Group. Tuesday June 12 1:00-2:15
Service Oriented Architecture and the DBA Kathy Komer Aetna Inc. New England DB2 Users Group Tuesday June 12 1:00-2:15 Service Oriented Architecture and the DBA What is Service Oriented Architecture (SOA)
Implementing Oracle BI Applications during an ERP Upgrade
1 Implementing Oracle BI Applications during an ERP Upgrade Jamal Syed Table of Contents TABLE OF CONTENTS... 2 Executive Summary... 3 Planning an ERP Upgrade?... 4 A Need for Speed... 6 Impact of data
Structure of the presentation
Integration of Legacy Data (SLIMS) and Laboratory Information Management System (LIMS) through Development of a Data Warehouse Presenter N. Chikobi 2011.06.29 Structure of the presentation Background Preliminary
Central Credit Registers (CCRs) as a Multi Purpose Tool to close Data Gaps
Central Credit Registers (CCRs) as a Multi Purpose Tool to close Data Gaps Michael Ritter Deutsche Bundesbank Chair of the ESCB Working Group on Credit Registers Mexico City, May 2014 AGENDA I. General
Strategy and Developement In Austrian Bank-reporting
Strategy and Developement In Austrian Bank-reporting Johannes Turner Director Statistics Department Erich Hille Senior Advisor Statistics Department Budapest, 29.11.2012 OeNB Statistics Data model Agenda
Data warehouse Architectures and processes
Database and data mining group, Data warehouse Architectures and processes DATA WAREHOUSE: ARCHITECTURES AND PROCESSES - 1 Database and data mining group, Data warehouse architectures Separation between
Successful Outsourcing of Data Warehouse Support
Experience the commitment viewpoint Successful Outsourcing of Data Warehouse Support Focus IT management on the big picture, improve business value and reduce the cost of data Data warehouses can help
General Government debt: a quick way to improve comparability
General Government debt: a quick way to improve comparability DEMBIERMONT Christian* BIS Bank for International Settlements, Basel, Switzerland [email protected] In simple words the General
TDWI strives to provide course books that are content-rich and that serve as useful reference documents after a class has ended.
Previews of TDWI course books offer an opportunity to see the quality of our material and help you to select the courses that best fit your needs. The previews cannot be printed. TDWI strives to provide
ACCESS INTELLIGENCE. an intelligent step beyond Access Management. White Paper
ACCESS INTELLIGENCE an intelligent step beyond Access Management White Paper Table of Contents Access Intelligence an intelligent step beyond Access Management...3 The new Identity Access Management paradigm...3
Data Migration through an Information Development Approach An Executive Overview
Data Migration through an Approach An Executive Overview Introducing MIKE2.0 An Open Source Methodology for http://www.openmethodology.org Management and Technology Consultants Data Migration through an
Traditional BI vs. Business Data Lake A comparison
Traditional BI vs. Business Data Lake A comparison The need for new thinking around data storage and analysis Traditional Business Intelligence (BI) systems provide various levels and kinds of analyses
The Business Case for Information Management An Oracle Thought Leadership White Paper December 2008
The Business Case for Information Management An Oracle Thought Leadership White Paper December 2008 NOTE: The following is intended to outline our general product direction. It is intended for information
Using Master Data in Business Intelligence
helping build the smart business Using Master Data in Business Intelligence Colin White BI Research March 2007 Sponsored by SAP TABLE OF CONTENTS THE IMPORTANCE OF MASTER DATA MANAGEMENT 1 What is Master
Chapter 6 Basics of Data Integration. Fundamentals of Business Analytics RN Prasad and Seema Acharya
Chapter 6 Basics of Data Integration Fundamentals of Business Analytics Learning Objectives and Learning Outcomes Learning Objectives 1. Concepts of data integration 2. Needs and advantages of using data
Data Warehouse: Introduction
Base and Mining Group of Base and Mining Group of Base and Mining Group of Base and Mining Group of Base and Mining Group of Base and Mining Group of Base and Mining Group of base and data mining group,
JOURNAL OF OBJECT TECHNOLOGY
JOURNAL OF OBJECT TECHNOLOGY Online at www.jot.fm. Published by ETH Zurich, Chair of Software Engineering JOT, 2008 Vol. 7, No. 8, November-December 2008 What s Your Information Agenda? Mahesh H. Dodani,
HYPERION MASTER DATA MANAGEMENT SOLUTIONS FOR IT
HYPERION MASTER DATA MANAGEMENT SOLUTIONS FOR IT POINT-AND-SYNC MASTER DATA MANAGEMENT 04.2005 Hyperion s new master data management solution provides a centralized, transparent process for managing critical
SAP Thought Leadership Business Intelligence IMPLEMENTING BUSINESS INTELLIGENCE STANDARDS SAVE MONEY AND IMPROVE BUSINESS INSIGHT
SAP Thought Leadership Business Intelligence IMPLEMENTING BUSINESS INTELLIGENCE STANDARDS SAVE MONEY AND IMPROVE BUSINESS INSIGHT Your business intelligence strategy should take into account all sources
CHAPTER SIX DATA. Business Intelligence. 2011 The McGraw-Hill Companies, All Rights Reserved
CHAPTER SIX DATA Business Intelligence 2011 The McGraw-Hill Companies, All Rights Reserved 2 CHAPTER OVERVIEW SECTION 6.1 Data, Information, Databases The Business Benefits of High-Quality Information
8 Ways that Business Intelligence Projects are Different
8 Ways that Business Intelligence Projects are Different And How to Manage BI Projects to Ensure Success Business Intelligence and Data Warehousing projects have developed a reputation as being difficult,
Enterprise Information Management and Business Intelligence Initiatives at the Federal Reserve. XXXIV Meeting on Central Bank Systematization
Enterprise Information Management and Business Intelligence Initiatives at the Federal Reserve Kenneth Buckley Associate Director Division of Reserve Bank Operations and Payment Systems XXXIV Meeting on
Reduce and manage operating costs and improve efficiency. Support better business decisions based on availability of real-time information
Data Management Solutions Horizon Software Solution s Data Management Solutions provide organisations with confidence in control of their data as they change systems and implement new solutions. Data is
Tapping the benefits of business analytics and optimization
IBM Sales and Distribution Chemicals and Petroleum White Paper Tapping the benefits of business analytics and optimization A rich source of intelligence for the chemicals and petroleum industries 2 Tapping
Implementing a Data Warehouse with Microsoft SQL Server 2012
Course 10777 : Implementing a Data Warehouse with Microsoft SQL Server 2012 Page 1 of 8 Implementing a Data Warehouse with Microsoft SQL Server 2012 Course 10777: 4 days; Instructor-Led Introduction Data
Microsoft s Compliance Framework for Online Services
Microsoft s Compliance Framework for Online Services Online Services Security and Compliance Executive summary Contents Executive summary 1 The changing landscape for online services compliance 4 How Microsoft
White Paper www.wherescape.com
What s your story? White Paper Agile Requirements Epics and Themes help get you Started The Task List The Story Basic Story Structure One More Chapter to the Story Use the Story Structure to Define Tasks
Enable Business Agility and Speed Empower your business with proven multidomain master data management (MDM)
Enable Business Agility and Speed Empower your business with proven multidomain master data management (MDM) Customer Viewpoint By leveraging a well-thoughtout MDM strategy, we have been able to strengthen
3. Provide the capacity to analyse and report on priority business questions within the scope of the master datasets;
Business Intelligence Policy Version Information A. Introduction Purpose Business Intelligence refers to the practice of connecting facts, objects, people and processes of interest to an organisation in
Enhancing the synergies between the SSM and statistical reporting 1
The Seventh ECB Conference on Statistics 15 October 2014, Frankfurt am Main Session 1: Data needs of the Single Supervisory Mechanism Presenter: Mr Pedro Duarte Neves, Vice-Governor, Banco de Portugal
dxhub Denologix MDM Solution Page 1
Most successful large organizations are organized by lines of business (LOB). This has been a very successful way to organize for the accountability of profit and loss. It gives LOB leaders autonomy to
Conventional BI Solutions Are No Longer Sufficient
Exceeding Standards LOGO Mind Offers Quick Integration and Dynamic Reporting and Analysis! Provided by an avant-garde technology in its field, Logo Mind will carry your business one step ahead and offer
Government's Adoption of SOA and SOA Examples
Government's Adoption of SOA and SOA Examples Presented by : Ajay Budhraja, Chief of Enterprise Services ME (Engg), MS (Management), PMP, CICM, CSM, ECM (Master) AIIM, ITIL-F Copyright 2008 Ajay Budhraja
Business Intelligence
Transforming Information into Business Intelligence Solutions Business Intelligence Client Challenges The ability to make fast, reliable decisions based on accurate and usable information is essential
Integrated Finance, Risk, and Profitability Management for Insurance
SAP Brief SAP for Insurance SAP Cost and Revenue Allocation for Financial Products Objectives Integrated Finance, Risk, and Profitability Management for Insurance Gain deep business insights Gain deep
Master Data Management. Zahra Mansoori
Master Data Management Zahra Mansoori 1 1. Preference 2 A critical question arises How do you get from a thousand points of data entry to a single view of the business? We are going to answer this question
Explore the Possibilities
Explore the Possibilities 2013 HR Service Delivery Forum Best Practices in Data Management: Creating a Sustainable and Robust Repository for Reporting and Insights 2013 Towers Watson. All rights reserved.
Course Outline: Course: Implementing a Data Warehouse with Microsoft SQL Server 2012 Learning Method: Instructor-led Classroom Learning
Course Outline: Course: Implementing a Data with Microsoft SQL Server 2012 Learning Method: Instructor-led Classroom Learning Duration: 5.00 Day(s)/ 40 hrs Overview: This 5-day instructor-led course describes
Course Outline. Module 1: Introduction to Data Warehousing
Course Outline Module 1: Introduction to Data Warehousing This module provides an introduction to the key components of a data warehousing solution and the highlevel considerations you must take into account
Data Governance. Unlocking Value and Controlling Risk. Data Governance. www.mindyourprivacy.com
Data Governance Unlocking Value and Controlling Risk 1 White Paper Data Governance Table of contents Introduction... 3 Data Governance Program Goals in light of Privacy... 4 Data Governance Program Pillars...
Technical Management Strategic Capabilities Statement. Business Solutions for the Future
Technical Management Strategic Capabilities Statement Business Solutions for the Future When your business survival is at stake, you can t afford chances. So Don t. Think partnership think MTT Associates.
OPTIMUS SBR. Optimizing Results with Business Intelligence Governance CHOICE TOOLS. PRECISION AIM. BOLD ATTITUDE.
OPTIMUS SBR CHOICE TOOLS. PRECISION AIM. BOLD ATTITUDE. Optimizing Results with Business Intelligence Governance This paper investigates the importance of establishing a robust Business Intelligence (BI)
Oracle Architecture, Concepts & Facilities
COURSE CODE: COURSE TITLE: CURRENCY: AUDIENCE: ORAACF Oracle Architecture, Concepts & Facilities 10g & 11g Database administrators, system administrators and developers PREREQUISITES: At least 1 year of
Enterprise Information Flow
Enterprise Information Flow White paper Table of Contents 1. Why EIF 1 Answers to Tough Questions 1 2. Description and Scope of Enterprise Information Flow 3 Data and Information Structures 3 Data Attributes
Data Management Value Proposition
Data Management Value Proposition DATA MAY BE THE MOST IMPORTANT RESOURCE OF THE INSURANCE INDUSTRY Experts have long maintained that data are an important resource that must be carefully managed. Like
ESS EA TF Item 2 Enterprise Architecture for the ESS
ESS EA TF Item 2 Enterprise Architecture for the ESS Document prepared by Eurostat (with the support of Gartner INC) 1.0 Introduction The members of the European Statistical System (ESS) have set up a
Implementing a Data Warehouse with Microsoft SQL Server 2012 MOC 10777
Implementing a Data Warehouse with Microsoft SQL Server 2012 MOC 10777 Course Outline Module 1: Introduction to Data Warehousing This module provides an introduction to the key components of a data warehousing
EAI vs. ETL: Drawing Boundaries for Data Integration
A P P L I C A T I O N S A W h i t e P a p e r S e r i e s EAI and ETL technology have strengths and weaknesses alike. There are clear boundaries around the types of application integration projects most
Whitepaper. Data Warehouse/BI Testing Offering YOUR SUCCESS IS OUR FOCUS. Published on: January 2009 Author: BIBA PRACTICE
YOUR SUCCESS IS OUR FOCUS Whitepaper Published on: January 2009 Author: BIBA PRACTICE 2009 Hexaware Technologies. All rights reserved. Table of Contents 1. 2. Data Warehouse - Typical pain points 3. Hexaware
Statistical Compilation and Data Management Framework: Malaysia s Experience
Statistical Compilation and Data Management Framework: Malaysia s Experience The 2015 AFI Global Policy Forum Maputo, Mozambique, 3-4 September 2015 Session Title: Harnessing Technology for Effective Financial
Centralized Operations: Strategies for Today and Tomorrow
Centralized Operations: Strategies for Today and Tomorrow Higher Efficiency, Better Quality, Quicker Readiness Managed Services White Paper Contents 1. Executive Summary... 1 2. Why Centralization Now?...
White Paper. Software Development Best Practices: Enterprise Code Portal
White Paper Software Development Best Practices: Enterprise Code Portal An Enterprise Code Portal is an inside the firewall software solution that enables enterprise software development organizations
Data warehouse and Business Intelligence Collateral
Data warehouse and Business Intelligence Collateral Page 1 of 12 DATA WAREHOUSE AND BUSINESS INTELLIGENCE COLLATERAL Brains for the corporate brawn: In the current scenario of the business world, the competition
Are You Big Data Ready?
ACS 2015 Annual Canberra Conference Are You Big Data Ready? Vladimir Videnovic Business Solutions Director Oracle Big Data and Analytics Introduction Introduction What is Big Data? If you can't explain
Case Study. ElegantJ BI Business Intelligence. ElegantJ BI Business Intelligence Implementation for a leading Pharmaceuticals Company in India
ISO 9001:2008 www.elegantjbi.com Get competitive with ElegantJ BI,today.. To learn more about leveraging ElegantJ BI Solutions for your business, please visit our website. Client The client is a leading
Banking Business Intelligence
Banking Business Intelligence Produces Quality Reports, Dashboards and Analytics for your Business Business Intelligence Performance Management Data Enrichment Much More than Traditional BI Financials
Lean Processes in Customer Master Data Management
customer data Management Lean Processes in Customer Master Data Management Dr. Wolfgang Martin, Analyst The customer today has the power. It is now easy to find out about prices and information of products
Consolidated and non-consolidated debt measures of non-financial corporations
Consolidated and non-consolidated debt measures of non-financial corporations Andreas Hertkorn 1, ECB 2 Abstract: There is a broad consensus to use comprehensive debt measures for the analysis of non-financial
Foundations of Business Intelligence: Databases and Information Management
Chapter 5 Foundations of Business Intelligence: Databases and Information Management 5.1 See Markers-ORDER-DB Logically Related Tables Relational Approach: Physically Related Tables: The Relationship Screen
FTA Technology 2009 IT Modernization and Business Rules Extraction
FTA Technology 2009 IT Modernization and Business Rules Extraction August 5th, 2009 _experience the commitment TM Agenda IT Modernization Business Rules Extraction Automation Tools for BRE BRE Cost and
Master Data Management Architecture
Master Data Management Architecture Version Draft 1.0 TRIM file number - Short description Relevant to Authority Responsible officer Responsible office Date introduced April 2012 Date(s) modified Describes
Metadata Management for Data Warehouse Projects
Metadata Management for Data Warehouse Projects Stefano Cazzella Datamat S.p.A. [email protected] Abstract Metadata management has been identified as one of the major critical success factor
F.A.Q. Differences between statistical and supervisory reporting
F.A.Q. Differences between statistical and supervisory reporting 1) Which group consolidation approach should banks use for statistical, supervisory and financial reporting purposes? For statistical purposes,
Business Intelligence
Business Intelligence What is it? Why do you need it? This white paper at a glance This whitepaper discusses Professional Advantage s approach to Business Intelligence. It also looks at the business value
For Midsize Organizations. Oracle Product Brief Oracle Business Intelligence Standard Edition One
For Midsize Organizations Oracle Product Brief Edition One Why your organization needs a Business Intelligence (BI) solution A large and growing supply of highly valuable data when does this become a burden
Introduction to Business Intelligence
IBM Software Group Introduction to Business Intelligence Vince Leat ASEAN SW Group 2007 IBM Corporation Discussion IBM Software Group What is Business Intelligence BI Vision Evolution Business Intelligence
