Benefits of Industry DWH Models - Insurance Information Warehouse

Similar documents
Benefits of Industry DWH Models - Insurance Information Warehouse

Information On Demand Business Intelligence Framework

Delivering Trusted Information

41880 Introduction to Hyperion Financial Management. Mike Malwitz Director Product Strategy Oracle Enterprise Performance Management

Aptitude Accounting Hub

Product Architecture. Donna Schlegel Kelly Cusick, ACAS, MAAA Deloitte Consulting LLP March 12, 2013

The IBM Insurance Information Warehouse - IIW

IFRS 17 Vendor Solutions Event. 4 October 2018

InfoSphere Software The Value of Trusted Information IBM Corporation

WebSphere Business Integration Collaborations Reference guide. Integrate business processes across your company and beyond.

ORACLE FINANCIAL SERVICES DATA WAREHOUSE

Information Architecture: Leveraging Information in an SOA Environment. David McCarty IBM Software IT Architect. IBM SOA Architect Summit

Policy Administration Transformation

Achieving Product Agility: Configurability is Key

Aptitude Accounting Hub

IBM Balanced Warehouse Buyer s Guide. Unlock the potential of data with the right data warehouse solution

Cisco Tidal Intelligent Automation for SAP

PRODUCT ACCELERATOR INNOVATION AND SPEED PUSH THE LIMITS OF PRODUCT

Achieve Powerful Business Benefits by Streamlining Document Workflows

Analytix Mapping Manager

INSIDE THIS ISSUE. Whitepaper

Infor PM 10. Do business better.

Retail Business Intelligence Solution

Copyright 2012 EMC Corporation. All rights reserved.

State of West Virginia DW/DSS Bureau for Medical Services RFP MED11015

INFOR PM 10 DO BUSINESS BETTER. LEVERAGE EXPERIENCE.

The IBM Rational Software Development Platform

Toolbox for Architecture Framework Discussions at The Open Group. SKF Group, February 2018

zeb.control.accounting IFRS 4

CORVINA CORE VALUE INSURANCE ADMINISTRATION. Start Your Vision

Model-based Architectural Framework for Rapid Business Transformation of Global Operations

IBM Global Business Services Microsoft Dynamics AX solutions from IBM

Contents Working with Oracle Primavera Analytics... 5 Legal Notices... 10

WHITE PAPER. ERP and Enterprise Performance Management Best Practices

Cognos 8 Business Intelligence. Evi Pohan

Solutions for Enterprise Risk Management SAS. Overview. A holistic view of risk of risk and exposures for better risk management SOLUTION OVERVIEW

Data warehouse and business intelligence developer

NEC Cloud Collaboration Low-risk, flexible, cloud-based unified communications and collaboration services to transform your business.

DIGITAL CASE STUDIES

Improving decisions across the Customer Life Cycle

The winning tax transformation trinity. Data, technology and operations

Capgemini s Comprehensive Capital Analysis and Review Services

PwC India Data and Analytics May 2016

Analytical Approaches in Insurance How to assure profitable business. Andrea Berková Business Development Manager - Oracle Financial Services ECEMEA

IBM Rational Extensions for SAP Applications Application lifecycle management for consistent governance

Moving to a Service-Oriented Architecture

InfoSphere Warehouse. Flexible. Reliable. Simple. IBM Software Group

Data warehouse and business intelligence developer

WCIRBCalifornia. Job Description. Business Intelligence (BI) Engineer. Department: Summary

JOURNAL OF OBJECT TECHNOLOGY

RESEARCH NOTE IMPROVING ANALYTICS DEPLOYMENTS WITH IBM PARTNERS

IBM InfoSphere Master Data Management

Architecture-Driven Modernization (ADM) Task Force: Overview, Scenarios & Roadmap. OMG Architecture-Driven Modernization Task Force

Quantifying the Value of Investments in Micro Focus Quality Center Solutions

IBM Planning Analytics

White Paper. Why Now s the Time to Convert from Oracle Hyperion

Insurance Underwriting. in the age of Data Super-Abundance

Infor SunSystems. Grow with flexibility. Integrate

Improving decisions across the Customer Life Cycle

Data Integration for the Real-Time Enterprise

The Accenture/ Siemens PLM Software Alliance

An Introduction to Oracle Identity Management. An Oracle White Paper June 2008

SAS Decision Manager

RESEARCH NOTE THE STAGES OF AN ANALYTIC ENTERPRISE

Service oriented architecture solutions White paper. IBM SOA Foundation: providing what you need to get started with SOA.

Successful healthcare analytics begin with the right data blueprint

BRIDGE INSURANCE SOFTWARE SUITE. Modern Approach For An Increasingly Complex Market

Financial Performance Management for Midsize Companies. Chris Evers ecapital Advisors Jean Nitchals ecapital Advisors

A Streamlined Solution For Internal Analysis. SNL Banker allows community banks and credit unions to leverage their internal data as an asset.

Competency Area: Business Continuity and Information Assurance

CONSUMERS ARE DRIVING DIGITAL DISRUPTION, AND THEY WANT MORE ACCENTURE LIFE INSURANCE & ANNUITY PLATFORM (ALIP) NEW BUSINESS AND UNDERWRITING

The Basics of Business Intelligence. PMI IT LIG August 19, 2008

Epic Integrated Consulting Services Seamless integration for system implementation, transition, optimization, legacy support and training

MAY 2018 Digital Ready Framework

Creating a Data-Driven Advantage in Insurance

Prepare for a more efficient SAP implementation: Take data issues off the critical path

IBM BPM on zenterprise

CHAPTER 3 ENTERPRISE SYSTEMS ARCHITECTURE

Next Generation Claims Systems

Modern Underwriting: L&T Infotech AccuRUSI. Leveraging New Intelligence Capabilities. Featuring as an example:

Aligning financial services IT to the business through the use of dashboards

SpearMC Consulting PeopleSoft Solutions

Boost your back-end performance with low-risk implementation of high-value solutions.

IT Architect Regional Conference 2007

Improving the business process of software delivery for Financial Services

BMC FootPrints. Service Management Solution Overview.

Federal Segment Architecture Methodology Overview

Rupesh P. Practice Lead - Insurance Vertical NIIT Technologies White Paper

CCH Tagetik Modernizing Finance May 21, 2018

2014 3DX NAM Forum. Discover the Perfect Product: Connecting the dots between Formulation, Testing, Regulatory and the Supply Chain.

QUEENSLAND URBAN UTILITIES Position Description

Enterprise Command Center

Connectivity & Application Integration. Colin Gniel WebSphere Software IBM Software Group Australia/New Zealand

wipro.com Beyond Business as Usual: Enterprise Architecture for Governments of the Future

Enterprise intelligence in modern shipping

CA Network Automation

Analytix Mapping Manager

ACCELERATE YOUR JOURNEY TO BEING DIGITAL

Senior data warehouse and business intelligence developer

Sage 300 ERP 2014 Get more done.

Transcription:

Roland Bigge 02.11.2013 Benefits of Industry DWH s - Insurance Information

Agenda Introduction to Industry DWH s Drivers, Challenges and Opportunities Insurance Information (IIW) Details IIW Value Proposition Annex 2

Core Components of Industry s Industry Data s Data s provide a structured data dictionary that defines the business terms and the resulting Intelligence data structures Industry Process s Process s provide predefined analysis-level processes, used to ensure consistency and reuse of processes and activities within the Financial Institution Industry Service s Service s provide the pre-defined analysis and design level structures to enable more consistency and reuse in the creation of Services 3

Value of Industry s Reduces analysis and design of functional requirements by more than 40% Accelerates stakeholder approval by 50% Supports on average 85% of data requirements Reduces time and addresses risk compared to custom-built projects by helping to reengineer processes to comply with regulatory requirements. Increases ROI by Identify opportunities to streamline and outsource processes and be more responsive to customers. Reduce time-to-market with new products, such as online portfolio management. Integrates a merger and legacy systems more quickly. Facilitates a reliable mechanism for information availability across the organization such as customer data integration. 4

Agenda Introduction to Industry DWH s Drivers, Challenges and Opportunities Insurance Information (IIW) Details IIW Value Proposition Annex 5

Challenges Facing Insurers 1 2 3 4 Solvency II Enforcement of new regulations such as Solvency II and other Risk Management Initiatives Lower Cost of Data The costs of managing and providing data are high and growing Know the customer Carriers lack a unified view of their customers across divisions, subsidiaries, etc. Advanced Analytics Across the industry, analytics is being applied. Take it to the next level Compliance & Reporting Regulatory reforms are creating an increasingly complex reporting & compliance landscape Worker Productivity Cost cutting is reducing staffs to a level that puts pressure on meeting requirements Optimized Access Carriers need to provide a personalized blend of access points to support customers needs Product Management Lower premiums may not be enough to secure customers in today s market Fraud & Abuse Reducing fraud, subrogating losses, and avoiding errors improves results Prioritization Carriers need to focus attention on the most profitable customers, agents, channels Take Proactive Action Carriers can gain an advantage by being able to predict customers needs and actions. Optimize Distribution Today s customers and agents want access on their terms not the carriers 6

Technical and Logistical Challenges facing Insurer s Implementation Teams 1 Changing 2 Lack of 3 Needs Standards Changing 4 Information Needs Lack of Resources Engagement Need for greater business validation and engagement during requirements definition and IT led projects Terminology Inconsistent use of terminology across organization No Reference to guide requirements More Data More frequent reporting without data quality issues Increased granularity not available with current infrastructures Project expertise Projects (e.g. SII) require expertise in limited supply Limited access to business resources to define requirements Faster Deployment Pressure for early deliverables to meet tight deadlines Documentation Lack of information on data flows / reporting processes Legacy Modernization History of deferred IT investment provides challenges as new requirements emerge Cost Management Making efficient use of scarce resources Leveraging IT spend for multiple projects Competing Projects Ever increasing range of projects (regulations, operational efficiencies, customer insight) Audit & Compliance Requirements and data now need to be auditable, traceable and repeatable Better Design Drive for more reusable components rather than one off solutions 7

Agenda Introduction to Industry DWH s Drivers, Challenges and Opportunities Insurance Information (IIW) Details IIW Value Proposition Annex 8

What is IBM Insurance Information (IIW)? IBM s Comprehensive Enterprise Data model for the Insurance Industry Built through client engagements over 15 years Covers All of Insurance including both Life and P&C/General Insurance content Complete set of related models ( Vocabulary, Data, Atomic and Dimensional models) Facilitates rapid scoping and specifying of requirements Customizable to meet company specific requirements Start with one project e.g. Solvency II and then extend to other solutions areas (e.g., SOX, IFRS) 9

IIW core components includes Terms Enterprise-wide vocabulary of business concepts that provides an organization's view of itself and its industry. Supportive Content Grouping of terms incorporating any terminology originating from an internal or external source. Vocabulary Supportive Content IIW Data s Terms Analytical Requirements Analytical Requirements Structured requirements covering management information and regulatory needs. Data (BDM) Reference data model,normalized view of insurance business Data s Data Atomic Dimensional Atomic Data Enterprise-wide data model defines how multiple sources of data should be consolidated into a single logical data structure Dimensional Enterprise-wide repository for analytical data with star schema style dimensional data structures organized around fact entities 10

The Vocabulary includes Vocabulary Supportive Content IIW Data s Terms Data Analytical Requirements Analytical Requirements Structured requirements representing the answer to a particular business issue or goal that is identified at top-management level as a business opportunity, based on the analysis of business facts. By combining Measures and Dimensions, Analytical Requirements define a specific business opportunity context Allow business users to fully articulate the requirements for a piece of analysis using their business terminology. Includes regulatory requirements (e.g. Solvency II, IFRS, ) Data s Atomic Dimensional Terms Supportive Content Supportive Content is a grouping of terms incorporating any terminology originating from an internal or external source. It is used to support data structures such as regulatory reports (e.g. IAS/IFRS, Solvency II), industry standards (ACORD, HIPAA, SEPA, SEC US GAAP), business architecture standards (e.g. EPP), vendor interfaces (e.g. SAS, Fair Issac, Sendero, Oracle Financials), or legacy source systems (e.g. Underwriting systems). Industry concepts used from day to day in the running of business operations and analysis Expressed in plain business language, with no modeling or abstraction involved Mapped to the The option to link related terms with an alias to let you choose the most appropriate terms in your context Used as axes of analysis to define Analytical Requirements. 11

The Data includes IIW Data s Vocabulary Supportive Content Terms Analytical Requirements Data Data s Atomic Dimensional Unambiguous definition of business concepts and their relationships to insure communication across different IT projects and between the business users and the IT Conceptual view of the enterprise data with generic definitions to maximize applicability, flexibility, and reusability 12

The Atomic includes IIW Data s Vocabulary Supportive Content Terms Analytical Requirements Data Data s Atomic Dimensional The enterprise-wide repository of atomic data used for informational processing Fully defined logical design of data warehouse structures, with history management Partly de-normalized, for ease of navigation and performance 13

The Dimensional includes IIW Data s Vocabulary Supportive Content Terms Analytical Requirements Data Data s Atomic Dimensional The enterprise-wide repository of analytical data used for informational processing Star schemas supporting the Analytical Requirements Conformed Dimensions and Conformed Facts define consistency across fact tables and facilitate analysis techniques, such as drilling across Mapped to the Atomic, from which it can be populated Can be used to populate data marts. 14

IIW supports data warehouse and data mart deployments Vocabulary Reporting & Analysis Supportive Content Terms Analytical Requirements Data Marts / Cubes Data Data s Atomic Dimensional IIW Customer Policy Profile Extract Transform - Load Enterprise Data Claim Premiums Reinsurance Assets Underwriting Risk Applications General Ledger etc. Data Sources / Operational Systems Extract, Transform, and Load (ETL) Enterprise Data Calculation Engines Data Marts Decision Support/ Reporting 15 IIW for InfoSphere

Developing a data warehouse with the Industry s involves several tasks Architect + Analyst Setting-up Project Project Manager Developing Analytical Requirements Developing Terms Developing Supportive Content Developing Data Developing Atomic Developing Dimensional Data Architect + Data er 16

IIW Requirements Solution Templates (BSTs) 17

Agenda Introduction to Industry DWH s Drivers, Challenges and Opportunities Insurance Information (IIW) Details IIW Value Proposition Annex 18

Technical and Logistical Benefits using IIW 1 Flexibility 2 Standardisation 3 Meeting Information Needs 4 Efficient Use of Resources Engaging the Tools and Industry content makes it easier to meet business needs 85% of customers surveyed highlighted models as significant benefit Consistent Approach Leverage IIW methodology and as a reference guide to develop consistent terminology More Data 85% of model customers reported that IIW models granularity improved flexibility of DWH Resource Management IIW models and methodology accelerate requirements gathering and reduce resources required Faster Time to Value More than 50% of customers reported faster time to value when IIW model driven DWH in place Better Documentation Common tooling/ methodology and vocabulary makes it easier to consolidate reporting across data marts Legacy Modernization IIW with IBM Information Management aids the recalibration of legacy data sources to meet new information needs Cost Management On Average, customers report 15-20% cost saving 77% reported that developer productivity significantly improved Cross Project Support IIW enterprise wide coverage supports wide variety of insurance related subject areas Audit & Compliance IIW analytical requirements/ mappings demonstrate traceability from source data to report Better Design Significant benefits achievable after initial IIW project with the reuse of IIW modelling components 19

Agenda Introduction to Industry DWH s Drivers, Challenges and Opportunities Insurance Information (IIW) Details IIW Value Proposition Annex 20