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Business Intelligence in Banking Kevin – 1501147113 Steven Eka Putranto – 1501148362 Rendy Winarta – 1501149226 Gladys Natalia – 1501165476 Stefani Trifosa - 1501158893
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Business Intelligence in Banking

Feb 25, 2016

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Business Intelligence in Banking. Kevin – 1501147113 Steven Eka Putranto – 1501148362 Rendy Winarta – 1501149226 Gladys Natalia – 1501165476 Stefani Trifosa - 1501158893. Topics. BI Benefit in Banking BI Implementation problem Storage needed for BI implementation BI Architecture - PowerPoint PPT Presentation
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Page 1: Business Intelligence in Banking

Business Intelligence in Banking

Kevin – 1501147113Steven Eka Putranto – 1501148362Rendy Winarta – 1501149226Gladys Natalia – 1501165476Stefani Trifosa - 1501158893

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TopicsBI Benefit in BankingBI Implementation problemStorage needed for BI implementationBI ArchitectureUsage Data warehouse in BIBI ApplicationsUser of BIExample of BI in screen shoot and

explanation

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BI Benefit in Banking

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Considering and analyzing the total client relationships is vital for successful bank operations in the conditions of growing competition.

Most software solutions in the business intelligence domain are focused on market segmentation, defining a clear picture of the clients and their relationships with banks, defining a clear picture of the market potential and the bank’s ability to use this potential

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Segmentation : a customer segment is a group of client composed based on specific shared characteristics

Customer profitability : profitability analysis is the analysis of clients in accordance with the expected impact on the bank’s profit, and thus the total return on equity (ROE)

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Cross-selling and up-selling : these types analysis enable assessing clients in terms of the ability to use several products and services simultaneously (loans, deposits, cards, e-banking, etc.)

Channel effectiveness : enables the identification and analysis of various channels for communication with clients and delivery of products through these channels

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Campaign management : the main objective is to analyze and compare the effects of marketing campaign on the increase in clients numbers, increase in the numbers and level sold products, earnings, etc.

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Business Intelligence Implementation Challenge

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Cross-Organizational CollaborationTo succeed at BI, an enterprise must nurture a cross-organizational collaborative culture in which everyone grasps and works toward the strategic vision.

Business SponsorStrong business sponsors truly believe in the value of the BI project. Business sponsors establish proper objectives for the BI applications, ensuring that they support the strategic vision. Sponsors also approve the business-case assessment and help set the project scope

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Dedicated Business RepresentationMore often than not, the primary focus of BI projects is technical rather than business-oriented. The reason for this shortcoming: most BI project share run by IT project managers with minimal business knowledge. These managers tend not to involve business communities.

Availability of Skilled Team Membersthe business and technical skills required to implement a BI application are quite different than other operational online transaction processing (OLTP) projects. Skilled Team Members taking important role to help define the work of BI in an organization.

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Business Analysis and Data Standardization

Some of these issues are : Identifying Information Needs

Indentify the business issue, address it well after issues are identified , can provide better business analysts.

Data Merge and StandardizationThe biggest challenge faced by every BI project is its team’s ability to understand the scope, effort and importance of making the required data available for knowledge workers. Therefore, datamerge and standardization activitiesmust be planned and started at thebeginning ofthe BI project.

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Storage Needed for Business Intelligence’s Implementation

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In Business Intelligent system, there are two main types of storage system that could provide historical current and predictive views of business operations. They are:

Data WarehouseData warehouse are responsible to tore all the data, and also facilitate reporting and analysis needed for business intelligence.

Data MartData mart I a subset of an organizational data store oriented to specific purpose or major data subject that may be distributed to support business needs.

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Business Intelligence Architecture

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The architecture of a bank’s business intelligence system is very heterogeneous and comprises several layers:

1. Operational database and external data

2. The data integration and transformation layers

3. The data warehouse layer4. The data access layer (applications,

OLAP, data mining, etc.)5. The front end (layer for access to

information).

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The Usage of Data Warehouse in Business Intelligence

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The data warehouse is the significant component of business intelligence. It is subject oriented, integrated. The data warehouse supports the physical propagation of data by handling the numerous enterprise records for integration, cleansing, aggregation and query tasks

It can also contain the operational data which can be defined as an updateable set of integrated data used for enterprise wide tactical decision-making of a particular subject area. It contains live data, not snapshots, and retains minimal history

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Business Intelligence Applications

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The following are some examples of BI applications:

A company that provides natural gas to homes created a dashboard that supports operational performance metric management and allows real time decision making. In one application of the dashboard, the number of repeat repair calls was reduced, resulting in a saving of $1.3 million.

At a large member-owned distributor to hardware stores, use of a dashboard reduced theamount of inventory that must be liquidated or sold as a loss leader from $60 million to$10 million. Their BI system also allowed their member stores to see their ownperformance relative to similar stores.

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Users of Business Intelligence

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IT UserThey are those who use BI for development purposes, report generation, presentation and delivery.

Power UserProfessional analysts who are experienced in using complex tools, and are the individuals who often use BI tools to manipulate data to help decision-making.

Business UserThe managers who review the analyses presented by the power users and create their own reports and presentations.

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Casual UserDecision makers. They usually use BI to help with their presentation and delivery of information.

Extra-Enterprise Userincluding those external parties, customers, regulators, external business analysts, partners, suppliers, or anyone with a need for reported information for tactical decision-making.

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Example of Business Intelligence

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OLTP (on-line transaction processing) is a major task of traditional relational DBMS. Day to day operations such as purchasing, inventory, banking, manufacturing, payroll, registration, accounting, etc. are done in OLTP. OLTP also aims at reliable and efficient processing of a large number of transactions and ensuring data consistency.

OLAP (on-line analytical processing) is a major task of data warehouse system, data analysis and decision making, aims at efficient multidimensional processing of large data volumes (fast, interactive answer to large aggregate queries.

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Thank You