DataFlux Data Management Studio



Similar documents
Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff

How To Improve Product Data Quality

Discover, Cleanse, and Integrate Enterprise Data with SAP Data Services Software

Master Data Management

INFORMATION MANAGEMENT. Transform Your Information into a Strategic Asset

Knowledgent White Paper Series. Developing an MDM Strategy WHITE PAPER. Key Components for Success

Data Integration Checklist

Chapter 6 Basics of Data Integration. Fundamentals of Business Analytics RN Prasad and Seema Acharya

Enable Business Agility and Speed Empower your business with proven multidomain master data management (MDM)

Choosing the Right Master Data Management Solution for Your Organization

dxhub Denologix MDM Solution Page 1

JOURNAL OF OBJECT TECHNOLOGY

Analance Data Integration Technical Whitepaper

Five Fundamental Data Quality Practices

Analance Data Integration Technical Whitepaper

Corralling Data for Business Insights. The difference data relationship management can make. Part of the Rolta Managed Services Series

Data Quality Assessment. Approach

Enabling Data Quality

MDM and Data Warehousing Complement Each Other

Data Quality for BASEL II

Best Practices in Enterprise Data Governance

Mastering Data Management. Mark Cheaney Regional Sales Manager, DataFlux

Getting started with a data quality program

Informatica PowerCenter The Foundation of Enterprise Data Integration

Patient Relationship Management

Enhance visibility into and control over software projects IBM Rational change and release management software

Service Oriented Data Management

Three Fundamental Techniques To Maximize the Value of Your Enterprise Data

Modernizing Your Data Strategy

Comprehensive Data Quality with Oracle Data Integrator. An Oracle White Paper Updated December 2007

Harness the value of information throughout the enterprise. IBM InfoSphere Master Data Management Server. Overview

The Data Governance Maturity Model

Explore the Possibilities

What's New in SAS Data Management

The Role of D&B s DUNSRight Process in Customer Data Integration and Master Data Management. Dan Power, D&B Global Alliances March 25, 2007

Master Your Data and Your Business Using Informatica MDM. Ravi Shankar Sr. Director, MDM Product Marketing

MASTER DATA MANAGEMENT IN THE AGE OF BIG DATA

Informatica Master Data Management

Bringing Strategy to Life Using an Intelligent Data Platform to Become Data Ready. Informatica Government Summit April 23, 2015

EMC PERSPECTIVE Enterprise Data Management

CA Service Desk Manager

Fortune 500 Medical Devices Company Addresses Unique Device Identification

Improving contact center productivity and customer satisfaction with a proven portal solution.

Building a Data Quality Scorecard for Operational Data Governance

5 Best Practices for SAP Master Data Governance

Implement a unified approach to service quality management.

Enterprise Information Management Capability Maturity Survey for Higher Education Institutions

Beyond the Single View with IBM InfoSphere

Semarchy Convergence for Data Integration The Data Integration Platform for Evolutionary MDM

Data Migration. How CXAIR can be used to improve the efficiency and accuracy of data migration. A CXAIR White Paper.

SAP BusinessObjects SOLUTIONS FOR ORACLE ENVIRONMENTS

The Informatica Solution for Improper Payments

3/13/2008. Financial Analytics Operational Analytics Master Data Management. March 10, Looks like you ve got all the data what s the holdup?

Integrating Data Governance into Your Operational Processes

Self-Service Business Intelligence

Why is Master Data Management getting both Business and IT Attention in Today s Challenging Economic Environment?

Finding, Fixing and Preventing Data Quality Issues in Financial Institutions Today

Expanding Uniformance. Driving Digital Intelligence through Unified Data, Analytics, and Visualization

Requirements-Based Testing: Encourage Collaboration Through Traceability

The Top Challenges in Big Data and Analytics

Operationalizing Data Governance through Data Policy Management

Proactive DATA QUALITY MANAGEMENT. Reactive DISCIPLINE. Quality is not an act, it is a habit. Aristotle PLAN CONTROL IMPROVE

IBM InfoSphere Information Server Ready to Launch for SAP Applications

DATA QUALITY MATURITY

Informatica PowerCenter Data Virtualization Edition

Cloud Self Service Mobile Business Intelligence MAKE INFORMED DECISIONS WITH BIG DATA ANALYTICS, CLOUD BI, & SELF SERVICE MOBILITY OPTIONS

Scalable Enterprise Data Integration Your business agility depends on how fast you can access your complex data

The Requirements for Universal Master Data Management (MDM) White Paper

Product to Customer. through MDM. Presented by Luminita Vollmer, MBA, CDMP, CBIP

whitepaper The Evolutionary Steps to Master Data Management

A SAS White Paper: Implementing the Customer Relationship Management Foundation Analytical CRM

SAS Enterprise Data Integration Server - A Complete Solution Designed To Meet the Full Spectrum of Enterprise Data Integration Needs

Effecting Data Quality Improvement through Data Virtualization

SAS MDM 4.1. User s Guide Second Edition. SAS Documentation

Measure Your Data and Achieve Information Governance Excellence

Paper Robert Bonham, Gregory A. Smith, SAS Institute Inc., Cary NC

Data Quality Where did it all go wrong? Ed Wrazen, Trillium Software

RSA ARCHER OPERATIONAL RISK MANAGEMENT

IBM Master Data Management and data governance November IBM Master Data Management: Effective data governance

Trends In Data Quality And Business Process Alignment

<no narration for this slide>

DECOMMISSIONING CASE : SIEBEL UCM TO INFORMATICA MDM HUB

White Paper. Thirsting for Insight? Quench It With 5 Data Management for Analytics Best Practices.

Manage and Control Access Risk and Assess Its Financial Impact

Deploying the CMDB for Change & Configuration Management

Enterprise Data Quality

Agile Master Data Management A Better Approach than Trial and Error

<Insert Picture Here> Master Data Management

An Oracle White Paper April, Spend Management Best Practices: A Call for Data Management Accelerators

How master data management serves the business

SAS MDM 4.2. User s Guide. SAS Documentation

Data Governance. Data Governance, Data Architecture, and Metadata Essentials Enabling Data Reuse Across the Enterprise

Data Virtualization for Agile Business Intelligence Systems and Virtual MDM. To View This Presentation as a Video Click Here

Supporting Your Data Management Strategy with a Phased Approach to Master Data Management WHITE PAPER

Information Management & Data Governance

Cordys Master Data Management

HANDLING MASTER DATA OBJECTS DURING AN ERP DATA MIGRATION

Transcription:

DataFlux Data Management Studio DataFlux Data Management Studio provides the key for true business and IT collaboration a single interface for data management tasks. A Single Point of Control for Enterprise Data Management Organizations today are faced with a daunting challenge how to control the information that serves as the very foundation of their business success. However, with the recent, exponential growth in data and the proliferation of siloed, disparate data, organizations are realizing that the data that is fundamental to their success doesn t meet their needs. DataFlux Data Management Studio provides a single interface for both business and IT users to plan, implement and monitor the rules to manage data throughout the organization. Part of the DataFlux Data Management Platform, Data Management Studio provides a unified development and delivery environment, giving organizations a single interface to analyze, improve and control data and drive enterprise data management. By delivering a single, accurate and consistent view of any and all DataFlux tasks through a user-friendly process and technology framework, Data Management Studio lets you: Enable both business and IT users with increased control of data management tasks Enhance cross-functional data governance through a single place to create, optimize and manage business rules Profile, monitor and actively manage the quality of enterprise data Provide a consistent user experience for all phases of data management Data Management at Your Fingertips Data Management Studio offers a unique set of workflow tools built on an industry-leading technology platform that encompasses every facet of the data management process. Through its intuitive interface, Data Management Studio provides business and IT users with powerful data improvement capabilities and control over data management and data governance initiatives. Data Management Studio provides the ability to design and manage processes to: Merge customer, product or other enterprise data Unify disparate data through a variety of data integration methods (batch, real-time, virtual) Verify and validate customer and product information Integrate disparate data sets, with an eye on quality Transform and standardize various data entities Monitor data for compliance and data quality control Manage metadata hierarchies By enabling consistent, accurate and timely data throughout the enterprise, Data Management Studio gives organizations the ability to implement the people, process and technology changes necessary to establish an effective data governance strategy. Data Management Studio provides powerful functionality to meet today s demanding data management challenges.

Data Quality Standardize, rationalize and transform corporate information Better data leads to better decisions which, ultimately, lead to better business. Data Management Studio gives both business and IT users the full capabilities of the DataFlux industry-leading data quality technology. Through patented matching technology, transformation routines and identification logic, DataFlux helps you easily correct data problems for virtually any and all types of enterprise data. DataFlux Data Management Studio allows you to: Plan and prioritize data correction initiatives Identify and resolve problematic data Normalize and transform data according to both pre-built and custom data quality rules Validate data and improve overall accuracy Data Profiling Discover data characteristics to guide data quality and data integration efforts Data Management Studio provides industry-leading data profiling capabilities, providing insight into the health of the data. Data profiling is critical when you need to identify the root cause of poor-quality and disparate data sources. Through a data discovery program, Data Management Studio helps you gain the knowledge to design effective data quality, data integration and master data management (MDM) business rules to support your organization s data-driven initiatives. Data profiling provides an in-depth assessment of your organization s data, examining the structure, completeness and suitability of your data assets. Data Management Studio lets you: Develop a comprehensive assessment of the scope and nature of data quality issues Create an inventory of data assets Inspect data for errors, inconsistencies, redundancies and incomplete information Build the foundation for future data management initiatives A collaborative design environment allows business and IT users to develop and refine data jobs and services. Data profiling provides immediate feedback on the accuracy and integrity of data sources. 2

Data Integration Intelligently match, merge and consolidate data An effective data integration strategy can lower costs and improve productivity by enabling consistent, accurate and reliable data across your enterprise. Data Management Studio provides users with a single interface for data quality and data integration activities, including the design, navigation and management of data integration jobs and workflows. These rules can then be executed via the DataFlux Data Management Server for real-time or batch processing as well as the DataFlux Federation Server for virtual data integration capabilities. Data integration involves combining processes and technology to enable your enterprise to make the most effective use of disparate, inconsistent data. Data Management Studio allows you to build rules that can support: ETL and ELT Extract, transform and load data from multiple sources, using both traditional batch processing and in-database methods Data migration Transfer data to new locations while improving the accuracy and consistency of data during the migration project Entity Resolution Match data and identify potential data relationships across sources The ability to link and consolidate entity information with a high level of confidence is critical to data management initiatives. Information about the same customer, product or employee may exist in multiple databases, in many unique forms. The challenge is to find and resolve similar records in different data sources. Data Management Studio offers industry-leading matching technology that enables accurate entity resolution across multiple data sources. With this technology, you can: Identify individuals across multiple data sources from incomplete and non-obvious relationships Intelligently manage entity resolution routines through advanced fuzzy-matching technology Create multi-record clusters, confidence scores and scatter plots to determine potential clusters Analyze the suitability of data elements as potential identifying attributes Recognize when slight variations suggest a connection between records Real-time data integration Match information within or across data sources and provide instant access to reliable data from across the IT infrastructure Metadata Analysis Extract, organize and analyze metadata anywhere in the enterprise Metadata analysis uncovers existing trends and characteristics of your data, examining corporate data throughout your enterprise and providing a clear picture of the types and sources of that data. This understanding is an essential first step to any enterprise data management initiative. Data Management Studio provides the ability to discover and manage metadata from virtually any data source anywhere in the organization from a single interface. Organize data logically across all data sources Simplify projects by accurately grouping related data Gain insight into the data that should be included in a data management project Entity resolution allows users to review and manage identified data relationships. 4

DataFlux Data Management Methodology Data Enrichment Transform incomplete data into useable, standardized information Data Management Studio enables data verification and standardization key components in data quality projects that contain customer, supplier, company or employee data elements. Data Management Studio gives you the ability to create complete and accurate address information for more than 240 countries around the world. In addition, DataFlux can enrich address data with geographic, demographic or other details, as well as standardize and augment data on products, materials and services. Through industry-leading matching and standardization technology that automatically inspects every element of a record, Data Management Studio verifies its integrity and corrects invalid information to meet defined requirements. DataFlux technology enables you to: Reconcile, cleanse and enrich internal address data The DataFlux Data Management Methodology is a step-by-step process for performing data management tasks, such as data quality, data integration, data migrations and MDM. When organizations plan, take action on and monitor data management projects, they build the foundation to optimize revenue, control costs and mitigate risks. No matter what type of data you manage, DataFlux technology can help you gain a more complete view of corporate information. Create accurate reports and analytics on customers, both internally and for compliance requirements Substantially reduce undeliverable mail and reduce associated costs Define Execute Add value to data on materials, products and services Data Monitoring Enforce business rules and build the foundation for data governance The planning stage of any data management projects starts with this essential first step. This is where the people, processes, technologies and data sources are defined. Roadmaps are built that include articulating the acceptable outcomes. Finally, the cross-functional teams across business units and between business and IT communities are created to define the data management business rules. Once business users have established how the data and rules should be defined, the IT staff can install them within the IT infrastructure and determine the integration method real-time, batch or virtual. These business rules can be reused and redeployed across applications, helping increase data consistency in the enterprise. 6 By creating business rules once and reusing them across applications, you can apply a uniform set of business standards in real time across any system. Data Management Studio provides the design, development and monitoring environment for proactive data governance, so you can: Design and enforce rules to determine if data is maintained within proper control limits and meets predefined business rules Create data alerts and controls to verify that data remains in compliance with internal and external data policies React to data problems quickly, before the inaccurate or invalid data negatively impacts the business Create customized business rules to validate and audit operational processes Enable enterprise governance, risk and compliance monitoring DataFlux data monitoring technology uses an advanced service-oriented architecture (SOA) to expose data monitoring rules as web services to enable ongoing, accurate information. These rules can operate within your existing IT framework, providing regular status checks of data governance procedures. Discover A quick inspection of your corporate data would probably find that it resides in many different databases, managed by many different systems, with many different formats and representations of the same data. This step of the methodology lets you explore metadata to verify that the right data sources are included in the data management program and create detailed data profiles of identified data sources to understand their strengths and weaknesses. Design After completing the first two steps, this phase allows you to take the different structures, formats, data sources and data feeds, and create an environment that accommodates the needs of your business. At this step, business and IT users build workflows to enforce business rules for data quality and data integration, and create data models to house data in consolidated or master data sources. Evaluate This step of the methodology allows users to define and enforce business rules to measure the consistency, accuracy and reliability of new data as it enters the enterprise. Reports and dashboards on critical data metrics are created for business and IT staff members. The information gained from data monitoring reports is used to refine and adjust the business rules. Control The final stage in a data management project involves examining any trends to validate the extended use and retention of the data. Data that is no longer useful is retired. The project s success can then be shared throughout the organization. The next steps are communicated to the data management team to lay the groundwork for future data management efforts.

Corporate Headquarters DataFlux Corporation 940 NW Cary Parkway Suite 201 Cary, NC 27513-2792 USA 877 846 3589 (USA & Canada) 919 447 3000 (Direct) info.us@dataflux.com DataFlux United Kingdom Enterprise House 1-2 Hatfields London SE1 9PG +44 (0)20 3176 0025 info.uk@dataflux.com DataFlux Germany In der Neckarhelle 162 69118 Heidelberg Germany +49 (0) 6221 4150 info.de@dataflux.com DataFlux France Immeuble Danica B 21, avenue Georges Pompidou 69486 Lyon Cedex 03 France +33 (0) 4 72 91 31 42 info.fr@dataflux.com