Round-Trip Database Support Gives ER/Studio Data Architect Users The

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Round-Trip Database Support Gives ER/Studio Data Architect Users The Round-trip database support gives ER/Studio Data Architect users the power to easily reverse-engineer, compare and merge, and visually document data assets residing in diverse locations from data centers to mobile platforms. You’ll leverage Enterprise data as corporate asset more effectively and can be rest assured that compliance is supported for business standards and mandatory regulations—essential factors in an organizational data governance program. Automate and scale your data modeling “We had to use a tool like Visio and do everything by hand before. We’re talking about thousands of tables with subsequent relationships. Now ER/Studio automates the most time consuming tasks.” - Jason Soroko, Business Architect at Entrust Uncover your database inconsistencies “Embarcadero tools detected inconsistencies we didn’t even know existed in our systems, saving us from problems down the road.” - U.S. Bancorp Piper Jaffray The Challenge of Fully Leveraging Enterprise Data This all-too-common scenario forces non-compliance with business standards and mandatory regulations, As organizations grow and data proliferates, ad hoc systems for while preventing business executives from the benefit of storing, analyzing, and utilizing that data start to appear and incorporating all essential data in to their decision-making are generally located near to the business unit that needs it. This process. Data management professionals face three distinct practice results in disparately located databases storing different challenges: versions and formats of the same data and an enterprise that will suffer from multiple views and instances of a single data • Reduce duplication and risk associated with multiple data capture and storage environments point. Duplicated data infrastructures, multiple storage systems, • Maximize data quality and re-usability across the full-time management efforts, and data correction tasks add an organization average of 200 percent to a company’s data management costs. • Clearly and effectively communicating data to all users. The re-use of essential data throughout an organization can speed better decision-making, but only if that data has been optimized, accurately interpreted, and made available to all users at the right time. All organizations must evolve in order to thrive. And you will do objectives. Powerful reverse engineering of industry-leading just that when you thoroughly leverage enterprise data as an database systems allow a data modeler to compare and asset, while complying with business standards and mandatory consolidate common data structures without creating regulations. unnecessary duplication. Using industry standard notations, data modelers can create an information hub by importing, ER/Studio Data Architect documents and enhances existing analyzing, and repurposing metadata from data sources such databases, improves data consistency and effectively as business intelligence applications, ETL environments, XML communicates models across the enterprise. documents, and other modeling solutions. ER/Studio Data Architect helps data architects define and reuse common ER/Studio Data Architect provides an easy-to-use visual data elements and modeling components across projects to interface to document, understand, and publish establish standards in their modeling practices. The multilevel information about better harnessed to support business design layers allow projects to establish standards in their ER Studio XE4 Data Architect for the accurate visualization of data, which promotes Highly Productive Model-driven Design Environment communication between business and technical users. Automatically create highly readable, highly Advanced Graphics and Layout navigable diagrams with one or a combination of layouts Streamlined navigational aids, diagram layout utilities, Streamlines the derivation of one or more Automated and Custom physical designs from a logical one and checks and powerful report publishing functions simplify the Transformation for normalization and compliance with the target communication of designs within and beyond the data database Automate tedious, routine tasks such as coloring modeling group. This brings all metadata into a central tables, enforcing and applying naming standards, Extensible Automation Interface repository helps the transfer of knowledge among globally update storage parameters and integrate with desktop applications stakeholders, and allows users to easily see relationships and Publish models and reports in a variety of formats business rules that relate to their data. Multiple Presentation Formats including HTML, RTF, XML Schema, PNG, JPEG and DTD Output Complete Database Lifecycle Support Visual Data Lineage functionality provides a clear Generate source code from database designs. understanding of where data originated and where it is Construct graphical models from existing Forward and Reverse Engineering used. database or schema. Apply design changes with formulated alter code Data Warehouse and Integration Support Enterprise Model Management Visually document source/target mapping and Map between and within conceptual, logical and Visual Data Lineage sourcing rules for data movement across systems Universal Mappings physical model objects to trace objects upstream or downstream Leverage complex star and snowflake schema Dimensional Modeling designs and support importing rich dimensional Enable advanced bi-directional comparisons and Advanced Compare and Merge metadata from BI and data warehouse platforms merges of models and database structures Quality Database Design Allow creation of multileveled submodels, merge Submodel Management submodel properties across existing models and Automate model reviews and enforce standards synchronize submodel hierarchies Model Completion Validation by validating for missing object definitions, unused Centrally synchronize all data sources and view domains, identical indexes and circular relationships CONNECT Integration feedback on models and metadata Automatic Migration of Foreign Maintain foreign keys to ensure referential integrity Import and export metadata from BI Platforms, Keys in designs UML and data modeling solutions, XML Schemas Metadata Integration and CWM (Common Warehouse Metamodel) to Security Design and Assessment create a metadata hub Categorize and label objects according to the level Define and enforce standard data elements, naming Data Classification Data Dictionary Standardization of security and privacy standards and reference values Enable user, role and group permissions at logical Display mappings between logical entities and Permission Management and physical level ”Where Used” Analysis attributes to their implementation across physical designs Ensure Service Oriented Architecture (SOA) XML XML Schema Generation projects are based on same standards as your data Requirements models Centrally synchronize all data sources and view Hitachi, IBM DB2 (5.x…10.x), Informix (9.x), CONNECT Integration Greenplum(4.2), InterBase (4…XE, XE3), Microsoft feedback on models and metadata Access(2.0…2000), Microsoft SQL Server (7…2012), Microsoft Visual FoxPro (3…5), Netezza (4.6…7.0), DBMS Support MySQL (3.x…5.x), NCR Teradata (V2R24…14.0), Oracle (7.3…11g), PostgreSQL (8.x, 9.x), Sybase Benefits Summary Adaptive, Sybase Enterprise (ASE) (11.9.2…15.0), Sybase Adaptive Server (ASA) (5…10), Sybase IQ 12.5, Sybase Watcom SQL • Document and Enhance existing databases 340MB storage, 2GB RAM, 1024x768 resolution, • Improve Data Consistency Windows (XP to 8) (32-bit, 64-bit), Native System Requirements • Effectively Communicate Models across the enterprise Connections: Oracle, DB2 (LUW, and z/OS), SQL Server and Sybase, ODBC Connections • Trace Data Origins and Whereabouts to enhance Data Integration and accuracy • Map models to data sources “ER/Studio has been an invaluable tool for putting standards in place for designing and maintaining databases.” Beaumont Hospital Ready to learn more about ER/Studio Data Architect? - Contact us at 1-888-233-2224 or [email protected] For database professionals, ask us about DB PowerStudio, the essential heterogeneous tool kit for Oracle, SQL Server, DB2, and Sybase. © 2013 Embarcadero Technologies, Inc. Embarcadero, the Embarcadero Technologies logos, and all other Embarcadero Technologies product or service names are trademarks or registered trademarks of Embarcadero Technologies, Inc. All other trademarks are property of their respective owners. 091213.
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