CONNX for Codasyl DBMS

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CONNX for Codasyl DBMS CONNX for Codasyl DBMS DATA SHEET DBMS CONNX DB Adapter for Codasyl DBMS The CONNX for Oracle Codasyl DBMS module provides secure, real-time, read/write SQL access toOracle Codasyl DBMS databases on the VAX, Alpha and HP Integrity servers running OpenVMS. In conjunction with other CONNX modules, you can perform seamless joins between Oracle Codasyl DBMS and most other databases. Join DBMS with Multiple Builder, Impromptu, ReportNET, Lotus Record Definition Imports Data Sources Approach, Crystal Reports and vendors such as Cognos and Business Objects. CONNX imports tables directly from DBMS In conjunction with other products in the CONNX for DBMS also supports ADO and Databases. CONNX suite, you can perform seamless ASP.NET (Active Server Pages) and JDBC joins between two or more supported dis- Compliance is used with Websphere and Apache parate databases using ODBC, OLE DB, Tomcat. ODBC Full Compliance (level 2) ; JDBC .NET and JDBC. CONNX for DBMS ac- Type 3 Driver; OLE DB 2.5 Driver; NET 2.0 cess is fast and efficient. With CONNX, a Security Preserved and Extended Driver and above single metadata model can be created that Table Redefinition spans all enterprise data sources and ap- The CDD provides additional field and ta- plications requiring data access. The result ble-level encryptable security by group or The CONNX Data Dictionary supports mul- is an enterprise-wide view of data that pro- user, ensuring the security of sensitive tiple record layouts of the same DBMS file, vides a reusable standards-based frame- information. CONNX also supports row based on a “record type” field. work for information access. To the user or level security with CONNX Views. Addition- application, data appears as if it existed in ally, the CONNX Data Dictionary is en- a single federated relational database. crypted to secure sensitive information. SQL & CONNX for DBMS Command Execution CONNX supports ANSI SQL (Insert, Up- CONNX provides an RPC (Remote Proce- date, Select, and Delete); group by, dis- dure Call) mechanism that allows remote tinct, aggregate (AVG, MIN, MAX, SUM, execution of VMS batch jobs, command and COUNT), and all substring, string, procedures and applications from a PC. date, conversion, and math functions. Nested inner and outer left/right joins are supported, as well as subqueries and correlated subqueries. CONNX also supports Unions and Insert/Select. Views CONNX supports the creation of views, which facilitate hiding table relation- ships from the end user. CONNX Views facilitate the creation of heterogeneous joins between multiple disparate data- bases. Data Conversions CONNX supports over 600 data types For a free Evaluation and performs bi-directional data conver- copy of CONNX, or sions for data updates and retrieves. more info, please contact a CONNX Popular Program Access Representative at (425) 519-6600 or As with all databases supported by [email protected]. CONNX, CONNX for DBMS has been tested with Microsoft Access, Microsoft Excel, Microsoft Visual Studio, including Learn more Visual Basic/C++, etc., Delphi, Power- About DBMS Copyright CONNX Solutions, Inc. All rights reserved. [email protected] | 425.519.6600 | 2039 152nd Ave NE Redmond, WA 98052 | www.connx.com CONNX for Codasyl DBMS DATA SHEET DBMS CONNX DB Adapter for Codasyl DBMS Features Benefits Federate with other relational, non-relational, net- Boosts productivity and efficiency of end users worked, hierarchical, object, and flat-file database and application builders by connecting different information through a single, easy-to-use, SQL- functions within the enterprise. based interface. Shortens development time on projects using Data at your fingertips – anything from legacy open standards data to recently added content to application in- Improves time to market. formation – anytime, anywhere. Provides cost-effectiveness. A reusable standards-based framework for infor- mation access that drastically lowers the short- Preserves initial investment. and long-term costs usually associated with com- plex enterprise data solutions. Access from Microsoft Windows, Unix and Linux Enhances flexibility for database use in a multi- productivity tools, database applications, and de- tude of OS environments and BI tools. velopment environments. Proven scalability, supporting any number of cli- Enables use of open standards interfaces with in- ent machines. vestment protection. Compatible with any .NET- ODBC-, OLE DB-, or Minimizes resource utilization JDBCcompliant application. Utilizes current infrastructures with no additional cost. Open-platform technology that integrates with Extends the functionality and life of existing archi- existing systems so you can manage them with tecture. ease. Windows, Unix and Linux client support. Supports existing IT infrastructure at no additional cost. Field and record level protection. Provides maximum levels of data security Heterogeneous joins for the creation of reports Maintains integrity of data. that consolidate data spanning multiple data sources. Real-time read/write access to data. Enhances flexibility. Multiple views support. Minimizes complexity for end users. Extensive data type conversion support. Flexible data format and storage. Comes bundled with the CONNX InfoNaut query- Easy to install and use ing and reporting tool that enables users to in- Standard version of InfoNaut included with stantly view their data. CONNX. Copyright CONNX Solutions, Inc. All rights reserved. [email protected] | 425.519.6600 | 2039 152nd Ave NE Redmond, WA 98052 | www.connx.com .
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