Data integration and services
Adobe offers a range of solutions focused on the development of rich Internet applications that include high levels of data integration. These solutions include BlazeDS, LiveCycle Data Services Community Edition, and LiveCycle Data Services ES. Using data services technologies from Adobe, you can more easily build applications that add rich data capabilities to RIAs:
BlazeDS is an open source remoting and web messaging technology that enables developers to easily connect to back-end distributed data and push data in real-time to Adobe Flex and Adobe AIR applications. Learn more about BlazeDS open source.
LiveCycle Data Services, Community Edition is a subscription offering from Adobe that includes access to the latest certified builds of BlazeDS and developer and enterprise support. Learn more about LiveCycle Data Services, Community Edition.
LiveCycle Data Services ES is a comprehensive technology that enable the development and deployment of rich Internet applications with LiveCycle services, J2EE applications, and business logic. This is a solution for customers requiring commercially-licensed software for deploying business critical applications or who wish to go beyond the infrastructure features of BlazeDS by adding higher-level data functionality such as data synchronization, offline support for Adobe AIR, portal integration, RIA integration with LiveCycle ES software, and advanced deployment options for maximum scalability. Learn more about LiveCycle Data Services ES.
Greg Wilson (Mar. 31, 2008)
Understanding the differences and relationships between the products in the LiveCycle and BlazeDS product family.
分享到:
相关推荐
适用vs2019的Microsoft.DataTools.IntegrationServices.exe,从源地址下载实在是太慢了。
Author Adam Aspin brings 10 years of extensive ETL experience involving SQL Server, and especially satellite products such as Data Transformation Services and SQL Server Integration Services....
Build and manage data integration solutions with expert guidance from the Microsoft SQL Server Integration Services (SSIS) team. See best practices in action and dive deep into the SSIS engine, SSISDB...
SQL Server Integration Services Design Patterns is newly-revised for SQL Server 2014, and is a book of recipes for SQL Server Integration Services (SSIS). Design patterns in the book help to solve ...
sap press doc 解压密码:abap_developer
The new edition of the successful previous version is 25 percent revised and packed with more than 200 pages of new material on the 2008 release of SQL Server Integration Services (SSIS) Renowned ...
data-integration-services 这是一个综合性的大数据分析平台,数据的采集、存储、清洗、指标分析
SQL Server Integration Services (SSIS). This is because the other tools would be nothing without the cleansing and movement of data into a presentable format. The product can extract, transform, and ...
1 What Is Integration Services and Why Do I Need It?................3 2 Setting Up Integration Services ...................9 3 What’s New in Integration Services 2008 ......................21 4 ...
Chapter 7: SOA and Data Integration Chapter 8: Data Quality and Standards Part Three: DaaS Solution Blueprints Chapter 9: Reference Data Services Chapter 10: Master Data Services Chapter 11: Big Data...
SQL Server Integration Services中的Data Flow脚本编程.pdf
Examining the state of the art of Big Data over clouds, the book presents a novel architecture for achieving reliability, availability, and security for services running on the clouds. It supplies ...
Use Microsoft Azure to ...Software developers and professionals with a good data design background and basic development skills who want to learn how to implement a solution using Azure data services
SQL Server 2012 Integration Services Design Patterns is a book of recipes for SQL Server Integration Services (SSIS). Design patterns in the book show how to solve common problems encountered when ...
The XML and JSON data formats are widely used in Web services, regular Web pages and JavaScript code, and visualization formats such as SVG and KML for Google Earth and Google Maps. In addition, ...
There is a need to design new data architecture with new analytical sandboxes and methods with an integration of multiple skills for a data scientist to operate on such large data.