zoukankan      html  css  js  c++  java
  • FAST Search Map Properties 金大昊(jindahao)

    I get two results, the first is from the BCS and the second item is from the JDBC connector. I wonder why the teaser description is different between the two? The BCS also has a different icon due to search resolving the JDBC item target as a folder.

    Thanks to profile pages, I can actually click the BCS result which takes me to the profile page for the product.

    SQL View FAST Search

    This is one area which would require a bit of extra work and development if you go with the JDBC connector approach.

    Finally, we want to map some search properties. The managed properties from the previous demo are still setup, so I'll map the new BCS crawl properties to these same managed properties.

    Now when you are in the FAST Query Search Service Application, don't click on the Metadata properties link in the left menu, 'these aren't the search properties you're looking for' /waveshand.

    SQL View FAST Search

    If you mess with property mappings in there you won't see your BCS properties, instead click on the FAST Search Administration link.

    Then click on the Managed Properties link.

    SQL View FAST Search

    Click on Crawled property categories

    SQL View FAST Search

    You should notice the Business Data category with a larger number of properties, click the Business Data link.

    SQL View FAST Search

    There's a list of our crawl properties!

    You can map crawled properties through to managed properties through here too.

    SQL View FAST Search

    After mapping all the crawled properties to managed properties, perform a full crawl.

    Now retest the same search

    SQL View FAST Search

    Note the refiner counts have all incremented compared to the previous test search, so the property mappings and refiners are now setup, it's as easy as that! 

    Thanks for reading! I've got one more post to go for this series, I'll perform a closer comparison of the pros and cons of the the JDBC Connector and BCS Connector and why you might use either depending on your requirements and priorities.

  • 相关阅读:
    【flink】flink1.12 application mode on k8s
    【spark】读取高版本的elasticsearch
    [spark] spark2.4运行在k8s
    【spring】springboot使用jpa集成elasticsearch7.0
    【spark】cache不一定使用的场景
    JDK源码分析
    排序算法
    EagleEye鹰眼原理分析
    需求分析模版
    记一次线上事故内存泄漏:java.lang.OutOfMemoryError: unable to create new native thread
  • 原文地址:https://www.cnblogs.com/jindahao/p/2442522.html
Copyright © 2011-2022 走看看