<pre id="9ptpr"><b id="9ptpr"><var id="9ptpr"></var></b></pre>
        <pre id="9ptpr"></pre>

        <pre id="9ptpr"></pre>
        <pre id="9ptpr"></pre>

          <p id="9ptpr"><del id="9ptpr"></del></p>
          <ruby id="9ptpr"></ruby>

          <pre id="9ptpr"></pre>

          APPROACH

          We used the following approach to enable this:

          • We imported all the required data elements and cleansed them to a standardized format by getting the right Lat-Long through web extraction, stop word removal, abbreviation replacements etc.
          • Following this, we used statistical fuzzy matching techniques like Jaccard similarity, Jaro Winker, phonetical match, distance match, etc. to determine records which were similar.
          • We then applied business rules specific to the client’s needs to ensure that certain records were not falsely flagged as duplicates.

          KEY BENEFITS

          • The solution enabled the client to integrate multiple data sources into SFDC after removing duplicates to avoid redundancy of information.
          • The entire algorithm has also been automated to run without any manual intervention and generate output files every time there is an update on the input files.

          RESULTS

          • The client could merge projects and leads information from multiple 3rd party sources into their environment in a seamless manner without any duplication of information.
          • All relevant information pertaining to an account was accessible in one location when a rep logs into SFDC.

          鸭子tv国内免费视频