SSIS:Global Verify: Difference between revisions

From Melissa Data Wiki
Jump to navigation Jump to search
No edit summary
No edit summary
 
Line 7: Line 7:
*Transliterates many major character sets and displays output in either native or  Roman characters
*Transliterates many major character sets and displays output in either native or  Roman characters
*Geocodes international postal addresses by adding a latitude-longitude coordinate.
*Geocodes international postal addresses by adding a latitude-longitude coordinate.
*Verifies phone numbers from over 230 countries and territories, append useful geographic information, and perform, premium real-time checks to distinguish live numbers and phone types.
*Verifies and parse email addresses, correct common typographical errors, and standardize email addresses. Features real-time email mailbox validation which removes up to 95% of bad emails.
*Parse, genderize, and standardize personal names as well as able to standardize company names
*[[Data Coverage by Country|List of supported Countries]]
*[[Data Coverage by Country|List of supported Countries]]



Latest revision as of 18:42, 2 July 2018

← SSIS:Data Quality Components

Global Verify Navigation
Overview
Tutorial
Advanced Configuration
Melissa Data Cloud
On-Premise
Global Verify Tabs
Name
Address
Phone
Email
Pass-Through Columns
Output Filter
Result Codes
Returned Result Codes
Result Codes



Global Verify Overview

  • Verifies international addresses for over 240 countries.
  • Transliterates many major character sets and displays output in either native or Roman characters
  • Geocodes international postal addresses by adding a latitude-longitude coordinate.
  • Verifies phone numbers from over 230 countries and territories, append useful geographic information, and perform, premium real-time checks to distinguish live numbers and phone types.
  • Verifies and parse email addresses, correct common typographical errors, and standardize email addresses. Features real-time email mailbox validation which removes up to 95% of bad emails.
  • Parse, genderize, and standardize personal names as well as able to standardize company names
  • List of supported Countries