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When we join two tables using NATURAL JOIN, the join operation is performed on the basis on Common Column Names. When we have two colums with the same name in two tables, only the common records are displayed.

I have one query that when we have columns with the same name but different datatypes, those columns are also joined. I mean suppose column_1 in table1 has datatype INTEGER and column_1 in table2 has datatype VARCHAR, the join is performed on the basis of these two columns.

In short, how does the Natural Join takes place when there is a difference in datatypes of two columns with the same name ?

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NATURAL JOIN is commonly accepted as an anti-pattern.

It causes many maintainability issues. This is just one of them.

Instead go with explicit joins where you can type cast the fields.

  table1
INNER JOIN
  table2
    ON table2.fieldX = CAST(table1.fieldX AS INT)

As a rule of thumb, and personal preference, being explicit is much more maintainable than being implicit. And there are no performance issues.

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Datatypes don't have to match as long as they are convertible to each other. However if the datatypes are not consistent, the optimizer may not be able to use the indexes.

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If you use difference datatypes then you force data type conversion before match can be performed. That is extra work. On the other hand if no math is ever performed on the column and the value is not used as a number then it should be stored as character.

Once you pick a data type for an attribute then you should use that same data type for that attribute in all tables in which the column is defined. Otherwise you may end up with an implicit conversion.

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