Github user gatorsmile commented on a diff in the pull request:

    https://github.com/apache/spark/pull/18792#discussion_r130512125
  
    --- Diff: docs/sql-programming-guide.md ---
    @@ -1903,6 +1903,25 @@ releases of Spark SQL.
       Hive can optionally merge the small files into fewer large files to 
avoid overflowing the HDFS
       metadata. Spark SQL does not support that.
     
    +**Hive UDF/UDTF/UDAF**
    +
    +Spark SQL implements the basic functionality of the Hive UDF/UDTF/UDAF, 
but does not support all the APIs for users.
    +Some of them are meaningless in Spark and the others are rarely used by 
users.
    +Below is a list of major APIs we don't support in Spark SQL:
    +
    +* `getRequiredJars` and `getRequiredFiles` (`UDF` and `GenericUDF`) are 
functions to to automatically
    +  include additional resources required by this UDF.
    +* `initialize(StructObjectInspector)` in `GenericUDTF` is not supported 
yet. Spark SQL currently uses
    +  a deprecated interface `initialize(ObjectInspector[])` only.
    +* `configure` (`GenericUDF`, `GenericUDTF`, and `GenericUDAFEvaluator`) is 
a function to initialize
    +  functions with `MapredContext`. But, Spark SQL does not use 
`MapredContext` internally.
    --- End diff --
    
    > functions with `MapredContext`, which is inapplicable to Spark.


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