szehon-ho commented on code in PR #7499:
URL: https://github.com/apache/iceberg/pull/7499#discussion_r1183096917


##########
docs/spark-writes.md:
##########
@@ -339,74 +331,55 @@ USING iceberg
 PARTITIONED BY (days(ts), category)
 ```
 
-To write data to the sample table, your data needs to be sorted by `days(ts), 
category`.
-
-If you're inserting data with SQL statement, you can use `ORDER BY` to achieve 
it, like below:
+To write data to the sample table, your data needs to be sorted by `days(ts), 
category` but this is taken care
+of automatically by the default `hash` distribution.
 
 ```sql
 INSERT INTO prod.db.sample
 SELECT id, data, category, ts FROM another_table
-ORDER BY ts, category
-```
-
-If you're inserting data with DataFrame, you can use either `orderBy`/`sort` 
to trigger global sort, or `sortWithinPartitions`
-to trigger local sort. Local sort for example:
-
-```scala
-data.sortWithinPartitions("ts", "category")
-    .writeTo("prod.db.sample")
-    .append()
 ```
 
-You can simply add the original column to the sort condition for the most 
partition transformations, except `bucket`.
-
-For `bucket` partition transformation, you need to register the Iceberg 
transform function in Spark to specify it during sort.
-
-Let's go through another sample table having bucket partition:
-
-```sql
-CREATE TABLE prod.db.sample (
-    id bigint,
-    data string,
-    category string,
-    ts timestamp)
-USING iceberg
-PARTITIONED BY (bucket(16, id))
-```
-
-You need to register the function to deal with bucket, like below:
-
-```scala
-import org.apache.iceberg.spark.IcebergSpark
-import org.apache.spark.sql.types.DataTypes
-
-IcebergSpark.registerBucketUDF(spark, "iceberg_bucket16", DataTypes.LongType, 
16)
-```
-
-{{< hint info >}}
-Explicit registration of the function is necessary because Spark doesn't allow 
Iceberg to provide functions.
-[SPARK-27658](https://issues.apache.org/jira/browse/SPARK-27658) is filed to 
enable Iceberg to provide functions
-which can be used in query.
-{{< /hint >}}
-
-Here we just registered the bucket function as `iceberg_bucket16`, which can 
be used in sort clause.
-
-If you're inserting data with SQL statement, you can use the function like 
below:
-
-```sql
-INSERT INTO prod.db.sample
-SELECT id, data, category, ts FROM another_table
-ORDER BY iceberg_bucket16(id)
-```
-
-If you're inserting data with DataFrame, you can use the function like below:
-
-```scala
-data.sortWithinPartitions(expr("iceberg_bucket16(id)"))
-    .writeTo("prod.db.sample")
-    .append()
-```
 
+There are 3 options for `write.distribution-mode`
+
+* `none` - This is the previous default for Iceberg.<p> This mode does not 
require any shuffles or sort to be performed
+automatically by Spark. Because no work is done automatically by Spark, the 
data must be either locally or globally 
+sorted manually by partition value. To reduce the number of files produced 
during writing, using a global sort is recommended.<p> 
+A local sort can be avoided by using the Spark [write 
fanout](#write-properties) property but this will cause all file handles to 
+remain open until each write task has completed. 
+* `hash` - This mode is the new default and requests that Spark uses a 
hash-based exchange to shuffle the incoming
+write data before writing. Practically, this means that each row is hashed 
based on the row's partition value and then placed
+in a corresponding Spark task based upon that value. Further division and 
coalescing of tasks may take place based on 
+the [Spark's Adaptive Query planning](#controlling-file-sizes).
+* `range` - This mode requests that Spark perform a range based exchanged to 
shuffle the data before writing. This is
+a two stage procedure which is more expensive than the `hash` mode. The first 
stage samples the data to be written based
+on the partition and sort columns, this information is then used in the second 
stage to shuffle data into tasks. Each

Review Comment:
   Nit: run-on, add 'and' before 'this'?



-- 
This is an automated message from the Apache Git Service.
To respond to the message, please log on to GitHub and use the
URL above to go to the specific comment.

To unsubscribe, e-mail: [email protected]

For queries about this service, please contact Infrastructure at:
[email protected]


---------------------------------------------------------------------
To unsubscribe, e-mail: [email protected]
For additional commands, e-mail: [email protected]

Reply via email to