nsivabalan commented on code in PR #9373:
URL: https://github.com/apache/hudi/pull/9373#discussion_r1285082443
##########
hudi-spark-datasource/hudi-spark-common/src/main/scala/org/apache/hudi/HoodieBaseRelation.scala:
##########
@@ -343,7 +343,7 @@ abstract class HoodieBaseRelation(val sqlContext:
SQLContext,
*/
override final def needConversion: Boolean = false
- override def inputFiles: Array[String] =
fileIndex.allFiles.map(_.getPath.toUri.toString).toArray
+ override def inputFiles: Array[String] =
fileIndex.allBaseFiles.map(_.getPath.toUri.toString).toArray
Review Comment:
Are we sure on this change? also, can we add java docs as to whats the
expected file list here and how it is used.
##########
hudi-spark-datasource/hudi-spark/src/test/scala/org/apache/hudi/functional/TestRecordLevelIndexWithSQL.scala:
##########
@@ -45,12 +52,71 @@ class TestRecordLevelIndexWithSQL extends
RecordLevelIndexTestBase {
validate = false)
createTempTable(hudiOpts)
- val reckey =
mergedDfList.last.limit(1).collect()(0).getAs("_row_key").toString
- spark.sql("select * from " + sqlTempTable + " where '" + reckey + "' =
_row_key").show(false)
+ testInQuery(hudiOpts)
+ testEqualToQuery(hudiOpts)
+ }
+
+ def testEqualToQuery(hudiOpts: Map[String, String]): Unit = {
+ val reckey = mergedDfList.last.limit(1).collect().map(row =>
row.getAs("_row_key").toString)
+ val dataFilter = EqualTo(attribute("_row_key"), Literal(reckey(0)))
+ assertEquals(1, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ verifyPruningFileCount(hudiOpts, dataFilter, 1)
+ }
+
+ def testInQuery(hudiOpts: Map[String, String]): Unit = {
+ var reckey = mergedDfList.last.limit(1).collect().map(row =>
row.getAs("_row_key").toString)
+ var dataFilter = In(attribute("_row_key"), reckey.map(l =>
literal(l)).toList)
+ assertEquals(1, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ var numFiles = if (isTableMOR()) 2 else 1
+ verifyPruningFileCount(hudiOpts, dataFilter, numFiles)
+
+ reckey = mergedDfList.last.limit(2).collect().map(row =>
row.getAs("_row_key").toString)
+ dataFilter = In(attribute("_row_key"), reckey.map(l => literal(l)).toList)
+ assertEquals(2, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ numFiles = if (isTableMOR()) 2 else 2
+ verifyPruningFileCount(hudiOpts, dataFilter, numFiles)
+ }
+
+ private def attribute(partition: String): AttributeReference = {
+ AttributeReference(partition, StringType, true)()
+ }
+
+ private def literal(value: String): Literal = {
+ Literal.create(value)
+ }
+
+ private def verifyPruningFileCount(opts: Map[String, String], dataFilter:
Expression, numFiles: Int): Unit = {
+ metaClient = HoodieTableMetaClient.reload(metaClient)
+ val fileIndex = HoodieFileIndex(spark, metaClient, None, opts + ("path" ->
basePath))
+ fileIndex.setIncludeLogFiles(isTableMOR())
+ val filteredPartitionDirectories = fileIndex.listFiles(Seq(),
Seq(dataFilter))
+ val filteredFilesCount = filteredPartitionDirectories.flatMap(s =>
s.files).size
+ assertTrue(filteredFilesCount < getLatestDataFilesCount(opts))
+ assertEquals(filteredFilesCount, numFiles)
+ }
+
+ private def isTableMOR(): Boolean = {
+ metaClient.getTableType == HoodieTableType.MERGE_ON_READ
+ }
+
+ private def getLatestDataFilesCount(opts: Map[String, String],
includeLogFiles: Boolean = true) = {
+ var totalLatestDataFiles = 0L
+
getTableFileSystenView(opts).getAllLatestFileSlicesBeforeOrOn(metaClient.getActiveTimeline.lastInstant().get().getTimestamp)
+ .values()
+ .forEach(JFunction.toJavaConsumer[java.util.stream.Stream[FileSlice]]
+ (slices => slices.forEach(JFunction.toJavaConsumer[FileSlice](
+ slice => totalLatestDataFiles += (if (includeLogFiles)
slice.getLogFiles.count() else 0)
+ + (if (slice.getBaseFile.isPresent) 1 else 0)))))
+ totalLatestDataFiles
+ }
+
+ private def getTableFileSystenView(opts: Map[String, String]):
HoodieMetadataFileSystemView = {
+ new HoodieMetadataFileSystemView(metaClient, metaClient.getActiveTimeline,
metadataWriter(getWriteConfig(opts)).getTableMetadata)
}
private def createTempTable(hudiOpts: Map[String, String]): Unit = {
val readDf = spark.read.format("hudi").options(hudiOpts).load(basePath)
+ readDf.printSchema()
Review Comment:
whats the necessity for this ?
##########
hudi-spark-datasource/hudi-spark-common/src/main/scala/org/apache/hudi/RecordLevelIndexSupport.scala:
##########
@@ -123,28 +123,47 @@ class RecordLevelIndexSupport(spark: SparkSession,
* @param queryFilters The queries that need to be filtered.
* @return Tuple of List of filtered queries and list of record key literals
that need to be matched
*/
- private def filterQueryFiltersWithRecordKey(queryFilters: Seq[Expression]):
(List[Expression], List[String]) = {
+ private def filterQueriesWithRecordKey(queryFilters: Seq[Expression]):
(List[Expression], List[String]) = {
var recordKeyQueries: List[Expression] = List.empty
var recordKeys: List[String] = List.empty
for (query <- queryFilters) {
- query match {
- case equalToQuery: EqualTo =>
- val (attribute, literal) =
getAttributeLiteralTuple(equalToQuery.left, equalToQuery.right).orNull
- if (attribute != null && attribute.name != null &&
attributeMatchesRecordKey(attribute.name)) {
- recordKeys = recordKeys :+ literal.value.toString
- recordKeyQueries = recordKeyQueries :+ equalToQuery
- }
- case _ =>
- }
+ filterQueryWithRecordKey(query).foreach({
+ case (exp: Expression, recKeys: List[String]) =>
+ recordKeys = recordKeys ++ recKeys
+ recordKeyQueries = recordKeyQueries :+ exp
+ })
}
+
Tuple2.apply(recordKeyQueries, recordKeys)
}
- /**
+ private def filterQueryWithRecordKey(queryFilter: Expression):
Option[(Expression, List[String])] = {
Review Comment:
can we add java docs on what are the supported filtering as of now.
##########
hudi-spark-datasource/hudi-spark/src/test/scala/org/apache/hudi/functional/TestRecordLevelIndexWithSQL.scala:
##########
@@ -45,12 +52,71 @@ class TestRecordLevelIndexWithSQL extends
RecordLevelIndexTestBase {
validate = false)
createTempTable(hudiOpts)
- val reckey =
mergedDfList.last.limit(1).collect()(0).getAs("_row_key").toString
- spark.sql("select * from " + sqlTempTable + " where '" + reckey + "' =
_row_key").show(false)
+ testInQuery(hudiOpts)
+ testEqualToQuery(hudiOpts)
+ }
+
+ def testEqualToQuery(hudiOpts: Map[String, String]): Unit = {
+ val reckey = mergedDfList.last.limit(1).collect().map(row =>
row.getAs("_row_key").toString)
+ val dataFilter = EqualTo(attribute("_row_key"), Literal(reckey(0)))
+ assertEquals(1, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ verifyPruningFileCount(hudiOpts, dataFilter, 1)
+ }
+
+ def testInQuery(hudiOpts: Map[String, String]): Unit = {
+ var reckey = mergedDfList.last.limit(1).collect().map(row =>
row.getAs("_row_key").toString)
+ var dataFilter = In(attribute("_row_key"), reckey.map(l =>
literal(l)).toList)
+ assertEquals(1, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ var numFiles = if (isTableMOR()) 2 else 1
+ verifyPruningFileCount(hudiOpts, dataFilter, numFiles)
+
+ reckey = mergedDfList.last.limit(2).collect().map(row =>
row.getAs("_row_key").toString)
+ dataFilter = In(attribute("_row_key"), reckey.map(l => literal(l)).toList)
+ assertEquals(2, spark.sql("select * from " + sqlTempTable + " where " +
dataFilter.sql).count())
+ numFiles = if (isTableMOR()) 2 else 2
+ verifyPruningFileCount(hudiOpts, dataFilter, numFiles)
+ }
+
+ private def attribute(partition: String): AttributeReference = {
+ AttributeReference(partition, StringType, true)()
+ }
+
+ private def literal(value: String): Literal = {
+ Literal.create(value)
+ }
+
+ private def verifyPruningFileCount(opts: Map[String, String], dataFilter:
Expression, numFiles: Int): Unit = {
+ metaClient = HoodieTableMetaClient.reload(metaClient)
+ val fileIndex = HoodieFileIndex(spark, metaClient, None, opts + ("path" ->
basePath))
+ fileIndex.setIncludeLogFiles(isTableMOR())
+ val filteredPartitionDirectories = fileIndex.listFiles(Seq(),
Seq(dataFilter))
Review Comment:
also, lets check for a case where the record key does not exists only w/
equal to or IN clause
for eg _row_key = 'xyz' should not even scan any files and return right away
if RLI did not return any matching entries.
--
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]