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[HUDI-2759] extract HoodieCatalogTable to coordinate spark catalog table and hoodie table #3998

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/*
* Licensed to the Apache Software Foundation (ASF) under one or more
* contributor license agreements. See the NOTICE file distributed with
* this work for additional information regarding copyright ownership.
* The ASF licenses this file to You under the Apache License, Version 2.0
* (the "License"); you may not use this file except in compliance with
* the License. You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/

package org.apache.spark.sql.catalyst.catalog

import org.apache.hudi.HoodieWriterUtils._
import org.apache.hudi.common.config.DFSPropertiesConfiguration
import org.apache.hudi.common.model.HoodieTableType
import org.apache.hudi.common.table.HoodieTableConfig
import org.apache.hudi.common.table.HoodieTableMetaClient
import org.apache.hudi.common.util.ValidationUtils
import org.apache.hudi.keygen.ComplexKeyGenerator
import org.apache.hudi.keygen.factory.HoodieSparkKeyGeneratorFactory

import org.apache.spark.internal.Logging
import org.apache.spark.sql.{AnalysisException, SparkSession}
import org.apache.spark.sql.avro.SchemaConverters
import org.apache.spark.sql.catalyst.TableIdentifier
import org.apache.spark.sql.hudi.{HoodieOptionConfig, HoodieSqlUtils}
import org.apache.spark.sql.hudi.HoodieSqlUtils._
import org.apache.spark.sql.types.{StructField, StructType}

import java.util.{Locale, Properties}

import scala.collection.JavaConverters._
import scala.collection.mutable

/**
* A wrapper of hoodie CatalogTable instance and hoodie Table.
*/
class HoodieCatalogTable(val spark: SparkSession, val table: CatalogTable) extends Logging {

assert(table.provider.map(_.toLowerCase(Locale.ROOT)).orNull == "hudi", "It's not a Hudi table")

private val hadoopConf = spark.sessionState.newHadoopConf

/**
* database.table in catalog
*/
val catalogTableName = table.qualifiedName

/**
* properties defined in catalog.
*/
val catalogProperties: Map[String, String] = table.storage.properties ++ table.properties

/**
* hoodie table's location.
* if create managed hoodie table, use `catalog.defaultTablePath`.
*/
val tableLocation: String = HoodieSqlUtils.getTableLocation(table, spark)

/**
* A flag to whether the hoodie table exists.
*/
val hoodieTableExists: Boolean = tableExistsInPath(tableLocation, hadoopConf)

/**
* Meta Client.
*/
lazy val metaClient: HoodieTableMetaClient = HoodieTableMetaClient.builder()
.setBasePath(tableLocation)
.setConf(hadoopConf)
.build()

/**
* Hoodie Table Config
*/
lazy val tableConfig: HoodieTableConfig = metaClient.getTableConfig

/**
* the name of table
*/
lazy val tableName: String = tableConfig.getTableName

/**
* The name of type of table
*/
lazy val tableType: HoodieTableType = tableConfig.getTableType

/**
* The type of table
*/
lazy val tableTypeName: String = tableType.name()

/**
* Recored Field List(Primary Key List)
*/
lazy val primaryKeys: Array[String] = tableConfig.getRecordKeyFields.orElse(Array.empty)

/**
* PreCombine Field
*/
lazy val preCombineKey: Option[String] = Option(tableConfig.getPreCombineField)

/**
* Paritition Fields
*/
lazy val partitionFields: Array[String] = tableConfig.getPartitionFields.orElse(Array.empty)

/**
* The schema of table.
* Make StructField nullable.
*/
lazy val tableSchema: StructType = {
val originSchema = getTableSqlSchema(metaClient, includeMetadataFields = true).get
StructType(originSchema.map(_.copy(nullable = true)))
}

/**
* The schema without hoodie meta fields
*/
lazy val tableSchemaWithoutMetaFields: StructType = HoodieSqlUtils.removeMetaFields(tableSchema)

/**
* The schema of data fields
*/
lazy val dataSchema: StructType = {
StructType(tableSchema.filterNot(f => partitionFields.contains(f.name)))
}
Comment on lines +132 to +134
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if hoodie.datasource.write.drop.partition.columns is false, then shall we keep the dataSchema same as tableSchema?

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if hoodie.datasource.write.drop.partition.columns is false, tableSchema doesn't contains partition columns. And dataSchema generated by the codes above will be same with tableSchema. So, i think there is not necessary to change.


/**
* The schema of data fields not including hoodie meta fields
*/
lazy val dataSchemaWithoutMetaFields: StructType = HoodieSqlUtils.removeMetaFields(dataSchema)

/**
* The schema of partition fields
*/
lazy val partitionSchema: StructType = StructType(tableSchema.filter(f => partitionFields.contains(f.name)))

/**
* All the partition paths
*/
def getAllPartitionPaths: Seq[String] = HoodieSqlUtils.getAllPartitionPaths(spark, table)

/**
* init hoodie table for create table (as select)
*/
def initHoodieTable(): Unit = {
logInfo(s"Init hoodie.properties for ${table.identifier.unquotedString}")
val (finalSchema, tableConfigs) = parseSchemaAndConfigs()

// Save all the table config to the hoodie.properties.
val properties = new Properties()
properties.putAll(tableConfigs.asJava)

HoodieTableMetaClient.withPropertyBuilder()
.fromProperties(properties)
.setTableName(table.identifier.table)
.setTableCreateSchema(SchemaConverters.toAvroType(finalSchema).toString())
.setPartitionFields(table.partitionColumnNames.mkString(","))
.initTable(hadoopConf, tableLocation)
}

/**
* @return schema, table parameters in which all parameters aren't sql-styled.
*/
private def parseSchemaAndConfigs(): (StructType, Map[String, String]) = {
val globalProps = DFSPropertiesConfiguration.getGlobalProps.asScala.toMap
val globalTableConfigs = mappingSparkDatasourceConfigsToTableConfigs(globalProps)
val globalSqlOptions = HoodieOptionConfig.mappingTableConfigToSqlOption(globalTableConfigs)

val sqlOptions = HoodieOptionConfig.withDefaultSqlOptions(globalSqlOptions ++ catalogProperties)

// get final schema and parameters
val (finalSchema, tableConfigs) = (table.tableType, hoodieTableExists) match {
case (CatalogTableType.EXTERNAL, true) =>
val existingTableConfig = tableConfig.getProps.asScala.toMap
val currentTableConfig = globalTableConfigs ++ existingTableConfig
val catalogTableProps = HoodieOptionConfig.mappingSqlOptionToTableConfig(catalogProperties)
validateTableConfig(spark, catalogTableProps, convertMapToHoodieConfig(existingTableConfig))

val options = extraTableConfig(spark, hoodieTableExists, currentTableConfig) ++
HoodieOptionConfig.mappingSqlOptionToTableConfig(sqlOptions) ++ currentTableConfig

ValidationUtils.checkArgument(tableSchema.nonEmpty || table.schema.nonEmpty,
s"Missing schema for Create Table: $catalogTableName")
val schema = if (tableSchema.nonEmpty) {
tableSchema
} else {
addMetaFields(table.schema)
}

(schema, options)

case (_, false) =>
ValidationUtils.checkArgument(table.schema.nonEmpty,
s"Missing schema for Create Table: $catalogTableName")
val schema = table.schema
val options = extraTableConfig(spark, isTableExists = false, globalTableConfigs) ++
HoodieOptionConfig.mappingSqlOptionToTableConfig(sqlOptions)
(addMetaFields(schema), options)

case (CatalogTableType.MANAGED, true) =>
throw new AnalysisException(s"Can not create the managed table('$catalogTableName')" +
s". The associated location('$tableLocation') already exists.")
}
HoodieOptionConfig.validateTable(spark, finalSchema,
HoodieOptionConfig.mappingTableConfigToSqlOption(tableConfigs))

val resolver = spark.sessionState.conf.resolver
val dataSchema = finalSchema.filterNot { f =>
table.partitionColumnNames.exists(resolver(_, f.name))
}
verifyDataSchema(table.identifier, table.tableType, dataSchema)

(finalSchema, tableConfigs)
}

private def extraTableConfig(sparkSession: SparkSession, isTableExists: Boolean,
originTableConfig: Map[String, String] = Map.empty): Map[String, String] = {
val extraConfig = mutable.Map.empty[String, String]
if (isTableExists) {
val allPartitionPaths = getAllPartitionPaths
if (originTableConfig.contains(HoodieTableConfig.HIVE_STYLE_PARTITIONING_ENABLE.key)) {
extraConfig(HoodieTableConfig.HIVE_STYLE_PARTITIONING_ENABLE.key) =
originTableConfig(HoodieTableConfig.HIVE_STYLE_PARTITIONING_ENABLE.key)
} else {
extraConfig(HoodieTableConfig.HIVE_STYLE_PARTITIONING_ENABLE.key) =
String.valueOf(isHiveStyledPartitioning(allPartitionPaths, table))
}
if (originTableConfig.contains(HoodieTableConfig.URL_ENCODE_PARTITIONING.key)) {
extraConfig(HoodieTableConfig.URL_ENCODE_PARTITIONING.key) =
originTableConfig(HoodieTableConfig.URL_ENCODE_PARTITIONING.key)
} else {
extraConfig(HoodieTableConfig.URL_ENCODE_PARTITIONING.key) =
String.valueOf(isUrlEncodeEnabled(allPartitionPaths, table))
}
} else {
extraConfig(HoodieTableConfig.HIVE_STYLE_PARTITIONING_ENABLE.key) = "true"
extraConfig(HoodieTableConfig.URL_ENCODE_PARTITIONING.key) = HoodieTableConfig.URL_ENCODE_PARTITIONING.defaultValue()
}

if (originTableConfig.contains(HoodieTableConfig.KEY_GENERATOR_CLASS_NAME.key)) {
extraConfig(HoodieTableConfig.KEY_GENERATOR_CLASS_NAME.key) =
HoodieSparkKeyGeneratorFactory.convertToSparkKeyGenerator(
originTableConfig(HoodieTableConfig.KEY_GENERATOR_CLASS_NAME.key))
} else {
extraConfig(HoodieTableConfig.KEY_GENERATOR_CLASS_NAME.key) = classOf[ComplexKeyGenerator].getCanonicalName
}
extraConfig.toMap
}

// This code is forked from org.apache.spark.sql.hive.HiveExternalCatalog#verifyDataSchema
private def verifyDataSchema(tableIdentifier: TableIdentifier, tableType: CatalogTableType,
dataSchema: Seq[StructField]): Unit = {
if (tableType != CatalogTableType.VIEW) {
val invalidChars = Seq(",", ":", ";")
def verifyNestedColumnNames(schema: StructType): Unit = schema.foreach { f =>
f.dataType match {
case st: StructType => verifyNestedColumnNames(st)
case _ if invalidChars.exists(f.name.contains) =>
val invalidCharsString = invalidChars.map(c => s"'$c'").mkString(", ")
val errMsg = "Cannot create a table having a nested column whose name contains " +
s"invalid characters ($invalidCharsString) in Hive metastore. Table: $tableIdentifier; " +
s"Column: ${f.name}"
throw new AnalysisException(errMsg)
case _ =>
}
}

dataSchema.foreach { f =>
f.dataType match {
// Checks top-level column names
case _ if f.name.contains(",") =>
throw new AnalysisException("Cannot create a table having a column whose name " +
s"contains commas in Hive metastore. Table: $tableIdentifier; Column: ${f.name}")
// Checks nested column names
case st: StructType =>
verifyNestedColumnNames(st)
case _ =>
}
}
}
}
}

object HoodieCatalogTable {

def apply(sparkSession: SparkSession, tableIdentifier: TableIdentifier): HoodieCatalogTable = {
val catalogTable = sparkSession.sessionState.catalog.getTableMetadata(tableIdentifier)
HoodieCatalogTable(sparkSession, catalogTable)
}

def apply(sparkSession: SparkSession, catalogTable: CatalogTable): HoodieCatalogTable = {
new HoodieCatalogTable(sparkSession, catalogTable)
}
}
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