[ https://issues.apache.org/jira/browse/SPARK-37442?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]
Apache Spark reassigned SPARK-37442: ------------------------------------ Assignee: (was: Apache Spark) > In AQE, wrong InMemoryRelation size estimation causes "Cannot broadcast the > table that is larger than 8GB: 8 GB" failure > ------------------------------------------------------------------------------------------------------------------------ > > Key: SPARK-37442 > URL: https://issues.apache.org/jira/browse/SPARK-37442 > Project: Spark > Issue Type: Bug > Components: Optimizer, SQL > Affects Versions: 3.1.1, 3.2.0 > Reporter: Michael Chen > Priority: Major > > There is a period in time where an InMemoryRelation will have the cached > buffers loaded, but the statistics will be inaccurate (anywhere between 0 -> > size in bytes reported by accumulators). When AQE is enabled, it is possible > that join planning strategies will happen in this window. In this scenario, > join children sizes including InMemoryRelation are greatly underestimated and > a broadcast join can be planned when it shouldn't be. We have seen scenarios > where a broadcast join is planned with the builder size greater than 8GB > because at planning time, the optimizer believes the InMemoryRelation is 0 > bytes. > Here is an example test case where the broadcast threshold is being ignored. > It can mimic the 8GB error by increasing the size of the tables. > {code:java} > withSQLConf( > SQLConf.ADAPTIVE_EXECUTION_ENABLED.key -> "true", > SQLConf.AUTO_BROADCASTJOIN_THRESHOLD.key -> "1048584") { > // Spark estimates a string column as 20 bytes so with 60k rows, these > relations should be > // estimated at ~120m bytes which is greater than the broadcast join > threshold > Seq.fill(60000)("a").toDF("key") > .createOrReplaceTempView("temp") > Seq.fill(60000)("b").toDF("key") > .createOrReplaceTempView("temp2") > Seq("a").toDF("key").createOrReplaceTempView("smallTemp") > spark.sql("SELECT key as newKey FROM temp").persist() > val query = > s""" > |SELECT t3.newKey > |FROM > | (SELECT t1.newKey > | FROM (SELECT key as newKey FROM temp) as t1 > | JOIN > | (SELECT key FROM smallTemp) as t2 > | ON t1.newKey = t2.key > | ) as t3 > | JOIN > | (SELECT key FROM temp2) as t4 > | ON t3.newKey = t4.key > |UNION > |SELECT t1.newKey > |FROM > | (SELECT key as newKey FROM temp) as t1 > | JOIN > | (SELECT key FROM temp2) as t2 > | ON t1.newKey = t2.key > |""".stripMargin > val df = spark.sql(query) > df.collect() > val adaptivePlan = df.queryExecution.executedPlan > val bhj = findTopLevelBroadcastHashJoin(adaptivePlan) > assert(bhj.length == 1) {code} > > -- This message was sent by Atlassian Jira (v8.20.1#820001) --------------------------------------------------------------------- To unsubscribe, e-mail: issues-unsubscr...@spark.apache.org For additional commands, e-mail: issues-h...@spark.apache.org