iemejia commented on code in PR #12400:
URL: https://github.com/apache/gluten/pull/12400#discussion_r3549514723


##########
backends-velox/src/main/scala/org/apache/gluten/config/VeloxConfig.scala:
##########
@@ -176,9 +176,9 @@ object VeloxConfig extends ConfigRegistry {
 
   val COLUMNAR_VELOX_SSD_CACHE_IO_THREADS =
     
buildStaticConf("spark.gluten.sql.columnar.backend.velox.ssdCacheIOThreads")
-      .doc("The IO threads for cache promoting")
+      .doc("The number of IO threads for SSD cache read/write operations")
       .intConf
-      .createWithDefault(1)
+      .createWithDefault(4)

Review Comment:
   Fixed. Added `.checkValue(_ > 0, "must be a positive number")` consistent 
with the pattern used by `numCacheFileHandles` and other numeric configs in 
this file.



##########
backends-velox/src/test/scala/org/apache/spark/sql/execution/VeloxFileHandleCacheSuite.scala:
##########
@@ -0,0 +1,310 @@
+/*
+ * 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.execution
+
+import org.apache.gluten.config.VeloxConfig
+import org.apache.gluten.execution.{BasicScanExecTransformer, 
VeloxWholeStageTransformerSuite}
+
+import org.apache.spark.SparkConf
+
+/**
+ * Test suite for Velox file handle cache behavior.
+ *
+ * Tests correctness, config propagation, and edge cases for the file handle 
cache which caches open
+ * file handles (descriptors) to avoid repeated open/close overhead.
+ */
+class VeloxFileHandleCacheSuite extends VeloxWholeStageTransformerSuite {
+  override protected val resourcePath: String = "/parquet-for-read"
+  override protected val fileFormat: String = "parquet"
+
+  override protected def sparkConf: SparkConf = {
+    super.sparkConf
+      .set(VeloxConfig.COLUMNAR_VELOX_FILE_HANDLE_CACHE_ENABLED.key, "true")
+      .set(VeloxConfig.COLUMNAR_VELOX_FILE_HANDLE_EXPIRATION_DURATION_MS.key, 
"2000")
+      .set(VeloxConfig.COLUMNAR_VELOX_NUM_CACHE_FILE_HANDLES.key, "10000")
+  }
+
+  testWithSpecifiedSparkVersion(
+    "basic scan correctness with file handle cache enabled",
+    "3.5",
+    "3.5") {
+    // Verify that enabling file handle cache produces correct scan results
+    withTempPath {
+      dir =>
+        spark
+          .range(10000)
+          .selectExpr("id", "cast(id % 7 as int) as category", "id * 1.5 as 
value")
+          .repartition(10)
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val df = spark.read.parquet(dir.getCanonicalPath)
+        df.createOrReplaceTempView("t")
+
+        runQueryAndCompare("SELECT count(*) FROM t") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+        runQueryAndCompare("SELECT sum(value) FROM t WHERE category = 3") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+        runQueryAndCompare("SELECT category, count(*) FROM t GROUP BY 
category") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+    }
+  }
+
+  testWithSpecifiedSparkVersion(
+    "repeated scans produce consistent results",
+    "3.5",
+    "3.5") {
+    // Repeated scans of the same files must produce identical results 
regardless
+    // of whether handles are served from cache or re-opened after TTL 
eviction.
+    withTempPath {
+      dir =>
+        spark
+          .range(5000)
+          .selectExpr("id", "cast(id as string) as name")
+          .repartition(50) // 50 files to exercise many cache entries
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val path = dir.getCanonicalPath
+        val expected = spark.read.parquet(path).count()
+        assert(expected == 5000)
+
+        // Verify scans go through Gluten/Velox
+        checkGlutenPlan[BasicScanExecTransformer](spark.read.parquet(path))
+
+        // Scan the same files multiple times - results must be consistent
+        for (i <- 1 to 5) {
+          val count = spark.read.parquet(path).count()
+          assert(
+            count == expected,
+            s"Iteration $i: expected $expected rows but got $count")
+        }
+
+        // Verify aggregation consistency across repeated scans
+        val firstSum = 
spark.read.parquet(path).selectExpr("sum(id)").collect()(0).getLong(0)
+        for (i <- 1 to 3) {
+          val sum = 
spark.read.parquet(path).selectExpr("sum(id)").collect()(0).getLong(0)
+          assert(
+            sum == firstSum,
+            s"Iteration $i: sum mismatch, expected $firstSum but got $sum")
+        }
+    }
+  }
+
+  testWithSpecifiedSparkVersion(
+    "many small files do not cause errors with file handle cache",
+    "3.5",
+    "3.5") {
+    // Verify that scanning many small files with caching enabled does not 
cause
+    // file descriptor exhaustion or other resource-related errors.
+    withTempPath {
+      dir =>
+        // Create 200 small parquet files
+        spark
+          .range(20000)
+          .selectExpr("id", "uuid() as payload")
+          .repartition(200)
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val fileCount = dir.listFiles().count(_.getName.endsWith(".parquet"))
+        assert(fileCount >= 200, s"Expected at least 200 files, got 
$fileCount")
+
+        // Verify scans go through Gluten/Velox
+        
checkGlutenPlan[BasicScanExecTransformer](spark.read.parquet(dir.getCanonicalPath))
+
+        // Scan all files - should work without resource errors
+        val count = spark.read.parquet(dir.getCanonicalPath).count()
+        assert(count == 20000)
+
+        // Scan again (cache hit path) - should also work

Review Comment:
   Already fixed in the previous commit — removed "cache hit path" wording and 
replaced with "results must remain consistent".



##########
backends-velox/src/test/scala/org/apache/spark/sql/execution/VeloxFileHandleCacheSuite.scala:
##########
@@ -0,0 +1,310 @@
+/*
+ * 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.execution
+
+import org.apache.gluten.config.VeloxConfig
+import org.apache.gluten.execution.{BasicScanExecTransformer, 
VeloxWholeStageTransformerSuite}
+
+import org.apache.spark.SparkConf
+
+/**
+ * Test suite for Velox file handle cache behavior.
+ *
+ * Tests correctness, config propagation, and edge cases for the file handle 
cache which caches open
+ * file handles (descriptors) to avoid repeated open/close overhead.
+ */
+class VeloxFileHandleCacheSuite extends VeloxWholeStageTransformerSuite {
+  override protected val resourcePath: String = "/parquet-for-read"
+  override protected val fileFormat: String = "parquet"
+
+  override protected def sparkConf: SparkConf = {
+    super.sparkConf
+      .set(VeloxConfig.COLUMNAR_VELOX_FILE_HANDLE_CACHE_ENABLED.key, "true")
+      .set(VeloxConfig.COLUMNAR_VELOX_FILE_HANDLE_EXPIRATION_DURATION_MS.key, 
"2000")
+      .set(VeloxConfig.COLUMNAR_VELOX_NUM_CACHE_FILE_HANDLES.key, "10000")
+  }
+
+  testWithSpecifiedSparkVersion(
+    "basic scan correctness with file handle cache enabled",
+    "3.5",
+    "3.5") {
+    // Verify that enabling file handle cache produces correct scan results
+    withTempPath {
+      dir =>
+        spark
+          .range(10000)
+          .selectExpr("id", "cast(id % 7 as int) as category", "id * 1.5 as 
value")
+          .repartition(10)
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val df = spark.read.parquet(dir.getCanonicalPath)
+        df.createOrReplaceTempView("t")
+
+        runQueryAndCompare("SELECT count(*) FROM t") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+        runQueryAndCompare("SELECT sum(value) FROM t WHERE category = 3") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+        runQueryAndCompare("SELECT category, count(*) FROM t GROUP BY 
category") {
+          checkGlutenPlan[BasicScanExecTransformer]
+        }
+    }
+  }
+
+  testWithSpecifiedSparkVersion(
+    "repeated scans produce consistent results",
+    "3.5",
+    "3.5") {
+    // Repeated scans of the same files must produce identical results 
regardless
+    // of whether handles are served from cache or re-opened after TTL 
eviction.
+    withTempPath {
+      dir =>
+        spark
+          .range(5000)
+          .selectExpr("id", "cast(id as string) as name")
+          .repartition(50) // 50 files to exercise many cache entries
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val path = dir.getCanonicalPath
+        val expected = spark.read.parquet(path).count()
+        assert(expected == 5000)
+
+        // Verify scans go through Gluten/Velox
+        checkGlutenPlan[BasicScanExecTransformer](spark.read.parquet(path))
+
+        // Scan the same files multiple times - results must be consistent
+        for (i <- 1 to 5) {
+          val count = spark.read.parquet(path).count()
+          assert(
+            count == expected,
+            s"Iteration $i: expected $expected rows but got $count")
+        }
+
+        // Verify aggregation consistency across repeated scans
+        val firstSum = 
spark.read.parquet(path).selectExpr("sum(id)").collect()(0).getLong(0)
+        for (i <- 1 to 3) {
+          val sum = 
spark.read.parquet(path).selectExpr("sum(id)").collect()(0).getLong(0)
+          assert(
+            sum == firstSum,
+            s"Iteration $i: sum mismatch, expected $firstSum but got $sum")
+        }
+    }
+  }
+
+  testWithSpecifiedSparkVersion(
+    "many small files do not cause errors with file handle cache",
+    "3.5",
+    "3.5") {
+    // Verify that scanning many small files with caching enabled does not 
cause
+    // file descriptor exhaustion or other resource-related errors.
+    withTempPath {
+      dir =>
+        // Create 200 small parquet files
+        spark
+          .range(20000)
+          .selectExpr("id", "uuid() as payload")
+          .repartition(200)
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val fileCount = dir.listFiles().count(_.getName.endsWith(".parquet"))
+        assert(fileCount >= 200, s"Expected at least 200 files, got 
$fileCount")
+
+        // Verify scans go through Gluten/Velox
+        
checkGlutenPlan[BasicScanExecTransformer](spark.read.parquet(dir.getCanonicalPath))
+
+        // Scan all files - should work without resource errors
+        val count = spark.read.parquet(dir.getCanonicalPath).count()
+        assert(count == 20000)
+
+        // Scan again (cache hit path) - should also work
+        val count2 = spark.read.parquet(dir.getCanonicalPath).count()
+        assert(count2 == 20000)
+    }
+  }
+
+  testWithSpecifiedSparkVersion(
+    "filtered scan correctness with file handle cache",
+    "3.5",
+    "3.5") {
+    // Verify that predicate pushdown works correctly with cached file handles.
+    // This exercises the row group skipping path through cached handles.
+    withTempPath {
+      dir =>
+        spark
+          .range(100000)
+          .selectExpr(
+            "id",
+            "cast(id % 10 as int) as partition_key",
+            "cast(id * 0.01 as double) as metric")
+          .repartition(20)
+          .write
+          .parquet(dir.getCanonicalPath)
+
+        val path = dir.getCanonicalPath
+
+        // Verify scans go through Gluten/Velox
+        checkGlutenPlan[BasicScanExecTransformer](
+          spark.read.parquet(path).where("partition_key = 5"))
+
+        // Filter that matches ~10% of rows
+        val filtered = spark.read.parquet(path).where("partition_key = 
5").count()
+        assert(filtered == 10000, s"Expected 10000 filtered rows, got 
$filtered")
+
+        // Range filter
+        val rangeFiltered = spark.read.parquet(path).where("id >= 
50000").count()
+        assert(rangeFiltered == 50000, s"Expected 50000 range-filtered rows, 
got $rangeFiltered")
+
+        // Re-run same filters (cache hit path)

Review Comment:
   Already fixed in the previous commit — removed "cache hit path" wording and 
replaced with "results must remain consistent".



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