pvary commented on code in PR #8553:
URL: https://github.com/apache/iceberg/pull/8553#discussion_r1398110471


##########
flink/v1.17/flink/src/test/java/org/apache/iceberg/flink/source/TestIcebergSourceWithWatermarkExtractor.java:
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@@ -0,0 +1,359 @@
+/*
+ * 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.iceberg.flink.source;
+
+import static 
org.apache.flink.connector.testframe.utils.ConnectorTestConstants.DEFAULT_COLLECT_DATA_TIMEOUT;
+import static org.assertj.core.api.AssertionsForClassTypes.assertThat;
+
+import java.io.Serializable;
+import java.time.Duration;
+import java.time.Instant;
+import java.time.LocalDateTime;
+import java.time.ZoneId;
+import java.util.List;
+import java.util.Optional;
+import java.util.Set;
+import java.util.concurrent.CompletableFuture;
+import java.util.concurrent.TimeUnit;
+import java.util.stream.Collectors;
+import org.apache.flink.api.common.JobID;
+import org.apache.flink.api.common.eventtime.SerializableTimestampAssigner;
+import org.apache.flink.api.common.eventtime.WatermarkStrategy;
+import org.apache.flink.api.common.typeinfo.TypeInformation;
+import org.apache.flink.configuration.Configuration;
+import org.apache.flink.core.execution.JobClient;
+import org.apache.flink.metrics.Gauge;
+import org.apache.flink.runtime.metrics.MetricNames;
+import org.apache.flink.runtime.minicluster.RpcServiceSharing;
+import org.apache.flink.runtime.testutils.InMemoryReporter;
+import org.apache.flink.runtime.testutils.MiniClusterResourceConfiguration;
+import org.apache.flink.streaming.api.datastream.DataStream;
+import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
+import org.apache.flink.streaming.api.functions.windowing.AllWindowFunction;
+import 
org.apache.flink.streaming.api.windowing.assigners.TumblingEventTimeWindows;
+import org.apache.flink.streaming.api.windowing.time.Time;
+import org.apache.flink.streaming.api.windowing.windows.TimeWindow;
+import org.apache.flink.table.data.RowData;
+import org.apache.flink.test.util.MiniClusterWithClientResource;
+import org.apache.flink.util.CloseableIterator;
+import org.apache.flink.util.Collector;
+import org.apache.iceberg.FileFormat;
+import org.apache.iceberg.data.GenericAppenderHelper;
+import org.apache.iceberg.data.GenericRecord;
+import org.apache.iceberg.data.Record;
+import org.apache.iceberg.flink.HadoopTableResource;
+import org.apache.iceberg.flink.RowDataConverter;
+import org.apache.iceberg.flink.TestFixtures;
+import org.apache.iceberg.relocated.com.google.common.collect.ImmutableList;
+import org.apache.iceberg.relocated.com.google.common.collect.Lists;
+import org.apache.iceberg.relocated.com.google.common.collect.Sets;
+import org.awaitility.Awaitility;
+import org.junit.Assert;
+import org.junit.ClassRule;
+import org.junit.Rule;
+import org.junit.Test;
+import org.junit.rules.TemporaryFolder;
+
+public class TestIcebergSourceWithWatermarkExtractor implements Serializable {
+  private static final InMemoryReporter reporter = 
InMemoryReporter.createWithRetainedMetrics();
+  private static final int PARALLELISM = 4;
+  private static final String SOURCE_NAME = "IcebergSource";
+  private static final int RECORD_NUM_FOR_2_SPLITS = 200;
+
+  @ClassRule public static final TemporaryFolder TEMPORARY_FOLDER = new 
TemporaryFolder();
+
+  @Rule
+  public final MiniClusterWithClientResource miniClusterResource =
+      new MiniClusterWithClientResource(
+          new MiniClusterResourceConfiguration.Builder()
+              .setNumberTaskManagers(1)
+              .setNumberSlotsPerTaskManager(PARALLELISM)
+              .setRpcServiceSharing(RpcServiceSharing.DEDICATED)
+              .setConfiguration(reporter.addToConfiguration(new 
Configuration()))
+              .withHaLeadershipControl()
+              .build());
+
+  @Rule
+  public final HadoopTableResource sourceTableResource =
+      new HadoopTableResource(
+          TEMPORARY_FOLDER, TestFixtures.DATABASE, TestFixtures.TABLE, 
TestFixtures.TS_SCHEMA);
+
+  @Test
+  public void testWindowing() throws Exception {
+    GenericAppenderHelper dataAppender = appender();
+    List<Record> expectedRecords = Lists.newArrayList();
+
+    // Generate records with the following pattern:
+    // - File 1 - Later records (Watermark 6000000)
+    //    - Split 1 - 2 records (100, "file_1-recordTs_100"), (103, 
"file_1-recordTs_103")
+    // - File 2 - First records (Watermark 0)
+    //    - Split 1 - 100 records (0, "file_2-recordTs_0"), (1, 
"file_2-recordTs_1"),...
+    //    - Split 2 - 100 records (0, "file_2-recordTs_0"), (1, 
"file_2-recordTs_1"),...
+    // - File 3 - Parallel write for the first records (Watermark 60000)
+    //    - Split 1 - 2 records (1, "file_3-recordTs_1"), (3, 
"file_3-recordTs_3")
+    List<Record> batch = ImmutableList.of(generateRecord(100, "100"), 
generateRecord(103, "103"));
+    expectedRecords.addAll(batch);
+    dataAppender.appendToTable(batch);
+
+    batch = Lists.newArrayListWithCapacity(100);
+    for (int i = 0; i < RECORD_NUM_FOR_2_SPLITS; ++i) {
+      batch.add(generateRecord(i % 5, "file_2-recordTs_" + i));
+    }
+    expectedRecords.addAll(batch);
+    dataAppender.appendToTable(batch);
+
+    batch =
+        ImmutableList.of(
+            generateRecord(1, "file_3-recordTs_1"), generateRecord(3, 
"file_3-recordTs_3"));
+    expectedRecords.addAll(batch);
+    dataAppender.appendToTable(batch);
+
+    StreamExecutionEnvironment env = 
StreamExecutionEnvironment.getExecutionEnvironment();
+    env.setParallelism(2);
+
+    DataStream<RowData> stream =
+        env.fromSource(
+            sourceBuilder()
+                .streaming(true)
+                .monitorInterval(Duration.ofMillis(10))
+                
.streamingStartingStrategy(StreamingStartingStrategy.TABLE_SCAN_THEN_INCREMENTAL)
+                .build(),
+            WatermarkStrategy.<RowData>noWatermarks()
+                .withTimestampAssigner(new RowDataTimestampAssigner()),
+            SOURCE_NAME,
+            TypeInformation.of(RowData.class));
+    DataStream<RowData> windowed =
+        stream
+            .windowAll(TumblingEventTimeWindows.of(Time.minutes(5)))
+            .apply(
+                new AllWindowFunction<RowData, RowData, TimeWindow>() {
+                  @Override
+                  public void apply(
+                      TimeWindow window, Iterable<RowData> values, 
Collector<RowData> out) {
+                    // Just print all the data to confirm everything has 
arrived
+                    values.forEach(out::collect);
+                  }
+                });
+
+    try (CloseableIterator<RowData> resultIterator = windowed.collectAsync()) {
+      env.executeAsync("Iceberg Source Windowing Test");
+
+      // Write data so the windows containing test data are closed
+      dataAppender.appendToTable(ImmutableList.of(generateRecord(1500, 
"last-record")));
+      dataAppender.appendToTable(ImmutableList.of(generateRecord(1500, 
"last-record")));
+      dataAppender.appendToTable(ImmutableList.of(generateRecord(1500, 
"last-record")));
+
+      assertRecords(resultIterator, expectedRecords);
+    }
+  }
+
+  @Test
+  public void testThrottling() throws Exception {
+    GenericAppenderHelper dataAppender = appender();
+
+    // Generate records with the following pattern:
+    // - File 1 - Later records (Watermark 6000000)
+    //    - Split 1 - 2 records (100, "file_1-recordTs_100"), (103, 
"file_1-recordTs_103")
+    // - File 2 - First records (Watermark 0)
+    //    - Split 1 - 100 records (0, "file_2-recordTs_0"), (1, 
"file_2-recordTs_1"),...
+    //    - Split 2 - 100 records (0, "file_2-recordTs_0"), (1, 
"file_2-recordTs_1"),...
+    List<Record> batch;
+    batch =
+        ImmutableList.of(
+            generateRecord(100, "file_1-recordTs_100"), generateRecord(103, 
"file_1-recordTs_103"));
+    dataAppender.appendToTable(batch);
+
+    batch = Lists.newArrayListWithCapacity(100);
+    for (int i = 0; i < RECORD_NUM_FOR_2_SPLITS; ++i) {
+      batch.add(generateRecord(i % 5, "file_2-recordTs_" + i));
+    }
+
+    dataAppender.appendToTable(batch);
+
+    StreamExecutionEnvironment env = 
StreamExecutionEnvironment.getExecutionEnvironment();
+    env.setParallelism(2);
+
+    DataStream<RowData> stream =
+        env.fromSource(
+            sourceBuilder()
+                .streaming(true)
+                .monitorInterval(Duration.ofMillis(10))
+                
.streamingStartingStrategy(StreamingStartingStrategy.TABLE_SCAN_THEN_INCREMENTAL)
+                .build(),
+            WatermarkStrategy.<RowData>noWatermarks()
+                .withWatermarkAlignment("iceberg", Duration.ofMinutes(20), 
Duration.ofMillis(10)),
+            SOURCE_NAME,
+            TypeInformation.of(RowData.class));
+
+    try (CloseableIterator<RowData> resultIterator = stream.collectAsync()) {
+      JobClient jobClient = env.executeAsync("Continuous Iceberg Source 
Failover Test");
+
+      // Check that the read the non-blocked data
+      // The first RECORD_NUM_FOR_2_SPLITS should be read
+      // 1 or more from the runaway reader should be arrived depending on 
thread scheduling
+      waitForRecords(resultIterator, RECORD_NUM_FOR_2_SPLITS + 1);
+
+      // Get the drift metric, wait for it to be created and reach the 
expected state
+      // (100 min - 20 min - 0 min)

Review Comment:
   > can you help me understand why the drift should reach 80 minutes?
   > 
   > file 1 would advance reader 1 watermark to 100. file 2 would advance 
treader 2 watermark to 0. wouldn't drift be 100? why would it eventually come 
down to 80 without new splits?
   
   Because the metrics are already calculate with the 



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