Class IcebergSink.Builder

java.lang.Object
org.apache.iceberg.flink.sink.IcebergSink.Builder
Enclosing class:
IcebergSink

public static class IcebergSink.Builder extends Object
  • Method Details

    • table

      public IcebergSink.Builder table(Table newTable)
      This iceberg SerializableTable instance is used for initializing IcebergStreamWriter which will write all the records into DataFiles and emit them to downstream operator. Providing a table would avoid so many table loading from each separate task.
      Parameters:
      newTable - the loaded iceberg table instance.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • tableLoader

      public IcebergSink.Builder tableLoader(TableLoader newTableLoader)
      The table loader is used for loading tables in IcebergCommitter lazily, we need this loader because Table is not serializable and could not just use the loaded table from Builder#table in the remote task manager.
      Parameters:
      newTableLoader - to load iceberg table inside tasks.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • set

      public IcebergSink.Builder set(String property, String value)
      Set the write properties for IcebergSink. View the supported properties in FlinkWriteOptions
    • setAll

      public IcebergSink.Builder setAll(Map<String,String> properties)
      Set the write properties for IcebergSink. View the supported properties in FlinkWriteOptions
    • tableSchema

      public IcebergSink.Builder tableSchema(org.apache.flink.table.legacy.api.TableSchema newTableSchema)
    • resolvedSchema

      public IcebergSink.Builder resolvedSchema(org.apache.flink.table.catalog.ResolvedSchema newResolvedSchema)
    • overwrite

      public IcebergSink.Builder overwrite(boolean newOverwrite)
    • flinkConf

      public IcebergSink.Builder flinkConf(org.apache.flink.configuration.ReadableConfig config)
    • distributionMode

      public IcebergSink.Builder distributionMode(DistributionMode mode)
      Configure the write DistributionMode that the IcebergSink will use. Currently, flink support DistributionMode.NONE and DistributionMode.HASH and DistributionMode.RANGE
      Parameters:
      mode - to specify the write distribution mode.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • rangeDistributionStatisticsType

      public IcebergSink.Builder rangeDistributionStatisticsType(StatisticsType type)
      Range distribution needs to collect statistics about data distribution to properly shuffle the records in relatively balanced way. In general, low cardinality should use StatisticsType.Map and high cardinality should use StatisticsType.Sketch Refer to StatisticsType Javadoc for more details.

      Default is StatisticsType.Auto where initially Map statistics is used. But if cardinality is higher than the threshold (currently 10K) as defined in SketchUtil#OPERATOR_SKETCH_SWITCH_THRESHOLD, statistics collection automatically switches to the sketch reservoir sampling.

      Explicit set the statistics type if the default behavior doesn't work.

      Parameters:
      type - to specify the statistics type for range distribution.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • rangeDistributionSortKeyBaseWeight

      public IcebergSink.Builder rangeDistributionSortKeyBaseWeight(double weight)
      If sort order contains partition columns, each sort key would map to one partition and data file. This relative weight can avoid placing too many small files for sort keys with low traffic. It is a double value that defines the minimal weight for each sort key. `0.02` means each key has a base weight of `2%` of the targeted traffic weight per writer task.

      E.g. the sink Iceberg table is partitioned daily by event time. Assume the data stream contains events from now up to 180 days ago. With event time, traffic weight distribution across different days typically has a long tail pattern. Current day contains the most traffic. The older days (long tail) contain less and less traffic. Assume writer parallelism is `10`. The total weight across all 180 days is `10,000`. Target traffic weight per writer task would be `1,000`. Assume the weight sum for the oldest 150 days is `1,000`. Normally, the range partitioner would put all the oldest 150 days in one writer task. That writer task would write to 150 small files (one per day). Keeping 150 open files can potentially consume large amount of memory. Flushing and uploading 150 files (however small) at checkpoint time can also be potentially slow. If this config is set to `0.02`. It means every sort key has a base weight of `2%` of targeted weight of `1,000` for every write task. It would essentially avoid placing more than `50` data files (one per day) on one writer task no matter how small they are.

      This is only applicable to StatisticsType.Map for low-cardinality scenario. For StatisticsType.Sketch high-cardinality sort columns, they are usually not used as partition columns. Otherwise, too many partitions and small files may be generated during write. Sketch range partitioner simply splits high-cardinality keys into ordered ranges.

      Default is 0.0%.

    • writeParallelism

      public IcebergSink.Builder writeParallelism(int newWriteParallelism)
      Configuring the write parallel number for iceberg stream writer.
      Parameters:
      newWriteParallelism - the number of parallel iceberg stream writer.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • upsert

      public IcebergSink.Builder upsert(boolean enabled)
      All INSERT/UPDATE_AFTER events from input stream will be transformed to UPSERT events, which means it will DELETE the old records and then INSERT the new records. In partitioned table, the partition fields should be a subset of equality fields, otherwise the old row that located in partition-A could not be deleted by the new row that located in partition-B.
      Parameters:
      enabled - indicate whether it should transform all INSERT/UPDATE_AFTER events to UPSERT.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • equalityFieldColumns

      public IcebergSink.Builder equalityFieldColumns(List<String> columns)
      Configuring the equality field columns for iceberg table that accept CDC or UPSERT events.
      Parameters:
      columns - defines the iceberg table's key.
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • uidSuffix

      public IcebergSink.Builder uidSuffix(String newSuffix)
      Set the uid suffix for IcebergSink operators. Note that IcebergSink internally consists of multiple operators (like writer, committer, aggregator). Actual operator uid will be appended with a suffix like "Sink Committer: $uidSuffix".

      Flink auto generates operator uid if not set explicitly. It is a recommended best-practice to set uid for all operators before deploying to production. Flink has an option to pipeline.auto-generate-uid=false to disable auto-generation and force explicit setting of all operator uid.

      Be careful with setting this for an existing job, because now we are changing the operator uid from an auto-generated one to this new value. When deploying the change with a checkpoint, Flink won't be able to restore the previous IcebergSink operator state (more specifically the committer operator state). You need to use --allowNonRestoredState to ignore the previous sink state. During restore IcebergSink state is used to check if last commit was actually successful or not. --allowNonRestoredState can lead to data loss if the Iceberg commit failed in the last completed checkpoint.

      Parameters:
      newSuffix - suffix for Flink sink operator uid and name
      Returns:
      IcebergSink.Builder to connect the iceberg table.
    • snapshotProperties

      public IcebergSink.Builder snapshotProperties(Map<String,String> properties)
    • setSnapshotProperty

      public IcebergSink.Builder setSnapshotProperty(String property, String value)
    • toBranch

      public IcebergSink.Builder toBranch(String branch)
    • append

      public org.apache.flink.streaming.api.datastream.DataStreamSink<org.apache.flink.table.data.RowData> append()
      Append the iceberg sink operators to write records to iceberg table.
      Returns:
      DataStreamSink for sink.