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Reading from Oracle using DBReader

DBReader supports strategy for incremental data reading, but does not support custom queries, like JOIN.

Warning

Please take into account Oracle types

Supported DBReader features

Examples

Snapshot strategy:

from onetl.connection import Oracle
from onetl.db import DBReader

oracle = Oracle(...)

reader = DBReader(
    connection=oracle,
    source="schema.table",
    columns=["id", "key", "CAST(value AS VARCHAR2(4000)) value", "updated_dt"],
    where="key = 'something'",
    hint="INDEX(schema.table key_index)",
    options=Oracle.ReadOptions(partitionColumn="id", numPartitions=10),
)
df = reader.run()

Incremental strategy:

from onetl.connection import Oracle
from onetl.db import DBReader
from onetl.strategy import IncrementalStrategy

oracle = Oracle(...)

reader = DBReader(
    connection=oracle,
    source="schema.table",
    columns=["id", "key", "CAST(value AS VARCHAR2(4000)) value", "updated_dt"],
    where="key = 'something'",
    hint="INDEX(schema.table key_index)",
    hwm=DBReader.AutoDetectHWM(name="oracle_hwm", expression="updated_dt"),
    options=Oracle.ReadOptions(partitionColumn="id", numPartitions=10),
)

with IncrementalStrategy():
    df = reader.run()

Recommendations

Select only required columns

Instead of passing "*" in DBReader(columns=[...]) prefer passing exact column names. This reduces the amount of data passed from Oracle to Spark.

Pay attention to where value

Instead of filtering data on Spark side using df.filter(df.column == 'value') pass proper DBReader(where="column = 'value'") clause. This both reduces the amount of data send from Oracle to Spark, and may also improve performance of the query. Especially if there are indexes or partitions for columns used in where clause.

Options

OracleReadOptions

Bases: JDBCReadOptions

fetchsize = 100000 class-attribute instance-attribute

Fetch N rows from an opened cursor per one read round.

Tuning this option can influence performance of reading.

Warning

Default value is different from Spark.

Spark uses driver's own value, and it may be different in different drivers, and even versions of the same driver. For example, Oracle has default fetchsize=10, which is absolutely not usable.

Thus we've overridden default value with 100_000, which should increase reading performance.

Changed in 0.2.0

Set explicit default value to 100_000

lower_bound = Field(default=None, alias='lowerBound') class-attribute instance-attribute

See documentation for partitioning_mode for more details

num_partitions = Field(default=1, alias='numPartitions') class-attribute instance-attribute

Number of jobs created by Spark to read the table content in parallel. See documentation for partitioning_mode for more details

partition_column = Field(default=None, alias='partitionColumn') class-attribute instance-attribute

Column used to parallelize reading from a table.

Warning

It is highly recommended to use primary key, or column with an index to avoid performance issues.

Note

Column type depends on partitioning_mode.

  • partitioning_mode="range" requires column to be an integer, date or timestamp (can be NULL, but not recommended).
  • partitioning_mode="hash" accepts any column type (NOT NULL).
  • partitioning_mode="mod" requires column to be an integer (NOT NULL).

See documentation for partitioning_mode for more details

partitioning_mode = JDBCPartitioningMode.RANGE class-attribute instance-attribute

Defines how Spark will parallelize reading from table.

Possible values:

  • range (default) Allocate each executor a range of values from column passed into partition_column.

    Spark generates for each executor an SQL query

    Executor 1:

    SELECT ... FROM table
    WHERE (partition_column >= lowerBound
            OR partition_column IS NULL)
    AND partition_column < (lowerBound + stride)
    
    Executor 2:

    SELECT ... FROM table
    WHERE partition_column >= (lowerBound + stride)
    AND partition_column < (lowerBound + 2 * stride)
    
    ...

    Executor N:

    SELECT ... FROM table
    WHERE partition_column >= (lowerBound + (N-1) * stride)
    AND partition_column <= upperBound
    
    Where stride=(upperBound - lowerBound) / numPartitions.

    Column type must be integer, date or timestamp.

    Note

    lower_bound, upper_bound and num_partitions are used just to calculate the partition stride, NOT for filtering the rows in table. So all rows in the table will be returned (unlike Incremental Read Strategies).

    Note

    All queries are executed in parallel. To execute them sequentially, use Batch Read Strategies.

  • hash Allocate each executor a set of values based on hash of the partition_column column.

    Spark generates for each executor an SQL query

    Executor 1:

    SELECT ... FROM table
    WHERE (some_hash(partition_column) mod num_partitions) = 0 -- lower_bound
    
    Executor 2:

    SELECT ... FROM table
    WHERE (some_hash(partition_column) mod num_partitions) = 1 -- lower_bound + 1
    
    ...

    Executor N:

    SELECT ... FROM table
    WHERE (some_hash(partition_column) mod num_partitions) = num_partitions-1 -- upper_bound
    

    Note

    The hash function implementation depends on RDBMS. It can be MD5 or any other fast hash function, or expression based on this function call. Usually such functions accepts any column type as an input.

  • mod Allocate each executor a set of values based on modulus of the partition_column column.

    Spark generates for each executor an SQL query

    Executor 1:

    SELECT ... FROM table
    WHERE (partition_column mod num_partitions) = 0 -- lower_bound
    
    Executor 2:

    SELECT ... FROM table
    WHERE (partition_column mod num_partitions) = 1 -- lower_bound + 1
    
    Executor N:

    SELECT ... FROM table
    WHERE (partition_column mod num_partitions) = num_partitions-1 -- upper_bound
    

    Note

    Can be used only with columns of integer type.

Added in 0.5.0

Examples:

Read data in 10 parallel jobs by range of values in id_column column:

ReadOptions(
    partitioning_mode="range",  # default mode, can be omitted
    partitionColumn="id_column",
    numPartitions=10,
    # Options below can be discarded because they are
    # calculated automatically as MIN and MAX values of `partitionColumn`
    lowerBound=0,
    upperBound=100_000,
)
Read data in 10 parallel jobs by hash of values in some_column column:

ReadOptions(
    partitioning_mode="hash",
    partitionColumn="some_column",
    numPartitions=10,
    # lowerBound and upperBound are automatically set to `0` and `9`
)
Read data in 10 parallel jobs by modulus of values in id_column column:

ReadOptions(
    partitioning_mode="mod",
    partitionColumn="id_column",
    numPartitions=10,
    # lowerBound and upperBound are automatically set to `0` and `9`
)

query_timeout = Field(default=None, alias='queryTimeout') class-attribute instance-attribute

The number of seconds the driver will wait for a statement to execute. Zero means there is no limit.

This option depends on driver implementation, some drivers can check the timeout of each query instead of an entire JDBC batch.

session_init_statement = Field(default=None, alias='sessionInitStatement') class-attribute instance-attribute

After each database session is opened to the remote DB and before starting to read data, this option executes a custom SQL statement (or a PL/SQL block).

Use this to implement session initialization code.

Example:

sessionInitStatement = """
    BEGIN
        execute immediate
        'alter session set "_serial_direct_read"=true';
    END;
"""

upper_bound = Field(default=None, alias='upperBound') class-attribute instance-attribute

See documentation for partitioning_mode for more details

parse(options) classmethod

If a parameter inherited from the ReadOptions class was passed, then it will be returned unchanged. If a Dict object was passed it will be converted to ReadOptions.

Otherwise, an exception will be raised