tfma.utils.DoFnWithModels

Abstract class for DoFns that need the shared models.

Child Classes

class BundleFinalizerParam

class RestrictionParam

class StateParam

class TimerParam

class WatermarkEstimatorParam

Methods

default_label

default_type_hints

display_data

Returns the display data associated to a pipeline component.

It should be reimplemented in pipeline components that wish to have static display data.

Returns
Dict[str, Any]: A dictionary containing key:value pairs. The value might be an integer, float or string value; a :class:DisplayDataItem for values that have more data (e.g. short value, label, url); or a :class:HasDisplayData instance that has more display data that should be picked up. For example::

{ 'key1': 'string_value', 'key2': 1234, 'key3': 3.14159265, 'key4': DisplayDataItem('apache.org', url='http://apache.org'), 'key5': subComponent }

finish_bundle

View source

Called after a bundle of elements is processed on a worker.

from_callable

from_runner_api

Converts from an FunctionSpec to a Fn object.

Prefer registering a urn with its parameter type and constructor.

get_function_arguments

get_input_batch_type

Determine the batch type expected as input to process_batch.

The default implementation of get_input_batch_type simply observes the input typehint for the first parameter of process_batch. A Batched DoFn may override this method if a dynamic approach is required.

Args
input_element_type The element type of the input PCollection this DoFn is being applied to.

Returns
None if this DoFn cannot accept batches, else a Beam typehint or a native Python typehint.

get_output_batch_type

Determine the batch type produced by this DoFn's process_batch implementation and/or its process implementation with @yields_batch.

The default implementation of this method observes the return type annotations on process_batch and/or process. A Batched DoFn may override this method if a dynamic approach is required.

Args
input_element_type The element type of the input PCollection this DoFn is being applied to.

Returns
None if this DoFn will never yield batches, else a Beam typehint or a native Python typehint.

get_type_hints

Gets and/or initializes type hints for this object.

If type hints have not been set, attempts to initialize type hints in this order:

  • Using self.default_type_hints().
  • Using self.class type hints.

infer_output_type

process

View source

Method to use for processing elements.

This is invoked by DoFnRunner for each element of a input PCollection.

The following parameters can be used as default values on process arguments to indicate that a DoFn accepts the corresponding parameters. For example, a DoFn might accept the element and its timestamp with the following signature::

def process(element=DoFn.ElementParam, timestamp=DoFn.TimestampParam): ...

The full set of parameters is:

  • DoFn.ElementParam: element to be processed, should not be mutated.
  • DoFn.SideInputParam: a side input that may be used when processing.
  • DoFn.TimestampParam: timestamp of the input element.
  • DoFn.WindowParam: Window the input element belongs to.
  • DoFn.TimerParam: a userstate.RuntimeTimer object defined by the spec of the parameter.
  • DoFn.StateParam: a userstate.RuntimeState object defined by the spec of the parameter.
  • DoFn.KeyParam: key associated with the element.
  • DoFn.RestrictionParam: an iobase.RestrictionTracker will be provided here to allow treatment as a Splittable DoFn. The restriction tracker will be derived from the restriction provider in the parameter.
  • DoFn.WatermarkEstimatorParam: a function that can be used to track output watermark of Splittable DoFn implementations.

Args
element The element to be processed
*args side inputs
**kwargs other keyword arguments.

Returns
An Iterable of output elements or None.

process_batch

register_pickle_urn

Registers and implements the given urn via pickling.

register_urn

Registers a urn with a constructor.

For example, if 'beam:fn:foo' had parameter type FooPayload, one could write RunnerApiFn.register_urn('bean:fn:foo', FooPayload, foo_from_proto) where foo_from_proto took as arguments a FooPayload and a PipelineContext. This function can also be used as a decorator rather than passing the callable in as the final parameter.

A corresponding to_runner_api_parameter method would be expected that returns the tuple ('beam:fn:foo', FooPayload)

setup

View source

Called to prepare an instance for processing bundles of elements.

This is a good place to initialize transient in-memory resources, such as network connections. The resources can then be disposed in DoFn.teardown.

start_bundle

Called before a bundle of elements is processed on a worker.

Elements to be processed are split into bundles and distributed to workers. Before a worker calls process() on the first element of its bundle, it calls this method.

teardown

Called to use to clean up this instance before it is discarded.

A runner will do its best to call this method on any given instance to prevent leaks of transient resources, however, there may be situations where this is impossible (e.g. process crash, hardware failure, etc.) or unnecessary (e.g. the pipeline is shutting down and the process is about to be killed anyway, so all transient resources will be released automatically by the OS). In these cases, the call may not happen. It will also not be retried, because in such situations the DoFn instance no longer exists, so there's no instance to retry it on.

Thus, all work that depends on input elements, and all externally important side effects, must be performed in DoFn.process or DoFn.finish_bundle.

to_runner_api

Returns an FunctionSpec encoding this Fn.

Prefer overriding self.to_runner_api_parameter.

to_runner_api_parameter

unbounded_per_element

A decorator on process fn specifying that the fn performs an unbounded amount of work per input element.

with_input_types

with_output_types

yields_batches

A decorator to apply to process indicating it yields batches.

By default process is assumed to both consume and produce individual elements at a time. This decorator indicates that process produces "batches", which are collections of multiple logical Beam elements.

yields_elements

A decorator to apply to process_batch indicating it yields elements.

By default process_batch is assumed to both consume and produce "batches", which are collections of multiple logical Beam elements. This decorator indicates that process_batch produces individual elements at a time. process_batch is always expected to consume batches.

DoFnProcessParams [ElementParam, SideInputParam, TimestampParam, WindowParam, <class 'apache_beam.transforms.core._WatermarkEstimatorParam'>, PaneInfoParam, <class 'apache_beam.transforms.core._BundleFinalizerParam'>, KeyParam, <class 'apache_beam.transforms.core._StateDoFnParam'>, <class 'apache_beam.transforms.core._TimerDoFnParam'>]
DynamicTimerTagParam Instance of apache_beam.transforms.core._DoFnParam
ElementParam Instance of apache_beam.transforms.core._DoFnParam
KeyParam Instance of apache_beam.transforms.core._DoFnParam
PaneInfoParam Instance of apache_beam.transforms.core._DoFnParam
SideInputParam Instance of apache_beam.transforms.core._DoFnParam
TimestampParam Instance of apache_beam.transforms.core._DoFnParam
WindowParam Instance of apache_beam.transforms.core._DoFnParam