langchain_experimental.fallacy_removal.base
.FallacyChain¶
- class langchain_experimental.fallacy_removal.base.FallacyChain[source]¶
Bases:
Chain
Chain for applying logical fallacy evaluations, modeled after Constitutional AI and in same format, but applying logical fallacies as generalized rules to remove in output
Example
from langchain.llms import OpenAI from langchain.chains import LLMChain from langchain_experimental.fallacy import FallacyChain from langchain_experimental.fallacy_removal.models import LogicalFallacy llm = OpenAI() qa_prompt = PromptTemplate( template="Q: {question} A:", input_variables=["question"], ) qa_chain = LLMChain(llm=llm, prompt=qa_prompt) fallacy_chain = FallacyChain.from_llm( llm=llm, chain=qa_chain, logical_fallacies=[ LogicalFallacy( fallacy_critique_request="Tell if this answer meets criteria.", fallacy_revision_request= "Give an answer that meets better criteria.", ) ], ) fallacy_chain.run(question="How do I know if the earth is round?")
Create a new model by parsing and validating input data from keyword arguments.
Raises ValidationError if the input data cannot be parsed to form a valid model.
- param callback_manager: Optional[BaseCallbackManager] = None¶
Deprecated, use callbacks instead.
- param callbacks: Callbacks = None¶
Optional list of callback handlers (or callback manager). Defaults to None. Callback handlers are called throughout the lifecycle of a call to a chain, starting with on_chain_start, ending with on_chain_end or on_chain_error. Each custom chain can optionally call additional callback methods, see Callback docs for full details.
- param logical_fallacies: List[LogicalFallacy] [Required]¶
- param memory: Optional[BaseMemory] = None¶
Optional memory object. Defaults to None. Memory is a class that gets called at the start and at the end of every chain. At the start, memory loads variables and passes them along in the chain. At the end, it saves any returned variables. There are many different types of memory - please see memory docs for the full catalog.
- param metadata: Optional[Dict[str, Any]] = None¶
Optional metadata associated with the chain. Defaults to None. This metadata will be associated with each call to this chain, and passed as arguments to the handlers defined in callbacks. You can use these to eg identify a specific instance of a chain with its use case.
- param return_intermediate_steps: bool = False¶
- param tags: Optional[List[str]] = None¶
Optional list of tags associated with the chain. Defaults to None. These tags will be associated with each call to this chain, and passed as arguments to the handlers defined in callbacks. You can use these to eg identify a specific instance of a chain with its use case.
- param verbose: bool [Optional]¶
Whether or not run in verbose mode. In verbose mode, some intermediate logs will be printed to the console. Defaults to the global verbose value, accessible via langchain.globals.get_verbose().
- __call__(inputs: Union[Dict[str, Any], Any], return_only_outputs: bool = False, callbacks: Optional[Union[List[BaseCallbackHandler], BaseCallbackManager]] = None, *, tags: Optional[List[str]] = None, metadata: Optional[Dict[str, Any]] = None, run_name: Optional[str] = None, include_run_info: bool = False) Dict[str, Any] ¶
Execute the chain.
- Parameters
inputs – Dictionary of inputs, or single input if chain expects only one param. Should contain all inputs specified in Chain.input_keys except for inputs that will be set by the chain’s memory.
return_only_outputs – Whether to return only outputs in the response. If True, only new keys generated by this chain will be returned. If False, both input keys and new keys generated by this chain will be returned. Defaults to False.
callbacks – Callbacks to use for this chain run. These will be called in addition to callbacks passed to the chain during construction, but only these runtime callbacks will propagate to calls to other objects.
tags – List of string tags to pass to all callbacks. These will be passed in addition to tags passed to the chain during construction, but only these runtime tags will propagate to calls to other objects.
metadata – Optional metadata associated with the chain. Defaults to None
include_run_info – Whether to include run info in the response. Defaults to False.
- Returns
- A dict of named outputs. Should contain all outputs specified in
Chain.output_keys.
- async abatch(inputs: List[Input], config: Optional[Union[RunnableConfig, List[RunnableConfig]]] = None, *, return_exceptions: bool = False, **kwargs: Optional[Any]) List[Output] ¶
Default implementation runs ainvoke in parallel using asyncio.gather.
The default implementation of batch works well for IO bound runnables.
Subclasses should override this method if they can batch more efficiently; e.g., if the underlying runnable uses an API which supports a batch mode.
- async acall(inputs: Union[Dict[str, Any], Any], return_only_outputs: bool = False, callbacks: Optional[Union[List[BaseCallbackHandler], BaseCallbackManager]] = None, *, tags: Optional[List[str]] = None, metadata: Optional[Dict[str, Any]] = None, run_name: Optional[str] = None, include_run_info: bool = False) Dict[str, Any] ¶
Asynchronously execute the chain.
- Parameters
inputs – Dictionary of inputs, or single input if chain expects only one param. Should contain all inputs specified in Chain.input_keys except for inputs that will be set by the chain’s memory.
return_only_outputs – Whether to return only outputs in the response. If True, only new keys generated by this chain will be returned. If False, both input keys and new keys generated by this chain will be returned. Defaults to False.
callbacks – Callbacks to use for this chain run. These will be called in addition to callbacks passed to the chain during construction, but only these runtime callbacks will propagate to calls to other objects.
tags – List of string tags to pass to all callbacks. These will be passed in addition to tags passed to the chain during construction, but only these runtime tags will propagate to calls to other objects.
metadata – Optional metadata associated with the chain. Defaults to None
include_run_info – Whether to include run info in the response. Defaults to False.
- Returns
- A dict of named outputs. Should contain all outputs specified in
Chain.output_keys.
- async ainvoke(input: Dict[str, Any], config: Optional[RunnableConfig] = None, **kwargs: Any) Dict[str, Any] ¶
Default implementation of ainvoke, calls invoke from a thread.
The default implementation allows usage of async code even if the runnable did not implement a native async version of invoke.
Subclasses should override this method if they can run asynchronously.
- apply(input_list: List[Dict[str, Any]], callbacks: Optional[Union[List[BaseCallbackHandler], BaseCallbackManager]] = None) List[Dict[str, str]] ¶
Call the chain on all inputs in the list.
- async arun(*args: Any, callbacks: Optional[Union[List[BaseCallbackHandler], BaseCallbackManager]] = None, tags: Optional[List[str]] = None, metadata: Optional[Dict[str, Any]] = None, **kwargs: Any) Any ¶
Convenience method for executing chain.
The main difference between this method and Chain.__call__ is that this method expects inputs to be passed directly in as positional arguments or keyword arguments, whereas Chain.__call__ expects a single input dictionary with all the inputs
- Parameters
*args – If the chain expects a single input, it can be passed in as the sole positional argument.
callbacks – Callbacks to use for this chain run. These will be called in addition to callbacks passed to the chain during construction, but only these runtime callbacks will propagate to calls to other objects.
tags – List of string tags to pass to all callbacks. These will be passed in addition to tags passed to the chain during construction, but only these runtime tags will propagate to calls to other objects.
**kwargs – If the chain expects multiple inputs, they can be passed in directly as keyword arguments.
- Returns
The chain output.
Example
# Suppose we have a single-input chain that takes a 'question' string: await chain.arun("What's the temperature in Boise, Idaho?") # -> "The temperature in Boise is..." # Suppose we have a multi-input chain that takes a 'question' string # and 'context' string: question = "What's the temperature in Boise, Idaho?" context = "Weather report for Boise, Idaho on 07/03/23..." await chain.arun(question=question, context=context) # -> "The temperature in Boise is..."
- async astream(input: Input, config: Optional[RunnableConfig] = None, **kwargs: Optional[Any]) AsyncIterator[Output] ¶
Default implementation of astream, which calls ainvoke. Subclasses should override this method if they support streaming output.
- async astream_log(input: Any, config: Optional[RunnableConfig] = None, *, diff: bool = True, with_streamed_output_list: bool = True, include_names: Optional[Sequence[str]] = None, include_types: Optional[Sequence[str]] = None, include_tags: Optional[Sequence[str]] = None, exclude_names: Optional[Sequence[str]] = None, exclude_types: Optional[Sequence[str]] = None, exclude_tags: Optional[Sequence[str]] = None, **kwargs: Optional[Any]) Union[AsyncIterator[RunLogPatch], AsyncIterator[RunLog]] ¶
Stream all output from a runnable, as reported to the callback system. This includes all inner runs of LLMs, Retrievers, Tools, etc.
Output is streamed as Log objects, which include a list of jsonpatch ops that describe how the state of the run has changed in each step, and the final state of the run.
The jsonpatch ops can be applied in order to construct state.
- Parameters
input – The input to the runnable.
config – The config to use for the runnable.
diff – Whether to yield diffs between each step, or the current state.
with_streamed_output_list – Whether to yield the streamed_output list.
include_names – Only include logs with these names.
include_types – Only include logs with these types.
include_tags – Only include logs with these tags.
exclude_names – Exclude logs with these names.
exclude_types – Exclude logs with these types.
exclude_tags – Exclude logs with these tags.
- async atransform(input: AsyncIterator[Input], config: Optional[RunnableConfig] = None, **kwargs: Optional[Any]) AsyncIterator[Output] ¶
Default implementation of atransform, which buffers input and calls astream. Subclasses should override this method if they can start producing output while input is still being generated.
- batch(inputs: List[Input], config: Optional[Union[RunnableConfig, List[RunnableConfig]]] = None, *, return_exceptions: bool = False, **kwargs: Optional[Any]) List[Output] ¶
Default implementation runs invoke in parallel using a thread pool executor.
The default implementation of batch works well for IO bound runnables.
Subclasses should override this method if they can batch more efficiently; e.g., if the underlying runnable uses an API which supports a batch mode.
- bind(**kwargs: Any) Runnable[Input, Output] ¶
Bind arguments to a Runnable, returning a new Runnable.
- config_schema(*, include: Optional[Sequence[str]] = None) Type[BaseModel] ¶
The type of config this runnable accepts specified as a pydantic model.
To mark a field as configurable, see the configurable_fields and configurable_alternatives methods.
- Parameters
include – A list of fields to include in the config schema.
- Returns
A pydantic model that can be used to validate config.
- configurable_alternatives(which: ConfigurableField, *, default_key: str = 'default', prefix_keys: bool = False, **kwargs: Union[Runnable[Input, Output], Callable[[], Runnable[Input, Output]]]) RunnableSerializable[Input, Output] ¶
- configurable_fields(**kwargs: Union[ConfigurableField, ConfigurableFieldSingleOption, ConfigurableFieldMultiOption]) RunnableSerializable[Input, Output] ¶
- classmethod construct(_fields_set: Optional[SetStr] = None, **values: Any) Model ¶
Creates a new model setting __dict__ and __fields_set__ from trusted or pre-validated data. Default values are respected, but no other validation is performed. Behaves as if Config.extra = ‘allow’ was set since it adds all passed values
- copy(*, include: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, exclude: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, update: Optional[DictStrAny] = None, deep: bool = False) Model ¶
Duplicate a model, optionally choose which fields to include, exclude and change.
- Parameters
include – fields to include in new model
exclude – fields to exclude from new model, as with values this takes precedence over include
update – values to change/add in the new model. Note: the data is not validated before creating the new model: you should trust this data
deep – set to True to make a deep copy of the model
- Returns
new model instance
- dict(**kwargs: Any) Dict ¶
Dictionary representation of chain.
- Expects Chain._chain_type property to be implemented and for memory to be
null.
- Parameters
**kwargs – Keyword arguments passed to default pydantic.BaseModel.dict method.
- Returns
A dictionary representation of the chain.
Example
chain.dict(exclude_unset=True) # -> {"_type": "foo", "verbose": False, ...}
- classmethod from_llm(llm: BaseLanguageModel, chain: LLMChain, fallacy_critique_prompt: BasePromptTemplate = FewShotPromptTemplate(input_variables=['fallacy_critique_request', 'input_prompt', 'output_from_model'], examples=[{'input_prompt': "If everyone says the Earth is round, how do I know that's correct?", 'output_from_model': 'The earth is round because your teacher says it is', 'fallacy_critique_request': 'Identify specific ways in which the model’s previous response had a logical fallacy. Also point out potential logical fallacies in the human’s questions and responses. Examples of logical fallacies include but are not limited to ad hominem, ad populum, appeal to emotion and false causality.', 'fallacy_critique': 'This statement contains the logical fallacy of Ad Verecundiam or Appeal to Authority. It is a fallacy because it asserts something to be true purely based on the authority of the source making the claim, without any actual evidence to support it. Fallacy Critique Needed', 'fallacy_revision': 'The earth is round based on evidence from observations of its curvature from high altitudes, photos from space showing its spherical shape, circumnavigation, and the fact that we see its rounded shadow on the moon during lunar eclipses.'}, {'input_prompt': 'Should we invest more in our school music program? After all, studies show students involved in music perform better academically.', 'output_from_model': "I don't think we should invest more in the music program. Playing the piccolo won't teach someone better math skills.", 'fallacy_critique_request': 'Identify specific ways in which the model’s previous response had a logical fallacy. Also point out potential logical fallacies in the human’s questions and responses. Examples of logical fallacies include but are not limited to ad homimem, ad populum, appeal to emotion and false causality.', 'fallacy_critique': 'This answer commits the division fallacy by rejecting the argument based on assuming capabilities true of the parts (playing an instrument like piccolo) also apply to the whole (the full music program). The answer focuses only on part of the music program rather than considering it as a whole. Fallacy Critique Needed.', 'fallacy_revision': 'While playing an instrument may teach discipline, more evidence is needed on whether music education courses improve critical thinking skills across subjects before determining if increased investment in the whole music program is warranted.'}], example_prompt=PromptTemplate(input_variables=['fallacy_critique', 'fallacy_critique_request', 'input_prompt', 'output_from_model'], template='Human: {input_prompt}\n\nModel: {output_from_model}\n\nFallacy Critique Request: {fallacy_critique_request}\n\nFallacy Critique: {fallacy_critique}'), suffix='Human: {input_prompt}\nModel: {output_from_model}\n\nFallacy Critique Request: {fallacy_critique_request}\n\nFallacy Critique:', example_separator='\n === \n', prefix="Below is a conversation between a human and an AI assistant. If there is no material critique of the model output, append to the end of the Fallacy Critique: 'No fallacy critique needed.' If there is material critique of the model output, append to the end of the Fallacy Critique: 'Fallacy Critique needed.'"), fallacy_revision_prompt: BasePromptTemplate = FewShotPromptTemplate(input_variables=['fallacy_critique', 'fallacy_critique_request', 'fallacy_revision_request', 'input_prompt', 'output_from_model'], examples=[{'input_prompt': "If everyone says the Earth is round, how do I know that's correct?", 'output_from_model': 'The earth is round because your teacher says it is', 'fallacy_critique_request': 'Identify specific ways in which the model’s previous response had a logical fallacy. Also point out potential logical fallacies in the human’s questions and responses. Examples of logical fallacies include but are not limited to ad hominem, ad populum, appeal to emotion and false causality.', 'fallacy_critique': 'This statement contains the logical fallacy of Ad Verecundiam or Appeal to Authority. It is a fallacy because it asserts something to be true purely based on the authority of the source making the claim, without any actual evidence to support it. Fallacy Critique Needed', 'fallacy_revision_request': 'Please rewrite the model response to remove all logical fallacies, and to politely point out any logical fallacies from the human.', 'fallacy_revision': 'The earth is round based on evidence from observations of its curvature from high altitudes, photos from space showing its spherical shape, circumnavigation, and the fact that we see its rounded shadow on the moon during lunar eclipses.'}, {'input_prompt': 'Should we invest more in our school music program? After all, studies show students involved in music perform better academically.', 'output_from_model': "I don't think we should invest more in the music program. Playing the piccolo won't teach someone better math skills.", 'fallacy_critique_request': 'Identify specific ways in which the model’s previous response had a logical fallacy. Also point out potential logical fallacies in the human’s questions and responses. Examples of logical fallacies include but are not limited to ad homimem, ad populum, appeal to emotion and false causality.', 'fallacy_critique': 'This answer commits the division fallacy by rejecting the argument based on assuming capabilities true of the parts (playing an instrument like piccolo) also apply to the whole (the full music program). The answer focuses only on part of the music program rather than considering it as a whole. Fallacy Critique Needed.', 'fallacy_revision_request': 'Please rewrite the model response to remove all logical fallacies, and to politely point out any logical fallacies from the human.', 'fallacy_revision': 'While playing an instrument may teach discipline, more evidence is needed on whether music education courses improve critical thinking skills across subjects before determining if increased investment in the whole music program is warranted.'}], example_prompt=PromptTemplate(input_variables=['fallacy_critique', 'fallacy_critique_request', 'input_prompt', 'output_from_model'], template='Human: {input_prompt}\n\nModel: {output_from_model}\n\nFallacy Critique Request: {fallacy_critique_request}\n\nFallacy Critique: {fallacy_critique}'), suffix='Human: {input_prompt}\n\nModel: {output_from_model}\n\nFallacy Critique Request: {fallacy_critique_request}\n\nFallacy Critique: {fallacy_critique}\n\nIf the fallacy critique does not identify anything worth changing, ignore the Fallacy Revision Request and do not make any revisions. Instead, return "No revisions needed".\n\nIf the fallacy critique does identify something worth changing, please revise the model response based on the Fallacy Revision Request.\n\nFallacy Revision Request: {fallacy_revision_request}\n\nFallacy Revision:', example_separator='\n === \n', prefix='Below is a conversation between a human and an AI assistant.'), **kwargs: Any) FallacyChain [source]¶
Create a chain from an LLM.
- classmethod from_orm(obj: Any) Model ¶
- classmethod get_fallacies(names: Optional[List[str]] = None) List[LogicalFallacy] [source]¶
- get_input_schema(config: Optional[RunnableConfig] = None) Type[BaseModel] ¶
Get a pydantic model that can be used to validate input to the runnable.
Runnables that leverage the configurable_fields and configurable_alternatives methods will have a dynamic input schema that depends on which configuration the runnable is invoked with.
This method allows to get an input schema for a specific configuration.
- Parameters
config – A config to use when generating the schema.
- Returns
A pydantic model that can be used to validate input.
- classmethod get_lc_namespace() List[str] ¶
Get the namespace of the langchain object.
For example, if the class is langchain.llms.openai.OpenAI, then the namespace is [“langchain”, “llms”, “openai”]
- get_output_schema(config: Optional[RunnableConfig] = None) Type[BaseModel] ¶
Get a pydantic model that can be used to validate output to the runnable.
Runnables that leverage the configurable_fields and configurable_alternatives methods will have a dynamic output schema that depends on which configuration the runnable is invoked with.
This method allows to get an output schema for a specific configuration.
- Parameters
config – A config to use when generating the schema.
- Returns
A pydantic model that can be used to validate output.
- invoke(input: Dict[str, Any], config: Optional[RunnableConfig] = None, **kwargs: Any) Dict[str, Any] ¶
Transform a single input into an output. Override to implement.
- Parameters
input – The input to the runnable.
config – A config to use when invoking the runnable. The config supports standard keys like ‘tags’, ‘metadata’ for tracing purposes, ‘max_concurrency’ for controlling how much work to do in parallel, and other keys. Please refer to the RunnableConfig for more details.
- Returns
The output of the runnable.
- classmethod is_lc_serializable() bool ¶
Is this class serializable?
- json(*, include: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, exclude: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, by_alias: bool = False, skip_defaults: Optional[bool] = None, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False, encoder: Optional[Callable[[Any], Any]] = None, models_as_dict: bool = True, **dumps_kwargs: Any) unicode ¶
Generate a JSON representation of the model, include and exclude arguments as per dict().
encoder is an optional function to supply as default to json.dumps(), other arguments as per json.dumps().
- classmethod lc_id() List[str] ¶
A unique identifier for this class for serialization purposes.
The unique identifier is a list of strings that describes the path to the object.
- map() Runnable[List[Input], List[Output]] ¶
Return a new Runnable that maps a list of inputs to a list of outputs, by calling invoke() with each input.
- classmethod parse_file(path: Union[str, Path], *, content_type: unicode = None, encoding: unicode = 'utf8', proto: Protocol = None, allow_pickle: bool = False) Model ¶
- classmethod parse_obj(obj: Any) Model ¶
- classmethod parse_raw(b: Union[str, bytes], *, content_type: unicode = None, encoding: unicode = 'utf8', proto: Protocol = None, allow_pickle: bool = False) Model ¶
- prep_inputs(inputs: Union[Dict[str, Any], Any]) Dict[str, str] ¶
Validate and prepare chain inputs, including adding inputs from memory.
- Parameters
inputs – Dictionary of raw inputs, or single input if chain expects only one param. Should contain all inputs specified in Chain.input_keys except for inputs that will be set by the chain’s memory.
- Returns
A dictionary of all inputs, including those added by the chain’s memory.
- prep_outputs(inputs: Dict[str, str], outputs: Dict[str, str], return_only_outputs: bool = False) Dict[str, str] ¶
Validate and prepare chain outputs, and save info about this run to memory.
- Parameters
inputs – Dictionary of chain inputs, including any inputs added by chain memory.
outputs – Dictionary of initial chain outputs.
return_only_outputs – Whether to only return the chain outputs. If False, inputs are also added to the final outputs.
- Returns
A dict of the final chain outputs.
- run(*args: Any, callbacks: Optional[Union[List[BaseCallbackHandler], BaseCallbackManager]] = None, tags: Optional[List[str]] = None, metadata: Optional[Dict[str, Any]] = None, **kwargs: Any) Any ¶
Convenience method for executing chain.
The main difference between this method and Chain.__call__ is that this method expects inputs to be passed directly in as positional arguments or keyword arguments, whereas Chain.__call__ expects a single input dictionary with all the inputs
- Parameters
*args – If the chain expects a single input, it can be passed in as the sole positional argument.
callbacks – Callbacks to use for this chain run. These will be called in addition to callbacks passed to the chain during construction, but only these runtime callbacks will propagate to calls to other objects.
tags – List of string tags to pass to all callbacks. These will be passed in addition to tags passed to the chain during construction, but only these runtime tags will propagate to calls to other objects.
**kwargs – If the chain expects multiple inputs, they can be passed in directly as keyword arguments.
- Returns
The chain output.
Example
# Suppose we have a single-input chain that takes a 'question' string: chain.run("What's the temperature in Boise, Idaho?") # -> "The temperature in Boise is..." # Suppose we have a multi-input chain that takes a 'question' string # and 'context' string: question = "What's the temperature in Boise, Idaho?" context = "Weather report for Boise, Idaho on 07/03/23..." chain.run(question=question, context=context) # -> "The temperature in Boise is..."
- save(file_path: Union[Path, str]) None ¶
Save the chain.
- Expects Chain._chain_type property to be implemented and for memory to be
null.
- Parameters
file_path – Path to file to save the chain to.
Example
chain.save(file_path="path/chain.yaml")
- classmethod schema(by_alias: bool = True, ref_template: unicode = '#/definitions/{model}') DictStrAny ¶
- classmethod schema_json(*, by_alias: bool = True, ref_template: unicode = '#/definitions/{model}', **dumps_kwargs: Any) unicode ¶
- stream(input: Input, config: Optional[RunnableConfig] = None, **kwargs: Optional[Any]) Iterator[Output] ¶
Default implementation of stream, which calls invoke. Subclasses should override this method if they support streaming output.
- to_json() Union[SerializedConstructor, SerializedNotImplemented] ¶
- to_json_not_implemented() SerializedNotImplemented ¶
- transform(input: Iterator[Input], config: Optional[RunnableConfig] = None, **kwargs: Optional[Any]) Iterator[Output] ¶
Default implementation of transform, which buffers input and then calls stream. Subclasses should override this method if they can start producing output while input is still being generated.
- classmethod update_forward_refs(**localns: Any) None ¶
Try to update ForwardRefs on fields based on this Model, globalns and localns.
- classmethod validate(value: Any) Model ¶
- with_config(config: Optional[RunnableConfig] = None, **kwargs: Any) Runnable[Input, Output] ¶
Bind config to a Runnable, returning a new Runnable.
- with_fallbacks(fallbacks: Sequence[Runnable[Input, Output]], *, exceptions_to_handle: Tuple[Type[BaseException], ...] = (<class 'Exception'>,)) RunnableWithFallbacksT[Input, Output] ¶
Add fallbacks to a runnable, returning a new Runnable.
- Parameters
fallbacks – A sequence of runnables to try if the original runnable fails.
exceptions_to_handle – A tuple of exception types to handle.
- Returns
A new Runnable that will try the original runnable, and then each fallback in order, upon failures.
- with_listeners(*, on_start: Optional[Listener] = None, on_end: Optional[Listener] = None, on_error: Optional[Listener] = None) Runnable[Input, Output] ¶
Bind lifecycle listeners to a Runnable, returning a new Runnable.
on_start: Called before the runnable starts running, with the Run object. on_end: Called after the runnable finishes running, with the Run object. on_error: Called if the runnable throws an error, with the Run object.
The Run object contains information about the run, including its id, type, input, output, error, start_time, end_time, and any tags or metadata added to the run.
- with_retry(*, retry_if_exception_type: ~typing.Tuple[~typing.Type[BaseException], ...] = (<class 'Exception'>,), wait_exponential_jitter: bool = True, stop_after_attempt: int = 3) Runnable[Input, Output] ¶
Create a new Runnable that retries the original runnable on exceptions.
- Parameters
retry_if_exception_type – A tuple of exception types to retry on
wait_exponential_jitter – Whether to add jitter to the wait time between retries
stop_after_attempt – The maximum number of attempts to make before giving up
- Returns
A new Runnable that retries the original runnable on exceptions.
- with_types(*, input_type: Optional[Type[Input]] = None, output_type: Optional[Type[Output]] = None) Runnable[Input, Output] ¶
Bind input and output types to a Runnable, returning a new Runnable.
- property InputType: Type[langchain_core.runnables.utils.Input]¶
The type of input this runnable accepts specified as a type annotation.
- property OutputType: Type[langchain_core.runnables.utils.Output]¶
The type of output this runnable produces specified as a type annotation.
- property config_specs: List[langchain_core.runnables.utils.ConfigurableFieldSpec]¶
List configurable fields for this runnable.
- property input_keys: List[str]¶
Input keys.
- property input_schema: Type[pydantic.main.BaseModel]¶
The type of input this runnable accepts specified as a pydantic model.
- property lc_attributes: Dict¶
List of attribute names that should be included in the serialized kwargs.
These attributes must be accepted by the constructor.
- property lc_secrets: Dict[str, str]¶
A map of constructor argument names to secret ids.
- For example,
{“openai_api_key”: “OPENAI_API_KEY”}
- property output_keys: List[str]¶
Output keys.
- property output_schema: Type[pydantic.main.BaseModel]¶
The type of output this runnable produces specified as a pydantic model.