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1220 1221 1222 1223 1224 1225 1226 1227 1228 1229 1230 1231 1232 1233 1234 1235 1236 1237 1238 1239 1240 1241 1242 1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256 1257 1258 1259 1260 1261 1262 1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276 1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294 1295 1296 | """Utilities for running language models or Chains over datasets."""
from __future__ import annotations
import functools
import inspect
import logging
import uuid
from enum import Enum
from typing import (
TYPE_CHECKING,
Any,
Callable,
Dict,
List,
Optional,
Sequence,
Tuple,
Union,
cast,
)
from langchain_core._api import warn_deprecated
from langchain_core.language_models import BaseLanguageModel
from langchain_core.messages import BaseMessage, messages_from_dict
from langchain_core.outputs import ChatResult, LLMResult
from langchain_core.runnables import Runnable, RunnableConfig, RunnableLambda
from langchain_core.runnables import config as runnable_config
from langchain_core.runnables import utils as runnable_utils
from langchain_core.tracers.evaluation import (
EvaluatorCallbackHandler,
wait_for_all_evaluators,
)
from langchain_core.tracers.langchain import LangChainTracer
from langsmith.client import Client
from langsmith.evaluation import RunEvaluator
from langsmith.run_helpers import as_runnable, is_traceable_function
from langsmith.schemas import Dataset, DataType, Example
from langsmith.utils import LangSmithError
from requests import HTTPError
from langchain.callbacks.manager import Callbacks
from langchain.chains.base import Chain
from langchain.evaluation.loading import load_evaluator
from langchain.evaluation.schema import (
EvaluatorType,
PairwiseStringEvaluator,
StringEvaluator,
)
from langchain.smith import evaluation as smith_eval
from langchain.smith.evaluation import config as smith_eval_config
from langchain.smith.evaluation import name_generation, progress
if TYPE_CHECKING:
import pandas as pd
logger = logging.getLogger(__name__)
MODEL_OR_CHAIN_FACTORY = Union[
Callable[[], Union[Chain, Runnable]],
BaseLanguageModel,
Callable[[dict], Any],
Runnable,
Chain,
]
MCF = Union[Callable[[], Union[Chain, Runnable]], BaseLanguageModel]
class InputFormatError(Exception):
"""Raised when the input format is invalid."""
## Shared Utilities
class TestResult(dict):
"""A dictionary of the results of a single test run."""
def get_aggregate_feedback(
self, quantiles: Optional[Sequence[float]] = None
) -> pd.DataFrame:
"""Return quantiles for the feedback scores.
This method calculates and prints the quantiles for the feedback scores
across all feedback keys.
Returns:
A DataFrame containing the quantiles for each feedback key.
"""
df = self.to_dataframe()
to_drop = {"input", "output", "reference"}.intersection(df.columns)
return df.describe(include="all").drop(to_drop, axis=1)
def to_dataframe(self) -> pd.DataFrame:
"""Convert the results to a dataframe."""
try:
import pandas as pd
except ImportError as e:
raise ImportError(
"Pandas is required to convert the results to a dataframe."
" to install pandas, run `pip install pandas`."
) from e
indices = []
records = []
for example_id, result in self["results"].items():
feedback = result["feedback"]
output_ = result.get("output")
if isinstance(output_, dict):
output = {f"outputs.{k}": v for k, v in output_.items()}
elif output_ is None:
output = {}
else:
output = {"output": output_}
r = {
**{f"inputs.{k}": v for k, v in result["input"].items()},
**output,
}
if "reference" in result:
r["reference"] = result["reference"]
r.update(
{
**{f"feedback.{f.key}": f.score for f in feedback},
"error": result.get("error"),
"execution_time": result["execution_time"],
}
)
records.append(r)
indices.append(example_id)
return pd.DataFrame(records, index=indices)
class EvalError(dict):
"""Your architecture raised an error."""
def __init__(self, Error: BaseException, **kwargs: Any) -> None:
super().__init__(Error=Error, **kwargs)
def __getattr__(self, name: str) -> Any:
try:
return self[name]
except KeyError:
raise AttributeError(f"'EvalError' object has no attribute '{name}'")
def _wrap_in_chain_factory(
llm_or_chain_factory: MODEL_OR_CHAIN_FACTORY,
dataset_name: str = "<my_dataset>",
) -> MCF:
"""Forgive the user if they pass in a chain without memory instead of a chain
factory. It's a common mistake. Raise a more helpful error message as well."""
if isinstance(llm_or_chain_factory, Chain):
chain = llm_or_chain_factory
chain_class = chain.__class__.__name__
if llm_or_chain_factory.memory is not None:
memory_class = chain.memory.__class__.__name__
raise ValueError(
"Cannot directly evaluate a chain with stateful memory."
" To evaluate this chain, pass in a chain constructor"
" that initializes fresh memory each time it is called."
" This will safegaurd against information"
" leakage between dataset examples."
"\nFor example:\n\n"
"def chain_constructor():\n"
f" new_memory = {memory_class}(...)\n"
f" return {chain_class}"
"(memory=new_memory, ...)\n\n"
f'run_on_dataset("{dataset_name}", chain_constructor, ...)'
)
return lambda: chain
elif isinstance(llm_or_chain_factory, BaseLanguageModel):
return llm_or_chain_factory
elif isinstance(llm_or_chain_factory, Runnable):
# Memory may exist here, but it's not elegant to check all those cases.
lcf = llm_or_chain_factory
return lambda: lcf
elif callable(llm_or_chain_factory):
if is_traceable_function(llm_or_chain_factory):
runnable_ = as_runnable(cast(Callable, llm_or_chain_factory))
return lambda: runnable_
try:
_model = llm_or_chain_factory() # type: ignore[call-arg]
except TypeError:
# It's an arbitrary function, wrap it in a RunnableLambda
user_func = cast(Callable, llm_or_chain_factory)
sig = inspect.signature(user_func)
logger.info(f"Wrapping function {sig} as RunnableLambda.")
wrapped = RunnableLambda(user_func)
return lambda: wrapped
constructor = cast(Callable, llm_or_chain_factory)
if isinstance(_model, BaseLanguageModel):
# It's not uncommon to do an LLM constructor instead of raw LLM,
# so we'll unpack it for the user.
return _model
elif is_traceable_function(cast(Callable, _model)):
runnable_ = as_runnable(cast(Callable, _model))
return lambda: runnable_
elif not isinstance(_model, Runnable):
# This is unlikely to happen - a constructor for a model function
return lambda: RunnableLambda(constructor)
else:
# Typical correct case
return constructor # noqa
return llm_or_chain_factory
def _get_prompt(inputs: Dict[str, Any]) -> str:
"""Get prompt from inputs.
Args:
inputs: The input dictionary.
Returns:
A string prompt.
Raises:
InputFormatError: If the input format is invalid.
"""
if not inputs:
raise InputFormatError("Inputs should not be empty.")
prompts = []
if "prompt" in inputs:
if not isinstance(inputs["prompt"], str):
raise InputFormatError(
"Expected string for 'prompt', got"
f" {type(inputs['prompt']).__name__}"
)
prompts = [inputs["prompt"]]
elif "prompts" in inputs:
if not isinstance(inputs["prompts"], list) or not all(
isinstance(i, str) for i in inputs["prompts"]
):
raise InputFormatError(
"Expected list of strings for 'prompts',"
f" got {type(inputs['prompts']).__name__}"
)
prompts = inputs["prompts"]
elif len(inputs) == 1:
prompt_ = next(iter(inputs.values()))
if isinstance(prompt_, str):
prompts = [prompt_]
elif isinstance(prompt_, list) and all(isinstance(i, str) for i in prompt_):
prompts = prompt_
else:
raise InputFormatError(f"LLM Run expects string prompt input. Got {inputs}")
else:
raise InputFormatError(
f"LLM Run expects 'prompt' or 'prompts' in inputs. Got {inputs}"
)
if len(prompts) == 1:
return prompts[0]
else:
raise InputFormatError(
f"LLM Run expects single prompt input. Got {len(prompts)} prompts."
)
def _get_messages(inputs: Dict[str, Any]) -> List[BaseMessage]:
"""Get Chat Messages from inputs.
Args:
inputs: The input dictionary.
Returns:
A list of chat messages.
Raises:
InputFormatError: If the input format is invalid.
"""
if not inputs:
raise InputFormatError("Inputs should not be empty.")
if "messages" in inputs:
single_input = inputs["messages"]
elif len(inputs) == 1:
single_input = next(iter(inputs.values()))
else:
raise InputFormatError(
f"Chat Run expects 'messages' in inputs when example has multiple"
f" input keys. Got {inputs}"
)
if isinstance(single_input, list) and all(
isinstance(i, dict) for i in single_input
):
raw_messages = [single_input]
elif isinstance(single_input, list) and all(
isinstance(i, list) for i in single_input
):
raw_messages = single_input
else:
raise InputFormatError(
f"Chat Run expects List[dict] or List[List[dict]] values for"
f" 'messages' key input. Got {inputs}"
)
if len(raw_messages) == 1:
return messages_from_dict(raw_messages[0])
else:
raise InputFormatError(
f"Chat Run expects single List[dict] or List[List[dict]] 'messages'"
f" input. Got {len(raw_messages)} messages from inputs {inputs}"
)
## Shared data validation utilities
def _validate_example_inputs_for_language_model(
first_example: Example,
input_mapper: Optional[Callable[[Dict], Any]],
) -> None:
if input_mapper:
prompt_input = input_mapper(first_example.inputs)
if not isinstance(prompt_input, str) and not (
isinstance(prompt_input, list)
and all(isinstance(msg, BaseMessage) for msg in prompt_input)
):
raise InputFormatError(
"When using an input_mapper to prepare dataset example inputs"
" for an LLM or chat model, the output must a single string or"
" a list of chat messages."
f"\nGot: {prompt_input} of type {type(prompt_input)}."
)
else:
try:
_get_prompt(first_example.inputs)
except InputFormatError:
try:
_get_messages(first_example.inputs)
except InputFormatError:
raise InputFormatError(
"Example inputs do not match language model input format. "
"Expected a dictionary with messages or a single prompt."
f" Got: {first_example.inputs}"
" Please update your dataset OR provide an input_mapper"
" to convert the example.inputs to a compatible format"
" for the llm or chat model you wish to evaluate."
)
def _validate_example_inputs_for_chain(
first_example: Example,
chain: Chain,
input_mapper: Optional[Callable[[Dict], Any]],
) -> None:
"""Validate that the example inputs match the chain input keys."""
if input_mapper:
first_inputs = input_mapper(first_example.inputs)
missing_keys = set(chain.input_keys).difference(first_inputs)
if not isinstance(first_inputs, dict):
raise InputFormatError(
"When using an input_mapper to prepare dataset example"
" inputs for a chain, the mapped value must be a dictionary."
f"\nGot: {first_inputs} of type {type(first_inputs)}."
)
if missing_keys:
raise InputFormatError(
"Missing keys after loading example using input_mapper."
f"\nExpected: {chain.input_keys}. Got: {first_inputs.keys()}"
)
else:
first_inputs = first_example.inputs
missing_keys = set(chain.input_keys).difference(first_inputs)
if len(first_inputs) == 1 and len(chain.input_keys) == 1:
# We can pass this through the run method.
# Refrain from calling to validate.
pass
elif missing_keys:
raise InputFormatError(
"Example inputs missing expected chain input keys."
" Please provide an input_mapper to convert the example.inputs"
" to a compatible format for the chain you wish to evaluate."
f"Expected: {chain.input_keys}. "
f"Got: {first_inputs.keys()}"
)
def _validate_example_inputs(
example: Example,
llm_or_chain_factory: MCF,
input_mapper: Optional[Callable[[Dict], Any]],
) -> None:
"""Validate that the example inputs are valid for the model."""
if isinstance(llm_or_chain_factory, BaseLanguageModel):
_validate_example_inputs_for_language_model(example, input_mapper)
else:
chain = llm_or_chain_factory()
if isinstance(chain, Chain):
# Otherwise it's a runnable
_validate_example_inputs_for_chain(example, chain, input_mapper)
elif isinstance(chain, Runnable):
logger.debug(f"Skipping input validation for {chain}")
## Shared Evaluator Setup Utilities
def _setup_evaluation(
llm_or_chain_factory: MCF,
examples: List[Example],
evaluation: Optional[smith_eval.RunEvalConfig],
data_type: DataType,
) -> Optional[List[RunEvaluator]]:
"""Configure the evaluators to run on the results of the chain."""
if evaluation:
if isinstance(llm_or_chain_factory, BaseLanguageModel):
run_inputs, run_outputs = None, None
run_type = "llm"
else:
run_type = "chain"
if data_type in (DataType.chat, DataType.llm):
val = data_type.value if isinstance(data_type, Enum) else data_type
raise ValueError(
"Cannot evaluate a chain on dataset with "
f"data_type={val}. "
"Please specify a dataset with the default 'kv' data type."
)
chain = llm_or_chain_factory()
run_inputs = chain.input_keys if isinstance(chain, Chain) else None
run_outputs = chain.output_keys if isinstance(chain, Chain) else None
run_evaluators = _load_run_evaluators(
evaluation,
run_type,
data_type,
list(examples[0].outputs) if examples[0].outputs else None,
run_inputs,
run_outputs,
)
else:
# TODO: Create a default helpfulness evaluator
run_evaluators = None
return run_evaluators
def _determine_input_key(
config: smith_eval.RunEvalConfig,
run_inputs: Optional[List[str]],
) -> Optional[str]:
input_key = None
if config.input_key:
input_key = config.input_key
if run_inputs and input_key not in run_inputs:
logger.warning(
f"Input key {input_key} not in chain's specified"
f" input keys {run_inputs}. Evaluation behavior may be undefined."
)
elif run_inputs and len(run_inputs) == 1:
input_key = run_inputs[0]
elif run_inputs is not None and len(run_inputs) > 1:
logger.warning(
f"Chain expects multiple input keys: {run_inputs},"
f" Evaluator is likely to fail. Evaluation behavior may be undefined."
" Specify an input_key in the RunEvalConfig to avoid this warning."
)
return input_key
def _determine_prediction_key(
config: smith_eval.RunEvalConfig,
run_outputs: Optional[List[str]],
) -> Optional[str]:
prediction_key = None
if config.prediction_key:
prediction_key = config.prediction_key
if run_outputs and prediction_key not in run_outputs:
logger.warning(
f"Prediction key {prediction_key} not in chain's specified"
f" output keys {run_outputs}. Evaluation behavior may be undefined."
)
elif run_outputs and len(run_outputs) == 1:
prediction_key = run_outputs[0]
elif run_outputs is not None and len(run_outputs) > 1:
logger.warning(
f"Chain expects multiple output keys: {run_outputs},"
f" Evaluation behavior may be undefined. Specify a prediction_key"
" in the RunEvalConfig to avoid this warning."
)
return prediction_key
def _determine_reference_key(
config: smith_eval.RunEvalConfig,
example_outputs: Optional[List[str]],
) -> Optional[str]:
if config.reference_key:
reference_key = config.reference_key
if example_outputs and reference_key not in example_outputs:
raise ValueError(
f"Reference key {reference_key} not in Dataset"
f" example outputs: {example_outputs}"
)
elif example_outputs and len(example_outputs) == 1:
reference_key = list(example_outputs)[0]
else:
reference_key = None
return reference_key
def _construct_run_evaluator(
eval_config: Union[EvaluatorType, str, smith_eval_config.EvalConfig],
eval_llm: Optional[BaseLanguageModel],
run_type: str,
data_type: DataType,
example_outputs: Optional[List[str]],
reference_key: Optional[str],
input_key: Optional[str],
prediction_key: Optional[str],
) -> RunEvaluator:
if isinstance(eval_config, (EvaluatorType, str)):
if not isinstance(eval_config, EvaluatorType):
eval_config = EvaluatorType(eval_config)
evaluator_ = load_evaluator(eval_config, llm=eval_llm)
eval_type_tag = eval_config.value
else:
kwargs = {"llm": eval_llm, **eval_config.get_kwargs()}
evaluator_ = load_evaluator(eval_config.evaluator_type, **kwargs)
eval_type_tag = eval_config.evaluator_type.value
# Override keys if specified in the config
if isinstance(eval_config, smith_eval_config.SingleKeyEvalConfig):
input_key = eval_config.input_key or input_key
prediction_key = eval_config.prediction_key or prediction_key
reference_key = eval_config.reference_key or reference_key
if isinstance(evaluator_, StringEvaluator):
if evaluator_.requires_reference and reference_key is None:
raise ValueError(
f"Must specify reference_key in smith_eval.RunEvalConfig to use"
f" evaluator of type {eval_type_tag} with"
f" dataset with multiple output keys: {example_outputs}."
)
run_evaluator = smith_eval.StringRunEvaluatorChain.from_run_and_data_type(
evaluator_,
run_type,
data_type,
input_key=input_key,
prediction_key=prediction_key,
reference_key=reference_key,
tags=[eval_type_tag],
)
elif isinstance(evaluator_, PairwiseStringEvaluator):
raise NotImplementedError(
f"Run evaluator for {eval_type_tag} is not implemented."
" PairwiseStringEvaluators compare the outputs of two different models"
" rather than the output of a single model."
" Did you mean to use a StringEvaluator instead?"
"\nSee: https://python.langchain.com/docs/guides/evaluation/string/"
)
else:
raise NotImplementedError(
f"Run evaluator for {eval_type_tag} is not implemented"
)
return run_evaluator
def _get_keys(
config: smith_eval.RunEvalConfig,
run_inputs: Optional[List[str]],
run_outputs: Optional[List[str]],
example_outputs: Optional[List[str]],
) -> Tuple[Optional[str], Optional[str], Optional[str]]:
input_key = _determine_input_key(config, run_inputs)
prediction_key = _determine_prediction_key(config, run_outputs)
reference_key = _determine_reference_key(config, example_outputs)
return input_key, prediction_key, reference_key
def _load_run_evaluators(
config: smith_eval.RunEvalConfig,
run_type: str,
data_type: DataType,
example_outputs: Optional[List[str]],
run_inputs: Optional[List[str]],
run_outputs: Optional[List[str]],
) -> List[RunEvaluator]:
"""
Load run evaluators from a configuration.
Args:
config: Configuration for the run evaluators.
Returns:
A list of run evaluators.
"""
run_evaluators = []
input_key, prediction_key, reference_key = None, None, None
if (
config.evaluators
or any([isinstance(e, EvaluatorType) for e in config.evaluators])
or (
config.custom_evaluators
and any([isinstance(e, StringEvaluator) for e in config.custom_evaluators])
)
):
input_key, prediction_key, reference_key = _get_keys(
config, run_inputs, run_outputs, example_outputs
)
for eval_config in config.evaluators:
run_evaluator = _construct_run_evaluator(
eval_config,
config.eval_llm,
run_type,
data_type,
example_outputs,
reference_key,
input_key,
prediction_key,
)
run_evaluators.append(run_evaluator)
custom_evaluators = config.custom_evaluators or []
for custom_evaluator in custom_evaluators:
if isinstance(custom_evaluator, RunEvaluator):
run_evaluators.append(custom_evaluator)
elif isinstance(custom_evaluator, StringEvaluator):
run_evaluators.append(
smith_eval.StringRunEvaluatorChain.from_run_and_data_type(
custom_evaluator,
run_type,
data_type,
input_key=input_key,
prediction_key=prediction_key,
reference_key=reference_key,
)
)
else:
raise ValueError(
f"Unsupported custom evaluator: {custom_evaluator}."
f" Expected RunEvaluator or StringEvaluator."
)
return run_evaluators
### Async Helpers
async def _arun_llm(
llm: BaseLanguageModel,
inputs: Dict[str, Any],
*,
tags: Optional[List[str]] = None,
callbacks: Callbacks = None,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[str, BaseMessage]:
"""Asynchronously run the language model.
Args:
llm: The language model to run.
inputs: The input dictionary.
tags: Optional tags to add to the run.
callbacks: Optional callbacks to use during the run.
input_mapper: Optional function to map inputs to the expected format.
Returns:
The LLMResult or ChatResult.
Raises:
ValueError: If the LLM type is unsupported.
InputFormatError: If the input format is invalid.
"""
if input_mapper is not None:
prompt_or_messages = input_mapper(inputs)
if isinstance(prompt_or_messages, str):
return await llm.apredict(
prompt_or_messages, callbacks=callbacks, tags=tags
)
elif isinstance(prompt_or_messages, list) and all(
isinstance(msg, BaseMessage) for msg in prompt_or_messages
):
return await llm.apredict_messages(
prompt_or_messages, callbacks=callbacks, tags=tags
)
else:
raise InputFormatError(
"Input mapper returned invalid format"
f" {prompt_or_messages}"
"\nExpected a single string or list of chat messages."
)
else:
try:
prompt = _get_prompt(inputs)
llm_output: Union[str, BaseMessage] = await llm.apredict(
prompt, callbacks=callbacks, tags=tags
)
except InputFormatError:
messages = _get_messages(inputs)
llm_output = await llm.apredict_messages(
messages, callbacks=callbacks, tags=tags
)
return llm_output
async def _arun_chain(
chain: Union[Chain, Runnable],
inputs: Dict[str, Any],
callbacks: Callbacks,
*,
tags: Optional[List[str]] = None,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[dict, str]:
"""Run a chain asynchronously on inputs."""
inputs_ = inputs if input_mapper is None else input_mapper(inputs)
if (
isinstance(chain, Chain)
and isinstance(inputs_, dict)
and len(inputs_) == 1
and chain.input_keys
):
val = next(iter(inputs_.values()))
output = await chain.acall(val, callbacks=callbacks, tags=tags)
else:
runnable_config = RunnableConfig(tags=tags or [], callbacks=callbacks)
output = await chain.ainvoke(inputs_, config=runnable_config)
return output
async def _arun_llm_or_chain(
example: Example,
config: RunnableConfig,
*,
llm_or_chain_factory: MCF,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[dict, str, LLMResult, ChatResult]:
"""Asynchronously run the Chain or language model.
Args:
example: The example to run.
llm_or_chain_factory: The Chain or language model constructor to run.
tags: Optional tags to add to the run.
callbacks: Optional callbacks to use during the run.
input_mapper: Optional function to map the input to the expected format.
Returns:
A list of outputs.
"""
chain_or_llm = (
"LLM" if isinstance(llm_or_chain_factory, BaseLanguageModel) else "Chain"
)
result = None
try:
if isinstance(llm_or_chain_factory, BaseLanguageModel):
output: Any = await _arun_llm(
llm_or_chain_factory,
example.inputs,
tags=config["tags"],
callbacks=config["callbacks"],
input_mapper=input_mapper,
)
else:
chain = llm_or_chain_factory()
output = await _arun_chain(
chain,
example.inputs,
tags=config["tags"],
callbacks=config["callbacks"],
input_mapper=input_mapper,
)
result = output
except Exception as e:
logger.warning(
f"{chain_or_llm} failed for example {example.id} "
f"with inputs {example.inputs}"
f"\n{repr(e)}"
)
result = EvalError(Error=e)
return result
## Sync Utilities
def _run_llm(
llm: BaseLanguageModel,
inputs: Dict[str, Any],
callbacks: Callbacks,
*,
tags: Optional[List[str]] = None,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[str, BaseMessage]:
"""
Run the language model on the example.
Args:
llm: The language model to run.
inputs: The input dictionary.
callbacks: The callbacks to use during the run.
tags: Optional tags to add to the run.
input_mapper: function to map to the inputs dictionary from an Example
Returns:
The LLMResult or ChatResult.
Raises:
ValueError: If the LLM type is unsupported.
InputFormatError: If the input format is invalid.
"""
if input_mapper is not None:
prompt_or_messages = input_mapper(inputs)
if isinstance(prompt_or_messages, str):
llm_output: Union[str, BaseMessage] = llm.predict(
prompt_or_messages, callbacks=callbacks, tags=tags
)
elif isinstance(prompt_or_messages, list) and all(
isinstance(msg, BaseMessage) for msg in prompt_or_messages
):
llm_output = llm.predict_messages(
prompt_or_messages, callbacks=callbacks, tags=tags
)
else:
raise InputFormatError(
"Input mapper returned invalid format: "
f" {prompt_or_messages}"
"\nExpected a single string or list of chat messages."
)
else:
try:
llm_prompts = _get_prompt(inputs)
llm_output = llm.predict(llm_prompts, callbacks=callbacks, tags=tags)
except InputFormatError:
llm_messages = _get_messages(inputs)
llm_output = llm.predict_messages(llm_messages, callbacks=callbacks)
return llm_output
def _run_chain(
chain: Union[Chain, Runnable],
inputs: Dict[str, Any],
callbacks: Callbacks,
*,
tags: Optional[List[str]] = None,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[Dict, str]:
"""Run a chain on inputs."""
inputs_ = inputs if input_mapper is None else input_mapper(inputs)
if (
isinstance(chain, Chain)
and isinstance(inputs_, dict)
and len(inputs_) == 1
and chain.input_keys
):
val = next(iter(inputs_.values()))
output = chain(val, callbacks=callbacks, tags=tags)
else:
runnable_config = RunnableConfig(tags=tags or [], callbacks=callbacks)
output = chain.invoke(inputs_, config=runnable_config)
return output
def _run_llm_or_chain(
example: Example,
config: RunnableConfig,
*,
llm_or_chain_factory: MCF,
input_mapper: Optional[Callable[[Dict], Any]] = None,
) -> Union[dict, str, LLMResult, ChatResult]:
"""
Run the Chain or language model synchronously.
Args:
example: The example to run.
llm_or_chain_factory: The Chain or language model constructor to run.
tags: Optional tags to add to the run.
callbacks: Optional callbacks to use during the run.
Returns:
Union[List[dict], List[str], List[LLMResult], List[ChatResult]]:
The outputs of the model or chain.
"""
chain_or_llm = (
"LLM" if isinstance(llm_or_chain_factory, BaseLanguageModel) else "Chain"
)
result = None
try:
if isinstance(llm_or_chain_factory, BaseLanguageModel):
output: Any = _run_llm(
llm_or_chain_factory,
example.inputs,
config["callbacks"],
tags=config["tags"],
input_mapper=input_mapper,
)
else:
chain = llm_or_chain_factory()
output = _run_chain(
chain,
example.inputs,
config["callbacks"],
tags=config["tags"],
input_mapper=input_mapper,
)
result = output
except Exception as e:
error_type = type(e).__name__
logger.warning(
f"{chain_or_llm} failed for example {example.id} "
f"with inputs {example.inputs}"
f"\nError Type: {error_type}, Message: {e}"
)
result = EvalError(Error=e)
return result
## Public API
def _prepare_eval_run(
client: Client,
dataset_name: str,
llm_or_chain_factory: MODEL_OR_CHAIN_FACTORY,
project_name: str,
project_metadata: Optional[Dict[str, Any]] = None,
) -> Tuple[MCF, str, Dataset, List[Example]]:
wrapped_model = _wrap_in_chain_factory(llm_or_chain_factory, dataset_name)
dataset = client.read_dataset(dataset_name=dataset_name)
try:
project = client.create_project(
project_name,
reference_dataset_id=dataset.id,
project_extra={"metadata": project_metadata} if project_metadata else {},
)
except (HTTPError, ValueError, LangSmithError) as e:
if "already exists " not in str(e):
raise e
uid = uuid.uuid4()
example_msg = f"""
run_on_dataset(
...
project_name="{project_name} - {uid}", # Update since {project_name} already exists
)
"""
raise ValueError(
f"Test project {project_name} already exists. Please use a different name:"
f"\n\n{example_msg}"
)
print(
f"View the evaluation results for project '{project_name}'"
f" at:\n{project.url}?eval=true\n\n"
f"View all tests for Dataset {dataset_name} at:\n{dataset.url}",
flush=True,
)
examples = list(client.list_examples(dataset_id=dataset.id))
if not examples:
raise ValueError(f"Dataset {dataset_name} has no example rows.")
return wrapped_model, project_name, dataset, examples
def _prepare_run_on_dataset(
client: Client,
dataset_name: str,
llm_or_chain_factory: MODEL_OR_CHAIN_FACTORY,
project_name: Optional[str],
evaluation: Optional[smith_eval.RunEvalConfig] = None,
tags: Optional[List[str]] = None,
input_mapper: Optional[Callable[[Dict], Any]] = None,
concurrency_level: int = 5,
project_metadata: Optional[Dict[str, Any]] = None,
) -> Tuple[MCF, str, List[Example], List[RunnableConfig]]:
project_name = project_name or name_generation.random_name()
wrapped_model, project_name, dataset, examples = _prepare_eval_run(
client,
dataset_name,
llm_or_chain_factory,
project_name,
project_metadata=project_metadata,
)
wrapped_model = _wrap_in_chain_factory(llm_or_chain_factory)
run_evaluators = _setup_evaluation(
wrapped_model, examples, evaluation, dataset.data_type or DataType.kv
)
_validate_example_inputs(examples[0], wrapped_model, input_mapper)
progress_bar = progress.ProgressBarCallback(len(examples))
configs = [
RunnableConfig(
callbacks=[
LangChainTracer(
project_name=project_name,
client=client,
use_threading=False,
example_id=example.id,
),
EvaluatorCallbackHandler(
evaluators=run_evaluators or [],
client=client,
example_id=example.id,
max_concurrency=0,
),
progress_bar,
],
tags=tags or [],
max_concurrency=concurrency_level,
)
for example in examples
]
return wrapped_model, project_name, examples, configs
def _collect_test_results(
examples: List[Example],
batch_results: List[Union[dict, str, LLMResult, ChatResult]],
configs: List[RunnableConfig],
project_name: str,
) -> TestResult:
wait_for_all_evaluators()
all_eval_results = {}
all_execution_time = {}
for c in configs:
for callback in cast(list, c["callbacks"]):
if isinstance(callback, EvaluatorCallbackHandler):
eval_results = callback.logged_eval_results
all_eval_results.update(
{example_id: v for (_, example_id), v in eval_results.items()}
)
elif isinstance(callback, LangChainTracer):
run = callback.latest_run
example_id = callback.example_id
execution_time = (
(run.end_time - run.start_time).total_seconds()
if run and run.end_time
else None
)
all_execution_time[str(example_id)] = execution_time
results: dict = {}
for example, output in zip(examples, batch_results):
feedback = all_eval_results.get(str(example.id), [])
results[str(example.id)] = {
"input": example.inputs,
"feedback": feedback,
"execution_time": all_execution_time.get(str(example.id)),
}
if isinstance(output, EvalError):
results[str(example.id)]["error"] = output.error
else:
results[str(example.id)]["output"] = output
if example.outputs:
results[str(example.id)]["reference"] = example.outputs
return TestResult(
project_name=project_name,
results=results,
)
_INPUT_MAPPER_DEP_WARNING = (
"The input_mapper argument is deprecated and "
"will be removed in a future release. Please add a "
" RunnableLambda to your chain to map inputs to the expected format"
" instead. Example:\n"
"def construct_chain():\n"
" my_chain = ...\n"
" input_mapper = {'other_key': 'MyOtherInput', 'my_input_key': x}\n"
" return input_mapper | my_chain\n"
"run_on_dataset(..., llm_or_chain_factory=construct_chain)\n"
"(See https://api.python.langchain.com/en/latest/schema/"
"langchain.schema.runnable.base.RunnableLambda.html)"
)
async def arun_on_dataset(
client: Optional[Client],
dataset_name: str,
llm_or_chain_factory: MODEL_OR_CHAIN_FACTORY,
*,
evaluation: Optional[smith_eval.RunEvalConfig] = None,
concurrency_level: int = 5,
project_name: Optional[str] = None,
project_metadata: Optional[Dict[str, Any]] = None,
verbose: bool = False,
tags: Optional[List[str]] = None,
**kwargs: Any,
) -> Dict[str, Any]:
input_mapper = kwargs.pop("input_mapper", None)
if input_mapper:
warn_deprecated("0.0.305", message=_INPUT_MAPPER_DEP_WARNING, pending=True)
if kwargs:
warn_deprecated(
"0.0.305",
message="The following arguments are deprecated and "
"will be removed in a future release: "
f"{kwargs.keys()}.",
removal="0.0.305",
)
client = client or Client()
wrapped_model, project_name, examples, configs = _prepare_run_on_dataset(
client,
dataset_name,
llm_or_chain_factory,
project_name,
evaluation,
tags,
input_mapper,
concurrency_level,
project_metadata=project_metadata,
)
batch_results = await runnable_utils.gather_with_concurrency(
configs[0].get("max_concurrency"),
*map(
functools.partial(
_arun_llm_or_chain,
llm_or_chain_factory=wrapped_model,
input_mapper=input_mapper,
),
examples,
configs,
),
)
results = _collect_test_results(examples, batch_results, configs, project_name)
if verbose:
try:
agg_feedback = results.get_aggregate_feedback()
print("\n Eval quantiles:")
print(agg_feedback)
except Exception as e:
logger.debug(f"Failed to print aggregate feedback: {repr(e)}")
return results
def run_on_dataset(
client: Optional[Client],
dataset_name: str,
llm_or_chain_factory: MODEL_OR_CHAIN_FACTORY,
*,
evaluation: Optional[smith_eval.RunEvalConfig] = None,
concurrency_level: int = 5,
project_name: Optional[str] = None,
project_metadata: Optional[Dict[str, Any]] = None,
verbose: bool = False,
tags: Optional[List[str]] = None,
**kwargs: Any,
) -> Dict[str, Any]:
input_mapper = kwargs.pop("input_mapper", None)
if input_mapper:
warn_deprecated("0.0.305", message=_INPUT_MAPPER_DEP_WARNING, pending=True)
if kwargs:
warn_deprecated(
"0.0.305",
message="The following arguments are deprecated and "
"will be removed in a future release: "
f"{kwargs.keys()}.",
removal="0.0.305",
)
client = client or Client()
wrapped_model, project_name, examples, configs = _prepare_run_on_dataset(
client,
dataset_name,
llm_or_chain_factory,
project_name,
evaluation,
tags,
input_mapper,
concurrency_level,
project_metadata=project_metadata,
)
if concurrency_level == 0:
batch_results = [
_run_llm_or_chain(
example,
config,
llm_or_chain_factory=wrapped_model,
input_mapper=input_mapper,
)
for example, config in zip(examples, configs)
]
else:
with runnable_config.get_executor_for_config(configs[0]) as executor:
batch_results = list(
executor.map(
functools.partial(
_run_llm_or_chain,
llm_or_chain_factory=wrapped_model,
input_mapper=input_mapper,
),
examples,
configs,
)
)
results = _collect_test_results(examples, batch_results, configs, project_name)
if verbose:
try:
agg_feedback = results.get_aggregate_feedback()
print("\n Eval quantiles:")
print(agg_feedback)
except Exception as e:
logger.debug(f"Failed to print aggregate feedback: {repr(e)}")
return results
_RUN_ON_DATASET_DOCSTRING = """
Run the Chain or language model on a dataset and store traces
to the specified project name.
Args:
dataset_name: Name of the dataset to run the chain on.
llm_or_chain_factory: Language model or Chain constructor to run
over the dataset. The Chain constructor is used to permit
independent calls on each example without carrying over state.
evaluation: Configuration for evaluators to run on the
results of the chain
concurrency_level: The number of async tasks to run concurrently.
project_name: Name of the project to store the traces in.
Defaults to {dataset_name}-{chain class name}-{datetime}.
project_metadata: Optional metadata to add to the project.
Useful for storing information the test variant.
(prompt version, model version, etc.)
client: LangSmith client to use to access the dataset and to
log feedback and run traces.
verbose: Whether to print progress.
tags: Tags to add to each run in the project.
Returns:
A dictionary containing the run's project name and the resulting model outputs.
For the (usually faster) async version of this function, see :func:`arun_on_dataset`.
Examples
--------
.. code-block:: python
from langsmith import Client
from langchain.chat_models import ChatOpenAI
from langchain.chains import LLMChain
from langchain.smith import smith_eval.RunEvalConfig, run_on_dataset
# Chains may have memory. Passing in a constructor function lets the
# evaluation framework avoid cross-contamination between runs.
def construct_chain():
llm = ChatOpenAI(temperature=0)
chain = LLMChain.from_string(
llm,
"What's the answer to {your_input_key}"
)
return chain
# Load off-the-shelf evaluators via config or the EvaluatorType (string or enum)
evaluation_config = smith_eval.RunEvalConfig(
evaluators=[
"qa", # "Correctness" against a reference answer
"embedding_distance",
smith_eval.RunEvalConfig.Criteria("helpfulness"),
smith_eval.RunEvalConfig.Criteria({
"fifth-grader-score": "Do you have to be smarter than a fifth grader to answer this question?"
}),
]
)
client = Client()
run_on_dataset(
client,
"<my_dataset_name>",
construct_chain,
evaluation=evaluation_config,
)
You can also create custom evaluators by subclassing the
:class:`StringEvaluator <langchain.evaluation.schema.StringEvaluator>`
or LangSmith's `RunEvaluator` classes.
.. code-block:: python
from typing import Optional
from langchain.evaluation import StringEvaluator
class MyStringEvaluator(StringEvaluator):
@property
def requires_input(self) -> bool:
return False
@property
def requires_reference(self) -> bool:
return True
@property
def evaluation_name(self) -> str:
return "exact_match"
def _evaluate_strings(self, prediction, reference=None, input=None, **kwargs) -> dict:
return {"score": prediction == reference}
evaluation_config = smith_eval.RunEvalConfig(
custom_evaluators = [MyStringEvaluator()],
)
run_on_dataset(
client,
"<my_dataset_name>",
construct_chain,
evaluation=evaluation_config,
)
""" # noqa: E501
run_on_dataset.__doc__ = _RUN_ON_DATASET_DOCSTRING
arun_on_dataset.__doc__ = _RUN_ON_DATASET_DOCSTRING.replace(
"run_on_dataset(", "await arun_on_dataset("
)
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