Executing Tasks with LLMs¶
Working with LLMs¶
LLM subclasses are designed to be used within a Task, but they can also be used standalone.
from distilabel.llms import InferenceEndpointsLLM
llm = InferenceEndpointsLLM(model="meta-llama/Meta-Llama-3.1-70B-Instruct")
llm.load()
llm.generate_outputs(
inputs=[
[{"role": "user", "content": "What's the capital of Spain?"}],
],
)
# "The capital of Spain is Madrid."
Note
Always call the LLM.load or Task.load method when using LLMs standalone or as part of a Task. If using a Pipeline, this is done automatically in Pipeline.run().
Offline Batch Generation¶
By default, all LLMs will generate text in a synchronous manner i.e. send inputs using generate_outputs method that will get blocked until outputs are generated. There are some LLMs (such as OpenAILLM) that implements what we denote as offline batch generation, which allows to send the inputs to the LLM-as-a-service which will generate the outputs asynchronously and give us a job id that we can use later to check the status and retrieve the generated outputs when they are ready. LLM-as-a-service platforms offers this feature as a way to save costs in exchange of waiting for the outputs to be generated.
To use this feature in distilabel the only thing we need to do is to set the use_offline_batch_generation attribute to True when creating the LLM instance:
from distilabel.llms import OpenAILLM
llm = OpenAILLM(
model="gpt-4o",
use_offline_batch_generation=True,
)
llm.load()
llm.jobs_ids # (1)
# None
llm.generate_outputs( # (2)
inputs=[
[{"role": "user", "content": "What's the capital of Spain?"}],
],
)
# DistilabelOfflineBatchGenerationNotFinishedException: Batch generation with jobs_ids=('batch_OGB4VjKpu2ay9nz3iiFJxt5H',) is not finished
llm.jobs_ids # (3)
# ('batch_OGB4VjKpu2ay9nz3iiFJxt5H',)
llm.generate_outputs( # (4)
inputs=[
[{"role": "user", "content": "What's the capital of Spain?"}],
],
)
# "The capital of Spain is Madrid."
- At first the
jobs_idsattribute isNone. - The first call to
generate_outputswill send the inputs to the LLM-as-a-service and return aDistilabelOfflineBatchGenerationNotFinishedExceptionsince the outputs are not ready yet. - After the first call to
generate_outputsthejobs_idsattribute will contain the job ids created for generating the outputs. - The second call or subsequent calls to
generate_outputswill return the outputs if they are ready or raise aDistilabelOfflineBatchGenerationNotFinishedExceptionif they are not ready yet.
The offline_batch_generation_block_until_done attribute can be used to block the generate_outputs method until the outputs are ready polling the platform the specified amount of seconds.
from distilabel.llms import OpenAILLM
llm = OpenAILLM(
model="gpt-4o",
use_offline_batch_generation=True,
offline_batch_generation_block_until_done=5, # poll for results every 5 seconds
)
llm.load()
llm.generate_outputs(
inputs=[
[{"role": "user", "content": "What's the capital of Spain?"}],
],
)
# "The capital of Spain is Madrid."
Within a Task¶
Pass the LLM as an argument to the Task, and the task will handle the rest.
from distilabel.llms import OpenAILLM
from distilabel.steps.tasks import TextGeneration
llm = OpenAILLM(model="gpt-4")
task = TextGeneration(name="text_generation", llm=llm)
task.load()
next(task.process(inputs=[{"instruction": "What's the capital of Spain?"}]))
# [{'instruction': "What's the capital of Spain?", "generation": "The capital of Spain is Madrid."}]
Runtime Parameters¶
LLMs can have runtime parameters, such as generation_kwargs, provided via the Pipeline.run() method using the params argument.
Note
Runtime parameters can differ between LLM subclasses, caused by the different functionalities offered by the LLM providers.
from distilabel.pipeline import Pipeline
from distilabel.llms import OpenAILLM
from distilabel.steps import LoadDataFromDicts
from distilabel.steps.tasks import TextGeneration
with Pipeline(name="text-generation-pipeline") as pipeline:
load_dataset = LoadDataFromDicts(
name="load_dataset",
data=[{"instruction": "Write a short story about a dragon that saves a princess from a tower."}],
)
text_generation = TextGeneration(
name="text_generation",
llm=OpenAILLM(model="gpt-4"),
)
load_dataset >> text_generation
if __name__ == "__main__":
pipeline.run(
parameters={
text_generation.name: {"llm": {"generation_kwargs": {"temperature": 0.3}}},
},
)
Creating custom LLMs¶
To create custom LLMs, subclass either LLM for synchronous or AsyncLLM for asynchronous LLMs. Implement the following methods:
-
model_name: A property containing the model's name. -
generate: A method that takes a list of prompts and returns generated texts. -
agenerate: A method that takes a single prompt and returns generated texts. This method is used within thegeneratemethod of theAsyncLLMclass. -
(optional)
get_last_hidden_state: is a method that will take a list of prompts and return a list of hidden states. This method is optional and will be used by some tasks such as theGenerateEmbeddingstask.
from typing import Any
from pydantic import validate_call
from distilabel.llms import LLM
from distilabel.llms.typing import GenerateOutput, HiddenState
from distilabel.steps.tasks.typing import ChatType
class CustomLLM(LLM):
@property
def model_name(self) -> str:
return "my-model"
@validate_call
def generate(self, inputs: List[ChatType], num_generations: int = 1, **kwargs: Any) -> List[GenerateOutput]:
for _ in range(num_generations):
...
def get_last_hidden_state(self, inputs: List[ChatType]) -> List[HiddenState]:
...
from typing import Any
from pydantic import validate_call
from distilabel.llms import AsyncLLM
from distilabel.llms.typing import GenerateOutput, HiddenState
from distilabel.steps.tasks.typing import ChatType
class CustomAsyncLLM(AsyncLLM):
@property
def model_name(self) -> str:
return "my-model"
@validate_call
async def agenerate(self, input: ChatType, num_generations: int = 1, **kwargs: Any) -> GenerateOutput:
for _ in range(num_generations):
...
def get_last_hidden_state(self, inputs: List[ChatType]) -> List[HiddenState]:
...
generate and agenerate keyword arguments (but input and num_generations) are considered as RuntimeParameters, so a value can be passed to them via the parameters argument of the Pipeline.run method.
Note
To have the arguments of the generate and agenerate coerced to the expected types, the validate_call decorator is used, which will automatically coerce the arguments to the expected types, and raise an error if the types are not correct. This is specially useful when providing a value for an argument of generate or agenerate from the CLI, since the CLI will always provide the arguments as strings.
Available LLMs¶
Our LLM gallery shows a list of the available LLMs that can be used within the distilabel library.