Apr29-LLM_config_space / pipeline.py
burtenshaw's picture
burtenshaw HF staff
Upload 16 files
4b83e74 verified
raw
history blame
6.46 kB
import subprocess
import sys
import time
from typing import List
from distilabel.steps.generators.data import LoadDataFromDicts
from distilabel.steps.expand import ExpandColumns
from distilabel.steps.keep import KeepColumns
from distilabel.steps.tasks.self_instruct import SelfInstruct
from distilabel.steps.tasks.evol_instruct.base import EvolInstruct
from distilabel.llms.huggingface import InferenceEndpointsLLM
from distilabel.pipeline import Pipeline
from distilabel.steps import TextGenerationToArgilla
from dotenv import load_dotenv
from domain import (
DomainExpert,
CleanNumberedList,
create_topics,
create_examples_template,
APPLICATION_DESCRIPTION,
)
load_dotenv()
def define_pipeline(
argilla_api_key: str,
argilla_api_url: str,
argilla_dataset_name: str,
topics: List[str],
perspectives: List[str],
domain_expert_prompt: str,
examples: List[dict],
hub_token: str,
endpoint_base_url: str,
):
"""Define the pipeline for the specific domain."""
terms = create_topics(topics, perspectives)
template = create_examples_template(examples)
with Pipeline("farming") as pipeline:
load_data = LoadDataFromDicts(
name="load_data",
data=[{"input": term} for term in terms],
batch_size=64,
)
llm = InferenceEndpointsLLM(
base_url=endpoint_base_url,
api_key=hub_token,
)
self_instruct = SelfInstruct(
name="self-instruct",
application_description=APPLICATION_DESCRIPTION,
num_instructions=5,
input_batch_size=8,
llm=llm,
)
evol_instruction_complexity = EvolInstruct(
name="evol_instruction_complexity",
llm=llm,
num_evolutions=2,
store_evolutions=True,
input_batch_size=8,
include_original_instruction=True,
input_mappings={"instruction": "question"},
)
expand_instructions = ExpandColumns(
name="expand_columns", columns={"instructions": "question"}
)
cleaner = CleanNumberedList(name="clean_numbered_list")
expand_evolutions = ExpandColumns(
name="expand_columns_evolved",
columns={"evolved_instructions": "evolved_questions"},
)
domain_expert = DomainExpert(
name="domain_expert",
llm=llm,
input_batch_size=8,
input_mappings={"instruction": "evolved_questions"},
output_mappings={"generation": "domain_expert_answer"},
)
domain_expert._system_prompt = domain_expert_prompt
domain_expert._template = template
keep_columns = KeepColumns(
name="keep_columns",
columns=["model_name", "evolved_questions", "domain_expert_answer"],
)
to_argilla = TextGenerationToArgilla(
name="text_generation_to_argilla",
dataset_name=argilla_dataset_name,
dataset_workspace="admin",
api_url=argilla_api_url,
api_key=argilla_api_key,
input_mappings={
"instruction": "evolved_questions",
"generation": "domain_expert_answer",
},
)
load_data.connect(self_instruct)
self_instruct.connect(expand_instructions)
expand_instructions.connect(cleaner)
cleaner.connect(evol_instruction_complexity)
evol_instruction_complexity.connect(expand_evolutions)
expand_evolutions.connect(domain_expert)
domain_expert.connect(keep_columns)
keep_columns.connect(to_argilla)
return pipeline
def serialize_pipeline(
argilla_api_key: str,
argilla_api_url: str,
argilla_dataset_name: str,
topics: List[str],
perspectives: List[str],
domain_expert_prompt: str,
hub_token: str,
endpoint_base_url: str,
pipeline_config_path: str = "pipeline.yaml",
examples: List[dict] = [],
):
"""Serialize the pipeline to a yaml file."""
pipeline = define_pipeline(
argilla_api_key=argilla_api_key,
argilla_api_url=argilla_api_url,
argilla_dataset_name=argilla_dataset_name,
topics=topics,
perspectives=perspectives,
domain_expert_prompt=domain_expert_prompt,
hub_token=hub_token,
endpoint_base_url=endpoint_base_url,
examples=examples,
)
pipeline.save(path=pipeline_config_path, overwrite=True, format="yaml")
def create_pipelines_run_command(
hub_token: str,
argilla_api_key: str,
argilla_api_url: str,
pipeline_config_path: str = "pipeline.yaml",
argilla_dataset_name: str = "domain_specific_datasets",
):
"""Create the command to run the pipeline."""
command_to_run = [
sys.executable,
"-m",
"distilabel",
"pipeline",
"run",
"--config",
pipeline_config_path,
"--param",
f"text_generation_to_argilla.dataset_name={argilla_dataset_name}",
"--param",
f"text_generation_to_argilla.api_key={argilla_api_key}",
"--param",
f"text_generation_to_argilla.api_url={argilla_api_url}",
"--param",
f"self-instruct.llm.api_key={hub_token}",
"--param",
f"evol_instruction_complexity.llm.api_key={hub_token}",
"--param",
f"domain_expert.llm.api_key={hub_token}",
"--ignore-cache",
]
return command_to_run
def run_pipeline(
hub_token: str,
argilla_api_key: str,
argilla_api_url: str,
pipeline_config_path: str = "pipeline.yaml",
argilla_dataset_name: str = "domain_specific_datasets",
):
"""Run the pipeline and yield the output as a generator of logs."""
command_to_run = create_pipelines_run_command(
hub_token=hub_token,
pipeline_config_path=pipeline_config_path,
argilla_dataset_name=argilla_dataset_name,
argilla_api_key=argilla_api_key,
argilla_api_url=argilla_api_url,
)
# Run the script file
process = subprocess.Popen(
args=command_to_run,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
env={"HF_TOKEN": hub_token},
)
while process.stdout and process.stdout.readable():
time.sleep(0.2)
line = process.stdout.readline()
if not line:
break
yield line.decode("utf-8")