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import ast
from typing import Dict, List, Union
import argilla as rg
import gradio as gr
import pandas as pd
from datasets import Dataset
from distilabel.distiset import Distiset
from huggingface_hub import HfApi
from src.distilabel_dataset_generator.apps.base import (
get_argilla_client,
get_main_ui,
get_pipeline_code_ui,
hide_success_message,
push_pipeline_code_to_hub,
show_success_message_argilla,
show_success_message_hub,
validate_argilla_user_workspace_dataset,
)
from src.distilabel_dataset_generator.apps.base import (
push_dataset_to_hub as push_to_hub_base,
)
from src.distilabel_dataset_generator.pipelines.base import (
DEFAULT_BATCH_SIZE,
)
from src.distilabel_dataset_generator.pipelines.embeddings import (
get_embeddings,
get_sentence_embedding_dimensions,
)
from src.distilabel_dataset_generator.pipelines.sft import (
DEFAULT_DATASET_DESCRIPTIONS,
DEFAULT_DATASETS,
DEFAULT_SYSTEM_PROMPTS,
PROMPT_CREATION_PROMPT,
generate_pipeline_code,
get_magpie_generator,
get_prompt_generator,
get_response_generator,
)
TASK = "supervised_fine_tuning"
def convert_dataframe_messages(dataframe: pd.DataFrame) -> pd.DataFrame:
def convert_to_list_of_dicts(messages: str) -> List[Dict[str, str]]:
return ast.literal_eval(
messages.replace("'user'}", "'user'},")
.replace("'system'}", "'system'},")
.replace("'assistant'}", "'assistant'},")
)
if "messages" in dataframe.columns:
dataframe["messages"] = dataframe["messages"].apply(
lambda x: convert_to_list_of_dicts(x) if isinstance(x, str) else x
)
return dataframe
def push_dataset_to_hub(
dataframe: pd.DataFrame,
private: bool = True,
org_name: str = None,
repo_name: str = None,
oauth_token: Union[gr.OAuthToken, None] = None,
progress=gr.Progress(),
):
original_dataframe = dataframe.copy(deep=True)
dataframe = convert_dataframe_messages(dataframe)
try:
push_to_hub_base(
dataframe, private, org_name, repo_name, oauth_token, progress, task=TASK
)
except Exception as e:
raise gr.Error(f"Error pushing dataset to the Hub: {e}")
return original_dataframe
def push_dataset_to_argilla(
dataframe: pd.DataFrame,
dataset_name: str,
oauth_token: Union[gr.OAuthToken, None] = None,
progress=gr.Progress(),
) -> pd.DataFrame:
original_dataframe = dataframe.copy(deep=True)
dataframe = convert_dataframe_messages(dataframe)
try:
progress(0.1, desc="Setting up user and workspace")
client = get_argilla_client()
hf_user = HfApi().whoami(token=oauth_token.token)["name"]
if "messages" in dataframe.columns:
settings = rg.Settings(
fields=[
rg.ChatField(
name="messages",
description="The messages in the conversation",
title="Messages",
),
],
questions=[
rg.RatingQuestion(
name="rating",
title="Rating",
description="The rating of the conversation",
values=list(range(1, 6)),
),
],
metadata=[
rg.IntegerMetadataProperty(
name="user_message_length", title="User Message Length"
),
rg.IntegerMetadataProperty(
name="assistant_message_length",
title="Assistant Message Length",
),
],
vectors=[
rg.VectorField(
name="messages_embeddings",
dimensions=get_sentence_embedding_dimensions(),
)
],
guidelines="Please review the conversation and provide a score for the assistant's response.",
)
dataframe["user_message_length"] = dataframe["messages"].apply(
lambda x: sum([len(y["content"]) for y in x if y["role"] == "user"])
)
dataframe["assistant_message_length"] = dataframe["messages"].apply(
lambda x: sum(
[len(y["content"]) for y in x if y["role"] == "assistant"]
)
)
dataframe["messages_embeddings"] = get_embeddings(
dataframe["messages"].apply(
lambda x: " ".join([y["content"] for y in x])
)
)
else:
settings = rg.Settings(
fields=[
rg.TextField(
name="system_prompt",
title="System Prompt",
description="The system prompt used for the conversation",
required=False,
),
rg.TextField(
name="prompt",
title="Prompt",
description="The prompt used for the conversation",
),
rg.TextField(
name="completion",
title="Completion",
description="The completion from the assistant",
),
],
questions=[
rg.RatingQuestion(
name="rating",
title="Rating",
description="The rating of the conversation",
values=list(range(1, 6)),
),
],
metadata=[
rg.IntegerMetadataProperty(
name="prompt_length", title="Prompt Length"
),
rg.IntegerMetadataProperty(
name="completion_length", title="Completion Length"
),
],
vectors=[
rg.VectorField(
name="prompt_embeddings",
dimensions=get_sentence_embedding_dimensions(),
)
],
guidelines="Please review the conversation and correct the prompt and completion where needed.",
)
dataframe["prompt_length"] = dataframe["prompt"].apply(len)
dataframe["completion_length"] = dataframe["completion"].apply(len)
dataframe["prompt_embeddings"] = get_embeddings(dataframe["prompt"])
progress(0.5, desc="Creating dataset")
rg_dataset = client.datasets(name=dataset_name, workspace=hf_user)
if rg_dataset is None:
rg_dataset = rg.Dataset(
name=dataset_name,
workspace=hf_user,
settings=settings,
client=client,
)
rg_dataset = rg_dataset.create()
progress(0.7, desc="Pushing dataset to Argilla")
hf_dataset = Dataset.from_pandas(dataframe)
rg_dataset.records.log(records=hf_dataset)
progress(1.0, desc="Dataset pushed to Argilla")
except Exception as e:
raise gr.Error(f"Error pushing dataset to Argilla: {e}")
return original_dataframe
def generate_system_prompt(dataset_description, progress=gr.Progress()):
progress(0.0, desc="Generating system prompt")
if dataset_description in DEFAULT_DATASET_DESCRIPTIONS:
index = DEFAULT_DATASET_DESCRIPTIONS.index(dataset_description)
if index < len(DEFAULT_SYSTEM_PROMPTS):
return DEFAULT_SYSTEM_PROMPTS[index]
progress(0.3, desc="Initializing text generation")
generate_description = get_prompt_generator()
progress(0.7, desc="Generating system prompt")
result = next(
generate_description.process(
[
{
"system_prompt": PROMPT_CREATION_PROMPT,
"instruction": dataset_description,
}
]
)
)[0]["generation"]
progress(1.0, desc="System prompt generated")
return result
def generate_dataset(
system_prompt: str,
num_turns: int = 1,
num_rows: int = 5,
is_sample: bool = False,
progress=gr.Progress(),
) -> pd.DataFrame:
progress(0.0, desc="(1/2) Generating instructions")
magpie_generator = get_magpie_generator(
num_turns, num_rows, system_prompt, is_sample
)
response_generator = get_response_generator(num_turns, system_prompt, is_sample)
total_steps: int = num_rows * 2
batch_size = DEFAULT_BATCH_SIZE
# create instructions
n_processed = 0
magpie_results = []
while n_processed < num_rows:
progress(
0.5 * n_processed / num_rows,
total=total_steps,
desc="(1/2) Generating instructions",
)
remaining_rows = num_rows - n_processed
batch_size = min(batch_size, remaining_rows)
inputs = [{"system_prompt": system_prompt} for _ in range(batch_size)]
batch = list(magpie_generator.process(inputs=inputs))
magpie_results.extend(batch[0])
n_processed += batch_size
progress(0.5, desc="(1/2) Generating instructions")
# generate responses
n_processed = 0
response_results = []
if num_turns == 1:
while n_processed < num_rows:
progress(
0.5 + 0.5 * n_processed / num_rows,
total=total_steps,
desc="(2/2) Generating responses",
)
batch = magpie_results[n_processed : n_processed + batch_size]
responses = list(response_generator.process(inputs=batch))
response_results.extend(responses[0])
n_processed += batch_size
for result in response_results:
result["prompt"] = result["instruction"]
result["completion"] = result["generation"]
result["system_prompt"] = system_prompt
else:
for result in magpie_results:
result["conversation"].insert(
0, {"role": "system", "content": system_prompt}
)
result["messages"] = result["conversation"]
while n_processed < num_rows:
progress(
0.5 + 0.5 * n_processed / num_rows,
total=total_steps,
desc="(2/2) Generating responses",
)
batch = magpie_results[n_processed : n_processed + batch_size]
responses = list(response_generator.process(inputs=batch))
response_results.extend(responses[0])
n_processed += batch_size
for result in response_results:
result["messages"].append(
{"role": "assistant", "content": result["generation"]}
)
progress(
1,
total=total_steps,
desc="(2/2) Creating dataset",
)
# create distiset
distiset_results = []
for result in response_results:
record = {}
for relevant_keys in [
"messages",
"prompt",
"completion",
"model_name",
"system_prompt",
]:
if relevant_keys in result:
record[relevant_keys] = result[relevant_keys]
distiset_results.append(record)
distiset = Distiset(
{
"default": Dataset.from_list(distiset_results),
}
)
# If not pushing to hub generate the dataset directly
distiset = distiset["default"]
if num_turns == 1:
outputs = distiset.to_pandas()[["system_prompt", "prompt", "completion"]]
else:
outputs = distiset.to_pandas()[["messages"]]
dataframe = pd.DataFrame(outputs)
progress(1.0, desc="Dataset generation completed")
return dataframe
(
app,
main_ui,
custom_input_ui,
dataset_description,
examples,
btn_generate_system_prompt,
system_prompt,
sample_dataset,
btn_generate_sample_dataset,
dataset_name,
add_to_existing_dataset,
btn_generate_full_dataset_argilla,
btn_generate_and_push_to_argilla,
btn_push_to_argilla,
org_name,
repo_name,
private,
btn_generate_full_dataset,
btn_generate_and_push_to_hub,
btn_push_to_hub,
final_dataset,
success_message,
) = get_main_ui(
default_dataset_descriptions=DEFAULT_DATASET_DESCRIPTIONS,
default_system_prompts=DEFAULT_SYSTEM_PROMPTS,
default_datasets=DEFAULT_DATASETS,
fn_generate_system_prompt=generate_system_prompt,
fn_generate_dataset=generate_dataset,
task=TASK,
)
with app:
with main_ui:
with custom_input_ui:
num_turns = gr.Number(
value=1,
label="Number of turns in the conversation",
minimum=1,
maximum=4,
step=1,
info="Choose between 1 (single turn with 'instruction-response' columns) and 2-4 (multi-turn conversation with a 'messages' column).",
)
num_rows = gr.Number(
value=10,
label="Number of rows in the dataset",
minimum=1,
maximum=500,
info="The number of rows in the dataset. Note that you are able to generate more rows at once but that this will take time.",
)
pipeline_code = get_pipeline_code_ui(
generate_pipeline_code(system_prompt.value, num_turns.value, num_rows.value)
)
# define app triggers
gr.on(
triggers=[
btn_generate_full_dataset.click,
btn_generate_full_dataset_argilla.click,
],
fn=hide_success_message,
outputs=[success_message],
).then(
fn=generate_dataset,
inputs=[system_prompt, num_turns, num_rows],
outputs=[final_dataset],
show_progress=True,
)
btn_generate_and_push_to_argilla.click(
fn=validate_argilla_user_workspace_dataset,
inputs=[dataset_name, final_dataset, add_to_existing_dataset],
outputs=[final_dataset],
show_progress=True,
).success(
fn=hide_success_message,
outputs=[success_message],
).success(
fn=generate_dataset,
inputs=[system_prompt, num_turns, num_rows],
outputs=[final_dataset],
show_progress=True,
).success(
fn=push_dataset_to_argilla,
inputs=[final_dataset, dataset_name],
outputs=[final_dataset],
show_progress=True,
).success(
fn=show_success_message_argilla,
inputs=[],
outputs=[success_message],
)
btn_generate_and_push_to_hub.click(
fn=hide_success_message,
outputs=[success_message],
).then(
fn=generate_dataset,
inputs=[system_prompt, num_turns, num_rows],
outputs=[final_dataset],
show_progress=True,
).then(
fn=push_dataset_to_hub,
inputs=[final_dataset, private, org_name, repo_name],
outputs=[final_dataset],
show_progress=True,
).then(
fn=push_pipeline_code_to_hub,
inputs=[pipeline_code, org_name, repo_name],
outputs=[],
show_progress=True,
).success(
fn=show_success_message_hub,
inputs=[org_name, repo_name],
outputs=[success_message],
)
btn_push_to_hub.click(
fn=hide_success_message,
outputs=[success_message],
).then(
fn=push_dataset_to_hub,
inputs=[final_dataset, private, org_name, repo_name],
outputs=[final_dataset],
show_progress=True,
).then(
fn=push_pipeline_code_to_hub,
inputs=[pipeline_code, org_name, repo_name],
outputs=[],
show_progress=True,
).success(
fn=show_success_message_hub,
inputs=[org_name, repo_name],
outputs=[success_message],
)
btn_push_to_argilla.click(
fn=hide_success_message,
outputs=[success_message],
).success(
fn=validate_argilla_user_workspace_dataset,
inputs=[dataset_name, final_dataset, add_to_existing_dataset],
outputs=[final_dataset],
show_progress=True,
).success(
fn=push_dataset_to_argilla,
inputs=[final_dataset, dataset_name],
outputs=[final_dataset],
show_progress=True,
).success(
fn=show_success_message_argilla,
inputs=[],
outputs=[success_message],
)
system_prompt.change(
fn=generate_pipeline_code,
inputs=[system_prompt, num_turns, num_rows],
outputs=[pipeline_code],
)
num_turns.change(
fn=generate_pipeline_code,
inputs=[system_prompt, num_turns, num_rows],
outputs=[pipeline_code],
)
num_rows.change(
fn=generate_pipeline_code,
inputs=[system_prompt, num_turns, num_rows],
outputs=[pipeline_code],
)
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