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import json |
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import uuid |
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from typing import List, Union |
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import argilla as rg |
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import gradio as gr |
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import pandas as pd |
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from datasets import ClassLabel, Dataset, Features, Sequence, Value |
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from distilabel.distiset import Distiset |
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from huggingface_hub import HfApi |
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from distilabel_dataset_generator.constants import DEFAULT_BATCH_SIZE |
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from src.distilabel_dataset_generator.apps.base import ( |
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hide_success_message, |
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show_success_message, |
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validate_argilla_user_workspace_dataset, |
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validate_push_to_hub, |
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) |
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from src.distilabel_dataset_generator.pipelines.embeddings import ( |
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get_embeddings, |
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get_sentence_embedding_dimensions, |
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) |
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from src.distilabel_dataset_generator.pipelines.textcat import ( |
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DEFAULT_DATASET_DESCRIPTIONS, |
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generate_pipeline_code, |
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get_labeller_generator, |
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get_prompt_generator, |
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get_textcat_generator, |
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) |
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from src.distilabel_dataset_generator.utils import ( |
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get_argilla_client, |
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get_org_dropdown, |
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get_preprocess_labels, |
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swap_visibility, |
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) |
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def generate_system_prompt(dataset_description, temperature, progress=gr.Progress()): |
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progress(0.0, desc="Generating text classification task") |
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progress(0.3, desc="Initializing text generation") |
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generate_description = get_prompt_generator(temperature) |
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progress(0.7, desc="Generating text classification task") |
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result = next( |
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generate_description.process( |
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[ |
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{ |
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"instruction": dataset_description, |
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} |
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] |
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) |
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)[0]["generation"] |
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progress(1.0, desc="Text classification task generated") |
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data = json.loads(result) |
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system_prompt = data["classification_task"] |
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labels = data["labels"] |
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return system_prompt, labels |
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def generate_sample_dataset( |
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system_prompt, difficulty, clarity, labels, num_labels, progress=gr.Progress() |
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): |
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dataframe = generate_dataset( |
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system_prompt=system_prompt, |
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difficulty=difficulty, |
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clarity=clarity, |
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labels=labels, |
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num_labels=num_labels, |
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num_rows=10, |
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progress=progress, |
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is_sample=True, |
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) |
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return dataframe |
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def generate_dataset( |
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system_prompt: str, |
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difficulty: str, |
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clarity: str, |
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labels: List[str] = None, |
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num_labels: int = 1, |
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num_rows: int = 10, |
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is_sample: bool = False, |
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progress=gr.Progress(), |
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) -> pd.DataFrame: |
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progress(0.0, desc="(1/2) Generating text classification data") |
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labels = get_preprocess_labels(labels) |
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textcat_generator = get_textcat_generator( |
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difficulty=difficulty, clarity=clarity, is_sample=is_sample |
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) |
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labeller_generator = get_labeller_generator( |
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system_prompt=f"{system_prompt} {', '.join(labels)}", |
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labels=labels, |
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num_labels=num_labels, |
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) |
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total_steps: int = num_rows * 2 |
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batch_size = DEFAULT_BATCH_SIZE |
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n_processed = 0 |
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textcat_results = [] |
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while n_processed < num_rows: |
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progress( |
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2 * 0.5 * n_processed / num_rows, |
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total=total_steps, |
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desc="(1/2) Generating text classification data", |
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) |
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remaining_rows = num_rows - n_processed |
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batch_size = min(batch_size, remaining_rows) |
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inputs = [ |
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{"task": f"{system_prompt} {', '.join(labels)}"} for _ in range(batch_size) |
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] |
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batch = list(textcat_generator.process(inputs=inputs)) |
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textcat_results.extend(batch[0]) |
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n_processed += batch_size |
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for result in textcat_results: |
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result["text"] = result["input_text"] |
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progress(2 * 0.5, desc="(1/2) Generating text classification data") |
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n_processed = 0 |
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labeller_results = [] |
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while n_processed < num_rows: |
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progress( |
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0.5 + 0.5 * n_processed / num_rows, |
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total=total_steps, |
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desc="(1/2) Labeling text classification data", |
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) |
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batch = textcat_results[n_processed : n_processed + batch_size] |
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labels_batch = list(labeller_generator.process(inputs=batch)) |
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labeller_results.extend(labels_batch[0]) |
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n_processed += batch_size |
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progress( |
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1, |
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total=total_steps, |
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desc="(2/2) Creating dataset", |
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) |
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distiset_results = [] |
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for result in labeller_results: |
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record = {key: result[key] for key in ["labels", "text"] if key in result} |
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distiset_results.append(record) |
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dataframe = pd.DataFrame(distiset_results) |
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if num_labels == 1: |
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dataframe = dataframe.rename(columns={"labels": "label"}) |
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dataframe["label"] = dataframe["label"].apply( |
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lambda x: x.lower().strip() if x.lower().strip() in labels else None |
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) |
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progress(1.0, desc="Dataset generation completed") |
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return dataframe |
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def push_dataset_to_hub( |
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dataframe: pd.DataFrame, |
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org_name: str, |
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repo_name: str, |
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num_labels: int = 1, |
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labels: List[str] = None, |
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oauth_token: Union[gr.OAuthToken, None] = None, |
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private: bool = False, |
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): |
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repo_id = validate_push_to_hub(org_name, repo_name) |
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labels = get_preprocess_labels(labels) |
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if num_labels == 1: |
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dataframe["label"] = dataframe["label"].replace("", None) |
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features = Features( |
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{"text": Value("string"), "label": ClassLabel(names=labels)} |
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) |
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else: |
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features = Features( |
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{ |
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"text": Value("string"), |
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"labels": Sequence(feature=ClassLabel(names=labels)), |
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} |
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) |
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distiset = Distiset({"default": Dataset.from_pandas(dataframe, features=features)}) |
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distiset.push_to_hub( |
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repo_id=repo_id, |
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private=private, |
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include_script=False, |
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token=oauth_token.token, |
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create_pr=False, |
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) |
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def push_dataset( |
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org_name: str, |
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repo_name: str, |
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system_prompt: str, |
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difficulty: str, |
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clarity: str, |
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num_labels: int = 1, |
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num_rows: int = 10, |
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labels: List[str] = None, |
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private: bool = False, |
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oauth_token: Union[gr.OAuthToken, None] = None, |
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progress=gr.Progress(), |
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) -> pd.DataFrame: |
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dataframe = generate_dataset( |
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system_prompt=system_prompt, |
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difficulty=difficulty, |
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clarity=clarity, |
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num_labels=num_labels, |
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labels=labels, |
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num_rows=num_rows, |
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) |
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push_dataset_to_hub( |
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dataframe, org_name, repo_name, num_labels, labels, oauth_token, private |
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) |
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dataframe = dataframe[ |
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(dataframe["text"].str.strip() != "") & (dataframe["text"].notna()) |
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] |
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try: |
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progress(0.1, desc="Setting up user and workspace") |
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hf_user = HfApi().whoami(token=oauth_token.token)["name"] |
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client = get_argilla_client() |
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if client is None: |
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return "" |
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labels = get_preprocess_labels(labels) |
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settings = rg.Settings( |
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fields=[ |
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rg.TextField( |
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name="text", |
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description="The text classification data", |
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title="Text", |
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), |
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], |
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questions=[ |
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( |
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rg.LabelQuestion( |
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name="label", |
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title="Label", |
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description="The label of the text", |
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labels=labels, |
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) |
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if num_labels == 1 |
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else rg.MultiLabelQuestion( |
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name="labels", |
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title="Labels", |
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description="The labels of the conversation", |
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labels=labels, |
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) |
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), |
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], |
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metadata=[ |
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rg.IntegerMetadataProperty(name="text_length", title="Text Length"), |
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], |
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vectors=[ |
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rg.VectorField( |
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name="text_embeddings", |
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dimensions=get_sentence_embedding_dimensions(), |
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) |
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], |
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guidelines="Please review the text and provide or correct the label where needed.", |
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) |
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dataframe["text_length"] = dataframe["text"].apply(len) |
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dataframe["text_embeddings"] = get_embeddings(dataframe["text"].to_list()) |
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progress(0.5, desc="Creating dataset") |
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rg_dataset = client.datasets(name=repo_name, workspace=hf_user) |
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if rg_dataset is None: |
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rg_dataset = rg.Dataset( |
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name=repo_name, |
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workspace=hf_user, |
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settings=settings, |
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client=client, |
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) |
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rg_dataset = rg_dataset.create() |
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progress(0.7, desc="Pushing dataset to Argilla") |
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hf_dataset = Dataset.from_pandas(dataframe) |
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records = [ |
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rg.Record( |
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fields={ |
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"text": sample["text"], |
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}, |
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metadata={"text_length": sample["text_length"]}, |
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vectors={"text_embeddings": sample["text_embeddings"]}, |
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suggestions=( |
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[ |
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rg.Suggestion( |
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question_name="label" if num_labels == 1 else "labels", |
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value=( |
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sample["label"] if num_labels == 1 else sample["labels"] |
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), |
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) |
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] |
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if ( |
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(num_labels == 1 and sample["label"] in labels) |
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or ( |
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num_labels > 1 |
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and all(label in labels for label in sample["labels"]) |
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) |
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) |
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else [] |
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), |
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) |
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for sample in hf_dataset |
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] |
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rg_dataset.records.log(records=records) |
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progress(1.0, desc="Dataset pushed to Argilla") |
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except Exception as e: |
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raise gr.Error(f"Error pushing dataset to Argilla: {e}") |
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return "" |
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def validate_input_labels(labels): |
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if not labels or len(labels) < 2: |
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raise gr.Error( |
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f"Please select at least 2 labels to classify your text. You selected {len(labels) if labels else 0}." |
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) |
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return labels |
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def update_max_num_labels(labels): |
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return gr.update(maximum=len(labels) if labels else 1) |
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def show_pipeline_code_visibility(): |
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return {pipeline_code_ui: gr.Accordion(visible=True)} |
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def hide_pipeline_code_visibility(): |
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return {pipeline_code_ui: gr.Accordion(visible=False)} |
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with gr.Blocks() as app: |
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with gr.Column() as main_ui: |
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gr.Markdown("## 1. Describe the dataset you want") |
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with gr.Row(): |
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with gr.Column(scale=2): |
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dataset_description = gr.Textbox( |
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label="Dataset description", |
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placeholder="Give a precise description of your desired dataset.", |
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) |
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with gr.Accordion("Temperature", open=False): |
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temperature = gr.Slider( |
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minimum=0.1, |
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maximum=1, |
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value=0.8, |
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step=0.1, |
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interactive=True, |
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show_label=False, |
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) |
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load_btn = gr.Button( |
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"Create dataset", |
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variant="primary", |
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) |
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with gr.Column(scale=2): |
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examples = gr.Examples( |
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examples=DEFAULT_DATASET_DESCRIPTIONS, |
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inputs=[dataset_description], |
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cache_examples=False, |
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label="Examples", |
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) |
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with gr.Column(scale=1): |
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pass |
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gr.HTML("<hr>") |
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gr.Markdown("## 2. Configure your dataset") |
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with gr.Row(equal_height=False): |
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with gr.Column(scale=2): |
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system_prompt = gr.Textbox( |
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label="System prompt", |
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placeholder="You are a helpful assistant.", |
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visible=True, |
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) |
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labels = gr.Dropdown( |
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choices=[], |
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allow_custom_value=True, |
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interactive=True, |
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label="Labels", |
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multiselect=True, |
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info="Add the labels to classify the text.", |
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) |
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num_labels = gr.Number( |
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label="Number of labels per text", |
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value=1, |
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minimum=1, |
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maximum=10, |
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info="Select 1 for single-label and >1 for multi-label.", |
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interactive=True, |
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) |
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clarity = gr.Dropdown( |
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choices=[ |
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("Clear", "clear"), |
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( |
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"Understandable", |
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"understandable with some effort", |
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), |
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("Ambiguous", "ambiguous"), |
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("Mixed", "mixed"), |
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], |
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value="mixed", |
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label="Clarity", |
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info="Set how easily the correct label or labels can be identified.", |
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interactive=True, |
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) |
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difficulty = gr.Dropdown( |
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choices=[ |
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("High School", "high school"), |
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("College", "college"), |
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("PhD", "PhD"), |
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("Mixed", "mixed"), |
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], |
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value="mixed", |
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label="Difficulty", |
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info="Select the comprehension level for the text. Ensure it matches the task context.", |
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interactive=True, |
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) |
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btn_apply_to_sample_dataset = gr.Button( |
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"Refresh dataset", variant="secondary" |
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) |
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with gr.Column(scale=3): |
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dataframe = gr.Dataframe( |
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headers=["labels", "text"], wrap=True, height=500, interactive=False |
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) |
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gr.HTML("<hr>") |
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gr.Markdown("## 3. Generate your dataset") |
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with gr.Row(equal_height=False): |
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with gr.Column(scale=2): |
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org_name = get_org_dropdown() |
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repo_name = gr.Textbox( |
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label="Repo name", |
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placeholder="dataset_name", |
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value=f"my-distiset-{str(uuid.uuid4())[:8]}", |
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interactive=True, |
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) |
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num_rows = gr.Number( |
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label="Number of rows", |
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value=10, |
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interactive=True, |
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scale=1, |
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) |
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private = gr.Checkbox( |
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label="Private dataset", |
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value=False, |
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interactive=True, |
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scale=1, |
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) |
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btn_push_to_hub = gr.Button("Push to Hub", variant="primary", scale=2) |
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with gr.Column(scale=3): |
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success_message = gr.Markdown(visible=True) |
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with gr.Accordion( |
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"Do you want to go further? Customize and run with Distilabel", |
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open=False, |
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visible=False, |
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) as pipeline_code_ui: |
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code = generate_pipeline_code( |
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system_prompt.value, |
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difficulty=difficulty.value, |
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clarity=clarity.value, |
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labels=labels.value, |
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num_labels=num_labels.value, |
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num_rows=num_rows.value, |
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) |
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pipeline_code = gr.Code( |
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value=code, |
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language="python", |
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label="Distilabel Pipeline Code", |
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) |
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load_btn.click( |
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fn=generate_system_prompt, |
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inputs=[dataset_description, temperature], |
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outputs=[system_prompt, labels], |
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show_progress=True, |
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).then( |
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fn=generate_sample_dataset, |
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inputs=[system_prompt, difficulty, clarity, labels, num_labels], |
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outputs=[dataframe], |
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show_progress=True, |
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).then( |
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fn=update_max_num_labels, |
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inputs=[labels], |
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outputs=[num_labels], |
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) |
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|
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labels.input( |
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fn=update_max_num_labels, |
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inputs=[labels], |
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outputs=[num_labels], |
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) |
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|
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btn_apply_to_sample_dataset.click( |
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fn=generate_sample_dataset, |
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inputs=[system_prompt, difficulty, clarity, labels, num_labels], |
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outputs=[dataframe], |
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show_progress=True, |
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) |
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|
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btn_push_to_hub.click( |
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fn=validate_argilla_user_workspace_dataset, |
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inputs=[repo_name], |
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outputs=[success_message], |
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show_progress=True, |
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).then( |
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fn=validate_push_to_hub, |
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inputs=[org_name, repo_name], |
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outputs=[success_message], |
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show_progress=True, |
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).success( |
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fn=hide_success_message, |
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outputs=[success_message], |
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show_progress=True, |
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).success( |
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fn=hide_pipeline_code_visibility, |
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inputs=[], |
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outputs=[pipeline_code_ui], |
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).success( |
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fn=push_dataset, |
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inputs=[ |
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org_name, |
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repo_name, |
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system_prompt, |
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difficulty, |
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clarity, |
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num_labels, |
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num_rows, |
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labels, |
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private, |
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], |
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outputs=[success_message], |
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show_progress=True, |
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).success( |
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fn=show_success_message, |
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inputs=[org_name, repo_name], |
|
outputs=[success_message], |
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).success( |
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fn=generate_pipeline_code, |
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inputs=[ |
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system_prompt, |
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difficulty, |
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clarity, |
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labels, |
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num_labels, |
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num_rows, |
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], |
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outputs=[pipeline_code], |
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).success( |
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fn=show_pipeline_code_visibility, |
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inputs=[], |
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outputs=[pipeline_code_ui], |
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) |
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|
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app.load(fn=swap_visibility, outputs=main_ui) |
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app.load(fn=get_org_dropdown, outputs=[org_name]) |
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|