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| import torch | |
| import gradio as gr | |
| import yt_dlp as youtube_dl | |
| from transformers import pipeline | |
| from transformers.pipelines.audio_utils import ffmpeg_read | |
| import tempfile | |
| import os | |
| import numpy as np | |
| from gensim.models import Word2Vec | |
| from sklearn.cluster import KMeans | |
| from sklearn.metrics.pairwise import cosine_similarity | |
| from collections import defaultdict | |
| import spacy | |
| from transformers import pipeline | |
| from sklearn.metrics import davies_bouldin_score | |
| MODEL_NAME = "openai/whisper-large-v3" | |
| BATCH_SIZE = 8 | |
| FILE_LIMIT_MB = 1000 | |
| YT_LENGTH_LIMIT_S = 3600 # limit to 1 hour YouTube files | |
| device = 0 if torch.cuda.is_available() else "cpu" | |
| pipe = pipeline( | |
| task="automatic-speech-recognition", | |
| model=MODEL_NAME, | |
| chunk_length_s=30, | |
| device=device, | |
| ) | |
| summarizer = pipeline("summarization", model="facebook/bart-large-cnn") | |
| # Download the 'en_core_web_sm' model | |
| spacy.cli.download("en_core_web_sm") | |
| # Load the model | |
| nlp = spacy.load("en_core_web_sm") | |
| def summarize(text, max_length=1000): | |
| return summarizer(text, max_length=min(max_length, len(text)), min_length=1, do_sample=False)[0]["summary_text"] | |
| def segment_sentences(text): | |
| # Process the text using spaCy | |
| doc = nlp(text) | |
| # Extract sentences from the processed document | |
| return [sent.text for sent in doc.sents] | |
| def preprocess_sentences(sentences): | |
| preprocessed_sentences = [] | |
| for sentence in sentences: | |
| # Tokenize and lemmatize the sentence using spaCy | |
| doc = nlp(sentence.lower()) | |
| tokens = [token.lemma_ for token in doc if not token.is_stop and token.is_alpha] | |
| preprocessed_sentences.append(tokens) | |
| return preprocessed_sentences | |
| def embedding(preprocessed_sentences): | |
| model = Word2Vec(preprocessed_sentences, vector_size=100, window=5, min_count=1, sg=1) | |
| sentence_embeddings = [] | |
| for sentence in preprocessed_sentences: | |
| word_embeddings = [model.wv[word] for word in sentence if word in model.wv] | |
| if word_embeddings: | |
| sentence_embeddings.append(np.mean(word_embeddings, axis=0)) | |
| else: | |
| # Handle the case when none of the words in the sentence exist in the Word2Vec vocabulary | |
| sentence_embeddings.append(np.zeros(model.vector_size)) # Use zero vector as placeholder | |
| return sentence_embeddings | |
| def optimal_n_clusters(sentence_embeddings): | |
| cosine_sim_matrix = cosine_similarity(sentence_embeddings) | |
| db_scores = [] | |
| k_values = range(2, len(sentence_embeddings)) | |
| for k in k_values: | |
| kmeans = KMeans(n_clusters=k, n_init=10, random_state=42) | |
| cluster_labels = kmeans.fit_predict(cosine_sim_matrix) | |
| db_scores.append(davies_bouldin_score(cosine_sim_matrix, cluster_labels)) | |
| # Choose the optimal number of clusters based on Davies-Bouldin index | |
| return (cosine_sim_matrix, np.argmin(db_scores) + 2) # Add 2 to account for skipping k=1 | |
| def cluster_assignments(cosine_sim_matrix, optimal_n_clusters): | |
| # Cluster sentence embeddings using KMeans with the optimal number of clusters | |
| kmeans = KMeans(n_clusters=optimal_n_clusters, n_init=10, random_state=42) | |
| return kmeans.fit_predict(cosine_sim_matrix) | |
| def clusters(sentences, cluster_assignments): | |
| # Group sentences into clusters | |
| clusters = defaultdict(list) | |
| for i, sentence in enumerate(sentences): | |
| clusters[cluster_assignments[i]].append(sentence) | |
| result = defaultdict(list) | |
| for i in range(len(clusters)): | |
| cluster = ' '.join(clusters[i]) | |
| title = summarize(cluster, 10) | |
| result[title].extend(clusters[i]) | |
| return result | |
| def format_as_bullet_points(dictionary): | |
| bullet_points = "" | |
| for key, values in dictionary.items(): | |
| bullet_points += f"- {key}:\n" | |
| for value in values: | |
| bullet_points += f" - {value}\n" | |
| return bullet_points.strip() | |
| def final_result(input): | |
| text = summarize(input) | |
| sentences = segment_sentences(text) | |
| preprocessed_sentences = preprocess_sentences(sentences) | |
| sentence_embeddings = embedding(preprocessed_sentences) | |
| cosine_sim_matrix, optimal_number_of_clusters = optimal_n_clusters(sentence_embeddings) | |
| clusters_assignments = cluster_assignments(cosine_sim_matrix, optimal_number_of_clusters) | |
| all_clusters = clusters(sentences, clusters_assignments) | |
| return format_as_bullet_points(all_clusters) | |
| def transcribe(inputs, task): | |
| if inputs is None: | |
| raise gr.Error("No audio file submitted! Please upload or record an audio file before submitting your request.") | |
| text = pipe(inputs, batch_size=BATCH_SIZE, generate_kwargs={"task": task}, return_timestamps=True)["text"] | |
| return final_result(text) | |
| def _return_yt_html_embed(yt_url): | |
| video_id = yt_url.split("?v=")[-1] | |
| HTML_str = ( | |
| f'<center> <iframe width="500" height="320" src="https://www.youtube.com/embed/{video_id}"> </iframe>' | |
| " </center>" | |
| ) | |
| return HTML_str | |
| def download_yt_audio(yt_url, filename): | |
| info_loader = youtube_dl.YoutubeDL() | |
| try: | |
| info = info_loader.extract_info(yt_url, download=False) | |
| except youtube_dl.utils.DownloadError as err: | |
| raise gr.Error(str(err)) | |
| file_length = info["duration_string"] | |
| file_h_m_s = file_length.split(":") | |
| file_h_m_s = [int(sub_length) for sub_length in file_h_m_s] | |
| if len(file_h_m_s) == 1: | |
| file_h_m_s.insert(0, 0) | |
| if len(file_h_m_s) == 2: | |
| file_h_m_s.insert(0, 0) | |
| file_length_s = file_h_m_s[0] * 3600 + file_h_m_s[1] * 60 + file_h_m_s[2] | |
| if file_length_s > YT_LENGTH_LIMIT_S: | |
| yt_length_limit_hms = time.strftime("%HH:%MM:%SS", time.gmtime(YT_LENGTH_LIMIT_S)) | |
| file_length_hms = time.strftime("%HH:%MM:%SS", time.gmtime(file_length_s)) | |
| raise gr.Error(f"Maximum YouTube length is {yt_length_limit_hms}, got {file_length_hms} YouTube video.") | |
| ydl_opts = {"outtmpl": filename, "format": "worstvideo[ext=mp4]+bestaudio[ext=m4a]/best[ext=mp4]/best"} | |
| with youtube_dl.YoutubeDL(ydl_opts) as ydl: | |
| try: | |
| ydl.download([yt_url]) | |
| except youtube_dl.utils.ExtractorError as err: | |
| raise gr.Error(str(err)) | |
| def yt_transcribe(yt_url, task, max_filesize=75.0): | |
| html_embed_str = _return_yt_html_embed(yt_url) | |
| with tempfile.TemporaryDirectory() as tmpdirname: | |
| filepath = os.path.join(tmpdirname, "video.mp4") | |
| download_yt_audio(yt_url, filepath) | |
| with open(filepath, "rb") as f: | |
| inputs = f.read() | |
| inputs = ffmpeg_read(inputs, pipe.feature_extractor.sampling_rate) | |
| inputs = {"array": inputs, "sampling_rate": pipe.feature_extractor.sampling_rate} | |
| text = pipe(inputs, batch_size=BATCH_SIZE, generate_kwargs={"task": task}, return_timestamps=True)["text"] | |
| return html_embed_str, final_result(text) | |
| demo = gr.Blocks() | |
| mf_transcribe = gr.Interface( | |
| fn=transcribe, | |
| inputs=[ | |
| gr.inputs.Audio(source="microphone", type="filepath", optional=True), | |
| gr.inputs.Radio(["transcribe", "translate"], label="Task", default="transcribe"), | |
| ], | |
| outputs="text", | |
| layout="horizontal", | |
| theme="huggingface", | |
| title="Whisper Large V3: Transcribe Audio", | |
| description=( | |
| "Transcribe long-form microphone or audio inputs with the click of a button! Demo uses the OpenAI Whisper" | |
| f" checkpoint [{MODEL_NAME}](https://huggingface.co/{MODEL_NAME}) and 🤗 Transformers to transcribe audio files" | |
| " of arbitrary length." | |
| ), | |
| allow_flagging="never", | |
| ) | |
| file_transcribe = gr.Interface( | |
| fn=transcribe, | |
| inputs=[ | |
| gr.inputs.Audio(source="upload", type="filepath", optional=True, label="Audio file"), | |
| gr.inputs.Radio(["transcribe", "translate"], label="Task", default="transcribe"), | |
| ], | |
| outputs="text", | |
| layout="horizontal", | |
| theme="huggingface", | |
| title="Whisper Large V3: Transcribe Audio", | |
| description=( | |
| "Transcribe long-form microphone or audio inputs with the click of a button! Demo uses the OpenAI Whisper" | |
| f" checkpoint [{MODEL_NAME}](https://huggingface.co/{MODEL_NAME}) and 🤗 Transformers to transcribe audio files" | |
| " of arbitrary length." | |
| ), | |
| allow_flagging="never", | |
| ) | |
| yt_transcribe = gr.Interface( | |
| fn=yt_transcribe, | |
| inputs=[ | |
| gr.inputs.Textbox(lines=1, placeholder="Paste the URL to a YouTube video here", label="YouTube URL"), | |
| gr.inputs.Radio(["transcribe", "translate"], label="Task", default="transcribe") | |
| ], | |
| outputs=["html", "text"], | |
| layout="horizontal", | |
| theme="huggingface", | |
| title="Whisper Large V3: Transcribe YouTube", | |
| description=( | |
| "Transcribe long-form YouTube videos with the click of a button! Demo uses the OpenAI Whisper checkpoint" | |
| f" [{MODEL_NAME}](https://huggingface.co/{MODEL_NAME}) and 🤗 Transformers to transcribe video files of" | |
| " arbitrary length." | |
| ), | |
| allow_flagging="never", | |
| ) | |
| with demo: | |
| gr.TabbedInterface([mf_transcribe, file_transcribe, yt_transcribe], ["Microphone", "Audio file", "YouTube"]) | |
| demo.launch(enable_queue=True) | |