# Import necessary libraries import streamlit as st import re import nltk import os from nltk.corpus import stopwords from nltk import FreqDist from graphviz import Digraph from sklearn.feature_extraction.text import TfidfVectorizer from sklearn.cluster import KMeans # Set page configuration with a title and favicon st.set_page_config( page_title="πŸ“ΊTranscriptπŸ“œEDAπŸ”NLTK", page_icon="🌠", layout="wide", initial_sidebar_state="expanded", menu_items={ 'Get Help': 'https://huggingface.co/awacke1', 'Report a bug': "https://huggingface.co/spaces/awacke1/WebDataDownload", 'About': "# Midjourney: https://discord.com/channels/@me/997514686608191558" } ) st.markdown('''πŸ” **Exploratory Data Analysis (EDA)** πŸ“Š: - Dive deep into the sea of data with our EDA feature, unveiling hidden patterns πŸ•΅οΈβ€β™‚οΈ and insights 🧠 in your transcripts. Transform raw data into a treasure trove of information πŸ†. πŸ“œ **Natural Language Toolkit (NLTK)** πŸ› οΈ: - Harness the power of NLTK to process and understand human language πŸ—£οΈ. From tokenization to sentiment analysis, our toolkit is your compass 🧭 in the vast landscape of natural language processing (NLP). πŸ“Ί **Transcript Analysis** πŸ“ˆ: - Elevate your text analysis with our advanced transcript analysis tools. Whether it's speech recognition πŸŽ™οΈ or thematic extraction 🌐, turn your audiovisual content into actionable insights πŸ”‘.''') # Download NLTK resources nltk.download('punkt') nltk.download('stopwords') def remove_timestamps(text): return re.sub(r'\d{1,2}:\d{2}\n.*\n', '', text) def extract_high_information_words(text, top_n=10): words = nltk.word_tokenize(text) words = [word.lower() for word in words if word.isalpha()] stop_words = set(stopwords.words('english')) filtered_words = [word for word in words if word not in stop_words] freq_dist = FreqDist(filtered_words) return [word for word, _ in freq_dist.most_common(top_n)] def create_relationship_graph(words): graph = Digraph() for index, word in enumerate(words): graph.node(str(index), word) if index > 0: graph.edge(str(index - 1), str(index), label=str(index)) return graph def display_relationship_graph(words): graph = create_relationship_graph(words) st.graphviz_chart(graph) def extract_context_words(text, high_information_words): words = nltk.word_tokenize(text) context_words = [] for index, word in enumerate(words): if word.lower() in high_information_words: before_word = words[index - 1] if index > 0 else None after_word = words[index + 1] if index < len(words) - 1 else None context_words.append((before_word, word, after_word)) return context_words def create_context_graph(context_words): graph = Digraph() for index, (before_word, high_info_word, after_word) in enumerate(context_words): #graph.node(f'before{index}', before_word, shape='box') if before_word else None if before_word: graph.node(f'before{index}', before_word, shape='box') # else None graph.node(f'high{index}', high_info_word, shape='ellipse') #graph.node(f'after{index}', after_word, shape='diamond') if after_word else None if after_word: graph.node(f'after{index}', after_word, shape='diamond') # else None if before_word: graph.edge(f'before{index}', f'high{index}') if after_word: graph.edge(f'high{index}', f'after{index}') return graph def display_context_graph(context_words): graph = create_context_graph(context_words) st.graphviz_chart(graph) def display_context_table(context_words): table = "| Before | High Info Word | After |\n|--------|----------------|-------|\n" for before, high, after in context_words: table += f"| {before if before else ''} | {high} | {after if after else ''} |\n" st.markdown(table) def load_example_files(): # Exclude specific files excluded_files = {'freeze.txt', 'requirements.txt', 'packages.txt', 'pre-requirements.txt'} # List all .txt files excluding the ones in excluded_files example_files = [f for f in os.listdir() if f.endswith('.txt') and f not in excluded_files] # Check if there are any files to select from if example_files: selected_file = st.selectbox("πŸ“„ Select an example file:", example_files) if st.button(f"πŸ“‚ Load {selected_file}"): with open(selected_file, 'r', encoding="utf-8") as file: return file.read() else: st.write("No suitable example files found.") return None def cluster_sentences(sentences, num_clusters): # Filter sentences with length over 10 characters sentences = [sentence for sentence in sentences if len(sentence) > 10] # Check if the number of sentences is less than the desired number of clusters if len(sentences) < num_clusters: # If so, adjust the number of clusters to match the number of sentences num_clusters = len(sentences) # Vectorize the sentences vectorizer = TfidfVectorizer() X = vectorizer.fit_transform(sentences) # Perform k-means clustering kmeans = KMeans(n_clusters=num_clusters, random_state=42) kmeans.fit(X) # Get the cluster labels for each sentence labels = kmeans.labels_ # Group sentences by cluster clustered_sentences = [[] for _ in range(num_clusters)] for i, label in enumerate(labels): clustered_sentences[label].append((i, sentences[i])) return clustered_sentences # Main code for UI uploaded_file = st.file_uploader("πŸ“ Choose a .txt file", type=['txt']) example_text = load_example_files() if example_text: file_text = example_text elif uploaded_file: file_text = uploaded_file.read().decode("utf-8") else: file_text = "" if file_text: text_without_timestamps = remove_timestamps(file_text) sentences = [sentence.strip() for sentence in text_without_timestamps.split('.') if len(sentence.strip()) > 10] top_words = extract_high_information_words(text_without_timestamps, 10) with st.expander("πŸ“Š Top 10 High Information Words"): st.write(top_words) with st.expander("πŸ“ˆ Relationship Graph"): display_relationship_graph(top_words) context_words = extract_context_words(text_without_timestamps, top_words) with st.expander("πŸ”— Context Graph"): display_context_graph(context_words) with st.expander("πŸ“‘ Context Table"): display_context_table(context_words) # with st.expander("Innovation Outlines"): # showInnovationOutlines() with st.expander("πŸ“ Sentence Clustering"): num_clusters = st.slider("Number of Clusters", min_value=2, max_value=10, value=5) clustered_sentences = cluster_sentences(sentences, num_clusters) output_text = "" for i, cluster in enumerate(clustered_sentences): output_text += f"## 🌟 Cluster {i+1}:\n" for original_index, sentence in cluster: output_text += f"- Original Line {original_index+1}: {sentence}\n" output_text += "\n" st.markdown(output_text) st.markdown("https://cdn-uploads.huggingface.co/production/uploads/620630b603825909dcbeba35/Id9kntHFHZf_oFFrEmGh5.png")