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| import gradio as gr | |
| import pandas as pd | |
| def nlp_pipeline(original_df): | |
| original_df['Sum'] = df['a'] + df['b'] | |
| return original_df | |
| def process_excel(file): | |
| try: | |
| # Ensure the file path is correct | |
| file_path = file.name if hasattr(file, 'name') else file | |
| # Read the Excel file | |
| df = pd.read_excel(file_path) | |
| # Perform any processing on the DataFrame here | |
| # Example: adding a new column with the sum of two other columns | |
| # df['Sum'] = df['Column1'] + df['Column2'] | |
| result_df = nlp_pipeline(original_df) | |
| return result_df # Return the first few rows as an example | |
| except Exception as e: | |
| return str(e) # Return the error message | |
| # Define the Gradio interface | |
| interface = gr.Interface( | |
| fn=process_excel, # The function to process the uploaded file | |
| inputs=gr.File(type="filepath", label="Upload Excel File"), # File upload input | |
| outputs="dataframe", # Display the output as a DataFrame | |
| title="Excel File Uploader", | |
| description="Upload an Excel file to see the first few rows." | |
| ) | |
| # Launch the interface | |
| if __name__ == "__main__": | |
| interface.launch() | |
| # #!/usr/bin/env python | |
| # # coding: utf-8 | |
| # import pandas as pd | |
| # import string | |
| # import nltk | |
| # import seaborn as sns | |
| # import matplotlib.pyplot as plt | |
| # from nltk.corpus import stopwords | |
| # from nltk.tokenize import word_tokenize | |
| # from nltk.sentiment import SentimentIntensityAnalyzer | |
| # from sklearn.feature_extraction.text import TfidfVectorizer | |
| # from sklearn.cluster import KMeans | |
| # from transformers import T5ForConditionalGeneration, T5Tokenizer | |
| # from datasets import Dataset | |
| # # Load the data | |
| # file_responses = pd.read_excel("#TaxDirection (Responses).xlsx") | |
| # # Process financial allocations | |
| # def process_allocations(df, col_name): | |
| # return pd.to_numeric(df[col_name], errors='coerce').fillna(0) | |
| # columns_to_process = [ | |
| # '''Your financial allocation for Problem 1: | |
| # Mention the percentage of your Tax Amount which you wish the Government would allocate through their annual budget, to implement a specific solution for your 1st problem.''', | |
| # '''Your financial allocation for Problem 2: | |
| # Mention the percentage of your Tax Amount which you wish the Government would allocate through their annual budget, to implement a solution specifically to your 2nd problem.''', | |
| # '''Your financial allocation for Problem 3: | |
| # Mention the percentage of your Tax Amount which you wish the Government would allocate through their annual budget, to implement a solution specifically to your 3rd problem.''' | |
| # ] | |
| # for col in columns_to_process: | |
| # file_responses[col] = process_allocations(file_responses, col) | |
| # file_responses['How much was your latest Tax payment (in U$D)?'] = pd.to_numeric( | |
| # file_responses['How much was your latest Tax payment (in U$D)?'], errors='coerce').fillna(0) | |
| # # Compute total allocation and financial weights | |
| # file_responses['Total Allocation'] = file_responses[columns_to_process].apply(lambda x: x.clip(lower=10)).sum(axis=1) | |
| # for i in range(1, 4): | |
| # file_responses[f'Financial Token Weight for Problem {i}'] = ( | |
| # file_responses['How much was your latest Tax payment (in U$D)?'] * | |
| # file_responses[columns_to_process[i - 1]] / | |
| # file_responses['Total Allocation'] | |
| # ) | |
| # # Create initial datasets | |
| # initial_datasets = [] | |
| # for i in range(1, 4): | |
| # initial_datasets.append( | |
| # file_responses[[f'''Describe Problem {i}: | |
| # Enter the context of the problem. | |
| # What are the difficulties you are facing personally or as a part of an organization? | |
| # You may briefly propose a solution idea as well.''', | |
| # f'''Problem {i}: Geographical Location : | |
| # Where is the location you are facing this problem? | |
| # You may mention the nearby geographical area of the proposed solution as: | |
| # City/Town, State/Province, Country.''', | |
| # f'Financial Token Weight for Problem {i}']] | |
| # ) | |
| # # Rename columns | |
| # for idx, df in enumerate(initial_datasets): | |
| # initial_datasets[idx] = df.rename(columns={ | |
| # df.columns[0]: 'Problem_Description', | |
| # df.columns[1]: 'Geographical_Location', | |
| # df.columns[2]: 'Financial_Weight' | |
| # }) | |
| # # Merge datasets | |
| # merged_dataset = pd.concat(initial_datasets, ignore_index=True) | |
| # # Preprocess text | |
| # nltk.download('stopwords') | |
| # nltk.download('punkt') | |
| # nltk.download('omw-1.4') | |
| # def preprocess_text(text): | |
| # translator = str.maketrans("", "", string.punctuation) | |
| # text = text.translate(translator) | |
| # tokens = word_tokenize(text) | |
| # stop_words = set(stopwords.words('english')) | |
| # tokens = [word for word in tokens if word.lower() not in stop_words] | |
| # return ' '.join(tokens) | |
| # merged_dataset['Problem_Description'] = merged_dataset['Problem_Description'].astype(str).apply(preprocess_text) | |
| # merged_dataset['Problem_Description'] = merged_dataset['Problem_Description'].str.replace(r'\d+', '', regex=True) | |
| # merged_dataset['Geographical_Location'] = merged_dataset['Geographical_Location'].str.replace(r'\d+', '', regex=True) | |
| # merged_dataset['Problem_Description'] = merged_dataset['Problem_Description'].replace(r'http\S+', '', regex=True).replace(r'www\S+', '', regex=True) | |
| # merged_dataset['Geographical_Location'] = merged_dataset['Geographical_Location'].replace(r'http\S+', '', regex=True).replace(r'www\S+', '', regex=True) | |
| # # Lemmatize text | |
| # lemmatizer = nltk.WordNetLemmatizer() | |
| # merged_dataset['Problem_Description'] = merged_dataset['Problem_Description'].apply(lambda x: ' '.join([lemmatizer.lemmatize(word) for word in x.split()])) | |
| # # Clustering | |
| # corpus = merged_dataset['Problem_Description'].tolist() | |
| # tfidf_vectorizer = TfidfVectorizer(max_features=77000) | |
| # tfidf_matrix = tfidf_vectorizer.fit_transform(corpus) | |
| # problem_cluster_count = 77 | |
| # kmeans = KMeans(n_clusters=problem_cluster_count) | |
| # kmeans.fit(tfidf_matrix) | |
| # terms = tfidf_vectorizer.get_feature_names_out() | |
| # ordered_centroids = kmeans.cluster_centers_.argsort()[:, ::-1] | |
| # cluster_representations = {} | |
| # for i in range(kmeans.n_clusters): | |
| # cluster_representations[i] = [terms[ind] for ind in ordered_centroids[i, :17]] | |
| # merged_dataset['Problem_Category_Numeric'] = kmeans.labels_ | |
| # merged_dataset['Problem_Category_Words'] = [cluster_representations[label] for label in kmeans.labels_] | |
| # # Clustering geographical locations | |
| # geographical_data = merged_dataset['Geographical_Location'].tolist() | |
| # tfidf_vectorizer_geography = TfidfVectorizer(max_features=3000) | |
| # tfidf_matrix_geography = tfidf_vectorizer_geography.fit_transform(geographical_data) | |
| # location_cluster_count = 33 | |
| # kmeans_locations = KMeans(n_clusters=location_cluster_count) | |
| # kmeans_locations.fit(tfidf_matrix_geography) | |
| # terms_geography = tfidf_vectorizer_geography.get_feature_names_out() | |
| # ordered_centroids_geography = kmeans_locations.cluster_centers_.argsort()[:, ::-1] | |
| # cluster_representations_geography = {} | |
| # for i in range(kmeans_locations.n_clusters): | |
| # cluster_representations_geography[i] = [terms_geography[ind] for ind in ordered_centroids_geography[i, :5]] | |
| # merged_dataset['Location_Category_Numeric'] = kmeans_locations.labels_ | |
| # merged_dataset['Location_Category_Words'] = [cluster_representations_geography[label] for label in kmeans_locations.labels_] | |
| # # Create 2D matrices for problem descriptions and financial weights | |
| # matrix2Dfinances = [[[] for _ in range(location_cluster_count)] for _ in range(problem_cluster_count)] | |
| # matrix2Dproblems = [[[] for _ in range(location_cluster_count)] for _ in range(problem_cluster_count)] | |
| # for index, row in merged_dataset.iterrows(): | |
| # location_index = row['Location_Category_Numeric'] | |
| # problem_index = row['Problem_Category_Numeric'] | |
| # problem_description = row['Problem_Description'] | |
| # financial_wt = row['Financial_Weight'] | |
| # matrix2Dproblems[problem_index][location_index].append(problem_description) | |
| # matrix2Dfinances[problem_index][location_index].append(financial_wt) | |
| # # Aggregating financial weights | |
| # aggregated_Financial_wts = {} | |
| # un_aggregated_Financial_wts = {} | |
| # for Financ_wt_index, Financ_wt_row in enumerate(matrix2Dfinances): | |
| # aggregated_Financial_wts[Financ_wt_index] = {} | |
| # un_aggregated_Financial_wts[Financ_wt_index] = {} | |
| # for location_index, cell_finances in enumerate(Financ_wt_row): | |
| # cell_sum = sum(cell_finances) | |
| # aggregated_Financial_wts[Financ_wt_index][location_index] = cell_sum | |
| # un_aggregated_Financial_wts[Financ_wt_index][location_index] = cell_finances | |
| # matrix2Dfinances_df = pd.DataFrame(aggregated_Financial_wts) | |
| # matrix2Dfinances_df.to_excel('matrix2Dfinances_HeatMap.xlsx', index=True) | |
| # unagregated_finances_df = pd.DataFrame(un_aggregated_Financial_wts) | |
| # unagregated_finances_df.to_excel('UNaggregated Financial Weights.xlsx', index=True) | |
| # # Create heatmaps | |
| # plt.figure(figsize=(15, 7)) | |
| # sns.heatmap(matrix2Dfinances_df, annot=False, cmap='RdYlGn') | |
| # plt.title('Project Financial Weights') | |
| # plt.ylabel('Location Clusters') | |
| # plt.xlabel('Problem Clusters') | |
| # plt.savefig('Project Financial Weights_HeatMap_GreenHigh.png') | |
| # plt.show() | |
| # plt.figure(figsize=(14, 6)) | |
| # sns.heatmap(matrix2Dfinances_df, annot=False, cmap='RdYlGn_r') | |
| # plt.title('Project Financial Weights') | |
| # plt.ylabel('Location Clusters') | |
| # plt.xlabel('Problem Clusters') | |
| # plt.savefig('Project Financial Weights_HeatMap_RedHigh.png') | |
| # plt.show() | |
| # # Summarizing problems using T5 | |
| # model = T5ForConditionalGeneration.from_pretrained('t5-small') | |
| # tokenizer = T5Tokenizer.from_pretrained('t5-small') | |
| # def t5_summarize(text): | |
| # input_text = "summarize: " + text | |
| # inputs = tokenizer.encode(input_text, return_tensors="pt", max_length=512, truncation=True) | |
| # summary_ids = model.generate(inputs, max_length=150, min_length=40, length_penalty=2.0, num_beams=4, early_stopping=True) | |
| # return tokenizer.decode(summary_ids[0], skip_special_tokens=True) | |
| # summarized_problems = [[t5_summarize(" ".join(cell)) for cell in row] for row in matrix2Dproblems] | |
| # # Save summarized problems | |
| # with open('summarized_problems.txt', 'w') as file: | |
| # for problem_row in summarized_problems: | |
| # file.write("\t".join(problem_row) + "\n") | |