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import pandas as pd |
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from datasets import Dataset |
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from transformers import pipeline, GPT2Tokenizer |
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from sentence_transformers import SentenceTransformer, util |
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filename = "output_country_details.txt" |
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retrieval_model_name = 'output/sentence-transformer-finetuned/' |
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gpt2_model_name = "gpt2" |
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csv_file_path = "train_dataset.csv" |
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output_csv_file_path = "updated_train_dataset.csv" |
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val_csv_file_path = "val_dataset.csv" |
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output_val_csv_file_path = "updated_val_csv.csv" |
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tokenizer = GPT2Tokenizer.from_pretrained(gpt2_model_name) |
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try: |
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retrieval_model = SentenceTransformer(retrieval_model_name) |
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gpt_model = pipeline("text-generation", model=gpt2_model_name) |
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print("Models loaded successfully.") |
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except Exception as e: |
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print(f"Failed to load models: {e}") |
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def load_and_preprocess_text(filename): |
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""" |
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Load and preprocess text data from a file. |
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Parameters: |
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- filename (str): Path to the text file. |
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Returns: |
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- list[str]: A list of preprocessed text segments. |
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""" |
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try: |
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with open(filename, 'r', encoding='utf-8') as file: |
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segments = [line.strip() for line in file if line.strip()] |
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print("Text loaded and preprocessed successfully.") |
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return segments |
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except Exception as e: |
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print(f"Failed to load or preprocess text: {e}") |
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return [] |
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segments = load_and_preprocess_text(filename) |
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def find_relevant_segment(user_query, segments): |
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""" |
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Find the most relevant text segment based on a user query. |
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Parameters: |
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- user_query (str): The user's query. |
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- segments (list[str]): List of text segments to search within. |
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Returns: |
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- str: The most relevant text segment. |
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""" |
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try: |
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query_embedding = retrieval_model.encode(user_query) |
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segment_embeddings = retrieval_model.encode(segments) |
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similarities = util.pytorch_cos_sim(query_embedding, segment_embeddings)[0] |
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best_idx = similarities.argmax() |
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return segments[best_idx] |
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except Exception as e: |
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print(f"Error finding relevant segment: {e}") |
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return "" |
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def generate_response(question): |
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""" |
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Generate a response to a given question by finding a relevant text segment and |
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using it to generate a more complete answer. |
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Parameters: |
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- question (str): The user's question. |
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Returns: |
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- str: Generated response. |
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""" |
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relevant_segment = find_relevant_segment(question, segments) |
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return generate_response_with_context(question, relevant_segment) |
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def generate_response_with_context(user_query, relevant_segment): |
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""" |
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Generate a response based on a user query and a relevant segment. |
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Parameters: |
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- user_query (str): The user's query. |
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- relevant_segment (str): A relevant fact or detail. |
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Returns: |
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- str: Formatted response incorporating the relevant segment. |
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""" |
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try: |
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prompt = f"Thank you for your question! Here is an additional fact about your topic: {relevant_segment}" |
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max_tokens = len(tokenizer(prompt)['input_ids']) + 50 |
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response = gpt_model(prompt, max_length=max_tokens, temperature=0.25)[0]['generated_text'] |
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return clean_up_response(response, relevant_segment) |
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except Exception as e: |
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print(f"Error generating response: {e}") |
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return "" |
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def clean_up_response(response, segment): |
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""" |
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Clean up the generated response to ensure it is tidy and presentable. |
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Parameters: |
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- response (str): The initial response generated by the model. |
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- segment (str): The segment used to generate the response. |
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Returns: |
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- str: A cleaned and formatted response. |
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""" |
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sentences = response.split('.') |
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cleaned_sentences = [sentence.strip() for sentence in sentences if sentence.strip() and sentence.strip() not in segment] |
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cleaned_response = '. '.join(cleaned_sentences).strip() |
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if cleaned_response and not cleaned_response.endswith((".", "!", "?")): |
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cleaned_response += "." |
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return cleaned_response |
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def process_dataset(csv_file_path, output_csv_file_path): |
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""" |
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Process the dataset by generating responses and evaluating their similarities. |
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Parameters: |
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- csv_file_path (str): Path to the CSV file containing the dataset. |
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- output_csv_file_path (str): Path where the updated dataset will be saved. |
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Prints: |
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- Path to the saved results and the average similarity score. |
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""" |
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df = pd.read_csv(csv_file_path) |
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dataset = Dataset.from_pandas(df) |
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updated_dataset = add_model_answers(dataset) |
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similarities = evaluate_similarity(updated_dataset) |
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updated_dataset = updated_dataset.add_column("similarity", similarities) |
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results_df = updated_dataset.to_pandas() |
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results_df.to_csv(output_csv_file_path, index=False) |
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average_similarity = sum(similarities) / len(similarities) if similarities else 0 |
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print(f"Results saved to {output_csv_file_path}") |
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print(f"Average Similarity Score: {average_similarity:.3f}") |
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def add_model_answers(dataset): |
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""" |
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Add generated answers to the dataset. |
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Parameters: |
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- dataset (datasets.Dataset): The Hugging Face dataset object. |
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Returns: |
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- datasets.Dataset: Updated dataset with added answers. |
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""" |
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answers = [generate_response(q) for q in dataset['Question']] |
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dataset = dataset.add_column("Answer", answers) |
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return dataset |
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def evaluate_similarity(dataset): |
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""" |
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Evaluate the similarity of generated answers against ground truth answers. |
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Parameters: |
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- dataset (datasets.Dataset): The dataset containing both answers and ground truths. |
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Returns: |
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- list[float]: List of similarity scores. |
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""" |
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similarities = [util.pytorch_cos_sim(retrieval_model.encode(ans), retrieval_model.encode(gt))[0][0].item() |
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for ans, gt in zip(dataset['Answer'], dataset['GroundTruth'])] |
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return similarities |
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process_dataset(csv_file_path, output_csv_file_path) |
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process_dataset(val_csv_file_path, output_val_csv_file_path) |
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