Create app.py
Browse files
app.py
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| 1 |
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import os
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| 2 |
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import re
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| 3 |
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import fitz # Importing PyMuPDF for PDF text extraction
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import nltk
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from gensim.models.doc2vec import Doc2Vec, TaggedDocument
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from sklearn.feature_extraction.text import TfidfVectorizer
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from sklearn.metrics.pairwise import cosine_similarity
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import pandas as pd
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import gradio as gr
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# Download NLTK data files
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nltk.download('punkt')
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nltk.download('stopwords')
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# Function to preprocess text
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def preprocess_text(text):
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text = re.sub(r'\W+', ' ', text.lower()) # Remove non-alphanumeric characters and lower case
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return text
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# Function to extract keywords using TF-IDF
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def extract_keywords_tfidf(text, max_features=50):
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vectorizer = TfidfVectorizer(stop_words='english', max_features=max_features)
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tfidf_matrix = vectorizer.fit_transform([text])
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feature_names = vectorizer.get_feature_names_out()
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tfidf_scores = tfidf_matrix.toarray().flatten()
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keyword_scores = sorted(zip(tfidf_scores, feature_names), reverse=True)
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return [keyword for score, keyword in keyword_scores]
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# Function to extract text from a PDF
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def extract_text_from_pdf(pdf_path):
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document = fitz.open(pdf_path)
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text = ""
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for page_num in range(len(document)):
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page = document.load_page(page_num)
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text += page.get_text()
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return text
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# Function to give feedback on resume
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def give_feedback(resume_text, job_description):
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feedback = []
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# Check formatting (example: consistency in bullet points)
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if '•' in resume_text and '-' in resume_text:
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feedback.append("Consider using a consistent bullet point style throughout your resume.")
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# Check for grammar and spelling
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if not any(re.findall(r'\bexperience\b|\beducation\b|\bskills\b', resume_text.lower())):
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feedback.append("Make sure your resume includes sections like Experience, Education, and Skills.")
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# Extract keywords and check relevance
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jd_keywords = extract_keywords_tfidf(preprocess_text(job_description))
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resume_keywords = extract_keywords_tfidf(preprocess_text(resume_text))
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common_keywords = set(jd_keywords).intersection(set(resume_keywords))
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if len(common_keywords) < 8:
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feedback.append(f"Your resume could better match the job description. Consider adding keywords such as: {', '.join(jd_keywords[:5])}.")
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# Check for action verbs
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action_verbs = ["managed", "led", "developed", "designed", "implemented", "created"]
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if not any(verb in resume_text.lower() for verb in action_verbs):
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feedback.append("Consider using strong action verbs to describe your achievements and responsibilities.")
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if not re.search(r'\bsummary\b|\bobjective\b', resume_text, re.IGNORECASE):
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feedback.append("Consider adding a professional summary or objective statement to provide a quick overview of your qualifications.")
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# Check for quantifiable achievements
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if not re.findall(r'\d+', resume_text):
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feedback.append("Include quantifiable achievements in your experience section (e.g., increased sales by 20%).")
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# Provide positive feedback if none of the above conditions are met
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if not feedback:
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feedback.append("Your resume is well-aligned with the job description. Ensure to keep it updated with relevant keywords and achievements.")
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return feedback
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# Function to calculate TF-IDF cosine similarity score
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def tfidf_cosine_similarity(resume, jd):
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documents = [resume, jd]
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vectorizer = TfidfVectorizer()
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tfidf_matrix = vectorizer.fit_transform(documents)
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cosine_sim = cosine_similarity(tfidf_matrix[0:1], tfidf_matrix[1:2])
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return cosine_sim[0][0]
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# Function to calculate Doc2Vec cosine similarity score
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def doc2vec_cosine_similarity(resume, jd, model):
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resume_vector = model.infer_vector(resume.split())
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jd_vector = model.infer_vector(jd.split())
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cosine_sim = cosine_similarity([resume_vector], [jd_vector])
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return cosine_sim[0][0]
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# Function to extract years of experience from resume
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def extract_years_of_experience(text):
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years = re.findall(r'(\d+)\s+year[s]*', text, re.IGNORECASE)
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if years:
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return sum(map(int, years))
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return 0
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# Function to extract information from resumes in a folder
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def extract_info_from_resumes(resume_files, job_description):
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data = []
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# Train Doc2Vec model on resumes and job description
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documents = []
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for file in resume_files:
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text = extract_text_from_pdf(file.name)
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documents.append(preprocess_text(text))
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documents.append(preprocess_text(job_description))
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tagged_docs = [TaggedDocument(doc.split(), [i]) for i, doc in enumerate(documents)]
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model = Doc2Vec(tagged_docs, vector_size=50, window=2, min_count=1, workers=4)
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for file in resume_files:
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text = extract_text_from_pdf(file.name)
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| 117 |
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preprocessed_text = preprocess_text(text)
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| 118 |
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resume_keywords = extract_keywords_tfidf(preprocessed_text)
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years_of_experience = extract_years_of_experience(text)
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# Append years of experience to the resume keywords
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if years_of_experience > 0:
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resume_keywords.append(f"{years_of_experience} years experience")
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name = os.path.splitext(os.path.basename(file.name))[0]
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feedback = give_feedback(text, job_description)
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# Calculate scores
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| 130 |
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jd_keywords = extract_keywords_tfidf(preprocess_text(job_description))
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| 131 |
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common_keywords = set(jd_keywords).intersection(set(resume_keywords))
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| 132 |
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keyword_match_score = len(common_keywords) # Count of common keywords as a whole number
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| 133 |
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tfidf_score = tfidf_cosine_similarity(text, job_description)
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| 134 |
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doc2vec_score = doc2vec_cosine_similarity(preprocessed_text, preprocess_text(job_description), model)
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| 135 |
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data.append({
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'Name': name,
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'Keyword_Match_Score': keyword_match_score, # Whole number
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| 139 |
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'TFIDF_Score': tfidf_score,
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'Doc2Vec_Score': doc2vec_score,
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| 141 |
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'Years_of_Experience': years_of_experience,
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'Feedback': '; '.join(feedback), # Combine feedback into a single string
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})
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return data
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# Function to save data to an Excel file
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| 148 |
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def save_to_excel(data, output_file):
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| 149 |
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df = pd.DataFrame(data)
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| 150 |
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try:
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df.to_excel(output_file, index=False)
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return output_file
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except Exception as e:
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| 154 |
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return f"Error saving file: {e}"
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| 155 |
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| 156 |
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# Gradio interface function
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| 157 |
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def gradio_interface(resume_files, job_description):
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| 158 |
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if resume_files:
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| 159 |
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output_file = 'Resume_Analysis.xlsx'
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| 160 |
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resumes = extract_info_from_resumes(resume_files, job_description)
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| 161 |
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result = save_to_excel(resumes, output_file)
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| 162 |
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else:
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| 163 |
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result = "No resumes to process."
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| 164 |
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| 165 |
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return result
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| 166 |
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| 167 |
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# Gradio UI setup
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| 168 |
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iface = gr.Interface(
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| 169 |
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fn=gradio_interface,
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| 170 |
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inputs=[
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| 171 |
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gr.Files(label="Upload multiple Resumes", type="filepath"), # Accept multiple file uploads
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| 172 |
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gr.Textbox(label="Job Description", lines=5, placeholder="Enter the job description here...")
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| 173 |
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],
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| 174 |
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outputs=gr.File(label="Download Results"), # Provide the output file
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| 175 |
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| 176 |
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description="Upload multiple resume PDFs and provide a job description to analyze the resumes and get an Excel file with the results."
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| 177 |
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)
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| 178 |
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| 179 |
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# Launch the Gradio interface
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| 180 |
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iface.launch()
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