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import os | |
import io | |
import streamlit as st | |
import docx | |
import docx2txt | |
import tempfile | |
import numpy as np | |
from scipy.spatial.distance import cosine | |
import time | |
import re | |
import concurrent.futures | |
from functools import lru_cache | |
from transformers import pipeline, AutoTokenizer, AutoModelForSeq2SeqLM | |
# Set page title and hide sidebar | |
st.set_page_config( | |
page_title="Resume Analyzer and Company Suitability Checker", | |
initial_sidebar_state="collapsed" | |
) | |
# Hide sidebar completely with custom CSS | |
st.markdown(""" | |
<style> | |
[data-testid="collapsedControl"] {display: none;} | |
section[data-testid="stSidebar"] {display: none;} | |
</style> | |
""", unsafe_allow_html=True) | |
##################################### | |
# Preload Models - Optimized | |
##################################### | |
def load_models(): | |
"""Load models at startup - using smaller/faster models""" | |
with st.spinner("Loading AI models... This may take a minute on first run."): | |
models = {} | |
# Load smaller summarization model for speed | |
models['summarizer'] = pipeline("summarization", model="facebook/bart-large-cnn", max_length=130) | |
# Load smaller feature extraction model for speed | |
models['feature_extractor'] = pipeline("feature-extraction", model="distilbert-base-uncased") | |
return models | |
# Preload models immediately when app starts | |
models = load_models() | |
##################################### | |
# Function: Extract Text from File | |
##################################### | |
def extract_text_from_file(file_obj): | |
""" | |
Extract text from .docx and .doc files. | |
Returns the extracted text or an error message if extraction fails. | |
""" | |
filename = file_obj.name | |
ext = os.path.splitext(filename)[1].lower() | |
text = "" | |
if ext == ".docx": | |
try: | |
document = docx.Document(file_obj) | |
text = "\n".join(para.text for para in document.paragraphs if para.text.strip()) | |
except Exception as e: | |
text = f"Error processing DOCX file: {e}" | |
elif ext == ".doc": | |
try: | |
# For .doc files, we need to save to a temp file | |
with tempfile.NamedTemporaryFile(delete=False, suffix='.doc') as temp_file: | |
temp_file.write(file_obj.getvalue()) | |
temp_path = temp_file.name | |
# Use docx2txt which is generally faster | |
try: | |
text = docx2txt.process(temp_path) | |
except Exception: | |
text = "Could not process .doc file. Please convert to .docx format." | |
# Clean up temp file | |
os.unlink(temp_path) | |
except Exception as e: | |
text = f"Error processing DOC file: {e}" | |
elif ext == ".txt": | |
try: | |
text = file_obj.getvalue().decode("utf-8") | |
except Exception as e: | |
text = f"Error processing TXT file: {e}" | |
else: | |
text = "Unsupported file type. Please upload a .docx, .doc, or .txt file." | |
return text | |
##################################### | |
# Functions for Information Extraction - Optimized | |
##################################### | |
# Cache the extraction functions to avoid reprocessing | |
def extract_name(text_start): | |
"""Extract candidate name from the beginning of resume text""" | |
# Only use the first 500 characters to speed up processing | |
lines = text_start.split('\n') | |
# Check first few non-empty lines for potential names | |
potential_name_lines = [line.strip() for line in lines[:5] if line.strip()] | |
if potential_name_lines: | |
# First line is often the name if it's short and doesn't contain common headers | |
first_line = potential_name_lines[0] | |
if 5 <= len(first_line) <= 40 and not any(x in first_line.lower() for x in ["resume", "cv", "curriculum", "vitae", "profile"]): | |
return first_line | |
# Look for lines that might contain a name | |
for line in potential_name_lines[:3]: | |
if len(line.split()) <= 4 and not any(x in line.lower() for x in ["address", "phone", "email", "resume", "cv"]): | |
return line | |
return "Unknown (please extract from resume)" | |
def extract_age(text): | |
"""Extract candidate age from resume text""" | |
# Simplified: just check a few common patterns | |
age_patterns = [ | |
r'age:?\s*(\d{1,2})', | |
r'(\d{1,2})\s*years\s*old', | |
] | |
text_lower = text.lower() | |
for pattern in age_patterns: | |
matches = re.search(pattern, text_lower) | |
if matches: | |
return matches.group(1) | |
return "Not specified" | |
def extract_industry(text, base_summary): | |
"""Extract expected job industry from resume""" | |
# Simplified industry keywords focused on the most common ones | |
industry_keywords = { | |
"technology": ["software", "programming", "developer", "IT", "tech", "computer"], | |
"finance": ["banking", "financial", "accounting", "finance", "analyst"], | |
"healthcare": ["medical", "health", "hospital", "clinical", "nurse", "doctor"], | |
"education": ["teaching", "teacher", "professor", "education", "university"], | |
"marketing": ["marketing", "advertising", "digital marketing", "social media"], | |
"engineering": ["engineer", "engineering"], | |
"data science": ["data science", "machine learning", "AI", "analytics"], | |
"information systems": ["information systems", "ERP", "systems management"] | |
} | |
# Count occurrences of industry keywords - using the summary to speed up | |
combined_text = base_summary.lower() | |
counts = {} | |
for industry, keywords in industry_keywords.items(): | |
counts[industry] = sum(combined_text.count(keyword.lower()) for keyword in keywords) | |
# Get the industry with the highest count | |
if counts: | |
likely_industry = max(counts.items(), key=lambda x: x[1]) | |
if likely_industry[1] > 0: | |
return likely_industry[0].capitalize() | |
# Check for educational background that might indicate industry | |
degrees = ["computer science", "business", "engineering", "medicine", "education", "finance", "marketing"] | |
for degree in degrees: | |
if degree in combined_text: | |
return f"{degree.capitalize()}-related field" | |
return "Not clearly specified" | |
def extract_skills_and_work(text): | |
"""Extract both skills and work experience at once to save processing time""" | |
# Common skill categories - reduced keyword list for speed | |
skill_categories = { | |
"Programming": ["Python", "Java", "JavaScript", "HTML", "CSS", "SQL", "C++", "C#"], | |
"Data Science": ["Machine Learning", "Data Analysis", "Statistics", "TensorFlow", "PyTorch"], | |
"Database": ["SQL", "MySQL", "MongoDB", "Database"], | |
"Web Development": ["React", "Angular", "Node.js", "Frontend", "Backend"], | |
"Software Development": ["Agile", "Scrum", "Git", "DevOps", "Docker"], | |
"Cloud": ["AWS", "Azure", "Google Cloud", "Cloud"], | |
"Business": ["Project Management", "Business Analysis", "Leadership"], | |
"Tools": ["Excel", "PowerPoint", "Tableau", "Power BI", "JIRA"] | |
} | |
# Work experience extraction | |
work_headers = [ | |
"work experience", "professional experience", "employment history", | |
"work history", "experience" | |
] | |
next_section_headers = [ | |
"education", "skills", "certifications", "projects", "achievements" | |
] | |
# Process everything at once | |
lines = text.split('\n') | |
text_lower = text.lower() | |
# Skills extraction | |
found_skills = [] | |
for category, skills in skill_categories.items(): | |
category_skills = [] | |
for skill in skills: | |
if skill.lower() in text_lower: | |
category_skills.append(skill) | |
if category_skills: | |
found_skills.append(f"{category}: {', '.join(category_skills)}") | |
# Work experience extraction - simplified approach | |
work_section = [] | |
in_work_section = False | |
for idx, line in enumerate(lines): | |
line_lower = line.lower().strip() | |
# Start of work section | |
if not in_work_section: | |
if any(header in line_lower for header in work_headers): | |
in_work_section = True | |
continue | |
# End of work section | |
elif in_work_section: | |
if any(header in line_lower for header in next_section_headers): | |
break | |
if line.strip(): | |
work_section.append(line.strip()) | |
# Simplified work formatting | |
if not work_section: | |
work_experience = "Work experience not clearly identified" | |
else: | |
# Just take the first 5-7 lines of the work section as a summary | |
work_lines = [] | |
company_count = 0 | |
current_company = "" | |
for line in work_section: | |
# New company entry often has a date | |
if re.search(r'(19|20)\d{2}', line): | |
company_count += 1 | |
if company_count <= 3: # Limit to 3 most recent positions | |
current_company = line | |
work_lines.append(f"**{line}**") | |
else: | |
break | |
elif company_count <= 3 and len(work_lines) < 10: # Limit total lines | |
work_lines.append(line) | |
work_experience = "\n• " + "\n• ".join(work_lines[:7]) if work_lines else "Work experience not clearly structured" | |
skills_formatted = "\n• " + "\n• ".join(found_skills) if found_skills else "No specific technical skills clearly identified" | |
return skills_formatted, work_experience | |
##################################### | |
# Function: Summarize Resume Text - Optimized | |
##################################### | |
def summarize_resume_text(resume_text, models): | |
""" | |
Generates a structured summary of the resume text - optimized for speed | |
""" | |
start_time = time.time() | |
summarizer = models['summarizer'] | |
# First, generate a quick summary | |
max_input_length = 1024 # Model limit | |
# Only summarize the first portion of text for speed | |
text_to_summarize = resume_text[:min(len(resume_text), max_input_length)] | |
base_summary = summarizer(text_to_summarize)[0]['summary_text'] | |
# Extract information in parallel where possible | |
with concurrent.futures.ThreadPoolExecutor() as executor: | |
# These can run in parallel | |
name_future = executor.submit(extract_name, resume_text[:500]) # Only use start of text | |
age_future = executor.submit(extract_age, resume_text) | |
industry_future = executor.submit(extract_industry, resume_text, base_summary) | |
skills_work_future = executor.submit(extract_skills_and_work, resume_text) | |
# Get results | |
name = name_future.result() | |
age = age_future.result() | |
industry = industry_future.result() | |
skills, work_experience = skills_work_future.result() | |
# Format the structured summary | |
formatted_summary = f"Name: {name}\n" | |
formatted_summary += f"Age: {age}\n" | |
formatted_summary += f"Expected Job Industry: {industry}\n\n" | |
formatted_summary += f"Previous Work Experience: {work_experience}\n\n" | |
formatted_summary += f"Skills: {skills}" | |
execution_time = time.time() - start_time | |
return formatted_summary, execution_time | |
##################################### | |
# Function: Compare Candidate Summary to Company Prompt - Optimized | |
##################################### | |
def compute_suitability(candidate_summary, company_prompt, models): | |
""" | |
Compute the similarity between candidate summary and company prompt. | |
Returns a score in the range [0, 1] and execution time. | |
""" | |
start_time = time.time() | |
feature_extractor = models['feature_extractor'] | |
# Extract features (embeddings) - parallelize this | |
with concurrent.futures.ThreadPoolExecutor() as executor: | |
candidate_future = executor.submit(feature_extractor, candidate_summary) | |
company_future = executor.submit(feature_extractor, company_prompt) | |
candidate_features = candidate_future.result() | |
company_features = company_future.result() | |
# Convert to numpy arrays and flatten if needed | |
candidate_vec = np.mean(np.array(candidate_features[0]), axis=0) | |
company_vec = np.mean(np.array(company_features[0]), axis=0) | |
# Compute cosine similarity (1 - cosine distance) | |
similarity = 1 - cosine(candidate_vec, company_vec) | |
execution_time = time.time() - start_time | |
return similarity, execution_time | |
##################################### | |
# Main Streamlit Interface - with Progress Reporting | |
##################################### | |
st.title("Resume Analyzer and Company Suitability Checker") | |
st.markdown( | |
""" | |
Upload your resume file in **.docx**, **.doc**, or **.txt** format. The app performs the following tasks: | |
1. Extracts text from the resume. | |
2. Uses AI to generate a structured candidate summary with name, age, expected job industry, previous work experience, and skills. | |
3. Compares the candidate summary with a company profile to produce a suitability score. | |
""" | |
) | |
# File uploader | |
uploaded_file = st.file_uploader("Upload your resume (.docx, .doc, or .txt)", type=["docx", "doc", "txt"]) | |
# Company description text area | |
company_prompt = st.text_area( | |
"Enter the company description or job requirements:", | |
height=150, | |
help="Enter a detailed description of the company culture, role requirements, and desired skills.", | |
) | |
# Process button with optimized flow | |
if uploaded_file is not None and company_prompt and st.button("Analyze Resume"): | |
# Create a placeholder for the progress bar | |
progress_bar = st.progress(0) | |
status_text = st.empty() | |
# Step 1: Extract text | |
status_text.text("Step 1/3: Extracting text from resume...") | |
resume_text = extract_text_from_file(uploaded_file) | |
progress_bar.progress(25) | |
if resume_text.startswith("Error") or resume_text == "Unsupported file type. Please upload a .docx, .doc, or .txt file.": | |
st.error(resume_text) | |
else: | |
# Step 2: Generate summary | |
status_text.text("Step 2/3: Analyzing resume and generating summary...") | |
summary, summarization_time = summarize_resume_text(resume_text, models) | |
progress_bar.progress(75) | |
# Display summary | |
st.subheader("Candidate Summary") | |
st.markdown(summary) | |
st.info(f"Summary generated in {summarization_time:.2f} seconds") | |
# Step 3: Compute similarity | |
status_text.text("Step 3/3: Calculating compatibility with company profile...") | |
similarity_score, similarity_time = compute_suitability(summary, company_prompt, models) | |
progress_bar.progress(100) | |
# Clear status messages | |
status_text.empty() | |
# Display similarity score | |
st.subheader("Suitability Assessment") | |
st.markdown(f"**Matching Score:** {similarity_score:.2%}") | |
st.info(f"Compatibility assessment completed in {similarity_time:.2f} seconds") | |
# Provide interpretation | |
if similarity_score >= 0.85: | |
st.success("Excellent match! This candidate's profile is strongly aligned with the company requirements.") | |
elif similarity_score >= 0.70: | |
st.success("Good match! This candidate shows strong potential for the position.") | |
elif similarity_score >= 0.50: | |
st.warning("Moderate match. The candidate meets some requirements but there may be gaps.") | |
else: | |
st.error("Low match. The candidate's profile may not align well with the requirements.") |