Spaces:
Sleeping
Sleeping
File size: 27,685 Bytes
cf8a522 4077883 8e1d297 92f45fe 2e98a93 e0405b6 1a0f22c ee0c7bb e1a5956 ce7c5e8 d2d6501 d3c5eab ca31f44 8e1d297 2989c23 c6d228e d2d6501 5d07781 2989c23 d3c5eab 2989c23 d3c5eab cda9adf 2989c23 cda9adf 2989c23 cda9adf d2d6501 d3c5eab d2d6501 c6d228e d3c5eab 8e1d297 d3c5eab 501c91b d3c5eab 501c91b 92f45fe d3c5eab 2989c23 d3c5eab 97150aa cda9adf d3c5eab ce7c5e8 d3c5eab 8e1d297 d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab cda9adf d3c5eab d204788 8e1d297 2989c23 7716c5c e33d65b d3c5eab 2989c23 d3c5eab 46ff202 cda9adf d3c5eab cda9adf d3c5eab cda9adf 46ff202 d3c5eab 46ff202 d3c5eab 0d4f4dd d3c5eab cda9adf d3c5eab 3e9d890 2989c23 ce7c5e8 2989c23 d3c5eab 92e31bf d3c5eab 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf cda9adf 92e31bf cda9adf 2989c23 ee0c7bb 2989c23 92e31bf 2989c23 92e31bf 2989c23 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb cda9adf ee0c7bb 92e31bf ee0c7bb cda9adf 92e31bf ee0c7bb 92e31bf cda9adf 92e31bf d3c5eab 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb 92e31bf ee0c7bb d3c5eab 2989c23 d3c5eab 2989c23 d3c5eab cda9adf d3c5eab 97150aa cda9adf d3c5eab 46ff202 d3c5eab 46ff202 2989c23 a739933 ee0c7bb a739933 92e31bf a739933 92e31bf a739933 92e31bf a739933 92e31bf a739933 92e31bf a739933 92e31bf a739933 92e31bf ee0c7bb 0a0fafe 92e31bf 2989c23 d3c5eab 2989c23 d3c5eab cda9adf 2989c23 d3c5eab 2989c23 d3c5eab 2989c23 d3c5eab |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 |
import os
import io
import streamlit as st
import docx
import docx2txt
import tempfile
import time
import re
import math
import concurrent.futures
from functools import lru_cache
from transformers import pipeline
# Set page title and hide sidebar
st.set_page_config(
page_title="Resume-Google Job Match Analyzer",
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)
# Pre-defined company description for Google
GOOGLE_DESCRIPTION = """Google LLC, a global leader in technology and innovation, specializes in internet services, cloud computing, artificial intelligence, and software development. As part of Alphabet Inc., Google seeks candidates with strong problem-solving skills, adaptability, and collaboration abilities. Technical roles require proficiency in programming languages such as Python, Java, C++, Go, or JavaScript, with expertise in data structures, algorithms, and system design. Additionally, skills in AI, cybersecurity, UX/UI design, and digital marketing are highly valued. Google fosters a culture of innovation, expecting candidates to demonstrate creativity, analytical thinking, and a passion for cutting-edge technology."""
#####################################
# Preload Models
#####################################
@st.cache_resource(show_spinner=True)
def load_models():
"""Load models at startup"""
with st.spinner("Loading AI models... This may take a minute on first run."):
models = {}
# Use bart-base for summarization
models['summarizer'] = pipeline(
"summarization",
model="facebook/bart-base",
max_length=100,
truncation=True
)
# Load model for evaluation
models['evaluator'] = pipeline(
"text2text-generation",
model="google-t5/t5-small",
max_length=300
)
return models
# Preload models immediately when app starts
models = load_models()
#####################################
# Function: Extract Text from File
#####################################
@st.cache_data(show_spinner=False)
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."
# Limit text size for faster processing
return text[:15000] if text else text
#####################################
# Functions for Information Extraction
#####################################
# Cache the extraction functions to avoid reprocessing
@lru_cache(maxsize=32)
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#", "Go"],
"Data Science": ["Machine Learning", "Data Analysis", "Statistics", "TensorFlow", "PyTorch", "AI", "Algorithms"],
"Database": ["SQL", "MySQL", "MongoDB", "Database", "NoSQL", "PostgreSQL"],
"Web Development": ["React", "Angular", "Node.js", "Frontend", "Backend", "Full-Stack"],
"Software Development": ["Agile", "Scrum", "Git", "DevOps", "Docker", "System Design"],
"Cloud": ["AWS", "Azure", "Google Cloud", "Cloud Computing"],
"Security": ["Cybersecurity", "Network Security", "Encryption", "Security"],
"Business": ["Project Management", "Business Analysis", "Leadership", "Teamwork"],
"Design": ["UX/UI", "User Experience", "Design Thinking", "Adobe"]
}
# 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
#####################################
def summarize_resume_text(resume_text):
"""
Generates a structured summary of the resume text
"""
start_time = time.time()
# First, generate a quick summary using pre-loaded model
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 = models['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: Analyze Google Fit
#####################################
def analyze_google_fit(resume_summary):
"""
Analyze how well the candidate fits Google's requirements with detailed category breakdowns.
"""
start_time = time.time()
# Define Google's key skill categories with more detailed keywords
google_keywords = {
"technical_skills": ["python", "java", "c++", "javascript", "go", "sql", "algorithms", "data structures",
"coding", "software development", "git", "programming", "backend", "frontend", "full-stack"],
"advanced_tech": ["machine learning", "ai", "artificial intelligence", "cloud", "data science", "big data",
"tensorflow", "deep learning", "distributed systems", "kubernetes", "microservices"],
"problem_solving": ["problem solving", "analytical", "critical thinking", "troubleshooting", "debugging",
"optimization", "scalability", "system design", "complexity", "efficiency"],
"innovation": ["innovation", "creative", "creativity", "design thinking", "research", "novel solutions",
"patents", "publications", "unique approaches", "cutting-edge"],
"soft_skills": ["team", "leadership", "collaboration", "communication", "agile", "project management",
"mentoring", "cross-functional", "presentation", "stakeholder management"]
}
# Category weights with descriptive labels
category_weights = {
"technical_skills": {"weight": 0.35, "label": "Technical Programming Skills"},
"advanced_tech": {"weight": 0.25, "label": "Advanced Technology Knowledge"},
"problem_solving": {"weight": 0.20, "label": "Problem Solving Abilities"},
"innovation": {"weight": 0.10, "label": "Innovation Mindset"},
"soft_skills": {"weight": 0.10, "label": "Collaboration & Leadership"}
}
resume_lower = resume_summary.lower()
# Calculate category scores and store detailed information
category_scores = {}
category_details = {}
found_skills = {}
for category, keywords in google_keywords.items():
# Find the specific matching keywords for feedback
category_matches = [keyword for keyword in keywords if keyword in resume_lower]
found_skills[category] = category_matches
# Count matches but cap at a reasonable level
matches = len(category_matches)
total_keywords = len(keywords)
# Calculate raw percentage for this category
raw_percentage = int((matches / total_keywords) * 100)
# Apply logarithmic scaling for more realistic scores
if matches == 0:
adjusted_score = 0.0
else:
# Logarithmic scaling to prevent perfect scores
adjusted_score = min(0.95, (math.log(matches + 1) / math.log(min(total_keywords, 8) + 1)))
# Store both raw and adjusted scores for feedback
category_scores[category] = adjusted_score
category_details[category] = {
"raw_percentage": raw_percentage,
"adjusted_score": int(adjusted_score * 100),
"matching_keywords": category_matches,
"total_keywords": total_keywords,
"matches": matches
}
# Calculate weighted score
weighted_score = sum(score * category_weights[category]["weight"] for category, score in category_scores.items())
# Apply final curve to keep scores in a realistic range
match_percentage = min(92, max(35, int(weighted_score * 100)))
# Find top strengths and areas for improvement
strengths = [(category_weights[cat]["label"], details["adjusted_score"])
for cat, details in category_details.items()
if details["adjusted_score"] >= 60]
weaknesses = [(category_weights[cat]["label"], details["adjusted_score"])
for cat, details in category_details.items()
if details["adjusted_score"] < 50]
# Sort strengths and weaknesses by score
strengths.sort(key=lambda x: x[1], reverse=True)
weaknesses.sort(key=lambda x: x[1])
# Create a more detailed prompt for assessment
strength_text = ", ".join([f"{s[0]}" for s in strengths[:3]]) if strengths else "limited applicable skills"
weakness_text = ", ".join([f"{w[0]}" for w in weaknesses[:3]]) if weaknesses else "no obvious weaknesses"
# Extract key resume elements
skills_match = re.search(r'Skills:.*?(?=\n\n|$)', resume_summary, re.DOTALL)
skills_text = skills_match.group(0) if skills_match else ""
work_match = re.search(r'Previous Work Experience:.*?(?=\n\n|$)', resume_summary, re.DOTALL)
work_text = work_match.group(0) if work_match else ""
# List specific matching skills for more detailed assessment
specific_skills = []
for category, matches in found_skills.items():
if matches:
specific_skills.extend(matches[:3]) # Take up to 3 skills from each category
specific_skills_text = ", ".join(specific_skills[:8]) if specific_skills else "limited identifiable skills"
prompt = f"""
Write a detailed assessment of a job candidate for Google.
Resume highlights: Skills in {specific_skills_text}. {work_text[:200]}
Strengths: {strength_text}
Areas for improvement: {weakness_text}
Match percentage: {match_percentage}%
Write a detailed 3-5 sentence assessment beginning with "This candidate". Be specific about skills, experiences,
strengths, weaknesses, and how they align with Google. Mention specific technical skills where relevant.
"""
try:
# Generate the assessment
assessment_results = models['evaluator'](
prompt,
max_length=350, # Longer assessment
do_sample=True,
temperature=0.7, # Higher temperature for more detailed output
num_return_sequences=3
)
# Find the best response
assessment = None
for result in assessment_results:
text = result['generated_text'].strip()
# Remove prompt artifacts
text = re.sub(r'Write a detailed assessment.*?Match percentage:.*?%', '', text, flags=re.DOTALL)
text = re.sub(r'Write a detailed 3-5 sentence assessment.*?', '', text, flags=re.DOTALL)
# Check if it looks valid
if "this candidate" in text.lower() and len(text) > 100:
assessment = text
break
# If no good response was found, fall back to manual assessment
if not assessment:
assessment = generate_detailed_manual_assessment(resume_summary, strengths, weaknesses, specific_skills, match_percentage)
except Exception as e:
# Fallback to detailed manual assessment
assessment = generate_detailed_manual_assessment(resume_summary, strengths, weaknesses, specific_skills, match_percentage)
print(f"Error in assessment generation: {e}")
# Final cleanup
assessment = assessment.strip()
if not assessment.startswith("This candidate"):
assessment = f"This candidate {assessment}"
execution_time = time.time() - start_time
return assessment, match_percentage, category_details, execution_time
def generate_detailed_manual_assessment(resume_summary, strengths, weaknesses, specific_skills, match_percentage):
"""
Generate a detailed manual assessment when the model fails.
"""
# Start with strengths
if strengths:
assessment = f"This candidate demonstrates proficiency in {', '.join([s[0] for s in strengths[:2]])}. "
if specific_skills:
assessment += f"Their experience with {', '.join(specific_skills[:4])} aligns with Google's technical requirements. "
else:
assessment = "This candidate has limited alignment with Google's key requirements based on the resume provided. "
if specific_skills:
assessment += f"While they have some experience with {', '.join(specific_skills[:3])}, these skills alone may not be sufficient. "
# Add weaknesses
if weaknesses:
assessment += f"To improve their candidacy for Google, they should focus on developing stronger {' and '.join([w[0].lower() for w in weaknesses[:2]])}. "
# Add conclusion with match percentage
if match_percentage >= 70:
assessment += f"Overall, they show good potential for certain roles at Google with a {match_percentage}% match to requirements."
elif match_percentage >= 50:
assessment += f"With targeted skill development, they may become a stronger candidate for Google, currently showing a {match_percentage}% match."
else:
assessment += f"Significant skill development would be needed before they could be considered a strong Google candidate, with a current match of {match_percentage}%."
return assessment
#####################################
# Main Streamlit Interface
#####################################
st.title("Google Resume Match Analyzer")
st.markdown(
"""
Upload your resume file in **.docx**, **.doc**, or **.txt** format to see how well you match with Google's hiring requirements. The app performs the following tasks:
1. Extracts text from your resume.
2. Uses AI to generate a structured candidate summary.
3. Analyzes how well your profile fits Google's requirements.
"""
)
# Display Google's requirements
with st.expander("Google's Requirements", expanded=False):
st.write(GOOGLE_DESCRIPTION)
# File uploader
uploaded_file = st.file_uploader("Upload your resume (.docx, .doc, or .txt)", type=["docx", "doc", "txt"])
# Process button with optimized flow
if uploaded_file is not None and st.button("Analyze My Google Fit"):
# 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)
progress_bar.progress(50)
# Display summary
st.subheader("Your Resume Summary")
st.markdown(summary)
st.info(f"Summary generated in {summarization_time:.2f} seconds")
# Step 3: Generate Google fit assessment
status_text.text("Step 3/3: Evaluating Google fit...")
assessment, match_percentage, category_details, assessment_time = analyze_google_fit(summary)
progress_bar.progress(100)
# Clear status messages
status_text.empty()
# Display Google fit results
st.subheader("Google Fit Assessment")
# Display match percentage with appropriate color and emoji - with more realistic thresholds
if match_percentage >= 85:
st.success(f"**Overall Google Match Score:** {match_percentage}% 🌟")
elif match_percentage >= 70:
st.success(f"**Overall Google Match Score:** {match_percentage}% ✅")
elif match_percentage >= 50:
st.warning(f"**Overall Google Match Score:** {match_percentage}% ⚠️")
else:
st.error(f"**Overall Google Match Score:** {match_percentage}% 🔍")
# NEW ADDITION: Add detailed score breakdown
st.markdown("### Score Breakdown")
# Create a neat table with category scores
breakdown_data = []
for category, details in category_details.items():
label = {"technical_skills": "Technical Programming Skills",
"advanced_tech": "Advanced Technology Knowledge",
"problem_solving": "Problem Solving Abilities",
"innovation": "Innovation Mindset",
"soft_skills": "Collaboration & Leadership"}[category]
# Create a visual indicator for the score
score = details["adjusted_score"]
# Add formatted breakdown row
breakdown_data.append({
"Category": label,
"Score": f"{score}%",
"Matching Skills": ", ".join(details["matching_keywords"][:3]) if details["matching_keywords"] else "None detected"
})
# Convert to DataFrame and display
import pandas as pd
breakdown_df = pd.DataFrame(breakdown_data)
st.table(breakdown_df)
# Show a note about how scores are calculated
with st.expander("How are these scores calculated?"):
st.markdown("""
- **Technical Programming Skills** (35% of total): Evaluates coding languages, software development tools, and core programming concepts
- **Advanced Technology Knowledge** (25% of total): Assesses experience with cutting-edge technologies like AI, ML, cloud systems
- **Problem Solving Abilities** (20% of total): Measures analytical thinking, algorithm design, and optimization skills
- **Innovation Mindset** (10% of total): Looks for creativity, research orientation, and novel approaches
- **Collaboration & Leadership** (10% of total): Evaluates team skills, communication, and project management
Scores are calculated based on keyword matches in your resume, with diminishing returns applied (first few skills matter more than later ones).
""")
# Display assessment
st.markdown("### Expert Assessment")
st.markdown(assessment)
st.info(f"Assessment completed in {assessment_time:.2f} seconds")
# Add potential next steps based on the match percentage
st.subheader("Recommended Next Steps")
if match_percentage >= 80:
st.markdown("""
- Consider applying for positions at Google that match your experience
- Prepare for technical interviews by practicing algorithms and system design
- Review Google's interview process and STAR method for behavioral questions
""")
elif match_percentage >= 60:
st.markdown("""
- Focus on strengthening your technical skills and advanced technology knowledge
- Work on projects that demonstrate your skills in Google's key technology areas
- Consider taking additional courses in algorithms, system design, or other Google focus areas
""")
else:
st.markdown("""
- Build more relevant experience in software development or technical areas
- Develop projects showcasing problem-solving abilities and technical skills
- Consider gaining more experience before applying, or target specific Google roles that better match your profile
""") |