| import gradio as gr
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| import google.generativeai as genai
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| from bs4 import BeautifulSoup, NavigableString
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| import re
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| import json
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| import random
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| import os
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|
|
|
|
| BLACKLIST_WORDS = [
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| "landscape", "realm", "navigate", "unveil", "explore", "transformative",
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| "encompass", "examine", "crucial", "discover", "dive", "delve",
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| "uncover", "unlock", "elevate", "unleash", "harness"
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| ]
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|
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| BRITISH_MAPPINGS = {
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| "color": "colour", "flavor": "flavour", "humor": "humour", "labor": "labour",
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| "neighbor": "neighbour", "favor": "favour", "honor": "honour", "behavior": "behaviour",
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| "center": "centre", "fiber": "fibre", "liter": "litre", "theater": "theatre",
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| "meter": "metre", "analyze": "analyse", "breathalyze": "breathalyse", "paralyze": "paralyse",
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| "catalyze": "catalyse", "organization": "organisation", "realize": "realise",
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| "recognize": "recognise", "standardize": "standardise", "appetizer": "appetiser",
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| "leukemia": "leukaemia", "maneuver": "manoeuvre", "estrogen": "oestrogen",
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| "pediatric": "paediatric", "defense": "defence", "license": "licence",
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| "offense": "offence", "pretense": "pretence", "traveler": "traveller", "modeling": "modelling",
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| "cancelled": "cancelled",
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| "program": "programme",
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| }
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|
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| SOCIAL_PROOF_TEMPLATES = [
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| "We recently hired {KEYWORD} for our project, and the results were outstanding. The team was professional, efficient, and delivered exactly what we needed. I highly recommend their services to anyone looking for reliable {KEYWORD_LOWER}.",
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| "I was struggling to find trustworthy {KEYWORD_LOWER} until I found this company. They exceeded my expectations with their attention to detail and timely completion. It was a refreshing experience to work with such dedicated professionals.",
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| "If you need {KEYWORD_LOWER}, look no further. Their expertise is evident in the quality of their work, and the customer service is top-notch. I am completely satisfied with the outcome and will definitely use them again.",
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| "Finding a dependable {KEYWORD} can be difficult, but this team made it easy. They communicated clearly throughout the process and finished the job to a high standard. I'm very impressed with their workmanship."
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| ]
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|
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| def capitalize(s):
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| if not s: return ""
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| return s[0].upper() + s[1:]
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|
|
| def parse_growmatic_data(text):
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| term_map = {}
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| if not text: return term_map
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|
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| regex = r'["\']?([\w\s]+)["\']?\s*[:=]\s*(\d+)%?'
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| matches = re.findall(regex, text)
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| for term, score in matches:
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| term_lower = term.strip().lower()
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| if term_lower:
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| term_map[term_lower] = int(score)
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| return term_map
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|
|
| def generate_titles(main_keyword, term_map):
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| titles = []
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|
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| templates = [
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| "{KEYWORD} in [location] - {TERM_A} [zip]",
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| "{KEYWORD} in [location] - {TERM_B} Services [zip]",
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| "Expert {KEYWORD} in [location] - {TERM_C} [zip]",
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| "{KEYWORD} Services in [location] - {TERM_A} [zip]",
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| "Leading {KEYWORD} in [location] - {TERM_B} [zip]",
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| "{KEYWORD} Specialists in [location] - {TERM_C} [zip]",
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| "Best {KEYWORD} in [location] - {TERM_A} Solutions [zip]"
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| ]
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| sorted_terms = sorted(term_map.keys(), key=lambda k: term_map[k], reverse=True)
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|
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| term_a = sorted_terms[0] if len(sorted_terms) > 0 else "Projects"
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| term_b = sorted_terms[1] if len(sorted_terms) > 1 else "Installations"
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| term_c = sorted_terms[2] if len(sorted_terms) > 2 else "Solutions"
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|
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| for tmpl in templates:
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| t = tmpl.replace("{KEYWORD}", main_keyword)
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| t = t.replace("{TERM_A}", capitalize(term_a))
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| t = t.replace("{TERM_B}", capitalize(term_b))
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| t = t.replace("{TERM_C}", capitalize(term_c))
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| titles.append(t)
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|
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|
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| variations = [
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| f"{main_keyword} {capitalize(term_a)}",
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| f"{main_keyword} {capitalize(term_b)} Services",
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| f"{capitalize(term_a)} & {main_keyword}"
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| ]
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| return titles + variations
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|
|
| def calculate_score(title, term_map):
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| title_lower = title.lower()
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|
|
|
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| for bad_word in BLACKLIST_WORDS:
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| if bad_word in title_lower:
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| return {"title": title, "score": 0, "terms": "BLACKLISTED"}
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|
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| total_score = 0
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| matched_terms = []
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|
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| for term, weight in term_map.items():
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| if term in title_lower:
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| total_score += weight
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| matched_terms.append(f"{term} ({weight}%)")
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|
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|
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| final_score = round(total_score / 30, 1)
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| if final_score > 10: final_score = 10
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|
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| return {
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| "title": title,
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| "score": final_score,
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| "terms": ", ".join(matched_terms)
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| }
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|
|
| def process_text_nodes(html_content, callback):
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| if not html_content: return ""
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| soup = BeautifulSoup(html_content, 'html.parser')
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|
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|
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| def walk(node):
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| if isinstance(node, NavigableString):
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| if node.parent.name not in ['script', 'style']:
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| new_text = callback(str(node))
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| if new_text != str(node):
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| node.replace_with(new_text)
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| elif hasattr(node, 'children'):
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| for child in node.children:
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| walk(child)
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|
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| walk(soup)
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| return str(soup)
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|
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| def convert_to_british(html_content):
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| if not html_content: return ""
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|
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| def replacer(text):
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| processed = text
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| for us, uk in BRITISH_MAPPINGS.items():
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|
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| pattern = re.compile(r'\b' + re.escape(us) + r'\b', re.IGNORECASE)
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|
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| def match_handler(m):
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|
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| word = m.group(0)
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| if word[0].isupper():
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| return capitalize(uk)
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| return uk
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|
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| processed = pattern.sub(match_handler, processed)
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| return processed
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|
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| return process_text_nodes(html_content, replacer)
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|
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| def clean_homepage_content(html_content):
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| if not html_content: return ""
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|
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| def replacer(text):
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| clean = text
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|
|
|
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| phrases_to_remove = [
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| r'\s+in\s+\[location\]', r'in\s+\[location\]',
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| r'\s+across\s+the\s+\[location\]', r'across\s+the\s+\[location\]',
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| r'\s+across\s+\[location\]', r'across\s+\[location\]',
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| r'\s+around\s+the\s+\[location\]', r'around\s+the\s+\[location\]',
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| r'\s+nearby\s+\[location\]', r'nearby\s+\[location\]',
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| r'\s+throughout\s+\[location\]', r'throughout\s+\[location\]'
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| ]
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| for phrase in phrases_to_remove:
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| clean = re.sub(phrase, '', clean, flags=re.IGNORECASE)
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|
|
|
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| tags_to_remove = [
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| r'\[location\]', r'\[county\]', r'\[region\]', r'\[zip\]'
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| ]
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| for tag in tags_to_remove:
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| clean = re.sub(tag, '', clean, flags=re.IGNORECASE)
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| footer_regex = r'in\s*\[region\]\.?\s*Here\s*are\s*some\s*towns\s*we\s*cover\s*near\s*\[location\]\s*\[zip\]\s*\[cities[^\]]*\]'
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| clean = re.sub(footer_regex, '', clean, flags=re.IGNORECASE | re.DOTALL)
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|
|
|
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| clean = re.sub(r'\s{2,}', ' ', clean)
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| clean = re.sub(r'\s+\.', '.', clean)
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| clean = re.sub(r'\s+\?', '?', clean)
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| clean = re.sub(r'\s+\,', ',', clean)
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|
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| return clean.strip()
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|
|
| return process_text_nodes(html_content, replacer)
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|
|
|
|
|
|
|
|
| def call_gemini(prompt, api_key, model_name="gemini-1.5-flash"):
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| if not api_key: return None
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| try:
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| genai.configure(api_key=api_key)
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| model = genai.GenerativeModel(model_name)
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| response = model.generate_content(prompt)
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| return response.text
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| except Exception as e:
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| return f"Error: {str(e)}"
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|
|
|
|
|
|
| def run_automation(main_keyword, site_link, growmatic_data, api_key, article_content, model_selection):
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| if not main_keyword:
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| return "Error: Main Keyword is required.", ""
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|
|
| term_map = parse_growmatic_data(growmatic_data)
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|
|
|
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| magic_output_html = ""
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|
|
|
|
| if api_key:
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|
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| terms_str = ", ".join([f"{k} ({v}%)" for k, v in term_map.items()])
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| prompt = f"""Act as an SEO expert.
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| Main Keyword: "{main_keyword}"
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| Semantic Terms (Growmatic Data): {terms_str}
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|
|
| Task:
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| 1. Generate 3 highly optimized Meta Titles for a page targeting "{main_keyword}". Use the semantic terms to increase relevance.
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| 2. Generate a list of 5-8 Meta Keywords (comma separated).
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| 3. Select the "Best" Title from the 3 options based on SEO scoring principles.
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|
|
| Output JSON format ONLY (no markdown):
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| {{
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| "metaTitles": ["Title 1", "Title 2", "Title 3"],
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| "bestTitle": "The Best Title",
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| "metaKeywords": "keyword1, keyword2, keyword3"
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| }}"""
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|
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| llm_resp = call_gemini(prompt, api_key, model_selection)
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|
|
| try:
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|
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| clean_json = llm_resp.replace('```json', '').replace('```', '').strip()
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| data = json.loads(clean_json)
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|
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| magic_output_html += "<h3>--- GENERATED SEO TITLES (LLM) ---</h3>"
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| for t in data.get("metaTitles", []):
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| is_best = t == data.get("bestTitle")
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| style = "color: blue; font-weight: bold;" if is_best else ""
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| suffix = "(Best Match)" if is_best else ""
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| magic_output_html += f'<p style="{style}">• {t} {suffix}</p>'
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|
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| magic_output_html += f"<p><strong>Meta Keywords:</strong> {data.get('metaKeywords', '')}</p><br>"
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|
|
| except:
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| magic_output_html += f"<p style='color:red'>Error parsing LLM response: {llm_resp}</p>"
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|
|
| else:
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|
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| titles = generate_titles(main_keyword, term_map)
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| scored = [calculate_score(t, term_map) for t in titles]
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| scored.sort(key=lambda x: x['score'], reverse=True)
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|
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| magic_output_html += "<h3>--- GENERATED SEO TITLES (Template) ---</h3>"
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| for item in scored[:5]:
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| magic_output_html += f"<p>• [Score: {item['score']}] {item['title']}</p>"
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| magic_output_html += "<br>"
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|
|
|
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| social_proof_text = ""
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| if api_key:
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| sp_prompt = f"""Write 2 positive testimonials for a service provider offering "{main_keyword}".
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| Create two very non-generic names including last names.
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| Each testimonial should be max 3-4 sentences.
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| Focus on professionalism, result quality, and ease of working with them."""
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| social_proof_text = call_gemini(sp_prompt, api_key, model_selection)
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| else:
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| tmpl = random.choice(SOCIAL_PROOF_TEMPLATES)
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| social_proof_text = tmpl.replace("{KEYWORD}", main_keyword).replace("{KEYWORD_LOWER}", main_keyword.lower())
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|
|
| magic_output_html += f"<h3>--- MAGIC PAGE METADATA ---</h3>"
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| magic_output_html += f"<p><strong>Target Keyword:</strong> {main_keyword}</p>"
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| magic_output_html += f"<p><strong>Site URL:</strong> {site_link}</p><br>"
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|
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| magic_output_html += f"<h3>--- SOCIAL PROOF ---</h3>"
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| magic_output_html += f"<p>{social_proof_text.replace(chr(10), '<br>')}</p>"
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|
|
|
|
| clean_html = clean_homepage_content(article_content)
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| british_html = convert_to_british(clean_html)
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|
|
| return magic_output_html, british_html
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|
|
|
|
|
|
|
|
| with gr.Blocks(title="Content Automation Tool") as app:
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| gr.Markdown("# Content Automation Tool (Gradio Edition)")
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| gr.Markdown("Generate Magic Page & Optimized Homepage Content Instantly")
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|
|
| with gr.Row():
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| with gr.Column():
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| main_keyword = gr.Textbox(label="Main Keyword", placeholder="e.g. Suspended Ceiling Contractors")
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| site_link = gr.Textbox(label="Site Link", placeholder="e.g. https://example.com")
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| growmatic_data = gr.TextArea(label="Growmatic Data", placeholder='"suspended": 100%, "ceiling": 73%')
|
|
|
| with gr.Row():
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| api_key = gr.Textbox(label="Gemini API Key", type="password", placeholder="AIza...")
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| model_selection = gr.Dropdown(
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| choices=["gemini-1.5-flash", "gemini-1.5-pro", "gemini-1.0-pro"],
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| value="gemini-1.5-flash",
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| label="Gemini Model"
|
| )
|
|
|
| with gr.Column():
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| article_content = gr.Textbox(label="Article Content (HTML/Text)", lines=15, placeholder="Paste content with [tags] here...")
|
|
|
| generate_btn = gr.Button("Generate Output ✨", variant="primary")
|
|
|
| with gr.Row():
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| with gr.Column():
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| gr.Markdown("### Magic Page Output")
|
| magic_output = gr.HTML(label="Magic Page Result")
|
|
|
| with gr.Column():
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| gr.Markdown("### Homepage Output")
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| home_output = gr.HTML(label="Homepage Result")
|
|
|
| generate_btn.click(
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| fn=run_automation,
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| inputs=[main_keyword, site_link, growmatic_data, api_key, article_content, model_selection],
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| outputs=[magic_output, home_output]
|
| )
|
|
|
| if __name__ == "__main__":
|
| app.launch()
|
|
|