ContentGeneration / src /utils_functions.py
daemon03's picture
content_generator v1.0
edd00ca
raw
history blame
11.5 kB
import os
import json
import pickle
import hashlib
import httpx
from datetime import datetime, timezone
from pymongo import MongoClient
from tenacity import retry, stop_after_attempt, wait_exponential
from dotenv import load_dotenv
load_dotenv()
# ============================================================
# PIPELINE METRICS CLASS (Complete tracking system)
# ============================================================
class PipelineMetrics:
"""
Complete metrics tracking for pipeline execution.
Tracks timing, stages, cache hits, and saves to MongoDB.
"""
def __init__(self, topic, mode):
"""Initialize metrics tracker"""
self.topic = topic
self.mode = mode
self.run_id = f"{mode}_{int(datetime.now().timestamp())}"
self.start_time = datetime.now(timezone.utc)
self.stages = {}
self.current_stage = None
self.current_stage_start = None
self.cache_hit = False
self.cache_type = None
self.error_occurred = False
self.error_message = None
def start_stage(self, stage_name):
"""Start tracking a stage"""
self.current_stage = stage_name
self.current_stage_start = datetime.now(timezone.utc)
print(f" πŸ“Š [METRICS] Starting: {stage_name}")
def end_stage(self, stage_name, output_summary=None):
"""End tracking a stage"""
if self.current_stage_start:
duration = (datetime.now(timezone.utc) - self.current_stage_start).total_seconds()
self.stages[stage_name] = {
"duration_seconds": duration,
"timestamp": datetime.now(timezone.utc),
"output_summary": output_summary
}
print(f" βœ“ Stage '{stage_name}' completed in {duration:.2f}s")
def set_cache_hit(self, cache_type="mongodb"):
"""Record cache hit"""
self.cache_hit = True
self.cache_type = cache_type
print(f" πŸ’Ύ Cache hit: {cache_type}")
def set_error(self, error_message):
"""Record error"""
self.error_occurred = True
self.error_message = error_message
print(f" ❌ Error: {error_message}")
def end(self):
"""End pipeline tracking"""
total_duration = (datetime.now(timezone.utc) - self.start_time).total_seconds()
self.metrics = {
"run_id": self.run_id,
"topic": self.topic,
"mode": self.mode,
"started_at": self.start_time,
"completed_at": datetime.now(timezone.utc),
"total_duration_seconds": total_duration,
"stages": self.stages,
"cache_hit": self.cache_hit,
"cache_type": self.cache_type,
"error_occurred": self.error_occurred,
"error_message": self.error_message
}
print(f"\n πŸ“Š Pipeline Complete: {total_duration:.2f}s total")
return self.metrics
def save_metrics(self):
"""Save metrics to MongoDB"""
try:
mongo_uri = os.getenv("MONGO_URI")
if not mongo_uri:
print(" ⚠️ MONGO_URI not set - skipping metrics save")
return False
client = MongoClient(mongo_uri, serverSelectionTimeoutMS=5000)
db = client["learnToGo"]
# Collections based on mode
if self.mode == "technical":
metrics_col = db["pipelinemetrics"]
stages_col = db["stageoutputs"]
else:
metrics_col = db["operational_pipeline_metrics"]
stages_col = db["operational_stage_outputs"]
# Save metrics
metrics_col.insert_one(self.metrics)
# Save stage details
for stage_name, stage_data in self.stages.items():
stage_doc = {
"run_id": self.run_id,
"topic": self.topic,
"mode": self.mode,
"stage_name": stage_name,
"stage_data": stage_data
}
stages_col.insert_one(stage_doc)
print(f" βœ“ Metrics saved to MongoDB")
return True
except Exception as e:
print(f" ⚠️ Could not save metrics: {e}")
return False
# ============================================================
# MONGODB CONNECTION & COLLECTIONS
# ============================================================
@retry(
stop=stop_after_attempt(3),
wait=wait_exponential(multiplier=1, min=2, max=10)
)
def get_mongo_client():
"""Get MongoDB client from environment variables"""
mongo_uri = os.getenv("MONGO_URI")
if not mongo_uri:
raise ValueError("MONGO_URI not set in .env")
return MongoClient(mongo_uri, serverSelectionTimeoutMS=5000)
def get_collections():
"""Get MongoDB collections for Technical and Operational keywords"""
client = get_mongo_client()
db = client["learnToGo"]
technical_collection = db["Keywords"]
operational_collection = db["OperationalKeywords"]
# Create indexes
technical_collection.create_index("aliases")
operational_collection.create_index("aliases")
return technical_collection, operational_collection, db
# ============================================================
# URL CACHING (Pickle-based - FIXED with proper dict structure)
# ============================================================
URL_CACHE_FILE = "/tmp/url_validation_cache.pkl"
def load_url_cache():
"""Load URL validation cache from pickle file"""
try:
if os.path.exists(URL_CACHE_FILE):
with open(URL_CACHE_FILE, 'rb') as f:
cache = pickle.load(f)
print(f"βœ“ Loaded URL cache with {len(cache)} entries")
return cache
except Exception as e:
print(f"⚠️ Could not load URL cache: {e}")
return {}
def save_url_cache(cache):
"""Save URL validation cache to pickle file"""
try:
with open(URL_CACHE_FILE, 'wb') as f:
pickle.dump(cache, f)
print(f"βœ“ Saved URL cache with {len(cache)} entries")
return True
except Exception as e:
print(f"⚠️ Could not save URL cache: {e}")
return False
def get_url_hash(url):
"""Generate MD5 hash for URL as cache key"""
return hashlib.md5(url.encode()).hexdigest()
@retry(
stop=stop_after_attempt(2),
wait=wait_exponential(multiplier=1, min=2, max=5)
)
def validate_url_cached(url, timeout=5):
"""Check if URL is valid with cache check - FIXED to return dict"""
url_hash = get_url_hash(url)
# Load cache
url_cache = load_url_cache()
# Check cache
if url_hash in url_cache:
print(f" πŸ’Ύ URL cache hit: {url[:50]}...")
return url_cache[url_hash]['valid'] # ← Returns boolean from dict
# Validate URL
try:
response = httpx.head(url, timeout=timeout, follow_redirects=True)
is_valid = response.status_code in [200, 301, 302, 303, 307, 308]
except:
try:
response = httpx.get(url, timeout=timeout, follow_redirects=True)
is_valid = response.status_code == 200
except:
is_valid = False
# Save to cache as DICT with valid, checked_at, url
url_cache[url_hash] = {
'valid': is_valid,
'checked_at': datetime.now(timezone.utc).isoformat(),
'url': url
}
save_url_cache(url_cache)
print(f" βœ“ URL validated: {url[:50]}... = {is_valid}")
return is_valid
# ============================================================
# CACHE OPERATIONS
# ============================================================
@retry(
stop=stop_after_attempt(3),
wait=wait_exponential(multiplier=1, min=2, max=10)
)
def check_cache(topic, collection):
"""
Check MongoDB cache using normalized keyword - NO LLM call!
Includes retry logic for connection failures.
"""
try:
normalized = topic.lower().strip()
print(f"πŸ” Checking cache for: {normalized}")
cached = collection.find_one({"aliases": normalized})
if cached:
print(f"βœ… CACHE HIT! Found topic: {cached['topic']}")
return cached['content'], True
else:
print(f"❌ CACHE MISS - Will run full pipeline")
return None, False
except Exception as e:
print(f"❌ Cache lookup error: {e}")
raise
@retry(
stop=stop_after_attempt(3),
wait=wait_exponential(multiplier=1, min=2, max=10)
)
def save_to_cache(topic, content, collection):
"""
Save generated slides to MongoDB.
Includes retry logic for connection failures.
"""
try:
aliases = content.get('aliases', [topic.lower().strip()])
document = {
"topic": content.get('topic', topic),
"aliases": aliases,
"createdAt": datetime.now(timezone.utc),
"content": content
}
result = collection.insert_one(document)
print(f"βœ… Saved to MongoDB - Document ID: {result.inserted_id}")
return result.inserted_id
except Exception as e:
print(f"❌ Cache save error: {e}")
raise
# ============================================================
# URL VALIDATION & SELECTION
# ============================================================
def validate_and_select_urls(corrected_json):
"""
Validate ALL URLs and select best ones.
Uses cached validation to avoid repeated HTTP requests.
"""
urls = corrected_json.get("urls", [])
print(f"Validating {len(urls)} URLs with caching...")
valid_urls = []
validation_results = []
for url_obj in urls:
url = url_obj.get("url")
if url:
is_valid = validate_url_cached(url)
validation_results.append({
"url": url,
"title": url_obj.get("title"),
"valid": is_valid
})
if is_valid:
valid_urls.append(url_obj)
# Keep only best 5 URLs
valid_urls = valid_urls[:5]
print(f"βœ“ Kept {len(valid_urls)} valid URLs")
corrected_json["urls"] = valid_urls
return corrected_json, validation_results
# ============================================================
# INPUT VALIDATION (50 char limit for both technical and operational)
# ============================================================
@retry(
stop=stop_after_attempt(3),
wait=wait_exponential(multiplier=1, min=1, max=3)
)
def validate_and_sanitize_topic(topic):
"""
Validate and sanitize user input before pipeline.
Prevents errors and invalid topics.
FIXED: Both technical and operational now have 50 char limit
"""
if not topic or not topic.strip():
raise ValueError("❌ Topic cannot be empty.")
topic = topic.strip()
if len(topic) < 1:
raise ValueError("❌ Topic must be at least 1 character long.")
if len(topic) > 50:
raise ValueError("❌ Topic cannot exceed 50 characters.")
print(f"βœ… Input validated: '{topic}'")
return topic
print("βœ“ All utility functions ready with metrics, URL caching, and retry logic")