--- name: python-pipeline description: Python data processing pipelines with modular architecture. Use when building content processing workflows, implementing dispatcher patterns, integrating Google Sheets/Drive APIs, or creating batch processing systems. Covers patterns from rosen-scraper, image-analyzer, and social-scraper projects. --- # Python data pipeline development Patterns for building production-quality data processing pipelines with Python. ## Architecture patterns ### Modular processor architecture ``` src/ ├── workflow.py # Main orchestrator ├── dispatcher.py # Content-type router ├── processors/ │ ├── __init__.py │ ├── base.py # Abstract base class │ ├── article_processor.py │ ├── video_processor.py │ └── audio_processor.py ├── services/ │ ├── sheets_service.py # Google Sheets integration │ ├── drive_service.py # Google Drive integration │ └── ai_service.py # Gemini API wrapper ├── utils/ │ ├── logger.py │ └── rate_limiter.py └── config.py # Environment configuration ``` ### Dispatcher pattern ```python from typing import Protocol from urllib.parse import urlparse class Processor(Protocol): def can_process(self, url: str) -> bool: ... def process(self, url: str, metadata: dict) -> dict: ... class Dispatcher: def __init__(self): self.processors: list[Processor] = [ ArticleProcessor(), VideoProcessor(), AudioProcessor(), SocialProcessor(), ] def dispatch(self, url: str, metadata: dict) -> dict: for processor in self.processors: if processor.can_process(url): return processor.process(url, metadata) raise ValueError(f"No processor found for URL: {url}") # Pattern-based routing class ArticleProcessor: DOMAINS = ['nytimes.com', 'washingtonpost.com', 'medium.com'] def can_process(self, url: str) -> bool: domain = urlparse(url).netloc.replace('www.', '') return any(d in domain for d in self.DOMAINS) ``` ### CSV-based pipeline workflow ```python import csv from pathlib import Path from dataclasses import dataclass, asdict from typing import Iterator @dataclass class Record: id: str url: str title: str | None = None content: str | None = None status: str = 'pending' def read_input(path: Path) -> Iterator[Record]: with open(path, 'r', encoding='utf-8') as f: reader = csv.DictReader(f) for row in reader: yield Record(**{k: v for k, v in row.items() if k in Record.__annotations__}) def write_output(records: list[Record], path: Path): with open(path, 'w', encoding='utf-8', newline='') as f: writer = csv.DictWriter(f, fieldnames=list(Record.__annotations__.keys())) writer.writeheader() writer.writerows(asdict(r) for r in records) def process_batch(input_path: Path, output_path: Path): dispatcher = Dispatcher() results = [] for record in read_input(input_path): try: processed = dispatcher.dispatch(record.url, asdict(record)) record.status = 'completed' record.title = processed.get('title') record.content = processed.get('content') except Exception as e: record.status = f'failed: {e}' results.append(record) write_output(results, output_path) ``` ## Google Sheets integration ```python import gspread from google.oauth2.service_account import Credentials SCOPES = [ 'https://www.googleapis.com/auth/spreadsheets', 'https://www.googleapis.com/auth/drive' ] class SheetsService: def __init__(self, credentials_path: str): creds = Credentials.from_service_account_file(credentials_path, scopes=SCOPES) self.client = gspread.authorize(creds) def get_worksheet(self, spreadsheet_id: str, sheet_name: str): spreadsheet = self.client.open_by_key(spreadsheet_id) return spreadsheet.worksheet(sheet_name) def read_all(self, worksheet) -> list[dict]: return worksheet.get_all_records() def append_row(self, worksheet, row: list): worksheet.append_row(row, value_input_option='USER_ENTERED') def batch_update(self, worksheet, updates: list[dict]): """Update multiple cells efficiently.""" # Format: [{'range': 'A1', 'values': [[value]]}] worksheet.batch_update(updates, value_input_option='USER_ENTERED') def find_row_by_id(self, worksheet, id_value: str, id_column: int = 1) -> int | None: """Find row number by ID value.""" try: cell = worksheet.find(id_value, in_column=id_column) return cell.row except gspread.CellNotFound: return None ``` ## Rate limiting ```python import time from functools import wraps from ratelimit import limits, sleep_and_retry # Simple rate limiter @sleep_and_retry @limits(calls=10, period=60) # 10 calls per minute def rate_limited_api_call(url: str): return requests.get(url) # Custom rate limiter with backoff class RateLimiter: def __init__(self, calls_per_minute: int = 10): self.delay = 60 / calls_per_minute self.last_call = 0 def wait(self): elapsed = time.time() - self.last_call if elapsed < self.delay: time.sleep(self.delay - elapsed) self.last_call = time.time() # Usage limiter = RateLimiter(calls_per_minute=10) def fetch_with_rate_limit(url: str): limiter.wait() return requests.get(url) ``` ## Progress tracking with resume capability ```python import json from pathlib import Path class ProgressTracker: def __init__(self, progress_file: Path): self.progress_file = progress_file self.state = self._load() def _load(self) -> dict: if self.progress_file.exists(): return json.loads(self.progress_file.read_text()) return {'processed_ids': [], 'last_row': 0, 'errors': []} def save(self): self.progress_file.write_text(json.dumps(self.state, indent=2)) def mark_processed(self, record_id: str): self.state['processed_ids'].append(record_id) self.save() def is_processed(self, record_id: str) -> bool: return record_id in self.state['processed_ids'] def log_error(self, record_id: str, error: str): self.state['errors'].append({'id': record_id, 'error': error}) self.save() # Usage in workflow tracker = ProgressTracker(Path('progress.json')) for record in records: if tracker.is_processed(record.id): continue # Skip already processed try: process(record) tracker.mark_processed(record.id) except Exception as e: tracker.log_error(record.id, str(e)) ``` ## Gemini AI integration ```python import google.generativeai as genai from pathlib import Path genai.configure(api_key=os.environ['GEMINI_API_KEY']) class AIService: def __init__(self, model: str = 'gemini-2.0-flash'): self.model = genai.GenerativeModel(model) def categorize(self, text: str, taxonomy: dict) -> dict: prompt = f"""Analyze this content and categorize it. Content: {text[:10000]} # Truncate to avoid token limits Taxonomy: {json.dumps(taxonomy, indent=2)} Respond with JSON containing: - category: one of the taxonomy categories - tags: list of relevant tags - summary: 2-3 sentence summary """ response = self.model.generate_content(prompt) return json.loads(response.text) def extract_entities(self, text: str) -> list[dict]: prompt = f"""Extract named entities from this text. Text: {text[:10000]} For each entity, provide: - name: entity name - type: Person, Organization, Location, Event, Work, or Concept - prominence: 1-10 score based on importance in text Respond with JSON array of entities. """ response = self.model.generate_content(prompt) return json.loads(response.text) # Batch processing with cost tracking class BatchAIProcessor: def __init__(self, ai_service: AIService): self.ai = ai_service self.total_tokens = 0 self.cost_per_1k_tokens = 0.00025 # Adjust for your model def process_batch(self, items: list[str]) -> list[dict]: results = [] for item in items: result = self.ai.categorize(item, TAXONOMY) self.total_tokens += len(item) // 4 # Rough estimate results.append(result) return results @property def estimated_cost(self) -> float: return (self.total_tokens / 1000) * self.cost_per_1k_tokens ``` ## Image classification with Gemini Vision ```python import google.generativeai as genai from PIL import Image from pathlib import Path def classify_image(image_path: Path, categories: list[str]) -> dict: model = genai.GenerativeModel('gemini-2.0-flash') image = Image.open(image_path) prompt = f"""Analyze this image and classify it. Available categories: {', '.join(categories)} Respond with JSON: {{ "category": "category name", "description": "brief description", "suggested_filename": "descriptive-filename-with-dashes", "tags": ["tag1", "tag2", "tag3"] }} """ response = model.generate_content([prompt, image]) return json.loads(response.text) def organize_images(source_dir: Path, output_dir: Path): categories = ['Nature', 'People', 'Architecture', 'Art', 'Technology', 'Other'] for image_path in source_dir.glob('*.{jpg,png,webp}'): try: result = classify_image(image_path, categories) category_dir = output_dir / result['category'] category_dir.mkdir(exist_ok=True) new_name = f"{result['suggested_filename']}{image_path.suffix}" image_path.rename(category_dir / new_name) except Exception as e: (output_dir / 'failures').mkdir(exist_ok=True) image_path.rename(output_dir / 'failures' / image_path.name) ``` ## Environment configuration ```python from pathlib import Path from dotenv import load_dotenv import os load_dotenv() class Config: # API Keys GEMINI_API_KEY = os.environ['GEMINI_API_KEY'] GOOGLE_SHEET_ID = os.environ['GOOGLE_SHEET_ID'] # Paths PROJECT_ROOT = Path(__file__).parent.parent DATA_DIR = PROJECT_ROOT / 'data' OUTPUT_DIR = PROJECT_ROOT / 'output' CREDENTIALS_PATH = PROJECT_ROOT / 'google_credentials.json' # Rate limits API_CALLS_PER_MINUTE = 10 BATCH_SIZE = 50 @classmethod def ensure_dirs(cls): cls.DATA_DIR.mkdir(exist_ok=True) cls.OUTPUT_DIR.mkdir(exist_ok=True) ``` ## Logging setup ```python import logging from pathlib import Path from datetime import datetime def setup_logging(log_dir: Path, name: str = 'pipeline') -> logging.Logger: log_dir.mkdir(exist_ok=True) logger = logging.getLogger(name) logger.setLevel(logging.DEBUG) # Console handler (INFO+) console = logging.StreamHandler() console.setLevel(logging.INFO) console.setFormatter(logging.Formatter('%(levelname)s: %(message)s')) # File handler (DEBUG+) log_file = log_dir / f"{name}_{datetime.now():%Y%m%d_%H%M%S}.log" file_handler = logging.FileHandler(log_file) file_handler.setLevel(logging.DEBUG) file_handler.setFormatter(logging.Formatter( '%(asctime)s - %(name)s - %(levelname)s - %(message)s' )) logger.addHandler(console) logger.addHandler(file_handler) return logger ``` ## Common pitfalls **Google Sheets cell limits:** ```python MAX_CELL_LENGTH = 50000 def truncate_for_sheets(text: str) -> str: if len(text) > MAX_CELL_LENGTH: return text[:MAX_CELL_LENGTH - 20] + '... [truncated]' return text ``` **CSV encoding issues:** ```python # Always specify encoding with open(path, 'r', encoding='utf-8-sig') as f: # BOM handling reader = csv.reader(f) ``` **API quota management:** ```python # Cache API responses from functools import lru_cache @lru_cache(maxsize=1000) def cached_api_call(url: str) -> dict: return api_client.fetch(url) ```