con un clic
batch-processor
Process multiple documents in bulk with parallel execution
Instalar con Codex o Claude Copia este prompt, pégalo en Codex, Claude u otro asistente, y deja que revise la página de la skill y la instale por ti.
Menú
Process multiple documents in bulk with parallel execution
Instalar con Codex o Claude Copia este prompt, pégalo en Codex, Claude u otro asistente, y deja que revise la página de la skill y la instale por ti.
Basado en la clasificación ocupacional SOC
Analyze contracts for risks, check completeness, and provide actionable recommendations. Supports employment contracts, NDAs, service agreements, and more.
MCP server with 39 tools for Word, Excel, PowerPoint, PDF, OCR operations
Search and analyze academic literature. Find papers, understand research methodologies, and synthesize academic findings for research projects.
Multi-platform ad copy generation for Google Ads, Meta/Facebook, TikTok, LinkedIn with A/B testing variants
Build AI agents with tools, memory, and multi-step reasoning - ChatGPT, Claude, Gemini integration patterns
Generate complete presentations with AI - from outline to polished slides
| name | batch-processor |
| description | Process multiple documents in bulk with parallel execution |
| version | 1.0 |
| author | claude-office-skills |
| license | MIT |
| category | workflow |
| tags | ["batch","processor","bulk","automation"] |
| department | All |
| models | {"recommended":["claude-sonnet-4","claude-opus-4"],"compatible":["claude-3-5-sonnet","gpt-4","gpt-4o"]} |
| mcp | {"server":"office-mcp","tools":["batch_convert"]} |
| capabilities | ["batch_processing","automation"] |
| languages | ["en","zh"] |
This skill enables efficient bulk processing of documents - convert, transform, extract, or analyze hundreds of files with parallel execution and progress tracking.
Example prompts:
Input: [file1, file2, ..., fileN]
│
▼
┌─────────────┐
│ Parallel │ ← Process multiple files concurrently
│ Workers │
└─────────────┘
│
▼
Output: [result1, result2, ..., resultN]
from concurrent.futures import ProcessPoolExecutor, as_completed
from pathlib import Path
from tqdm import tqdm
def process_file(file_path: Path) -> dict:
"""Process a single file."""
# Your processing logic here
return {"path": str(file_path), "status": "success"}
def batch_process(input_dir: str, pattern: str = "*.*", max_workers: int = 4):
"""Process all matching files in directory."""
files = list(Path(input_dir).glob(pattern))
results = []
with ProcessPoolExecutor(max_workers=max_workers) as executor:
futures = {executor.submit(process_file, f): f for f in files}
for future in tqdm(as_completed(futures), total=len(files)):
file = futures[future]
try:
result = future.result()
results.append(result)
except Exception as e:
results.append({"path": str(file), "error": str(e)})
return results
# Usage
results = batch_process("/documents/invoices", "*.pdf", max_workers=8)
print(f"Processed {len(results)} files")
import json
from pathlib import Path
class BatchProcessor:
def __init__(self, checkpoint_file: str = "checkpoint.json"):
self.checkpoint_file = checkpoint_file
self.processed = self._load_checkpoint()
def _load_checkpoint(self):
if Path(self.checkpoint_file).exists():
return json.load(open(self.checkpoint_file))
return {}
def _save_checkpoint(self):
json.dump(self.processed, open(self.checkpoint_file, "w"))
def process(self, files: list, processor_func):
for file in files:
if str(file) in self.processed:
continue # Skip already processed
try:
result = processor_func(file)
self.processed[str(file)] = {"status": "success", **result}
except Exception as e:
self.processed[str(file)] = {"status": "error", "error": str(e)}
self._save_checkpoint() # Resume-safe
# Install required dependencies
pip install python-docx openpyxl python-pptx reportlab jinja2