AB_Testing_RAG_Agent / scripts /prepare_for_deployment.py
kamkol's picture
Better handling large preprocessed data file to Huggingface
2585f8a
#!/usr/bin/env python3
"""
Prepares the repository for deployment to Hugging Face Spaces.
This script:
1. Verifies that pre-processed data exists
2. Checks that PDF files aren't included in the repository
3. Lists the files that will be included in the deployment
4. Provides instructions for deploying to Hugging Face
Run this after successfully pre-processing your data with preprocess_data.py
"""
import os
import sys
from pathlib import Path
import shutil
PROCESSED_DATA_DIR = Path("processed_data")
CHUNKS_FILE = PROCESSED_DATA_DIR / "document_chunks.pkl"
QDRANT_DIR = PROCESSED_DATA_DIR / "qdrant_vectorstore"
DATA_DIR = Path("data")
def check_preprocessed_data():
"""Check if pre-processed data exists and is ready for deployment."""
print("\n=== Checking for pre-processed data ===")
if not PROCESSED_DATA_DIR.exists():
print(f"❌ ERROR: Processed data directory not found: {PROCESSED_DATA_DIR}")
print(" Please run scripts/preprocess_data.py first.")
return False
if not CHUNKS_FILE.exists():
print(f"❌ ERROR: Document chunks file not found: {CHUNKS_FILE}")
print(" Please run scripts/preprocess_data.py first.")
return False
if not QDRANT_DIR.exists():
print(f"❌ ERROR: Vector store directory not found: {QDRANT_DIR}")
print(" Please run scripts/preprocess_data.py first.")
return False
print(f"βœ… Found processed data directory: {PROCESSED_DATA_DIR}")
print(f"βœ… Found document chunks file: {CHUNKS_FILE}")
print(f"βœ… Found vector store directory: {QDRANT_DIR}")
# Check if vector store actually has content
qdrant_files = list(QDRANT_DIR.glob("**/*"))
if len(qdrant_files) < 5: # Arbitrary threshold for a minimum number of files
print(f"⚠️ WARNING: Vector store directory might be empty or incomplete.")
print(f" Only found {len(qdrant_files)} files in {QDRANT_DIR}")
else:
print(f"βœ… Vector store directory contains {len(qdrant_files)} files/directories")
return True
def check_for_pdf_files():
"""Check that PDF files aren't included in the data directory."""
print("\n=== Checking for PDF files ===")
pdf_files = list(DATA_DIR.glob("**/*.pdf"))
if pdf_files:
print(f"⚠️ WARNING: Found {len(pdf_files)} PDF files in the data directory.")
print(" These files will NOT be committed to the repository if you follow the instructions below.")
print(" PDFs in the data directory are excluded in .gitignore.")
for pdf in pdf_files[:5]: # Show first 5 PDFs only
print(f" - {pdf}")
if len(pdf_files) > 5:
print(f" - ... and {len(pdf_files) - 5} more")
else:
print("βœ… No PDF files found in the data directory - good!")
return True
def list_deployment_files():
"""List the essential files that will be included in the deployment."""
print("\n=== Files to include in deployment ===")
essential_files = [
"app.py",
"requirements.txt",
"Dockerfile",
"docker-compose.yml",
"README.md",
"scripts/docker-entrypoint.sh",
".dockerignore",
"processed_data/",
]
print("The following files and directories should be included in your deployment:")
for file in essential_files:
file_path = Path(file)
if file_path.exists() or (file.endswith('/') and Path(file.rstrip('/')).exists()):
print(f"βœ… {file}")
else:
print(f"❌ {file} - Not found!")
return True
def provide_deployment_instructions():
"""Provide instructions for deploying to Hugging Face."""
print("\n=== Deployment Instructions ===")
print("""
To deploy to Hugging Face Spaces:
1. Ensure you have the Hugging Face CLI installed:
pip install huggingface_hub
2. Log in to Hugging Face:
huggingface-cli login
3. Create a new Hugging Face Space with Docker deployment from the Hugging Face website
4. Add your repository as a remote:
git remote add huggingface https://huggingface.co/spaces/YOUR_USERNAME/YOUR_SPACE_NAME
5. Stage the necessary files (do NOT include PDF files):
git add app.py requirements.txt Dockerfile docker-compose.yml README.md scripts/docker-entrypoint.sh .dockerignore processed_data/
6. Commit the changes:
git commit -m "Prepare for Hugging Face deployment with pre-processed data"
7. Push to Hugging Face:
git push huggingface main
8. Set your OpenAI API key in the Hugging Face Space settings
""")
return True
def main():
"""Main entry point of the script."""
print("=" * 80)
print("PREPARING FOR HUGGING FACE DEPLOYMENT")
print("=" * 80)
checks = [
check_preprocessed_data,
check_for_pdf_files,
list_deployment_files,
provide_deployment_instructions
]
all_passed = True
for check in checks:
if not check():
all_passed = False
if all_passed:
print("\nβœ… All checks passed! Your repository is ready for deployment to Hugging Face Spaces.")
print(" Follow the deployment instructions above to deploy your application.")
else:
print("\n❌ Some checks failed. Please fix the issues before deploying.")
sys.exit(1)
if __name__ == "__main__":
main()