Ever wanted to deploy a Hugging Face model to AWS Lambda but got stuck with container builds, cold starts, and model caching? Here's how to do it in under 5 minutes using Scaffoldly.
TL;DR
-
Create an EFS filesystem named .cache in AWS:
- Go to AWS EFS Console
- Click "Create File System"
- Name it .cache
- Select any VPC (Scaffoldly will take care of the rest!)
-
Create your app from the python-huggingface branch:
npx scaffoldly create app --template python-huggingface
-
Deploy it:
cd my-app && npx scaffoldly deploy
That's it! You'll get a Hugging Face model running on Lambda (using openai-community/gpt2 as an example), complete with proper caching and container deployment.
Pro-Tip: For the EFS setup, you can customize it down to a Single AZ in Burstable mode for even more cost savings. Scaffoldly will match the Lambda Function to the EFS's VPC, Subnets, and Security Group.
✨ Check out the Live Demo and the example code!
The Problem
Deploying ML models to AWS Lambda traditionally involves:
- Building and managing Docker containers
- Figuring out model caching and storage
- Dealing with Lambda's size limits
- Managing cold starts
- Setting up API endpoints
It's a lot of infrastructure work when you just want to serve a model!
The Solution
Scaffoldly handles all this complexity with a simple configuration file. Here's a complete application that serves a Hugging Face model (using openai-community/gpt2 as an example):
# app.py from flask import Flask from transformers import pipeline app = Flask(__name__) generator = pipeline('text-generation', model='openai-community/gpt2') @app.route("/") def hello_world(): output = generator("Hello, world,") return output[0]['generated_text']
// requirements.txt Flask ~= 3.0 gunicorn ~= 23.0 torch ~= 2.5 numpy ~= 2.1 transformers ~= 4.46 huggingface_hub[cli] ~= 0.26
// scaffoldly.json { "name": "python-huggingface", "runtime": "python:3.12", "handler": "localhost:8000", "files": ["app.py"], "packages": ["pip:requirements.txt"], "resources": ["arn::elasticfilesystem:::file-system/.cache"], "schedules": { "@immediately": "huggingface-cli download openai-community/gpt2" }, "scripts": { "start": "gunicorn app:app" }, "memorySize": 1024 }
How It Works
Scaffoldly does some clever things behind the scenes:
-
Smart Container Building:
- Automatically creates a Docker container optimized for Lambda
- Handles all Python dependencies including PyTorch
- Pushes to ECR without you writing any Docker commands
-
Efficient Model Handling:
- Uses Amazon EFS to cache the model files
- Pre-downloads models after deployment for faster cold starts
- Mounts the cache automatically in Lambda
-
Lambda-Ready Setup:
- Rus up a proper WSGI server (gunicorn)
- Creates a public Lambda Function URL
- Proxies Function URL requests to gunicorn
- Manages IAM roles and permissions
What deploy looks like
Here's output from a npx scaffoldly deploy command I ran on this example:
Real World Performance & Costs
✅ Costs: ~$0.20/day for AWS Lambda, ECR, and EFS
✅ Cold Start: ~20s for first request (model loading)
✅ Warm Requests: 5-20s (CPU-based inference)
While this setup uses CPU inference (which is slower than GPU), it's an incredibly cost-effective way to experiment with ML models or serve low-traffic endpoints.
Customizing for Other Models
Want to use a different model? Just update two files:
- Change the model in app.py:
npx scaffoldly create app --template python-huggingface
- Update the download in scaffoldly.json:
cd my-app && npx scaffoldly deploy
Using Private or Gated Models
Scaffoldly supports private and gated models via the HF_TOKEN environment variable. You can add your Hugging Face token in several ways:
- Local Development: Add to your shell profile (.bashrc, .zprofile, etc.):
# app.py from flask import Flask from transformers import pipeline app = Flask(__name__) generator = pipeline('text-generation', model='openai-community/gpt2') @app.route("/") def hello_world(): output = generator("Hello, world,") return output[0]['generated_text']
- CI/CD: Add as a GitHub Actions Secret:
// requirements.txt Flask ~= 3.0 gunicorn ~= 23.0 torch ~= 2.5 numpy ~= 2.1 transformers ~= 4.46 huggingface_hub[cli] ~= 0.26
The token will be automatically used for both downloading and accessing your private or gated models.
CI/CD Bonus
Scaffoldly even generates a GitHub Action for automated deployments:
// scaffoldly.json { "name": "python-huggingface", "runtime": "python:3.12", "handler": "localhost:8000", "files": ["app.py"], "packages": ["pip:requirements.txt"], "resources": ["arn::elasticfilesystem:::file-system/.cache"], "schedules": { "@immediately": "huggingface-cli download openai-community/gpt2" }, "scripts": { "start": "gunicorn app:app" }, "memorySize": 1024 }
Try It Yourself
The complete example is available on GitHub:
scaffoldly/scaffoldly-examples#python-huggingface
And you can create your own copy of this example by running:
generator = pipeline('text-generation', model='your-model-here')
You can see it running live (though responses might be slow due to CPU inference):
Live Demo
What's Next?
- Try deploying different Hugging Face models
- Join the Scaffoldly Community on Discord
- Check out other examples
- Star our repos if you found this useful!
- The scaffoldly toolchain
- The Scaffoldly Examples repository
Licenses
Scaffoldly is Open Source, and welcome contributions from the community.
- The examples are licensed with the Apache-2.0 license.
- The scaffoldly toolchain is licensed with the FSL-1.1-Apache-2.0 license.
What other models do you want to run in AWS Lambda? Let me know in the comments!
The above is the detailed content of Deploy Hugging Face Models to AWS Lambda in teps. For more information, please follow other related articles on the PHP Chinese website!

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