Deploy Hugging Face Models to AWS Lambda in teps
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
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Deploy it:
cd my-app && npx scaffoldly deploy
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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!
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