search
HomeBackend DevelopmentPython TutorialDeploy 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

  1. 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!)
  2. Create your app from the python-huggingface branch:

     npx scaffoldly create app --template python-huggingface
    
  3. 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:

  1. 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
  2. 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
  3. 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:

Deploy Hugging Face Models to AWS Lambda in teps

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:

  1. Change the model in app.py:
 npx scaffoldly create app --template python-huggingface
  1. 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!

Statement
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
The Main Purpose of Python: Flexibility and Ease of UseThe Main Purpose of Python: Flexibility and Ease of UseApr 17, 2025 am 12:14 AM

Python's flexibility is reflected in multi-paradigm support and dynamic type systems, while ease of use comes from a simple syntax and rich standard library. 1. Flexibility: Supports object-oriented, functional and procedural programming, and dynamic type systems improve development efficiency. 2. Ease of use: The grammar is close to natural language, the standard library covers a wide range of functions, and simplifies the development process.

Python: The Power of Versatile ProgrammingPython: The Power of Versatile ProgrammingApr 17, 2025 am 12:09 AM

Python is highly favored for its simplicity and power, suitable for all needs from beginners to advanced developers. Its versatility is reflected in: 1) Easy to learn and use, simple syntax; 2) Rich libraries and frameworks, such as NumPy, Pandas, etc.; 3) Cross-platform support, which can be run on a variety of operating systems; 4) Suitable for scripting and automation tasks to improve work efficiency.

Learning Python in 2 Hours a Day: A Practical GuideLearning Python in 2 Hours a Day: A Practical GuideApr 17, 2025 am 12:05 AM

Yes, learn Python in two hours a day. 1. Develop a reasonable study plan, 2. Select the right learning resources, 3. Consolidate the knowledge learned through practice. These steps can help you master Python in a short time.

Python vs. C  : Pros and Cons for DevelopersPython vs. C : Pros and Cons for DevelopersApr 17, 2025 am 12:04 AM

Python is suitable for rapid development and data processing, while C is suitable for high performance and underlying control. 1) Python is easy to use, with concise syntax, and is suitable for data science and web development. 2) C has high performance and accurate control, and is often used in gaming and system programming.

Python: Time Commitment and Learning PacePython: Time Commitment and Learning PaceApr 17, 2025 am 12:03 AM

The time required to learn Python varies from person to person, mainly influenced by previous programming experience, learning motivation, learning resources and methods, and learning rhythm. Set realistic learning goals and learn best through practical projects.

Python: Automation, Scripting, and Task ManagementPython: Automation, Scripting, and Task ManagementApr 16, 2025 am 12:14 AM

Python excels in automation, scripting, and task management. 1) Automation: File backup is realized through standard libraries such as os and shutil. 2) Script writing: Use the psutil library to monitor system resources. 3) Task management: Use the schedule library to schedule tasks. Python's ease of use and rich library support makes it the preferred tool in these areas.

Python and Time: Making the Most of Your Study TimePython and Time: Making the Most of Your Study TimeApr 14, 2025 am 12:02 AM

To maximize the efficiency of learning Python in a limited time, you can use Python's datetime, time, and schedule modules. 1. The datetime module is used to record and plan learning time. 2. The time module helps to set study and rest time. 3. The schedule module automatically arranges weekly learning tasks.

Python: Games, GUIs, and MorePython: Games, GUIs, and MoreApr 13, 2025 am 12:14 AM

Python excels in gaming and GUI development. 1) Game development uses Pygame, providing drawing, audio and other functions, which are suitable for creating 2D games. 2) GUI development can choose Tkinter or PyQt. Tkinter is simple and easy to use, PyQt has rich functions and is suitable for professional development.

See all articles

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

AI Hentai Generator

AI Hentai Generator

Generate AI Hentai for free.

Hot Article

R.E.P.O. Energy Crystals Explained and What They Do (Yellow Crystal)
1 months agoBy尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. Best Graphic Settings
1 months agoBy尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. How to Fix Audio if You Can't Hear Anyone
1 months agoBy尊渡假赌尊渡假赌尊渡假赌
R.E.P.O. Chat Commands and How to Use Them
1 months agoBy尊渡假赌尊渡假赌尊渡假赌

Hot Tools

mPDF

mPDF

mPDF is a PHP library that can generate PDF files from UTF-8 encoded HTML. The original author, Ian Back, wrote mPDF to output PDF files "on the fly" from his website and handle different languages. It is slower than original scripts like HTML2FPDF and produces larger files when using Unicode fonts, but supports CSS styles etc. and has a lot of enhancements. Supports almost all languages, including RTL (Arabic and Hebrew) and CJK (Chinese, Japanese and Korean). Supports nested block-level elements (such as P, DIV),

Safe Exam Browser

Safe Exam Browser

Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

ZendStudio 13.5.1 Mac

ZendStudio 13.5.1 Mac

Powerful PHP integrated development environment

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

Dreamweaver Mac version

Dreamweaver Mac version

Visual web development tools