GitHubスライド | slidict.io

メッセージを読み込み中

HuggingFaceCourse

  • ユーザー:
  • 最終更新: 2025/07/04
  • 読み取り時間: 02:08

This is a practical course on using the Hugging Face ecosystem for machine learning. You’ll learn how to use the Hugging Face Hub, debug and troubleshoot machine learning models, and build interactive demos with Gradio.

Course Outline

This course provides a practical, hands-on approach to working with the Hugging Face ecosystem for machine learning.

Chapter Description Status

Chapter 0: Introduction

Set up your environment and get started with the course

✅ Ready

Chapter 1: The Hugging Face Hub

Learn about the Hub, sharing models, and building model cards

✅ Ready

Chapter 2: Debugging and Troubleshooting

Handle errors, ask for help, and debug training pipelines

✅ Ready

Chapter 3: Building ML Demos with Gradio

Create interactive demos with Gradio and share them

✅ Ready

Why Learn the Hugging Face Ecosystem?

The Hugging Face ecosystem has become the standard for machine learning practitioners working with transformer models and beyond. Learning these tools offers several advantages:

  • Industry Standard: Hugging Face tools are widely used in industry and research

  • Comprehensive Platform: From model hosting to deployment, everything in one ecosystem

  • Community: Access to thousands of pre-trained models and datasets

  • Ease of Use: Simplified APIs for complex ML tasks

  • Collaboration: Built-in tools for sharing and collaborating on ML projects

  • Production Ready: Tools designed for both research and production deployment

  • Open Source: Free to use with active community support

Prerequisites

Before starting, ensure you have the following:

  • Basic understanding of machine learning concepts

  • Familiarity with Python programming

  • A Hugging Face account (create one at huggingface.co)

  • Basic knowledge of Git (helpful but not required)

Getting Started

This course is designed to be followed along with hands-on coding. You can choose from several approaches:

The easiest way to get started is using Google Colab notebooks. Simply:

  1. Open a new Google Colab notebook

  2. Install the required libraries as you go through each chapter

  3. No local setup required!

Option 2: Local Python Environment

If you prefer to work locally, set up a Python environment:

# Create a virtual environment
python -m venv .venv
source .venv/bin/activate  # On Windows: .venv\Scripts\activate

# Install core dependencies
pip install transformers datasets huggingface_hub gradio

Option 3: Using requirements.txt

If there’s a requirements.txt file in this repository:

pip install -r requirements.txt

Each chapter will guide you through installing any additional dependencies you need for that specific section.

著者:
Hugging Face

The AI community building the future.

Access

0 回

シンプルでエレガントなプレゼン。slidict.io - プロフェッショナルなスライド作成を実現

プレゼンを変革する。ログインしてslidict.ioを体験しよう!