llm-code-examples
✍️ Dive into this repository to explore a treasure trove of code examples, showcasing various methods and approaches for working with LLMs. These examples are inspired by my own learning journey and personal experiences, designed to ignite your passion for AI and machine learning.
Details
- Author
- olehxch
- Category
- Code & Development
- Platform
- GitHub
- Framework
- autogen
- Language
- python
- Stars
- 18
- First indexed
- 2026-05-15
- Last active
- 2025-03-14
- Directory sync
- 2026-05-15
Overview
✍️ Dive into this repository to explore a treasure trove of code examples, showcasing various methods and approaches for working with LLMs. These examples are inspired by my own learning journey and personal experiences, designed to ignite your passion for AI and machine learning.
Quick start
git
git clone https://github.com/olehxch/llm-code-examplesSnippet generated from the published metadata; check the source page for full setup, configuration, and prerequisites.
What llm-code-examples can do
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