Prompt_Engineering and prompt_engineering_guide
These are **complements**: the comprehensive tutorial repository provides theoretical foundations and implementation examples that would naturally be referenced or used alongside a workshop guide designed for hands-on learning at a specific conference event.
About Prompt_Engineering
NirDiamant/Prompt_Engineering
This repository offers a comprehensive collection of tutorials and implementations for Prompt Engineering techniques, ranging from fundamental concepts to advanced strategies. It serves as an essential resource for mastering the art of effectively communicating with and leveraging large language models in AI applications.
Organized into 22 Jupyter Notebook tutorials, the repository covers techniques across foundational concepts (prompt structures, templating with Jinja2), core methods (zero-shot, few-shot, chain-of-thought), and advanced strategies. Implementations use major LLM APIs (OpenAI, Anthropic, Cohere) with practical code examples demonstrating each technique in action. The project emphasizes hands-on experimentation through executable notebooks while fostering community contributions via Discord and GitHub, complementing related repositories on RAG and production-grade AI agents.
About prompt_engineering_guide
DATANOMIQ/prompt_engineering_guide
Prompt Engineering Workshop @ AI Convention 2025 (IHK Schwaben)
Related comparisons
Scores updated daily from GitHub, PyPI, and npm data. How scores work