Awesome-Prompt-Engineering and Prompt-Engineering-Guide-zh-CN

These are **complements** that serve different language communities: one is an English-language curated resource collection for prompt engineering techniques, while the other is a Chinese-language translation/localization of similar prompt engineering guidance, designed to be used together by multilingual teams or referenced in parallel for comprehensive coverage.

Maintenance 20/25
Adoption 10/25
Maturity 16/25
Community 20/25
Maintenance 10/25
Adoption 10/25
Maturity 16/25
Community 18/25
Stars: 5,537
Forks: 595
Downloads:
Commits (30d): 21
Language: Python
License: Apache-2.0
Stars: 937
Forks: 89
Downloads:
Commits (30d): 0
Language: MDX
License:
No Package No Dependents
No Package No Dependents

About Awesome-Prompt-Engineering

promptslab/Awesome-Prompt-Engineering

This repository contains a hand-curated resources for Prompt Engineering with a focus on Generative Pre-trained Transformer (GPT), ChatGPT, PaLM etc

This is a curated collection of resources for anyone looking to improve how they interact with Large Language Models (LLMs) like ChatGPT or PaLM. It gathers papers, tools, models, APIs, and courses related to 'prompt engineering' and 'context engineering.' The goal is to help users get better, more specific, or more creative outputs from these AI models.

AI interaction Generative AI LLM application Content creation AI workflow

About Prompt-Engineering-Guide-zh-CN

yunwei37/Prompt-Engineering-Guide-zh-CN

🐙 关于提示词工程(prompt)的指南、论文、讲座、笔记本和资源大全(自动持续更新)

This guide helps AI practitioners and researchers craft better inputs (prompts) to get more accurate and useful outputs from large language models (LLMs). It compiles the latest research, learning materials, and tools related to prompt engineering. Anyone working with AI models to solve tasks like answering questions or performing complex reasoning would find this useful.

AI-development natural-language-processing machine-learning-research LLM-optimization AI-application-development

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