运用提示词工程,驱动LLM生成HTML+CSS+JS互动教案,助力教师轻松备课,激发青少年编程学习兴趣与动手实践创造力🚀
-
Updated
Jun 26, 2025 - CSS
运用提示词工程,驱动LLM生成HTML+CSS+JS互动教案,助力教师轻松备课,激发青少年编程学习兴趣与动手实践创造力🚀
A new package designed to facilitate the extraction of structured insights from user prompts related to the domain of autonomous AI agents and their potential vulnerabilities. Given an input text desc
A universal, client-side AI prompt engineering tool that enhances your prompts using local or cloud-based AI models. Transform basic prompts into detailed, professional-grade instructions without sending your data to third-party servers.
A framework to move beyond simple prompting towards defining *how* the LLM should structure its internal processing, access its latent knowledge, and apply specific heuristics or constraints when dealing with a particular subject matter or task.
A comprehensive corpus of interconnected texts and protocols designed as a conceptual stress-test for advanced AI.
An LLM-powered pipeline for automated customer defect root cause analysis, structured classification, human review, and write-back in enterprise support systems.
Self-hosted n8n automation pipelines for AI-driven market research.
Add a description, image, and links to the llm-prompt-engineering topic page so that developers can more easily learn about it.
To associate your repository with the llm-prompt-engineering topic, visit your repo's landing page and select "manage topics."