This comprehensive Prompt Engineering course equips you with the skills to design, optimize, and scale effective prompts for generative AI and large language models. Begin by mastering the structure of prompts, learn how to use key elements like instructions, context, input data, and output indicators to generate precise outputs. Explore LLM settings and formatting techniques to enhance prompt effectiveness. Progress to core techniques such as zero-shot, few-shot, Chain of Thought (CoT), Self-Consistency, and Tree of Thoughts (ToT) prompting, reinforced with practical demos using OpenAI and LangChain. Learn to generate synthetic data for RAG models and create dynamic, reusable prompts using LangChain templates, Jinja2, and Python f-strings.

您将学到什么
Craft effective prompts using structure, context, and output indicators
Apply core and advanced prompting techniques like CoT and ToT
Build dynamic, reusable prompts with LangChain, Jinja2, and Python f-strings
Design scalable GenAI workflows for real-world applications
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作业
13 项作业
授课语言:英语(English)
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