chatGPT-Prompt-Engineering-for-Developers and DeepLearning.AI-ChatGPT-Prompt-Engineering-for-Developers

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Stars: 64
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Language: Jupyter Notebook
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Stars: 28
Forks: 12
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License:
No License Stale 6m No Package No Dependents
No License Stale 6m No Package No Dependents

About chatGPT-Prompt-Engineering-for-Developers

ksm26/chatGPT-Prompt-Engineering-for-Developers

Jupyter notebooks for enhancing your skills with ChatGPT based prompt engineering. Harness the potential of large language models and create innovative applications.

This project offers educational materials to help developers create powerful applications using large language models like ChatGPT. It provides techniques to input various text-based data, such as user reviews or emails, and receive outputs like summaries, sentiment classifications, translated content, or automatically generated text. It's for software developers looking to integrate advanced AI text processing into their applications.

software-development AI-application-building natural-language-processing chatbot-development API-integration

About DeepLearning.AI-ChatGPT-Prompt-Engineering-for-Developers

ginny100/DeepLearning.AI-ChatGPT-Prompt-Engineering-for-Developers

All notebooks from the (currently) free course ChatGPT Prompt Engineering for Developers offered by DeepLearning.AI and OpenAI

This resource provides practical examples and guided exercises for crafting effective instructions to Large Language Models like ChatGPT. It helps you understand how to structure your prompts to get the desired text output, whether that's summaries, transformations, or expanded content. This is for anyone who wants to improve their ability to interact with AI language models for various text-based tasks.

AI interaction prompt design AI text generation content creation AI workflow optimization

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