awesome-generative-ai-guide and awesome-generative-ai-data-scientist

These are complementary resources that serve different depths: the first provides broad foundational coverage across generative AI research and theory, while the second offers specialized, practical guidance specifically for data scientists implementing LLMs in production environments.

Maintenance 20/25
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Community 25/25
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Maturity 8/25
Community 23/25
Stars: 25,292
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License: MIT
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About awesome-generative-ai-guide

aishwaryanr/awesome-generative-ai-guide

A one stop repository for generative AI research updates, interview resources, notebooks and much more!

This is a central resource for anyone wanting to learn about or stay updated on Generative AI. It compiles the latest research papers, interview preparation guides, course materials, and lists of free educational resources. It's designed for professionals, students, and enthusiasts looking to deepen their understanding and practical skills in Generative AI.

AI-learning Generative-AI LLM-education AI-research career-development

About awesome-generative-ai-data-scientist

business-science/awesome-generative-ai-data-scientist

A curated list of 100+ resources for building and deploying generative AI specifically focusing on helping you become a Generative AI Data Scientist with LLMs

This collection provides over 100 free resources to help you develop expertise in Generative AI. It offers guides and tools for building applications with Large Language Models (LLMs) and deploying these AI systems using cloud platforms. The target audience is data scientists looking to expand their skills in Generative AI.

Generative AI LLM development AI deployment data science skilling machine learning engineering

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