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#GenerativeAI with LLM's— New Hands-on Course by DeepLearning.AI & #AWS. ☁️🤖 Antje Barth, Principal Developer Advocate for #GenAI at AWS, & Tommy Nelson, Curriculum Product Manager at #DeepLearning.AI, chat course highlights, prereqs, & more. 🎙️

22,172 Aufrufe • vor 2 Jahren •via X (Twitter)

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