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What are the different categories of generative artificial intelligence? 


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Generative artificial intelligence (AI) encompasses various categories with applications across industries. In software engineering, tools like Bard, ChatGPT, and CoPilot enhance productivity . Within interior design workflows, generative AI aids in ideation, schematic drafting, and layout planning through targeted fine-tuning and prompt engineering . Moreover, in healthcare, generative AI is poised to revolutionize medical imaging, drug development, patient care, and treatment planning, benefiting hospitals, clinics, pharmaceutical companies, and research institutions, albeit facing challenges like data privacy and regulatory compliance . These diverse applications highlight the versatility of generative AI in transforming fields such as finance, education, marketing, healthcare, and software engineering.

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Generative Artificial Intelligence (GAI) is applied in healthcare, finance, education, and marketing. In healthcare, it enhances medical imaging, drug development, patient care, and treatment planning, benefiting various stakeholders.
Generative Artificial Intelligence (GAI) is applied in healthcare, finance, education, and marketing. In healthcare, it enhances medical imaging, drug development, patient care, and treatment planning.
The paper discusses how generative AI can enhance interior design workflow through ideation, schematic drafting, and layout planning, showcasing its transformative potential in these key tasks.
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