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Addressing these challenges, researchers from Google has recently adopted the idea of ‘ social learning ’ to help AIlearn from AI. The key idea is that, when LLMs are converted into chatbots, they can interact and learn from one another in a manner similar to human social learning.
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We then use generative AI, powered by Amazon Bedrock, to analyze and summarize the transcribed content, extracting key insights and generating comprehensive documentation. His expertise encompasses building next-generation AI solutions, including chatbots and predictive models that drive efficiency and innovation.
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