课程: Responsible AI on AWS: Bedrock Guardrails, Amazon Q Security, and SageMaker Clarify
Course introduction
课程: Responsible AI on AWS: Bedrock Guardrails, Amazon Q Security, and SageMaker Clarify
Course introduction
- Hi, my name is Noah Gift, and I'm the founder of Pragmatic AI Labs, and this training is focused on three key technologies on AI on the Amazon platform. First up, we have Bedrock. Bedrock is a very fascinating platform, because it serves a foundational model interface where you can toggle out different foundational models like Anthropic Claude, or maybe you have internal Amazon models, or upcoming models like Mistral, and all these come together through this single interface, which allows us to do security and monitoring and governance. And that's really what this course is about is how do we dive into creating an enterprise-level, comprehensive way to think about Bedrock. We also get into the security components of Amazon Queue as well, and we go into a comprehensive enterprise-level overview, and then finally, we wrap up with Clarify from SageMaker, which allows you to look at some of the things that are more problematic with models, like what are the features that are driving this model? Is there an unbalanced dataset? How can I actually monitor the performance of a model in production? So, really fine-grained details that are available through the Clarify interface. So, that's the sum of the course, and we have a lot to cover, so let's go ahead and get started.
内容
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Course introduction1 分钟 29 秒
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AI security architecture4 分钟 19 秒
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AI auth patterns4 分钟 1 秒
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Complete AI security3 分钟 49 秒
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AI monitoring and logging3 分钟 51 秒
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AWS Rust compilation3 分钟 49 秒
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Monitoring Bedrock calls3 分钟 46 秒
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Visualizing Bedrock API calls2 分钟 51 秒
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