From the course: Machine Learning with SageMaker by Pearson
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Real-time inference with SageMaker endpoints - Amazon SageMaker Tutorial
From the course: Machine Learning with SageMaker by Pearson
Real-time inference with SageMaker endpoints
Once we have our models created and deployed, we probably want to use them. So we can do real-time inference as well as batch inference. Real-time inference is where we have a question and we want an immediate answer to it. So we get an immediate prediction from our trained and deployed model. Primarily used in applications requiring low latency responses, such as fraud detection, personalization. So fraud detection, we have an example coming up in a slide. But imagine you go and you purchase a new car for $20,000 and you put it on your credit card. As that transaction comes into the bank, they are probably going to analyze it for some sort of fraud and make an immediate decision as to whether or not it appears to be fraudulent. And they are most likely doing that in an automated fashion. So machine learning model or fraud detection, probably doing real-time inference. Deploy your models to SageMaker Endpoints for real-time accessibility. We'll see this in the demo. Once we have our…
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Module introduction35s
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Learning objectives34s
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Real-time inference with SageMaker endpoints9m 58s
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Real-time inference demonstration8m 51s
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Batch inference and asynchronous inference6m 29s
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Batch and asynchronous inference demonstration14m 50s
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Using SageMaker Neo for edge deployment7m 32s
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SageMaker edge deployment demonstration12m 13s
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