From the course: Machine Learning with SageMaker by Pearson
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Batch and asynchronous inference demonstration - Amazon SageMaker Tutorial
From the course: Machine Learning with SageMaker by Pearson
Batch and asynchronous inference demonstration
Thus far, in all of the demos that we've done where we create a model and then we run some sort of inference against it, we are doing a real-time inference. That means we want results right now, and we're willing to wait for those results to come in. But what if you have a large set of data that you need to infer all of it, or you have something that takes a long time to process? may or may not want to wait or have the time to wait. So I can give it to my endpoint, say, work on this. I'm going to go do this other thing. And when you're done, notify me or put the results in an S3 bucket. However you configure it, there are options for that. So we have batch inference and asynchronous inference. And the way we're going to do this demo, we're going to use a model that we've already trained. It's going to be that loan approval data set model, loan approval model that tries to predict if a loan will be approved based on the loan applier's age, education level, and salary. With that model…
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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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