4.9 • 848 Ratings
🗓️ 5 November 2021
⏱️ 60 minutes
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SageMaker streamlines machine learning workflows by enabling integrated model training, tuning, deployment, monitoring, and pipeline automation within the AWS ecosystem, offering scalable compute options and flexible development environments. Cloud-native AWS machine learning services such as Comprehend and Poly provide off-the-shelf solutions for NLP, time series, recommendations, and more, reducing the need for custom model implementation and deployment.
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0:00.0 | Machine learning applied, SageMaker 2. So we're still exploring SageMaker features. We left off in the |
0:06.9 | train and tune phase of the SageMaker tooling as all part of a data and machine learning pipeline. |
0:13.9 | Let's spend a little bit more time discussing training because training is sort of going to be the |
0:18.7 | bread and butter of a machine learning engineer's |
0:21.5 | day-to-day rule. Training your machine learning model. In the past, we might write our model in Keras, |
0:26.4 | TensorFlow, PyTorch. Train that model on local host, maybe in a Docker container, using our |
0:32.3 | system's GPU. Well, a benefit of training in SageMaker is that your model will be part of the pipeline, |
0:39.5 | part of the stack. It will be receiving data downstream from what you've already built out in |
0:44.7 | your pipeline using Data Rangler and Feature Store and all these things. And if you build out |
0:50.9 | your model into SageMaker so that when you're training your model on SageMaker, |
0:55.6 | it's able to be deployed through SageMaker, then you don't have to take that extra step |
1:00.5 | when you're ready to deploy your model of transferring the concept of a local host trained |
1:06.0 | model to the cloud. It'll all be ready for you to just run a deploy script or click a button, whatever the |
1:11.8 | case. And of course, in the training phase, SageMaker offers all that tooling around training |
1:17.5 | or model things like Model Debugger, which allows you to peek into your neural network by way of a |
1:23.4 | tensor board, or keep an eye on the objective metrics or model drift or bias, all these things |
1:30.5 | through a graphical user interface in SageMaker Studio or email or text message alerts in CloudWatch |
1:37.4 | and so on. Another benefit of training your model in SageMaker as opposed to do it on local |
1:43.3 | host is that this whole process, you're going to be spinning up a SageMaker as opposed to do it on local host is that this whole process, you're |
1:45.6 | going to be spinning up a SageMaker Studio project. Remember that SageMaker Studio is their IDE |
1:52.0 | on their web console where you will be writing your code in an iPython notebook in SageMaker |
1:58.2 | Studio. You write your code in an iPython notebook and you can share that code |
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