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(upbeat music) Hi everyone. I am Priyanka Vergadia, developer advocate on the Google Cloud team, and today Im going to show you how to use Vertex AI and help a friend get into yoga. We are building a yoga pose classification model. Letamp;#39;s get started. First thing we need is the data. For this step, my friend Sarah and I collected a bunch of images from our yoga practice and uploaded them into the managed data sets. As you see here, the images are labeled in five categories. I can even upload unlabeled images and label them. We can analyze our data set to see that we have enough examples of each categories. Now we are ready to train our model. In here, Im selecting AutoML for training method. You can also train a model to deploy on the edge or on premise, or use custom training if youre writing your own custom model code. Now we define our model. AutoML automatically splits the data into training, validation, and test, but we can change it if we want to. In compute and pricing