muhammadarslanidrees / Deploying-Deep-Learning-Models-using-TensorFlow-Serving-with-Docker-and-Flask
In this tutorial, we will deploy a Pre-trained TensorFlow model with the help of TensorFlow Serving with Docker, and we will also create a visual web interface using Flask web framework which will serve to get predictions from the served TensorFlow model and help end-users to consume through API calls.
β16Updated 4 years ago
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