Question: I need a platform that offers flexible deployment options for my computer vision models, including cloud, edge, and Docker deployment.

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LandingLens

LandingLens is a cloud-based service that uses deep learning to solve a variety of computer vision problems. It can be deployed in a variety of ways, including in the cloud, on the edge and in a Docker container, so it can be used with cloud and edge devices. It also has features like automatic detection of mislabeled images, collaborative labeling and continuous learning that can speed up development.

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Roboflow

Another good option is Roboflow, an all-in-one service for training and deploying computer vision models. Roboflow can be deployed on the edge or in the cloud and can be used with frameworks like TensorFlow and PyTorch and cloud services like AWS and Azure. It also has powerful tools for managing data and AI-assisted labeling, making it a good option for developers and businesses.

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