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# Paddle Serving roadmap
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# Paddle Serving roadmap
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## General Serving
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## General Serving
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- Integrate with Paddle seamlessly, and make most models trained with Paddle deployable with Serving framework.
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- Support key-value features.
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- Support several applications, including bert-as-a-service, image-semantic-vector-service, LAC, IMDB, CTR on criteo
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- Benchmark on serveral tasks.
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## Single GPU Card with Multiple Models
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## Single GPU Card with Multiple Models
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- Load multiple models with GPU, and limit the GPU memory.
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## Deployment with EDL on Kubernetes
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## Deployment with EDL on Kubernetes
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- deploy with docker on Kubernetes and support elastic scheduling.
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## Model Serving Cloud
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## Model Serving Cloud
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- Release lots of model service that can be easy-to-use.
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