Hello,

Scientists like to develop models with Gluon or Pytorch and hand the models 
over to engineer for deployment. It takes a lot of effort to deploy these 
models because engineers usually need to reimplement the models (this is 
especially for NLP and speech models). Recently, Pytorch announced their next 
release v1.0 in a near future, which will integrate Pytorch and Caffe2 for easy 
deployment of any models in Pytorch. Although Gluon is heading towards this 
direction, it currently doesn’t hybridize and export any models for deployment, 
especially the ones with control flows.

Previously, I proposed to add symbolic control flow operators to MXNet. I would 
like to extend the previous proposal and advance Gluon to hybridize dynamic 
models with control flows and deploy them seamlessly. The details of the 
proposal can be found here: 
https://cwiki.apache.org/confluence/display/MXNET/Optimize+dynamic+neural+network+models+with+control+flow+operators

Please let me know if you have any comments and suggestions.

Thanks,
Da

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