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If by "deployment" you mean building a production system based on the trained model, then very emphatic yes! See also #32 (comment)
Unlike many deployment scenarios (e. g., data analytics pipeline), ASR applications are much more diverse. Do you want real-time subtitling of the news, or a customer support robot helping someone with their order, or an in-car command and control system (play this song, navigate there)? These are all "deployments." As I understand, there are no plans for a generic one-fits-all "deployment," chiefly due to the sheer variety of scenarios in which Kaldi is currently used.
Would there be a focus not only on the deep learning frameworks but also the deployment of ML models ahead of Kaldi?
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