A framework for building multi-modal multi-task learning systems.
Project description
Emmental is a framework for building multi-modal multi-task learning systems.
Note that Emmental is still actively under development, so feedback and contributions are welcome. Submit bugs in the Issues section or feel free to submit your contributions as a pull request.
Getting Started
Check out our Getting Started Guide to get up and running with Emmental.
Learning how to use Emmental
The Emmental tutorials cover the Emmental workflow, showing how to build multi-modal multi-task learning systems.
Reference
Emmental: A framework for building multi-modal multi-task learning systems:
@misc{wu2019emmental, title={Emmental: A framework for building multi-modal multi-task learning systems}, author={Wu, Sen}, year={2019}, }
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