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A library provides integration between Domain Knowledge and Deep Learning.

Project description

The library allows to specify a problem domain with a conceptual graph including declarations of edges and nodes, as well as logical constraints on the graph concepts and relations. [Neural network] (https://github.com/HLR/DomiKnowS/blob/main/docs/developer/MODEL.md#model-declaration) outputs bounded to the graph edges and nodes. The logical constraints are conveted to ILP and Gurobi Solver is used for inferencing. This adds a relational overlay over elements in a network that relates physical concepts in applications.
The example runing in Google colab environment, presenting the usage of the libarary is here

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