AmpliGraph

Open source Python library that predicts links between concepts in a knowledge graph.

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AmpliGraph is a suite of neural machine learning models for relational Learning, a branch of machine learning that deals with supervised learning on knowledge graphs.

_images/kg_lp.png

Use AmpliGraph if you need to:

  • Discover new knowledge from an existing knowledge graph.

  • Complete large knowledge graphs with missing statements.

  • Generate stand-alone knowledge graph embeddings.

  • Develop and evaluate a new relational model.

AmpliGraph’s machine learning models generate knowledge graph embeddings, vector representations of concepts in a metric space:

_images/kg_lp_step1.png

It then combines embeddings with model-specific scoring functions to predict unseen and novel links:

_images/kg_lp_step2.png

Key Features

  • Intuitive APIs: AmpliGraph APIs are designed to reduce the code amount required to learn models that predict links

in knowledge graphs. The new version AmpliGraph 2 APIs are in Keras style, making the user experience even smoother. * GPU-Ready: AmpliGraph is built on top of TensorFlow 2, and it is designed to run seamlessly on CPU and GPU devices - to speed-up training. * Extensible: Roll your own knowledge graph embeddings model by extending AmpliGraph base estimators.

Modules

AmpliGraph includes the following submodules:

  • Datasets: helper functions to load datasets (knowledge graphs).

  • Models: knowledge graph embedding models. AmpliGraph offers TransE, DistMult, ComplEx, HolE, RotatE (More to come!)

  • Evaluation: metrics and evaluation protocols to assess the predictive power of the models.

  • Discovery: High-level convenience APIs for knowledge discovery (discover new facts, cluster entities, predict near duplicates).

  • Compat: submodule that extends the compatibility of AmpliGraph APIs to those of AmpliGraph 1.x for the user already familiar with them.

How to Cite

If you like AmpliGraph and you use it in your project, why not starring the project on GitHub!

GitHub stars

If you instead use AmpliGraph in an academic publication, cite as:

@misc{ampligraph,
      author= {Luca Costabello and
               Alberto Bernardi and
               Adrianna Janik and
               Aldan Creo and
               Sumit Pai and
               Chan Le Van and
               Rory McGrath and
               Nicholas McCarthy and
               Pedro Tabacof},
      title = {{AmpliGraph: a Library for Representation Learning on Knowledge Graphs}},
      month = mar,
      year  = 2019,
      doi   = {10.5281/zenodo.2595043},
      url   = {https://doi.org/10.5281/zenodo.2595043 }
 }
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