 allRank
 allRank 
 Ranking framework
 A framework for training neural models to rank data items based on relevance
allRank is a framework for training learning-to-rank neural models based on PyTorch.
886 stars
 28 watching
 120 forks
 
Language: Python 
last commit: about 1 year ago 
Linked from   1 awesome list  
  click-modeldeep-learninginformation-retrievallearning-to-rankmachine-learningndcgpythonpytorchrankingtransformer 
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