Comments (1)
While running the experiments, I have never exceeded the usage of 4gb for the CoNLL dataset and the usage of 5gb for the DREC dataset. FYI, the size of the DREC data is around 4mb for the training set.
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Related Issues (20)
- Negative samples HOT 1
- The model predicts the relationship of all entities as "N", that is, no relationship. HOT 1
- ACE 04 Train / dev splits HOT 2
- About ADE data set HOT 6
- what's the difference between your multihead selection and table filling methods? HOT 1
- Are these the hyperparameters from the articles ? HOT 1
- License
- Evaluation: relation F1 HOT 1
- how to do prediction? HOT 2
- why adding -u after python3?
- Saving the model and Prediction HOT 1
- About vector "left" , "right" and function “broadcasting” HOT 3
- 数据集 HOT 2
- getEvaluator of class model of tf_utils.py
- 我想问下,用自己的数据集替换掉CoNLL04的train,dev,test,为啥运行程序的时候报KeyError的错误
- config.batchsize!=1, raise error HOT 1
- how to do prediction?
- About model training speed HOT 1
- tf_utils.py BUG? HOT 1
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