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run_v2.sh
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run_v2.sh
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#!/bin/sh
python -u -c 'import torch; print(torch.__version__)'
CODE_PATH=codes
DATA_PATH=data
SAVE_PATH=models
#The first four parameters must be provided
MODE=$1
MODEL=$2
DATASET=$3
GPU_DEVICE=$4
SAVE_ID=$5
FULL_DATA_PATH=$DATA_PATH/$DATASET
SAVE=$SAVE_PATH/"$MODEL"_"$DATASET"_"$SAVE_ID"
#Only used in training
BATCH_SIZE=$6
NEGATIVE_SAMPLE_SIZE=$7
HIDDEN_DIM=$8
GAMMA=$9
ALPHA=${10}
LEARNING_RATE=${11}
MAX_STEPS=${12}
TEST_BATCH_SIZE=${13}
#HIDDEN_SIZE = ${14}
if [ $MODE == "train" ]
then
echo "Start Training......"
# bash run.sh train RotatE FB15k 0 0 1024 256 1000 24.0 1.0 0.0001 150000 16 -de
# 1 2 3 4 5 6 7 8 9 10 11 12 13
# mode model dataset GPU saveid batchsize neg_sample_size hidden_dim gamma alpha lr Max_steps test_batchsize
CUDA_VISIBLE_DEVICES=$GPU_DEVICE python3 -u $CODE_PATH/run_v2.py --do_train \
--cuda \
--do_valid \
--do_test \
--data_path $FULL_DATA_PATH \
--model $MODEL \
-n $NEGATIVE_SAMPLE_SIZE -b $BATCH_SIZE -d $HIDDEN_DIM \
-g $GAMMA -a $ALPHA -adv \
-lr $LEARNING_RATE --max_steps $MAX_STEPS \
-save $SAVE --test_batch_size $TEST_BATCH_SIZE \
${14} ${15} ${16} ${17} ${18} ${19} ${20}
elif [ $MODE == "valid" ]
then
echo "Start Evaluation on Valid Data Set......"
CUDA_VISIBLE_DEVICES=$GPU_DEVICE python3 -u $CODE_PATH/run.py --do_valid --cuda -init $SAVE
elif [ $MODE == "test" ]
then
echo "Start Evaluation on Test Data Set......"
CUDA_VISIBLE_DEVICES=$GPU_DEVICE python3 -u $CODE_PATH/run.py --do_test --cuda -init $SAVE
else
echo "Unknown MODE" $MODE
fi