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Training stops after few epochs #120

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amit0018 opened this issue Apr 2, 2021 · 1 comment
Open

Training stops after few epochs #120

amit0018 opened this issue Apr 2, 2021 · 1 comment

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@amit0018
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amit0018 commented Apr 2, 2021

Here is the training file

#!/bin/sh

script_dir=dirname $0
main_dir=$script_dir/../
data_dir=$main_dir/data
working_dir=$main_dir/model

device=0,1
#independent variables (toolkit locations)
#. $main_dir/../vars

#language-dependent variables (source and target language)
. $main_dir/vars

CUDA_VISIBLE_DEVICES=$device python $nematus_home/nematus/train.py
--model $working_dir/model
--datasets $data_dir/korean-english-park.train.bpe.$src $data_dir/korean-english-park.train.bpe.$trg
--valid_datasets $data_dir/korean-english-park.dev.bpe.$src $data_dir/korean-english-park.dev.bpe.$trg
--dictionaries $data_dir/korean-english-park.train.bpe.ko.json $data_dir/korean-english-park.train.bpe.en.json
--valid_script $script_dir/validate.sh
--reload latest_checkpoint
--dim_word 512
--dim 1024
--lrate 0.0005
--optimizer adam
--maxlen 200
--batch_size 80
--valid_batch_size 40
--validFreq 10000
--dispFreq 1000
--saveFreq 30000
--sampleFreq 10000
--tie_decoder_embeddings
--layer_normalisation
--dec_base_recurrence_transition_depth 2
--enc_recurrence_transition_depth 2
--rnn_dropout_hidden 0.5
--rnn_dropout_embedding 0.5
--rnn_dropout_source 0.3
--rnn_dropout_target 0.3
--label_smoothing 0.2
--token_batch_size 1000
--valid_token_batch_size 1000
--patience 10

validate.sh file mentioned below:

#!/bin/sh

script_dir=dirname $0
main_dir=$script_dir/../
data_dir=$main_dir/data
working_dir=$main_dir/model

device=0,1

#language-dependent variables (source and target language)
. $main_dir/vars

dev_prefix=korean-english-park.dev
dev=$dev_prefix.bpe.$src
ref=$dev_prefix.$trg
prefix=$working_dir/model

CUDA_VISIBLE_DEVICES=$device python $nematus_home/nematus/translate.py
-m $prefix
-i $data_dir/$dev
-o $working_dir/$dev.output.dev
-k 5
-n

bash $script_dir/postprocess.sh < $working_dir/$dev.output.dev > $working_dir/$dev.output.postprocessed.dev

BEST=cat ${prefix}_best_bleu || echo 0
$nematus_home/data/multi-bleu-detok.perl /scratch/amitkumar.rs.cse17.iitbhu/ko-en/parallel/$ref < $working_dir/$dev.output.postprocessed.dev >> ${prefix}_bleu_scores
BLEU=$nematus_home/data/multi-bleu-detok.perl /scratch/amitkumar.rs.cse17.iitbhu/ko-en/parallel/$ref < $working_dir/$dev.output.postprocessed.dev | cut -f 3 -d ' ' | cut -f 1 -d ','
BETTER=echo "$BLEU > $BEST" | bc

echo "BLEU = $BLEU"

echo "BLEU = $BLEU"

if [ "$BETTER" = "1" ]; then
echo "new best; saving"
echo $BLEU &gt; ${prefix}_best_bleu
cp ${prefix}.json ${prefix}.best_bleu.json
fi

Following errors in training:

2021-04-02 07:11:20.787601: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudart.so.10.1
INFO: Namespace(adam_beta1=0.9, adam_beta2=0.999, adam_epsilon=1e-08, batch_size=80, beam_freq=10000, beam_size=12, clip_c=1.0, datasets=['scripts/..//data/korean-english-park.train.bpe.ko', 'scripts/..//data/korean-english-park.train.bpe.en'], decay_c=0.0, dictionaries=['scripts/..//data/korean-english-park.train.bpe.ko.json', 'scripts/..//data/korean-english-park.train.bpe.en.json'], dim_per_factor=[512], disp_freq=1000, embedding_size=512, exponential_smoothing=0.0, factors=1, finish_after=10000000, gradient_aggregation_steps=1, keep_train_set_in_memory=False, label_smoothing=0.2, layer_normalization_type='layernorm', learning_rate=0.0005, learning_schedule='constant', loss_function='cross-entropy', map_decay_c=0.0, max_epochs=5000, max_len_a=1.5, max_len_b=5, max_sentences_of_sampling=0, max_sentences_per_device=0, max_tokens_per_device=0, maxibatch_size=20, maxlen=200, model_type='rnn', model_version=0.2, mrt_alpha=0.005, mrt_loss='SENTENCEBLEU n=4', mrt_ml_mix=0, mrt_reference=False, n_best=False, normalization_alpha=0.0, optimizer='adam', output_hidden_activation='tanh', patience=10, plateau_steps=0, preprocess_script=None, print_per_token_pro=False, prior_model=None, reload='latest_checkpoint', reload_training_progress=True, rnn_dec_base_transition_depth=2, rnn_dec_deep_context=False, rnn_dec_depth=1, rnn_dec_high_transition_depth=1, rnn_dropout_embedding=0.5, rnn_dropout_hidden=0.5, rnn_dropout_source=0.3, rnn_dropout_target=0.3, rnn_enc_depth=1, rnn_enc_transition_depth=2, rnn_layer_normalization=True, rnn_lexical_model=False, rnn_use_dropout=True, sample_freq=10000, sample_way='beam_search', samplesN=100, sampling_temperature=1.0, save_freq=30000, saveto='scripts/..//model/model', shuffle_each_epoch=True, softmax_mixture_size=1, sort_by_length=True, source_dataset='scripts/..//data/korean-english-park.train.bpe.ko', source_dicts=['scripts/..//data/korean-english-park.train.bpe.ko.json'], source_vocab_sizes=[9910], state_size=1024, summary_dir=None, summary_freq=0, target_dataset='scripts/..//data/korean-english-park.train.bpe.en', target_dict='scripts/..//data/korean-english-park.train.bpe.en.json', target_embedding_size=512, target_vocab_size=5953, theano_compat=False, tie_decoder_embeddings=True, tie_encoder_decoder_embeddings=False, token_batch_size=1000, transformer_dec_depth=6, transformer_drophead=0.0, transformer_dropout_attn=0.1, transformer_dropout_embeddings=0.1, transformer_dropout_relu=0.1, transformer_dropout_residual=0.1, transformer_enc_depth=6, transformer_ffn_hidden_size=2048, transformer_num_heads=8, translation_maxlen=200, translation_strategy='beam_search', valid_batch_size=40, valid_bleu_source_dataset='scripts/..//data/korean-english-park.dev.bpe.ko', valid_datasets=['scripts/..//data/korean-english-park.dev.bpe.ko', 'scripts/..//data/korean-english-park.dev.bpe.en'], valid_freq=10000, valid_script='scripts/validate.sh', valid_source_dataset='scripts/..//data/korean-english-park.dev.bpe.ko', valid_target_dataset='scripts/..//data/korean-english-park.dev.bpe.en', valid_token_batch_size=1000, warmup_steps=8000)
2021-04-02 07:11:41.096118: I tensorflow/core/platform/cpu_feature_guard.cc:142] This TensorFlow binary is optimized with oneAPI Deep Neural Network Library (oneDNN)to use the following CPU instructions in performance-critical operations: AVX2 AVX512F FMA
To enable them in other operations, rebuild TensorFlow with the appropriate compiler flags.
2021-04-02 07:11:41.108886: I tensorflow/core/platform/profile_utils/cpu_utils.cc:104] CPU Frequency: 2400000000 Hz
2021-04-02 07:11:41.110970: I tensorflow/compiler/xla/service/service.cc:168] XLA service 0x5612befedba0 initialized for platform Host (this does not guarantee that XLA will be used). Devices:
2021-04-02 07:11:41.111051: I tensorflow/compiler/xla/service/service.cc:176] StreamExecutor device (0): Host, Default Version
2021-04-02 07:11:41.116171: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcuda.so.1
2021-04-02 07:11:42.267591: I tensorflow/compiler/xla/service/service.cc:168] XLA service 0x5612bf0af6e0 initialized for platform CUDA (this does not guarantee that XLA will be used). Devices:
2021-04-02 07:11:42.267741: I tensorflow/compiler/xla/service/service.cc:176] StreamExecutor device (0): Tesla V100-PCIE-16GB, Compute Capability 7.0
2021-04-02 07:11:42.270571: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1716] Found device 0 with properties:
pciBusID: 0000:5e:00.0 name: Tesla V100-PCIE-16GB computeCapability: 7.0
coreClock: 1.38GHz coreCount: 80 deviceMemorySize: 15.75GiB deviceMemoryBandwidth: 836.37GiB/s
2021-04-02 07:11:42.270674: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudart.so.10.1
2021-04-02 07:11:42.276043: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcublas.so.10
2021-04-02 07:11:42.279407: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcufft.so.10
2021-04-02 07:11:42.280411: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcurand.so.10
2021-04-02 07:11:42.283420: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusolver.so.10
2021-04-02 07:11:42.285053: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusparse.so.10
2021-04-02 07:11:47.565824: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudnn.so.7
2021-04-02 07:11:47.571036: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1858] Adding visible gpu devices: 0
2021-04-02 07:11:47.571172: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudart.so.10.1
2021-04-02 07:11:49.279069: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1257] Device interconnect StreamExecutor with strength 1 edge matrix:
2021-04-02 07:11:49.279154: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1263] 0
2021-04-02 07:11:49.279172: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1276] 0: N
2021-04-02 07:11:49.281268: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1402] Created TensorFlow device (/job:localhost/replica:0/task:0/device:GPU:0 with 14729 MB memory) -> physical GPU (device: 0, name: Tesla V100-PCIE-16GB, pci bus id: 0000:5e:00.0, compute capability: 7.0)
2021-04-02 07:11:49.286117: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1716] Found device 0 with properties:
pciBusID: 0000:5e:00.0 name: Tesla V100-PCIE-16GB computeCapability: 7.0
coreClock: 1.38GHz coreCount: 80 deviceMemorySize: 15.75GiB deviceMemoryBandwidth: 836.37GiB/s
2021-04-02 07:11:49.286209: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudart.so.10.1
2021-04-02 07:11:49.286244: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcublas.so.10
2021-04-02 07:11:49.286269: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcufft.so.10
2021-04-02 07:11:49.286293: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcurand.so.10
2021-04-02 07:11:49.286316: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusolver.so.10
2021-04-02 07:11:49.286340: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusparse.so.10
2021-04-02 07:11:49.286364: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudnn.so.7
2021-04-02 07:11:49.288785: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1858] Adding visible gpu devices: 0
2021-04-02 07:11:49.288839: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1257] Device interconnect StreamExecutor with strength 1 edge matrix:
2021-04-02 07:11:49.288879: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1263] 0
2021-04-02 07:11:49.288899: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1276] 0: N
2021-04-02 07:11:49.291537: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1402] Created TensorFlow device (/device:GPU:0 with 14729 MB memory) -> physical GPU (device: 0, name: Tesla V100-PCIE-16GB, pci bus id: 0000:5e:00.0, compute capability: 7.0)
INFO: Building model...
WARNING: From /home/amitkumar.rs.cse17.iitbhu/nematus/nematus/rnn_model.py:59: dropout (from tensorflow.python.keras.legacy_tf_layers.core) is deprecated and will be removed in a future version.
Instructions for updating:
Use keras.layers.dropout instead.
WARNING: From /home/amitkumar.rs.cse17.iitbhu/envNem1/lib/python3.5/site-packages/tensorflow-2.3.1-py3.5-linux-x86_64.egg/tensorflow/python/keras/legacy_tf_layers/core.py:271: Layer.apply (from tensorflow.python.keras.engine.base_layer_v1) is deprecated and will be removed in a future version.
Instructions for updating:
Please use layer.__call__ method instead.
2021-04-02 07:11:51.977754: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1716] Found device 0 with properties:
pciBusID: 0000:5e:00.0 name: Tesla V100-PCIE-16GB computeCapability: 7.0
coreClock: 1.38GHz coreCount: 80 deviceMemorySize: 15.75GiB deviceMemoryBandwidth: 836.37GiB/s
2021-04-02 07:11:51.977826: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudart.so.10.1
2021-04-02 07:11:51.977870: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcublas.so.10
2021-04-02 07:11:51.977889: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcufft.so.10
2021-04-02 07:11:51.977907: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcurand.so.10
2021-04-02 07:11:51.977925: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusolver.so.10
2021-04-02 07:11:51.977942: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcusparse.so.10
2021-04-02 07:11:51.977965: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcudnn.so.7
2021-04-02 07:11:51.979691: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1858] Adding visible gpu devices: 0
INFO: Initializing model parameters from scratch...
INFO: Done
INFO: Reading data...
INFO: Done
INFO: Initial uidx=0
INFO: Starting epoch 0
2021-04-02 07:12:23.860174: I tensorflow/stream_executor/platform/default/dso_loader.cc:48] Successfully opened dynamic library libcublas.so.10
INFO: [2021-04-02 07:33:59] Epoch: 0 Update: 1000 Loss/word: 6.966987346043379 Words/sec: 696.856504668986 Sents/sec: 21.713141805022023
INFO: [2021-04-02 07:55:22] Epoch: 0 Update: 2000 Loss/word: 6.580592949380649 Words/sec: 703.13946539418 Sents/sec: 22.02518408136046
INFO: [2021-04-02 08:16:18] Epoch: 0 Update: 3000 Loss/word: 6.428336913131417 Words/sec: 722.7127947165809 Sents/sec: 22.798869988266855
INFO: Starting epoch 1
INFO: [2021-04-02 08:37:23] Epoch: 1 Update: 4000 Loss/word: 6.330259053899345 Words/sec: 716.8921478972981 Sents/sec: 22.429987003584493
INFO: [2021-04-02 08:58:25] Epoch: 1 Update: 5000 Loss/word: 6.2662326674608595 Words/sec: 717.9178678249805 Sents/sec: 22.6803643125988
INFO: [2021-04-02 09:19:13] Epoch: 1 Update: 6000 Loss/word: 6.226474244214676 Words/sec: 726.10896397206 Sents/sec: 22.971330964205684
INFO: Starting epoch 2
INFO: [2021-04-02 09:40:21] Epoch: 2 Update: 7000 Loss/word: 6.17927944352242 Words/sec: 714.946995990232 Sents/sec: 22.401948114913043
INFO: [2021-04-02 10:01:17] Epoch: 2 Update: 8000 Loss/word: 6.147852558704621 Words/sec: 719.9293130745198 Sents/sec: 22.550224623889665
INFO: [2021-04-02 10:22:19] Epoch: 2 Update: 9000 Loss/word: 6.124515647550154 Words/sec: 718.4753338888931 Sents/sec: 22.38133746941181
INFO: Starting epoch 3
INFO: [2021-04-02 10:43:16] Epoch: 3 Update: 10000 Loss/word: 6.093494990647863 Words/sec: 722.7513458365172 Sents/sec: 22.890552982759697
INFO: SOURCE: T@@ M@@ Z@@ 닷@@ 컴@@ 은 듀@@ 브@@ 로가 네@@ 버@@ 더@@ 주 라@@ 스@@ 베이@@ 거@@ 스에 있는 자택에서 사망했다고 보도했다 .
INFO: TARGET: Du@@ B@@ row died at his home in Las Vegas , Nevada , according to T@@ M@@ Z@@ .@@ com@@ .
INFO: SAMPLE: American G@@ reported C@@ D wasn 't Roger C@@ bad C@@ y@@ d@@ y@@ d , Paris and h@@ ol@@ ly behind your rushed safely today .
INFO: SOURCE: 추@@ 후 에 요@@ 금이 적용@@ 될 수도 있지만 현@@ 재@@ 는 무@@ 료@@ 다 .
INFO: TARGET: initially , there will be no f@@ ee to apply for travel author@@ iz@@ ation , although one may be imposed later .
INFO: SAMPLE: after car@@ c@@ ers often be used pa@@ rent , but a gi@@ gh@@ ty ency has been thought to vote oe @-@ on test !
INFO: SOURCE: 일부 펀@@ 드@@ 매@@ 니@@ 저는 " 기업 이@@ 윤@@ 이 증가@@ 해 주식@@ 시장이 활@@ 성@@ 화@@ 됐다 " 고 전했다 .
INFO: TARGET: fund man@@ ag@@ ers said strong corporate profit growth was supporting stocks .
INFO: SAMPLE: more than $ 3.@@ 5 bailout attacked C@@ m@@ succeed for more barrels a rise , " 29@@ ,000 yen re@@ str@@ ong@@ s to investors .
INFO: SOURCE: 이 바이러@@ 스는 서@@ 쪽으로 빠르게 퍼@@ 지고 있으며 , 관리들은 이것이 곧 서부 해안@@ 에@@ 까지 이를 것으로 우려하고 있다 .
INFO: TARGET: the virus has been spreading quickly w@@ est@@ ward , with officials f@@ ear@@ ing it will soon reach the West Coast .
INFO: SAMPLE: camps are cleared to sea winds and often @-@ anger gl@@ om@@ ing to Iraq as " coast of Hospital always . documentary loc@@ als politicians northwest the route . term of increasing exposure because
INFO: SOURCE: 잭슨 측의 한 변호사는 유@@ 효@@ 한 계약@@ 은 없@@ 었으며 돈@@ 은 대@@ 가@@ 성 없이 주@@ 어진 것이라고 말했습니다 .
INFO: TARGET: a lawyer for Jackson says there was never a v@@ ali@@ d agreement , and that the money was given fre@@ ely .
INFO: SAMPLE: what was not free , but he says to pr@@ os@@ ful citing something they have enti@@ Senator child .
INFO: SOURCE: 총격@@ 범@@ 과 그의 여자@@ 친구 사이 의 말@@ 다@@ 툼 때문에 이번 공격이 발생@@ 했다는 , 확인@@ 되지 않은 보도가 있었다 .
INFO: TARGET: un@@ confirmed reports say the attack followed an ar@@ gu@@ ment between the gunman and his girlfriend .
INFO: SAMPLE: police had left the militants with his wife , cos@@ the@@ gh@@ ics and two were monitoring .
INFO: SOURCE: 왕@@ 복@@ 선은 이틀@@ 간 우주 정거@@ 장을 조사한 뒤 호주 남@@ 동부 3@@ 36@@ km 위에서 작업을 종@@ 료@@ 할 예정이다 .
INFO: TARGET: the shuttle 's two @-@ day ch@@ as@@ e of the space station ended about 2@@ 10 miles above southeastern Australia .
INFO: SAMPLE: captain R@@ on@@ submitted Pat@@ g@@ el will were vi@@ fi@@ ory , as Ch@@ ang@@ am@@ land international space station will maintain to Tibet . Be@@ at@@ ari televised congratul@@ ate the space station
INFO: SOURCE: 한국은 또한 전통적인 경제 논@@ 리에 명@@ 백@@ 히 거@@ 슬@@ 리는 이런 변화를 이@@ 룩@@ 해@@ 내@@ 길 바라고 있다 .
INFO: TARGET: Korea also hopes to accompl@@ ish the shift in apparent de@@ fi@@ ance of con@@ v@@ enti@@ onal economic lo@@ gi@@ c .
INFO: SAMPLE: Korea also ay which for so balance in@@ land .
INFO: SOURCE: 크레@@ 디는 " 체포 당시 15@@ 달 된 아들을 안@@ 고 있었다 " 고 말했다 .
INFO: TARGET: " I was holding my baby at the time , " said McC@@ ready of her 15 @-@ month @-@ old son .
INFO: SAMPLE: ing walked him in London , " P@@ u@@ k@@ crowd said .
INFO: SOURCE: 이슬람 반군@@ 과의 이번 분쟁@@ 은 199@@ 0@@ 년 내@@ 전 이후 레바논@@ 에서 발생한 최악의 유혈@@ 충돌로 기록@@ 되고 있다 .
INFO: TARGET: the sometimes @-@ fi@@ er@@ ce battles mark the worst internal violence since the end of Lebanon 's civil war in 1990 .
INFO: SAMPLE: Su@@ am@@ there still show Robert A@@ March in the biggest looks at northern Iraq in reasons every year for political fighting momentum ;
INFO: SOURCE: T@@ M@@ Z@@ 닷@@ 컴@@ 은 듀@@ 브@@ 로가 네@@ 버@@ 더@@ 주 라@@ 스@@ 베이@@ 거@@ 스에 있는 자택에서 사망했다고 보도했다 .
INFO: TARGET: Du@@ B@@ row died at his home in Las Vegas , Nevada , according to T@@ M@@ Z@@ .@@ com@@ .
INFO: SAMPLE 0: the A@@ T@@ A said he was killed in a hospital in the Los Angeles capital . Cost/Len/Avg -34.647682189941406/76/-0.45589055513080795
INFO: SAMPLE 1: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles capital . Cost/Len/Avg -34.67599105834961/80/-0.43344988822937014
INFO: SAMPLE 2: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles area . Cost/Len/Avg -34.80378341674805/77/-0.4519971872304941
INFO: SAMPLE 3: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of C@@ as@@ e . Cost/Len/Avg -43.47795104980469/91/-0.4777796818659856
INFO: SAMPLE 4: the A@@ T@@ A said he was killed in a hospital in the Los Angeles city of C@@ as@@ e . Cost/Len/Avg -43.573909759521484/87/-0.5008495374657642
INFO: SAMPLE 5: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of B@@ ri@@ ot@@ a . Cost/Len/Avg -45.60481262207031/96/-0.4750501314798991
INFO: SAMPLE 6: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of P@@ h@@ ol@@ o . Cost/Len/Avg -45.89029312133789/95/-0.48305571706671463
INFO: SAMPLE 7: the A@@ T@@ A said he was killed in a hospital in the Los Angeles city of P@@ h@@ ol@@ o . Cost/Len/Avg -45.95040512084961/91/-0.5049495068225232
INFO: SAMPLE 8: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of P@@ h@@ il@@ d . Cost/Len/Avg -46.11641311645508/95/-0.4854359275416324
INFO: SAMPLE 9: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of B@@ ri@@ ot@@ a , the Associated Press reported . Cost/Len/Avg -50.92622756958008/128/-0.39786115288734436
INFO: SAMPLE 10: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of B@@ ri@@ ot@@ a , the AP reported . Cost/Len/Avg -51.131935119628906/114/-0.44852574666341144
INFO: SAMPLE 11: the A@@ T@@ A was killed in a Los Angeles hospital in the Los Angeles city of B@@ ri@@ ot@@ a , the official said . Cost/Len/Avg -51.474334716796875/116/-0.4437442647999731
INFO: SOURCE: 추@@ 후 에 요@@ 금이 적용@@ 될 수도 있지만 현@@ 재@@ 는 무@@ 료@@ 다 .
INFO: TARGET: initially , there will be no f@@ ee to apply for travel author@@ iz@@ ation , although one may be imposed later .
INFO: SAMPLE 0: but it is expected to be expected to be held . Cost/Len/Avg -23.384572982788086/47/-0.4975441060167678
INFO: SAMPLE 1: but it is expected to be expected to be released . Cost/Len/Avg -23.43704605102539/51/-0.4595499225691253
INFO: SAMPLE 2: but it is expected to be expected to be held , but it 's not going to be . Cost/Len/Avg -37.967037200927734/80/-0.47458796501159667
INFO: SAMPLE 3: but it is expected to be expected to be held , but it 's not enough to be . Cost/Len/Avg -38.5172119140625/81/-0.47552113474151236
INFO: SAMPLE 4: but it is expected to be expected to be held , but it 's not going to be able . Cost/Len/Avg -40.010398864746094/85/-0.4707105748793658
INFO: SAMPLE 5: but it is expected to be expected to be held , but it will not be able to be . Cost/Len/Avg -40.27976989746094/79/-0.5098705050311511
INFO: SAMPLE 6: but it is expected to be expected to be held , but it will not be able to be able . Cost/Len/Avg -42.25888442993164/84/-0.5030819574991862
INFO: SAMPLE 7: but it is expected to be expected to be held , but it 's not going to be able to be . Cost/Len/Avg -43.747947692871094/91/-0.4807466779436384
INFO: SAMPLE 8: but it is expected to be expected to be held , but it 's not going to be able to go . Cost/Len/Avg -44.41551208496094/91/-0.48808255038418613
INFO: SAMPLE 9: but it is expected to be expected to be held , but it will not be able to be able to be . Cost/Len/Avg -46.169952392578125/90/-0.5129994710286458
INFO: SAMPLE 10: but it is expected to be expected to be held , but it 's not going to be able to be able . Cost/Len/Avg -46.30955505371094/96/-0.4823911984761556
INFO: SAMPLE 11: but it is expected to be expected to be held , but it will not be able to be able to be able . Cost/Len/Avg -48.63726806640625/95/-0.5119712428042763
INFO: SOURCE: 일부 펀@@ 드@@ 매@@ 니@@ 저는 " 기업 이@@ 윤@@ 이 증가@@ 해 주식@@ 시장이 활@@ 성@@ 화@@ 됐다 " 고 전했다 .
INFO: TARGET: fund man@@ ag@@ ers said strong corporate profit growth was supporting stocks .
INFO: SAMPLE 0: according to the company , the company said , " it 's a lot of growth . Cost/Len/Avg -37.93861770629883/82/-0.4626660695890101
INFO: SAMPLE 1: according to the company , the company said , " it 's a lot of recession . Cost/Len/Avg -37.9777946472168/85/-0.4467975840849035
INFO: SAMPLE 2: according to the company , the company said , " it 's a lot of economic growth . Cost/Len/Avg -38.13514709472656/91/-0.4190675504915007
INFO: SAMPLE 3: according to the company , the company said , " it 's a lot of interest rates . Cost/Len/Avg -38.815006256103516/90/-0.43127784729003904
INFO: SAMPLE 4: according to the company , the company said , " it 's a lot of recession . " Cost/Len/Avg -38.95130157470703/92/-0.4233837127685547
INFO: SAMPLE 5: according to the company , the company said , " it 's a lot of economic growth . " Cost/Len/Avg -39.129940032958984/98/-0.3992851023771325
INFO: SAMPLE 6: according to the company , the company said , " it 's a lot of interest rates . " Cost/Len/Avg -39.95598602294922/97/-0.41191738167988884
INFO: SAMPLE 7: according to the company , the company said , " it 's a lot of recession , " he said . Cost/Len/Avg -40.88528060913086/102/-0.4008360844032437
INFO: SAMPLE 8: according to the company , the company said , " it 's a lot of economic growth , " he said . Cost/Len/Avg -41.4897346496582/108/-0.38416420971905746
INFO: SAMPLE 9: according to the company , the company said , " it 's a lot of interest rates , " he said . Cost/Len/Avg -41.738468170166016/107/-0.3900791417772525
INFO: SAMPLE 10: according to the company , the company said , " it 's a lot of the economy , " he said . Cost/Len/Avg -42.56211471557617/104/-0.4092511030343863
INFO: SAMPLE 11: according to the company , the company said , " it 's a lot of economic growth , " the company said . Cost/Len/Avg -43.87964630126953/117/-0.37503971197666264
INFO: SOURCE: 이 바이러@@ 스는 서@@ 쪽으로 빠르게 퍼@@ 지고 있으며 , 관리들은 이것이 곧 서부 해안@@ 에@@ 까지 이를 것으로 우려하고 있다 .
INFO: TARGET: the virus has been spreading quickly w@@ est@@ ward , with officials f@@ ear@@ ing it will soon reach the West Coast .
INFO: SAMPLE 0: the virus is expected to be in the region . Cost/Len/Avg -21.322120666503906/44/-0.4845936515114524
INFO: SAMPLE 1: the virus is expected to be in the region , officials said . Cost/Len/Avg -23.85358238220215/61/-0.39104233413446143
INFO: SAMPLE 2: the virus is expected to be in the area , officials said . Cost/Len/Avg -24.124916076660156/59/-0.40889688265525687
INFO: SAMPLE 3: the virus is expected to be in the region , but officials say they are still in the region . Cost/Len/Avg -40.866912841796875/93/-0.4394291703419019
INFO: SAMPLE 4: the virus is expected to be in the region , but officials said it would be in the region . Cost/Len/Avg -41.33380126953125/91/-0.45421759636847525
INFO: SAMPLE 5: the virus is expected to be in the region , but officials say they are still in the area . Cost/Len/Avg -41.385223388671875/91/-0.45478267460078986
INFO: SAMPLE 6: the virus is expected to be in the region , but officials say they are still in the border . Cost/Len/Avg -41.601173400878906/93/-0.44732444517074094
INFO: SAMPLE 7: the virus is expected to be in the region , but officials said it would be in the area . Cost/Len/Avg -41.86735916137695/89/-0.470419765858168
INFO: SAMPLE 8: the virus is expected to be in the region , but officials say they are still in the town . Cost/Len/Avg -41.90886306762695/91/-0.4605369567871094
INFO: SAMPLE 9: the virus is expected to be in the region , but officials said it would be in the border . Cost/Len/Avg -41.95485305786133/91/-0.4610423412951794
INFO: SAMPLE 10: the virus is expected to be in the region , but officials say they are still in the city . Cost/Len/Avg -42.01584243774414/91/-0.4617125542609246
INFO: SAMPLE 11: the virus is expected to be in the region , but officials say they are still in the town of the region . Cost/Len/Avg -46.920806884765625/105/-0.44686482747395834
INFO: SOURCE: 잭슨 측의 한 변호사는 유@@ 효@@ 한 계약@@ 은 없@@ 었으며 돈@@ 은 대@@ 가@@ 성 없이 주@@ 어진 것이라고 말했습니다 .
INFO: TARGET: a lawyer for Jackson says there was never a v@@ ali@@ d agreement , and that the money was given fre@@ ely .
INFO: SAMPLE 0: the judge says it 's not clear that it 's not clear that it 's not enough . Cost/Len/Avg -35.635536193847656/91/-0.3915992988334907
INFO: SAMPLE 1: the judge says it 's not clear that it 's not clear that it 's not enough to be . Cost/Len/Avg -39.26071548461914/97/-0.40474964417133136
INFO: SAMPLE 2: the judge says it 's not clear that it was not clear that it 's not enough to be . Cost/Len/Avg -39.52196502685547/93/-0.4249673658801663
INFO: SAMPLE 3: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not enough . Cost/Len/Avg -45.02193832397461/117/-0.38480289165790266
INFO: SAMPLE 4: the judge says it 's not clear that it was not clear that it 's not clear that it 's not enough . Cost/Len/Avg -45.23143768310547/113/-0.40027820958500415
INFO: SAMPLE 5: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not a lot . Cost/Len/Avg -47.7430419921875/116/-0.41157794820851296
INFO: SAMPLE 6: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not enough to be . Cost/Len/Avg -48.963233947753906/123/-0.3980750727459667
INFO: SAMPLE 7: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not a little bit . Cost/Len/Avg -49.09718704223633/123/-0.3991641222946043
INFO: SAMPLE 8: the judge says it 's not clear that it was not clear that it 's not clear that it 's not enough to be . Cost/Len/Avg -49.15306091308594/119/-0.41305093204273896
INFO: SAMPLE 9: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not enough to be . " Cost/Len/Avg -52.79254150390625/130/-0.40609647310697117
INFO: SAMPLE 10: the judge says it 's not clear that it was not clear that it 's not clear that it 's not enough to be . " Cost/Len/Avg -53.00259017944336/126/-0.42065547761462985
INFO: SAMPLE 11: the judge says it 's not clear that it 's not clear that it 's not clear that it 's not a little bit . " Cost/Len/Avg -53.03470993041992/130/-0.40795930715707635
INFO: SOURCE: 총격@@ 범@@ 과 그의 여자@@ 친구 사이 의 말@@ 다@@ 툼 때문에 이번 공격이 발생@@ 했다는 , 확인@@ 되지 않은 보도가 있었다 .
INFO: TARGET: un@@ confirmed reports say the attack followed an ar@@ gu@@ ment between the gunman and his girlfriend .
INFO: SAMPLE 0: the incident was found in the attack . Cost/Len/Avg -16.111059188842773/39/-0.4131040817651993
INFO: SAMPLE 1: the incident was found in the attack , but it was not reported . Cost/Len/Avg -25.738344192504883/65/-0.39597452603853667
INFO: SAMPLE 2: the incident was found in the attack , but it was not immediately reported . Cost/Len/Avg -26.580915451049805/77/-0.34520669416947797
INFO: SAMPLE 3: the incident was found in the attack , but it was not immediately known . Cost/Len/Avg -27.21120262145996/74/-0.36771895434405355
INFO: SAMPLE 4: the incident was found in the attack , but the incident was not immediately known . Cost/Len/Avg -28.442596435546875/84/-0.3386023385184152
INFO: SAMPLE 5: the incident was found in the attack , but it was no evidence of the attack . Cost/Len/Avg -29.79374885559082/78/-0.3819711391742413
INFO: SAMPLE 6: the incident was found in the attack , but it was not immediately known as the attack . Cost/Len/Avg -32.138160705566406/88/-0.3652063716541637
INFO: SAMPLE 7: the incident was found in the attack , but it was not clear that the attack was not known . Cost/Len/Avg -34.64654541015625/92/-0.37659288489300274
INFO: SAMPLE 8: the incident was found in the attack , but it was not clear that the incident was not known . Cost/Len/Avg -34.85503005981445/94/-0.37079819212568566
INFO: SAMPLE 9: the incident was found in the attack , but it was not immediately clear that he was not known . Cost/Len/Avg -35.30630874633789/96/-0.3677740494410197
INFO: SAMPLE 10: the incident was found in the attack , but it was not immediately clear that the attack was not reported . Cost/Len/Avg -35.64750289916992/107/-0.33315423270252265
INFO: SAMPLE 11: the incident was found in the attack , but it was not clear that the attack was not immediately known . Cost/Len/Avg -35.765377044677734/104/-0.34389785619882435
INFO: SOURCE: 왕@@ 복@@ 선은 이틀@@ 간 우주 정거@@ 장을 조사한 뒤 호주 남@@ 동부 3@@ 36@@ km 위에서 작업을 종@@ 료@@ 할 예정이다 .
INFO: TARGET: the shuttle 's two @-@ day ch@@ as@@ e of the space station ended about 2@@ 10 miles above southeastern Australia .
INFO: SAMPLE 0: London , England ( CNN ) Prince Harry is expected to be in the first time after the first time of the space station after the first time of the space station . Cost/Len/Avg -52.85684585571289/160/-0.33035528659820557
/home/amitkumar.rs.cse17.iitbhu/nematus/nematus/train.py:290: RuntimeWarning: divide by zero encountered in true_divide
i, sample, cost, len(sample), cost/len(sample))
INFO: SAMPLE 1: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 2: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 3: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 4: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 5: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 6: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 7: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 8: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 9: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 10: Cost/Len/Avg -10000000.0/0/-inf
INFO: SAMPLE 11: Cost/Len/Avg -10000000.0/0/-inf
INFO: SOURCE: 한국은 또한 전통적인 경제 논@@ 리에 명@@ 백@@ 히 거@@ 슬@@ 리는 이런 변화를 이@@ 룩@@ 해@@ 내@@ 길 바라고 있다 .
INFO: TARGET: Korea also hopes to accompl@@ ish the shift in apparent de@@ fi@@ ance of con@@ v@@ enti@@ onal economic lo@@ gi@@ c .
INFO: SAMPLE 0: South Korea also said it will also be a new economic crisis . Cost/Len/Avg -24.42115020751953/62/-0.3938895194761215
INFO: SAMPLE 1: South Korea also said that Korea is also likely to be a new economic crisis . Cost/Len/Avg -29.65618896484375/78/-0.3802075508313301
INFO: SAMPLE 2: South Korea also said that Korea is also likely to be a new economy . Cost/Len/Avg -29.85259246826172/70/-0.4264656066894531
INFO: SAMPLE 3: South Korea also said that Korea is also likely to make a new economic crisis . Cost/Len/Avg -29.87238121032715/80/-0.3734047651290894
INFO: SAMPLE 4: South Korea also said that Korea is also likely to be a major economic crisis . Cost/Len/Avg -29.930070877075195/80/-0.37412588596343993
INFO: SAMPLE 5: South Korea also said that Korea is also likely to take a new economic crisis . Cost/Len/Avg -30.075361251831055/80/-0.3759420156478882
INFO: SAMPLE 6: South Korea also said that Korea is also likely to get a new economic crisis . Cost/Len/Avg -30.59653091430664/79/-0.3872978596747676
INFO: SAMPLE 7: South Korea also said that Korea is also likely to have a new economic crisis . Cost/Len/Avg -30.841949462890625/80/-0.3855243682861328
INFO: SAMPLE 8: South Korea also said that Korea is also likely to be a new economic crisis in the world . Cost/Len/Avg -35.9841194152832/91/-0.3954298836844308
INFO: SAMPLE 9: South Korea also said that Korea is also likely to make a new economic crisis in the world . Cost/Len/Avg -36.09120178222656/93/-0.3880774385185652
INFO: SAMPLE 10: South Korea also said that Korea is also likely to be a new economic crisis in the country . Cost/Len/Avg -37.242855072021484/93/-0.40046080722603744
INFO: SAMPLE 11: South Korea also said that Korea is also likely to make a new economic crisis in the country . Cost/Len/Avg -37.32313919067383/95/-0.392875149375514
INFO: SOURCE: 크레@@ 디는 " 체포 당시 15@@ 달 된 아들을 안@@ 고 있었다 " 고 말했다 .
INFO: TARGET: " I was holding my baby at the time , " said McC@@ ready of her 15 @-@ month @-@ old son .
INFO: SAMPLE 0: he said he had been arrested last month . Cost/Len/Avg -18.11133575439453/42/-0.43122227986653644
INFO: SAMPLE 1: he said he had been arrested last year . Cost/Len/Avg -18.825273513793945/41/-0.45915301253155966
INFO: SAMPLE 2: he said he was taken to his wife . Cost/Len/Avg -19.07192039489746/35/-0.5449120112827845
INFO: SAMPLE 3: he said he had been arrested last month , " he said . Cost/Len/Avg -22.439355850219727/59/-0.3803280652579615
INFO: SAMPLE 4: he said he was taken to his wife , " he said . Cost/Len/Avg -22.90827751159668/52/-0.4405437982999362
INFO: SAMPLE 5: he said he had been arrested last month , " she said . Cost/Len/Avg -23.00881576538086/60/-0.38348026275634767
INFO: SAMPLE 6: he said he was taken to his wife , " she said . Cost/Len/Avg -23.43367576599121/53/-0.44214482577341907
INFO: SAMPLE 7: he said he had been arrested last month , " he said . " Cost/Len/Avg -28.204511642456055/66/-0.4273410854917584
INFO: SAMPLE 8: he said he was taken to his wife , " he said . " Cost/Len/Avg -28.393362045288086/59/-0.4812434244964082
INFO: SAMPLE 9: he said he had been arrested last month , " he said . " it was a child . Cost/Len/Avg -36.910091400146484/83/-0.44469989638730706
INFO: SAMPLE 10: he said he had been arrested last month , " he said . " it was a child . " Cost/Len/Avg -38.843902587890625/90/-0.43159891764322916
INFO: SAMPLE 11: he said he had been arrested last month , " he said . " it was not a child . Cost/Len/Avg -39.1064338684082/87/-0.44949923986676094
INFO: SOURCE: 이슬람 반군@@ 과의 이번 분쟁@@ 은 199@@ 0@@ 년 내@@ 전 이후 레바논@@ 에서 발생한 최악의 유혈@@ 충돌로 기록@@ 되고 있다 .
INFO: TARGET: the sometimes @-@ fi@@ er@@ ce battles mark the worst internal violence since the end of Lebanon 's civil war in 1990 .
INFO: SAMPLE 0: the Islamic militant group has been held in the northern city of southern Lebanon . Cost/Len/Avg -30.197078704833984/84/-0.35948903220040457
INFO: SAMPLE 1: the Islamic militant group has been held in the northern city of northern Lebanon . Cost/Len/Avg -30.308401107788086/84/-0.3608142989022391
INFO: SAMPLE 2: the Islamic militant group has been held in the northern city of northern Iraq . Cost/Len/Avg -30.530426025390625/81/-0.37691883981963736
INFO: SAMPLE 3: the Islamic militant group has been held in the northern city of northern Iraq in the region . Cost/Len/Avg -37.04274368286133/95/-0.38992361771432976
INFO: SAMPLE 4: the Islamic militant group has been held in the northern city of northern Lebanon , which has been in the region . Cost/Len/Avg -44.6102180480957/115/-0.3879149395486583
INFO: SAMPLE 5: the Islamic militant group has been held in the northern city of southern Lebanon , which has been in the region . Cost/Len/Avg -44.716522216796875/115/-0.38883932362432067
INFO: SAMPLE 6: the Islamic militant group has been held in the northern city of northern Iraq , which has been in the region . Cost/Len/Avg -44.74925994873047/112/-0.39954696382795063
INFO: SAMPLE 7: the Islamic militant group has been held in the northern city of northern Lebanon , which has been the worst in the region . Cost/Len/Avg -48.818878173828125/125/-0.390551025390625
INFO: SAMPLE 8: the Islamic militant group has been held in the northern city of southern Lebanon , which has been the worst in the region . Cost/Len/Avg -48.91313171386719/125/-0.3913050537109375
INFO: SAMPLE 9: the Islamic militant group has been held in the northern city of northern Iraq , which has been the worst in the region . Cost/Len/Avg -48.95859909057617/122/-0.4012999925457063
INFO: SAMPLE 10: the Islamic militant group has been held in the northern city of northern Lebanon , which has been the worst in the country . Cost/Len/Avg -49.13996124267578/126/-0.38999969240218874
INFO: SAMPLE 11: the Islamic militant group has been held in the northern city of southern Lebanon , which has been the worst in the country . Cost/Len/Avg -49.23438262939453/126/-0.3907490684872582
INFO: Seen 8
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INFO: Seen 1000
INFO: Validation cross entropy (AVG/SUM/N_SENTS/N_TOKENS): 187.86940924072266 187869.40924072266 1000 33910
INFO: scripts/..//model/tmpv6367j94/model is not in all_model_checkpoint_paths. Manually adding it.
INFO: Starting external validation.
INFO: NOTE: Length of translations is capped to 200
INFO: Translated 40 sents
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INFO: Translated 1000 sents
INFO: Translated 1000 sents in 23.049481868743896 sec. Speed 43.38492317070448 sents/sec
Traceback (most recent call last):
File "/home/amitkumar.rs.cse17.iitbhu/nematus/nematus/train.py", line 522, in
train(config, sess)
File "/home/amitkumar.rs.cse17.iitbhu/nematus/nematus/train.py", line 322, in train
score = validate_with_script(sess, beam_search_sampler)
File "/home/amitkumar.rs.cse17.iitbhu/nematus/nematus/train.py", line 426, in validate_with_script
stderr=subprocess.PIPE)
File "/opt/ohpc/pub/apps/anaconda3/envs/py35/lib/python3.5/subprocess.py", line 676, in init
restore_signals, start_new_session)
File "/opt/ohpc/pub/apps/anaconda3/envs/py35/lib/python3.5/subprocess.py", line 1289, in _execute_child
raise child_exception_type(errno_num, err_msg)
PermissionError: [Errno 13] Permission denied

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rsennrich commented Apr 7, 2021 via email

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