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f-lm's Introduction

F-LM

Language modeling. This codebase contains implementation of G-LSTM and F-LSTM cells from [1]. It also might contain some ongoing experiments.

This code was forked from https://github.com/rafaljozefowicz/lm and contains "BIGLSTM" language model baseline from [2].

Current code runs on Tensorflow r1.5 and supports multi-GPU data parallelism using synchronized gradient updates.

Perplexity

On One Billion Words benchmark using 8 GPUs in one DGX-1, BIG G-LSTM G4 was able to achieve 24.29 after 2 weeks of training and 23.36 after 3 weeks.

On 02/06/2018 We found an issue with our experimental setup which makes perplexity numbers listed in the paper invalid.

See current numbers in the table below.

On DGX Station, after 1 week of training using all 4 GPUs (Tesla V100) and batch size of 256 per GPU:

Model Perplexity Steps WPS
BIGLSTM 35.1 ~0.99M ~33.8K
BIG F-LSTM F512 36.3 ~1.67M ~56.5K
BIG G-LSTM G4 40.6 ~1.65M ~56K
BIG G-LSTM G2 36 ~1.37M ~47.1K
BIG G-LSTM G8 39.4 ~1.7M ~58.5

Dependencies

To run

Assuming the data directory is in: /raid/okuchaiev/Data/LM1B/1-billion-word-language-modeling-benchmark-r13output/, execute:

export CUDA_VISIBLE_DEVICES=0,1,2,3

SECONDS=604800
LOGSUFFIX=FLSTM-F512-1week

python /home/okuchaiev/repos/f-lm/single_lm_train.py --logdir=/raid/okuchaiev/Workspace/LM/GLSTM-G4/$LOGSUFFIX --num_gpus=4 --datadir=/raid/okuchaiev/Data/LM/LM1B/1-billion-word-language-modeling-benchmark-r13output/ --hpconfig run_profiler=False,float16_rnn=False,max_time=$SECONDS,num_steps=20,num_shards=8,num_layers=2,learning_rate=0.2,max_grad_norm=1,keep_prob=0.9,emb_size=1024,projected_size=1024,state_size=8192,num_sampled=8192,batch_size=256,fact_size=512  >> train_$LOGSUFFIX.log 2>&1

python /home/okuchaiev/repos/f-lm/single_lm_train.py --logdir=/raid/okuchaiev/Workspace/LM/GLSTM-G4/$LOGSUFFIX --num_gpus=1 --mode=eval_full --datadir=/raid/okuchaiev/Data/LM/LM1B/1-billion-word-language-modeling-benchmark-r13output/ --hpconfig run_profiler=False,float16_rnn=False,max_time=$SECONDS,num_steps=20,num_shards=8,num_layers=2,learning_rate=0.2,max_grad_norm=1,keep_prob=0.9,emb_size=1024,projected_size=1024,state_size=8192,num_sampled=8192,batch_size=1,fact_size=512

  • To use G-LSTM cell specify num_of_groups parameter.
  • To use F-LSTM cell specify fact_size parameter.

Note, that current data reader may miss some tokens when constructing mini-batches which can have a minor effect on final perplexity.

For most accurate results, use batch_size=1 and num_steps=1 in evaluation. Thanks to Ciprian for noticing this.

To change hyper-parameters

The command accepts and additional argument --hpconfig which allows to override various hyper-parameters, including:

  • batch_size=128 - batch size per GPU. Global batch size = batch_size*num_gpus
  • num_steps=20 - number of LSTM cell timesteps
  • num_shards=8 - embedding and softmax matrices are split into this many shards
  • num_layers=1 - numer of LSTM layers
  • learning_rate=0.2 - learning rate for optimizer
  • max_grad_norm=10.0 - maximum acceptable gradient norm for LSTM layers
  • keep_prob=0.9 - dropout keep probability
  • optimizer=0 - which optimizer to use: Adagrad(0), Momentum(1), Adam(2), RMSProp(3), SGD(4)
  • vocab_size=793470 - vocabluary size
  • emb_size=512 - size of the embedding (should be same as projected_size)
  • state_size=2048 - LSTM cell size
  • projected_size=512 - LSTM projection size
  • num_sampled=8192 - training uses sampled softmax, number of samples)
  • do_summaries=False - generate weight and grad stats for Tensorboard
  • max_time=180 - max time (in seconds) to run
  • fact_size - to use F-LSTM cell, this should be set to factor size
  • num_of_groups=0 - to use G-LSTM cell, this should be set to number of groups
  • save_model_every_min=30 - how often to checkpoint
  • save_summary_every_min=16 - how often to save summaries
  • use_residual=False - whether to use LSTM residual connections

Feedback

Forked code and GLSTM/FLSTM cells: [email protected]

References

f-lm's People

Contributors

deeplearningathome avatar okuchaiev avatar rafaljozefowicz avatar

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