![No Maintenance Intended](https://img.shields.io/badge/No%20Maintenance%20Intended-%E2%9C%95-red.svg) ![TensorFlow Requirement: 1.x](https://img.shields.io/badge/TensorFlow%20Requirement-1.x-brightgreen) ![TensorFlow 2 Not Supported](https://img.shields.io/badge/TensorFlow%202%20Not%20Supported-%E2%9C%95-red.svg) # NeuralGPU Code for the Neural GPU model described in http://arxiv.org/abs/1511.08228. The extended version was described in https://arxiv.org/abs/1610.08613. Requirements: * TensorFlow (see tensorflow.org for how to install) The model can be trained on the following algorithmic tasks: * `sort` - Sort a symbol list * `kvsort` - Sort symbol keys in dictionary * `id` - Return the same symbol list * `rev` - Reverse a symbol list * `rev2` - Reverse a symbol dictionary by key * `incr` - Add one to a symbol value * `add` - Long decimal addition * `left` - First symbol in list * `right` - Last symbol in list * `left-shift` - Left shift a symbol list * `right-shift` - Right shift a symbol list * `bmul` - Long binary multiplication * `mul` - Long decimal multiplication * `dup` - Duplicate a symbol list with padding * `badd` - Long binary addition * `qadd` - Long quaternary addition * `search` - Search for symbol key in dictionary It can also be trained on the WMT English-French translation task: * `wmt` - WMT English-French translation (data will be downloaded) The value range for symbols are defined by the `vocab_size` flag. In particular, the values are in the range `vocab_size - 1`. So if you set `--vocab_size=16` (the default) then `--problem=rev` will be reversing lists of 15 symbols, and `--problem=id` will be identity on a list of up to 15 symbols. To train the model on the binary multiplication task run: ``` python neural_gpu_trainer.py --problem=bmul ``` This trains the Extended Neural GPU, to train the original model run: ``` python neural_gpu_trainer.py --problem=bmul --beam_size=0 ``` While training, interim / checkpoint model parameters will be written to `/tmp/neural_gpu/`. Once the amount of error gets down to what you're comfortable with, hit `Ctrl-C` to stop the training process. The latest model parameters will be in `/tmp/neural_gpu/neural_gpu.ckpt-` and used on any subsequent run. To evaluate a trained model on how well it decodes run: ``` python neural_gpu_trainer.py --problem=bmul --mode=1 ``` To interact with a model (experimental, see code) run: ``` python neural_gpu_trainer.py --problem=bmul --mode=2 ``` To train on WMT data, set a larger --nmaps and --vocab_size and avoid curriculum: ``` python neural_gpu_trainer.py --problem=wmt --vocab_size=32768 --nmaps=256 --vec_size=256 --curriculum_seq=1.0 --max_length=60 --data_dir ~/wmt ``` With less memory, try lower batch size, e.g. `--batch_size=4`. With more GPUs in your system, there will be a batch on every GPU so you can run larger models. For example, `--batch_size=4 --num_gpus=4 --nmaps=512 --vec_size=512` will run a large model (512-size) on 4 GPUs, with effective batches of 4*4=16. Maintained by Lukasz Kaiser (lukaszkaiser)