A semantic parser for commands from the RoboCup@Home General Purpose Service Robot task.
- Utterance to λ-calculus representation parser
- Lexer/parser for loading the released command generation CFG
- Tools for generating commands along with a λ-calculus representation
- Crowd-sourcing interface for collecting paraphrases
If you use this code or data, consider citing our paper Neural Semantic Parsing for Command Understanding in General-Purpose Service Robots. The data collected for this paper is available separately.
Set up a virtual environment using at least Python 3.6:
python3.7 -m virtualenv venv
source venv/bin/activate
pip install -r requirements.txt
The latest grammar and knowledgebase files (pulled from the generator) are provided in the resources directory. The grammar format specification will clarify how to interpret the files.
To produce the dataset, see data/make_dataset.py
.
We base our training on previous work using AllenNLP for seq2seq semantic parser training. All of our experiments are
declaratively specified in the experiments
directory.
You can run them with
allennlp train \
experiments/seq2seq.json \
-s results/seq2seq \
--include-package gpsr_command_understanding
You can monitor training with Tensorboard, just point it at the log directory.
The train_all_models
script will train every config back to back.
./scripts/train_all_models gen_demo experiments -t data/gen/train.txt -v data/gen/val.txt
To see a model's output on a data file, use the predict command
allennlp predict --archive-path results/ --include-package gpsr_command_understanding
You can poke at a trained model through the browser using AllenNLP as well
python -m gpsr_command_understanding.demo.logging_server \
--archive-path results/seq2seq/model.tar.gz \
--predictor command_parser\
--include-package gpsr_command_understanding