Nl2ltl
Natural Language (NL) to Linear Temporal Logic (LTL)
Install / Use
/learn @IBM/Nl2ltlREADME
NL2LTL is an interface to translate natural language (NL) utterances to linear temporal logic (LTL) formulas.
🏆 NL2LTL won the People's Choice Best System Demonstration Award Runner-Up in the ICAPS 2023 System Demonstration Track in Prague. Read more about it here.
Installation
- from PyPI:
pip install nl2ltl
- from source (
mainbranch):
pip install git+https://github.com/IBM/nl2ltl.git
- or clone the repository and install the package:
git clone https://github.com/IBM/nl2ltl.git
cd nl2ltl
pip install -e .
Quickstart
Once you have installed all dependencies you are ready to go with:
from nl2ltl import translate
from nl2ltl.engines.gpt.core import GPTEngine, Models
from nl2ltl.filters.simple_filters import BasicFilter
from nl2ltl.engines.utils import pretty
engine = GPTEngine()
filter = BasicFilter()
utterance = "Eventually send me a Slack after receiving a Gmail"
ltlf_formulas = translate(utterance, engine, filter)
pretty(ltlf_formulas)
The translate function takes a natural language utterance, an engine and an
option filter, and outputs the best matching
pylogics LTL formulas.
NOTE: Before using the NL2LTL translation function, depending on the
engine you want to use, make sure all preconditions for such an engine are met.
For instance, Rasa requires a .tar.gz format trained model in the
models/ folder to run. To train the model use the available NL2LTL train(...) API.
NLU Engines
- [x] GPT-3.x large language models
- [x] GPT-4 large language model
- [x] Rasa intents/entities classifier (to use Rasa, please install it with
pip install -e ".[rasa]") - [ ] Watson Assistant intents/entities classifier -- Planned
NOTE: To use OpenAI GPT models don't forget to add the OPEN_API_KEY environment
variable with:
export OPENAI_API_KEY=your_api_key
Write your own Engine
You can easily write your own engine (i.e., intents/entities classifier, language model, etc.) by implementing the Engine interface:
from nl2ltl.engines.base import Engine
from pylogics.syntax.base import Formula
class MyEngine(Engine):
def translate(self, utterance: str, filtering: Filter) -> Dict[Formula, float]:
"""From NL to LTL."""
Then, use it as a parameter in the main entry point:
my_engine = MyEngine()
ltl_formulas = translate(utterance, engine=my_engine)
Write your own Filter
You can easily write your own filtering algorithm by implementing the Filter interface:
from nl2ltl.filters.base import Filter
from pylogics.syntax.base import Formula
class MyFilter(Filter):
def enforce(
self, output: Dict[Formula, float], entities: Dict[str, float], **kwargs
) -> Dict[Formula, float]:
"""Filtering algorithm."""
Then, use it as a parameter in the main entry point:
my_engine = MyEngine()
my_filter = MyFilter()
ltl_formulas = translate(utterance, engine=my_engine, filter=my_filter)
Development
Contributions are welcome! Here's how to set up the development environment:
- set up your preferred virtualenv environment
- clone the repo:
git clone https://github.com/IBM/nl2ltl.git && cd nl2ltl - install dependencies:
pip install -e . - install dev dependencies:
pip install -e ".[dev]" - install pre-commit:
pre-commit install - sign-off your commits using the
-sflag in the commit message to be compliant with the DCO
Tests
To run tests: tox
To run the code tests only: tox -e py310
Docs
To build the docs: mkdocs build
To view documentation in a browser: mkdocs serve
and then go to http://localhost:8000
Citing
@inproceedings{icaps2023fc,
author = {Francesco Fuggitti and Tathagata Chakraborti},
title = {{NL2LTL} -- A Python Package for Converting Natural Language ({NL}) Instructions to Linear Temporal Logic ({LTL}) Formulas},
booktitle = {{ICAPS}},
year = {2023},
note = {Best System Demonstration Award Runner-Up.},
url_code = {https://github.com/IBM/nl2ltl},
}
and
@inproceedings{aaai2023fc,
author = {Francesco Fuggitti and Tathagata Chakraborti},
title = {{NL2LTL} -- A Python Package for Converting Natural Language ({NL}) Instructions to Linear Temporal Logic ({LTL}) Formulas},
booktitle = {{AAAI}},
year = {2023},
note = {System Demonstration.},
url_code = {https://github.com/IBM/nl2ltl},
}
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