zincbase
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A batteries-included kit for knowledge graphs
Hello!
The tech behind parts of ZincBase was acquired. This repo is still here for reference, but it is deprecated.
Fortunately, work still goes on. Apart from a couple of fringe bits, the active repo lives here.
The new owner of ZincBase as it is today is ComplexDB.
Alright, you still want to continue

ZincBase is a state of the art knowledge base. It does the following:
- Extract facts (aka triples and rules) from unstructured data/text
- Store and retrieve those facts efficiently
- Build them into a graph
- Provide ways to query the graph, including via bleeding-edge graph neural networks.
Zincbase exists to answer questions like "what is the probability that Tom likes LARPing", or "who likes LARPing", or "classify people into LARPers vs normies":

It combines the latest in neural networks with symbolic logic (think expert systems and prolog) and graph search.
View full documentation here.
Quickstart
from zincbase import KB
kb = KB()
kb.store('eats(tom, rice)')
for ans in kb.query('eats(tom, Food)'):
print(ans['Food']) # prints 'rice'
...
# The included assets/countries_s1_train.csv contains triples like:
# (namibia, locatedin, africa)
# (lithuania, neighbor, poland)
kb = KB()
kb.from_csv('./assets/countries.csv')
kb.build_kg_model(cuda=False, embedding_size=40)
kb.train_kg_model(steps=2000, batch_size=1, verbose=False)
kb.estimate_triple_prob('fiji', 'locatedin', 'melanesia')
0.8467
Requirements
- Python 3
- Libraries from requirements.txt
- GPU preferable for large graphs but not required
Installation
pip install -r requirements.txt
Note: Requirements might differ for PyTorch depending on your system.
Testing
python test/test_main.py
python test/test_graph.py
python test/test_lists.py
python test/test_nn_basic.py
python test/test_nn.py
python test/test_neg_examples.py
python test/test_truthiness.py
python -m doctest zincbase/zincbase.py
Validation
"Countries" and "FB15k" datasets are included in this repo.
There is a script to evaluate that ZincBase gets at least as good performance on the Countries dataset as the original (2019) RotatE paper. From the repo's root directory:
python examples/eval_countries_s3.py
It tests the hardest Countries task and prints out the AUC ROC, which should be ~ 0.95 to match the paper. It takes about 30 minutes to run on a modern GPU.
There is also a script to evaluate performance on FB15k: python examples/fb15k_mrr.py
.
Building documentation
From docs/ dir: make html
. If something changed a lot: sphinx-apidoc -o . ..
TODO
- Add documentation
- to_csv method
- utilize postgres as backend triple store
- The to_csv/from_csv methods do not yet support node attributes.
- Add relation extraction from arbitrary unstructured text
- Add context to triple - that is interpreted by BERT/ULM/GPT-2 similar and put into an embedding that's concat'd to the KG embedding.
- Reinforcement learning for graph traversal.
References & Acknowledgements
L334: Computational Syntax and Semantics -- Introduction to Prolog, Steve Harlow
Open Book Project: Prolog in Python, Chris Meyers
Prolog Interpreter in Javascript
Citing
If you use this software, please consider citing:
@software{zincbase,
author = {{Tom Grek}},
title = {ZincBase: A state of the art knowledge base},
url = {https://github.com/tomgrek/zincbase},
version = {0.1.1},
date = {2019-05-12}
}
Contributing
See CONTRIBUTING. And please do!