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---
license: mit
language:
- en
tags:
- OntoLearner
- ontology-learning
- industry
pretty_name: Industry
---

<div align="center">
    <img  src="https://raw.githubusercontent.com/sciknoworg/OntoLearner/main/images/logo.png"  alt="OntoLearner"
        style="display: block; margin: 0 auto; width: 500px; height: auto;">
    <h1 style="text-align: center; margin-top: 1em;">Industry Domain Ontologies</h1>
    <a href="https://github.com/sciknoworg/OntoLearner"><img src="https://img.shields.io/badge/GitHub-OntoLearner-blue?logo=github" /></a>
</div>

## Overview
The industry domain encompasses ontologies that systematically represent and model the complex structures, processes, and interactions within industrial settings, including manufacturing systems, smart buildings, and equipment. This domain is pivotal in advancing knowledge representation by enabling the integration, interoperability, and automation of industrial processes, thereby facilitating improved efficiency, innovation, and decision-making. Through precise semantic frameworks, it supports the digital transformation and intelligent management of industrial operations.

## Ontologies
| Ontology ID | Full Name | Classes | Properties | Individuals |
|-------------|-----------|---------|------------|-------------|
| AUTO | Automotive Ontology (AUTO) | 1372 | 336 | 58|
| DBO | Digital Buildings Ontology (DBO) | 3032 | 7 | 35|
| PTO | Product Types Ontology (PTO) | 1002 | 0 | 3002|
| IOF | Industrial Ontology Foundry (IOF) | 212 | 51 | 0|
| TUBES | TUBES System Ontology (TUBES) | 52 | 101 | 0|
| DOAP | The Description of a Project vocabulary (DOAP) | 14 | 0 | 0|
| PKO | Provenance Knowledge Ontology (PKO) | 38 | 93 | 8|

## Dataset Files
Each ontology directory contains the following files:
1. `<ontology_id>.<format>` - The original ontology file
2. `term_typings.json` - Dataset of term to type mappings
3. `taxonomies.json` - Dataset of taxonomic relations
4. `non_taxonomic_relations.json` - Dataset of non-taxonomic relations
5. `<ontology_id>.rst` - Documentation describing the ontology

## Usage
These datasets are intended for ontology learning research and applications. Here's how to use them with OntoLearner:

First of all, install the `OntoLearner` library via PiP:

```bash
pip install ontolearner
```

**How to load an ontology or LLM4OL Paradigm tasks datasets?**
``` python
from ontolearner import AUTO

ontology = AUTO()

# Load an ontology.
ontology.load()  

# Load (or extract) LLMs4OL Paradigm tasks datasets
data = ontology.extract()
```

**How use the loaded dataset for LLM4OL Paradigm task settings?**
``` python
# Import core modules from the OntoLearner library
from ontolearner import AUTO, LearnerPipeline, train_test_split

# Load the AUTO ontology, which contains concepts related to wines, their properties, and categories
ontology = AUTO()
ontology.load()  # Load entities, types, and structured term annotations from the ontology
data = ontology.extract()

# Split into train and test sets
train_data, test_data = train_test_split(data, test_size=0.2, random_state=42)

# Initialize a multi-component learning pipeline (retriever + LLM)
# This configuration enables a Retrieval-Augmented Generation (RAG) setup
pipeline = LearnerPipeline(
    retriever_id='sentence-transformers/all-MiniLM-L6-v2',      # Dense retriever model for nearest neighbor search
    llm_id='Qwen/Qwen2.5-0.5B-Instruct',                        # Lightweight instruction-tuned LLM for reasoning
    hf_token='...',                                             # Hugging Face token for accessing gated models
    batch_size=32,                                              # Batch size for training/prediction if supported
    top_k=5                                                     # Number of top retrievals to include in RAG prompting
)

# Run the pipeline: training, prediction, and evaluation in one call
outputs = pipeline(
    train_data=train_data,
    test_data=test_data,
    evaluate=True,              # Compute metrics like precision, recall, and F1
    task='term-typing'          # Specifies the task
                                # Other options: "taxonomy-discovery" or "non-taxonomy-discovery"
)

# Print final evaluation metrics
print("Metrics:", outputs['metrics'])

# Print the total time taken for the full pipeline execution
print("Elapsed time:", outputs['elapsed_time'])

# Print all outputs (including predictions)
print(outputs)
```

For more detailed documentation, see the [![Documentation](https://img.shields.io/badge/Documentation-ontolearner.readthedocs.io-blue)](https://ontolearner.readthedocs.io)


## Citation

If you find our work helpful, feel free to give us a cite.

```bibtex
@inproceedings{babaei2023llms4ol,
  title={LLMs4OL: Large language models for ontology learning},
  author={Babaei Giglou, Hamed and D’Souza, Jennifer and Auer, S{\"o}ren},
  booktitle={International Semantic Web Conference},
  pages={408--427},
  year={2023},
  organization={Springer}
}
```