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Machine-file extractors and transformers for semantic schema pipelines

Project description

semantic-transformers

A library and a curated collection of parsers that bridge raw instrument output files and the semantic-schemas knowledge graph pipeline.

What this repository contains

semantic-transformers/
  src/semantic_transformers/   Python library (Transformer, QuickMapper, …)
    parsers/                   Machine-specific file parsers
      <domain>/                Mirrors the semantic-schemas folder structure
        <specialisation>/
          <instrument>/        One folder per instrument model
            parser.py          Language-agnostic parsing logic
            README.md          Quick-start, schema compatibility, and known limitations
            CHANGELOG.md       Schema compatibility history
            <lang>/            One subfolder per export language (e.g. de/, en/)
              column_mapping.json  Maps locale-specific column names to ontology IRIs and units
  docs/                        Guides for users and contributors

The two parts

1. The library (src/semantic_transformers/)

Class Role
Parser Protocol to implement when adding support for a new instrument
ParseResult What every parser returns: simplified JSON + DataFrame
Transformer Runs parsing → JSONata transform → RDF graph
TransformResult What Transformer.run() returns: RDF graph + DataFrame
QuickMapper Turns any tabular file into RDF using a simple YAML mapping (no parser needed)

2. The parsers (src/semantic_transformers/parsers/)

Each parser targets a specific instrument model. The folder path mirrors the schemas/ tree in semantic-schemas:

Schema Instrument Import path
characterization/tensile-test/TTO Zwick/Roell (testXpert III) semantic_transformers.parsers.characterization.tensile_test.testxpert_iii

Installation

Using pip (recommended)

# Install the transformers library
pip install semantic-transformers

# Optional: install optional dependencies
pip install semantic-transformers[excel]  # for Excel file support
pip install semantic-transformers[dev]    # for development and testing

Development installation

Both repositories are designed to be cloned as siblings under a shared folder:

mkdir semantic-dataspace && cd semantic-dataspace

git clone https://github.com/Semantic-Dataspace/semantic-schemas
git clone https://github.com/Semantic-Dataspace/semantic-transformers

python3 -m venv .venv
source .venv/bin/activate        # Windows: .venv\Scripts\activate

pip install -e semantic-transformers/
pip install jupyterlab            # only needed for the interactive notebooks

Two ways to use this library

Option A: you have a supported instrument

Use a ready-made parser and the matching schema notebook. For a Zwick/Roell tensile test:

jupyter lab semantic-schemas/schemas/characterization/tensile-test/TTO/docs/2_tensile_test_csv_workflow.ipynb

Edit Step 0 (one line, point to your file) and run all cells. Done.

Option B: you have a tabular file with no existing parser

Use QuickMapper. Provide a short YAML that names the columns and points each one at an ontology class IRI:

from semantic_transformers import QuickMapper

mapping = {
    "label": "my experiment",
    "columns": {
        "Force": {
            "iri":  "https://w3id.org/pmd/tto/StandardForce",
            "unit": "http://qudt.org/vocab/unit/N",
        },
        "Extension": {
            "iri": "https://w3id.org/pmd/tto/Extension",
        },
    },
}

result = QuickMapper(mapping).run("my_data.csv")
print(result.graph.serialize(format="turtle"))
print(result.dataframe.head())

Supported file formats: CSV, TSV, Excel (.xlsx), Parquet, JSON. See the QuickMapper notebook for a guided walkthrough.

Contributing

To contribute or run tests locally, see CONTRIBUTING.md for setup and development workflow instructions.

Documentation

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