=Paper=
{{Paper
|id=Vol-3890/paper-20
|storemode=property
|title=LARA - embracing almost fully automated experimentation from ground up by using semantic
web technologies in Life Sciences
|pdfUrl=https://ceur-ws.org/Vol-3890/paper-20.pdf
|volume=Vol-3890
}}
==LARA - embracing almost fully automated experimentation from ground up by using semantic
web technologies in Life Sciences==
LARA - embracing almost fully automated
experimentation from ground up by using semantic
web technologies in Life Sciences
Mark Doerr1,*,† , Stefan Born2,†
1
University Greifswald, Felix-Hausdorff Str.4 , 17489 Greifswald, Germany
2
Technische Universität Berlin, Institute for Biotechnology, Berlin, Germany
Abstract
LARA (https://gitlab.com/larasuite) is an open source lab automation and research data
management system of the next generation:
It utilises radical automation of most aspects of lab experimentation by applying standard-
ised lab communication protocols, e.g. SiLA[1], between machines and human scientists, a
new, Turing complete process- and procedure description language pythonLab [2], an open lab
orchestrator [3] for running procedures and processes in the lab, open, JSON-LD based, linked
data- and metadata formats, called SciDat [4], ontology based data representation and data
synchronisation between different LARA instances and other repositories, like Dataverse and
Zenodo (https://zenodo.org). Data / metadata can be queried through the LARA SPARQL
endpoint. LARA strives for collecting and combining all data that is relevant to most common
Life-Science experiments, like experiment planning, processes and procedures running the
experiments (with their documented outcome), parts- and devices used in the experiments,
substances, organisms, samples, etc.
It is designed to reduce data inputs of scientist to the bare minimum and make data
accessible and findable through deep query infrastructures.
This also enables advanced Machine Learning and AI applications to access data in a
machine-understandable, "semantic" form.
To illustrate this interoperability between the LARA database and Machine Learning
algorithms, a demonstration with a newly developed Machine Learning Framework that uses
semantic technologies is planned.
Keywords
semantic web, life science, labautomation, robotics, machine learning,
Acknowledgments
The authors thank the German Research Foundation / Deutsche Forschungsgemeinschaft
DFG, (grant:NFDI4DCat) and the German Federal Ministry of Education and Research,
Semantic Web Applications and Tools for Health Care and Life Science conference (SWAT4HCLS 2024),
February 26–29, 2024, Leiden, The Netherlands
*
Corresponding author.
email: mark.doerr@uni-greifswald.de (M. Doerr); Stefan.Born@posteo.de (S. Born)
url: https://gitlab.com/larasuite/ (M. Doerr); https://kiwi-biolab.de (S. Born)
orcid: 0000-0003-3270-6895 (M. Doerr); 0000-0001-7838-9157 (S. Born)
© 2024 Copyright for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0
International (CC BY 4.0).
CEUR
Workshop
Proceedings
http://ceur-ws.org
ISSN 1613-0073
CEUR Workshop Proceedings (CEUR-WS.org)
BMBF (grant 01DD20002C) for their financial support.
References
[1] sila standard.org, SiLA - standardisation in lab-automation, 2023. URL: https://
sila-standard.org.
[2] M. Doerr, S. Maak, pythonLab - labprocess- and procedure description language, 2023.
URL: https://gitlab.com/opensourcelab/pythonlab.
[3] S. Maak, M. Doerr, Lab - orchestrator, 2023. URL: https://gitlab.com/opensourcelab/
laborchestrator.
[4] M. Doerr, SciDat - scientfic data and metadata standard, 2023. URL: https://gitlab.
com/opensourcelab/scientificdata/scidat.