A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research

Designing and conducting experiments is a fundamental process across various scientific disciplines, such as materials science, biology, medicine, and chemistry. However, experimental research still predominantly relies on traditional, time-consuming, resource-intensive, and costly trial-and-error e...

Full description

Saved in:
Bibliographic Details
Main Authors: Lukas Nolte, Sven Tomforde
Format: Article
Language:English
Published: MDPI AG 2025-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/15/9/5208
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850279228577153024
author Lukas Nolte
Sven Tomforde
author_facet Lukas Nolte
Sven Tomforde
author_sort Lukas Nolte
collection DOAJ
description Designing and conducting experiments is a fundamental process across various scientific disciplines, such as materials science, biology, medicine, and chemistry. However, experimental research still predominantly relies on traditional, time-consuming, resource-intensive, and costly trial-and-error experimentation approaches that hinder rapid discovery, reproducibility, and scalability. Recent advances in artificial intelligence (AI) and machine learning (ML) offer promising alternatives, but a comprehensive overview of their implementations in experimental design is lacking. This research fills this gap by providing a structured overview and analysis of existing frameworks for AI-driven experimental design, supporting researchers in selecting and developing suitable AI-driven approaches to automate and accelerate their experimental research. Moreover, it discusses the current limitations and challenges of AI techniques and ethical issues related to AI-driven experimental design frameworks. A search and filter strategy is developed and applied to appropriate databases with the objective of identifying the relevant literature. Here, active learning, particularly Bayesian optimization, stands out as the predominantly used methodology. The majority of frameworks are partially autonomous, while fully autonomous frameworks are underrepresented. However, more research is needed in the field of AI-driven experimental design due to the low number of relevant papers obtained.
format Article
id doaj-art-703daa5d94e8432f870fe903d230f92e
institution OA Journals
issn 2076-3417
language English
publishDate 2025-05-01
publisher MDPI AG
record_format Article
series Applied Sciences
spelling doaj-art-703daa5d94e8432f870fe903d230f92e2025-08-20T01:49:10ZengMDPI AGApplied Sciences2076-34172025-05-01159520810.3390/app15095208A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific ResearchLukas Nolte0Sven Tomforde1Intelligent Systems, Kiel University, Hermann-Rodewald-Straße 3, 24118 Kiel, GermanyIntelligent Systems, Kiel University, Hermann-Rodewald-Straße 3, 24118 Kiel, GermanyDesigning and conducting experiments is a fundamental process across various scientific disciplines, such as materials science, biology, medicine, and chemistry. However, experimental research still predominantly relies on traditional, time-consuming, resource-intensive, and costly trial-and-error experimentation approaches that hinder rapid discovery, reproducibility, and scalability. Recent advances in artificial intelligence (AI) and machine learning (ML) offer promising alternatives, but a comprehensive overview of their implementations in experimental design is lacking. This research fills this gap by providing a structured overview and analysis of existing frameworks for AI-driven experimental design, supporting researchers in selecting and developing suitable AI-driven approaches to automate and accelerate their experimental research. Moreover, it discusses the current limitations and challenges of AI techniques and ethical issues related to AI-driven experimental design frameworks. A search and filter strategy is developed and applied to appropriate databases with the objective of identifying the relevant literature. Here, active learning, particularly Bayesian optimization, stands out as the predominantly used methodology. The majority of frameworks are partially autonomous, while fully autonomous frameworks are underrepresented. However, more research is needed in the field of AI-driven experimental design due to the low number of relevant papers obtained.https://www.mdpi.com/2076-3417/15/9/5208AI-drivenexperimental designautonomousoptimizationactive learning
spellingShingle Lukas Nolte
Sven Tomforde
A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
Applied Sciences
AI-driven
experimental design
autonomous
optimization
active learning
title A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
title_full A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
title_fullStr A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
title_full_unstemmed A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
title_short A Helping Hand: A Survey About AI-Driven Experimental Design for Accelerating Scientific Research
title_sort helping hand a survey about ai driven experimental design for accelerating scientific research
topic AI-driven
experimental design
autonomous
optimization
active learning
url https://www.mdpi.com/2076-3417/15/9/5208
work_keys_str_mv AT lukasnolte ahelpinghandasurveyaboutaidrivenexperimentaldesignforacceleratingscientificresearch
AT sventomforde ahelpinghandasurveyaboutaidrivenexperimentaldesignforacceleratingscientificresearch
AT lukasnolte helpinghandasurveyaboutaidrivenexperimentaldesignforacceleratingscientificresearch
AT sventomforde helpinghandasurveyaboutaidrivenexperimentaldesignforacceleratingscientificresearch