Published on 6 October 2025
Smart Agentic Interfaces (SIs) have the potential to get Computational Models ready for use more quickly and allow non-expert stakeholders to make use of them. This PhD research will explore the use of Smart Agentic Interfaces for biodiversity models.
This work will:
Computational Models are a staple of scientific research. They model potential solutions to represent inherent trade-offs between them or to gain insights about different outcomes without the need for large-scale experiments. Effective use of Computational Models requires technical expertise as well as subject-specific expert knowledge.
Within RENEW, we are developing a computational model named Ebrel to support land managers’ decision-making. Ebrel focuses on spatial prioritisation, identifying where and what types of habitat should be created or restored to support viable species populations across a landscape. The model has been developed with technical expertise from our environmental intelligence team and subject-specific expert knowledge from our land management team.
In the context of CM, Smart Interfaces (SI) represent a promising application of Large Language Models (see glossary). Large Language Models (LLMs) generate coherent, human-like solutions to cognitive tasks. SIs empower a non-expert stakeholder by delivering just-in-time contextual expertise required for effective use of CMs – in other words, the initial SIs can convert the natural language of the user into the technical terms needed for the CM to action the task. The next stage of SIs will achieve this reasoning and provide answers to full or partial questions of the stakeholder.
The full impacts of this technology are unknown. While SIs have the potential to speed up deployment of CMs, shorten the learning phase, and democratise access to CMs for non-expert users, recent research has also cautioned about the negative effects LLM use can have on skill acquisition and retention – could this harm people’s ability to learn and retain skills?
This PhD research will employ LLMs and to develop a Smart Interface to Computational Models. The research will also study skill acquisition and retention among the users through formal evaluation such as examinations.
Smart Interfaces
A smart interface understands what a user is looking for and brings it forward faster – helpfully anticipating what you need.
Agentic Framework
An agentic framework enables autonomous systems, such as AI agents, to make decisions, adapt to changes and execute actions without human intervention.
Large Language Models
Machine learning understanding of human language – the machine is trained for text generation, translation, summarization, and question answering. LLMs use deep learning techniques and are typically based on transformer architecture, which excels at handling sequential data like text input.