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DeepResearch_Eco: A Recursive AgenticWorkflow for Complex Scientific Question Answering in Ecology

DeepResearch_Eco: A Recursive AgenticWorkflow for Complex Scientific Question Answering in Ecology

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Authors

Jennifer D'Souza, Endres Keno Sander, Andrei Aioanei

Abstract

We introduce DeepResearch_Eco, a novel agentic LLM-based system for automated scientific synthesis that supports recursive, depth- and breadth-controlled exploration of original research questions—enhancing search diversity and nuance in the retrieval of relevant scientific literature. Unlike conventional retrieval-augmented generation pipelines, DeepResearch enables user-controllable synthesis with transparent reasoning and parameter-driven configurability, facilitating high-throughput integration of domain-specific evidence while maintaining analytical rigor. Applied to 49 ecological research questions, DeepResearch achieves up to a 21-fold increase
in source integration and a 14.9-fold rise in sources integrated per 1,000 words. High-parameter settings yield expert-level analytical depth and contextual diversity.
Source code available at: https://github.com/sciknoworg/deep-research.

DOI

https://doi.org/10.32942/X2M06G

Subjects

Computer Sciences, Ecology and Evolutionary Biology

Keywords

agentic artificial intelligenceAI-based agents, agents for science, deep research, AI-assisted research workflows, agentic artificial intelligence, AI-based agents, deep research for ecology

Dates

Published: 2025-07-27 22:28

Last Updated: 2025-07-27 22:28

License

CC-BY Attribution-NonCommercial-ShareAlike 4.0 International

Additional Metadata

Conflict of interest statement:
None

Data and Code Availability Statement:
https://github.com/sciknoworg/deep-research

Language:
English