AutoSci presents a four-module LLM agent system with schema-governed memory, lifecycle orchestration, DAG operators, and feedback-driven evolution for automated scientific research.
NORA: A Harness-Engineered Autonomous Research Agent for End-to-End Spatial Data Science
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
The automation of scientific research workflows has emerged as a transformative frontier in artificial intelligence, yet existing autonomous research agents remain largely domain-agnostic, lacking the specialized reasoning, method selection, and data acquisition capabilities required for rigorous spatial data science. This paper introduces NORA (Night Owl Research Agent), a harness-engineered, multi-agent autonomous research system purpose-built for GIScience and spatial data science. NORA orchestrates the complete research lifecycle through a skills-first architecture comprising 21 domain-specialized workflow skills, 9 specialist sub-agents, and custom Model Context Protocol (MCP) servers. Central to the system's design are two novel domain-specialized skills: a spatial analysis skill unit that encodes decision frameworks for exploratory spatial data analysis, spatial regression, and diagnostics; and a spatial data download skill that supports reproducible acquisition from authoritative geospatial data sources. We formalize the concept of harness engineering for scientific research agents, demonstrating how lifecycle hooks, safety gates, generator-evaluator separation, human-in-the-loop, and state persistence ensure reliable and reproducible autonomous research. We evaluate NORA through case studies by 6 domain specialists and 3 LLM reviewers across seven dimensions (novelty, quality, rigor, etc). Results demonstrate that domain-specialized harness engineering substantially improves the efficiency and quality of research output compared to general-purpose agent configurations.
years
2026 2verdicts
UNVERDICTED 2representative citing papers
Agon is a new autonomous research system using prompt economy loops across 444 iterations to demonstrate scalable omnidisciplinary research and a taxonomy separating machine-fixable failures from those needing human judgment.
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AutoSci: A Memory-Centric Agentic System for the Full Scientific Research Lifecycle
AutoSci presents a four-module LLM agent system with schema-governed memory, lifecycle orchestration, DAG operators, and feedback-driven evolution for automated scientific research.
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Agon: An Autonomous Large-Scale Omnidisciplinary Research System Built on Prompt Economy
Agon is a new autonomous research system using prompt economy loops across 444 iterations to demonstrate scalable omnidisciplinary research and a taxonomy separating machine-fixable failures from those needing human judgment.