GeoMCP: A Trustworthy Framework for AI-Assisted Analytical Geotechnical Engineering
Yared W. Bekele

TL;DR
GeoMCP is a framework that transforms geotechnical engineering methods into structured, verifiable data, enabling trustworthy AI-assisted analysis that maintains transparency and safety standards.
Contribution
It introduces a novel approach of representing engineering methods as structured JSON data and uses a constrained symbolic engine for verified calculations, bridging the trust gap with LLMs.
Findings
Achieves computational parity with traditional methods.
Ensures complete mathematical transparency.
Validates effectiveness with Eurocode~7 example.
Abstract
Analytical methods underpin geotechnical engineering practice, yet their implementation remains fragmented across error-prone spreadsheets and opaque proprietary software. While Large Language Models (LLMs) offer transformative potential for streamlining engineering workflows, their statistical nature fundamentally conflicts with the strict determinism required for safety-critical calculations. Their tendency to hallucinate formulas, misinterpret units, or alter methodologies between sessions creates a critical trust gap. This paper introduces GeoMCP, a framework built to bridge this gap via a key insight: engineering methods should be represented as structured data, not embedded code. GeoMCP captures analytical methods as "method cards", declarative JSON files defining formulas, units, applicability limits, and literature citations. A constrained symbolic engine executes these cards…
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Taxonomy
TopicsConstruction Engineering and Safety · BIM and Construction Integration · Civil and Structural Engineering Research
