Mining supply chains are strategically important yet difficult to observe because firm-to-firm relationships are fragmented across unstructured public disclosures. This paper applies a retrieval-augmented large language model (LLM) framework to reconstruct mining supply chain networks from unstructured textual data. While the underlying methodology builds on prior work on supply chain mapping using generative AI, the focus here is on its deployment in the mining sector, where structured data on firm-to-firm relationships is particularly limited. The resulting dataset contains 1231 focal mining firms, 4602 directly connected firms, and 8279 directed supplier–customer relationships. The reconstructed network exhibits a pronounced core–periphery structure, with a small number of highly connected firms sustaining a disproportionate share of overall connectivity. We also document strong concentration across countries and mining subsectors, particularly among major mining finance and corporate hubs. Robustness analysis shows that the network is relatively resilient to random node removal but fragments rapidly under targeted removal of central firms. These findings suggest that mining supply chains combine diffuse peripheral structure with systemic dependence on key hub firms, and illustrate how LLM-based methods can serve as a scalable measurement technology for supply chain mapping in data-scarce settings.
Кегенбеков et al. (Tue,) studied this question.