The integration of Large Language Models (LLMs) into Security Operations
Centres (SOCs) presents a transformative, yet still evolving, opportunity to
reduce analyst workload through human-AI collaboration. However, their
real-world application in SOCs remains underexplored. To address this gap, we
present a longitudinal study of 3,090 analyst queries from 45 SOC analysts over
10 months. Our analysis reveals that analysts use LLMs as on-demand aids for
sensemaking and context-building, rather than for making high-stakes
determinations, preserving analyst decision authority. The majority of queries
are related to interpreting low-level telemetry (e.g., commands) and refining
technical communication through short (1-3 turn) interactions. Notably, 93% of
queries align with established cybersecurity competencies (NICE Framework),
underscoring the relevance of LLM use for SOC-related tasks. Despite variations
in tasks and engagement, usage trends indicate a shift from occasional
exploration to routine integration, with growing adoption and sustained use
among a subset of analysts. We find that LLMs function as flexible, on-demand
cognitive aids that augment, rather than replace, SOC expertise. Our study
provides actionable guidance for designing context-aware, human-centred AI
assistance in security operations, highlighting the need for further
in-the-wild research on real-world analyst-LLM collaboration, challenges, and
impacts.