Context Engineering: From Prompts to Corporate Multi-Agent Architecture
Vera V. Vishnyakova

TL;DR
This paper introduces context engineering as a new discipline for designing and managing the informational environment of AI agents, extending prompt engineering to support complex multi-agent systems in enterprise settings.
Contribution
It proposes five context quality criteria, frames context as an operating system, and develops a pyramid maturity model integrating intent and specification engineering for scalable enterprise AI.
Findings
75% of enterprises plan agentic AI deployment by 2026
Deployment challenges include scaling complexity and contextual deficits
Control over context and intent determines agent behavior and strategy
Abstract
As artificial intelligence (AI) systems evolve from stateless chatbots to autonomous multi-step agents, prompt engineering (PE), the discipline of crafting individual queries, proves necessary but insufficient. This paper introduces context engineering (CE) as a standalone discipline concerned with designing, structuring, and managing the entire informational environment in which an AI agent makes decisions. Drawing on vendor architectures (Google ADK, Anthropic, LangChain), current academic work (ACE framework, Google DeepMind's intelligent delegation), enterprise research (Deloitte, 2026; KPMG, 2026), and the author's experience building a multi-agent system, the paper proposes five context quality criteria: relevance, sufficiency, isolation, economy, and provenance, and frames context as the agent's operating system. Two higher-order disciplines follow. Intent engineering (IE)…
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Taxonomy
TopicsMulti-Agent Systems and Negotiation · Context-Aware Activity Recognition Systems · Software System Performance and Reliability
