In 2026, the success of engineering and construction projects is defined not by the technology used, but by the speed of decision-making. As requirements shift and regulations tighten, traditional static planning is failing. AI-native platforms like Basewise are bridging this gap by transforming requirements from static documents into living system knowledge that reacts to change in real-time.
Research into large-scale construction projects reveals that failures are often structural—rooted in the inability to adapt to design changes late in the lifecycle.
That design changes are the biggest driver of cost overruns and delays is directly relevant to how engineering and construction projects operate. In complex projects, gathering and capturing requirements takes time; stakeholders change their minds, laws are tightened and suppliers drop out. A traditional documentation system cannot keep up with such dynamics. AI‑native platforms like Basewise treat requirements not as static documents but as living system knowledge. This means that whenever a change occurs — whether it is a new standard, an adjusted functional requirement or a contractual addition — the platform immediately shows which design choices are affected, which verification activities need to be adjusted and which risks need to be reassessed. The project team can thus steer in time rather than repair afterwards.
The regulatory environment surrounding digitalisation, data and AI is becoming more varied and stringent. The World Economic Forum describes how the European Union and other power blocs pursue digital sovereignty through initiatives such as the Data Act, Data Governance Act, AI Act and GDPR, resulting in a complex, fragmented legislative context. The European AI regulation (Regulation EU 2024/1689) requires providers of AI systems to conduct thorough risk assessments, compile technical documentation, carry out conformity assessments and ensure human oversight. These obligations are not limited to software firms; manufacturers of machines, infrastructure and mechatronic systems fall under them as soon as they use AI. Managing compliance requirements therefore demands a system that links laws, standards, contracts and system designs. Basewise helps by automatically connecting regulatory and contractual obligations to systems and requirements. For example, if the fire-safety standard is tightened halfway through an execution phase, Basewise immediately calculates the impact: which components need to change, which risks are affected and which partners must be contacted. This prevents a tunnel from being completed only to discover at delivery that it does not meet the new standard.
The Harvard Business Review study of 5 700 executives shows that organisations with dynamic planning cycles outperform competitors 60 % more often. The difference lies not in a grander vision, but in the frequency with which leaders revisit assumptions and adjust course. In engineering and construction projects, this means decisions are no longer made only at pre-planned phase gates; they are made whenever a relevant signal arises. Think of an unexpected delivery update on a critical component, a change in an environmental regulation or the emergence of a safety issue. AI‑native platforms can automatically pick up these signals and analyse them contextually, so the team immediately knows whether it makes sense to adjust a design or to modify the contract. This aligns with the broader trend towards trigger‑based decision-making highlighted by CIO surveys.
Scenario: you are building a bridge and halfway through the execution phase the EU standard for steel structures is tightened, including stricter requirements for welds and material certificates. Traditionally this would lead to a construction stop and redesign. With Basewise the following occurs:
The team can thus decide on necessary changes within days and continue execution with minimal delay.
Unlike generic AI tools, Basewise packages its capabilities into a modular, secure platform built on the Microsoft stack, designed specifically for construction and systems‑engineering projects. The platform integrates seamlessly with existing IT landscapes and includes a dedicated AI chat assistant, enabling teams to summarise documents, compare bids and accelerate progress reports within a controlled environment. Basewise also offers a suite of standard AI applications—Document Requirements Extractor, Requirements Quality Analyser, Verification Planner and Evidence Finder—to automate the extraction, assessment and proof‑matching of requirements. Through agentic AI, the system links client specifications, design models and verification evidence, automatically identifies the impact of changes and generates structured impact reports, turning traceability and compliance into a proactive, continuous capability.
The figures leave little room for doubt: design changes are one of the biggest drivers of cost overruns and delays, regulation is becoming rapidly more complex and organisations with dynamic planning cycles achieve significantly better results. For engineering and construction companies, this means they must not only adjust their processes but also the tools they use. AI‑native platforms like Basewise transform requirements management, compliance and decision-making from a static, manual activity to a dynamic, integrated process. This allows organisations to not only meet increasingly strict standards, but also to increase the resilience and predictability of their projects.
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