Transforming Business Processes through AI Integration: A Framework for Strategic Alignment of Cognitive Transformation
Summary
The increasing integration of Artificial Intelligence (AI) into business operations has created a
pressing need to ensure alignment between AI capabilities and the cognitive demands of
human-driven tasks. This thesis addresses that challenge by introducing the Universal
Cognitive-AI Alignment Framework (UCAF) , a systematic method to match AI architectures
with business processes based on shared cognitive profiles. By modeling both business
processes and AI architectures in terms of core human cognitive functions, the framework
establishes a principled link between organizational needs and technological solutions.
The study adopts a design science research approach, combining literature review, expert
interviews, and a case study. Key methods include business process decomposition using Event
Storming, the construction of cognitive profiles based on an eight-function taxonomy (e.g.,
perception, reasoning, memory), and the classification of deep learning architectures by their
cognitive purpose. A diagnostic rule set was developed to assign cognitive functions to
business tasks, and a structured profiling method was used to evaluate AI models accordingly.
Results show that many business events rely on discrete cognitive operations that can be
meaningfully matched to corresponding AI models. By aligning the cognitive profiles of
business processes with those of AI architectures, UCAF supports the design of cognitively
coherent AI stacks architectures that mirror the mental demands of the tasks they automate or
support.The thesis concludes that UCAF provides a novel and viable approach to AI integration,
promoting explainability, trust, and organizational alignment by aligning business processes
with AI architectures through cognitive profiling. Importantly, UCAF does not claim to
determine the optimal AI stack, but rather identifies a set of relevant architectures that are
cognitively aligned with the process at hand. This offers a structured and transparent starting
point for AI selection, serving as a critical step toward more informed AI system design.
However, the final choice of an AI stack depends on additional variables such as data
availability, performance requirements, system interoperability, and organizational constraints.
UCAF thus contributes to the journey toward ideal AI integration, without claiming to fully
complete it. Limitations include the current reliance on qualitative assessments and the
constraints of existing AI technologies. Future research should refine the cognitive taxonomy,
incorporate empirical validation, and extend the framework across diverse industries. Practical
recommendations are included to support implementation in real-world settings.
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