How can soft systems analysis and satisficing approaches be used in evaluating the potential of Google Cloud AI machine learning?
Wednesday, 24 December 2025
by Andrew Eliasz
Soft systems analysis and satisficing are methodologies with distinct heritages in systems thinking and decision theory, respectively, both offering nuanced alternatives to purely quantitative, optimization-centric evaluation paradigms. Their application to the assessment of Google Cloud AI machine learning—specifically in the context of serverless, scalable prediction—provides valuable frameworks for grappling with the complex, multifaceted, and often

