Une école de pensée pour l'intelligence systémique — dans les domaines de la technologie, de l'organisation et de la société.
We work where progress has been stalled for decades — developing new principles for genuine technological and societal breakthroughs.
Who we are
The Center for Applied Complexity & Intelligence is a network of people, companies, and initiatives deriving new principles from this insight — applicable in technology, organization, and society.
Intelligence is not a component you install — it emerges from the interplay of structures operating on multiple levels simultaneously.
Our mental model: The same patterns appear at all levels — small and large. Meaning emerges from context. Behavior emerges from interaction, not from individual parts.
How we think
Dissent
Dissent is not a problem. Dissent is the beginning of knowledge.
Honesty
We say what we think. We change our minds when arguments convince us.
Limits
Those who don't know their limits cannot transcend them.
We believe intelligence emerges from interaction — including our own. That's why diversity of opinion is not a disturbance for us, but a prerequisite.
We don't all agree. But we defend the space where different perspectives can be thought and tested.
Like-minded people are not those who think alike — but those who share the courage to ask different questions.
"All truth passes through three stages: First, it is ridiculed. Second, it is violently opposed. Third, it is accepted as self-evident."
— Arthur SchopenhauerWhat we do
— and help translate systemic principles into real breakthroughs.
We work at the level of principles, not implementations.
Not an AI Lab
We don't optimize algorithms — we explore how system architectures give rise to intelligence.
Not Consulting
Frameworks are research results that validate patterns — not products.
Not Pure Academia
Our models are tested in practical systems, not just published.
The school of thought is based on four central principles that run through all research fields.
01
We look for recurring structures and principles before formulating technical solutions. The focus is on forms of behavior, not their implementation — because structures are stable, mechanisms are interchangeable.
02
A single element is meaningless without its environment. We view systems at micro, meso, and macro levels. Intelligence emerges from the relationships between these levels.
03
Complex systems become intelligent — they are not programmed. We explore self-organization, context effects, adaptive states, and nonlinear dynamics.
04
Meaning does not arise from data, but from its embedding. The same information has different effects in different contexts. We model context explicitly.
Research is structured into two levels: methodological foundations and phenomenal fields.
Meta-Research Fields — How we gain knowledge
What recurring structures appear in all complex systems — technical, biological, organizational? We identify, abstract, and formalize these patterns as domain-independent process templates.
Guiding question: Are there universal process forms that can be instantiated in any domain?
How can systems describe themselves — completely, consistently, machine-readable, and context-rich? SKE explores the foundations for self-describing systems that make their own knowledge, structure, and dynamics explicit.
Guiding question: How does systemic intelligence emerge from explicit system knowledge?
Core Research Fields — What we explore
How does intelligent behavior emerge from interaction, dynamics, and context? We explore biologically inspired architectures and continuous learning.
How do actors coordinate without a central authority? We explore systems that function through structure rather than authority.
How do we build systems that adapt without becoming unstable — or even become antifragile? We explore message-based, capability-secure architectures.
Research fields are validated in concrete projects — in deep tech and societal infrastructure.
Message-based dataflow processor implementing graph-based process patterns. Knowledge is modeled as flow, not static structure.
Partner
sistemica GmbH
Microkernel operating system for adaptive architectures. A self-describing OS that anchors system transformation as a fundamental principle.
Partner
sistemica GmbH
Biologically inspired neural network with continuous learning. Explores learning and adaptation patterns as well as emergent knowledge representation.
Partner
sistemica GmbH
Explores how intelligence emerges through specialization and cooperation — not scaling. Validates the hypothesis: structure over size.
Partner
sistemica GmbH
Decentralized coordination of value, identity, and digital exchange. Explores how systemic principles can transform fundamental societal functions.
Partner
sistemica GmbH
Origin
The observation: Technical systems always mirror the structures of the organization in which they emerge.
This insight led to the question of what universal patterns actually shape complex systems — technical, biological, social. And to the founding of an initiative that systematically explores these patterns.
A world where systems form themselves rather than being constructed — and intelligence emerges rather than being forced.