Trias Algorithmica

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A01=Hamilton Mann
ai accountability
ai ethics
ai governance
ai oversight
ai risk management
algorithmic bias
algorithmic decision making
algorithmic power
artificial integrity
artificial intelligence regulation
Author_Hamilton Mann
automated governance
Category=JPQB
Category=KJMB
Category=PDK
Category=UYQF
digital transformation
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
eq_society-politics
forthcoming
technology policy
trias algorithmica

Product details

  • ISBN 9781394449286
  • Publication Date: 24 Sep 2026
  • Publisher: John Wiley & Sons Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Understand how algorithmic power governs society and how to hold it accountable

While much of the public debate remains focused on whether AI systems are truly intelligent, when they may surpass human intelligence, or how useful or dangerous they may become, the deeper issue is being overlooked.

Today’s most powerful algorithmic systems increasingly reassemble powers that political thought once deliberately separated under the doctrine of Trias Politica.

The book argues that compute, energy, training operate as an algorithmic executive; that code, model design, optimization targets, and embedded constraints function as an algorithmic legislature; and that evaluation, auditing, and benchmarking function as an algorithmic judiciary.

What would be intolerable for many, the fusion of rulemaking, execution, and judgment, is becoming the standard of our society enabled by algorithmic systems.

They now shape access, opportunity, and justice at machine speed – yet they operate largely beyond democratic scrutiny. Trias Algorithmica: What Code Rules, by Hamilton Mann, a Thinkers50 honouree, originator of the concept of Artificial Integrity, and leading authority in AI transformation, traces where this power originates, how it sustains itself through manufactured dependence, and what a constitutional framework for algorithmic governance must look like.

The book introduces original concepts including aggregogenous monopoly, Technological Stockholm Syndrome, dependautonomy, and unpacks the revaluing mechanism of work. It also presents a practical framework of nine critical questions for interrogating algorithmic power deployment. It proposes algorithmic safety cases as constitutional safeguards alongside eight principles for separating design, oversight, and enforcement functions as a new Trias Politica for the age of code – preventing concentrated, self-judging systems from operating unchecked at scale across organisations and public institutions.

You'll also explore:

  • How concentrated AI infrastructures turn code into enforceable law and corporate product into policy revealing how trust becomes the social license for algorithmic power.
  • The spectrum of human-in-the-loop roles, from genuine oversight to compliance instruments effectively displaced by automation
  • Why algorithmic efficiency gains can expand harmful uses unless constrained by deliberate macro-level governance boundaries
  • How data-driven valuation systems reshape human worth through taskification, rankings, and machine-readable performance criteria
  • A tested model for ensuring algorithmic governance remains bounded, reviewable, and fit for democratic purpose
  • How the Trias Algorithmica can ensure legitimacy, contestability, and human dignity in the age of artificial intelligence systems.
  • Turing’s Imitation Game as a miniature constitution of roles showing how judgment, when stripped of friction, collapses into domination.

Trias Algorithmica is written for business leaders, policymakers, technologists, and organisational decision-makers responsible for deploying or governing AI systems. Whether you oversee digital transformation, shape regulation, or design algorithmic tools, this book provides the conceptual and practical foundations for accountable algorithmic governance.

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