Artificial intelligence systems increasingly classify, predict, summarize, recommend, generate, rank, and evaluate outputs that may influence human decisions. In such systems, the question is not only whether AI can produce an output, but whether that output should be used without human judgment. This technical note examines Human-in-the-Loop as a design concept for human involvement in AI systems. It argues that human involvement should not be treated as a single mechanism or a decorative safety label. Humans may enter AI systems at different stages: before the model is trained or configured, during model development, during system operation, before release, and after deployment. In each stage, the purpose of human involvement may differ. Sometimes humans help the system learn; sometimes they review, correct, approve, reject, override, audit, or carry responsibility for decisions that should not be fully delegated to automation. The note distinguishes between human feedback and runtime human control. Training-time feedback, such as labeling, preference ranking, or alignment support, can improve model behavior, but it does not automatically provide operational oversight. Runtime human control requires that human judgment become part of the live decision, validation, escalation, or release process. It also briefly distinguishes Human-in-the-Loop from Human-on-the-Loop, where the system may continue operating while its behavior remains subject to monitoring, supervision, and possible intervention. The discussion also introduces decision points where human judgment may be required, including problem definition, data selection, model output evaluation, uncertainty and risk escalation, pre-release approval, final decision-making, and post-deployment review. A fraud detection workflow is used as an illustrative example of how an AI system may flag a suspicious transaction, provide risk and uncertainty signals, and escalate the case to a human analyst before action is taken. The central argument is that trustworthy AI is not only about producing better outputs. It is also about designing meaningful points of interaction between AI output and human judgment.
Nermin Sökmen (Tue,) studied this question.