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It is used to describe how organizations and teams develop an awareness of their own thinking, [2] learning how to learn, [3] [4] [5] where awareness of ignorance can motivate learning. [6] The organizational deutero-learning concept identified by Argyris and Schon [7] [8] defines when organizations learn how to carry out single-loop and double ...
The course of his career would cover three areas in this field: 1) the learning society; 2) professional learning and effectiveness; and, 3) the reflective practitioner. [18] Together with Chris Argyris , Schön provided the foundation to much of the management thinking on descriptive and interventionist dimensions to learning research. [ 19 ]
Double-loop learning entails the modification of goals or decision-making rules in the light of experience. In double-loop learning, individuals or organizations not only correct errors based on existing rules or assumptions (which is known as single-loop learning), but also question and modify the underlying assumptions, goals, and norms that ...
Organizational learning is the process of creating, retaining, and transferring knowledge within an organization. An organization improves over time as it gains ...
Learning organizations typically have excellent knowledge management structures, allowing creation, acquisition, dissemination, and implementation of this knowledge in the organization. [8] Teams use tools such as an action learning cycle and dialogue. [16] Team learning is only one element of the learning cycle. For the cycle to be complete ...
Gregory Bateson (9 May 1904 – 4 July 1980) was an English anthropologist, social scientist, linguist, visual anthropologist, semiotician, and cyberneticist whose work intersected that of many other fields.
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Deep learning is a subset of machine learning that focuses on utilizing neural networks to perform tasks such as classification, regression, and representation learning. The field takes inspiration from biological neuroscience and is centered around stacking artificial neurons into layers and "training" them to process data.