The learning climate is an important aspect of educational environments that impacts on learner satisfaction, stress and attitudes to learning. Quality management of educational environments has traditionally focused on teacher development and aspects of the environment that are easily quantifiable. This study describes the learning climate of GP training practices from the perspective of the learners. The information can be used to inform a learner-centred and evidence-based system of quality management. Further development of the themes could produce a quantitative tool, to provide data on the learning climate of GP training practices. This could assist in the quality management of GP training in the UK.

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http://dx.doi.org/10.1080/14739879.2009.11493831DOI Listing

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