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Articles

The distance learning mode of training teachers in Kenya: challenges, prospects, and suggested policy framework

Pages 241-254 | Published online: 16 Sep 2009
 

Abstract

Globally, distance learning has gained legitimacy as an effective mode for learning and training. This legitimacy has occurred as a result of, inter alia, its flexibility with respect to time, pace and entry requirements, affordability, cost‐effectiveness, and reputation for high quality. In Kenya, distance learning – although relatively new – is being promoted to attain the Millennium Development Goals, Universal Primary Education, and the Kenya Vision 2030 targets. The majority of those who enrol for distance learning are teachers. This paper examines the utility of a distance learning approach for training teachers in Kenya: its challenges, prospects, and the need for a policy framework. It critically interrogates the readiness of the providers, the learning and policy environments. The paper concludes that current dual‐mode providers do not meet the requirements of the defining features of distance learning, and offers specific quality assuring policy directions.

Acknowledgements

In addition to assistance received from the University of South Africa, the author would like to thank Prof. F. Wegulo, Egerton University, for data collection and Prof. E. Ilieva, Egerton University, and Mr N. Levine, University of South Africa, for looking over the paper.

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