Abstract
In this chapter, we argue that education and training in translation quality assessment (TQA)is being neglected for most, if not all, stakeholders of the translation process, from translators, post-editors, and reviewers to buyers and end-users of translation products and services. Within academia, there is a lack of education and training opportunities to equip translation students, even at postgraduate level, with the knowledge and skills required to understand and use TQA. This has immediate effects on their employability and long-term effects on professional practice. In discussing and building upon previous initiatives to tackle this issue, we provide a range of viewpoints and resources for the provision of such opportunities in collaborative and independent contexts across all modes and academic settings, focusing not just on TQA and machine translation training, but also on the use of assessment strategies in educational contexts that are directly relevant to those used in industry. In closing, we reiterate our argument for the importance of education and training in TQA, on the basis of all the contributions and perspectives presented in the volume.
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Notes
- 1.
ASLING (the International Association for Advancement in Language Technology; https://www.asling.org) took over the organisation and management of the long-running Translating and the Computer conference series in 2014 and has been responsible for it since.
- 2.
This has been recognised, to an extent, in the updated European Master’s in Translation Competence Framework 2017, which expects Master’s programme graduates to be able to review translation according to standard or job-specific quality objectives, and to be able to implement process standards (such as ISO 17100).
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Acknowledgments
This work has been partly supported by the ADAPT Centre for Digital Content Technology which is funded under the SFI Research Centres Programme (Grant 13/RC/2106) and is co-funded under the European Regional Development Fund.
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Doherty, S., Moorkens, J., Gaspari, F., Castilho, S. (2018). On Education and Training in Translation Quality Assessment. In: Moorkens, J., Castilho, S., Gaspari, F., Doherty, S. (eds) Translation Quality Assessment. Machine Translation: Technologies and Applications, vol 1. Springer, Cham. https://doi.org/10.1007/978-3-319-91241-7_5
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