- This is a clear example of the two institutions working very well and effectively together for the benefit of the citizens of the European Union.
- Detta är ett tydligt exempel på att de två institutionerna kan samarbeta på ett mycket bra och effektivt sätt, i Europeiska unionens medborgares intresse.
- Indeed the subsidiarity and extraterritoriality issues apparent in this report are clear examples of the report itself being over-extended.
- Det är faktiskt så att de subsidiaritets- och extraterritorialitetsfrågor som är uppenbara i detta betänkande är tydliga exempel på att själva betänkandet är alltför långtgående.
- I recall one of the great red lines of the British Labour Government’s negotiating stance when it said it would resist the idea of a separate and permanent EU operations centre responsible for operational planning and conduct of military operations as this would be the clearest example of duplication of NATO, whose SHAPE headquarters performs precisely this role.
- Jag erinrar mig en av de viktiga gränserna i den brittiska labourregeringens förhandlingsståndpunkt när den sade att den skulle stå emot idén med ett separat och permanent centrum för EU:s operationer som ansvarar för operativ planering och genomförande av militära operationer, eftersom det skulle vara det tydligaste exemplet på en upprepning av Nato vars Shape-huvudkontor har just denna roll.
show query
SET search_path TO f9miniensv;
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