- We have discussed three proposals for moving towards a liberalised rail system.
- Vi har diskuterat tre förslag om den fortsatta vägen mot en avreglerad järnväg.
- We discussed a great many specific proposals for providing Europe’s citizens with better, more user-friendly access to information in the EU institutions.
- Vi diskuterade flera mycket konkreta förslag för att göra information i EU-institutionerna mer tillgängliga och mer användarvänliga för Europas medborgare.
- Madam President, before discussing the proposal that is going to be voted on this morning, I would like to thank the rapporteurs from all the political groups, and I would especially like to thank Mrs Sornosa, from the Socialist Group in the European Parliament, and our friend Mr Prodi, who have really worked side by side and have enriched the directive, as have the Group of the Greens/European Free Alliance and many other Members.
- Innan vi diskuterar det förslag som vi ska rösta om i dag, vill jag tacka alla föredraganden från alla politiska grupper och jag vill särskilt tacka María Sornosa från socialdemokratiska gruppen i Europaparlamentet och vår vän Vittorio Prodi, som verkligen har arbetat tätt tillsammans med oss och som berikat direktivet, liksom De gröna/Europeiska fria alliansen och många andra ledamöter.
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