- We can argue for financial stimulants.
- Vi kan argumentera för ekonomisk stimulans.
- The next example relates to the strategic approach to this issue, in which we argue for an across-the-board Europe-wide reduction target for the use of plant protection products.
- Nästa exempel gäller strategin i den här frågan att argumentera för ett allmänt EU-omfattande minskningsmål för användning av växtskyddsmedel.
- The next example relates to the strategic approach to this issue, in which we argue for an across-the-board Europe-wide reduction target for the use of plant protection products.
- Nästa exempel gäller strategin i den här frågan att argumentera för ett allmänt EU-omfattande minskningsmål för användning av växtskyddsmedel.
- I shall vote ’no’, not negatively, but to have the principled platform then to argue for a different Europe, one that puts permanent social welfare before temporary and misguided monetary orthodoxy.
- Det skall inte jag göra, jag skall rösta ”nej”, inte å ett negativt sätt, utan för att ha en principfast plattform för att argumentera för ett annorlunda Europa, ett som sätter beständig välfärd före termporär och vilseledd monetär ortodoxi.
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