- I would therefore like to thank the Members who worked late into the night to transform the basic text and to make this into a document that supports India.
- Jag vill därför tacka de kolleger som har arbetat till långt in på natten för att omarbeta ursprungstexten och göra den till en text till stöd för Indien.
- ’No,’ I says, ’they’m going to make us into regions, they’m going to take away our counties and they’m going to make us all one big happy family, along with they foreigners to Cornwall and they toffs to Somerset.
- ?Nej,? säger jag, ?de skall göra oss till regioner, ta bort våra grevskap och göra oss till en enda stor lycklig familj, tillsammans med utlänningarna i Cornwall och det flotta folket i Somerset.
- We have talked about our relations with Russia in this House on several occasions over the last year and it is totally unacceptable to make the energy crisis into a New Year’s tradition and put ordinary people in a situation where old people freeze to death, hospitals have to be closed and industries close down.
- Relationen med Ryssland har vi diskuterat i den här kammaren vid flera tillfällen det senaste året och det är fullständigt oacceptabelt att göra en energikris till nyårstradition och sätta vanliga människor i en situation där gamla människor fryser ihjäl, sjukhus måste stängas och industrier stänger.
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