- The most tragic situation for the Chinese people, however, is in relation to political disasters.
- Den mest tragiska situationen för Kinas folk ligger dock i förhållandet till politiska katastrofer.
- Natural disaster and political disaster merge, however, when a school’s roof falls in, crushing the only child and leaving the parents distraught.
- Naturkatastrofer och politiska katastrofer smälter dock samman när ett skoltak rasar in och krossar det enda barnet och lämnar föräldrarna i förtvivlan.
- A debate on a resolution on the Peruvian earthquake is not perhaps the most appropriate framework to discuss the political situation in Peru, but I would nevertheless like to stress that we are extremely satisfied with the capacity shown by Peru and its transitional government to carry out transparent and clean elections after the political disasters described very effectively by the honourable Member in his maiden speech.
- En debatt om en resolution om den peruanska jordbävningen är kanske inte den lämpligaste ramen för att diskutera den politiska situationen i Peru, men jag vill ändå betona att vi är oerhört nöjda med den förmåga som visats av Peru och landets tillfälliga regering när det gäller att genomföra öppna och ärliga val efter de politiska katastrofer som beskrevs på ett mycket effektivt sätt av ledamoten i hans jungfrutal.
show query
SET search_path TO f9miniensv;
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r1.dep_id AS dep1,
r2.dep_id AS dep2
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WHERE
sentence_id IN (
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;