- Use of the d’Hondt method to calculate the number of votes from individual states is an objective instrument eliminating political horse-trading.
- Att använda d’Hondt-metoden för att beräkna antalet röster från enskilda medlemsstater är ett objektivt instrument som eliminerar politisk kohandel.
- Once again, the question arises whether we should introduce regionalisation for the fisheries industry, and exert more influence on CFP on the part of individual states, albeit in a balanced way.
- Än en gång uppkommer frågan om vi bör regionalisera fiskeriindustrin och om de enskilda medlemsstaterna bör ha mer inflytande över den gemensamma fiskeripolitiken, om än på ett balanserat sätt.
- In particular, for the purpose of restoring the balance of supply and demand, we should support the proposal temporarily to freeze part of the quotas assigned to individual States and to provide for a compensation mechanism for producers forced to destroy part of their herds that is proportionate to the percentage of the milk quota frozen.
- För att återskapa balans mellan tillgång och efterfrågan bör vi i synnerhet stödja förslaget att tillfälligt frysa en del av de kvoter som tilldelats enskilda medlemsstater och erbjuda ett kompensationssystem till producenter som tvingas avliva en del av sin besättning, i förhållande till andelen av den frusna mjölkkvoten.
show query
SET search_path TO f9miniensv;
WITH
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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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GROUP BY sentence_id),
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