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Ranking of lager beer brands in Poland 2023|啤酒市场数据集|品牌排名数据集

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www.statista.com2024-09-19 更新2025-03-26 收录
啤酒市场
品牌排名
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https://www.statista.com/statistics/1383724/poland-ranking-of-lager-brands/
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资源简介:
In 2023, Żywiec was the most popular lager brand in Poland, reaching 14.6 percent shares on the shopping list, followed by Zatecky beer.

在2023年,波兰最受欢迎的拉格啤酒品牌为Żywiec,其市场份额在购物清单中达到了14.6%,紧随其后的是Zatecky啤酒。
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