Brainpool TV

Multi tool useBrainpool TV
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Type | Private
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Industry | Entertainment Talent management
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Founded | 1994; 24 years ago (1994) in Germany
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Founder | Jörg Grabosch Martin Keß Ralf Günther |
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Headquarters | Cologne, Germany
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Key people | Jörg Grabosch (CEO, Production & Corporate Communications) Andreas Scheuermann (CEO, Licensing and Marketing, Financial Controlling & Legal and Business Affairs)[1] |
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Parent | Banijay Entertainment
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Website | www.brainpool.de/en
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Brainpool TV GmbH is a German television production company located in Cologne. It was a subsidiary of VIVA Medien AG between 2001 and 2006, until a management buyout in January 2007. The Movie "Stromberg - Der Film" was Crowdfunded with 1.000.000 € in one week by 3.000 fans in December 2011.[2]
Productions
Die Harald Schmidt Show (until July 1998, from then Bonito)
- Die Wochenshow
- TV total
- Ladykracher
- Elton.tv
- Rent a Pocher
- RTL Promiboxen
- Der Bachelor
- Anke Late Night
- Stromberg
- Bundesvision Song Contest
- Unser Star für Oslo
- Unser Song für Deutschland
- Unser Star für Baku
- Unser Song für Malmö
- Unser Song für Dänemark
- Unser Song für Österreich
- Eurovision Song Contest 2011
- Eurovision Song Contest 2012
External links
- Official website
Brainpool on IMDbPro (subscription required)
References
^ "Brainpool - Banijay Group". www.banijay.com. Retrieved 7 January 2017.
^ http://www.horizont.net/medien/nachrichten/-Fans-investieren-1-Million-Euro-und-ermoeglichen-Stromberg---Der-Film-104671
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