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Rakkaudesta tieteeseen 2018 - Turvallinen, joustava ja uudistuva yhteiskunta

Research group leader Mari Lundström spoke at the event about lithium battery recycling.

Research group leader Mari Lundström recently spoke about lithium battery recycling at Academy of Finland event "Rakkaudesta tieteeseen 2018 - Turvallinen, joustava ja uudistuva yhteiskunta", which was held 14.2.2018. The theme of this years event was "A safe, flexible and reforming society". A video of the event can be found at: https://youtu.be/kveNcgNGYgg?t=1h9m38s (in finnish).

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From left: Taras Redchuk, Chris Hayes, Aakeel Wagay, Ada Pajari, Dan Noel, Eveliny Nery and Jarno Mäkelä. Photo: Mikko Raskinen.
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Eloi Moliner IWAENC-tapahtumassa.
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