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L'Institut des Molécules et des Matériaux du Mans (UMR CNRS 6283) acquires a Chemspeed Synthesis Robot

February 4, 2025

We are excited to announce that the Institut des Molécules et des Matériaux du Mans (UMR CNRS 6283) has recently upgraded its facilities with a state-of-the-art Chemspeed synthesis robot. This advanced equipment enables the automated synthesis of polymers in series and the preparation of NMR tubes for analytical studies, as demonstrated in the accompanying video.

This significant technological enhancement was made possible thanks to the support of the French Ministry of Higher Education and Research and the Région Pays de la Loire. Their contribution has been instrumental in advancing the institute's research and innovation capabilities.

Congratulations to the institute’s team on this acquisition, and our heartfelt thanks to the funding partners for making this project a reality.

Watch the exclusive video to see how this technology is transforming research and analysis workflows!

https://www.linkedin.com/feed/update/urn:li:activity:7265027260334673920

Contact us to learn more about this exciting publication:

https://www.chemspeed.com/contact-us/

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