Webinar Date/Time: Thu, May 18, 2023 1:00 PM EDT
This webcast will introduce an integrated microwave synthesis reactor with Raman Spectroscopy and describe how Raman can be used to monitor reaction progress and changes in viscoelastic and chemical properties.
Register Free: https://www.spectroscopyonline.com/spec_w/new
Event Overview:
Monitoring chemical reactions in situ has always been a challenge for chemists. However, new developments in reaction monitoring technologies are providing stunning live insights, specifically through integration of Raman spectrometry.
This webinar will discuss these new developments and provide a video demonstration of how Anton Paar’s Cora 5001 Raman spectrometer integrates with a microwave synthesis reactor to provide live monitoring of chemical reactions.
There will be a presentation on the background and theory of microwave synthesis and Raman spectroscopy as well as a video demonstration showcasing the integration of these two techniques.
Key Learning Objectives:
Who Should Attend:
Speaker:
Viktor Zagorec
Product Manager - Raman Spectroscopy
Anton Paar
Viktor Zagorec is the Raman technology product manager at Anton Paar responsible for its benchtop Raman devices portfolio. He has been with Anton Paar for 3 years, and prior to joining the Raman team, Viktor worked at Anton Paar Croatia. Viktor is chemist by profession and holds master’s degree in analytical chemistry. In addition to a chemistry background, he has business experience and holds a master´s degree in management.
Register Free: https://www.spectroscopyonline.com/spec_w/new
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