Demo at your desk – Data Quality Guidance on Mastersizer 3000

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Achieving excellent quality particle size data has never been this easy. Introducing the new Data Quality Guidance add-on for Mastersizer 3000!

No more surprises – Data Quality Guidance makes sure you are the first to know if something is not correct with your data. By delivering helpful, specific feedback on factors that might affect your measurements you can achieve repeatable results with confidence.

In this live demonstration, we will showcase how Data Quality Guidance assists you at all stages through the analytical workflow, from background measurements to individual sample measurements and post measurement checks.

And through a Q&A session with Mastersizer experts, you can explore how Data Quality Guidance could help you overcome your own data quality challenges.

Unlock your Mastersizer’s potential with Data Quality Guidance!

Présentateur

  • Paul Senior - Product Manager Micro-Materials, Malvern Panalytical
  • Sarah Lastakchi - Application development scientist, Malvern Panalytical

Pour en savoir plus

Who should attend? 

  • Lab managers, researchers, instrument operators, quality assurance professionals, teachers/professors, students
  • Anyone responsible for carrying out measurements on the Mastersizer 3000 – from brand new users to experts
  • Anyone responsible for reviewing data from the Mastersizer 3000

This webinar will provide an excellent opportunity to: 

  • Recap what excellent quality data on the Mastersizer 3000 is 
  • Learn how Data Quality Guidance makes achieving excellent quality data effortless
  • Learn how Data Quality Guidance streamlines data quality assessments and saves you time within the Mastersizer measurement workflow 
  • Discover the types of guidance provided for background measurements, sample measurements and post-measurement checks
  • Understand how Data Quality Guidance can help you overcome your data quality issues and improve your data review processes