Food and beverage is one of the most volatile and fragmented industries in the world today. It must be innovative and agile, cost-effective, dependable, safe, sustainable, and transparent. As a result, companies in this industry have set lofty goals to reduce costs, increase productivity, reduce waste, and improve sustainability. The key to making sense of this complication is industrial IoT. View this on-demand webinar to learn about these industry challenges and how leveraging industrial IoT for data, insights, and transparency can help further industry goals.

Meet the Speakers

Siemens Digital Industries Software

Fabrizio Nisi

Cloud Business Development Manager

Fabrizio is a mid-seasoned sales and business development manager with 10 years’ experience gained at Microsoft and Siemens with strong focus on Industrial IoT, sales excellence, program, partner and business management. He´s currently completing an Executive Master of Business Administration in Business and IT at the Technical University of Munich.

Siemens AG

Enmanuel Aparicio Velázquez

Technical Account Manager

Enmanuel is a technical account manager for the soft drink industry in Siemens AG. He has 17 years of professional experience in sales and business development for automation systems and is currently specializing in standardization of technologies and solutions for electrification, automation and industrial communication for the beverage industry. He is also a technical consultant on industrial IoT and industrial cybersecurity. He graduated as an electrical engineer from Mixteca University of Technology and holds an MSc. in systems engineering and engineering management from South Westphalia University of Applied Technologies.

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