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PoMaTo Presents Fintech Innovation at Bayes Business School

10 March 2026

PoMaTo will present a guest session at Bayes Business School, part of City St George’s, University of London, on 16 March 2026.


The session will explore how modern financial technology is reshaping portfolio construction, with particular focus on artificial intelligence, quantitative optimisation models, and cloud-based infrastructure in investment management.


 During the presentation, PoMaTo Co-Founder Fabio Agostini will introduce students to the PoMaTo platform, an AI-supported portfolio optimisation system designed to help investors construct, analyse, and manage portfolios across multiple asset classes. 


The session will include:

  • a discussion on how technology is transforming portfolio management workflows 
  • a demonstration of the PoMaTo platform and its optimisation capabilities
  • insight into the practical challenges of building modern fintech infrastructure in real investment environments
     

The presentation has been organised following an invitation from Natasa Todorovic-Zrilic, who regularly brings industry practitioners into the classroom to connect academic concepts with real-world financial applications.


The session also reflects the journey of a Bayes alumnus applying ideas developed during academic study to the creation of a real-world fintech platform.


See the LinkedIn Announcement

You can view the official announcement from Bayes Alumni, here.

PoMaTo is an analytical portfolio optimisation platform and does not provide financial or investment advice. 

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