MultiCAT provides a comprehensive suite of functionalities designed to optimize the analysis, design, and control of chemical reactions. Leveraging a unique multi-scale, machine-learning, and physics-guided computational framework, it delivers an integrated software environment for chemical and catalytic reaction engineering. In its final release, MultiCAT encompasses chemical reactor modeling, kinetic and spectroscopic data analysis, and digital twin creation, enabling seamless integration with process simulators for optimization and control purposes.
Through extensive applied research in reaction engineering and direct engagement with potential users—including chemical industries, process engineering firms, and academic institutions—the team has identified a strong market demand for such tools. By offering an efficient and high-accuracy approach to process optimization, the software contributes to enhancing product quality, improving operational efficiency, and reducing costs. It is particularly valuable for industries managing complex chemical reactions, such as petrochemicals, pharmaceuticals, polymers, and materials science.
To support commercialization efforts of the spin-off, initial discussions have begun with possible venture capitals (VC) fund specializing in knowledge-based start-ups. To sustain future growth and investment, the team is exploring funding opportunities from public funding schemes, including regional (Lombardia), national (FISA, Italian Government), and European (EIC Transition) programs.
For MultiCAT to reach full market potential, several key areas require further development and strategic support. These include ongoing research and technical enhancements. Additionally, demonstration projects in industrial environments are essential to validate its performance and increase user adoption. We have already started presentations of the tool in industries and research lab potentially interested (Casale, Clariant, Maire, Floatech, IMDEA Materials, …) in the use of the software, exploring potential industry partnerships.
At the conclusion of the project, we have successfully achieved the core technical objectives, delivering an optimized beta version with enhanced numerical models, machine-learning-driven active learning frameworks, and a user-friendly GUI. The software now provides a powerful, efficient, and accessible tool for next-generation catalytic reactor modeling, offering highly scalable solutions for both research and industrial applications. Moving forward, securing investment and further industry collaboration will be instrumental in ensuring continued development, widespread adoption, and long-term commercial success.