When a team of insurance brokers receives more than 500 emails per day from clients, it quickly becomes difficult to keep things organized and make sense of it all. That’s where Libero comes in: a solution that summarizes and classifies all incoming emails. Beyond that, Libero also categorizes them properly within the client database (CRM). All of this, which brokers and their assistants used to do manually, is now fully automated, freeing up a tremendous amount of time every day. Through this presentation, we want to bring you into the heart of Libero’s design and the key decisions made during its development: its architecture, the challenges, the specific requirements of the insurance industry, the solution’s evolution, and more. And most importantly, we want to open up a discussion with you, the community, around this question: - How do we build and deploy AI solutions that can actually be maintained and evolve over time? This question is more important now than ever, with the rapid evolution of AI solutions, products and services that hit the market each week. The rhythm of innovation (and sometime fluff…) is astonishing! How do we continue building solutions that stay relevant and keep delivering business value? As a service provider, iuvo-ai is constantly balancing innovation with pragmatism. Every client has a different level of technical maturity, infrastructure, and internal talent. In that reality, the real challenge isn’t just getting a solution to work; it’s making sure it can live on. How do we design architectures that are flexible enough to evolve as the ecosystem changes, but simple enough for our clients to own and maintain? How do we make decisions that reduce friction when the next API version drops or when the internal IT team needs to take over? Those are the questions we wrestle with every day when bringing AI into production, and we’d love to exchange ideas and lessons learned with you 🙂
talk-data.com
Speaker
Catherine Paulin
1
talks
Catherine builds bridges between imagination and intelligence. As co-founder and CTO of iuvo-ai, she helps organizations turn ambitious ideas into applied AI solutions that actually make a difference, from computer vision systems to generative AI and predictive models. Her journey began in research, exploring deep learning through projects that touched everything from bird song classification to spectral imaging. Over time, that curiosity evolved into a drive to bring AI out of the lab and into the real world. Before launching iuvo-ai, she led computer vision initiatives at Volta Charging, deploying models on smart Electric Vehicule chargers, and contributed to NLP innovation at Gartner. Today, she focuses on helping SMEs integrate AI into their processes combining technical excellence with empathy, creativity, and business sense.
Bio from: PyData Montreal Meetup #32 (in-person | en personne)
Filter by Event / Source
Talks & appearances
1 activities · Newest first