Episode

DAIM: Inside The Algorithm | Network Forecasting & Data Science Leadership with Dr Judit Guimera Busquets

Podcast
Data & AI Mastery
Published
Jun 3, 2026
Duration seconds
2051
Processing state
not_requested
Canonical source
https://www.cambridgespark.com/
Audio
https://downloads.pod.co/cac73606-6a1e-4309-8e24-f75639782d2f/a33f9e44-3266-44b3-a196-27cbce0102d0.mp3
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Summary

👉 Discover how Cambridge Spark helps organisations build the data and AI capabilities needed to turn strategy into measurable impact: cambridgespark.com This week, Dr Judit Guimera Busquets, Head of Data Science at Datasparq, joins Dr Jeremy Bradley to trace the journey from her PhD on air traffic network forecasting through to leading data science teams delivering real-world AI projects. Judit explains why forecasting inside a complex network is fundamentally different from standard demand prediction: when a single airport pair is removed, the cascade effect ripples across an entire system. She walks through the multi-stage modelling framework she developed, covering city pair demand generation, network evolution, itinerary assignment, and long-term scenario planning. The conversation then turns to what actually happens when structural shocks like a pandemic break a model's core assumptions and why human-in-the-loop design is not optional. Judit also sets out what she looks for in data scientists: pragmatism over perfection, simplicity over complexity, and a production-first mindset from day one. She closes with her view on where applied AI is heading, including the rise of small, fine-tuned specialist models and why AI governance remains the most overlooked challenge in the field. Follow Data & AI Mastery on Apple Podcasts, Spotify, or YouTube to stay ahead of the algorithm. If you enjoyed this episode, why not check out the Data & AI Mastery episode with Richard Masters, VP of Data and AI at Virgin Atlantic. You will learn more about how the airline leverages AI and data-driven strategies to enhance operations, optimise pricing, and deliver premium customer experiences: Apple: https://podcasts.apple.com/gb/podcast/mastering-data-ai-insights-from-virgin-atlan…