Today, we're talking about building real AI products with foundation models. Not toy demos, not vibes. We'll get into the boring dashboards that save launches, evals that change your mind, and the shift from analyst to AI app builder. Our guide is Hugo Bowne-Anderson, educator, podcaster, and data scientist, who's been in the trenches from scalable Python to LLM apps. If you care about shipping LLM features without burning the house down, stick around.
As AI transitions from proof of concept to production, teams are discovering that the challenge extends beyond model performance to include architecture, process, and accountability. Developers are learning to integrate AI into their delivery pipelines responsibly, designing systems where part of the workflow learns, adapts, and interacts with human judgment. From agentic MLOps and context-aware automation to evaluation pipelines and team culture, this transition is redefining what constitutes good software engineering.
"Decentralized Identity (DID) is transforming Know Your Customer (KYC) protocols in blockchain gambling, leveraging Zero-Knowledge Proofs (ZKPs) and real-world pilots to enhance privacy without compromising compliance."