Build What’s Next: Digital Product Perspectives

AI Field Guide: How AI is Reshaping the Roles of Design and Engineering

39 min · 24 de mar de 2026
Portada del episodio AI Field Guide: How AI is Reshaping the Roles of Design and Engineering

Descripción

AI is reshaping the roles of design and engineering, emphasizing collaboration and how models can accelerate workflows without sacrificing quality. This week’s episode explores how designers like David Shackelford, Associate Director of Product Design for Method, use tools like Perplexity, UX Pilot, and Figma Make for rapid exploration, while Paul Rowe, Principal Software Engineer at Method, discusses the engineering reality check with tools like Claude Code and Google’s Anti-Gravity IDE. The key takeaway is a practical playbook for speed with guardrails, affirming that human judgment, taste, and accountability remain the multiplier. The Methodites cover where AI currently shines—producing accurate results for smaller, well-defined tasks—and where it struggles, often leading to code bloat and confusion with vague prompts, especially within massive enterprise codebases. Despite the excitement around "vibe coding," they stress that the core development workflow remains "build, validate, iterate," with human review being more critical than ever. Paul and David conclude that while AI is an efficiency tool that can blur traditional departmental lines and shift where time is spent, strategic roadmapping, quality assurance (QA), and deep, expert-level skill sets in both design and engineering are still indispensable. To find more episodes, visit method.com/insights/podcasts/ [http://method.com/insights/podcasts/] Episode Resources:  Method.com [http://method.com] David Shackleford on Linked-In: /in/davidzshackelford/ [https://www.linkedin.com/in/davidzshackelford/] Paul Rowe on Linked-In: /in/paulcullenrowe/ [https://www.linkedin.com/in/paulcullenrowe/]

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Portada del episodio AI Only Helps When You Know Which Hill to Climb

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AI is everywhere, yet most teams still feel stuck between exciting demos and messy reality. Jason Rome sits down with Jon Webster, Chief Operating Officer at CPP Investments, to pressure test what has truly changed since their last conversation and what has not. We talk candidly about why generative AI adoption is starting to look like every other enterprise technology rollout: uneven, political, constrained by governance, and full of “we bought the licenses but we do not have the use cases” moments. We dig into the economics behind the hype: token pricing, subsidised plans, and why clear price signals matter if you want real ROI from enterprise AI. When AI feels cheap, sprawl is rational. When prices rise, leaders have to prioritise, measure outcomes, and decide where AI belongs in the operating model. From there we explore the human risks and skills that get exposed fast, including cognitive load, over-reliance, and the growing divide between people with strong mental models and those who skip straight to prompting. The conversation also goes deep on practical ways to work better: owning your outline before you generate, using AI as an adversary to challenge your thinking, and borrowing frameworks from great strategy writing to choose the right “hills to climb.” We close with predictions on where the next nine months may go, from more disciplined optimisation to shifts in SaaS, systems of record versus systems of action, and the leadership balance between IQ gains and EQ and empathy. If you found this useful, subscribe so you do not miss the follow-up, share it with a teammate who is wrestling with AI adoption, and leave a review with the most valuable AI habit you have learned so far. Jason Rome on LinkedIn: /jason-rom-275b2014 [https://www.linkedin.com/in/jason-rome-275b2014/] Jon Webster on LinkedIn: /in/jrwebster [https://www.linkedin.com/in/jrwebster/] Method Website: method.com [http://method.com/] CPP Investments Website: cppinvestments.com [http://cppinvestments.com]

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Portada del episodio AI Field Guide: The Missing Middle - How to Build an End-to-End AI

AI Field Guide: The Missing Middle - How to Build an End-to-End AI

In this episode of Build What's Next, Theo Munoz, Miguel Ribeiro, and Natan Szczepaniak discuss Machine Learning Operations (MLOps) and why an estimated 80% of ML models built in notebooks never make it to production. The hosts argue that the failures stem less from technology and more from organizational issues like a lack of clear ownership, insufficient investment in data engineering, and poor data foundations. Learn how standardization, shared ownership between business and engineering, and robust model governance are crucial to scaling AI safely, especially as the industry shifts towards Gen AI. To find more episodes, visit method.com/insights/podcasts/ [http://method.com/insights/podcasts/] Episode Resources:  Method.com [http://method.com/] Theo Munoz on Linked-In: /in/theo-munoz-090a88151/ [https://www.linkedin.com/in/theo-munoz-090a88151/] Miguel Ribeiro on Linked-In: /in/miguel-ribeiro-3439328a/ [https://www.linkedin.com/in/miguel-ribeiro-3439328a/] Natan Szczepaniak on Linked-In: /in/natan-sz/ [https://www.linkedin.com/in/natan-sz/]

4 de may de 202658 min
Portada del episodio AI Field Guide: How AI is Reshaping the Roles of Design and Engineering

AI Field Guide: How AI is Reshaping the Roles of Design and Engineering

AI is reshaping the roles of design and engineering, emphasizing collaboration and how models can accelerate workflows without sacrificing quality. This week’s episode explores how designers like David Shackelford, Associate Director of Product Design for Method, use tools like Perplexity, UX Pilot, and Figma Make for rapid exploration, while Paul Rowe, Principal Software Engineer at Method, discusses the engineering reality check with tools like Claude Code and Google’s Anti-Gravity IDE. The key takeaway is a practical playbook for speed with guardrails, affirming that human judgment, taste, and accountability remain the multiplier. The Methodites cover where AI currently shines—producing accurate results for smaller, well-defined tasks—and where it struggles, often leading to code bloat and confusion with vague prompts, especially within massive enterprise codebases. Despite the excitement around "vibe coding," they stress that the core development workflow remains "build, validate, iterate," with human review being more critical than ever. Paul and David conclude that while AI is an efficiency tool that can blur traditional departmental lines and shift where time is spent, strategic roadmapping, quality assurance (QA), and deep, expert-level skill sets in both design and engineering are still indispensable. To find more episodes, visit method.com/insights/podcasts/ [http://method.com/insights/podcasts/] Episode Resources:  Method.com [http://method.com] David Shackleford on Linked-In: /in/davidzshackelford/ [https://www.linkedin.com/in/davidzshackelford/] Paul Rowe on Linked-In: /in/paulcullenrowe/ [https://www.linkedin.com/in/paulcullenrowe/]

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Portada del episodio How To Build A Scalable, Standards-Aligned Ecosystem That Teachers Actually Use

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Portada del episodio AI in Software Development: Designing & Delivering Real ROI

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