The Forward Deployed Engineer

S.SHIMODA

AI works. The question is whether the team that bought it has ever sat at the workstation that's supposed to use it. The Last Mile is a podcast about the hardest part of enterprise AI — the gap between a generalizable model and the messy reality of a specific customer's operations. Frameworks, war stories, and the economics of making deployments actually land.

الحلقات

  1. ٢٥ مايو

    Where the FDE Sits in the Org (Avoiding the Classification Mistake)

    In this episode, we unpack Chapter 3 of The Forward Deployed Engineer: Architecting the Last Mile of Enterprise AI by Sho Shimoda. We explore why the first decision a company makes about its Forward Deployed Engineering (FDE) function is almost always wrong, a phenomenon Shimoda calls the "Classification Mistake" We break down the common traps of placing FDEs in the wrong reporting structure [3]. You will learn why putting FDEs under Sales turns them into pre-sale tech support, why putting them under Professional Services creates a toxic "consulting trap" driven by billable hours rather than platform leverage, and why placing them under the VP of Engineering starves them of the talent they need to thrive. Tune in as we discuss the three reasonable answers for where an FDE function actually belongs: Peer to Platform Engineering: Reporting directly to the CTO to balance generalized platform building with customer-specific deployments. Inside Product: Reporting to the Chief Product Officer to act as a direct research arm for the product roadmap. Standalone to the CEO: Treating FDEs as a primary go-to-market motion with executive-level authority. Finally, we explore how to actually build the team. We discuss the "Pod Structure" of cross-functional teams, why FDEs need to be staffed with a 50/50 mix of senior and junior talent, and why simply relabeling existing Sales Engineers or Customer Success Managers as FDEs is the most expensive mistake a founder can make. We also reveal why FDEs command a 25% to 40% compensation premium over traditional platform engineers. If you are interested in these contents and would like to know more about designing the perfect FDE organization, please purchase Sho Shimoda's book on Amazon and tell others about it. Buy it here: The Forward Deployed Engineer on Amazon Thank you listeners for tuning in! Please follow, like, leave comments, and tell your friends to help spread the knowledge of the next era of software engineering.

    ٥٢ د
  2. ٢٥ مايو

    The Last-Mile Problem in Enterprise AI

    In this episode, we dive into Chapter 2 of The Forward Deployed Engineer: Architecting the Last Mile of Enterprise AI by Sho Shimoda. We explore the concept of the "last mile"—a term borrowed from telecommunications and logistics to describe the hardest, most expensive part of a deployment. You will discover why, contrary to popular belief, AI actually makes this last mile longer and explodes the hidden "integration tax" that traditional SaaS models left to the customer. We break down the critical shift from simple task-level AI to true AI-native operations. Because AI-native systems act autonomously rather than just giving recommendations, they require a complete workflow redesign and massively expand the political surface area of a deployment. Tune in as we explore the four frictions every AI deployment must overcome at the last mile: Data Friction: Navigating messy, inconsistent, and undocumented legacy data that polished vendor demos never show . Workflow Friction: Redesigning around the undocumented edge cases and tacit knowledge of the human operators . Political Friction: Managing the internal sponsors, skeptics, and saboteurs who can kill a project . Trust Friction: Earning the buy-in of the skeptical front-line users who have seen past tech projects fail. Finally, we discuss the core thesis of the chapter: in enterprise AI, the model itself is a commodity, and the redesigned workflow is the actual product. We reveal why the real last mile doesn't live in the API integration layer, but on the operating floor in the chair of the human agent. If you are interested in these contents and would like to know more about overcoming the hidden integration tax of enterprise AI, please purchase Sho Shimoda's book on Amazon and tell others about it. Buy it here: The Forward Deployed Engineer on Amazon Thank you to our listeners for tuning in! Please follow, like, leave comments, and tell your friends to help spread the knowledge of the next era of software engineering.

    ٤٦ د
  3. ٢٥ مايو

    What is a Forward Deployed Engineer? (The Operator's Contradiction)

    In this episode, we dive into Chapter 1 of The Forward Deployed Engineer: Architecting the Last Mile of Enterprise AI by Sho Shimoda. We explore the "Operator's Contradiction"—the paradox where operations-heavy businesses, like BPOs, are threatened by AI, yet possess the exact operational knowledge required to successfully deploy it. We trace the origins of the FDE role back to Palantir's "Delta" engineers, who originally pioneered the work of bridging the gap between a generalized platform and a customer's highly restricted, messy reality. You will discover why an FDE is not just another Software Engineer, Sales Engineer, or Solutions Architect. Instead, we break down the five "seats" every FDE must master to turn a demo into a deployment : The Technical Seat: Writing and shipping production-grade code against real customer data. The Operations Seat: Understanding the customer's workflow deeply enough to successfully redesign it. The Business Seat: Articulating the deployment's contribution to revenue, margin, or risk . The Diplomacy Seat: Navigating the customer's internal politics to build trust with executives and users alike. The Rendition Seat: Translating seamlessly between the operational floor, the executive suite, and the home-office platform engineers. Finally, we look at how the "new wave" of AI labs—including OpenAI, Anthropic, Runway, and Greptile—are reviving this critical role to act as the "missing face" of accountability when AI makes mistakes, conquering the last mile of enterprise AI integration . If you are interested in these concepts and want to master the definitive playbook for AI deployment, please purchase Sho Shimoda's book on Amazon Buy it here: The Forward Deployed Engineer on Amazon Thank you for listening, Please follow, like, leave comments, and share with your friends to spread the knowledge of the next era of software engineering.

    ٤٥ د

حول

AI works. The question is whether the team that bought it has ever sat at the workstation that's supposed to use it. The Last Mile is a podcast about the hardest part of enterprise AI — the gap between a generalizable model and the messy reality of a specific customer's operations. Frameworks, war stories, and the economics of making deployments actually land.