Develpreneur: Become a Better Developer and Entrepreneur

Rob Broadhead

This podcast is for aspiring entrepreneurs and technologists as well as those that want to become a designer and implementors of great software solutions. That includes solving problems through technology. We look at the whole skill set that makes a great developer. This includes tech skills, business and entrepreneurial skills, and life-hacking, so you have the time to get the job done while still enjoying life.

  1. 12 hr ago

    Startup Legal Foundation: Building a Technology Business That Can Survive Success

    Most technology entrepreneurs spend months refining code, building products, and solving technical challenges. Yet a strong Startup Legal Foundation is often the difference between building a sustainable company and creating a future legal problem. In this conversation with attorney and former Johnson & Johnson Assistant General Counsel Phil Crowley, the discussion focused on a reality many developers overlook: businesses rarely fail because of technology alone. Often, the problems emerge from legal structures, ownership disputes, contracts, intellectual property protection, and decisions made long before revenue arrives. Who Is Phil Crowley? Phil Crowley is the Founder and Managing Partner of Crowley Law LLC. Before launching his own practice, he spent approximately three decades as Assistant General Counsel at Johnson & Johnson, working closely with business leaders, innovators, and technology-focused organizations. His background is particularly unique because he began his professional career as a research physicist before transitioning into law. That combination enables him to bridge the communication gap that often exists between technical founders and legal professionals. Crowley now focuses on helping technology entrepreneurs commercialize innovation while avoiding common legal mistakes that can derail growth. Follow Phil on LinkedIn: https://www.linkedin.com/in/philcrowleynjny/ Why a Startup Legal Foundation Matters Before Revenue Many founders treat legal work as something to address after customers arrive. That approach creates risk. The reality is that every startup begins making legal decisions from day one: Who owns the intellectual property? How is ownership divided? What happens if a founder leaves? Who can sign contracts? How are contractors handled? What entity owns the software? These decisions influence future funding opportunities, acquisitions, and partnerships. A company can have a brilliant product and still become difficult to invest in if ownership questions remain unresolved. Investors often evaluate risk before opportunity. Legal uncertainty increases risk immediately. Startup Legal Foundation and Founder Agreements One of the strongest themes from the discussion was the importance of written agreements between founders. Many startups begin as conversations between friends. The problem is that friendships and business responsibilities rarely remain static. As companies grow: People relocate Career priorities change Family responsibilities increase Contributions become uneven Without written agreements, disagreements become emotional instead of objective. A founder who contributed heavily during the early stages may feel entitled to ongoing ownership. Another founder may feel burdened by carrying the company forward. Neither perspective is necessarily wrong. The issue is that expectations were never documented. A well-designed founder agreement creates clarity before conflict exists. Startup Legal Foundation Creates Predictability When ownership structures are documented early: Expectations become visible Responsibilities become clear Future disputes become easier to resolve Investors gain confidence This isn't about preparing for failure. It's about preparing for growth. Protecting Intellectual Property Before It Becomes Valuable Many technical founders assume intellectual property protection can wait until revenue arrives. Crowley highlighted why this assumption creates problems. Software, inventions, processes, algorithms, and technical innovations often represent the most valuable assets inside a startup. Yet ownership can become surprisingly complicated. Questions emerge, such as: Did a contractor build part of the system? Was university research involved? Did a founder create code before the company existed? Was confidential information publicly disclosed? These situations can weaken ownership claims. For technology companies, intellectual property isn't simply a legal asset. It becomes the foundation of company value. If ownership is unclear, the company's market value may decrease significantly, regardless of product quality. Startup Legal Foundation Requires the Right Legal Partner Another important takeaway was Crowley's perspective on choosing legal counsel. Many entrepreneurs focus solely on finding a lawyer. The better objective is finding a lawyer who understands the business. The best legal advisors don't simply explain laws. They help founders understand consequences. That distinction matters. A lawyer who understands startup operations can help founders evaluate: Entity selection Ownership structures Investor agreements Commercial contracts Growth risks The relationship becomes strategic rather than transactional. Startup Legal Foundation Benefits from Industry Specialists Not all legal expertise is interchangeable. A lawyer specializing in technology startups understands issues that general practitioners may rarely encounter. That specialization often leads to: Better guidance Faster solutions Lower long-term costs Stronger protection The goal isn't finding the biggest law firm. It's finding the right expertise. Ask other founders which legal professionals they trust. Personal recommendations often outperform online searches. Learning from Accelerators and Startup Networks Crowley also emphasized the value of startup accelerators and mentorship programs. Many founders assume they must figure everything out themselves. That mindset slows growth. Accelerators often provide access to: Legal advisors Business mentors Funding networks Operational guidance Experienced entrepreneurs These ecosystems exist because communities benefit when startups succeed. Founders who leverage these resources gain access to lessons that would otherwise take years to learn. Conclusion Technology founders naturally focus on building products. But products alone do not create durable companies. A strong Startup Legal Foundation helps protect intellectual property, clarify ownership, strengthen contracts, and reduce avoidable risk. The legal decisions made during the earliest stages of a company frequently determine how easily that company can scale, attract investment, and survive unexpected challenges. The strongest startups aren't just built on innovation. They're built on a foundation capable of supporting innovation long after launch. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Adapting Your Business to AI: Productivity Surges, New Models, and the Power of Data Getting Started with AI in Your Business: Insights from Hunter Jensen (Part 1) Redefining Remote Hiring with Agustin Morrone of Vintti (Part 1) Copyright And Trademarks – Interview With Richard Gearhart Building Better Developers Podcast Videos – With Bonus Content

    26 min
  2. 12 hr ago ·  Bonus

    You Might Also Like: The Ben Shapiro Show

    Introducing Ep. 2455 - The Left REJECTS The Flag, The Bible… And AOC?! from The Ben Shapiro Show. Follow the show: The Ben Shapiro Show As America’s 250th anniversary approaches, the Left increasingly rejects the American flag; controversy breaks out over Texas teaching schoolchildren about the Bible; and the Left targets… AOC?! Ep. 2455 - - - Today's Sponsors: PureTalk - Make the switch in as little as 10 minutes and start saving today! Visit https://PureTalk.com/SHAPIRO Helix Sleep - Go to https://helixsleep.com/BEN for an exclusive offer. - - - Click here to join the member-exclusive portion of my show: https://dwplus.watch/BenShapiroMemberExclusive - - - DailyWire+: Become a Daily Wire Member and watch all of our content ad-free: https://www.dailywire.com/subscribe 📲 Download the free Daily Wire app today on iPhone, Android, Roku, Apple TV, Samsung, and more. 📰 Follow Ben on the Daily Wire app or DailyWire.com to read his daily articles and receive his Friday newsletter. 📘 Ben's book "Lions and Scavengers: The True Story of America (and Her Critics)" is available here: https://dwplus.shop/LionsandScavengers 👕 Get your Ben Shapiro merch here: https://dwplus.shop/BenShapiroMerch - - - Socials: YouTube — https://youtube.com/@BenShapiro Facebook — https://www.facebook.com/officialbenshapiro Instagram — https://www.instagram.com/officialbenshapiro Snapchat — https://www.snapchat.com/officialbenshapiro TikTok — https://www.tiktok.com/@real.benshapiro X — https://twitter.com/benshapiro - - - Privacy Policy: https://www.dailywire.com/privacy Learn more about your ad choices. Visit podcastchoices.com/adchoices DISCLAIMER: Please note, this is an independent podcast episode not affiliated with, endorsed by, or produced in conjunction with the host podcast feed or any of its media entities. The views and opinions expressed in this episode are solely those of the creators and guests. For any concerns, please reach out to team@podroll.fm.

  3. 5 days ago

    AI Team Systems: Building Agile Organizations That Scale Beyond Automation

    As AI becomes embedded in software development workflows, many leaders assume the biggest changes will happen in coding. The reality may be very different. The future belongs to AI Team Systems—the structures, feedback loops, and operational practices that transform rapid development into meaningful business outcomes. During Building Better Developers Season 28 Episode 9, Dave Borzillo explored how Agile principles may evolve in an AI-powered environment and why human collaboration remains essential.   About David Borzillo David Borzillo is an Agile coach, author, speaker, and organizational improvement advocate with more than three decades of experience spanning software development, leadership, Agile transformation, and product delivery. Through his Better Ways of Working platform, he helps organizations improve collaboration, reduce operational friction, and create sustainable delivery systems. He is the author of Sanity at Scale and Who Killed Agile? (co-authored), and United Agility, and hosts the Better Ways of Working podcast. Follow David at: https://betterwaysofworking.com/about.htm Bonus: Free Kindle Promotion 📚 David Borzillo's new book: Sanity at Scale Amazon Link: https://www.amazon.com/dp/B0H41M87KJ Free Kindle Weekend June 26–28 Download the Kindle edition free during the promotion period. If you're a Kindle Unlimited subscriber, the book is available at no additional cost anytime. If you download the book, David would appreciate an honest review on Amazon after reading it.  Why AI Team Systems Matter More Than Faster Coding AI dramatically reduces implementation effort. That sounds like a technical breakthrough. But it creates a management challenge. When code can be generated quickly, organizations must decide: What should be built? Who benefits? How is quality maintained? How is feedback collected? Dave suggested that Agile teams may move toward faster feedback cycles and even shorter sprint models. The key insight is that speed alone doesn't create value. Feedback does. AI Team Systems Depend on Continuous Customer Interaction One of the most compelling parts of the discussion revisited ideas from Extreme Programming (XP). Dave highlighted the importance of close customer collaboration and immediate feedback rather than waiting for formal review cycles. In practice, this means: Showing completed work immediately Gathering stakeholder feedback continuously Validating assumptions early Reducing delays between learning and action As development accelerates, waiting weeks for feedback becomes increasingly inefficient. The future may look less like faster Scrum and more like continuous collaboration. AI Team Systems Still Need Human Leadership A common misconception is that AI will eliminate many Agile roles. Dave strongly challenged that assumption, particularly regarding Scrum Masters. Administrative work may become automated. Leadership will not. Future Scrum Masters may focus less on scheduling meetings and more on: Team coaching Conflict resolution Organizational improvement Stakeholder alignment Quality assurance These responsibilities require emotional intelligence, context awareness, and judgment. None is easily automated. AI Team Systems Require Team Health Metrics An especially valuable concept discussed during the episode was measuring team happiness. Dave referenced using simple happiness indicators to monitor team health over time. Declining trends often reveal problems before delivery metrics show warning signs. This matters because AI increases activity visibility but not necessarily team well-being. Organizations that focus exclusively on velocity risk are missing leading indicators of future performance issues. Healthy teams: Communicate effectively Share knowledge Resolve conflicts quickly Adapt to change Those capabilities become more important—not less—as automation increases. Faster delivery means little if team effectiveness is deteriorating underneath the surface. AI Team Systems Create Better Onboarding Another opportunity discussed was onboarding. AI can help new team members understand products, architecture, backlog history, and business context much faster than traditional documentation methods. Imagine a new developer asking: Who uses this product? Why does this feature exist? What architectural dependencies matter? Which backlog items carry the most business value? Well-structured AI systems can answer those questions immediately. The result is faster ramp-up and stronger organizational memory. AI Team Systems Shifts the Developer Role Perhaps the biggest long-term change is the evolution of the developer role itself. Developers increasingly contribute to: Product thinking Quality strategy Test automation Architectural decisions Stakeholder conversations The discussion emphasized that testing, architecture, and continuous learning remain critical responsibilities even as coding becomes easier. Success will come from understanding systems, not simply producing code. Invest in communication, product thinking, and collaboration skills alongside technical expertise. Conclusion AI is transforming software development, but its greatest impact may be organizational rather than technical. The winners will not be teams that generate the most code. They will be teams that build effective AI Team Systems—combining automation, customer feedback, strong leadership, and continuous learning into a sustainable operating model. Technology may increase speed. Systems determine results. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Forward Momentum Systems for Developers Navigating AI and Growth Practical AI Adoption: How Developers Avoid the AI Hype Trap AI Reality Gaps: What AI Is Revealing About Modern Software Organizations Building Better Developers Podcast Videos – With Bonus Content

    28 min
  4. 23 Jun

    Hero Culture Risks: Why AI Is Exposing the Cracks in Software Delivery

    The conversation around AI often focuses on speed, automation, and productivity. Yet one of the most important lessons emerging from modern software development is that Hero Culture Risks become more visible as technology removes traditional bottlenecks. In Building Better Developers Season 28 Episode 8, Dave Borzillo shared a perspective many experienced developers recognize immediately: being the person who always saves the day feels rewarding, but it often masks deeper organizational problems. As AI accelerates software creation, those hidden weaknesses are becoming harder to ignore.   About David Borzillo David Borzillo is an Agile coach, author, speaker, and organizational improvement advocate with more than three decades of experience spanning software development, leadership, Agile transformation, and product delivery. Through his Better Ways of Working platform, he helps organizations improve collaboration, reduce operational friction, and create sustainable delivery systems. He is the author of Sanity at Scale and Who Killed Agile? (co-authored), and United Agility, and hosts the Better Ways of Working podcast. Follow David at: https://betterwaysofworking.com/about.htm Bonus: Free Kindle Promotion 📚 David Borzillo's new book: Sanity at Scale Amazon Link: https://www.amazon.com/dp/B0H41M87KJ Free Kindle Weekend June 26–28 Download the Kindle edition free during the promotion period. If you're a Kindle Unlimited subscriber, the book is available at no additional cost anytime. If you download the book, David would appreciate an honest review on Amazon after reading it.  The Hidden Cost of Hero Culture Risks Most organizations celebrate heroes. The developer who answers the 4 a.m. call. The engineer who fixes production. The architect who understands the entire system. Dave described being that person earlier in his career. Solving critical problems created a sense of accomplishment, but every rescue also prevented the organization from building repeatable systems and shared knowledge. The problem isn't expertise. The problem is dependency. When success depends on a specific individual, the organization becomes fragile. A hero solves today's problem. A system prevents tomorrow's problem. How AI Makes Hero Culture Risks More Obvious For years, organizations could hide inefficiencies behind effort: If a deployment took three days, everyone accepted it. If requirements were unclear, teams worked harder. If documentation was weak, experienced developers filled the gaps. AI changes that equation. As Dave explained, software creation is becoming increasingly automated, much like deployment automation transformed delivery years ago. The result? The bottleneck shifts away from coding. Organizations are discovering that their real constraints often exist in: Requirements gathering Stakeholder communication Product prioritization Team alignment Knowledge sharing AI can generate code quickly. It cannot automatically create organizational clarity. Hero Culture Risks Often Start with Poor Value Definition One of the strongest concepts discussed in the episode was Dave's idea of a value litmus test. Instead of building for vague departments or anonymous stakeholders, teams should identify actual people who benefit from the work. He described moving beyond "the marketing department" to serving a specific individual and understanding the value being delivered. This shift matters because many hero-driven organizations optimize for activity rather than outcomes. Developers become busy. Projects move forward. Features ship. But nobody clearly understands who benefits or why. AI magnifies this issue because it dramatically increases output capacity. Without clear value definitions, teams simply generate more work faster. AI can accelerate confusion just as effectively as it accelerates productivity. Preventing Hero Culture Risks Through Learning Systems Dave emphasized creating learning organizations rather than collections of individual heroes. A learning organization: Shares knowledge openly Documents decisions Encourages cross-functional skills Builds repeatable processes Improves continuously This becomes especially important as organizations adopt AI tools. The companies that gain the greatest advantage won't necessarily be those with the most advanced AI. They will be the organizations that learn the fastest. Knowledge transfer, team collaboration, and continuous improvement become strategic advantages. Hero Culture Risks and the Future Talent Pipeline Another important concern raised during the discussion involves junior developers. As AI increases productivity, some organizations may reduce entry-level hiring. Yet Dave warned that today's junior developers become tomorrow's senior leaders. This creates a long-term challenge. Organizations that stop developing talent may find themselves without experienced leaders in the future. Sustainable systems require: Mentorship Pairing opportunities Cross-training Knowledge sharing The strongest teams are not built around heroes. They are built around growth. Evaluate whether your team depends on experts or develops future experts. Building Resilience Instead of Dependency The most important takeaway from this episode is that AI is not creating new organizational problems. It is exposing existing ones. Teams that rely on individual heroics will feel increasing pressure as development speeds increase. Teams that focus on systems, learning, and value creation will be positioned to thrive. Technology may continue to accelerate. Human collaboration remains the real competitive advantage. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Facilitative Leadership: Why Modern Teams Need Guides Instead of Heroes Developer Legacy Guide: How to Make Your Impact Last for Years Iterative Development Systems: How High-Performing Teams Build Faster with Less Risk Building Better Developers Podcast Videos – With Bonus Content

    29 min
  5. 18 Jun

    Enterprise AI Reality: What Software Teams Are Learning Beyond the Hype

    The conversation around artificial intelligence often creates the impression that software development has already been transformed beyond recognition. Social media feeds are filled with stories about AI agents replacing teams, generating applications automatically, and eliminating the need for traditional development processes. The Enterprise AI Reality is much more nuanced. While AI has become a valuable tool inside software organizations, large enterprises are approaching adoption far differently than many public conversations suggest. The gap between experimentation and production remains significant, especially when millions of dollars, regulatory requirements, and customer trust are involved. About Samuel Otero Samuel Otero is a Software Solutions Specialist with Deloitte US and a technology consultant with nearly 14 years of experience spanning enterprise software development, government projects, commercial consulting, and large-scale digital transformation initiatives. His career began with an early Microsoft internship that shaped his approach to continuous learning and technical humility. Since then, he has worked across media, public-sector, and enterprise environments, helping organizations deliver complex software solutions while mentoring the next generation of developers. Based in Puerto Rico, Samuel is also an advocate for developer growth, career development, and practical AI adoption in modern software engineering. Links LinkedIn Enterprise AI Reality Is Different from Social Media One of the strongest observations Samuel shared was the contrast between what people see online and what happens inside large organizations. Social media often highlights extreme success stories. Teams appear to build entire products using AI agents. Individual developers showcase impressive workflows that dramatically accelerate delivery. Those examples are real. However, enterprise software operates under different constraints. Systems support financial transactions, critical business processes, compliance requirements, and large customer bases. Mistakes carry significant consequences. As a result, organizations are adopting AI incrementally rather than replacing existing development practices overnight. Enterprise AI Reality Requires Trust Before Automation Every technology faces a trust curve. Before organizations automate critical workflows, they need evidence that systems perform reliably under real-world conditions. Samuel described how enterprises often use AI first in lower-risk scenarios before allowing it to influence more critical components of a platform. Features with limited business risk become testing grounds for new approaches. This pattern mirrors previous technological shifts. Cloud adoption happened gradually. DevOps adoption happened gradually. AI adoption is following a similar trajectory. The technology may be powerful, but trust must be earned through consistent results. Enterprises don't adopt technology because it's impressive. They adopt it because it's reliable. Enterprise AI Reality Still Depends on Human Expertise One misconception surrounding AI is that generated code eliminates the need for technical understanding. In practice, the opposite may be true. The more organizations rely on AI-generated outputs, the more important validation becomes. Developers must understand architecture, business requirements, security concerns, and implementation details well enough to verify what AI produces. Samuel emphasized a simple but powerful habit: asking AI to explain exactly what it did and why it made certain decisions.   That approach transforms AI from an answer machine into a learning tool. Developers who understand generated solutions become more effective. Developers who blindly accept generated solutions create risk. Never merge AI-generated code until you can explain its behavior to another developer. Enterprise AI Reality Is Creating New Skill Gaps The rise of AI is changing how developers gain experience. Historically, growth came from solving difficult problems manually. Developers researched documentation, struggled through debugging sessions, and built mental models through repetition. AI reduces much of that friction. While this increases productivity, it also creates new challenges. Developers may complete tasks successfully without fully understanding how those tasks were accomplished. Over time, this can create a dangerous gap between perceived capability and actual expertise. Organizations must address this by emphasizing understanding rather than output alone. The future belongs to developers who combine AI acceleration with deep technical comprehension. Enterprise AI Reality May Increase Software Complexity An interesting prediction from the discussion involved software quality. As AI accelerates development, more software will be produced. More features will be released. More experiments will reach production environments. That acceleration creates opportunity. It also creates risk. Samuel suggested that many organizations are still learning where AI performs exceptionally well and where it struggles under enterprise-scale conditions. During that learning period, users may experience more bugs, patches, and corrective updates as teams discover limitations. This isn't evidence that AI has failed. It's evidence that every transformative technology goes through a maturation phase before reaching stability. Faster development cycles can produce bugs faster if organizations don't maintain engineering discipline. Enterprise AI Reality Still Comes Back to Problem Solving Perhaps the most important lesson from the entire conversation is that technology itself is rarely the source of professional value. Languages change. Frameworks change. Platforms change. AI models will change. The underlying business need remains consistent: solving problems. Samuel's closing advice focused on developing problem-solving skills rather than attaching identity to a specific technology stack. That mindset provides resilience regardless of how quickly tools evolve. Developers who can understand problems, communicate solutions, and create business value will remain relevant long after today's AI tools are replaced by tomorrow's innovations. The most durable technical skill isn't coding. It's problem-solving. Conclusion The Enterprise AI Reality is neither the dystopian future predicted by skeptics nor the fully automated paradise promised by enthusiasts. Instead, it's a period of careful experimentation, measured adoption, and ongoing learning. Organizations are discovering where AI delivers value, where human expertise remains essential, and how both can work together to build better software. The developers who succeed during this transition won't be the ones who resist AI or blindly trust it. They'll be the ones who learn how to use it responsibly while continuing to strengthen the problem-solving skills that define great engineers. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources What Happens When Software Fails? Tools and Tactics to Recover Fast ERP and CRM Implementation: Why Most Projects Fail Before They Start How Value-Driven Project Discovery Shapes Better Software Outcomes Building Better Developers Podcast Videos – With Bonus Content

    30 min
  6. 16 Jun

    Developer Confidence Growth: Why Great Engineers Never Stop Learning

    The journey of Developer Confidence Growth rarely follows a straight line. Most developers begin their careers believing technical knowledge alone determines success. Then reality arrives. A challenging project, a difficult mentor, an unfamiliar technology stack, or a room full of people who seem far more experienced can quickly reveal how much there is still to learn. That realization isn't failure. It's often the beginning of a successful career. In a recent conversation with Deloitte Software Solutions Specialist Samuel Otero, a recurring theme emerged: the developers who continue to grow are often the ones who recognize how much they don't know and use that awareness as fuel for improvement rather than as a reason to quit. About Samuel Otero Samuel Otero is a Software Solutions Specialist with Deloitte US and a technology consultant with nearly 14 years of experience spanning enterprise software development, government projects, commercial consulting, and large-scale digital transformation initiatives. His career began with an early Microsoft internship that shaped his approach to continuous learning and technical humility. Since then, he has worked across media, public-sector, and enterprise environments, helping organizations deliver complex software solutions while mentoring the next generation of developers. Based in Puerto Rico, Samuel is also an advocate for developer growth, career development, and practical AI adoption in modern software engineering. Links LinkedIn Developer Confidence Growth Starts with Humility Many developers can remember a moment when their confidence collided with reality. For Samuel, that moment came during an early Microsoft internship. As a young student entering a world filled with highly accomplished engineers and mentors, he quickly discovered that classroom success and industry expertise were very different things. This type of experience is surprisingly valuable. The industry often celebrates confidence, but sustainable confidence is built on understanding limitations. Developers who believe they already know everything stop learning. Developers who understand the size of the field continue improving year after year. The fastest-growing developers are often the ones who are most aware of what they still need to learn. Why Developer Confidence Growth Requires Discomfort Growth rarely feels comfortable. New developers frequently experience uncertainty when they enter professional environments. Meetings are filled with unfamiliar terminology. Business discussions happen faster than expected. Architectural decisions involve tradeoffs that aren't covered in tutorials. Samuel discussed how many interns sit quietly in meetings because they don't fully understand what's happening yet. Rather than seeing that as a weakness, he recognizes it as a natural stage of professional development. The challenge is learning to remain engaged despite uncertainty. Developers who avoid difficult situations often remain stuck. Developers who stay involved despite discomfort gradually build the context and experience necessary for long-term success. The goal isn't eliminating uncertainty. The goal is to become comfortable learning in uncertain environments. Developer Confidence Growth and the Reality of Imposter Syndrome Few topics resonate with developers more than imposter syndrome. At every stage of a career, new responsibilities create new doubts. Junior developers wonder whether they're qualified for their first role. Mid-level developers question their readiness for leadership opportunities. Senior engineers worry about keeping pace with rapidly evolving technologies. Samuel openly shared his own struggles with imposter syndrome and how those feelings followed him throughout multiple stages of his career. The important lesson is that imposter syndrome often appears during periods of growth. When responsibilities expand faster than confidence, uncertainty naturally follows. The mistake is assuming those feelings mean you don't belong. In many cases, they simply mean you're entering a new level of your career. Treating imposter syndrome as evidence of incompetence can stop career growth before it starts. How Mentorship Accelerates Developer Confidence Growth One of the most powerful themes from Samuel's story is the impact of mentorship. Strong mentors do more than answer technical questions. They provide perspective. Experienced professionals understand that beginners don't need perfection. They need guidance, encouragement, and opportunities to learn through real-world experiences. Because Samuel remembers what it felt like to be the quiet person in the room, he actively invests time helping students and junior developers build confidence. This highlights an important truth for organizations. Teams that create mentoring cultures develop stronger engineers over time. Teams that expect people to figure everything out alone often lose talented developers before they reach their potential. Find someone at least two years ahead of you professionally and schedule regular conversations about their experiences and lessons learned. Developer Confidence Growth Is a Continuous Process Technology never stands still. Frameworks evolve. Languages change. New platforms emerge. AI tools are transforming workflows across the industry. Developers sometimes believe confidence arrives when they finally know enough. The reality is different. The most successful engineers understand that learning never ends. Every major technological shift resets part of the playing field. Even highly experienced professionals must adapt, learn new tools, and develop new approaches. Samuel's career demonstrates that long-term success isn't about reaching a finish line. It's about building a mindset capable of navigating constant change. Confidence doesn't come from knowing everything. It comes from trusting your ability to learn what comes next. Conclusion Developer careers are built through repeated cycles of learning, uncertainty, growth, and adaptation. The experiences that challenge confidence often become the experiences that strengthen it. True Developer Confidence Growth happens when engineers stop measuring success by what they already know and start measuring success by their willingness to keep learning. The developers who thrive over decades aren't the ones who avoid discomfort. They're the ones who embrace it as part of the journey. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Building Forward Momentum as a Developer Entrepreneur Building Better Developers with AI: Mastering Developer Feedback Evolving from Coder to Developer: What You Need to Know Building Better Developers Podcast Videos – With Bonus Content

    28 min
  7. 15 Jun

    1,000 Episodes Later: What Building Better Developers Has Taught Us

    Reaching 1,000 podcast episodes is one of those milestones that feels impossible when you're recording episode one. Yet here we are — one thousand conversations, one thousand opportunities to learn, one thousand chances to help someone become a little better than they were yesterday. When Rob started Building Better Developers nearly a decade ago, the goal wasn't to build a massive content platform or chase download numbers. It was simpler than that: help developers grow, build better careers, work more effectively, and never stop learning. The Power of Small Improvements One theme we've returned to again and again is that meaningful growth rarely comes from a single breakthrough. It comes from consistency — a better habit, a better conversation, a better question, a better decision. The same philosophy that helps developers improve their craft is what got us to 1,000 episodes. Not because we had a master plan. Not because we knew exactly where this would go. But because week after week, episode after episode, we showed up and shared what we were learning. The same way great software gets built: one iteration at a time. More Than Just a Podcast Over the years, Building Better Developers has grown into articles, videos, interviews, challenges, and a community of people who genuinely care about getting better at what they do. We've covered software architecture and Agile practices, leadership and career growth, AI, entrepreneurship, burnout, communication, and team dynamics. Languages have evolved. Frameworks have come and gone. Entire development ecosystems have appeared almost overnight. But one thing has stayed constant: the need for developers willing to learn. Tools change. Technology changes. The ability to think, adapt, communicate, and grow never goes out of style. Thank You for Being Part of the Journey Whether this is your first episode or you've somehow been here for all 1,000 — thank you. For listening, for sharing episodes with coworkers and friends, for the emails and feedback, and for challenging us to think differently. Building Better Developers has always been a conversation, not a broadcast. Every message and discussion has helped shape what we cover and where we go. This milestone belongs as much to our listeners as it does to us. The Next 1,000 If there's one thing a thousand episodes has taught us, it's that there is always more to learn. AI is reshaping how we build software. Teams are adapting. Developers are finding new ways to create value. The future will look different from the past decade — but our mission stays the same. Keep learning. Keep growing. Keep helping developers build better careers and better lives. Here's to the next milestone. And as always — keep building better. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Building Forward Momentum as a Developer Entrepreneur Building Better Developers with AI: Mastering Developer Feedback Evolving from Coder to Developer: What You Need to Know Building Better Developers Podcast Videos – With Bonus Content

    3 min
  8. 11 Jun

    AI Deployment Ownership: Why Infrastructure Skills Matter More Than Ever

    As AI becomes increasingly capable of generating code, many developers are asking the wrong question. Instead of asking whether AI will replace developers, a better question is: What skills become more valuable when code generation becomes easier? The answer may be AI Deployment Ownership. About Jason Sherman Jason Sherman is a serial entrepreneur, filmmaker, author, and technology founder best known for building practical solutions that bridge the gap between emerging technology and real-world business problems. He is the founder and CEO of Vengo AI and has launched multiple technology platforms throughout his entrepreneurial career. Jason is known for his direct, hands-on approach to innovation, focusing on execution, product development, AI implementation, and helping businesses leverage technology without losing sight of operational realities. His perspective combines startup experience, software development expertise, product strategy, and a strong belief that technology should solve actual business problems rather than chase trends. Links: Facebook, Twitter / X, YouTube, LinkedIn, Website AI Deployment Ownership Changes the Developer Role Historically, many developers focused on implementation. Their value came from translating requirements into working code. Today, AI can assist with much of that work. That shifts responsibility upward. Developers are increasingly expected to understand: Architecture Infrastructure Security Deployment Automation The ability to oversee an entire system becomes more important than writing every line manually. Insight: AI raises the importance of systems thinking. Why Building Is No Longer Enough Many AI-created applications work perfectly in development environments. Production introduces a different reality. Organizations need: Monitoring Logging Security controls CI/CD pipelines Recovery procedures These are areas where experience matters significantly. An application that functions correctly in a demo environment may fail quickly when exposed to real-world usage patterns. AI Deployment Ownership Requires Infrastructure Knowledge One of the strongest themes from the conversation was ownership. Developers who understand deployment gain an advantage by moving beyond simple application development. Key capabilities include: Server management API security Automated deployments Version control workflows Environment management These responsibilities cannot be delegated entirely to AI. Action: Learn how applications move from development into production. The Rise of the Technical Operator The next generation of developers may resemble technical operators rather than pure coders. Their responsibilities include: Reviewing AI output Managing architecture Protecting infrastructure Maintaining reliability This shift mirrors previous technology transitions. Tools become easier. Responsibility becomes greater. AI Deployment Ownership Creates Career Protection Developers concerned about long-term career relevance should focus on areas where judgment matters. AI can generate code. It cannot reliably assume accountability. Organizations still need professionals who can: Evaluate tradeoffs Assess risks Make deployment decisions Own outcomes That ownership creates value. Conclusion The future belongs to developers who understand entire systems rather than individual code files. AI Deployment Ownership represents a practical path forward for developers looking to remain relevant in an increasingly automated environment. Stay Connected: Join the Developreneur Community 👉 Subscribe to Building Better Developers for more conversations on momentum, leadership, and growth. Whether you're a seasoned developer or just starting, there's always room to learn and grow together. Contact us at info@develpreneur.com with your questions, feedback, or suggestions for future episodes. Together, let's continue exploring the exciting world of software development. Additional Resources Maximizing Efficiency in Software Development: Individual, Small, and Large Teams Time Left Estimation: The Execution Model Modern Teams Need Getting Started with AI in Your Business: Insights from Hunter Jensen (Part 1) Building Better Developers Podcast Videos – With Bonus Content

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