AI at Work

Why Travelport Believes The Real AI Opportunity Starts With People

27 min · I går
episode Why Travelport Believes The Real AI Opportunity Starts With People cover

Beskrivelse

What if the biggest AI challenge facing organizations has nothing to do with technology at all? In this episode of AI at Work, I sit down with Lee Senderov, Chief Transformation Officer at Travelport, to discuss why AI should be viewed as a workforce transformation rather than a technology project, and why many organizations are still framing the opportunity in entirely the wrong way. While many businesses continue to focus on AI pilots, innovation labs, and isolated technical use cases, Lee argues that the real opportunity lies in empowering every employee. Drawing on Travelport's own AI journey, he shares how teams across the organization are using AI to eliminate repetitive work, create time for higher-value thinking, and solve problems that would never make it onto a traditional technology roadmap. We explore the practical framework Travelport has developed to drive adoption, covering capability building, creating the right operating environment, and fostering a culture that encourages employees to openly share ideas and AI-powered innovations. Lee explains why successful AI adoption requires far more than deploying tools, and how organizations can create an environment where experimentation becomes part of everyday work. The conversation also looks at the future of hiring, talent, and workplace culture. Lee predicts that AI proficiency will soon become as commonplace as email skills, shifting hiring conversations away from whether someone uses AI and toward how they use it to improve outcomes. At the same time, he warns against both ignoring AI and becoming overly dependent on it, arguing that the most successful employees will combine AI capabilities with human judgment, creativity, and critical thinking. We also discuss how AI is transforming the travel industry itself. From changing the way travelers search and book trips to supporting travel professionals during disruptions and complex itineraries, Lee explains how AI and human expertise are increasingly working together to create better customer experiences. Looking ahead, Lee believes the organizations that thrive will be those that build cultures capable of adapting quickly to whatever comes next. AI may be today's disruption, but the larger challenge is creating a workforce ready to embrace continuous change. Is your organization treating AI as another software tool, or is it rethinking how work itself gets done? Share your thoughts with me.

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36 Episoder

episode Why Travelport Believes The Real AI Opportunity Starts With People cover

Why Travelport Believes The Real AI Opportunity Starts With People

What if the biggest AI challenge facing organizations has nothing to do with technology at all? In this episode of AI at Work, I sit down with Lee Senderov, Chief Transformation Officer at Travelport, to discuss why AI should be viewed as a workforce transformation rather than a technology project, and why many organizations are still framing the opportunity in entirely the wrong way. While many businesses continue to focus on AI pilots, innovation labs, and isolated technical use cases, Lee argues that the real opportunity lies in empowering every employee. Drawing on Travelport's own AI journey, he shares how teams across the organization are using AI to eliminate repetitive work, create time for higher-value thinking, and solve problems that would never make it onto a traditional technology roadmap. We explore the practical framework Travelport has developed to drive adoption, covering capability building, creating the right operating environment, and fostering a culture that encourages employees to openly share ideas and AI-powered innovations. Lee explains why successful AI adoption requires far more than deploying tools, and how organizations can create an environment where experimentation becomes part of everyday work. The conversation also looks at the future of hiring, talent, and workplace culture. Lee predicts that AI proficiency will soon become as commonplace as email skills, shifting hiring conversations away from whether someone uses AI and toward how they use it to improve outcomes. At the same time, he warns against both ignoring AI and becoming overly dependent on it, arguing that the most successful employees will combine AI capabilities with human judgment, creativity, and critical thinking. We also discuss how AI is transforming the travel industry itself. From changing the way travelers search and book trips to supporting travel professionals during disruptions and complex itineraries, Lee explains how AI and human expertise are increasingly working together to create better customer experiences. Looking ahead, Lee believes the organizations that thrive will be those that build cultures capable of adapting quickly to whatever comes next. AI may be today's disruption, but the larger challenge is creating a workforce ready to embrace continuous change. Is your organization treating AI as another software tool, or is it rethinking how work itself gets done? Share your thoughts with me.

I går27 min
episode How LaunchDarkly Is Helping Enterprises Control Shadow AI in DevOps cover

How LaunchDarkly Is Helping Enterprises Control Shadow AI in DevOps

What happens when AI-generated code ships faster than humans can properly review it, and who takes the blame when something breaks? In this episode of AI at Work, I sit down with Cameron Etezadi, Chief Technology Officer at LaunchDarkly, to tackle one of the most uncomfortable questions facing modern software teams. As developers increasingly rely on AI coding assistants, copilots, and public LLMs to accelerate delivery, organizations are finding themselves caught between productivity gains and growing governance risks. Cameron explains why “Shadow AI” has become the modern evolution of Shadow IT, and why the stakes are far higher when AI-generated code is moving directly into production systems. We explore how engineering teams are balancing innovation with accountability, why runtime controls and kill switches are becoming essential in AI-native software development, and how organizations are struggling to maintain visibility into code generated by autonomous systems. Cameron also explains why he believes many companies are unknowingly exposing intellectual property, customer trust, and compliance obligations through careless AI use. The conversation also examines how the EU AI Act and Product Liability Directive could reshape software development globally. Cameron argues that organizations deploying AI-generated code are now effectively treated as manufacturers under emerging regulations, with accountability resting firmly on businesses shipping software, not the AI vendors creating the tools. From governance gaps and auditability concerns to token economics and developer productivity metrics, this discussion explores the operational realities behind the AI hype cycle. We also discuss why faster code does not automatically mean safer software, the hidden costs of AI-generated rework, and how some organizations are already spending more time fixing AI-assisted production issues than they expected. Cameron shares practical advice for boards, CISOs, and DevOps leaders on what questions they should be asking today before AI governance problems become tomorrow’s security incidents. If your organization is experimenting with AI-assisted development, this conversation offers a valuable reality check on where the risks are emerging, how the rules are changing, and why accountability still matters in an increasingly automated world.

27. mai 202646 min
episode KPMG - Why AI ROI Depends More on Workforce Behavior Than Technology cover

KPMG - Why AI ROI Depends More on Workforce Behavior Than Technology

Why are so many organizations investing millions into AI while still struggling to prove meaningful productivity gains? In this episode of AI at Work, I spoke with Rahsaan Shears, Principal and AIQ Program Lead at KPMG, about a major new study conducted alongside the McCombs School of Business at The University of Texas at Austin that analyzed 1.4 million real workplace AI interactions. What emerged from that research challenges many assumptions business leaders currently hold about AI adoption, productivity, and the future of work. One of the most surprising findings was that the most effective AI users were not necessarily the most technical employees, nor even the people using AI tools most frequently. Instead, the highest performers were what KPMG calls “sophisticated users,” employees who learned how to think with AI, challenge it, iterate with it, and use it as a reasoning partner rather than simply a faster search engine. Rahsaan explained how this distinction is forcing organizations to rethink how they measure AI success. Many businesses remain focused on surface-level adoption metrics like license counts, prompt volume, or chatbot usage. But those measurements often fail to capture whether AI is genuinely improving decision-making, productivity, creativity, or operational performance. The real challenge, according to Rahsaan, is that most organizations still lack a framework for understanding what meaningful AI-enabled work actually looks like. We also explored the growing behavioral capability gap emerging inside organizations. While some employees are rapidly learning how to integrate AI into their workflows in sophisticated ways, others remain stuck using these tools for basic task acceleration. Rahsaan shared why this gap has less to do with age or technical skill and far more to do with curiosity, ambition, critical thinking, and an employee’s willingness to rethink how work itself gets done. One of the strongest themes throughout our conversation was the idea that AI should not be treated as a technology rollout alone. Rahsaan argued that organizations succeeding with AI are redesigning culture, workflows, decision-making structures, and team dynamics at the same time they deploy new tools. He compared today’s AI systems to toddlers: incredibly capable compared to where they started, but still requiring guardrails, coaching, supervision, and careful integration into everyday work. For listeners interested in organizational transformation, this episode offers practical insight into how KPMG is building AI-first behaviors through peer-led champion networks, embedded learning models, AI coaching inside the flow of work, and safe environments where employees can experiment without fear of failure. Rahsaan shared why psychological safety, curiosity, and continuous learning are rapidly becoming core business skills in the AI economy. We also discussed why organizations that fail to create agency for employees may struggle to scale AI beyond pilot programs. According to Rahsaan, many existing business processes were designed around the limitations of human workers, limitations that no longer fully apply once digital teammates and agentic workflows enter the picture. Companies willing to question long-standing assumptions about work itself are beginning to separate themselves from the rest of the market. This conversation moves beyond AI hype and focuses on the human behaviors, organizational structures, and operational changes that will ultimately determine who wins and loses in the AI economy.

20. mai 202629 min
episode LaunchLemonade Founder Cien Solon On Building The Canva For AI Agents cover

LaunchLemonade Founder Cien Solon On Building The Canva For AI Agents

What happens when AI agent creation stops being the job of engineers and starts landing in the hands of the people who actually understand the business problem? In this episode of AI At Work, I sat down with Cien Solon, CEO and Founder of LaunchLemonade, to talk about why the next chapter of AI may have less to do with hype and more to do with practical problem-solving. Cien describes LaunchLemonade as the Canva for AI agents, and that immediately caught my attention because it gets to the heart of what so many businesses are looking for right now. They do not want more jargon. They want a way to build something useful, quickly, securely, and without needing a room full of developers to make it happen. What I found especially interesting in our conversation was Cien’s argument that the real barrier to AI is no longer cost or technical complexity. In her view, those obstacles have already fallen away. The bigger issue now is mindset. Too many organizations are still stuck in observation mode, watching from the sidelines, waiting for perfect tools and perfect certainty. Meanwhile, others are already building, testing, learning, and finding ways to turn AI agents into something that supports growth, fills skills gaps, and creates new revenue opportunities. We also talked about what return on investment actually looks like in the real world. That part matters because so many AI conversations still float around in theory. Cien makes the case that the people best placed to solve business problems are the ones living with them every day, not the engineers guessing from a distance. That is a powerful shift in thinking. Instead of waiting until there is budget to hire another person, businesses can now identify a gap, map out the workflow, and create an AI agent to help close it. There is also a bigger human story running through this episode. Cien shared examples of people who started out experimenting with prompts and basic no-code tools, then went on to build consulting businesses, launch products, sell courses, and reposition themselves in the market. One story that stood out was a university professor who used LaunchLemonade to learn, experiment, and eventually step into entrepreneurship full time. It is the kind of example that reminds us this technology is not only changing workflows, it is also changing careers and confidence. We also discuss the future of the no-code agent economy and where businesses need to focus next. Cien breaks people into a few camps, the observers, the operators, and the builders, and it makes for a memorable way of thinking about where each of us stands right now. Her message is clear. If you are still only watching, you risk falling behind. If you are building, the next challenge is no longer whether you can create something, but whether you can market it, sell it, and make it meaningful. By the end of this conversation, what stayed with me most was how accessible this all feels when someone explains it in plain English. This is not a conversation about futuristic abstractions. It is about people using AI to solve real business problems today, in ways that feel achievable rather than intimidating. So after listening, where do you see yourself in this new AI economy, observing, operating, or building, and what are you creating next?

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episode Building The Workforce of Tomorrow With AI Co-Workers cover

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27. mars 202626 min