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  • Revolutionizing Healthcare Data Sharing: Shubh Sinha, Integral's CEO, on Data Hurdles
    2024/08/10

    In this enlightening episode of "Data Hurdles," hosts Chris Detzel and Michael Burke engage in a deep conversation with Shubh Sinha, CEO and co-founder of Integral, about revolutionizing healthcare data sharing. Sinha, leveraging his experience at LiveRamp and his current leadership role at Integral, offers valuable insights into the intricate world of regulated data in healthcare. He elucidates how data fragmentation across various healthcare touchpoints creates significant challenges in comprehending a patient's complete journey. Sinha emphasizes the crucial balance between utilizing comprehensive patient data—encompassing both medical and non-medical information—and adhering strictly to evolving privacy regulations such as HIPAA, CCPA, and GDPR.

    The discussion explores Integral's innovative approach to these challenges, showcasing how their technology automates risk assessment and compliance checks for data sets, facilitating faster and more secure data sharing between healthcare entities. Sinha underscores the importance of proactive compliance in an increasingly regulated data landscape and how Integral's solutions are designed to swiftly adapt to new regulations. The conversation also addresses the impact of AI and large language models in the healthcare data space, highlighting new considerations such as bias in training data and the necessity for explainable AI in medical decision-making.

    As co-founder, Sinha provides a forward-looking perspective on the future of healthcare data, predicting a trend towards more regulated data across industries and positioning Integral as a vital link between compliance and data stacks. He envisions a future where data utility and privacy coexist harmoniously, fostering trust between healthcare providers and patients. The episode concludes with reflections on the growing importance of auditability and explainability in data-driven decisions, underscoring Integral's role in shaping a more transparent and efficient healthcare data ecosystem. This insightful discussion offers listeners a comprehensive understanding of the current challenges and innovative solutions in healthcare data sharing, highlighting how companies like Integral, under Sinha's co-leadership, are paving the way for more effective, compliant, and patient-centric healthcare data utilization.

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    27 分
  • Challenging Data Management Norms: A Conversation with Malcolm Hawker, Chief Data Officer at Profisee
    2024/07/27

    In this insightful episode of Data Hurdles, hosts Chris Detzel and Michael Burke welcome Malcolm Hawker, Chief Data Officer at Profisee, for an in-depth discussion on the evolving landscape of data management and the role of Chief Data Officers (CDOs) in today's organizations.

    The conversation kicks off with Malcolm sharing his journey from product management to becoming a prominent figure in the data management space. He provides valuable insights into his experiences at Dun & Bradstreet and as a Gartner analyst, which have shaped his perspectives on data governance and strategy.

    A significant portion of the episode is dedicated to Malcolm's contrarian view on the data mesh architecture. He articulates why he favors the data fabric approach, challenging the underlying assumptions of data mesh and discussing the practical limitations of fully decentralized data management. This leads to a broader discussion on the importance of balancing domain autonomy with cross-functional data needs in organizations.

    The conversation then shifts to the impact of AI and machine learning on data governance. Malcolm shares his optimistic view on how AI could potentially solve complex data management challenges, particularly in automating governance processes and bridging the gap between structured and unstructured data.

    Throughout the episode, Malcolm emphasizes the need for CDOs to focus on delivering tangible value to their organizations. He criticizes the overreliance on data maturity assessments and lengthy frameworks, instead advocating for a more practical, customer-centric approach to data management. The discussion touches on the importance of quantifying the value of data initiatives and improving communication with business stakeholders.

    The hosts and Malcolm also explore emerging trends that CDOs should be aware of, including the integration of product management principles into data leadership roles, the growing importance of sustainability in data management, and the need to change the narrative around data quality from a burden to an opportunity.

    Towards the end, the conversation turns to the future of the CDO role. Malcolm expresses optimism about the long-term prospects for data leadership, while acknowledging short-term challenges. He highlights the emergence of a new generation of CDOs who are willing to question the status quo and take innovative approaches to data management.

    Throughout the episode, Malcolm's passion for data management and his commitment to driving change in the industry shine through. His candid insights and provocative ideas make for a compelling and thought-provoking discussion that challenges listeners to rethink traditional approaches to data leadership and governance.

    This Data Hurdles episode offers valuable insights for current and aspiring CDOs, data professionals, and business leaders interested in leveraging data as a strategic asset in their organizations.

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    46 分
  • Stirring the Data Pot: DataKitchen's CEO, Founder, Head Chef, Christopher Bergh on Cooking Up Success
    2024/06/30

    This episode of Data Hurdles features an in-depth interview with Christopher Bergh, CEO and Head Chef of Data Kitchen. Hosts Chris Detzel and Michael Burke engage in a wide-ranging discussion about the challenges and opportunities in data analytics and engineering.

    Key Topics Covered:

    1. Introduction and Background
      • Chris Bergh introduces Data Kitchen and explains the company name's origin and significance.
      • He shares his background in software development and transition to data analytics.
    2. Core Challenges in Data Analytics
      • Berg emphasizes that 70-80% of data team work is waste.
      • He stresses the importance of focusing on eliminating waste rather than optimizing the productive 20-30%.
    3. Data Kitchen's Approach
      • The company aims to bring ideas from agile, DevOps, and lean manufacturing to data and analytics teams.
      • They focus on helping teams deliver insights to demanding customers consistently and innovatively.
    4. Key Problems in Data Teams
      • Difficulty in making quick changes and assessing their impact
      • Challenges in measuring team productivity and customer satisfaction
      • The need for better error detection and resolution in production
    5. Data Team Productivity and Happiness
      • Discussion on the high frustration levels among data professionals
      • The importance of connecting data teams with end customers for better feedback and satisfaction
    6. Data Quality and Testing
      • Bergh introduces Data Kitchen's approach to automatically generating data quality validation tests
      • The importance of business context in creating effective tests
    7. Data Journey Concept
      • Bergh explains the "data journey" as a fire alarm control panel for data processes
      • The importance of having a live, actionable view of the entire data production process
    8. Observability in Data Systems
      • Discussion on the future of observability in increasingly complex data systems
      • The need for cross-tool and deep-dive monitoring capabilities
    9. Impact of AI and LLMs
      • Bergh's perspective on the role of AI and Large Language Models in data work
      • Emphasis that while AI can improve efficiency, it doesn't solve the fundamental waste problem
    10. Open Source and Community
      • Data Kitchen's decision to open-source their software
      • The importance of spreading ideas and fostering community in the data space
    11. Certification and Education
      • Data Kitchen's certification program and its popularity among data professionals

    Key Takeaways:

    • The most significant challenge in data analytics is addressing the 70-80% of work that is waste.
    • Connecting data teams directly with customers can significantly improve outcomes and job satisfaction.
    • Automatically generated data quality tests and visualizing the entire data production process are crucial innovations.
    • While AI and new tools can improve efficiency, they don't address the core issues of waste and system-level problems in data work.
    • Open-sourcing and community building are essential for advancing the field of data analytics and engineering.
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    42 分
  • Transforming CX with AI: A Conversation with CEO and Co-Founder, Somya Kapoor of TheLoops
    2024/06/08

    Welcome to another episode of the Data Hurdles podcast! In this episode, hosts Chris Detzel and Michael Burke are thrilled to have a special guest, Somya Kapoor, the CEO and Co-Founder of TheLoops. Somya brings a wealth of experience from her leadership roles at SAP and ServiceNow and shares her remarkable journey of transitioning from big corporations to the startup world.


    Episode Highlights:

    • Introduction and Background: Chris and Michael kick off the episode with a warm welcome and a brief catch-up before introducing Somya Kapoor. Somya shares her impressive background, highlighting her leadership roles at SAP and ServiceNow and her transition to the startup ecosystem.
    • Founding TheLoops: Somya dives into the inspiration behind co-founding TheLoops, a company focused on transforming customer experience (CX) using AI. She recounts the challenges and opportunities she encountered while starting the company during the COVID-19 pandemic. Despite the initial setbacks, Somya's perseverance and innovative thinking led to the successful establishment of TheLoops.
    • AI and Customer Experience: The discussion delves into how TheLoops leverages AI to enhance customer experience by aligning people, processes, and data. Somya explains the critical role of AI in operational efficiency and personalized customer interactions. She emphasizes the importance of understanding customer behavior through data and how it can drive better business outcomes.
    • Navigating Challenges: Somya shares insights on navigating the hurdles of building a startup, especially during uncertain times. She discusses the importance of pivoting and adapting to changing circumstances, and how TheLoops managed to secure customers and investors despite the pandemic-induced challenges.
    • Leadership and Diversity: The conversation shifts to leadership and the significance of fostering an inclusive and diverse work culture. Somya shares her personal journey of growing up in different cultural environments and how it shaped her perspective on diversity. She highlights the benefits of having a diverse team and how it contributes to creativity and innovation at TheLoops.
    • Future Trends in CX: Somya provides her perspective on the current trends and future of the CX industry. She discusses the transformative impact of AI on CX, the breaking down of silos within organizations, and the evolving role of support leaders. Somya also touches upon the integration of AI in support systems to enhance customer satisfaction and operational efficiency.
    • Advice for Aspiring Entrepreneurs: Towards the end of the episode, Somya offers valuable advice for aspiring entrepreneurs, especially women looking to enter the tech industry. She encourages them to take the leap, embrace challenges, and learn to navigate the startup landscape with resilience and determination.
    • Closing Thoughts: Chris and Michael wrap up the episode with a heartfelt thank you to Somya for sharing her insights and experiences. They express their admiration for her journey and the innovative work being done at TheLoops. The hosts also remind listeners to rate, review, and subscribe to the podcast for more inspiring episodes.

    Follow Us:

    • Twitter: @DataHurdles
    • LinkedIn: Data Hurdles
    • Website: Data Hurdles
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    42 分
  • AI Everywhere: The Coming Era of Intelligent Devices and Embedded Systems
    2024/05/18

    In this episode of Data Hurdles, hosts Chris Detzel and Michael Burke engage in a wide-ranging discussion about the current state and future trajectory of artificial intelligence (AI) and machine learning (ML) in both the job market and product development.

    The conversation begins with Mike sharing insights on the changing job market for AI and ML professionals. Despite the high demand for these skills in recent years, he notes that the market seems to be softening, with even experienced candidates facing challenges finding jobs. They discuss potential factors, including an oversupply of talent, ambiguity around the impact of large language models like ChatGPT, and broader economic conditions.

    The hosts then delve into the different challenges and opportunities facing AI startups compared to established companies looking to integrate AI into their products. Mike suggests that startups are at risk of being overtaken by the rapid advancements in foundational models like GPT-4, while larger companies have some buffer due to their existing customer base and revenue streams. However, he notes that even large organizations will need to eventually move beyond lightweight AI integrations and rebuild their products around AI foundations to stay competitive.

    Throughout the discussion, Chris and Mike touch on various examples of AI applications, from AI companions like Character.AI to productivity tools like Gemini's integration with Google Workspace. They also explore the importance of data privacy and security when using AI tools, highlighting how certain industries and use cases require on-premise models rather than cloud-based platforms.

    Looking ahead, the hosts imagine a future where AI is embedded in every device and system, from home appliances to cars. While noting the current "gimmicky phase" of many AI features, they express excitement about the potential for these technologies to eventually solve deeper, more meaningful problems.

    The episode offers a nuanced exploration of the challenges and opportunities surrounding AI and ML, informed by the hosts' industry experience and observations. While covering a broad range of topics, the central theme is the need for individuals and organizations to strategically navigate the rapid advancements in these technologies.

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    24 分
  • Pragmatic Approaches to Smart Data and AI Adoption with Founder of North Labs, Collin Graves
    2024/04/07

    In this episode of the Data Hurdles podcast, hosts Chris Detzel and Michael Burke interview Collin Graves, CEO and founder of North Labs, an AWS data and analytics partner based in Scottsdale, Arizona.

    Collin shares his background, starting with his military service and early exposure to cloud computing through Amazon Web Services (AWS) in 2007. He then discusses the founding of North Labs and its focus on helping industrial organizations, such as those in CPG, retail, and oil and gas, set data and AI strategies to drive business value.

    The conversation delves into North Labs' approach to smart data and AI adoption, emphasizing pragmatism and building strong foundations. Collin explains how North Labs differentiates itself by being an AWS-first company while still supporting tools like Snowflake when appropriate.

    Collin also shares his leadership philosophy, drawing from his military experience. He stresses the importance of struggling together, delegating effectively, and being gentle but firm. The discussion touches on maintaining customer service and excellence as a small company by being selective about projects and adhering to standard operating procedures.

    Looking to the future, Collin envisions North Labs as a leading non-GSI (Global System Integrator) partner for AWS customers in the data and AI space. The company aims to help organizations adopt technologies like GenAI in a measured, ROI-driven manner.

    Throughout the episode, Collin provides insights into navigating the evolving cloud landscape, the challenges faced by organizations of different sizes, and the importance of clear communication and strategic partnerships in driving successful data and AI initiatives.

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    33 分
  • The Future of AI in Product Design: Insights from Craft's Founder, Jeremy Merle
    2024/03/27

    In this episode of Data Hurdles, hosts Mike Burke and Chris Detzel interview Jeremy Merle, founder and partner at Craft, a digital product design studio. Jeremy shares his background in design and user experience, having worked with various Fortune 500 companies and startups, including his role as a founding designer at Brightcove, an online video platform.

    The conversation delves into Kraft's mission and vision, particularly in relation to AI. Jeremy explains how his company is investing in AI education and training for their team, as well as developing user experience principles based on their work with AI-focused products. He emphasizes the importance of creating exceptional user experiences and the need for a shared understanding of goals between Kraft and their clients.

    Jeremy discusses the early stages of AI integration in product design and the challenges that come with it, such as meeting users where they are in terms of their familiarity with the technology. He also touches on the potential for AI to automate certain tasks, allowing designers to focus on more strategic and conceptual work.

    The hosts and Jeremy explore the future of AI-powered user experiences, including personalized AI assistants that understand individual communication styles and needs. They also discuss the complexity of designing for such experiences, considering factors like security and user control.

    Throughout the episode, Jeremy emphasizes the importance of experimentation, challenging assumptions, and expanding one's network to stay ahead in the rapidly evolving AI landscape. The conversation also touches on the potential for startups to lead the way in AI integration, with larger companies potentially acquiring them to stay competitive.

    Overall, the episode provides insights into the challenges and opportunities that AI presents for digital product design, highlighting the need for designers to adapt and evolve their practices to create exceptional user experiences in an AI-driven world.

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    30 分
  • Unravel Data with Co-founder and CEO Kunal Agarwal: The Power of Data Observability
    2024/02/19

    In this compelling episode of the Data Hurdles podcast, hosts Chris Detzel and Michael Burke sit down with Kunal Agarwal, theCo-founder and CEO of Unravel Data, to delve into the fascinating realm of data observability. The conversation explores the challenges faced by organizations in managing complex data environments and how Unravel Data is leading the way in providing comprehensive solutions.


    Starting the discussion on a lighthearted note, Chris and Michael acknowledge the dedication of their guest, They express admiration for Kunal's commitment to the cause, which sets the stage for diving into the intricacies of data observability. Kunal begins by highlighting the origins of Unravel Data and its mission to simplify and optimize data pipelines. Drawing from his experience in the early days of Hadoop, he emphasizes the significance of making powerful data technologies accessible to a broader audience. By addressing issues such as security, governance, observability, and performance management, Unravel Data seeks to enhance the usability and efficiency of data environments. As the conversation progresses, Kunal and the hosts explore the evolution of data environments and the increasing need for observability. They discuss how data platforms now involve a broader range of users beyond just IT professionals, such as marketing, finance, and legal teams.

    Unravel Data has adapted its platform to cater to these changing dynamics, ensuring that it covers the entire data stack across different cloud platforms and services. A key aspect that sets Unravel Data apart is its effective utilization of artificial intelligence (AI) and machine learning. Kunal explains how the platform leverages algorithms and models to automatically detect issues, provide inferences, and suggest actionable insights. By presenting this information in plain language, Unravel Data empowers users, regardless of their technical expertise, to optimize their code, pipelines, and data sets. The conversation then shifts to the cultural dimension of implementing data observability. Kunal emphasizes the importance of incentivizing engineers and data professionals to proactively address inefficiencies and drive improvements.

    The hosts and Kunal discuss various approaches, including creating a sense of healthy competition through leaderboards or providing monetary rewards tied to cost savings. These strategies help foster a culture of continuous improvement and ownership within organizations. Looking to the future, the episode concludes with a visionary perspective on data observability. Kunal predicts that data applications will play an increasingly critical role in various industries, from transportation to banking and healthcare. With the potential impact of flawed data on human lives, the importance of observability becomes paramount. Unravel Data aims to be at the forefront, providing the insights and tools necessary to ensure smooth, reliable, and performant data operations. Listeners of this Data Hurdles podcast episode gain valuable insights into the importance of data observability and its potential to drive operational excellence. With Unravel Data at the forefront of this field, organizations can navigate the complex data landscape with confidence and optimize their data environments for long-term success.

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    23 分