Data Hurdles

著者: Michael Burke and Chris Detzel
  • サマリー

  • Data Hurdles is a captivating podcast that takes listeners on an enthralling journey through the multifaceted world of data, where technology and information intersect in intriguing and unanticipated ways. Hosted by Michael Burke and Chris Detzel, this podcast delves into an array of data-centric topics, such as data quality, data security, the revolutionary ChatGPT, data literacy, data pipelines, and the role of reinforcement learning data in machine learning. In addition to exploring AI, big data, and social justice, Michael and Chris share their experiences and insights on how these complex issues impact our lives. By inviting expert guests from diverse industries, each episode promises thought-provoking discussions and engaging storytelling, ensuring listeners walk away feeling informed, inspired, and eager to learn more about the rapidly evolving field of data. Join us at Data Hurdles and embark on an incredible journey that will change the way you perceive the importance and potential of data in shaping our world
    2024All rights Reserved
    続きを読む 一部表示

あらすじ・解説

Data Hurdles is a captivating podcast that takes listeners on an enthralling journey through the multifaceted world of data, where technology and information intersect in intriguing and unanticipated ways. Hosted by Michael Burke and Chris Detzel, this podcast delves into an array of data-centric topics, such as data quality, data security, the revolutionary ChatGPT, data literacy, data pipelines, and the role of reinforcement learning data in machine learning. In addition to exploring AI, big data, and social justice, Michael and Chris share their experiences and insights on how these complex issues impact our lives. By inviting expert guests from diverse industries, each episode promises thought-provoking discussions and engaging storytelling, ensuring listeners walk away feeling informed, inspired, and eager to learn more about the rapidly evolving field of data. Join us at Data Hurdles and embark on an incredible journey that will change the way you perceive the importance and potential of data in shaping our world
2024All rights Reserved
エピソード
  • Top 10 MDM 2025 Platforms - Who's Rising, Who's Falling & Why It Matters
    2024/12/01

    The Data Hurdles Impact Index (DHII) provides a comprehensive analysis of the top Master Data Management platforms, evaluating vendors based on multi-domain capabilities, core features, AI enablement, data governance integration, architecture flexibility, total cost of ownership, market reach, and vendor stability. This inaugural DHII analysis covers ten leading MDM platforms that are shaping enterprise data management in 2025.

    The assessment, led by 20-year MDM veteran Rohit Singh Verma, Director - Data practice, Nvizion Solutions, examines market leaders and emerging players including Informatica, Stibo Systems, Profisee, Reltio, Ataccama, TIBCO EBX, IBM Infosphere MDM, SAP MDM, Syndigo, and Viamedic. Each vendor is evaluated through the lens of practical implementation experience, market presence, and technological innovation.

    Key findings reveal Informatica's continued dominance with their IDMC cloud offering, though facing increasing pressure in specific domains from specialists like Stibo Systems in product data management. The analysis highlights a significant market opportunity in the Middle East, where only select vendors have established strong presences. The DHII also identifies critical factors beyond technical capabilities, including the importance of system integrator networks, implementation speed, and regional market penetration.

    The evaluation exposes interesting market dynamics, such as the challenges faced by legacy vendors like IBM and SAP in keeping pace with cloud-native solutions, and the emergence of AI-enabled capabilities as a key differentiator. The analysis also addresses the persistent challenge of high implementation failure rates (estimated at 75%) and how vendors are evolving to address this through improved user interfaces, AI-assisted implementations, and stronger partner ecosystems.

    This groundbreaking DHII assessment serves as an essential guide for organizations navigating the complex MDM vendor landscape, offering insights that go beyond traditional analyst evaluations to provide a practical, implementation-focused perspective on the market's leading solutions.

    続きを読む 一部表示
    1 時間 7 分
  • The Future of Data Teams in the AI Era: Insights from Alex Welch, dbt Labs' Head of Data and Analytics
    2024/11/01

    In this insightful episode of Data Hurdles, hosts Chris Detzel and Michael Burke sit down with Alex Welch, Head of Data at dbt Labs, to explore the transformative impact of AI on data organizations and the future of analytics.

    With over a decade of experience in FinTech and now leading data initiatives at dbt Labs, Alex shares valuable perspectives on:

    • Data Quality & Governance:
    - The critical importance of establishing data quality frameworks
    - How to approach data governance without creating unnecessary friction
    - The balance between control and accessibility in data management

    • AI Implementation & Challenges:
    - Two major hurdles in AI adoption: data/tech debt and the skills/culture gap
    - Practical approaches to introducing AI into existing workflows
    - The importance of starting small rather than trying to "boil the ocean"

    • Future of Data Teams:
    - Emerging roles like prompt engineering specialists and AI ethics officers
    - The shift from hierarchical structures to dynamic pod-based teams
    - How human-AI collaboration will reshape organizational structures

    • Skills & Development:
    - Why traditional analytical skills remain crucial in the AI era
    - The importance of maintaining human judgment and expertise
    - How to prepare for an AI-augmented workplace

    The conversation takes an especially interesting turn when discussing practical applications of AI, including Alex's personal example of using AI for meal planning and grocery shopping automation. The hosts and guest also explore thought-provoking perspectives on maintaining human expertise while leveraging AI capabilities, emphasizing the importance of using AI to augment rather than replace human decision-making.

    The episode concludes with valuable insights about preparing organizations for emerging AI trends and the importance of considering security implications in an AI-enabled future.

    This episode is particularly relevant for:
    - Data leaders planning AI initiatives
    - Organizations navigating data quality challenges
    - Professionals interested in the future of data careers
    - Anyone looking to understand the practical implications of AI in business

    続きを読む 一部表示
    51 分
  • Data Mesh in Action: Challenges, Opportunities, and Real-World Examples with Willem Koenders
    2024/09/29

    In this comprehensive episode of Data Hurdles, hosts Chris Detzel and Michael Burke engage in a deep and insightful conversation with Willem Koenders, a global data strategy leader at ZS Associates, about the increasingly popular concept of data mesh.

    The episode begins with Willem providing his background and expertise in the data field, setting the stage for a rich discussion. He explains the core concept of data mesh, describing it as a domain-driven approach to data architecture that emphasizes decentralized ownership and governance of data across an organization.

    Throughout the conversation, Willem uses various analogies to make the concept more accessible, likening data mesh to a net with strategic data nodes, and comparing data assets to real estate properties that need proper management and care. These analogies help illustrate the shift from centralized data warehouses or lakes to a more distributed, domain-oriented approach.

    The hosts and guest delve into the challenges of implementing data mesh, including cultural shifts required within organizations. Willem emphasizes the importance of clear ownership, quality control, and the need for a product-oriented mindset when it comes to data assets. He discusses how data mesh can help solve long-standing issues of data quality and accessibility that many organizations face.

    Real-world examples and case studies are shared, providing listeners with practical insights into how data mesh principles are being applied across various industries. Willem talks about the financial sector's early adoption of similar concepts and how medical technology companies are now embracing data mesh to deal with evolving market demands and data-generating products.

    The conversation also covers the critical aspect of data governance in a mesh environment. Willem explains how governance needs to be balanced between centralized standards (especially for security) and domain-specific controls. He stresses the importance of enablement and providing the right tools for domain teams to manage their data effectively.

    Chris and Michael bring up the challenges of cross-functional collaboration and the often siloed nature of data work in organizations. Willem acknowledges these difficulties and discusses strategies for improving communication and alignment between different teams and roles.

    The episode explores how to measure the business impact of data mesh implementations. Willem advocates for a portfolio approach, where organizations track the value generated by specific data assets and their associated use cases, rather than focusing solely on technology investments.

    Looking to the future, the discussion touches on the potential for data mesh to become a dominant data architecture approach, especially for larger and more complex organizations. Willem expresses hope that evolving tools and technologies, including AI, will make data mesh implementation more accessible to a broader range of companies.

    Throughout the episode, the hosts and guest maintain a balanced view, acknowledging both the potential benefits and the significant challenges of adopting a data mesh approach. They emphasize that success depends not just on technology, but on organizational culture, trust, and effective communication.

    The conversation concludes with reflections on the importance of building trust between different parts of an organization and how frameworks like data mesh can facilitate better collaboration and data utilization when implemented thoughtfully.

    This episode provides listeners with a comprehensive overview of data mesh, blending theoretical concepts with practical insights and real-world examples. It offers valuable perspectives for data professionals, business leaders, and anyone interested in modern data architecture and management strategies.

    続きを読む 一部表示
    42 分

Data Hurdlesに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。