Episodes

  • From Data Projects to Data Products: Essential Skills for AI Leaders
    Feb 4 2026

    In this episode of Data Analytics Chat, we welcome Elena Alikhachkina, a four-time Chief AI and Data Officer with Fortune 500 companies, and a board advisor. Elena shares her journey in data analytics and AI spanning over 25 years, covering key transitions in her career and the importance of blending business acumen with technical expertise.

    The discussion focuses on the critical shift from data projects to data products, highlighting the need for product skills in the age of AI. Elena emphasises the importance of understanding the business, building customer-centric solutions, and investing in both technical and soft skills for AI leaders. Her insights provide a roadmap for anyone looking to excel in data and AI roles in today's dynamic business environment.

    00:00 Introduction to the Factory Process and Data Science Challenges
    01:00 Welcome to Data Analytics Chat with Elena Alikhachkina
    01:33 Ena's Career Journey and Insights
    04:14 The Importance of Understanding Business Processes
    09:17 Shifting from Data Projects to Data Products
    11:08 The Need for a Product Mindset in AI
    15:06 Challenges in Adopting a Product Mindset
    16:39 Encouraging Proactivity and Collaboration
    18:08 The Role of Education in Driving Change
    22:34 The Need for Reeducation in Technology and Data
    22:50 Embedding Data and AI in Business Curriculum
    23:14 The Changing Role of Data in Leadership
    24:01 The Importance of Soft Skills in Tech
    25:31 Trust in Data and Technology
    26:30 Essential Skills for the Future
    28:20 The Shift to Product-Centric Roles
    29:50 Bridging the Gap Between Business and Tech
    30:16 Investing in Personal Development
    31:19 Understanding the Customer's Needs
    34:00 The Value of Product Thinking in AI
    35:47 Career Growth Through Business Understanding
    41:03 Final Thoughts and Call to Action

    Thank you for listening!

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    42 mins
  • The Future of Data Scientists and Data Engineers: How Data Teams Must Change
    Jan 29 2026

    In this episode of Data Analytics Chat, we’re joined by Phoenix Pei, SVP, Analytics Manager at Truist, to explore how the roles of Data Scientists and Data Engineers are changing in the age of AI and automation.

    Phoenix explains why trust, leadership alignment, and business understanding are becoming more critical than technical skills alone, and how generative AI is reshaping how data teams work. We discuss which skills will matter most in the future, why so many data initiatives struggle to deliver impact, and how organisations should rethink team structure and collaboration to stay relevant.

    A practical conversation for leaders and practitioners who want to build data teams that actually deliver value in an AI-driven world.


    00:00 Introduction to Scaling Analytics and AI
    00:50 The Role of Leadership in Data Science
    01:24 Exploring the Future of Data Roles
    01:46 Guest Introduction: Phoenix Pei
    02:18 Phoenix's Career Journey and Insights
    09:34 The Evolution of Data Roles with AI
    11:08 The Importance of Business Understanding in Data Science
    24:54 Challenges in Data Science Implementation
    25:07 Leadership Alignment and Data-Driven Decisions
    33:53 Preparing Data Teams for the Future
    37:17 Conclusion and Final Thoughts

    Thank you for listening!

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    38 mins
  • How To Make Successful Decisions In AI
    Jan 21 2026

    In this episode of Data Analytics Chat, Ben speaks with Durai Rajamanickam, a senior AI leader, about what it really takes to turn AI ambition into something organisations can trust and scale.

    They discuss why many AI initiatives fail long before the technology becomes the issue, the risks of hype-driven decision-making, and the importance of clear goals, strong business ownership, and measurable outcomes.

    The conversation explores the tension between speed and governance, when to build vs buy, and why trust and governance are not obstacles to progress, but foundations for sustainable AI adoption.

    This is a practical, experience-led discussion for leaders who want to build AI capabilities that last.



    00:00 Introduction: The AI Hype and Strategy Revisions
    01:09 Guest Introduction: Meet Durai Rajamanickam
    02:09 AI Initiatives: Technical Capabilities and Investments
    03:46 Build vs Buy: Evaluating AI Tools
    05:36 Common AI Missteps: Hype and Misdiagnosis
    07:41 Successful AI Implementation: Business and Technical Alignment
    09:11 Governance and Trust: The Key to Sustainable AI
    09:47 Real-World Examples: When AI Falls Short
    12:22 Balancing Speed and Governance in AI
    15:22 Decision-Making in AI: Trust and Autonomy
    21:03 Final Thoughts: Advice for AI Leadership
    23:04 Conclusion: Wrapping Up the Discussion

    Thank you for listening!

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    24 mins
  • What It Really Takes to Adopt Generative AI at Scale
    Jan 14 2026

    Most organisations are experimenting with generative AI. Very few are turning it into a real business impact.

    In this episode of Data Analytics Chat, we speak with Nayan Paul, Managing Director and Chief Architect for Generative AI at Accenture, about what it really takes to move from pilots to production.

    They explore why GenAI adoption is fundamentally a leadership and operating-model challenge, not just a technology challenge, covering business ownership, data readiness, governance, and the balance between speed and responsibility.

    This is a practical, honest conversation for leaders who want GenAI to become a real capability inside their organisation, not just another experiment.


    00:00 Introduction to Generative AI Challenges
    01:08 Guest Introduction: Nayan Paul from Accenture
    01:46 Nayan Paul's Role and Responsibilities
    05:08 Early Experiments and Lessons Learned
    07:02 From Experimentation to Value Creation
    10:14 Business Adoption and Technology Enablement
    16:15 Framework for Successful AI Implementation
    29:24 Balancing Speed with Responsibility
    34:09 Advice for Moving from Curiosity to Impact
    38:43 Conclusion and Final Thoughts

    Thank you for listening!

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    39 mins
  • Why Most Organisations Aren’t Ready for AI, Even If They Think They Are
    Jan 7 2026

    In this episode of Data Analytics Chat, we welcome Sujit Narapareddy, Head of Data and Analytics at AWS Sales. Sujit shares his insights on AI transformation in large enterprises, likening it to the shift from paper maps to GPS.

    We discuss the critical role of human judgment in the age of AI, how organisations can effectively integrate AI into their workflows, and the importance of building a strong data foundation. Sujit shares his personal journey from a technical role to a leadership position, highlighting the importance of business intuition and continuous learning.

    The conversation covers how AI will change organisations by embedding insights into workflows and reducing the friction between knowing and acting.

    00:00 Introduction to AI Transformation
    01:42 Guest Introduction: Sujit Narapareddy
    02:08 Exploring AI's Impact on Organisations
    02:32 Sujit's Career Journey and Leadership Insights
    09:21 The Role of AI in Enhancing Human Roles
    16:17 Challenges and Strategies for AI Integration
    28:28 Preparing for the Future of AI
    30:02 Conclusion and Final Thoughts

    Thank you for listening!

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    31 mins
  •  The Reality of AI Today
    Dec 17 2025

    In this episode of Data Analytics Chat, we welcome Carlos Pineda, the Head of Data Analytics and Insight at Diageo North America. Carlos shares his extensive experience in data analytics across Latin America, Asia-Pacific, Eastern Europe, and North America.

    They discuss the growing role of AI in both personal and corporate life, the importance of a strong data foundation, and the critical need to understand business processes and foster strong relationships. Carlos emphasises the importance of targeted AI use cases, end-to-end transformation, and continuous delivery in AI implementation.

    The conversation explores effective leadership strategies, experimentation, and the value of consistent stakeholder engagement to successfully integrate AI into business operations. Key topics include data readiness, the role of generative AI, and the overall impact of AI-driven business transformations.

    00:00 Introduction to AI in Daily Life
    01:15 Welcome to Data Analytics Chat
    01:53 Meet Carlos Pineda
    02:51 Career Decisions and Growth
    05:30 Leadership Challenges and Lessons
    08:02 The Reality of AI in Business
    09:58 The Importance of Business Acumen
    13:13 Challenges in AI Implementation
    30:38 The Cost and Value of AI
    33:39 Final Thoughts and Farewell

    Thank you for listening!

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    34 mins
  • Why Hiring And Retaining Top AI Talent Has Become Harder Than Ever
    Dec 12 2025

    In this episode of Data Analytics Chat, we welcome Misha Trubskyy, head of Claims Data Science at Mercury Insurance. Misha shares his journey from academia to corporate life, highlighting his transition from econometrics to leading data science initiatives in insurance. He discusses the significance of continuous learning, the challenges of implementing AI and data, and the importance of hiring and retaining top talent. Misha also delves into his leadership principles, the value of technical proficiency, and the importance of empathy in managing teams. Key issues such as the evolving hiring landscape, market conditions, and strategies for organisational growth are explored in-depth.

    00:00 Introduction and Personal Philosophy
    00:14 The Importance of Continuous Learning
    00:44 Challenges in the AI and Data Science Field
    01:20 Guest Introduction: Misha Ky
    02:24 Misha's Career Journey
    03:43 Current Excitements in AI and Data Science
    06:09 Navigating Human Elements in Claims
    07:37 Leadership Challenges and Lessons
    11:28 The Value of Individuality in Leadership
    19:31 Advice for Aspiring Data Leaders
    29:52 Hiring Challenges in AI and Data Science
    37:02 Finding the Right People for the Job
    37:23 The Importance of Critical Thinking
    37:41 Authenticity in Interviews
    38:26 The Role of Technology in Interviews
    38:51 Evaluating Candidates Beyond Technical Skills
    41:36 The Misconception About Technical Skills
    42:25 Personality and Attitude in Hiring
    44:21 Challenges in the Job Market
    48:55 Investing in Junior Staff
    01:04:33 Retention Strategies for Top Performers
    01:10:03 Future of the Hiring Landscape
    01:13:42 Conclusion and Final Thoughts

    Thank you for listening!

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    1 hr and 11 mins
  • Why Data Governance & Data Quality Are Important
    Dec 4 2025

    In this episode of Data Analytics Chat, we welcome Carol Kim, Executive Director at IBM, who shares her intriguing journey from a finance background to leading technology, data, and AI at IBM's Global Real Estate organisation.

    Carol discusses her career transformation, the importance of curiosity and authentic leadership, and the role of storytelling in decision-making. The episode also examines the significance of data governance and quality for data-driven decision-making, and how to build effective data governance frameworks. Carol further discusses adapting to different cultures, continuous reinvention, and the hidden costs of poor data quality.


    00:00 Introduction: The Power of Willingness to Learn
    01:12 Welcome to Data Analytics Chat
    02:01 Carol Kim's Career Journey
    02:57 The Role of Data in Real Estate
    03:38 Adapting to Different Cultures
    07:54 The Importance of Storytelling in Data
    09:59 Challenges in Leadership and Career Transitions
    15:13 The Significance of Data Governance and Quality
    24:06 Conclusion and Final Thoughts

    Thank you for listening!

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    24 mins