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By Frank.Buckler
The podcast currently has 25 episodes available.
In chapters 5 and 6 of Think Causal, Not Casual, Frank Buckler writes about how to implement causal AI in your organization. This conversation reviews the key information from those chapters.
This discussion summarizes Chapter 3 of "Think Causal, Not Casual" and teaches you how to use Causal AI in marketing.
This insightful discussion is a review of chapter 1 and 2 of the book "Think Causal, Not Casual".
Chapter 6 explores why Causal AI is essential for modern marketing, showcasing how it surpasses traditional AI by addressing key issues like model drift and bias. The final chapter provides a clear roadmap for implementing Causal AI. It’s a compelling listen for anyone looking to enhance their AI approach and maintain a strong influence in data-driven decision-making.
Chapter 5 tackles the challenge of getting your organization to embrace new solutions. It highlights key strategies for creating the right conditions, identifying influencers, and convincing others. Through real-world examples, it shows how to overcome barriers to adoption, emphasizing the importance of humility and respect. Essential listening for anyone looking to implement innovative ideas like Causal AI in their company.
Unlock the potential of Causal AI in marketing as we dive into its role in optimizing media plans, improving customer experiences, and driving product innovation. Tune in to learn how Causal AI can elevate your marketing strategy.
Cheers, Frank
I'm reading chapter 3 of my book "Think Causal, Not Casual" called "The Need".
The chapter discusses the application of modern "Causal AI" in identifying the effectiveness of marketing strategies. Using techniques like Automated Relevance Detection (ARD) and Double Machine Learning (DML), the analysis uncovered unexpected non-linear relationships, such as the inverted U-function, demonstrating the complexity and hidden interactions within real-world data that Causal AI can reveal.
I read the second chapter of my book "Think Causal, Not Casual" called "THE SHIFT - Why we need a better mouse trap in Marketing Decision Making"
This chapter highlights the inadequacy of traditional statistical modeling and correlation analysis in understanding causal relationships, emphasizing the limitations of hypothesis-based approaches and linear assumptions. It advocates for the use of Causal AI, which combines artificial intelligence with domain expertise to uncover true causal factors, providing more reliable and meaningful insights for business decisions.
I'm reading chapter 1 of my book "Think Causal, Not Casual" called
"THE PARADIGM THAT HOLDS US BACK"
In 1998 I attended a McKinsey talent event where a case study misunderstanding highlighted the importance of data context, demonstrating that raw data alone is insufficient without proper interpretation. This chapter aims to address the prevalent misconception in marketing management that merely collecting vast amounts of data and relying on analysts for insights is enough, emphasizing instead the critical role of understanding the meaning behind the data for effective business decisions.
Jenni Romaniuk is Research Professor and Associate Director of the Ehrenberg-Bass Institute, at the University of South Australia and author of Building Distinctive Brand Assets and How Brands Grow Part 2 - revised. Jenni's research covers brand equity, mental availability, brand health metrics, advertising effectiveness, distinctive assets, word of mouth and the role of loyalty and growth. She is the developer of the Distinctive Asset Grid, which is used by companies around the world to assess the strength and strategic potential of their brand’s distinctive assets. She is also a pioneer in mental availability measurement and metrics.
The podcast currently has 25 episodes available.
41 Listeners