39 Min.

Everything You Need to Know About AI in the World of Business Curious & Cuirky

    • So geht’s

*How AI Can Help B2B Marketers Differentiate Their Products - when it comes to AI for B2B marketers, most of the conversation is about content creation and customer service applications. However, the biggest impact for strategic marketers could come from using AI for creating needs-based, customer-centric offers and value propositions that are truly unique in the marketplace.

*How AI Can Help Create Extraordinary Innovation Centers (Part 1): Moonshot Factory. Research Lab. Skunk Works. Center for the Future. Think Tank. Corporate Innovation Centers have many names… but whatever you call them, they all now have the opportunity to make increasingly important contributions to the productivity, profitability, and growth of their parent organization by leveraging recent advances in generative AI. With the publication this week of Bryan Mattimore’s new book, Islands of Invention, How to Create Extraordinary Innovation Centers, we’ll explore how AI can become a critical “partnering tool” in helping these unique institutions make even more valuable contributions to the success of their organization…now and in the future!

*Benefits of AI in Change Management - how AI can contribute to improved decision-making in Change Management

*Generative AI models offer substantial benefits in factory equipment predictive maintenance. Generative Adversarial Networks (GANs) or Variational Autoencoders (VAEs), can be used to augment limited datasets by creating “synthetic” samples that follow the same underlying patterns as the original data. This is particularly valuable in applications where obtaining large datasets can be challenging. For predictive maintenance, synthetic sensor data can be generated to simulate various equipment conditions and failure scenarios, enabling rigorous testing of algorithms and models. Also, Gen AI models can prove beneficial in addressing imbalanced data issues, especially when rare failures or anomalies are present. By synthesizing instances of such scenarios, generative AI mitigates bias in predictive models and enhances their overall performance.

*AI Powered Mentoring Tools
How can the use of AI tools aid us in the development and execution of mentoring programs and what are the current limitations? Can we receive more value from using these tools or is it just different?

*How AI Can Help B2B Marketers Differentiate Their Products - when it comes to AI for B2B marketers, most of the conversation is about content creation and customer service applications. However, the biggest impact for strategic marketers could come from using AI for creating needs-based, customer-centric offers and value propositions that are truly unique in the marketplace.

*How AI Can Help Create Extraordinary Innovation Centers (Part 1): Moonshot Factory. Research Lab. Skunk Works. Center for the Future. Think Tank. Corporate Innovation Centers have many names… but whatever you call them, they all now have the opportunity to make increasingly important contributions to the productivity, profitability, and growth of their parent organization by leveraging recent advances in generative AI. With the publication this week of Bryan Mattimore’s new book, Islands of Invention, How to Create Extraordinary Innovation Centers, we’ll explore how AI can become a critical “partnering tool” in helping these unique institutions make even more valuable contributions to the success of their organization…now and in the future!

*Benefits of AI in Change Management - how AI can contribute to improved decision-making in Change Management

*Generative AI models offer substantial benefits in factory equipment predictive maintenance. Generative Adversarial Networks (GANs) or Variational Autoencoders (VAEs), can be used to augment limited datasets by creating “synthetic” samples that follow the same underlying patterns as the original data. This is particularly valuable in applications where obtaining large datasets can be challenging. For predictive maintenance, synthetic sensor data can be generated to simulate various equipment conditions and failure scenarios, enabling rigorous testing of algorithms and models. Also, Gen AI models can prove beneficial in addressing imbalanced data issues, especially when rare failures or anomalies are present. By synthesizing instances of such scenarios, generative AI mitigates bias in predictive models and enhances their overall performance.

*AI Powered Mentoring Tools
How can the use of AI tools aid us in the development and execution of mentoring programs and what are the current limitations? Can we receive more value from using these tools or is it just different?

39 Min.