Direkt zum Inhalt

Lautsprecher

Weitere Informationen

Trainierst du 2 oder mehr?

Erhalten Sie für Ihr Team Zugriff auf die vollständige DataCamp-Bibliothek mit zentralisierten Berichten, Zuweisungen, Projekten und mehr
Testen Sie DataCamp for BusinessFür eine maßgeschneiderte Lösung buchen Sie eine Demo.

A More Human Future in the Era of AI

August 2023
Teilen

While many companies have invested in trying to harness the economic and societal potential of AI, only 13% of artificial intelligence initiatives are successful.

In this webinar, Brian shares a blueprint for a new system of leadership, designed for leaders and managers who aspire to harness artificial intelligence for the betterment of their organization and the world.

Key Takeaways:

  • Understand why the current system of leadership is struggling to harness AI
  • Learn a framework for the new system of leadership designed for the next era beyond the Industrial Revolution
  • Discover actionable steps to build a strategy for adopting this system of leadership within your organization

Buy Brian’s Book on Amazon

Read Brian’s Article on ChatGPT and AI Strategy

Summary

Artificial Intelligence (AI) provides outstanding opportunities to enhance society by offering personalized support in education, improving healthcare diagnoses, and assisting in disaster management. However, many AI initiatives do not succeed. Brian Evergreen, CEO of the Profitable Good Company, suggests a plan for businesses to utilize AI for social good. He introduces a new phase of transformation beyond digital transformation, including terms like digital reformation and autonomous transformation. He highlights the significance of vision and strategy over impulsive AI investments, proposing that transformation and reformation should not be the ultimate goals. Evergreen encourages a shift from machine learning to machine teaching to better match AI capabilities with human expertise. He points out leadership challenges in AI adoption, such as a lack of vision and overreliance on data-driven approaches, which block innovation. Addressing these issues could unleash the economic and societal potential of AI, especially in physical industries and healthcare, where autonomous transformation could bring considerable advancements.

Key Takeaways:

  • AI can significantly enhance societal sectors like education, healthcare, and disaster management.
  • Digital transformation is not the endpoint; reformation and autonomous transformation are vital for future advancements.
  • Effective AI strategies should start with a clear vision and strategy, not impulsive investments.
  • Machine teaching offers a human-focused approach to match AI capabilities with human expertise.
  • Autonomous transformation holds promise, especially in physical industries and healthcare.

Deep Dives

AI for Social Good

AI offers a tran ...
Mehr Lesen

sformative impact on society by enhancing various sectors, including education, healthcare, and disaster management. Brian Evergreen highlights the need for businesses to direct their AI strategies towards social good. In education, AI can provide personalized learning experiences, adjusting instruction to individual student needs. In healthcare, AI can improve diagnostic accuracy and patient outcomes. Moreover, in disaster management, AI can optimize resource allocation and response times. However, achieving these benefits requires a strategic approach that goes beyond mere technological adoption. Businesses must align their AI initiatives with societal goals, promoting collaborations between technology experts and social sector leaders to maximize the positive impact of AI on society.

Digital vs. Autonomous Transformation

Digital transformation, often seen as the ultimate goal, is simply the first step in the technological evolution. Brian Evergreen introduces the concept of digital reformation, which enhances efficiency without altering core processes, and autonomous transformation, which involves embedding intelligence into systems for decision-making. While digital transformation converts processes from analog to digital, autonomous transformation uses machine learning to enable systems to operate independently. This progression from digital to autonomous is vital for organizations to remain competitive. Evergreen highlights that only 13% of AI initiatives reach production due to a lack of strategic vision. By embracing autonomous transformation, businesses can unlock new capabilities and redefine industry standards, paving the way for innovative solutions.

Vision-Driven AI Strategy

A successful AI strategy begins with a clear vision and strategic alignment rather than reacting to technological trends. Brian Evergreen emphasizes the importance of defining the future an organization aims to create before implementing AI solutions. He uses the analogy of chess, where an effective strategy requires a vision for the endgame rather than merely responding to immediate moves. "What is your vision?" he asks, emphasizing the need for organizations to articulate their desired outcomes. This vision-driven approach enables businesses to prioritize initiatives that align with long-term goals, promoting innovation and sustainable growth. By focusing on future-solving instead of problem-solving, organizations can manage the complexities of AI implementation and achieve transformative results.

Machine Teaching and Human-Centric AI

Machine teaching, as opposed to traditional machine learning, prioritizes human expertise in developing AI systems. Brian Evergreen encourages a shift towards machine teaching, which starts with human knowledge and expertise to inform AI decision-making. This approach addresses the limitations of data-driven models, which often fail to capture the subtleties of human reasoning. By incorporating human insights, machine teaching creates more adaptable and capable AI systems. "Human expertise is the most valuable thing we have," Evergreen asserts, highlighting the need for AI to complement rather than replace human capabilities. This human-centric approach not only enhances the effectiveness of AI solutions but also encourages a collaborative environment where data scientists and domain experts work together to achieve shared goals.


Verwandt

webinar

Leading with AI: Leadership Insights on Driving Successful AI Transformation

C-level leaders from industry and government will explore how they're harnessing AI to propel their organizations forward.

webinar

Revolutionizing Learning: Exploring the Future of Upskilling with AI

Join us as the panel of AI and education experts discuss how to work with generative AI to upskill employees and improve corporate training programs.

webinar

Building Trust in AI: Scaling Responsible AI Within Your Organization

Explore actionable strategies for embedding responsible AI principles across your organization's AI initiatives.

webinar

Making Decisions with Data & AI

In this webinar, Dhiraj shares his advice both from building a multi-billion dollar data-driven company and from helping other companies tackle their data problems.

webinar

Getting ROI from AI

In this webinar, Cal shares lessons learned from real-world examples about how to safely implement AI in your organization.

webinar

The State of Data & AI Literacy in 2024

Join this webinar to learn how and which data & AI skills are becoming increasingly pervasive in organizations across industries, how leaders are adapting their teams and workforce to the era of data & AI literacy and more.

Hands-on learning experience

Companies using DataCamp achieve course completion rates 6X higher than traditional online course providers

Learn More

Upskill your teams in data science and analytics

Learn More

Join 5,000+ companies and 80% of the Fortune 1000 who use DataCamp to upskill their teams.

Don’t just take our word for it.