Saltar al contenido principal

Complete los detalles para desbloquear el seminario web

Al continuar, acepta nuestros Términos de uso, nuestra Política de privacidad y que sus datos se almacenan en los EE. UU.

Altavoces

Más información

¿Entrenar a 2 o más personas?

Obtenga acceso de su equipo a la biblioteca completa de DataCamp, con informes centralizados, tareas, proyectos y más
Pruebe DataCamp Para EmpresasPara obtener una solución a medida, reserve una demostración.

Artificial Intelligence for Business Leaders

November 2021
Compartir

Dr. Hugo Bowne-Anderson, data scientist, educator, and host of the podcast DataFramed, tells you everything you have always wanted to know about artificial intelligence and data science but were too afraid to ask. You'll get an understanding of the basic concepts in AI and how they can impact your business, from automating time-consuming and labor-intensive processes to helping you make more data-driven decisions. This webinar is aimed at all executives and managers who need to be more data-driven, from CEOs who need to ask questions around machine learning initiatives (such as customer churn and content discoverability) to CMOs who need to understand dashboards, metrics, statistics and online experiments to make informed marketing decisions and Chief People Officers who need to understand the impact of analytics and machine learning on employee hiring and retention. Hugo draws on current state-of-the-art work by McKinsey & Company, Andrew Ng (Founder and CEO of Landing AI, deeplearning.ai), Monica Rogati (Independent AI Advisor, formerly LinkedIn), and DataCamp to spell out first steps of what executives and managers need to know about the following aspects of AI to allow their organizations to be part of the AI revolution: data team structure, data collection and storage, dashboards, segmentation, online experiments, machine learning, and deep learning.

You can find the slides here.

Summary

Artificial Intelligence (AI) is quickly reshaping diverse sectors, offering business leaders essential insights into its implications. AI primarily involves developing systems capable of intelligent decision-making, often utilizing machine learning and deep learning algorithms. The current AI transformation is fueled by three significant advancements: development of algorithms, exponential growth in computing power, and the vast availability of data. AI's impact is felt across multiple industries, including healthcare, finance, and agriculture, presenting both opportunities and challenges. Ethical considerations are vital to ensure AI systems do not reinforce biases or cause unintended harm. For organizations aiming to incorporate AI, it's essential to establish strong data foundations, executive support, and a culture of analytics. Understanding the data science hierarchy of needs can guide organizations in successfully implementing AI strategies.

Key Takeaways:

  • AI involves systems capable of making intelligent decisions, often using machine learning.
  • The AI transformation is propelled by advancements in algorithms, computing power, and data availability.
  • AI is reshaping industries like healthcare, finance, and agriculture.
  • Ethical considerations are vital to prevent AI biases and negative impacts.
  • Successful AI integration requires strong data foundations and organizational support.

Deep Dives

Understanding AI and Its Components

AI's core capability is its ability to replicate human-like decision-making through systems and algorithms. A significant point made by Hugo Bowne-Anderson ...
Leer Mas

is that AI generally refers to systems capable of intelligent decisions, often leveraging machine learning. He emphasizes the importance of distinguishing between artificial general intelligence (AGI) and narrow AI, which is more common today and excels at specific tasks like image classification and natural language processing. Hugo warns against anthropomorphizing AI as capable of consciousness, which could lead to misconceptions about its capabilities. He uses Google Translate as an example of narrow AI, demonstrating AI's practical application in everyday technology.

AI Transformation: Why Now?

The AI transformation is a combination of algorithmic advancements, increased computing power, and the explosion of data availability. These components have collectively facilitated the rise of AI capabilities. As Hugo outlines, the exponential growth in computing, driven by Moore's Law, and the vast amounts of data generated daily have set the stage for these technologies to thrive. McKinsey & Company's Executive's Guide to AI highlights these factors, noting the role of historical algorithmic development and the significant data production since the advent of the World Wide Web. This technological maturity makes AI integration not only possible but essential for modern businesses.

AI's Impact Across Industries

AI's transformative potential is witnessed across diverse sectors such as healthcare, finance, and agriculture. In healthcare, AI aids in disease diagnosis and patient management, while in finance, it assists in stock market predictions and risk assessment. In agriculture, AI optimizes crop yields through advanced data analysis, as exemplified by the use of drone footage. Hugo highlights the shift in financial sectors where technologists and data scientists are becoming more integral than traditional traders. This sectoral transformation emphasizes the need for ethical practices in AI deployment, as improper implementation can lead to biased outcomes, as seen in cases like biased recruiting tools and parole prediction models.

Organizational AI Transformation

Successful AI transformation within organizations requires a strategic approach involving several key components. Executive support is essential for aligning AI initiatives with business goals. Hugo emphasizes the importance of building strong data foundations, which include data collection, storage, and access. Establishing a data-driven culture and distributing analytical skills across the organization are also critical. McKinsey's perspective emphasizes demonstrating AI's impact early to garner support and drive adoption. Hugo shares insights from Andrew Ng's AI Transformation Playbook, highlighting the need for broad AI training among business leaders to encourage understanding and effective implementation.


Relacionado

The Definitive Guide to Machine Learning for Business Leaders

Craft a 21st-century data strategy to optimize business outcomes.

infographic

Data Literacy for Responsible AI

Learn how data literacy fuels responsible AI

white paper

Data Literacy for Responsible AI

Learn how data literacy is the currency that powers responsible use of AI

webinar

How AI Can Improve Your Data Strategy

Find out how AI, ML, and data science can inform your data strategy.

webinar

Going Beyond FAQ Assistants

Drive strategic business value with AI assistants.

webinar

What Managers Need To Know About Machine Learning

Get real-world examples of how machine learning applies to business problems.

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.