Saltar al contenido principal

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 in 2025: Will the Rocket Continue Climbing or Will the Bubble Burst?

November 2024
Compartir

Summary

The future of artificial intelligence (AI) is a hot topic in technology and business circles, with predictions ranging from continued exponential growth to a potential decline by 2025. AI's expansion is notable, impacting various sectors, including data teams, but it also comes with significant hurdles. The conversation focuses on AI's limitations, the transition of AI systems, the role of scaling, and AI's future potential. Experts like Arvind Narayanan stress the need to understand AI's present status and its boundaries, particularly in predictive AI. Linqiao discusses the move towards easily accessible AI technologies and the rise of specialized, compact AI models. Terry Sejnowski indicates the potential of neuromorphic engineering, likening AI's progress to historical technological developments like the airplane. The talk also examines AI's societal effect, emphasizing that AI should enhance, not undermine, societal values.

Key Takeaways:

  • The future of AI is unpredictable, with potential scenarios of continued expansion or a decline by 2025.
  • Present AI systems come with significant boundaries, especially in predictive AI contrasted with generative AI.
  • Scaling AI models has its boundaries, with a shift towards compact, specialized models.
  • Neuromorphic engineering could be a game-changing technology in the development of AI.
  • Ensuring AI benefits society calls for a focus on regulatory structures and ethical considerations.

Deep Dives

Present State of AI

AI today is an assortment of technologies grouped under a common term, involving both generative and predictive AI. Arvind Narayanan points out that while generative AI is advancing rapidly, predictive AI ...
Leer Mas

, often simply statistical models, remains largely unchanged. Predictive AI is involved in important areas like employment and criminal justice but is less revolutionary than often portrayed. The differentiation between these types of AI is essential to comprehend AI's actual impact.

Hurdles in Scaling AI

The idea of scaling AI models by increasing data and parameters is disputed. As Arvind Narayanan argues, scaling comes with two primary hurdles: the availability of quality data and the economic viability of larger models. Companies are exhausting internet text data, resorting to videos and synthetic data, which have limitations. Furthermore, the cost of scaling models may not meet business needs, as compact, specific models often suffice for practical implementations.

The Transition Towards AI Systems

The shift from standalone AI models to complex AI systems marks an important transition in the field. As pointed out by experts, AI systems now incorporate traditional software engineering and are designed for tasks. This transition is driven by the limitations of scaling and the need for more reliable AI applications. The future of AI lies in these integrated systems, which combine multiple models and traditional computing to effectively tackle specific challenges.

AI's Societal Effect and Ethical Considerations

As AI's presence increases in society, its ethical implications and potential for societal disruption become more prominent. Terry Sejnowski emphasizes the need for regulatory structures and the unintended outcomes of technological developments. Ensuring that AI aids rather than undermines societal values requires strong governance and an active role for AI developers in shaping regulatory policies. Open-source initiatives and transparent development processes are essential for democratizing AI access and promoting innovation.


Relacionado

webinar

Charting the Path: What the Future Holds for Generative AI

Explore how generative AI tools & technologies will evolve in the months and years to come and navigate through emerging trends, potential breakthrough applications, and the strategic implications for business.

webinar

Generative AI: Trends, Impact, and Practical Applications for 2024

Deep dive into significant trends and developments within Generative AI as we near the middle of 2024.

webinar

The High Cost of AI Hype

With new breathtaking capabilities from generative AI released every several months—and AI hype escalating at an even higher rate—it’s high time we differentiate most of today’s practical ML projects from those research advances.

webinar

The Payoff: Turning 2024 Data & AI Investments ROI Positive in 2025

Three industry experts discuss strategies to turn GenAI investments into positive ROI in 2025, how to align GenAI projects with business goals, optimize AI-driven workflows, and measure their success.

webinar

Data Science and Business Intelligence in 2025: How will AI Transform the Data Team?

Three guests explore the impact of LLMs and GenAI on analytics and data functions in 2025, how they will lower the barrier to entry for working with data, the skills data teams need to develop, and a lot more.

webinar

Demystifying AI: Unpacking the Generative AI Landscape

Join experts from leading venture capital firms to discover the latest business and data science use cases of generative AI.

Join 5000+ companies and 80% of the Fortune 1000 who use DataCamp to upskill their teams.

Request DemoTry DataCamp for Business

Loved by thousands of companies

Google logo
Ebay logo
PayPal logo
Uber logo
T-Mobile logo