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As recently discussed on the Sidecar Sync podcast, with AI continuing to reshape industries and redefine what's possible, the concept of scaling laws has become increasingly important. The idea is quite simple: as the size of AI models and the amount of data they are trained on grows, these models become noticeably better across a range of tasks. Pretty basic, but the implications are wide-ranging, and grasping these can help associations stay ahead of the curve and leverage AI's potential to better serve their members.

 

Understanding Scaling Laws in AI

To appreciate the significance of scaling laws, it's important to understand how they differ from traditional software improvements. In the past, when we improved computer hardware or threw more resources at a program like Microsoft Word, we might see improvements in speed or efficiency, but the fundamental capabilities of the software remained the same. It was still Word, doing what Word does, only faster.

AI, however, is distinct. As we scale up AI models, we're not just seeing improvements in speed or efficiency. We're seeing the emergence of entirely new capabilities, often in unpredictable ways. It's like if Word suddenly gained the ability to write novels or compose music simply because we gave it more processing power.

This is the essence of scaling laws in AI: more data and more computing power don't just make AI faster or more efficient; they make AI more capable in ways we often can't predict.

 

The Race for Bigger AI

The discovery of these scaling laws has kicked off a race among big tech companies. They're all vying to build bigger and more powerful AI systems, each hoping to unlock the next breakthrough capability. It's a high-stakes game, with potentially world-changing implications.

Recent research suggests that this approach of scaling up AI models could continue to yield improvements until at least 2030. This means we're likely to see a continued push towards larger and more powerful AI systems in the coming years.

So, why does this matter for associations? As these AI systems grow more powerful and capable, they're likely to impact every industry and sector, including the world of associations. The tools and technologies that emerge from this AI arms race could revolutionize how associations operate, engage with members, and fulfill their missions.

 

Challenges on the Horizon

The path of bigger-is-better in AI development is not without its challenges. In the push towards larger and more powerful AI systems, some significant obstacles have emerged:

  1. Power Supply: The energy requirements for these massive AI systems are staggering. For perspective, a recent 100 billion AI supercomputer developed by Microsoft and OpenAI could require up to 5 gigawatts of power. That's roughly equivalent to the average power consumption of New York City. As AI models continue to grow, their energy needs will become an increasingly pressing concern, both in terms of cost and environmental impact.
  2. Chip Manufacturing: AI requires specialized chips, and the production of these chips is becoming a major bottleneck. Building a new chip factory can cost over $10 billion and take years to complete. This creates a significant barrier to the rapid scaling of AI systems and could potentially slow the pace of AI advancement.
  3. Data Scarcity: As counterintuitive as it might seem, we might actually be running out of data to train these massive AI models. Some estimates suggest we could exhaust the supply of suitable public text data in about five years. This poses a significant challenge for the continued scaling of AI systems.
  4. Legal and Ethical Concerns: The use of books, articles, and websites to train AI is raising complex copyright issues. These legal challenges could affect the availability of high-quality training data and potentially slow the development of AI systems.

 

Potential Solutions and Future Outlook

Despite these challenges, researchers and companies in the AI field are not standing still. They're actively working on solutions to address these obstacles:

  1. Distributed Computing: To address the power problem, researchers are exploring ways to spread AI training across multiple locations. This could help manage the enormous energy requirements of large AI systems.
  2. Alternative Data Sources: To combat data scarcity, researchers are looking at using more diverse types of data, including images, audio, and video. This could expand the pool of available training data and potentially lead to more versatile AI systems.
  3. AI-Generated Training Data: In an interesting twist, some researchers are experimenting with having AIs create training data for other AIs. This could potentially address the data scarcity issue, although it also raises new questions about the quality and diversity of such data.
  4. Algorithmic Improvements: While much of the focus has been on scaling up existing models, there's also ongoing work to improve the fundamental algorithms underlying AI systems. These improvements could potentially lead to more efficient AI models that can do more with less data and computing power.

 

Preparing for an AI-Powered Future

Given these potential impacts, how can association professionals prepare for a future shaped by increasingly powerful AI? Here are some key steps to consider:

  1. Stay Informed: Keep up with AI advancements and their potential applications in association management. This doesn't mean you need to become an AI expert, but having a basic understanding of key concepts and trends can help you make informed decisions about AI adoption.
  2. Start Small: Begin with small, low-risk experiments to learn how AI can benefit your organization. This could be as simple as using AI-powered tools for data analysis or content creation.
  3. Foster a Culture of Innovation: Encourage a mindset within your association that's open to experimentation and willing to embrace new technologies. This can help your organization stay agile and adaptive in the face of rapid technological change.
  4. Develop an AI Strategy: Think strategically about how more powerful AI could solve complex problems in your association. What are your pain points? How could AI potentially address them?
  5. Prioritize Ethics: As AI becomes more powerful and influential, it's crucial to consider the ethical implications of its use. Develop guidelines for responsible AI use within your association, considering issues like data privacy, transparency, and fairness.
  6. Invest in Data Infrastructure: Many of the most powerful AI applications rely on high-quality data. Invest in robust data collection and management practices to ensure you're well-positioned to leverage AI technologies as they evolve.
  7. Upskill Your Team: While AI will automate many tasks, it will also create new roles and require new skills. Invest in training and development to ensure your team is prepared for an AI-powered future.

Conclusion

The concept of scaling laws in AI is driving rapid and sometimes unpredictable advancements in artificial intelligence capabilities. While the challenges are significant, the potential benefits for associations are enormous.By understanding these concepts and preparing for a future with more powerful AI, association professionals can position their organizations to thrive in an increasingly AI-driven world.

The AI revolution is scaling up fast, and its impacts will be far-reaching. The associations that embrace these changes and leverage them effectively will be best positioned to serve their members, advance their missions, and make a lasting impact in their industries.

Learn more about empowering yourself and your team with Sidecar’s AI Learning Hub, built for educating association and nonprofit professionals on how AI can be used effectively in your organization.

Post by Emilia DiFabrizio
August 29, 2024