Fortune | FORTUNE 2024年10月18日
The next wave of AI won’t be driven by LLMs. Here’s what investors should focus on instead
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文章探讨了LLM的现状与问题,如投资过热、存在缺陷、资源需求大等,同时指出AI并非停滞,如神经符号AI等领域具有发展前景,还提到AI面临的伦理挑战及未来发展方向。

🧐LLM虽具革命性但存在显著缺陷,如仅是模式识别引擎,不真正理解所产生的文本,易产生错误信息,且缺乏真正的推理能力。

💻运行LLM的资源需求巨大,训练需大量数据和计算能力,单纯扩大模型或增加数据不能解决根本问题,该技术已接近发展瓶颈。

🌟AI发展的有前景领域包括神经符号AI,其结合神经网络与符号AI的优势,能真正理解和推理复杂问题,推动AI进入真正解决问题的领域。

🚀未来AI创新可能聚焦于使模型更小巧、高效且可扩展,降低成本并易于部署,而非一味增大模型,以解锁更广泛的应用和行业。

🤔AI面临伦理挑战,如偏差、错误信息和潜在滥用等,在未来研究中这些问题正被积极解决,以确保其符合人类价值观并产生准确公平结果。

Yet, despite these warnings, venture capitalists (VCs) have been pouring billions into LLM startups like lemmings heading off a cliff. The allure of LLMs, driven by the fear of missing out on the next AI gold rush, has led to a frenzy of investment. VCs are chasing the hype without fully appreciating the fact that LLMs may have already peaked. And like lemmings, most of these investors will soon find themselves tumbling off the edge, losing their me-too investments as the technology hits its natural limits.LLMs, while revolutionary, are flawed in significant ways. They’re essentially pattern-recognition engines, capable of predicting what text should come next based on massive amounts of training data. But they don’t actually understand the text they produce. This leads to well-documented issues like hallucination—where LLMs confidently generate information that’s completely false. They may excel at mimicking human conversation but lack true reasoning skills. For all the excitement about their potential, LLMs can’t think critically or solve complex problems the way a human can.Moreover, the resource requirements to run these models are astronomical. Training LLMs requires enormous amounts of data and computational power, making them inefficient and costly to scale. Simply making these models larger or training them on more data isn’t going to solve the underlying problems. As Apple’s paper and others suggest, the current approach to LLMs has significant limitations that cannot be overcome by brute force.This is why AI experts like Gary Marcus have been calling LLMs “brilliantly stupid.” They can generate impressive outputs but are fundamentally incapable of the kind of understanding and reasoning that would make them truly intelligent. The diminishing returns we’re seeing from each new iteration of LLMs are making it clear that we’re nearing the top of the S-curve for this particular technology.But this doesn’t mean AI is dead—not even close. The fact that LLMs are hitting their limits is just a natural part of how exponential technologies evolve. Every major technological breakthrough follows a predictable pattern, often called the S-curve of innovation. At first, progress is slow and filled with false starts and failures. Then comes a period of rapid acceleration, where breakthroughs happen quickly and the technology begins to change industries. But eventually, every technology reaches a plateau as it hits its natural limits.We’ve seen this pattern play out with countless technologies before. Take the internet, for example. In the early days, skeptics dismissed it as a tool for academics and hobbyists. Growth was slow, and adoption was limited. But then came a rapid acceleration, driven by improvements in infrastructure and user-friendly interfaces, and the internet exploded into the global force it is today. The same happened with smartphones. Early versions were clunky and unimpressive, and many doubted their long-term potential. But with the introduction of the iPhone, the smartphone revolution took off, transforming nearly every aspect of modern life.One of the most promising areas of AI development is neurosymbolic AI. This hybrid approach combines the pattern recognition capabilities of neural networks with the logical reasoning of symbolic AI. Unlike LLMs, which generate text based on statistical probabilities, neurosymbolic AI systems are designed to truly understand and reason through complex problems. This could enable AI to move beyond merely mimicking human language and into the realm of true problem-solving and critical thinking.Another key area of research is focused on making AI models smaller, more efficient, and more scalable. LLMs are incredibly resource-intensive, but the future of AI may lie in building models that are more powerful while being less costly and easier to deploy. Rather than making models bigger, the next wave of AI innovation may focus on making them smarter and more efficient, unlocking a broader range of applications and industries.Context-aware AI is also a major focus. Today’s LLMs often lose track of the context in conversations, leading to contradictions or nonsensical responses. Future models could maintain context more effectively, allowing for deeper, more meaningful interactions.The ethical challenges that have plagued LLMs—such as bias, misinformation, and their potential for misuse—are also being tackled head-on in the next wave of AI research. The future of AI will depend on how well we can align these systems with human values and ensure they produce accurate, fair, and unbiased results. Solving these issues will be critical for the widespread adoption of AI in high-stakes industries like healthcare, law, and education.Every great technological leap is preceded by a period of frustration and false starts, but when it hits an inflection point, it leads to breakthroughs that change everything. That’s where we’re headed with AI. When the next S-curve hits, it will make today’s technology look primitive by comparison. The lemmings may have run off a cliff with their investments, but for those paying attention, the real AI revolution is just beginning.More must-read commentary published by Fortune:The opinions expressed in Fortune.com commentary pieces are solely the views of their authors and do not necessarily reflect the opinions and beliefs of Fortune.

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