AI pre-training era ends as new intelligence models emerge
OpenAI co-founder Ilya Sutskever recently stated that the era of artificial intelligence pre-training is nearing its conclusion, signaling a shift towards new methods of scaling machine intelligence.
During a lecture at the Neural Information Processing Systems (NeurIPS) 2024 conference in Vancouver, Sutskever emphasized the need for innovative approaches to overcome the limitations of current AI models.
He noted that advancements in computing power through improved hardware, software, and machine-learning algorithms are outpacing the available data for training AI models.
Sutskever compared data to fossil fuels, suggesting that its availability is finite.
"Data is not growing because we have but one internet," he explained.
"You could even say that data is the fossil fuel of AI. It was created somehow, and now we use it, and we've achieved peak data, and there will be no more — we have to deal with the data that we have."
Looking ahead, Sutskever predicted that developments in agentic AI, synthetic data, and inference time computing will pave the way for the emergence of AI superintelligence.
Agentic AI represents a significant advancement over current chatbot models by enabling machines to make decisions independently of human input.
This evolution has gained traction in the cryptocurrency sector, particularly with the rise of AI memecoins and large-language models (LLMs) such as Truth Terminal.
Truth Terminal gained popularity by promoting a memecoin called Goatseus Maximus (GOAT), which reached a market capitalization of $1 billion, drawing interest from retail investors and venture capitalists.
Additionally, Google's DeepMind has introduced Gemini 2.0, an AI model designed to support AI agents capable of performing complex tasks like coordinating between websites and logical reasoning.
These advancements aim to reduce instances of AI hallucinations, which occur when incorrect datasets lead to erroneous outputs.
As the field evolves beyond traditional pre-training methods, researchers are optimistic about the future capabilities of artificial intelligence.
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