Noam Browna number one research scientist OpenAIentered the stage in TED AI Conference on Tuesday in San Francisco to deliver a robust speech on the long run of artificial intelligence, with a specific deal with The recent o1 model from OpenAI and its potential to remodel industries through strategic pondering, advanced coding and scientific research. Brown, who has previously driven breakthroughs in AI systems comparable to poker game AI and , which dominated the sport of diplomacy, now imagines a future through which AI isn’t only a tool, but a central driver of innovation and Decision making is cross-industry.
“The incredible progress in AI over the past five years might be summed up in a single word:,” Brown began, addressing an enthusiastic audience of developers, investors and industry leaders. “Yes, there have been uplink advances, but today's frontier models are still based on the identical transformer architecture introduced in 2017. The fundamental difference is the scale of the information and the computing power it incorporates.”
Brown, a central figure in OpenAI's research efforts, was quick to emphasise that while scaling models is a critical consider advancing AI, it’s time for a paradigm shift. He identified the necessity for AI to transcend just data processing and deal with what he called “System two pondering“—a slower, more deliberate type of pondering that reflects how people approach complex problems.
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To underscore this point, Brown shared a story from his doctoral days when he worked on the poker AI that famously beat the perfect human players in 2017.
“It seems that letting a bot think for just 20 seconds in a poker round gave the identical performance improvement as scaling the model 100,000 times and training it 100,000 times longer,” Brown said. “When I got that result, I literally thought it was a mistake. In the primary three years of my doctoral work, I managed to enlarge these models 100 times. I used to be happy with this work. I had written several papers I didn’t know the best way to do that scaling, but I knew pretty quickly that it will all be a footnote in comparison with this System 2 scaling.”
Brown's presentation introduced System 2 pondering as an answer to the constraints of traditional scaling. Popularized by psychologist Daniel Kahneman within the book System Two Thinking, System Two Thinking refers to a slower, more deliberate way of pondering that individuals use to unravel complex problems. Brown believes that integrating this approach into AI models may lead to significant performance improvements without requiring exponentially more data or computing power.
He reported that pondering for 20 seconds before making decisions had a profound effect, comparable to scaling the model 100,000 times. “The results blew me away,” Brown said, illustrating how corporations can achieve higher results with fewer resources by specializing in System 2 pondering.
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Brown's talk comes shortly after the discharge of OpenAI o1 series modelsintroduce System 2 pondering into AI. Launched in September 2024, these models are designed to process information more fastidiously than their predecessors, making them ideal for complex tasks in areas comparable to scientific research, coding and strategic decision-making.
“We are not any longer limited to extending the system to training. Now we may expand System Two pondering, and the great thing about expanding on this direction is that it stays largely untapped,” Brown explained. “This isn’t a revolution that may occur in ten and even two years. It is a revolution that is occurring now.”
The o1 models have already shown strong performances different benchmarks. For example, the o1 model achieved an 83% accuracy rate on an International Mathematical Olympiad proficiency test – a big jump from the 13% achieved by OpenAI's GPT-4o. Brown noted that the power to reason using complex mathematical formulas and scientific data makes the o1 model particularly helpful for industries that depend on data-driven decision-making.
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For corporations, OpenAI's o1 model offers advantages that transcend academic performance. Brown emphasized that scaling System 2 pondering could improve decision-making processes in industries comparable to healthcare, energy and finance. He used cancer treatment for instance and asked the audience, “Raise your hand in the event you could be willing to pay greater than $1 for a brand new cancer treatment…How about $1,000?” How about one Million dollars?”
Brown suggested that the o1 model could help researchers speed up data collection and evaluation, allowing them to deal with interpreting results and generating recent hypotheses. In the energy sector, he noted that the model could speed up the event of more efficient solar panels and potentially result in breakthroughs in renewable energy.
He acknowledged the skepticism about slower AI models. “When I mention this to people, the response I often get is that individuals might not be willing to attend just a few minutes for a solution or pay just a few dollars to get a solution to the query,” he said. But for a very powerful problems, these costs are well price it, he argued.
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OpenAI's shift toward systems two pondering could change the competitive landscape for AI, particularly in enterprise applications. While most current models are optimized for speed, the deliberate reasoning process behind o1 could provide corporations with more accurate insights, particularly in industries comparable to finance and healthcare.
In the tech sector, where corporations prefer to Google And Meta Although OpenAI invests heavily in AI, what sets OpenAI apart is its deal with deep pondering. Googles Gemini AIis optimized for multimodal tasks, for instance, however it stays to be seen the way it compares to OpenAI's models when it comes to problem-solving capabilities.
However, the associated fee of implementing o1 may limit its widespread adoption. The model is slower and dearer to operate than previous versions. According to reports, the o1 preview model costs $15 per million input tokens And $60 per million tokens issuedexcess of GPT-4o. Nevertheless, the investment might be worthwhile for corporations that require highly precise results.
As Brown concluded his talk, he emphasized that AI development is at a critical juncture: “Now we’ve a brand new parameter, one where we may expand System 2 pondering – and we’re only just getting there initially of the expansion.” Direction.”