
What can exploding stars teach us about how blood flows through an artery? Or swimming bacteria about how the ocean鈥檚 layers mix? A collaboration of researchers, including from the 探花直播 of Cambridge, has reached a milestone toward training artificial intelligence models to find and use transferable knowledge between fields to drive scientific discovery.
What can exploding stars teach us about how blood flows through an artery? Or swimming bacteria about how the ocean鈥檚 layers mix? A collaboration of researchers, including from the 探花直播 of Cambridge, has reached a milestone toward training artificial intelligence models to find and use transferable knowledge between fields to drive scientific discovery.
探花直播initiative, called , uses technology like that powering large language models such as OpenAI鈥檚 ChatGPT or Google鈥檚 Gemini. But instead of ingesting text, the project鈥檚 models learn using scientific datasets from across astrophysics, biology, acoustics, chemistry, fluid dynamics and more, essentially giving the models cross-disciplinary scientific knowledge.
鈥淭hese datasets are by far the most diverse large-scale collections of high-quality data for machine learning training ever assembled for these fields,鈥 said team member Michael McCabe from the Flatiron Institute in New York City. 鈥淐urating these datasets is a critical step in creating multidisciplinary AI models that will enable new discoveries about our universe.鈥
On 2 December, the Polymathic AI team released two of its open-source training dataset collections to the public 鈥 a colossal 115 terabytes, from dozens of sources 鈥 for the scientific community to use to train AI models and enable new scientific discoveries. For comparison, GPT-3 used 45 terabytes of uncompressed, unformatted text for training, which ended up being around 0.5 terabytes after filtering.
探花直播full datasets are available to download for free on , a platform hosting AI models and datasets. 探花直播Polymathic AI team provides further information about the datasets in accepted for presentation at the machine learning conference, to be held later this month in Vancouver, Canada.
鈥淛ust as LLMs such as ChatGPT learn to use common grammatical structure across languages, these new scientific foundation models might reveal deep connections across disciplines that we鈥檝e never noticed before,鈥 said Cambridge team lead听 from Cambridge鈥檚 Institute of Astronomy. 鈥淲e might uncover patterns that no human can see, simply because no one has ever had both this breadth of scientific knowledge and the ability to compress it into a single framework.鈥
AI tools such as machine learning are increasingly common in scientific research, and were recognised in two of this year鈥檚 Nobel Prizes. Still, such tools are typically purpose-built for a specific application and trained using data from that field. 探花直播Polymathic AI project instead aims to develop models that are truly polymathic, like people whose expert knowledge spans multiple areas. 探花直播project鈥檚 team reflects intellectual diversity, with physicists, astrophysicists, mathematicians, computer scientists and neuroscientists.
探花直播first of the two new training dataset collections focuses on astrophysics. Dubbed the Multimodal Universe, the dataset contains hundreds of millions of astronomical observations and measurements, such as portraits of galaxies taken by NASA鈥檚 James Webb Space Telescope and measurements of our galaxy鈥檚 stars made by the European Space Agency鈥檚 Gaia spacecraft.
探花直播other collection 鈥 called the Well 鈥 comprises over 15 terabytes of data from 16 diverse datasets. These datasets contain numerical simulations of biological systems, fluid dynamics, acoustic scattering, supernova explosions and other complicated processes.听Cambridge researchers played a major role in developing both dataset collections, working alongside PolymathicAI and other international collaborators.
While these diverse datasets may seem disconnected at first, they all require the modelling of mathematical equations called partial differential equations. Such equations pop up in problems related to everything from quantum mechanics to embryo development and can be incredibly difficult to solve, even for supercomputers. One of the goals of the Well is to enable AI models to churn out approximate solutions to these equations quickly and accurately.
鈥淏y uniting these rich datasets, we can drive advancements in artificial intelligence not only for scientific discovery, but also for addressing similar problems in everyday life,鈥 said Ben Boyd, PhD student in the Institute of Astronomy.
Gathering the data for those datasets posed a challenge, said team member Ruben Ohana from the Flatiron Institute. 探花直播team collaborated with scientists to gather and create data for the project. 鈥 探花直播creators of numerical simulations are sometimes sceptical of machine learning because of all the hype, but they鈥檙e curious about it and how it can benefit their research and accelerate scientific discovery,鈥 he said.
探花直播Polymathic AI team is now using the datasets to train AI models. In the coming months, they will deploy these models on various tasks to see how successful these well-rounded, well-trained AIs are at tackling complex scientific problems.
鈥淚t will be exciting to see if the complexity of these datasets can push AI models to go beyond merely recognising patterns, encouraging them to reason and generalise across scientific domains,鈥 said Dr Payel Mukhopadhyay from the Institute of Astronomy. 鈥淪uch generalisation is essential if we ever want to build AI models that can truly assist in conducting meaningful science.鈥
鈥淯ntil now, haven鈥檛 had a curated scientific-quality dataset cover such a wide variety of fields,鈥 said Cranmer, who is also a member of Cambridge鈥檚 Department of Applied Mathematics and Theoretical Physics. 鈥淭hese datasets are opening the door to true generalist scientific foundation models for the first time. What new scientific principles might we discover? We're about to find out, and that's incredibly exciting.鈥
探花直播Polymathic AI project is run by researchers from the Simons Foundation and its Flatiron Institute, New York 探花直播, the 探花直播 of Cambridge, Princeton 探花直播, the French Centre National de la Recherche Scientifique and the Lawrence Berkeley National Laboratory.
Members of the Polymathic AI team from the 探花直播 of Cambridge include PhD students, postdoctoral researchers and faculty across four departments: the Department of Applied Mathematics and Theoretical Physics, the Department of Pure Mathematics and Mathematical Statistics, the Institute of Astronomy and the Kavli Institute for Cosmology.
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