Digital disruption
Information about the Royal Society's digital disruption programme of work
The Science in the age of AI report explores how AI is transforming the methods and nature of scientific research.
The unprecedented speed and scale of progress with artificial intelligence (AI) in recent years suggests society may be living through an inflection point. With the growing availability of large datasets, new algorithmic techniques and increased computing power, AI is becoming an established tool used by researchers across scientific fields who seek novel solutions to age-old problems. Now more than ever, we need to understand the extent of the transformative impact of AI on science and what scientific communities need to do to fully harness its benefits.
This report, Science in the age of AI (PDF), explores how AI technologies, such as deep learning or large language models, are transforming the nature and methods of scientific inquiry. It also explores how notions of research integrity; research skills or research ethics are inevitably changing, and what the implications are for the future of science and scientists.
The report addresses the following questions:
In answering these questions, the report integrates evidence from a range of sources, including research activities with more than 100 scientists and the advisement of an expert Working group, as well as a taxonomy of AI in science (PDF), a historical review (PDF) on the role of disruptive technologies in transforming science and society, and a patent landscape review (PDF) of artificial intelligence related inventions, which are available to download.
On 6 June, UNESCO and the Royal Society in the UK hosted an event at UNESCO headquarters in Paris which explored the relationship between AI and open science. In the lead-up to this event, Professor Alison Noble (Chair of the Science in the age of AI working group) shared her insights.
Our current Working Group includes Professor Alison Noble CBE FREng FRS (Chair), Professor Paul Beasly, Dr Peter Dayan FRS, Professor Sabina Leonelli, Alistair Nolan, Dr Philip Quinlan, Professor Abigail Sellen FRS, Professor Rossi Setchi and Kelly Vere.
Information about the Royal Society's digital disruption programme of work
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