Science has always advanced by analysing data, spotting patterns, and testing hypotheses. For most of history, that meant humans — brilliant, tireless humans — doing the heavy lifting. Today, AI is becoming the most powerful research assistant ever invented, capable of processing data at scales no team of scientists could ever match.
For 50 years, one of biology's greatest unsolved problems was the protein folding problem: given a protein's amino acid sequence, predict its three-dimensional shape.
Proteins fold into precise shapes that determine their function — and misfolded proteins are linked to diseases like Alzheimer's, Parkinson's, and cancer. Understanding a protein's shape is critical to designing drugs that interact with it. But experimentally determining a protein's structure takes months or years and costs hundreds of thousands of pounds.
In 2020, DeepMind's AlphaFold2 solved this problem with staggering accuracy, matching experimental results in most cases. By 2022, it had predicted the structures of over 200 million proteins — virtually every known protein in biology. The entire database was released for free.
Researchers worldwide immediately began using AlphaFold to:
Earth's climate is a system of mind-boggling complexity. Ocean currents, atmospheric chemistry, ice sheet dynamics, and human emissions all interact in ways that require enormous computational models to simulate.
AI is enhancing climate science in several key ways:
Google DeepMind's GraphCast model, released in 2023, produces 10-day weather forecasts more accurately than the best traditional numerical models — and does so in under a minute on a single computer, versus hours on a supercomputer.
AI systems analyse decades of satellite, ocean sensor, and atmospheric data to:
Transitioning to renewable energy requires matching variable supply (when the wind blows, when the sun shines) with demand. AI forecasts both, helping grid operators balance the system and reduce the need for polluting backup power plants.
Developing a new drug typically takes 10–15 years and costs over a billion pounds. Most drug candidates fail. AI is compressing this timeline dramatically.
Traditional drug discovery involves:
AI can accelerate steps 1–3 enormously:
Traditional screening: test 1 million compounds in a lab over months
AI-assisted screening: score 100 million virtual compounds in hours
→ shortlist the top 100 for lab testing
Companies like Insilico Medicine and Recursion Pharmaceuticals have used AI to identify novel drug candidates in months rather than years. BenevolentAI used AI to identify baricitinib as a potential COVID-19 treatment — a drug already approved for rheumatoid arthritis — within days of the pandemic beginning.
The universe generates more data than any human team could ever process. AI is essential to modern astronomy:
NASA's Kepler telescope observed 150,000 stars looking for the tiny dimming that indicates a planet passing in front. A Google AI system trained on confirmed planet sightings trawled through the data and discovered two new exoplanets that human reviewers had missed — including the eighth planet in the Kepler-90 system, making it the first known star with as many planets as our own solar system.
The famous 2019 image of the black hole in galaxy M87 — the first ever taken — was made possible by an AI algorithm developed by Katie Bouman, which synthesised data from eight telescopes spread across the planet into a coherent image.
NASA's Perseverance rover uses AI-powered autonomous navigation to plan its own routes across the Martian surface, avoiding hazards without waiting 20 minutes for radio signals to reach Earth. Its companion helicopter Ingenuity uses real-time AI to stay stable in Mars's thin atmosphere.
Finding new materials — better batteries, stronger alloys, more efficient solar cells — has traditionally been a painstaking trial-and-error process. AI is changing that.
The Materials Project has used AI to model the properties of over 140,000 materials computationally, predicting their stability, conductivity, and other characteristics before anyone builds them in a lab. Researchers can query the database to find materials with the exact properties they need.
Microsoft's FunSearch system uses AI to discover new mathematical structures and algorithms — demonstrating that AI can even advance pure mathematics.
The common thread across all these breakthroughs is the same: AI can find patterns in data at scales that are simply impossible for human researchers.
Consider:
Humans are extraordinary pattern-recognisers — but only within the limits of what we can hold in our heads. AI has no such limit. It can process the outputs of all published neuroscience research and surface connections between papers written decades apart that no individual researcher would ever notice.
This doesn't mean AI replaces scientists. Scientists still ask the questions, design the experiments, interpret the results, and decide what matters. AI is the most powerful tool ever added to the scientific toolkit.
What was the main achievement of DeepMind's AlphaFold2?