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AI Assistants
Beyond Science
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Artificial intelligence makes the work of researchers easier, more efficient and better. An overview of five top tools for scientific research.
Whether you are seeking new approaches to cancer research, aiming to predict protein structures or searching for improved research options: artificial intelligence (AI) is playing an ever-increasing role in science. This is because AI tools help simplify the daily work of researchers on many levels. Here, we introduce five tried-and-tested smart solutions:
In 2020, AlphaFold impressively demonstrated how AI is capable of enhancing research. This deep-learning algorithm by Alphabet subsidiary Google DeepMind was able to calculate the three-dimensional structure of proteins at previously unachieved speeds. Proteins that had previously been measured manually by researchers served as the training data for AlphaFold. In the meantime, this tool has calculated the structure of almost all of the 200 million known proteins – with high accuracy. A giant leap for the life sciences, as those who know the structure of a protein will be able to find out what it does – and thus better understand processes and diseases within the body.
Researchers worldwide are now using AlphaFold to study antibiotic resistance and herpes viruses or investigate novel vaccines, earning the developers of AlphaFold to share the Nobel Prize in Chemistry in 2024. In the meantime, DeepMind has not been idle: the new version of AlphaFold 3 is able to not only calculate the shape of proteins, but it can also predict how they will interact with other molecules – with an accuracy that had not been achieved previously. With only a few mouse clicks, researchers can now model complex interactions between proteins and active agents. Thus, this new version of AI is even more useful to basic science and drug development research than its predecessor.
AlphaFold: folding proteins per mouse click
In 2020, AlphaFold impressively demonstrated how AI is capable of enhancing research. This deep-learning algorithm by Alphabet subsidiary Google DeepMind was able to calculate the three-dimensional structure of proteins at previously unachieved speeds. Proteins that had previously been measured manually by researchers served as the training data for AlphaFold. In the meantime, this tool has calculated the structure of almost all of the 200 million known proteins – with high accuracy. A giant leap for the life sciences, as those who know the structure of a protein will be able to find out what it does – and thus better understand processes and diseases within the body. Researchers worldwide are now using AlphaFold to study antibiotic resistance and herpes viruses or investigate novel vaccines, earning the developers of AlphaFold to share the Nobel Prize in Chemistry in 2024. In the meantime, DeepMind has not been idle: the new version of AlphaFold 3 is able to not only calculate the shape of proteins, but it can also predict how they will interact with other molecules – with an accuracy that had not been achieved previously. With only a few mouse clicks, researchers can now model complex interactions between proteins and active agents. Thus, this new version of AI is even more useful to basic science and drug development research than its predecessor.
AIFS: more accurate weather forecasting
In times of climate change, weather forecasts are increasingly gaining importance: the more accurately heavy rain, tornadoes, droughts and other weather extremes can be predicted, the earlier governments will be able to initiate targeted countermeasures. At this time, weather forecasts are calculated by supercomputers using complex physics-based models. This takes a significant amount of time, and even more electricity. The new AI-supported forecast system AIFS by the European Centre for Medium-Range Weather Forecasts (ECMWF) is meant to carry out this task noticeably faster and more precisely, at only one thousandth of the energy required by traditional technology.Educated using historic weather data, this AI identifies patterns which it then compares to current data measured by satellites and weather stations. The thus generated prognoses were 20 percent more accurate when it came to the prediction of tropical storms than modern physics-based models, states the ECMWF. But also, in the area of climate research, AI will likely capitalize on its prowess in pattern recognition. For example, Helmholtz researchers have recently developed a basic AI model which is intended to enable more long-term as well as more reliable climate prognoses without the need for a supercomputer.