Skip to main content
  1. Home
  2. Emerging Tech
  3. Computing
  4. News

Who needs a nose? This crazy new algorithm can predict smell just by analyzing molecular structures

Add as a preferred source on Google

Can you guess a molecule’s smell by studying its structure? Even if you’re an olfactory chemist — one who studies the sense of smell — the answer is almost certainly not. However, a project by researchers at Rockefeller University in New York City may have helped cracked the problem, thanks to an open data set and cutting-edge machine-learning technology.

The results could have a range of applications, including helping perfume experts sift through billions of different molecules to find exactly the odor they’re searching for.

Recommended Videos

To begin with, Rockefeller University researchers asked 49 volunteers to assess the odor of 476 different chemicals, based on 21 different descriptors. These ranged from a chemicals’ intensity and pleasantness of smell, to how spicy or fruity it was. Once this data was assembled, the researchers then released it for 407 of the chemicals — together with 4,884 other variables based around chemical structure — for anyone who wanted to take a crack at writing an algorithm to make sense of it all.

The remaining 69 chemicals were held back so that whatever algorithms were created could be tested.

In the end, Professor Richard Gerkin, a neuroscientist at Arizona State University in Tempe, came up with the winning formula. His algorithm proved capable of predicting the scores the volunteers had assigned the chemicals based on their chemical compositions alone. Sure, 21 descriptors isn’t granular enough detail to accurately analyze every different chemical, but it’s an impressive start.

The possibility of using technology such as this to help narrow down the field when searching for a particular smell, or even flavor, is pretty exciting. “Eventually, you can use a database … and say, ‘OK, pick out the top 100 hits out of a billion molecules,'” Gerkin told New Scientist. “A hundred molecules are easier to test than a billion.”

Next up? Flipping the formula to predict which smells arise from mixing certain chemicals. Can it be done? Hey, if there’s one thing we’ve learned about machine learning, it’s that we write it off at our own peril.

Luke Dormehl
I'm a UK-based tech writer covering Cool Tech at Digital Trends. I've also written for Fast Company, Wired, the Guardian…
This tiny sensor could help self-driving cars and robots see better in the dark
Penn State researchers have developed a light-adaptive photomemristor modeled on the human eye that achieves over 95% visual accuracy in shifting light conditions.
Waymo Jaguar I-PACE sensors close up

Penn State researchers have developed a light-adaptive sensor component that could make autonomous vehicle cameras and robots far more reliable in shifting lighting conditions. The work, published Monday in Nature Communications, takes direct cues from how the human eye adjusts between bright and dark environments.

Biology as a blueprint

Read more
A chemical bath could bring your old EV battery back to near-full strength
Cornell researchers have developed a recycling process that restores spent lithium-ion cells to 95% of their original capacity while cutting recycling costs by more than half.
Li-ion battery close up showing recycling symbol

Your next phone or EV could run on a recycled battery that performs nearly as well as a new one. Cornell University researchers have developed a new recycling technique that restores spent lithium-ion cells to up to 95% of their original capacity, while cutting recycling costs by 56%.

A bath instead of a shredder

Read more
The best new ChatGPT feature is one most people will never use
Logo, Emblem, Symbol

For years, the biggest conversation around AI has been what these tools can do. They can browse the web, analyze documents, connect to your apps, conduct research, and increasingly act on your behalf. But as AI systems become more capable, another question has become harder to ignore: what happens when an AI assistant is tricked into handing over information it shouldn’t?

OpenAI’s new Lockdown Mode is its latest answer to that problem. Available across all ChatGPT account types, Lockdown Mode is an optional security setting designed for people and organizations handling sensitive information. The trade-off is that you get stronger protection against certain forms of data theft, but you lose access to some of ChatGPT’s most powerful features.

Read more