๐ Thanks to my collaborators @jla-gardner.bsky.social Louise A. M. Rosset Andrew L. Goodwin @vlderinger.bsky.social ๐ ๐บ
And to our funders: @novo-nordisk.bsky.social @erc.europa.eu @ukri.org ๐
@ox.ac.uk | @oxfordchemistry.bsky.social | @somervillecollege.bsky.social | DTU | DTU Energy
Posts by Andy Sode Anker
Iโm excited about the potential: helping the scattering community move toward reliable automation, and supporting autonomous labs in making real-time decisions beyond pre-trained ML models.
๐ Full preprint: arxiv.org/abs/2510.05938
Applications span molecules ๐งฌ, crystals ๐, nanoparticles โช & amorphous matter ๐ซ๏ธ. Our method even reveals when multiple atomic structures give identical scattering โ and shows when more experimental input is needed in autonomous labs (Figure 2).
We propose a new approach: a differentiable optimisation framework that unifies scattering ๐, energetics, & chemical constraints. Instead of relying on training data, it directly refines candidate structures against experiments.
โ ๏ธ But thereโs a catch: ML models are inherently bound to their training data, making them unreliable for uncharted chemistries โ exactly where discovery happens.
โณ In my research I have built ML methods to automate this process. ML can map structures to scattering patterns and deliver split-second interpretations โ enabling self-driving experiments where synthesis, measurement, & analysis are connected in a closed loop ๐.
For over a century, X-ray โจ and neutron โ๏ธ scattering have been central to chemistry & physics. Yet interpretation remains a bottleneck โ still reliant on manual expert refinement.
๐ New preprint out! โAutonomous interpretation of atomistic scattering dataโ โ arxiv.org/abs/2510.05938
Scattering data is still mostly analysed by hand. But what if robots could do it themselves? ๐คโจโ๏ธ
BaZrS3 is an emerging solar-cell material โ๏ธ In a preprint led by @biancapasca.bsky.social, we describe an ML potential that can tackle the structural complexity of amorphous and polycrystalline BaZrS3. Very happy to see this online! Read more at arxiv.org/abs/2506.01517
๐ Bringing self-driving labs to the synchrotron! ๐
Excited to share our latest work introducing an autonomous synthesis method explicitly designed to target atomic-scale structures!
๐ Read the preprint here: lnkd.in/dmfzwEDQ
I appreciate the support from @novo-nordisk.bsky.social
A table comparing the computational power of HPC and a furnace
Pocket guide to materials discovery calculation methods (repost from the other place)
๐๐๐Huge Somerville congratulations to our Junior Research Fellow Dr Andy S. Anker, who has just been named one of the worldโs 30 best young climate scientists at the inaugural Inflection Award. Read the full story:
www.some.ox.ac.uk/news/somervi...
#InflectionAward2025 #inflection
Thanks to @ox.ac.uk, Oxford Chemistry, @somervillecollege.bsky.social, DTU - Technical University of Denmark, DTU Energy, Novo Nordisk Foundation for making it possible ๐
Huge thanks to the organisers and judges for this incredible opportunity and to the other awardees for inspiring me every step of the way. You are superstars! โญ
Still taking it all in ๐ฅน being in Paris for the Inflection Award was a once-in-a-lifetime experience. Humbled to be named one of the 30 best young scientists working on climate solutions and to stand alongside such an incredible cohort of researchers pushing the boundaries of whatโs possible.
Can we โdesignโ amorphous materials with useful properties? We argue that #compchem & AI are bringing us closer towards this ambitious goal: rdcu.be/d3JD6
๐จ Introducing graph-pes: a unified framework for building, training and using graph-based machine-learned models of potential energy surfaces! ๐จ
#compchem #ML #ChemSky #CompChemSky
I would love to join too โบ๏ธ