Atomscale exists to build the bridge between raw experimental data and actionable insight to unlock the future of materials science. Check out our latest article on the data challenges in materials science: open.substack.com/pub/atomscal...
09.07.2025 17:30 β π 0 π 0 π¬ 0 π 0
AI agents are poised to transform the commercialization of advanced materials. At Atomscale, weβre driving this transformation with our next-generation AI agents, purpose-built for atomic-scale engineering.
www.linkedin.com/pulse/ai-age...
09.05.2025 17:02 β π 0 π 0 π¬ 0 π 0
Atomscale | Intelligent Atomic Scale Engineering
Atomscale is building the future of atomic-scale engineering, applying AI to enable new material innovations.
Our mission to enable breakthroughs in advanced materials synthesis with state of the art AI is more focused than ever. Visit us at www.atomscale.ai!
11.04.2025 16:06 β π 1 π 0 π¬ 0 π 0
Exciting news β Atomic Data Sciences is now Atomscale!
Our new name reflects our evolution from automating data analysis for materials science to building the comprehensive intelligence layer for atomic scale engineering.
11.04.2025 16:06 β π 0 π 0 π¬ 1 π 0
Atomic Data Sciences is delivering the first end-to-end AI solution for advanced materials synthesis, leveraging the convergence of in-situ hardware, applied AI for materials science, and general foundation models to enable a new low-level programming language for the physical world.
21.03.2025 17:20 β π 0 π 0 π¬ 1 π 0
Our featurization scheme generalizes across materials without customization. Reach out by DM or email info at atomicdatasciences dot com to learn more and try a demo!
11.12.2024 18:56 β π 2 π 0 π¬ 0 π 0
We also predict film composition in-process with similar accuracy to expert practitioners. Even within a lab-scale synthesis campaign, applying these predictive models can save hundreds of hours of expert and equipment time.
11.12.2024 18:56 β π 2 π 0 π¬ 1 π 0
We develop workflows to improve the efficiency of materials synthesis and characterization using the tools available in AtomCloud. With just ~10 conventionally labeled synthesis trials, we predict the defect rate of future trials with >80% accuracy.
11.12.2024 18:56 β π 0 π 0 π¬ 1 π 0
Automated featurization of RHEED images, quantifying qualitative labels, and generating proxy models across techniques. https://pubs.acs.org/doi/10.1021/acs.nanolett.4c04500
We are excited to share that out paper, Predicting and Accelerating Nanomaterial Synthesis Using Machine Learning Featurization, a collaboration between Atomic DS and the Hinkle Lab at the University of Notre Dame, is published in ACS Nano Letters.
pubs.acs.org/doi/10.1021/...
11.12.2024 18:56 β π 8 π 2 π¬ 1 π 0
PhD student @MIT ChemE & CompSci | MSc ETH Chemistry @ETH Zurich | prev ML scientist @entalpicai
passionate about spectroscopy, improv theatre, and everything in between.
Co-Founder & Product Lead at DeepMirror | Empowering Scientists with Transformative Products | PhD in Physics & Biology
Chemistry Professor at Dartmouth. Into adaptive materials using tiny switches and machines
CTO at Birch Biosciences - Bringing plastic into the circular economy: https://www.birchbiosciences.com
SynBio+AI/ML - engineering biology to do cool stuff. Synthetic biologist and a Seattle sports fan.
https://www.linkedin.com/in/mileswgander
Tenure-track astronomer at STScI/JHU working on galaxies, machine learning, and AI for scientific discovery. Opinions my own. He/him.
Website: https://jwuphysics.github.io/
Postdoctoral Fellow, Collins Lab @ Broad Institute and Wyss Institute at Harvard and MIT | AI in drug discovery
NeuroAI, vision, open science. NeuroAI researcher at Amaranth Foundation. Previously engineer @ Google, Meta, Mila. Updates from http://neuroai.science
biology + computers + a leavening of snark | π¨βπ¨βπ§βπ§π³οΈβπ| nanomedicine | cancer genomics 𧬠| ML | biomaterials | #compchem #matsky #chemsky #ai4science #materialsinformatics #md | startups | @Cal π» @Stanford @UniversityOfOxford @OxfordNano (swimsf on the Bad Place)
AI Educator, Speaker & Advisor | PhD Artificial Intelligence | Co-founder & Head of @ailab.world & koolth | Honorary Doctor of Science
UK | Australia | New Zealand
https://www.ailab.world/dr-john-flackett
Scholar. Teacher. Sailor: Full Professor @AmericanU @KogodBiz & @ausis | Data scientist doing #TextAnalysis #NLP using #AI #ML #LLMs #Python #RStats #Quarto #HPC #a11y #CSCW #HCI | Director idppglobal.org and internetgovernancelab.org
Doctoral Researcher in the Digital Chemistry Laboratory at ETH Zurich | ESOP 2021 Scholar | MSc Chemistry ETH Zurich | Accelerated catalyst discovery with AI
Laplace Junior Chair, Machine Learning
ENS Paris. (prev ETH Zurich, Edinburgh, Oxford..)
Working on mathematical foundations/probabilistic interpretability of ML (what NNs learnπ€·ββοΈ, disentanglementπ€, king-man+woman=queen?πβ¦)
Navigate & learn about Artificial Intelligenceγ
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£Strategy | Founded in 2017 by @drjohnflackett.bsky.social & @emmaberry.bsky.social
UK | Australiaγ
£New Zealand | https://www.ailab.world
Currently a chemical engineering PhD student at the University of Toronto. Exploring and leveraging different modalities of metal-organic frameworks to further develop #ChemicalSciences, #AI4Science and #MachineLearning!
https://sartaajkhan.github.io/
Applied AI Research Scientist | Bioinformatics R&D Manager | Using ML to solve problems in science & have a positive impact. She/Her
Tearing down silos.
www.csms.io
Father. Husband. John C. Hubbard Professor of Chemistry at U. Kentucky. Nerd. Sports Enthusiast. Views expressed are my own. he/him #EndNF.