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Energy
Breaking the Coding Barrier for Solar Cell Process Optimization
Atinary’s SDLabs AI platform enabled the Buonassisi Lab at MIT to run closed-loop Bayesian Optimization across a 5-dimensional environmental parameter space, completing a study that would have been impossible under deadline without it.
Cosmetics and Fragrances
Accelerating Hydroformylation R&D with AI for Resource Efficiency
Atinary’s AI platform accelerates hydroformylation R&D, optimizing catalysts, cutting Rhodium use, cost, and reaction time for sustainable chemistry.
Pharma
Leveraging HTE to optimize yield in deprotection reaction with Takeda Pharmaceuticals
Integrating Atinary’s SDLabs platform for AI-driven HTE to maximize yields from under 50% to above 90% after 3 iterations.
Cosmetics and Fragrances
Optimizing HPLC method development to maximize peak resolution
Integrating Atinary’s SDLabs platform for AI-driven HPLC workflows in analytical chemistry
Biotech
,
CDMO
,
Pharma
Maximizing yield and minimizing cost in oligonucleotide synthesis with Snapdragon Chemistry
Achieving up to an 18% increase in product yield and a 22% reduction in cost
Energy
Optimizing Catalyst Formulation for CO2 to Methanol Conversion with ETH Zurich
1000x acceleration: 100 years of Catalysis R&D in just 6 weeks
Maximizing Yield and Conversion in Chemical Synthesis with IBM Research Europe
Achieving joint yield and conversion rates above 80% in the iodination of terminal alkynes.
Cosmetics and Fragrances
Smart Chemical Library Screening and Ligand Optimization
Leveraging AI to maximize yield, while minimizing experiments and cost.
Energy
Automated Optimization of Perovskite Solar Cells with ViperLab
Accelerating Solar Innovation with SDLabs for Faster Discoveries, Performance Optimization, and Scalable Materials Insights