
MAR 10, 2026
Formulation ML and Optimization: Making advanced property prediction and experimental design fast and accessible
Many R&D teams are hindered from adopting AI/ML due to the complexity of software tools, steep learning curves, and limited data science support. Schrödinger’s Materials Science Suite is designed to address these challenges by providing a unified and easy-to-use AI/ML platform, powered by state-of-the-art ML technology and backed by a dedicated scientific support team.
Join our upcoming webinar to learn how your R&D organization can remove adoption barriers, accelerate discovery cycles, and align with national AI initiatives. In this webinar, we will demonstrate how MS Informatics, Formulation ML, and Formulation Optimization make advanced property prediction, model building, and ML-driven design of experiments simple, fast, and accessible – even for non-experts. We will showcase how easy it is to apply these tools using experimental datasets across broad MS applications, including formulations, consumer goods, batteries, pharmaceuticals, and beyond.
Join us and see live demos on:
- Training accurate viscosity ML models for binary liquids that can be applied to a variety of material applications
- Scaling up to complex shampoo formulations, where ML models can be predictive of complicated multicomponent systems and provide suggestions of next best experiments
Who should attend:
- R&D leaders
- Innovation managers
- Digitization managers
- Synthetic chemists
- Materials scientists
- Formulation scientists
- Computational materials scientists
Our Speaker

Anand Chandrasekaran
Senior Principal Scientist, Materials Science Product and Discovery, Schrödinger
Anand Chandrasekaran joined Schrödinger in 2019 and he is currently the Product Manager of MS-Informatics. His expertise is in applying machine learning to different areas in Materials Science and computational modeling. He graduated from the group of Prof.Nicola Marzari in the Swiss Federal Institute of Technology, Lausanne with a PhD in Materials Science. Before joining Schrödinger, Anand also worked in the group of Prof. Rampi Ramprasad on a number of topics including polymer informatics, machine-learning force-fields, and machine-learning for electronic structure calculations.