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      "text": "Selected examples: Citrine Informatics, The Materials Project",
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      "text": "Where and how is ML being used effectively? Similar its application in drug discovery, machine learning can be used to learn the rules of material science discovery. For example, models can learn the structure of molecules and/or the stepwise process of efficiently testing these molecular properties. By using these techniques, researchers at Stanford Synchrotron Radiation Lightsource were able to create and screen 20,000 combinations of ingredients that form metallic glass in a single year. That's research and development sped up by 167x!",
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