SAGE Code and Data

Citation Author(s):
Aaron
Kusne
Submitted by:
Aaron Kusne
Last updated:
Wed, 12/20/2023 - 16:31
DOI:
10.21227/hq9y-qb58
License:
0
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Abstract 

Zip includes commented Jupyter notebook with associated data files. Abstract for paper is:

Autonomous materials research labs require the ability to combine and learn from diverse data streams. This is especially true for learning material synthesis-process-structure-property relationships, key to accelerating materials optimization and discovery as well as accelerating mechanistic understanding. We present the Synthesis-process-structure-property relAtionship coreGionalized lEarner (SAGE) algorithm. A fully Bayesian algorithm that uses multimodal coregionalization to merge knowledge across data sources to learn synthesis-process-structure-property relationships. SAGE outputs a probabilistic posterior including the most likely relationship given the data along with proper uncertainty quantification. Beyond autonomous systems, SAGE will allow materials researchers to unify knowledge across their lab toward making better experiment design decisions.

Instructions: 

ZIP file contains commented Jupyter notebook with associated data files.