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Meeting 2026 TMS Annual Meeting & Exhibition
Symposium Novel Strategies for Rapid Acquisition and Processing of Large Datasets From Advanced Characterization Techniques
Presentation Title Automated 2D Microscopy Workflows for Multimodal Characterization of Structure, Crystallography and Composition
Author(s) Gregory E. Sparks, Michael D. Uchic
On-Site Speaker (Planned) Gregory E. Sparks
Abstract Scope In this talk, we describe a system for automated multimodal characterization of samples using optical microscopy (OM) and scanning electron microscopy (SEM). The current system is intended to automatically collect data according to provided parameters; the results of initial runs can then be analyzed and used to select data collection parameters for subsequent runs. Currently, these parameters are provided by human operators in a “cloud lab” format, where a user can request data collection and receive the resulting raw data and/or processed results, but the concept easily lends itself to adaptation into a closed-loop autonomous system where the data collection parameters are themselves chosen by the system based on the results of previous runs.
Proceedings Inclusion? Planned:
Keywords Characterization,

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