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About this Symposium

Meeting 2026 TMS Annual Meeting & Exhibition
Symposium Novel Strategies for Rapid Acquisition and Processing of Large Datasets From Advanced Characterization Techniques
Sponsorship TMS Structural Materials Division
TMS: Advanced Characterization, Testing, and Simulation Committee
Organizer(s) Sriram Vijayan, Michigan Technological University
Rakesh R. Kamath, Argonne National Laboratory
Fan Zhang, National Institute of Standards and Technology
Austin Mcdannald, National Institute of Standards and Technology
Sarshad Rommel, University of Connecticut
Scope Quantification and correlation of microstructural data to material properties and process variables are key to the design of novel materials and optimization of advanced manufacturing processes. The investigation of the evolution of microstructural features (size, morphology, and chemistry) across different length and time scales in novel material systems and materials subject to advanced manufacturing processes demand the need for a thorough multiscale characterization approach, and typically results in large datasets. Recent developments in high-throughput and autonomous experimental approaches combined with advances in instrumentation, computational capabilities and analysis software have compounded the challenge of curating these large datasets. There is an imminent need for development of novel approaches/strategies to extract high quality and actionable microstructural information from these datasets in a rapid and efficient manner. This symposium seeks to bring researchers from industry and academia alike interested in discussing these novel strategies on data obtained from a single or a combination of techniques, which include - optical microscopy (OM), scanning electron microscopy (SEM), scanning/transmission electron microscopy (S/TEM), neutron and synchrotron x-ray-based techniques, atom probe tomography (APT), and x-ray micro-computed tomography (XCT).


Topics include, but are not limited to:
• High-throughput property or microstructural characterization methodologies that enable rapid discovery and/or improved design of novel material systems.
• Machine learning and AI guided real-time or post facto reduction of high-volume datasets acquired during in situ characterization studies of microstructure evolution.
• Challenges and opportunities related to curation, handling, access and storage of metadata/data from large characterization datasets and the adherence to FAIR data principles.
• Acceleration of feature extraction and quantification from large imaging (OIM, SEM, EBSD, S/TEM, radiography, tomography) spectroscopy and/or diffraction-based datasets through computer vision and/or machine learning workflows/packages.
• Workflows for on-the-fly data extraction and feedback for advanced manufacturing routes using in situ monitoring techniques.

Abstracts Due 07/29/2025
Proceedings Plan Planned:

PRESENTATIONS APPROVED FOR THIS SYMPOSIUM INCLUDE


A Topology Optimized Specimen that Provides the Yield Surface in a Single Test
Advancements in Titanium Microstructure Characterization: Integrating AI for Automated Complex Quantification
Advances in Analytical S/TEM-Based Workflows: Emerging Techniques for Smarter Data Acquisition and Processing
Advances in Instrumentation for Spatially Resolved Acoustic Spectroscopy (SRAS)
Advancing Segregation Characterization in Steel and Alloys: A Novel BEX-EDS-SEM Approach
Affine Transformations to Correlate Experimental and Simulated EDS Spectra for Multi-Element Systems
Automated 2D Microscopy Workflows for Multimodal Characterization of Structure, Crystallography and Composition
Comprehensive Microstructural Characterization of Aging-Treated Aluminum Alloy AA2024 Using Integrated SEM, STEM, EDS, and EBSD Workflows
Conditional Diffusion Models for Microscopy Modality Transfer of Electron Backscattering Microscopy Diffraction Misorientations Maps from Optical Microscopy
Discovering Hidden Fingerprints in Multimodal Process-Structure-Property Data via Joint Embedding
Emphasizing the Importance of Data Exchange in Constructing a Digital Twin for Metals-AM
Enabling Data Starved Microstructural Segmentation With Foundation Models as First-Pass Segmentors in Low-Contrast Al-Si Solidification
Examining Growth Twinning in Ni-Based Films via a High-Throughput Methodology
Frequency-Domain Thermoreflectance Automation for High Throughput Microstructural and Thermal Characterization
High-Throughput Crystallography by Quantitative Large-Area Polarized-Light Microscopy
High-Throughput Exploration of Large Material Design Spaces Using Small Samples and Bayesian Strategies
High-Throughput Processing and Accelerated Characterization of Cu–Ti Alloy
High-Throughput Time-Resolved X-Ray Computed Tomography to Characterize Flaw Evolution in LPBF Parts During Creep
High Throughput Texture Analysis of Quartz via Automated Polarized Reflective Light Microscopy
Increasing the Throughput of Ultra-High Temperature Ceramic Tensile Testing
Lightweight Services and Federated Storage for Data-Intensive Structural Materials Research
Linking Energetic Material Sensitivity and Microstructure Variability Across Length Scales
Machine Learning Assisted Structure-Property Relationships by Nanoindentation
Mapping Microstructure to Field Properties in Materials Under Dynamical Loading
Nanocrystalline Films: Imaging, Orientation Mapping, Machine Learning and Data Analytics
New Strategy of Surface Defect Detection in Metallic Coatings Using a Machine Learning-Based Model
Same-Day Product Quality Assessment of CaCl₂-Assisted Direct Reduction of Chromite via µCT and Deep-Learning Segmentation Against a Reference Dataset
Segmentation Methods for Tracking Dislocation Dynamics


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