Zackary Snow Data Analytics Researcher for Advanced Manufacturing Contact . . | SNOWZK@ORNL.GOV All Publications A Co-Registered In-Situ and Ex-Situ Dataset from Wire Arc Additive Manufacturing process Review of In Situ Sensing for Directed Energy Deposition for Industrial Part Quality Assessment FY23 Multi-Dimensional Data Correlation Platform: Unified Software Architecture for AMMT Data Management and Processing FY 2024 Multidimensional Data Correlation Platform: Unified Software Architecture For Advanced Materials And Manufacturing Technologies Data Management And Processing Driving forces of swelling in laser powder bed fusion additive manufacturing analyzed via in-situ process monitoring Complete Optimization of LPBF Ni-Based Alloys Down-Selected from FY23 Candidate Materials Including, Thermodynamic Modeling, Sample Fabrication and Microstructure Characterization Recent Advances on the Use of In Situ Monitoring as an Nondestructive Evaluation Tool for Additive Manufacturing Processes Machine Learning Enabled Sensor Fusion for In-Situ Defect Detection in L-PBF... A Data-Driven Framework for Direct Local Tensile Property Prediction of Laser Powder Bed Fusion Parts Neural network-based single material beam-hardening correction for X-ray CT in Additive Manufacturing Prioritization of Existing Reactor Materials Data-Driven Optimization of the Processing Window for 316H Components Fabricated Using Laser Powder Bed Fusion Scalable in situ non-destructive evaluation of additively manufactured components using process monitoring, sensor fusion, and machine learning Report Outlining Computed Tomography Strategy and Microscopy Approach to Qualifying AM 316 Materials Preliminary Feasibility of Printing, Microstructure Analysis and Mechanical Performance of a Down Selected Ni Alloy Application of Machine Learning to Monitor Metal Powder-Bed Fusion Additive Manufacturing Processes Enabling rapid X-ray CT characterisation for additive manufacturing using CAD models and deep learning-based reconstruction Observation of spatter-induced stochastic lack-of-fusion in laser powder bed fusion using in situ process monitoring Key Links Organizations Energy Science and Technology Directorate Manufacturing Science Division Secure and Digital Manufacturing Section Manufacturing Systems Analytics Group