ProgramMaster Logo
Conference Tools for 2021 TMS Annual Meeting & Exhibition
Login
Register as a New User
Help
Submit An Abstract
Propose A Symposium
Presenter/Author Tools
Organizer/Editor Tools
About this Abstract
Meeting 2021 TMS Annual Meeting & Exhibition
Symposium Practical Tools for Integration and Analysis in Materials Engineering
Presentation Title Accelerated tools for disordered-materials discovery
Author(s) Stefano Curtarolo
On-Site Speaker (Planned) Stefano Curtarolo
Abstract Scope In this presentation we will discuss novel high-throughput methods to address synthesizability of high-entropy systems. Research sponsored by DOD.
Proceedings Inclusion? Planned:
Keywords High-Entropy Alloys, Computational Materials Science & Engineering, High-Temperature Materials

OTHER PAPERS PLANNED FOR THIS SYMPOSIUM

A Fast Fourier Transform Based Crystal Plasticity Constitutive Model for Predicting Creep and Rupture Lifetime in Metallic Systems
A framework for closed-loop materials design using density functional theory
A method to reconstruct prior beta grain orientations from measured alpha-phase electron backscatter diffraction data
A Private Ledger Architecture Tailored for Secure Workflow Management in Additive Manufacturing Facilities
Accelerated tools for disordered-materials discovery
Application of Prolate Spheroid Stereology to Microtexture Regions in Ti-6Al-4V
Batch Reification Fusion Optimization (BAREFOOT) Framework
Calculation of first principles based thermodynamic and kinetic materials properties using CASM
Data Science and Informatics Tools for Accelerated Materials Innovation
Foundations and Applications of DAMASK
LAMMPS as a tool in materials modeling workflows
PRISMS-PF – A High Performance Phase-Field Modeling Framework to Simulate Microstructure Evolution
Prisms-plasticity: An Open-Source Crystal Plasticity Finite Element Software
The Materials Commons 2.0: A Collaboration Platform and Information Repository for the Global Materials Community
Tools for microstructural analysis using computer vision and machine learning

Questions about ProgramMaster? Contact programming@programmaster.org