Alert button
Picture for Nathaniel A. Trask

Nathaniel A. Trask

Alert button

Design of experiments for the calibration of history-dependent models via deep reinforcement learning and an enhanced Kalman filter

Add code
Bookmark button
Alert button
Sep 27, 2022
Ruben Villarreal, Nikolaos N. Vlassis, Nhon N. Phan, Tommie A. Catanach, Reese E. Jones, Nathaniel A. Trask, Sharlotte L. B. Kramer, WaiChing Sun

Figure 1 for Design of experiments for the calibration of history-dependent models via deep reinforcement learning and an enhanced Kalman filter
Figure 2 for Design of experiments for the calibration of history-dependent models via deep reinforcement learning and an enhanced Kalman filter
Figure 3 for Design of experiments for the calibration of history-dependent models via deep reinforcement learning and an enhanced Kalman filter
Figure 4 for Design of experiments for the calibration of history-dependent models via deep reinforcement learning and an enhanced Kalman filter
Viaarxiv icon

Machine learning structure preserving brackets for forecasting irreversible processes

Add code
Bookmark button
Alert button
Jun 23, 2021
Kookjin Lee, Nathaniel A. Trask, Panos Stinis

Figure 1 for Machine learning structure preserving brackets for forecasting irreversible processes
Figure 2 for Machine learning structure preserving brackets for forecasting irreversible processes
Figure 3 for Machine learning structure preserving brackets for forecasting irreversible processes
Figure 4 for Machine learning structure preserving brackets for forecasting irreversible processes
Viaarxiv icon

Partition of unity networks: deep hp-approximation

Add code
Bookmark button
Alert button
Jan 27, 2021
Kookjin Lee, Nathaniel A. Trask, Ravi G. Patel, Mamikon A. Gulian, Eric C. Cyr

Figure 1 for Partition of unity networks: deep hp-approximation
Figure 2 for Partition of unity networks: deep hp-approximation
Figure 3 for Partition of unity networks: deep hp-approximation
Figure 4 for Partition of unity networks: deep hp-approximation
Viaarxiv icon

A physics-informed operator regression framework for extracting data-driven continuum models

Add code
Bookmark button
Alert button
Sep 25, 2020
Ravi G. Patel, Nathaniel A. Trask, Mitchell A. Wood, Eric C. Cyr

Figure 1 for A physics-informed operator regression framework for extracting data-driven continuum models
Figure 2 for A physics-informed operator regression framework for extracting data-driven continuum models
Figure 3 for A physics-informed operator regression framework for extracting data-driven continuum models
Figure 4 for A physics-informed operator regression framework for extracting data-driven continuum models
Viaarxiv icon

A block coordinate descent optimizer for classification problems exploiting convexity

Add code
Bookmark button
Alert button
Jun 17, 2020
Ravi G. Patel, Nathaniel A. Trask, Mamikon A. Gulian, Eric C. Cyr

Figure 1 for A block coordinate descent optimizer for classification problems exploiting convexity
Figure 2 for A block coordinate descent optimizer for classification problems exploiting convexity
Figure 3 for A block coordinate descent optimizer for classification problems exploiting convexity
Figure 4 for A block coordinate descent optimizer for classification problems exploiting convexity
Viaarxiv icon

Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint

Add code
Bookmark button
Alert button
Dec 10, 2019
Eric C. Cyr, Mamikon A. Gulian, Ravi G. Patel, Mauro Perego, Nathaniel A. Trask

Figure 1 for Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint
Figure 2 for Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint
Figure 3 for Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint
Figure 4 for Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint
Viaarxiv icon