Milad Ramezankhani's repositories

Data-driven-MFPINNs

This repository contains the code and data accompanying the paper entitled "A Data-driven Multi-fidelity Physics-informed Learning Framework for Smart Manufacturing: A Composites Processing Case Study"

Language:PythonLicense:MITStargazers:4Issues:0Issues:0

SequentialMetaTransferPINNs

This repository presents a JAX implementation of the paper entitled "Meta-Transfer Sequential Learning of Physics-Informed Neural Networks in Advanced Composites Manufacturing". The proposed framework integrates a sequential learning strategy with the meta-transfer learning approach to make the training of PINNs in highly nonlinear systems

Language:Jupyter NotebookLicense:MITStargazers:4Issues:0Issues:0

Vibration-PINNs

This repository presents a series of analysis on the performance of Physics-Informed Neural Networks in vibrational systems. The limitation of PINNs in learning highly nonlinear systems with long temporal domains is discussed and the potential solutions are investigated.

HMC-PINNs

This repository presents a JAX implementation of BPINN model developed for curing composite materials. See below for more details: https://open.library.ubc.ca/soa/cIRcle/collections/ubctheses/24/items/1.0432643

Language:Jupyter NotebookLicense:MITStargazers:1Issues:0Issues:0

SAMPE2023_Tutorial

The slides and the Python code of the tutorial entitled "When Data-efficient Machine Learning Comes to the Rescue: An AI-based Optimization Framework for Advanced Manufacturing" presented as part of SAMPE 2023 conference in Seattle, WA.

Language:Jupyter NotebookLicense:MITStargazers:1Issues:0Issues:0

ATL

An Active Transfer Learning (ATL) Framework for Smart Manufacturing with Limited Data: Case Study on Material Transfer in Composites Processing

Language:Jupyter NotebookStargazers:0Issues:0Issues:0
Stargazers:0Issues:1Issues:0
Stargazers:0Issues:0Issues:0
License:MITStargazers:0Issues:0Issues:0

MCDM_DOE_UBC_ENGR_589

Python codes for the course Multicriteria Decision-Making and Design of Experiments.

Language:Jupyter NotebookLicense:MITStargazers:0Issues:0Issues:0

meta-transfer-learning

TensorFlow and PyTorch implementation of "Meta-Transfer Learning for Few-Shot Learning" (CVPR2019)

License:MITStargazers:0Issues:0Issues:0

miladramzy.github.io

A beautiful, simple, clean, and responsive Jekyll theme for academics

Language:HTMLLicense:MITStargazers:0Issues:0Issues:0

opendata

SkillCorner Open Data with 9 matches of broadcast tracking data.

License:MITStargazers:0Issues:0Issues:0