Search Results for author: Ilkay Altintas

Found 10 papers, 1 papers with code

Multimodal Wildland Fire Smoke Detection

no code implementations29 Dec 2022 Siddhant Baldota, Shreyas Anantha Ramaprasad, Jaspreet Kaur Bhamra, Shane Luna, Ravi Ramachandra, Eugene Zen, Harrison Kim, Daniel Crawl, Ismael Perez, Ilkay Altintas, Garrison W. Cottrell, Mai H. Nguyen

Research has shown that climate change creates warmer temperatures and drier conditions, leading to longer wildfire seasons and increased wildfire risks in the United States.

Management

Towards a Dynamic Composability Approach for using Heterogeneous Systems in Remote Sensing

no code implementations13 Nov 2022 Ilkay Altintas, Ismael Perez, Dmitry Mishin, Adrien Trouillaud, Christopher Irving, John Graham, Mahidhar Tatineni, Thomas DeFanti, Shawn Strande, Larry Smarr, Michael L. Norman

In this paper, we present a novel approach for using composable systems in the intersection between scientific computing, artificial intelligence (AI), and remote sensing domain.

FIgLib & SmokeyNet: Dataset and Deep Learning Model for Real-Time Wildland Fire Smoke Detection

no code implementations16 Dec 2021 Anshuman Dewangan, Yash Pande, Hans-Werner Braun, Frank Vernon, Ismael Perez, Ilkay Altintas, Garrison W. Cottrell, Mai H. Nguyen

Early detection of fire ignitions from initial smoke can assist the response to such fires before they become difficult to manage.

Cardiac MRI Image Segmentation for Left Ventricle and Right Ventricle using Deep Learning

no code implementations17 Sep 2019 Bosung Seo, Daniel Mariano, John Beckfield, Vinay Madenur, Yuming Hu, Tony Reina, Marcus Bobar, Mai H. Nguyen, Ilkay Altintas

The goal of this project is to use magnetic resonance imaging (MRI) data to provide an end-to-end analytics pipeline for left and right ventricle (LV and RV) segmentation.

Data Augmentation Image Segmentation +1

Workflow-Driven Distributed Machine Learning in CHASE-CI: A Cognitive Hardware and Software Ecosystem Community Infrastructure

no code implementations26 Feb 2019 Ilkay Altintas, Kyle Marcus, Isaac Nealey, Scott L. Sellars, John Graham, Dima Mishin, Joel Polizzi, Daniel Crawl, Thomas DeFanti, Larry Smarr

The advances in data, computing and networking over the last two decades led to a shift in many application domains that includes machine learning on big data as a part of the scientific process, requiring new capabilities for integrated and distributed hardware and software infrastructure.

BIG-bench Machine Learning Management

Ten Simple Rules for Reproducible Research in Jupyter Notebooks

2 code implementations13 Oct 2018 Adam Rule, Amanda Birmingham, Cristal Zuniga, Ilkay Altintas, Shih-Cheng Huang, Rob Knight, Niema Moshiri, Mai H. Nguyen, Sara Brin Rosenthal, Fernando Pérez, Peter W. Rose

For example, what are the technical and non-technical barriers to reproducible computational studies?

Other Computer Science Computers and Society

Deep Learning on Operational Facility Data Related to Large-Scale Distributed Area Scientific Workflows

no code implementations17 Apr 2018 Alok Singh, Eric Stephan, Malachi Schram, Ilkay Altintas

In this vision paper, we outline our approach to leveraging Deep Learning algorithms to discover solutions to unique problems that arise in a system with computational infrastructure that is spread over a wide area.

Anomaly Detection Distributed Computing

Modular Resource Centric Learning for Workflow Performance Prediction

no code implementations15 Nov 2017 Alok Singh, Mai Nguyen, Shweta Purawat, Daniel Crawl, Ilkay Altintas

The central idea of this work is to train resource-centric machine learning agents to capture complex relationships between a set of program instructions and their performance metrics when executed on a specific resource.

BIG-bench Machine Learning Distributed Computing +1

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