NIH | National Cancer Institute | NCI Wiki  

Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.
Agenda (click below for the workshop agenda): 

Table of Contents

Table of Contents
maxLevel2
minLevel2

2018 CANDLE Workshop

  • Agenda


View file
nameCANDLE Workshop Agenda 2.21-2.22.2018.docx
height250

  • Presentations

:
Info
iconfalse

Introduction to Machine & Deep Learning

Frontiers for Deep Learning and Cancer - Eric Stahlberg, Frederick National Laboratory for Cancer Research:

View file
nameDay 1 AM - Stahlberg.pdf
height150

Introduction to Deep Learning - Rick Stevens, Argonne National Laboratory:

View file
nameDay 1 AM - Stevens.pdf
height150

Deep Learning: Perspectives from the NIH

Accelerating Image Analysis Workflows Using Deep Learning - Yanling Liu, Frederick National Laboratory for Cancer Research:

View file
nameDay 1 AM - Liu.pdf
height150
                 

The Impact of Deep Learning on Radiology - Ronald Summers, Diagnostic Radiology Department, NIH Clinical Center: 

View file
nameDay 1 AM - Summers.pdf
height150

Applying Deep Learning to Big Data: Perspectives from the Department of Energy with Applications in Health

Cellular Level Deep Learning - Fangfang Xia, Argonne National Laboratory:

Molecular Level Deep Learning - Brian Van Essen, Lawrence Livermore National Laboratory: 

Population Level Deep Learning - Arvind Ramanathan, Oak Ridge National Laboratory: 

View file
nameDay 1 PM - Ramanathan.pdf
height150

Getting Started With CANDLE - Rick Stevens, Argonne National Laboratory:

View file
nameDay 2 AM - Stevens.pdf
height150

Overview of CANDLE Layers: Workflows, Scripting, and Parallelization Strategies

Workflows - Justin Wozniak, Argonne National Laboratory:

View file
nameDay 2 PM - Wozniak.pdf
height150

Scripting - Tom Brettin, Argonne National Laboratory:

Parallelization Strategies - Brian Van Essen, Lawrence Livermore National Laboratory:

Preparing Data for Deep Learning

Arvind Ramanathan, Oak Ridge National Laboratory:

Fangfang Xia, Argonne National Laboratory:

Brian Van Essen, Lawrence Livermore National Laboratory:

Interactive Session with CANDLE Developers

Hyperparameter Optimization and Uncertainty Quantification - Justin Wozniak, Argonne National Laboratory:

Installing CANDLE into Other Environments - George Zaki, Frederick National Laboratory for Cancer Research:

View file
nameDay 2 PM - Zaki.pdf
height150



Round Rectangle
bgcolor#E3F3FF

Event Recap - CANDLE Workshop @ NIH, 2/21/18-2/22/18

With over 150 attendees representing 22 NIH institutes, government collaborators, industry, and academia, the February 2018 CANDLE Workshop at NIH proved to be a truly engaging and successful event!

Throughout the two-day workshop, many different perspectives on machine and deep learning were explored along with their applications to cancer research and advancing precision oncology.

Image Added

The first day included a general overview of machine and deep learning along with applications of deep learning in health from the NIH and Department of Energy perspectives.

Image Added

The second day included hands-on training of deep learning along with tutorials on preparing data for deep learning and installing the CANDLE deep learning framework into other environments.

Image Added

Some of the common exploratory areas of interest included imaging analysis, next-generation sequencing, genomics and genetics, text analysis, and big data.  

As the majority of experience using machine and deep learning was limited within the workshop, this event provided the opportunity for participants to progress from a limited understanding of ML/DL technologies, to having the ability to train deep learning models with their own data sets, and on their own computers!

Image Added

As an outcome of this workshop, future events are already in the works which will aim to address the diverse set of challenges and opportunities raised within the community, and to meet the increasing demands for deep learning technology in present-day research.

Image Added

  • Workshop Recordings

Workshop Recordings:
**Note: The WebEx ARF player is required to playback the recording.  Download the ARF player HERE: https://cbiit.webex.com/client/31.11.11/nbr2player.msi
2018
  • Workshop Presenters

:
•            
•            
•            
•            
•            
•            
•            
•            
•            
•            

2017 CANDLE Workshop

Artifacts:

LINK: 

View file
nameCANDLE Workshop Agenda 4.18-4.19.2017.docx
height250

Info
iconfalse

Event Recap:

With over 150 attendees representing 22 NIH institutes, government collaborators, industry, and academia, the February CANDLE Workshop at NIH proved to be a truly engaging and successful event!

Throughout the two-day workshop, many different perspectives on machine and deep learning were explored along with their applications to cancer research and advancing precision oncology.

Image Removed

 

The first day included a general overview of machine and deep learning along with applications of deep learning in health from the NIH and Department of Energy perspectives.

Image Removed

The second day included hands-on training of deep learning along with tutorials of how to prepare data for deep learning and how to install the CANDLE deep learning framework into other environments.

Image Removed

Some of the common exploratory areas of interest included imaging analysis, next-generation sequencing, genomics and genetics, text analysis, and big data.  

As most workshop participants did not have much previous experience with machine or deep learning, this event provided the opportunity for participants to progress from little or no understanding of ML/DL technologies, to having the ability to train deep learning models with their own data sets, and on their own computers and laptops!

Image Removed

As an outcome of this workshop, future events are already in the works which will aim to address the diverse set of challenges raised within the community, and to meet the increasing demands deep learning technology in present-day research.

Image Removed