Improving Reproducible Deep Learning Workflows with DeepDIVA

Alberti, Michele; Pondenkandath, Vinaychandran; Vogtlin, Lars; Gygli, Marcel; Ingold, Rolf; Liwicki, Marcus (14 June 2019). Improving Reproducible Deep Learning Workflows with DeepDIVA In: 2019 6th Swiss Conference on Data Science (SDS) (pp. 13-18). New York: IEEE 10.1109/SDS.2019.00-14

[img] Text
Improving_Reproducible_Deep_Learning_Workflows_with_DeepDIVA.pdf - Published Version
Restricted to registered users only
Available under License Publisher holds Copyright.

Download (485kB) | Request a copy

The field of deep learning is experiencing a trend towards producing reproducible research. Nevertheless, it is still often a frustrating experience to reproduce scientific results. This is especially true in the machine learning community, where it is considered acceptable to have black boxes in your experiments. We present DeepDIVA, a framework designed to facilitate easy experimentation and their reproduction. This framework allows researchers to share their experiments with others, while providing functionality that allows for easy experimentation, such as: boilerplate code, experiment management, hyper-parameter optimization, verification of data integrity and visualization of data and results. Additionally, the code of DeepDIVA is well-documented and supported by several tutorials that allow a new user to quickly familiarize themselves with the framework.

Item Type:

Conference or Workshop Item (Paper)

Division/Institute:

Business School > Institute for Public Sector Transformation > Data and Infrastructure
Business School

Name:

Alberti, Michele;
Pondenkandath, Vinaychandran;
Vogtlin, Lars;
Gygli, Marcel;
Ingold, Rolf and
Liwicki, Marcus

Subjects:

Q Science > QA Mathematics > QA75 Electronic computers. Computer science

ISBN:

978-1-7281-3105-4

Publisher:

IEEE

Language:

English

Submitter:

Marcel Gygli

Date Deposited:

10 Oct 2023 15:52

Last Modified:

10 Oct 2023 15:52

Publisher DOI:

10.1109/SDS.2019.00-14

ARBOR DOI:

10.24451/arbor.20053

URI:

https://arbor.bfh.ch/id/eprint/20053

Actions (login required)

View Item View Item
Provide Feedback