Barista - a graphical tool for designing and training deep neural networksOpen Access

Klemm S, Scherzinger A, Drees D, Jiang X

Other scientific publication

Abstract

In recent years, the importance of deep learning has significantly increased in pattern recognition, computer vision, and artificial intelligence research, as well as in industry. However, despite the existence of multiple deep learning frameworks, there is a lack of comprehensible and easy-to-use high-level tools for the design, training, and testing of deep neural networks (DNNs). In this paper, we introduce Barista, an open-source graphical high-level interface for the Caffe deep learning framework. While Caffe is one of the most popular frameworks for training DNNs, editing prototext files in order to specify the net architecture and hyper parameters can become a cumbersome and error-prone task. Instead, Barista offers a fully graphical user interface with a graph-based net topology editor and provides an end-to-end training facility for DNNs, which allows researchers to focus on solving their problems without having to write code, edit text files, or manually parse logged data.

Details about the publication

StatusPublished
Release year2018
Language in which the publication is writtenEnglish
Link to the full texthttps://arxiv.org/abs/1802.04626
KeywordsComputer Science; Learning; Statistics; Machine Learning

Authors from the University of Münster

Drees, Dominik
Professur für Praktische Informatik (Prof. Jiang)
Jiang, Xiaoyi
Professur für Praktische Informatik (Prof. Jiang)
Klemm, Sören
Professur für Praktische Informatik (Prof. Jiang)
Scherzinger, Aaron
Professorship for applied computer science