-
Notifications
You must be signed in to change notification settings - Fork 81
Commit
This commit does not belong to any branch on this repository, and may belong to a fork outside of the repository.
bump version to 4.0.0, update changelog and citation files
- Loading branch information
Showing
5 changed files
with
80 additions
and
62 deletions.
There are no files selected for viewing
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -1,58 +1,71 @@ | ||
{ | ||
"creators": [ | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van Kuppevelt, Dafne" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Meijer, Christiaan" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Huber, Florian", | ||
"orcid": "0000-0002-3535-9406" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van Hees, Vincent", | ||
"orcid": "0000-0003-0182-9008" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Solino Fernandez, Breixo" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Bos, Patrick" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Spaaks, Jurriaan" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Kuzak, Mateusz", | ||
"orcid": "0000-0003-0087-6021" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Hidding, Johan" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van der Ploeg, Atze" | ||
} | ||
], | ||
"description": "The goal of mcfly is to ease the use of deep learning technology for time series classification. The advantage of deep learning is that it can handle raw data directly, without the need to compute signal features. Deep learning does not require expert domain knowledge about the data, and has been shown to be competitive with conventional machine learning techniques. As an example, you can apply mcfly on accelerometer data for activity classification.", | ||
"keywords": [ | ||
"machine learning", | ||
"deep learning", | ||
"time series", | ||
"automated machine learning" | ||
], | ||
"license": { | ||
"id": "Apache-2.0" | ||
}, | ||
"title": "mcfly: deep learning for time series" | ||
} | ||
{ | ||
"creators": [ | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van Kuppevelt, Dafne" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Meijer, Christiaan", | ||
"orcid": "0000-0002-5529-5761" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Huber, Florian", | ||
"orcid": "0000-0002-3535-9406" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van Hees, Vincent", | ||
"orcid": "0000-0003-0182-9008" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Solino Fernandez, Breixo" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Bos, Patrick" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Spaaks, Jurriaan" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Kuzak, Mateusz", | ||
"orcid": "0000-0003-0087-6021" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Hidding, Johan" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "van der Ploeg, Atze" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Lüken, Malte", | ||
"orcid": "0000-0001-7095-203X" | ||
}, | ||
{ | ||
"affiliation": "Netherlands eScience Center", | ||
"name": "Lyashevska, Olga", | ||
"orcid": "0000-0002-8686-8550" | ||
} | ||
], | ||
"description": "The goal of mcfly is to ease the use of deep learning technology for time series classification. The advantage of deep learning is that it can handle raw data directly, without the need to compute signal features. Deep learning does not require expert domain knowledge about the data, and has been shown to be competitive with conventional machine learning techniques. As an example, you can apply mcfly on accelerometer data for activity classification.", | ||
"keywords": [ | ||
"machine learning", | ||
"deep learning", | ||
"time series", | ||
"automated machine learning" | ||
], | ||
"license": { | ||
"id": "Apache-2.0" | ||
}, | ||
"publication_date": "2022-12-21", | ||
"title": "mcfly: deep learning for time series", | ||
"version": "4.0.0" | ||
} |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters