pytorch-practical-training

pratrical crash course on pytorch by reproducing some published biology-related deep-learning models

https://github.com/sib-swiss/pytorch-practical-training

Science Score: 36.0%

This score indicates how likely this project is to be science-related based on various indicators:

  • CITATION.cff file
  • codemeta.json file
    Found codemeta.json file
  • .zenodo.json file
    Found .zenodo.json file
  • DOI references
  • Academic publication links
  • Committers with academic emails
    1 of 1 committers (100.0%) from academic institutions
  • Institutional organization owner
  • JOSS paper metadata
  • Scientific vocabulary similarity
    Low similarity (10.4%) to scientific vocabulary

Keywords

bioinformatics deep-learning pytorch training-materials
Last synced: 11 months ago · JSON representation

Repository

pratrical crash course on pytorch by reproducing some published biology-related deep-learning models

Basic Info
  • Host: GitHub
  • Owner: sib-swiss
  • License: cc-by-4.0
  • Language: Jupyter Notebook
  • Default Branch: master
  • Homepage:
  • Size: 233 MB
Statistics
  • Stars: 17
  • Watchers: 4
  • Forks: 4
  • Open Issues: 0
  • Releases: 2
Topics
bioinformatics deep-learning pytorch training-materials
Created over 2 years ago · Last pushed over 1 year ago
Metadata Files
Readme License Zenodo

README.md

Practical dip into deep learning - a PyTorch short crash-course

This repository regroups works on the "Practical dip into deep learning - a PyTorch short crash-course" course of the SIB.

Its goal is to propose a practical introduction to pytorch and deep-learning models by reproducing or getting inspiration from a number published deep-learning models in the field of biology.

This course eschew the theory (which is covered in another SIB course) and focuses instead on the details of the implementation.

pre-requisites

The course is targeted to life scientists who are already familiar and fluent with the Python programming language and who have a solid knowledge in machine learning.

In order to follow the course you need to have installed python and jupyter notebooks, as well as a number of prerequisite libraries.

See the intructions on installing prerequisite libraries of more details.

course organization

The course is organized in several, numbered, jupyter notebooks, each corresponding to a model which interleaves code demo, and exercises.

The course does not require any particular expertise with jupyter notebooks to be followed, but if it is the first time you encounter them we recommend this gentle introduction.

Solutions to each practical can be found in the solutions/ folder and should be loadable directly in the jupyter notebook themselves.

Note also the pytorchtools.py file which contain some early stopping utilities.

directory structure

  • data : contains the datasets
  • images : images generated or used in the notebooks
  • drafts : some drafts notebooks, with many failed attempts...
  • solutions: exercise solutions

Owner

  • Name: SIB Swiss Institute of Bioinformatics
  • Login: sib-swiss
  • Kind: organization
  • Location: Switzerland

GitHub Events

Total
  • Create event: 2
  • Release event: 1
  • Issues event: 1
  • Watch event: 7
  • Issue comment event: 2
  • Push event: 10
  • Fork event: 2
Last Year
  • Create event: 2
  • Release event: 1
  • Issues event: 1
  • Watch event: 7
  • Issue comment event: 2
  • Push event: 10
  • Fork event: 2

Committers

Last synced: over 2 years ago

All Time
  • Total Commits: 4
  • Total Committers: 1
  • Avg Commits per committer: 4.0
  • Development Distribution Score (DDS): 0.0
Past Year
  • Commits: 4
  • Committers: 1
  • Avg Commits per committer: 4.0
  • Development Distribution Score (DDS): 0.0
Top Committers
Name Email Commits
WandrilleD w****n@u****h 4
Committer Domains (Top 20 + Academic)

Issues and Pull Requests

Last synced: over 1 year ago

All Time
  • Total issues: 2
  • Total pull requests: 0
  • Average time to close issues: 12 months
  • Average time to close pull requests: N/A
  • Total issue authors: 2
  • Total pull request authors: 0
  • Average comments per issue: 3.0
  • Average comments per pull request: 0
  • Merged pull requests: 0
  • Bot issues: 0
  • Bot pull requests: 0
Past Year
  • Issues: 0
  • Pull requests: 0
  • Average time to close issues: N/A
  • Average time to close pull requests: N/A
  • Issue authors: 0
  • Pull request authors: 0
  • Average comments per issue: 0
  • Average comments per pull request: 0
  • Merged pull requests: 0
  • Bot issues: 0
  • Bot pull requests: 0
Top Authors
Issue Authors
  • matkozak (1)
  • pszgaspar (1)
Pull Request Authors
Top Labels
Issue Labels
Pull Request Labels