ml-visuals
π¨ ML Visuals contains figures and templates which you can reuse and customize to improve your scientific writing.
Science Score: 54.0%
This score indicates how likely this project is to be science-related based on various indicators:
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βCITATION.cff file
Found CITATION.cff file -
βcodemeta.json file
Found codemeta.json file -
β.zenodo.json file
Found .zenodo.json file -
βDOI references
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βAcademic publication links
Links to: arxiv.org -
βCommitters with academic emails
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βInstitutional organization owner
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βJOSS paper metadata
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βScientific vocabulary similarity
Low similarity (13.9%) to scientific vocabulary
Keywords
Repository
π¨ ML Visuals contains figures and templates which you can reuse and customize to improve your scientific writing.
Statistics
- Stars: 15,624
- Watchers: 113
- Forks: 1,475
- Open Issues: 39
- Releases: 0
Topics
Metadata Files
README.md
ML Visuals
π£ Stay tuned for significant updates to both the slides and repository.!!!
π£ In the meantime, Join our Discord
ML Visuals is a new collaborative effort to help the machine learning community in improving science communication by providing free professional, compelling and adequate visuals and figures. Currently, we have over 100 figures (all open community contributions). You are free to use the visuals in your machine learning presentations or blog posts. You donβt need to ask permission to use any of the visuals but it will be nice if you can provide credit to the designer/author (author information found in the slide notes). Check out the versions of the visuals below.
This is a project made by the dair.ai community. The latest version of the Google slides can be found in this GitHub repository. Our community members will continue to add more common figures and basic elements in upcoming versions. Think of this as free and open artifacts and templates which you can freely and easily download, copy, distribute, reuse and customize to your own needs.
ML Visuals is now being used to power 100s of figures used by master/PhD students, papers (like this one), among other use cases.
How to Use?
Essentially, we are using Google Slides to maintain all visuals and figures (check the versions below). To add your own custom figures, simply add a new slide and reuse any of the basic visual components (remember to request edit permissions). You can also create your own copy of the slides and customize whatever you like. We encourage authors/designers to add their visuals here and allow others to reuse them. Make sure to include your author information (in the notes section of the slide) so that others can provide credit if they use the visuals elsewhere (e.g. blog/presentations). Also, provide a short description of your visual to help the user understand what it is about and how they can use it. If you need "Edit" permission, just click on the "request edit access" option under the "view only" toolbar (in Google Slides) or send me an email at ellfae@gmail.com.
Downloading a figure from any of the slides is easy. Just click on FileβDownloadβ(choose your format).
If you need help with customizing a figure or have an idea of something that could be valuable to others, we can help. Just open an issue here and we will do our best to come up with the visual. Thanks.
Feel free to reach out to me on Twitter for an invite to our Slack group.
Versions:
How to Contribute?
- You can check out our Project page to see all the ongoing tasks or issues related to this research project. Lookout for the main
ml_visualstag. Issues with thegood first issuetag are good tasks to get started with. - You can also just check the issues tab.
- You can ask anything related to this project in our Slack group
- Slack channel: #ml_visuals
Some ideas for figures to add to the Slides (issue)
- [ ] Linear regression, single-layer neural network
- [ ] Multilayer Perceptron with hidden layer
- [ ] Backpropagation
- [ ] Batch Normalization and alternatives
- [ ] Computational Graphs
- [ ] Dropout
- [ ] CNN - padding, stride, pooling,...
- [ ] LeNet
- [ ] AlexNet
- [ ] VGG
- [ ] GoogleNet
- [ ] ResNet
- [ ] DenseNet
- [ ] Memory Networks
- [ ] RNN
- [ ] Deep RNN
- [ ] Bidirectional RNN
- [ ] GRU
- [ ] LSTM
- [ ] Language RNN models
- [ ] Backpropagation through time
- [ ] Encoder-Decoder Architecture
- [ ] Seq2seq with RNN encoder-decoder
- [ ] Bearm search and other decoding strategies
- [ ] Attention
- [ ] Multi-head attention
- [ ] Self-attention
- [ ] Transformer
- [ ] Word2vec/GloVe/Skip-gram/CBOW/BERT/GPT....
- [ ] Common/Popular CV/NLP Tasks
List adopted from multiple resources including nlpoverview and d2l.ai which both contain a very solid syllabus.
Examples of Visuals

Owner
- Name: DAIR.AI
- Login: dair-ai
- Kind: organization
- Location: Planet Earth
- Website: https://dair-ai.thinkific.com/
- Twitter: dair_ai
- Repositories: 58
- Profile: https://github.com/dair-ai
Democratizing Artificial Intelligence Research, Education, and Technologies
Citation (CITATION.cff)
cff-version: 1.2.0
message: "If you use this resource, please cite it as below."
authors:
- family-names: "Saravia"
given-names: "Elvis"
title: "ML Visuals"
date-released: 2022-12-16
url: "https://github.com/dair-ai/ml-visuals"
preferred-citation:
type: article
authors:
- family-names: "Saravia"
given-names: "Elvis"
month: 12
journal: "https://github.com/dair-ai/ml-visuals"
title: "ML Visuals"
year: 2021
GitHub Events
Total
- Issues event: 20
- Watch event: 2,128
- Issue comment event: 12
- Pull request event: 3
- Fork event: 111
Last Year
- Issues event: 20
- Watch event: 2,128
- Issue comment event: 12
- Pull request event: 3
- Fork event: 111
Committers
Last synced: 8 months ago
Top Committers
| Name | Commits | |
|---|---|---|
| Elvis Saravia | e****e@g****m | 42 |
| Ansh srivastava | 7****a | 1 |
Issues and Pull Requests
Last synced: 6 months ago
All Time
- Total issues: 65
- Total pull requests: 3
- Average time to close issues: 3 months
- Average time to close pull requests: 6 days
- Total issue authors: 59
- Total pull request authors: 3
- Average comments per issue: 0.51
- Average comments per pull request: 0.0
- Merged pull requests: 1
- Bot issues: 0
- Bot pull requests: 0
Past Year
- Issues: 17
- Pull requests: 1
- Average time to close issues: 5 minutes
- Average time to close pull requests: N/A
- Issue authors: 15
- Pull request authors: 1
- Average comments per issue: 0.29
- Average comments per pull request: 0.0
- Merged pull requests: 0
- Bot issues: 0
- Bot pull requests: 0
Top Authors
Issue Authors
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Pull Request Authors
- JasonnnW3000 (2)
- yang-chenyu104 (1)
- ansh-srivastava (1)