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Private-Ai-Resources

Private machine learning progress

Content

About

This is a curated list of resources related to the research and development of private machine learning.

Secure and Private AI Course

Secure Deep Learning

Libraries and Frameworks

General Research

Blogs

Groups

Podcasts

Workshops

Thanks

Maintainers

OpenMined Community

Thanks to members of the OpenMined community who have shared links on slack: @morgangiraud, @jvmancuso

Adding links

If you have any links to add please send a pull request, and we'll take a look. There is so much happening in this space!

private-ai-resources's People

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private-ai-resources's Issues

A better structure?

I'm a little bit confused by subsections Secure Deep Learning and General Research - I think it would make sense to split the awesome-list subsections into current research directions. I propose to split it up into following research directions (partly inspired by the Berkeley view Section 4.2)

  • Secure Enclaves / Trusted Hardware
  • Differential Privacy
  • Adversarial Learning
  • Kryptographie
  • Shared Learning on confidential data

What do you guys think?

Add support Slack channel links to main readme file

Where?

Main readme

Who?

All contributors

What?

Users of this library should have a good idea of where to get support within Slack so that the general channel does not become a place for people dropping software implementation problems. Please add the following section somewhere in your readme:

## Support
For support in using this library, please join the **#lib_private-ai-resources** Slack channel. If you’d like to follow along with any code changes to the library, please join the **#code_private-ai-resources** Slack channel. [Click here to join our Slack community!](https://slack.openmined.org)

When finished, it should look exactly as it does here: https://github.com/OpenMined/.github/blob/master/README-TEMPLATE.md#support

Additional Context

None

More resources

Hi,
This is not really an issue, but more of a pointer to possibly further relevant work that you might want to include to your list.

Here's an entire list of things for "open-source software designed for MPC as well as introductory material ":
https://github.com/rdragos/awesome-mpc

Since I'm working on it and it seems like a good fit in general: The ABY framework for mixed-protocol MPC. Can certainly be used to implement ML solutions, even if that is not explicitly mentioned in the original paper:
https://github.com/encryptogroup/aby

And a work from my colleague, which specifically looked at ML examples and is basically an extension to ABY:
https://eprint.iacr.org/2017/1164

Let me know if you have questions, or if I should just send a pull request...

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