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πŸ”’ Enable secure federated autoregressive inference for multiple parties using a shared model while keeping private inputs confidential.

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πŸ€– Mimir - Keep Secrets Safe While Collaborating

πŸ“₯ Download Mimir

Download Mimir

Welcome to Mimir! This software allows multiple parties to work together securely without sharing sensitive information. With Mimir, you can collaborate on advanced models while keeping your data safe.

πŸš€ Getting Started

To use Mimir, follow these simple steps. It only takes a few minutes to get started!

1. Check System Requirements

Before you download, make sure your computer meets the following requirements:

  • Operating System: Windows 10 or later, or any Linux distribution
  • RAM: At least 8 GB
  • Disk Space: Minimum 500 MB of free space
  • Network: Stable internet connection

2. Visit the Release Page

Go to our Releases page to find the latest version. This page contains all necessary files for download.

3. Download the Software

On the Releases page:

  • Look for the most recent version of Mimir.
  • Click on it to see the available files.
  • Select the appropriate file for your operating system.
  • Click on the file to start downloading.

4. Install Mimir

Once the download completes:

  • For Windows:

    • Double-click the downloaded .exe file.
    • Follow the on-screen instructions to complete the installation.
  • For Linux:

    • Open a terminal window.
    • Navigate to the folder where you downloaded the file.
    • Run the command sh Mimir-installer.sh (or the respective shell script) to install the application.

5. Launch Mimir

After installation:

  • On Windows, find Mimir in your Start menu or on your desktop.
  • On Linux, you can run Mimir by typing Mimir in the terminal.

You are now ready to collaborate!

πŸ“š Features of Mimir

Mimir includes various useful features to enhance your collaborative experience:

  • Secure Collaboration: Work with others without sharing sensitive prompts or models.
  • Multiparty Computation: Enables different parties to compute joint results while keeping their data private.
  • Trusted Execution Environments: Protects your data during processing, ensuring it never leaves a secure zone.
  • User-Friendly Interface: Simple design makes it easy to navigate, even for new users.
  • Documentation: Comprehensive guides and resources are available within the application.

πŸ› οΈ How to Use Mimir

To get the most out of Mimir:

  1. Set Up Your Project:

    • Create a new project within the app.
    • Define the parameters, models, and any collaboration settings.
  2. Invite Collaborators:

    • Share secure access links with your team members.
    • Collaborators can join without needing access to sensitive data.
  3. Run Your Models:

    • Start your machine learning models and let Mimir handle the privacy.
    • Monitor performance through the dashboard.

πŸ”§ Troubleshooting

If you run into issues, try the following:

  • Installation Problems: Ensure you meet the system requirements.
  • Collaboration Issues: Check your internet connection and access permissions.
  • Performance: Close unused applications to free up system resources.

For more help, consult the in-app documentation or visit our FAQ section.

βœ‰οΈ Get Support

For additional support, open an issue on our GitHub page, or contact our support team directly.

Your feedback helps us improve. Feel free to share your thoughts or suggestions.

πŸ”— Additional Links

🎯 Conclusion

Mimir empowers you to work securely and collaboratively. Download now to experience the future of privacy-preserving AI!

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