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Welcome to the PhasorIdentifier wiki!
Hello and welcome to the GitHub Wiki for our phasro-FLIM open-source project! We're thrilled to have you here and excited to share this space with you. This wiki is designed to be a helpful resource for anyone looking to dive deeper into the vagaries of Fluorescence Lifetime Imaging phasor analysis. We understand that sometimes the README might not cover all the details, so this wiki is here to bridge that gap and provide you with even more information.
Before we get started, let me introduce myself. I am a PhD candidate in Nanoscience with a extensive background in atomistic simulation. I am a passionate researchers dedicated to building and maintaining applied projects. My goal is to make PhasorIdentifier as accessible and useful as possible. In our group, we believe in the power of open-source collaboration and are grateful to have you as part of our community.
The README is a great place to start if you're new to our project. It provides essential information on how to get started, set up your environment, and start using our software. However, we know that no matter how detailed it is, there may still be questions, or you might have unique use cases.
This Wiki is thought as a dynamic and collaborative space where you can find additional documentation, guides, and resources related to our project. Feel free to browse through the various sections and pages. If you can't find what you're looking for, don't hesitate to let us know!
We value your input and are always striving to make our project better. If you come across any ambiguities, find room for improvement, or have suggestions for additional features, we would love to hear from you. Please consider contributing to our project by:
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Documenting: If you encounter any parts of the project that aren't clear, you're encouraged to create or enhance documentation in this Wiki. This way, you can help other users who may have the same questions.
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Extending: Our project is open for integration with various Machine Learning libraries or further extensions to enhance its capabilities. If you have ideas or code contributions that align with our project's goals, we welcome your collaboration.
If you're interested in contributing or have any questions, don't hesitate to reach out to us through GitHub issues or pull requests. We believe in the power of community-driven development and would be more than happy to have you on board.
Thank you for being a part of our journey. Let's work together to make our project even better!
Happy coding! 🚀✨