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The aim of this project is to design de novo proteins that can sense and manipulate the plasma membrane which is critical for cells to execute important physiological functions, e.g., cell motility, endocytosis. In collaboration with the experimentalists, we designed different protein structures and performed preliminary validation using full atom molecular dynamic simulations. In this way, we could assess whether the predicted protein–membrane interactions were capable of driving membrane curvature. After confirming the design’s behavior through in-silico simulations, we subsequently validated it using in-vitro experiments.
As a research scientist intern, you will work closely with an assigned mentor and will analyze the already collected data by building your own codes or using standard tools for analyzing trajectories from atomistic simulations. You will contribute to designing the analysis and making improvements to the current status of the project. You will also be expected to contribute to write a research report or paper on your internship project and present your work at internal research meetings and external workshops and/or conferences.
- Background in Computational Biochemistry, Computer Science, Machine Learning, Bioinformatics, or a related field.
- Proficiency in Python,and technologies like TensorFlow, PyTorch.
- Familiarity with high-performance computing environments,and DevOps tools (GitHub Actions).
- Proficiency in test-driven development practices to ensure robust and scalable workflows.
- Proven success in collaborating across disciplines to deliver innovative solutions.
- Deep knowledge of computational biology, biochemistry, and/or materials science