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Internship Opportunities: Machine Learning - Join the Okubo Lab at CIBR!

2025-02-12Page Views:113

About the Lab


The Okubo Lab focuses on data-driven research in neuroscience using modern data science and machine learning tools. In collaboration with multiple laboratories at CIBR, they develop computational models and analytical pipelines to accelerate neuroscience research. We are currently seeking a passionate and talented Algorithm Intern to participate in projects analyzing neuroscience data.


For more information about the lab, please visit: https://cibr.ac.cn/science/team/detail/975?language=en


Position and Requirements


Machine Learning Internship


Responsibilities:


Participate in research projects, including but not limited to: evaluating the performance of various machine learning algorithms (including deep learning and others) on diverse datasets, such as animal behavior videos and neural activity recordings.


Qualifications:


1. Master’s degree or above (including current Master’s students); major in computational neuroscience, computer science, engineering, applied mathematics, or a related field.

2. Excellent written and verbal communication skills in English (daily communication with the PI will be conducted in English).

3. Strong interpersonal and communication skills, with the ability to collaborate effectively with other researchers and staff.

4. Familiarity with data structures and algorithms, and strong programming skills in Python and deep learning frameworks (TensorFlow or PyTorch).

5. Ability to commit to full-time work for at least three months.


Benefits:

1. Internship stipend provided in accordance with regulations set by the Educational Affairs Department of CIBR.

2. Assistance with accommodation and other personal matters.


Application Procedure:


Applicants should send the application materials (CV + recommendation letter) to the following email addresses: tatsuo.okubo@cibr.ac.cn and liuyixuan@cibr.ac.cn, with the email subject titled as “Name + Position Applied” .