A 2-month in-person fellowship program for talented data scientists worldwide to work on real-world data science projects for social good initiatives in Munich. Supported by the Munich Center for Machine Learning (MCML), fellows will collaborate in interdisciplinary teams to develop data-driven solutions for impactful social challenges.
Target Audience: Students and recent graduates (Bachelor's to PhD) from diverse scientific backgrounds (data science, computer science, statistics, social sciences, natural sciences).
Geographic Eligibility: Global (applicants from abroad are welcome).
Tangible Benefit: Full-time scholarship of approximately €1,500 per month that could cover accommodation for the duration of the fellowship. Hands-on project experience, mentorship from industry experts, and an educational lecture series.
DEADLINE: April 24, 2026.
EVENT DATE: August 3 – October 2, 2026.
Location : Munich, Germany
Categories : Machine Learning . Personal Growth
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