
Internship 2026 – Data Science, Machine Learning/AI
Ekimetrics
internship
Posted on:
Location Type: Hybrid
Location: Paris • France
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Job Level
Tech Stack
About the role
- Monitor the state of the art in machine learning broadly, with particular focus on deep learning.
- Conduct research within the Innovation department.
- Follow coding best practices to ensure solutions can be industrialized together with our Solution experts.
- Share your knowledge internally by providing expert support.
Requirements
- Currently completing a final-year internship as part of a top engineering school or a Master 2 program, with strong knowledge of machine learning.
- Experience with development methodologies and best practices: unit testing, version control.
- Advanced skills in Python.
- Proficiency with PyTorch, NumPy, and scikit-learn.
- Knowledge of deep learning.
- Solid background in probability, mathematics, and statistics.
- Experience with interpretability/explainability methods is a plus.
- Fluent English.
Benefits
- Access to the EkiA training catalogue, which includes programs to build your skills on our solutions and business domains, learner pathways on our digital platform, and programs focused on our priority topics, including environmental awareness through AXA’s Climate School.
- A rich cultural and social life: sporting, artistic, musical, gaming, charitable and engagement activities — from our private gym to art exhibitions, video games and concerts, and CSR challenges on the Vendredi platform.
- Numerous events and seminars to stay connected with your community.
- Modern offices in a vibrant district in central Paris (Grands Boulevards).
- A flexible remote-work policy.
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
machine learningdeep learningPythonPyTorchNumPyscikit-learnunit testingversion controlprobabilitystatistics
Soft Skills
expert supportknowledge sharing
Certifications
Master 2 program