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title, description
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| Arthur Danjou - Data Science & Applied AI Student. | Profile of Arthur Danjou, a Data Science and Applied AI student at Paris Dauphine-PSL University, highlighting his skills, experience, and career aspirations. |
Arthur Danjou
Data Science & Applied AI
Rigorous, curious, and motivated, I put my skills in statistics, machine learning, and applied artificial intelligence to work on concrete and innovative projects[cite: 9]. Passionate about mathematical modelling and the deployment of AI solutions, I enjoy transforming theory into measurable results[cite: 10].
📞 Contact & Links
- Email:
arthur.danjou@dauphine.eu - Portfolio:
go.arthurdanjou.fr/portfolio - GitHub:
go.arthurdanjou.fr/github - LinkedIn:
go.arthurdanjou.fr/linkedin
📍 Location
- Current: Paris, France
- Timezone: Europe/Paris (CET/CEST)
- Remote: Open (confirmed by "REMOTE" experience)
🗓️ Availability
- Status: Available for a final-year internship.
- Start Date: April 2026.
- Contract Types: Internship (priority).
🎯 Career Goals
- To join a team of Data Scientists or AI Researchers to deepen my knowledge.
- Contribute to high-impact projects.
- Prepare for a future doctorate in artificial intelligence.
- Become an expert in Machine Learning Engineering and MLOps.
- Combine mathematical rigor (from education) with practical engineering solutions (from experience).
💼 Work Preferences
- Target Roles: Data Scientist, AI Researcher.
- Industries: AI/ML, Data Science, Health, DevOps.
- Work Style: Remote, Hybrid.
- Company Size: Startup, Scale-up, Enterprise.
🏆 Notable Achievements
- Administration of a personal home lab (servers, databases, storage, backups) for MLOps experimentation since 2022.
- Implemented daily data cleaning pipelines on Azure with PySpark, enhancing data quality by 20-30% at Sevetys.
- Design, development, and maintenance of web, data, and cloud projects (Python, TypeScript, Nuxt 3) via ArtDanj Production.
- Developed an automated monthly data quality report (completeness, consistency) for business teams.
- Former rugby team captain, participating in the French school championships.
📚 Education & Core Competencies
Paris Dauphine-PSL University (MSc)
- Dual Expertise: Theory & Practice in Advanced Data Science and AI Systems.
- Core Theoretical Focus: Strong background in statistical modeling and advanced AI principles (Advanced Machine Learning, Learning Theory, Clustering, Deep Learning, Climate Risk Modeling).
- Practical Skills: Hands-on experience in NLP, Reinforcement Learning, Generative AI, Data Quality, and Data Visualisation.
- Key Courses (M1/M2): Supervised Statistical Learning, Generalised Linear Models (GLMs), Monte Carlo Methods, Data Analysis, Non-parametric Statistics, Time Series, Numerical Optimisation.
- Active Engagement: Scheduled participation in the Natixis and DIRISI Hackathons.
Technical Skillset
- Programming: Python, R, TypeScript, Java, Git, LaTeX.
- Libraries & Frameworks: NumPy, Pandas, Scikit-learn, PyTorch, Matplotlib, Seaborn.
- Databases: SQL, Redis.
- Cloud & DevOps: Proxmox, Docker, Azure, Linux, SysAdmin.
Statistical & AI Modeling
- Multivariate Data Analysis: Principal Component Analysis (PCA), Correspondence Analysis (CA), clustering techniques, correlation analysis.
- Supervised Learning: k-NN, linear and logistic regression, CNN, Naive Bayes.
- Unsupervised Learning: Clustering, dimensionality reduction, k-means, CNN.
- IA & Modern Models: Natural Language Processing, Transformers, Large Language Models, AI agents, embeddings, and fine-tuning.