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Data Scientist – Machine Learning & Generative AI, Remote (EU) – EU Public Institution

Roles & Responsibilities

  • 5-7 years of professional experience in Data Science / Machine Learning with a focus on Generative AI
  • Engineering degree (Engineering or equivalent) required
  • Proficiency in Python with pandas, scikit-learn, and deep learning frameworks (PyTorch or TensorFlow) and experience building ML/LLM models, experimentation pipelines, and deployment
  • Hands-on experience with Microsoft Azure (Azure Machine Learning, Azure OpenAI, ML pipelines, Azure Storage) and solid understanding of AI governance and Responsible AI (risk assessment, bias detection, explainability with SHAP/LIME, model monitoring, MLOps)

Requirements:

  • Design, evaluate, and monitor intelligent agents and ML/Generative AI models within AI governance frameworks
  • Develop supervised and unsupervised models using Python, pandas, scikit-learn, PyTorch or TensorFlow
  • Build and maintain experimentation pipelines, robust validation workflows, and deployment processes
  • Operate production models through Azure Machine Learning, Azure OpenAI, ML pipelines, and Azure Storage

Job description

Data Scientist – Machine Learning & Generative AI, Remote (EU) – EU Public Institution

Job role: Data Scientist – Machine Learning & Generative AI.

Minimum experience: 5 - 7 years.

Studies required: Engineer.

Language: English (C1) (Mandatory).

Location: Remote (EU).

DESCRIPTION:

A Data Scientist specialized in Machine Learning and Generative AI, experienced in Azure cloud environments and focused on designing, evaluating, and monitoring intelligent agents within AI governance frameworks. Brings strong expertise in Python using pandas, scikit-learn, PyTorch or TensorFlow for supervised and unsupervised learning, robust model validation, experimentation pipelines, and deployment. Combines hands‑on work with LLMs including prompt engineering, RAG architectures, fine‑tuning, model adaptation, and systematic evaluation of generative output quality.

Supported by proven experience operating production models in Microsoft Azure through Azure Machine Learning, Azure OpenAI, ML pipelines, and Azure Storage, with a solid understanding of AI governance and Responsible AI principles such as risk assessment, bias detection, explainability through SHAP or LIME, model monitoring, and MLOps practices. Desirable experience in regulated industries, autonomous or multi‑agent systems, and AI regulatory frameworks like the EU AI Act.

The profile demonstrates strengths in scalable experimentation workflows, structured evaluation methodologies, operational reliability, and consistent delivery of high‑quality models across enterprise environments, ensuring resilience, traceability, compliance readiness, and long‑term value in AI‑driven ecosystems. Ensures adaptability to evolving regulations and business needs, suitable for complex environments requiring reliability and governance, reinforcing operational robustness and strategic alignment.

Tasks:

· Design, evaluate, and monitor intelligent agents and Machine Learning / Generative AI models within AI governance frameworks.

· Develop supervised and unsupervised models using Python, pandas, scikit-learn, PyTorch or TensorFlow.

· Build and maintain experimentation pipelines, robust validation workflows, and deployment processes.

· Perform advanced work with LLMs: prompt engineering, RAG architectures, fine‑tuning, model adaptation, and generative output evaluation.

· Operate production models through Azure Machine Learning, Azure OpenAI, ML pipelines, and Azure Storage.

· Apply AI governance and Responsible AI practices including risk assessment, bias detection, explainability (SHAP, LIME), model monitoring, and MLOps.

· Ensure resilience, traceability, compliance readiness, and operational reliability in enterprise and regulated contexts.

· Develop scalable experimentation workflows and structured evaluation methodologies.

Specific Expertise:

· Machine Learning (supervised and unsupervised) using pandas, scikit‑learn, PyTorch, TensorFlow.

· Generative AI and LLMs: prompt engineering, RAG architectures, fine‑tuning, model adaptation, output quality evaluation.

· Azure cloud operations: Azure Machine Learning, Azure OpenAI, ML pipelines, Azure Storage.

· AI governance & Responsible AI: risk assessment, bias detection, explainability with SHAP/LIME, model monitoring, MLOps.

· Desirable experience in regulated industries, autonomous or multi‑agent systems, and regulatory frameworks such as the EU AI Act.

· Strong capabilities in operational reliability, resilience, traceability, scalable workflows, and strategic alignment.

Language:

· English (C1).

Location:

· Remote (EU).

Rate:

· 270 €/day.

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