Senior Data Scientist

CodeVerse
London
3 weeks ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Job Description

Join a leading operations decision-support software company as a Senior Data Scientist, designing and delivering industrialized ML and optimization models that power enterprise operations.


What You'll Be Doing


→ Lead design and delivery of end-to-end ML/optimization models and data pipelines for a full-stack product squad

→ Conduct deep-dive analyses and prototype advanced models to prove business impact and identify valuable use cases

→ Build production-grade features using Python with best-practice software engineering (typing, testing, Git workflows)

→ Own algorithm integrations with workflow orchestration platforms (e.g., Dagster) and cloud CI/CD pipelines

→ Mentor team members on technical approaches and contribute to architecture decisions and roadmap prioritization

→ Quantify product adoption and value capture through analysis and stakeholder engagement

Core Skills

✅ 5+ years building production ML/optimization models in Python

✅ Expert-level Python proficiency with strong software engineering practices (OOP, typing, testing) ✅ Hands-on experience architecting and building automated data pipelines and ETL workflows

Data & Analytics

✅ Deep expertise in statistical analysis, feature engineering, and model optimiz...

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