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Full Stack Data Scientist

ZipRecruiter
City of London
2 days ago
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Overview

Full-Stack Data Scientist | Sr. Associate/ManagerLeading Global Tech Consultancy

THE OPPORTUNITY Bridge data science innovation with enterprise deployment. Work with cutting-edge ML technologies while ensuring scalable production systems for our global client base.

Responsibilities
  • Deploy ML models as microservices using AWS (SageMaker, Bedrock, Glue)
  • Build secure APIs with Apigee for enterprise AI access
  • Manage complete MLOps lifecycle: training → monitoring → drift detection
  • Develop CI/CD pipelines and mentor client teams
  • Work directly with Fortune 500 technical leaders
Tech Stack

Python • R • TensorFlow • PyTorch • Hugging Face • AWS • Docker • Kubernetes • Jenkins • Apigee

Requirements
  • CS/Data Science degree or equivalent experience
  • 4+ years data science with production deployment track record
  • Advanced Python/R and complete MLOps experience
  • Excellent communication and client management skills
Ideal Candidate

You're a technical innovator who thrives at the intersection of ML research and production engineering. You excel at translating complex AI concepts and have proven experience deploying scalable ML solutions in enterprise environments.

Ready to shape the future of AI? Join our world-class team!

How to Apply
  • APPLY NOW DM me or email: Share with your network if you know someone perfect for this role!


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