Data Engineer

Careerwise
Newcastle upon Tyne
2 weeks ago
Applications closed

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We’re Hiring: Data Engineer (Agentic AI & MLOps)


We’re looking for a Data Engineer with hands-on experience in Agentic AI systems and MLOps to help build scalable data platforms and production-ready AI solutions.


What You’ll Do


  • Build and maintain scalable batch & streaming data pipelines
  • Enable data infrastructure for Agentic AI / LLM-based autonomous systems
  • Develop and support MLOps pipelines (training, deployment, monitoring)
  • Work with vector databases, RAG pipelines, and real-time data systems
  • Collaborate closely with ML, AI, and product teams


What We’re Looking For


  • Strong experience as a Data Engineer
  • Proficiency in Python & SQL
  • Experience with Agentic AI, LLMs, or autonomous agents
  • Solid understanding of MLOps & CI/CD
  • Experience with cloud platforms, Azure
  • Familiarity with Spark, Kafka, Airflow, Docker, and Kubernetes


Nice to Have


  • Experience with vector databases (Pinecone, FAISS, Weaviate)
  • ML platforms like MLflow, Kubeflow, SageMaker
  • RAG, embeddings, or knowledge graphs

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