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AI & Data Engineer - Azure - Private Equity

Santa Monica Talent
City of London
4 days ago
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  • Private Equity
  • AI and Data projects
  • Azure Fabric integrated ML
  • £140K base + Bonus
  • Must be living within commuting distance to the central London office


Exciting new role within Private Equity, joining a new Data & AI software team to work with the Portfolio clients, working on development projects for AI, ML, Data.


Role

  • Building agentic workflows with solutions like Autogen, Swarm, or LangGraph.
  • OpenAI GPT Integration
  • MLOps Expertise utilising Azure Machine Learning
  • Responsible for designing, developing, and implementing data solutions on the Microsoft Azure platform, including data pipelines and architectures
  • Azure services: Expertise in Azure services such as Azure Data Factory, Azure Databricks, and Azure SQL Database .
  • Data pipeline development: Experience with designing and building ETL/ELT pipelines.
  • Projects include: AI, Dashboards, Cloud Infrastructure, Data pipelines, Data Lake, Data models


Experience

  • Strong Python skills
  • ML frameworks, and hands-on experience with LLM toolchains, OpenAI APIs, embeddings, and vector stores.
  • Experience within Microsoft Azure, Azure AI and MLOps Experience with Azure AI/ML services and MLOps
  • Ideally LLMs, in enterprise environments.
  • AI-enabled products and driving CoPilot coaching and enablement.
  • Business Impact Background in delivering business-focused AI solutions with measurable ROI.

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