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Ai Engineer / Data Scientist

SGI
City of London
2 days ago
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Overview

One of our leading Investment Management clients is searching for an AI Engineer/Data Scientist to join their R&D as they look to build next-generation AI applications for research, portfolio construction, and decision support. You’ll prototype with LLMs, multi-agent systems, and vector search to solve real investment challenges.

Responsibilities
  • Design and build AI prototypes with LLMs, agent workflows, and knowledge retrieval.
  • Orchestrate multi-agent systems (LangGraph, LangChain).
  • Develop pipelines for prompt engineering and fine-tuned workflows.
  • Create demos and proof-of-concepts for investment use cases.
  • Collaborate with investment teams to identify high-impact applications.
Requirements
  • Strong Python for AI/ML or automation.
  • Experience with large language models and orchestration frameworks.
  • Cloud (AWS preferred) for AI workloads.
  • Background in software engineering or data science.
  • Strong collaboration and problem-solving skills.
Employment type
  • Contract
Seniority level
  • Not Applicable

Please apply with an up-to-date CV to register your interest


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