Quantitative Researcher - Systematic Team | UAE in City of London

Durlston Partners is looking for an Quantitative Researcher - Systematic Team | UAE in City of London

Job description

A leading investment team in The UAE is seeking a highly skilled Quantitative Researcher to play a key role in advancing systematic research and decision-making systems. This position blends traditional portfolio research with cutting-edge AI applications, offering the opportunity to shape and deliver production-grade solutions that directly impact investment evaluation and analytics.


The successful candidate will act as the team’s practical AI lead, owning the knowledge graph, GNN/graph-embedding models, and LLM/NLP extraction + RAG systems that power investment workflows. Alongside this, the role will involve designing research processes, monitoring portfolios, and contributing to systematic fund-of-funds strategies.


Key Responsibilities

  • Systematic Research & Investment Support:
  • Conduct research to design and enhance systems that identify and evaluate opportunities across external managers and systematic strategies relevant to fund-of-funds portfolios.
  • Apply quantitative and fundamental techniques to assess performance drivers, risk decomposition, factor/style exposures, and persistence.
  • Develop and maintain models for investment decision-making, including manager screening, portfolio construction, monitoring, and scenario/sensitivity analysis.
  • Monitor portfolios of hedge funds and traditional funds, designing and recommending overlay strategies or hedges where appropriate.
  • Produce detailed reports and presentations for senior stakeholders, synthesizing manager interviews into clear, well-documented insights.
  • AI & Data Systems:
  • Design and maintain domain ontologies, building and operating knowledge graphs (e.g., Neo4j) with versioning, provenance, consent/visibility controls, and schema evolution.
  • Build NLP/LLM pipelines for information extraction across diverse document sources; develop hybrid retrieval systems with evaluators for relevance, faithfulness, and citation.
  • Train embeddings for nodes and relations, prototype GNNs and advanced hypergraph/VGAE models, and run prediction tasks to enrich the knowledge graph.
  • Collaborate with researchers, portfolio managers, and technology teams to ensure solutions are integrated, scalable, and optimized for investment workflows.
  • Create and maintain comprehensive documentation, providing knowledge transfer and training to ensure best practices across teams

Preferred Qualifications:

  • Experience in financial services (e.g., brokerage, asset management, or banking) or a strong macroeconomic research background
  • Familiarity with machine learning, NLP, and large language models (LLMs)
  • Knowledge of various datasets (e.g., earnings, filings, credit card, CCTV)
  • Master’s degree in a relevant field is a plus

Extra information

Status
Open
Education Level
Secondary School
Location
City of London
Type of Contract
Part-time jobs
Published at
12-09-2025
Profession type
Accountancy
Full UK/EU driving license preferred
No
Car Preferred
No
Must be eligible to work in the EU
No
Cover Letter Required
No
Languages
English

Accountancy jobs | Part-time jobs | Secondary School

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