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Senior Quant Analyst / Research Scientist (Contract)

London

Competitive

Contract

Financial Services

Posted 19 February 2026

Ref BH-229332

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Dom Jennings

Hi, I'm Dom

I manage this role

Dom Jennings

Partner

Job description

Senior Quant Analyst / Research Scientist (Contract)

Location: London (cross-Atlantic collaboration)
Contract: 12 months (strong potential for extension/perm role)
 
Overview
A leading global asset management firm is seeking a senior buy-side Quant Analyst / Research Scientist to support its Fund-of-Funds portfolio within a Front Office–aligned Advanced Analytics function.
This is a high-impact contract mandate focused on:
  • Hybrid annuity asset allocation modelling
  • Cashflow forecasting
  • Quadratic and convex optimisation
  • Portfolio construction frameworks
  • Python-based prototyping and deployment
The role sits at the intersection of quant research, front office portfolio management, and technology deployment, contributing directly to investment strategy and production-ready solutions.
You will work within a high-profile Applied R&D environment supporting Active Equities, Fixed Income, Risk Management, Corporate Finance and broader multi-asset strategies.
 
Core Mandate
The primary objective is to design and prototype quantitative models that support:
  • Hybrid and annuity-style asset allocation
  • Fund-of-funds portfolio construction
  • Cashflow forecasting and liability-style modelling
  • Constrained and quadratic optimisation problems
This is fundamentally a modelling-first mandate, requiring deep applied mathematics capability and hands-on implementation in Python.
AI/ML exposure is desirable but secondary — the role is not a pure AI engineering position.
 
Key Responsibilities
  • Develop and implement quantitative models for hybrid annuity asset allocation
  • Solve quadratic, convex, and mixed-integer optimisation problems
  • Apply portfolio construction standards including:
    • Markowitz / Modern Portfolio Theory
    • Black-Litterman
    • Factor models
  • Forecast portfolio cashflows and support annuity-style allocation structures
  • Build robust prototype frameworks in Python
  • Create comprehensive evaluation frameworks including:
    • Out-of-sample validation
    • Simulation
    • Back-testing
  • Analyse model performance and robustness
  • Collaborate directly with front office PMs on assumptions and outputs
  • Engage with quant research and AI teams to industrialise modelling solutions
  • Ensure models are production-ready and operationalised effectively within internal systems
 
Technical Environment
  • Python (production-level proficiency required)
  • Cloud-based research and development platforms:
    • SageMaker
    • Databricks
  • Enterprise data infrastructure:
    • Snowflake
  • Systematic research and quantitative workflows
  • Investment management datasets across multi-asset strategies
Required Experience
  • Senior quant experience within buy-side asset management or fund-of-funds environments
  • Strong background in mathematical optimisation and applied modelling
  • Portfolio construction / asset allocation expertise
  • Hands-on Python development capability (not purely supervisory)
  • Experience with equities; fixed income or hybrid portfolio exposure strongly preferred
  • Experience creating model evaluation frameworks (OOS, simulation, back-testing)
  • Experience working with investment management data
  • Ability to read and computationally reproduce academic research
  • Experience translating research outputs into production-grade solutions
  • Comfortable collaborating across international teams (London / US)
Desirable Experience
  • Exposure to ML / deep learning architectures
  • Experience integrating AI/ML prototypes into production environments
  • Multi-asset, insurance, or annuity product exposure
  • Experience working alongside Front Office technology teams or PM management tools
  • CFA participation or strong applied financial markets knowledge
  • Graduate degree in a STEM discipline, or equivalent industrial research experience