Search by job, company or skills

E

Senior Manager / Assistant Director - AI Researcher, Quantitative Strategies

6-8 Years
SGD 16,500 - 22,500 per month
new job description bg glownew job description bg glownew job description bg svg
  • Posted 21 hours ago
  • Be among the first 10 applicants
Early Applicant

Job Description

Role Overview

This is a research role responsible for advancing AI/ML-driven investment research to support alpha generation and risk insight across the firm's quantitative and systematic investment platforms. This position is research-led and emphasizes:

  • Novel signal discovery and validation using modern machine learning.
  • Strong experimental design, robustness and model risk discipline.
  • Translating research into investment-ready concepts, working with quant developers for productionisation.

The AI Researcher will collaborate closely with portfolio managers, quant researchers, and risk partners to develop research that withstands out-of-sample testing, regime shifts, and implementation frictions (transaction costs, liquidity, capacity).


Key Responsibilities

1) Research Leadership in AI/ML for Investments

  • Lead research initiatives applying AI/ML to alpha generation and risk insights across equities, fixed income, and/or multi-asset (depending on team mandate).
  • Formulate hypotheses, design experiments, and drive research agendas focused on signal stability, interpretability, and economic rationale.
  • Evaluate and select modeling approaches (e.g., cutting edge deep learning algorithms, reinforcement learning) based on empirical evidence and implementation practicality.

2) Alpha Signal Discovery & Feature Research

  • Create and test predictive features from structured and alternative datasets (e.g., prices, fundamentals, macro, curves/spreads, flows, options-implied measures, text/news).
  • Research model families relevant to finance, including: Time-series forecasting and representation learning, cross-sectional prediction & ranking objectives, and nonlinear factor discovery and interactions.
  • Develop frameworks for detecting and managing non-stationarity (regime shifts, concept drift, structural breaks).

3) Research Methodology, Robustness & Model Risk Discipline

  • Establish and enforce rigorous research standards, including: leakage controls, realistic signal timing, corporate action adjustments walk-forward evaluation, time-series cross-validation, and stability diagnostics sensitivity testing across sub-periods, regimes, and market stress events.
  • Diagnose and mitigate overfitting through sound regularization, feature selection discipline, and robust validation.
  • Produce research documentation suitable for internal governance, including assumptions, limitations, failure modes, and monitoring metrics.
  • Contribute to model risk processes: validation support, explainability, and audit-ready research artifacts.

4) Portfolio & Implementation-Aware Research

  • Translate model outputs into implementable signal definitions (ranking, scoring, forecasts) aligned to portfolio construction approaches.
  • Incorporate practical constraints early: turnover, liquidity, transaction costs, latency/data availability, and capacity.
  • Partner with portfolio construction and execution teams to ensure research remains robust after cost and implementation adjustments.

5) Research Communication & Stakeholder Influence

  • Present research findings to investment leadership with clarity: economic intuition, empirical results, and risk considerations.
  • Contribute to the firm's though leadership by authoring and publishing sanitized AI research and methodological advancements in leading conferences and quantitative finance journals.
  • Mentor and guide junior researchers on methodology, experimental design, and research hygiene.

6) Research-to-Production Collaboration

  • Work with quant developers/engineering teams to transition validated research into production pipelines.
  • Define requirements, acceptance criteria, and monitoring KPIs support post-launch research review and model drift investigations.
  • Maintain an iterative research lifecycle: improvements, recalibration, and controlled retirement of decaying signals.


Required Qualifications, Skills & Capabilities

Core AI/ML Research Skills (Required):

  • Strong foundation in statistical learning theory.
  • Expertise in time-series modelling and optimization.
  • Practical experience with explainability and diagnostics (e.g., SHAP, permutation importance, stability tests) appropriate for investment oversight.

Programming & Research Tooling:

  • Advanced R or Python or Julia for research.
  • Experience with deep learning frameworks (e.g. PyTorch / Flux.jl / TensorFlow).
  • Strong research hygiene: Git, reproducible experiments, notebooks-to-library workflows, and structured documentation.
  • Familiarity with experiment tracking tools (MLflow/W&B or equivalent) is beneficial.

Data Competency:

  • Strong skills in dataset curation, construction and labelling, including handling: survivorship bias, look-ahead bias, delayed data availability and corporate actions, missingness, outliers, vendor idiosyncrasies.
  • Proficiency with SQL and working with large datasets comfort partnering with data engineering teams.

Markets & Portfolio Context:

  • Working understanding of market microstructure and implementation constraints (transaction costs, liquidity, slippage).
  • Portfolio concepts: risk factors, diversification, drawdown, turnover, and capacity.
  • Domain knowledge in at least one area (equities or fixed income) preferred.

Experience & Knowledge Required

Education:

  • Master's or PhD strongly preferred in Machine Learning, Statistics, Computer Science, Applied Mathematics, Physics, Engineering, or related fields.

Professional Experience:

  • Typically, 6-8+ years in ML/AI academic research, postdoc, quant research, or systematic investing (buy-side preferred strong sell-side or fintech acceptable).
  • Demonstrated track record of original research that improved outcomes.
  • Experience influencing research direction, mentoring others, and partnering with cross-functional stakeholders.

Evidence of Research Depth:

  • Peer-reviewed publications, patents, open-source contributions, or significant internal research outputs.
  • Evidence of rigorous validation and an ability to explain why models work (or fail) across regimes.

Key Competencies:

  • Research leadership: sets direction, prioritizes high-impact questions, and drives rigor.
  • Intellectual honesty and skepticism resists overfitting and backtest-first thinking.
  • Clear communication: simplifies complexity without overselling results.
  • Collaboration: effective partner to PMs, risk, and engineering pragmatic about implementation realities.

More Info

Job Type:
Industry:
Function:
Employment Type:

Job ID: 144563869