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بی

Quantitative Strategist

Brevan Howard

Singapore · مکمل وقت

درخواست دینے والے پہلے فرد بنیں۔

تجربہ
کوئی بھی
تنخواہ
کھلنا
1
پوسٹ کیا گیا
4 گھنٹے قبل
کام کا موڈ
دفتر میں
دوبارہ شروع کریں۔
درخواست دینے کی ضرورت ہے۔

جہاں آپ کام کریں گے۔

ملازمت کی تفصیل

About the Role

We are enhancing an internal platform that transforms diverse and unstructured market data—including sell-side research, central bank communications, news and social media trends, prediction markets, time-series analyses, and market prices—into timely, structured signals specific to a macro trading team. This platform includes features such as research ingestion supported by Large Language Models (LLMs), live market tracking, statistical dislocation reports, lead-lag analyses, and a central bank policy monitoring engine.

Previously built and maintained by the Chief Quant Strategist (also co-COO), we are now seeking a Quantitative Strategist to assist in operating and expanding this platform by taking full ownership of selected workstreams under senior guidance. This hands-on contributor role offers a clear progression path toward broader platform stewardship for the right candidate.

Key Responsibilities

  • Manage and enhance quantitative research reports, improving statistical dislocation, lead-lag relationships, and correlation analyses across instruments such as rates, FX, equities, and futures.
  • Operate and refine live monitoring tools and briefings, including scheduled news/social media scans, prediction market trackers, and macro updates distributed via collaboration tools and email, focusing on signal clarity and actionability.
  • Contribute to development of central bank and research parsing modules, including a multi-bank policy monitor and sell-side research parser.
  • Develop and validate data pipelines by integrating approved data sources and designing scheduled jobs that produce reliable reports with built-in sanity checks and reconciliation procedures.
  • Create precise, timely deliverables for portfolio managers and traders, such as formatted PDFs, tables, collaboration platform posts, and email alerts designed for easy consumption and action.
  • Continuously learn and adopt platform standards regarding data validation, statistical rigor, and robust engineering practices, gradually progressing to designing these standards independently.

Required Qualifications and Skills

  • Proficient in Python programming, focusing on writing clean, well-structured, and reliable code for data pipelines, scripting, and analysis with strong practices in error handling and version control.
  • Expertise in time-series analysis and strong statistical fundamentals; adept with tools like pandas and numpy, and familiar with metrics such as z-scores, correlations, stationarity testing, and principal component analysis. Deep understanding of statistical pitfalls common in sparse macroeconomic data and designing analyses to mitigate these issues.
  • Solid foundation in financial markets, able to engage in meaningful discussions on rates, FX, equities, and futures, with a keen interest to deepen macro trader domain knowledge.
  • Experience working with Large Language Models (LLMs) for building or analyzing applications involving data extraction, summarization, or tooling, with a nuanced grasp of their advantages and limitations such as hallucination and drift.
  • Comfortable with command-line interfaces, proficient in SQL and Excel, and experienced in handling databases and structured datasets. Familiarity with infrastructure tools like Docker and Postgres is advantageous but not mandatory.
  • Demonstrated ownership and rigor: able to manage tasks end-to-end, prioritize correctness due to impact on trading decisions, avoid shortcuts and silent errors, receptive to coaching, and motivated to grow professionally.

Additional Preferred Skills

  • Experience in production-grade engineering including service deployment, scheduled jobs, Docker environments, and maintaining low technical debt.
  • Hands-on experience creating LLM-driven applications with evaluation, safety guardrails, and audit capabilities; familiarity with local/open-weight models, retrieval-augmented generation (RAG), and embeddings.
  • Ability to design frameworks for validation, evaluation, and statistical robustness testing beyond mere application.
  • Full-stack or frontend development experience, particularly incorporating LLM-enhanced features that can be verified.
  • Exposure to Bloomberg or buy-side market data platforms; knowledge of central bank processes and rate market concepts such as Overnight Indexed Swaps (OIS), meeting-date forwards, and policy pricing.
  • Advanced knowledge of derivatives pricing, prediction markets, alternative data sources, and social or news monitoring.
  • Familiarity with automation in collaboration tools such as Teams, webhooks, email, and SharePoint/OneDrive for report generation.

Ideal Candidate Profile

  • Thrives in small teams with direct responsibility and measurable impact.
  • Innately rigorous, preferring to report no signal rather than unreliable findings, particularly cautious with results derived from limited macro data.
  • Committed to punctual and accurate briefings; responsive to feedback and quick to improve outputs.
  • Eager to build upon an already operational platform, learn established strict standards for data and software quality, and evolve into a role with greater ownership.

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