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O

Quantitative Researcher

Orchid AI City of London
new


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    O

    Quantitative Researcher

    Orchid AI City of London
    new
    Status Open
    Apply now

    Apply on the employer's website


    What we ask

    Education

    No minimum education required

    What we offer

    Salary

    Job description

    Orchid AI


    About Orchid AI:

    Orchid AI is building an AI-native asset management platform that combines quantitative research, machine learning, agentic AI systems, and alternative data to generate differentiated investment insights and systematic investment strategies. Our mission is to create a modern research and portfolio management stack where human expertise and AI work together to discover, validate, and scale alpha opportunities across global markets.


    Role Overview:

    We are seeking a highly motivated Quantitative Researcher to join our investment research team. This role offers the opportunity to work across the full investment research lifecycle, from idea generation and data acquisition through signal development, portfolio construction, backtesting, and live strategy monitoring.


    You will work closely with portfolio managers, AI engineers, and data scientists to develop systematic investment strategies powered by alternative data, machine learning, and agentic AI workflows. The ideal candidate combines strong quantitative skills with a deep curiosity about financial markets and emerging AI technologies.


    Location: Flexible / Remote (with preference for overlap with U.S. And European market hours)


    Key Responsibilities:

    • Conduct quantitative research to identify and develop alpha-generating investment signals across equities and other liquid asset classes.
    • Design, test, and refine systematic investment strategies using statistical, machine learning, and AI-driven approaches.
    • Source, evaluate, and integrate alternative, fundamental, macroeconomic, and market data into research pipelines.
    • Develop robust back testing frameworks and research infrastructure to evaluate strategy performance and risk characteristics.
    • Apply modern AI and agentic systems to automate research workflows, data analysis, idea generation, and portfolio monitoring.
    • Collaborate with portfolio managers to translate research insights into investable strategies and portfolio construction frameworks.
    • Build predictive models for forecasting returns, risk, market regimes, and factor behavior across varying time horizons.
    • Monitor live strategies and continuously improve models based on changing market conditions and new data sources.
    • Contribute to the development of Orchid AI’s proprietary investment intelligence platform and research ecosystem.
    • Communicate research findings clearly through written reports, presentations, and collaborative discussions.


    Required Qualifications:

    • Bachelor's, Master's, or PhD in Mathematics, Statistics, Computer Science, Physics, Engineering, Economics, Finance, or a related quantitative discipline.
    • Strong programming skills in Python and experience with quantitative research libraries and data science tools.
    • Strong foundation in statistics, probability, optimization, machine learning, and financial modeling.
    • Experience working with large structured and unstructured datasets.
    • Ability to independently formulate hypotheses, design experiments, and evaluate results rigorously.
    • Strong communication skills and the ability to explain complex quantitative concepts to both technical and investment audiences.


    Preferred Experience:

    • 3+ years of experience in quantitative research, systematic investing, hedge funds, asset management, proprietary trading, or fintech.
    • Experience developing alpha signals, factor models, forecasting systems, or portfolio optimization frameworks.
    • Experience with alternative datasets, including corporate, consumer, geospatial, web, transaction, or other non-traditional data sources.
    • Experience building research platforms, data pipelines, or production-grade quantitative infrastructure.
    • Familiarity with cloud computing environments and modern data engineering practices.
    • Experience applying machine learning, large language models (LLMs), or agentic AI systems to investment research and decision-making.


    Highly Valued Experience:

    • Building proprietary datasets or investment intelligence products.
    • Research involving cross-sectional equity selection, statistical arbitrage, factor investing, or multi-asset strategies.
    • Experience integrating heterogeneous data sources into unified predictive frameworks.
    • Developing AI agents for research automation, knowledge extraction, market intelligence, or portfolio management workflows.
    • Working in entrepreneurial, fast-moving investment or technology environments.
    • Experience taking research from concept to live deployment and ongoing performance management.


    Why Join Orchid AI?

    • Build at the intersection of AI, quantitative finance, and asset management.
    • Work directly with founders and senior investment professionals.
    • Access cutting-edge AI tools, alternative datasets, and research infrastructure.
    • Significant opportunity for ownership, impact, and career growth.
    • Competitive compensation, performance incentives, and equity participation for exceptional candidates.

    About the employer

    Orchid AI
    Apply now

    Apply on the employer's website

    Apply now

    Apply on the employer's website


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