DescriptionWho We Are
The Applied AI team at Goldman Sachs operates at the intersection of artificial intelligence quantitative finance and technology. Our mandate is to research develop and deploy cutting-edge AI/ML models that drive commercial impact and solve the most complex predictive challenges across the firm. We function as a center of excellence partnering with trading sales and engineering divisions to pioneer next-generation quantitative technologies that redefine our revenue-generating capabilities.
Your Impact
As a Quantitative AI/ML Researcher you will be at the forefront of financial innovation. You will have the unique opportunity to apply your deep expertise in machine learning and quantitative analysis to high-impact projects from developing sophisticated alpha-generation models to engineering state-of-the-art market-making and pricing systems. This role offers end-to-end ownership from initial research and prototyping to deploying scalable robust models into our production trading environment. You will tackle the unique challenges of applying AI in the high-stakes non-stationary world of quantitative trading and help shape the future of finance.
Principal Responsibilities
- Model Architecture & Implementation:Spearhead the end-to-end lifecycle of AI/ML models from initial research and ideation through to production deployment with a clear focus on driving measurable commercial impact.
- Advanced Predictive Modeling:Design train and validate novel models for predictive tasks in complex financial time series including deep learning reinforcement learning and state-space models.
- Explainable AI (XAI) & Governance:Integrate and advance state-of-the-art XAI methodologies to ensure model transparency interpretability and robustness. Satisfy the rigorous demands of internal model validation risk management and regulatory frameworks.
- MLOps & Engineering Excellence:Engineer and maintain high-quality production-grade code and resilient data pipelines for high-volume low-latency financial data. Adhere to and promote best practices in MLOps for versioning containerization continuous integration/deployment and real-time monitoring.
Core Qualifications
- A Ph.D. or Masters degree in a quantitative discipline such as Computer Science Statistics Quantitative Finance Mathematics Physics or Electrical Engineering.
- Expert-level programming proficiency in Python and deep experience with its scientific computing and machine learning ecosystem (e.g. NumPy Pandas Scikit-learn PyTorch TensorFlow).
- A profound theoretical and applied understanding of machine learning techniques including LLMs deep learning architectures reinforcement learning probabilistic models and classical statistical methods.
- Proven ability to independently conduct research manage complex datasets and solve challenging open-ended problems with a data-driven approach.
- Exceptional communication and interpersonal skills with the ability to articulate complex technical concepts to both specialist and non-specialist audiences.
Preferred Qualifications
- Min. 3 years (for Associate) / 8 years (for VP) of distinguished professional or academic research experience demonstrated by a track record of building and fine-tuning large-scale deep learning models (e.g. Transformers) for sequential or time-series data.
- Prior experience in quantitative role at a leading buy-side or sell-side institution (e.g. quantitative trading statistical arbitrage high-frequency market making).
- Direct hands-on experience applying foundation models (e.g. LLMs) and transfer learning techniques to novel non-NLP domains.
ABOUT GOLDMAN SACHS
At Goldman Sachs we commit our people capital and ideas to help our clients shareholders and the communities we serve to grow. Founded in 1869 we are a leading global investment banking securities and investment management firm. Headquartered in New York we maintain offices around the world.
We believe who you are makes you better at what you do. Were committed to fostering and advancing diversity and inclusion in our own workplace and beyond by ensuring every individual within our firm has a number of opportunities to grow professionally and personally from our training and development opportunities and firmwide networks to benefits wellness and personal finance offerings and mindfulness programs. Learn more about our culture benefits and people at committed to finding reasonable accommodations for candidates with special needs or disabilities during our recruiting process. Learn more: The Goldman Sachs Group Inc. 2025. All rights reserved.
Goldman Sachs is an equal opportunity employer and does not discriminate on the basis of race color religion sex national origin age veterans status disability or any other characteristic protected by applicable law.
Required Experience:
Exec
DescriptionWho We AreThe Applied AI team at Goldman Sachs operates at the intersection of artificial intelligence quantitative finance and technology. Our mandate is to research develop and deploy cutting-edge AI/ML models that drive commercial impact and solve the most complex predictive challenges...
DescriptionWho We Are
The Applied AI team at Goldman Sachs operates at the intersection of artificial intelligence quantitative finance and technology. Our mandate is to research develop and deploy cutting-edge AI/ML models that drive commercial impact and solve the most complex predictive challenges across the firm. We function as a center of excellence partnering with trading sales and engineering divisions to pioneer next-generation quantitative technologies that redefine our revenue-generating capabilities.
Your Impact
As a Quantitative AI/ML Researcher you will be at the forefront of financial innovation. You will have the unique opportunity to apply your deep expertise in machine learning and quantitative analysis to high-impact projects from developing sophisticated alpha-generation models to engineering state-of-the-art market-making and pricing systems. This role offers end-to-end ownership from initial research and prototyping to deploying scalable robust models into our production trading environment. You will tackle the unique challenges of applying AI in the high-stakes non-stationary world of quantitative trading and help shape the future of finance.
Principal Responsibilities
- Model Architecture & Implementation:Spearhead the end-to-end lifecycle of AI/ML models from initial research and ideation through to production deployment with a clear focus on driving measurable commercial impact.
- Advanced Predictive Modeling:Design train and validate novel models for predictive tasks in complex financial time series including deep learning reinforcement learning and state-space models.
- Explainable AI (XAI) & Governance:Integrate and advance state-of-the-art XAI methodologies to ensure model transparency interpretability and robustness. Satisfy the rigorous demands of internal model validation risk management and regulatory frameworks.
- MLOps & Engineering Excellence:Engineer and maintain high-quality production-grade code and resilient data pipelines for high-volume low-latency financial data. Adhere to and promote best practices in MLOps for versioning containerization continuous integration/deployment and real-time monitoring.
Core Qualifications
- A Ph.D. or Masters degree in a quantitative discipline such as Computer Science Statistics Quantitative Finance Mathematics Physics or Electrical Engineering.
- Expert-level programming proficiency in Python and deep experience with its scientific computing and machine learning ecosystem (e.g. NumPy Pandas Scikit-learn PyTorch TensorFlow).
- A profound theoretical and applied understanding of machine learning techniques including LLMs deep learning architectures reinforcement learning probabilistic models and classical statistical methods.
- Proven ability to independently conduct research manage complex datasets and solve challenging open-ended problems with a data-driven approach.
- Exceptional communication and interpersonal skills with the ability to articulate complex technical concepts to both specialist and non-specialist audiences.
Preferred Qualifications
- Min. 3 years (for Associate) / 8 years (for VP) of distinguished professional or academic research experience demonstrated by a track record of building and fine-tuning large-scale deep learning models (e.g. Transformers) for sequential or time-series data.
- Prior experience in quantitative role at a leading buy-side or sell-side institution (e.g. quantitative trading statistical arbitrage high-frequency market making).
- Direct hands-on experience applying foundation models (e.g. LLMs) and transfer learning techniques to novel non-NLP domains.
ABOUT GOLDMAN SACHS
At Goldman Sachs we commit our people capital and ideas to help our clients shareholders and the communities we serve to grow. Founded in 1869 we are a leading global investment banking securities and investment management firm. Headquartered in New York we maintain offices around the world.
We believe who you are makes you better at what you do. Were committed to fostering and advancing diversity and inclusion in our own workplace and beyond by ensuring every individual within our firm has a number of opportunities to grow professionally and personally from our training and development opportunities and firmwide networks to benefits wellness and personal finance offerings and mindfulness programs. Learn more about our culture benefits and people at committed to finding reasonable accommodations for candidates with special needs or disabilities during our recruiting process. Learn more: The Goldman Sachs Group Inc. 2025. All rights reserved.
Goldman Sachs is an equal opportunity employer and does not discriminate on the basis of race color religion sex national origin age veterans status disability or any other characteristic protected by applicable law.
Required Experience:
Exec
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