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Applied AI/ML & Causal Inference - Senior Associate

ExperiencedNo visa sponsorship
J.P. Morgan logo

at J.P. Morgan

Bulge Bracket Investment Banks

Posted 3 days ago

No clicks

**Applied AI/ML & Causal Inference - Senior Associate**: Own full lifecycle of high-impact causal and predictive models in global private banking, serving clients across wealth management, deposits, lending, and advisory. Frame problems, design ML solutions, and deploy at scale. Essential skills include causal inference methods, experimental design, Python, and LLM/agent experience. Requires Master's degree or PhD in quantitative field with 2+ years ML experience.

Compensation
Not specified USD

Currency: $ (USD)

City
Jersey City
Country
United States

Full Job Description

Location: Jersey City, NJ, United States

As a Senior Applied AI/ML Associate within the Global Private Bank, you will own the full lifecycle of high-impact causal and predictive models serving clients across wealth management, deposit, lending, and advisory from problem framing with business stakeholders through production deployment at scale. You will tackle some of the most data-rich, complex client problems in financial services, where rigorous causal reasoning not just predictive accuracy drives the decisions that matter.

 

Job Responsibilities

  • Frame ambiguous client and operational questions as causal problems distinguishing prediction from intervention, identifying confounders, and designing the right estimand with Private Bank business leads.

  • Design, build, and deploy end-to-end ML and causal inference solutions: uplift and heterogeneous treatment effect models, observational causal studies (DiD, IV, RDD, synthetic controls, doubly robust estimation), experimentation, and classical/generative ML where appropriate.

  • Own model quality, identification assumptions, sensitivity analysis, evaluation frameworks, monitoring, and post-deployment iteration.

  • Drive productionization and MLOps practices in collaboration with engineering across distributed data infrastructure.

  • Track applied research in causal ML, double machine learning, and agentic/LLM systems; translate promising work into production-ready solutions.

  • Partner with the broader JPMorganChase AI/ML community, model risk, compliance, and peer LOBs to align on standards and amplify firm-wide impact.

     

Required Qualifications, Capabilities, and Skills

  • Master's and 2+ years of hands on Machine Learning experience or fresh PhD grads in Computer Science, Statistics, Economics, Applied Math, Data Science, or a related quantitative field.

  • Deep expertise in causal inference methods: potential outcomes framework, propensity score methods, instrumental variables, difference-in-differences, regression discontinuity, synthetic controls, doubly robust and double/debiased ML estimators, and uplift / heterogeneous treatment effect modeling.

  • Demonstrated experience designing and analyzing experiments (A/B tests, switchback, quasi-experiments) and reasoning carefully from observational data when experimentation is infeasible.

  • Hands-on experience with LLMs and agentic AI fine-tuning, RAG pipelines, prompt engineering, and the design and deployment of multi-step / tool-using agents in production.

  • Strong Python skills; proficiency with causal libraries (DoWhy, EconML, CausalML) alongside PyTorch, scikit-learn, and modern LLM/agent frameworks.

  • Experience with large-scale data processing: Spark, Hive, SQL.

  • Proven ability to communicate causal assumptions, limitations, and findings to non-technical stakeholders.

Preferred Qualifications, Capabilities, and Skills

  • Financial services experience wealth management, lending, or advisory.

  • Bayesian and hierarchical modeling; structural causal models; sequential decision-making / contextual bandits.

  • Experience applying causal reasoning to LLM and agent evaluation counterfactual eval, off-policy estimation, or treatment-effect framing of agent interventions.

Design predictive models to solve complex data rich client problems across wealth, deposits, lending, and advisory services.

Applied AI/ML & Causal Inference - Senior Associate

Compensation

Not specified USD

City: Jersey City

Country: United States

J.P. Morgan logo
Bulge Bracket Investment Banks

3 days ago

No clicks

at J.P. Morgan

ExperiencedNo visa sponsorship

**Applied AI/ML & Causal Inference - Senior Associate**: Own full lifecycle of high-impact causal and predictive models in global private banking, serving clients across wealth management, deposits, lending, and advisory. Frame problems, design ML solutions, and deploy at scale. Essential skills include causal inference methods, experimental design, Python, and LLM/agent experience. Requires Master's degree or PhD in quantitative field with 2+ years ML experience.

Full Job Description

Location: Jersey City, NJ, United States

As a Senior Applied AI/ML Associate within the Global Private Bank, you will own the full lifecycle of high-impact causal and predictive models serving clients across wealth management, deposit, lending, and advisory from problem framing with business stakeholders through production deployment at scale. You will tackle some of the most data-rich, complex client problems in financial services, where rigorous causal reasoning not just predictive accuracy drives the decisions that matter.

 

Job Responsibilities

  • Frame ambiguous client and operational questions as causal problems distinguishing prediction from intervention, identifying confounders, and designing the right estimand with Private Bank business leads.

  • Design, build, and deploy end-to-end ML and causal inference solutions: uplift and heterogeneous treatment effect models, observational causal studies (DiD, IV, RDD, synthetic controls, doubly robust estimation), experimentation, and classical/generative ML where appropriate.

  • Own model quality, identification assumptions, sensitivity analysis, evaluation frameworks, monitoring, and post-deployment iteration.

  • Drive productionization and MLOps practices in collaboration with engineering across distributed data infrastructure.

  • Track applied research in causal ML, double machine learning, and agentic/LLM systems; translate promising work into production-ready solutions.

  • Partner with the broader JPMorganChase AI/ML community, model risk, compliance, and peer LOBs to align on standards and amplify firm-wide impact.

     

Required Qualifications, Capabilities, and Skills

  • Master's and 2+ years of hands on Machine Learning experience or fresh PhD grads in Computer Science, Statistics, Economics, Applied Math, Data Science, or a related quantitative field.

  • Deep expertise in causal inference methods: potential outcomes framework, propensity score methods, instrumental variables, difference-in-differences, regression discontinuity, synthetic controls, doubly robust and double/debiased ML estimators, and uplift / heterogeneous treatment effect modeling.

  • Demonstrated experience designing and analyzing experiments (A/B tests, switchback, quasi-experiments) and reasoning carefully from observational data when experimentation is infeasible.

  • Hands-on experience with LLMs and agentic AI fine-tuning, RAG pipelines, prompt engineering, and the design and deployment of multi-step / tool-using agents in production.

  • Strong Python skills; proficiency with causal libraries (DoWhy, EconML, CausalML) alongside PyTorch, scikit-learn, and modern LLM/agent frameworks.

  • Experience with large-scale data processing: Spark, Hive, SQL.

  • Proven ability to communicate causal assumptions, limitations, and findings to non-technical stakeholders.

Preferred Qualifications, Capabilities, and Skills

  • Financial services experience wealth management, lending, or advisory.

  • Bayesian and hierarchical modeling; structural causal models; sequential decision-making / contextual bandits.

  • Experience applying causal reasoning to LLM and agent evaluation counterfactual eval, off-policy estimation, or treatment-effect framing of agent interventions.

Design predictive models to solve complex data rich client problems across wealth, deposits, lending, and advisory services.