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Product Analytics Lead - Brokerage

ExperiencedNo visa sponsorship
J.P. Morgan logo

at J.P. Morgan

Bulge Bracket Investment Banks

Posted 8 days ago

No clicks

**Product Analytics Lead - Brokerage** - Drive quantitative agenda for JPMorgan's Personal Investing - Brokerage using advanced stats, ML, & portfolio theory. - Key responsibilities: Develop and deploy quantitative models, conduct research, build portfolio construction methods, and lead propensity model design. - Requirements: MS/PhD in quantitative field, significant financial analytics experience, strong Python/SQL proficiency, statistical expertise, and investment product understanding. - Preferred: Cloud platform experience, regulatory knowledge, model risk management background, and additional European language skills. - Collaborate with stakeholders to convert complex data into actionable insights, enhancing Brokerage's product development and performance monitoring.

Compensation
Not specified

Currency: Not specified

City
Madrid
Country
Spain

Full Job Description

Location: Madrid, Madrid, Spain

The Product Analytics Lead owns the end-to-end quantitative agenda for JPMorgan Personal Investing - Brokerage, integrating advanced statistical methods, machine learning, and portfolio theory into production-grade solutions and insights. The role designs and deploys propensity models to deepen client engagement, builds portfolio construction frameworks grounded in Monte Carlo and optimization techniques, and delivers rigorous business analytics for senior stakeholders.  

 

 

Job responsibilities: 

  • Develop and enhance quantitative tools and reusable frameworks that support investment decision-making, product development, and ongoing performance monitoring. 
  • Own end-to-end business analytics for the Brokerage team, transforming complex datasets into strategic insights and clear product recommendations for senior stakeholders. 
  • Conduct applied research on statistical, machine learning, and mathematical methods relevant to brokerage and personal investing use cases. 
  • Build and maintain portfolio construction methodologies using Monte Carlo simulations, optimization algorithms, and risk models that align with client objectives and guardrails. 
  • Lead the design, development, and deployment of propensity models and scoring frameworks that increase client acquisition, activation, cross-sell, and retention. 
  • Partner with technology, product, and business teams to integrate models and analytics into production systems with appropriate scalability, reliability, and controls. 
  • Communicate findings, trade-offs, and recommendations with clarity and business context to leadership and cross-functional partners. 

 

 

Required qualifications, capabilities and skills 

 

  • Advanced degree (Masters or PhD) in Mathematics, Statistics, Physics, Financial Engineering, Computer Science, or a related quantitative discipline. 
  • Significant experience in quantitative analytics, financial modelling, or a related role within financial services, with a demonstrated record of productionizing models. 
  • Strong proficiency in Python and SQL, including experience with scientific computing and machine learning libraries (NumPy, SciPy, pandas, scikit-learn). 
  • Deep expertise in statistical modelling, probability theory, Monte Carlo methods, and optimization techniques. 
  • Experience building propensity models, scoring systems, or recommendation engines tied to measurable business outcomes. 
  • Ability to convey complex quantitative concepts to non-technical stakeholders with precision and brevity. 
  • Strong understanding of investment products, portfolio theory, and brokerage operations. 
  • Passion for investments with an entrepreneurial and business oriented mindset. 

 

Preferred qualifications, capabilities and skills 

 

  • Familiarity with cloud platforms (AWS, GCP, or Azure) for scalable data processing and model deployment. 
  • Knowledge of regulatory considerations relevant to brokerage and personal investing. 
  • Experience within model risk management or model governance frameworks. 
  • Prior experience in brokerage, wealth management, or asset management environments. 
  • Fluent in other European languages (beyond English) 
J.P. Morgan Personal Investing offers award-winning investments products and digital wealth management services to over 275,000 investors in the UK and with ambitious plans to expand internationally. We built the business with innovation as a core part of our ethos to give consumers the confidence and clarity to make informed investment decisions and achieve their financial goals.

Product Analytics Lead - Brokerage

Compensation

Not specified

City: Madrid

Country: Spain

J.P. Morgan logo
Bulge Bracket Investment Banks

8 days ago

No clicks

at J.P. Morgan

ExperiencedNo visa sponsorship

**Product Analytics Lead - Brokerage** - Drive quantitative agenda for JPMorgan's Personal Investing - Brokerage using advanced stats, ML, & portfolio theory. - Key responsibilities: Develop and deploy quantitative models, conduct research, build portfolio construction methods, and lead propensity model design. - Requirements: MS/PhD in quantitative field, significant financial analytics experience, strong Python/SQL proficiency, statistical expertise, and investment product understanding. - Preferred: Cloud platform experience, regulatory knowledge, model risk management background, and additional European language skills. - Collaborate with stakeholders to convert complex data into actionable insights, enhancing Brokerage's product development and performance monitoring.

Full Job Description

Location: Madrid, Madrid, Spain

The Product Analytics Lead owns the end-to-end quantitative agenda for JPMorgan Personal Investing - Brokerage, integrating advanced statistical methods, machine learning, and portfolio theory into production-grade solutions and insights. The role designs and deploys propensity models to deepen client engagement, builds portfolio construction frameworks grounded in Monte Carlo and optimization techniques, and delivers rigorous business analytics for senior stakeholders.  

 

 

Job responsibilities: 

  • Develop and enhance quantitative tools and reusable frameworks that support investment decision-making, product development, and ongoing performance monitoring. 
  • Own end-to-end business analytics for the Brokerage team, transforming complex datasets into strategic insights and clear product recommendations for senior stakeholders. 
  • Conduct applied research on statistical, machine learning, and mathematical methods relevant to brokerage and personal investing use cases. 
  • Build and maintain portfolio construction methodologies using Monte Carlo simulations, optimization algorithms, and risk models that align with client objectives and guardrails. 
  • Lead the design, development, and deployment of propensity models and scoring frameworks that increase client acquisition, activation, cross-sell, and retention. 
  • Partner with technology, product, and business teams to integrate models and analytics into production systems with appropriate scalability, reliability, and controls. 
  • Communicate findings, trade-offs, and recommendations with clarity and business context to leadership and cross-functional partners. 

 

 

Required qualifications, capabilities and skills 

 

  • Advanced degree (Masters or PhD) in Mathematics, Statistics, Physics, Financial Engineering, Computer Science, or a related quantitative discipline. 
  • Significant experience in quantitative analytics, financial modelling, or a related role within financial services, with a demonstrated record of productionizing models. 
  • Strong proficiency in Python and SQL, including experience with scientific computing and machine learning libraries (NumPy, SciPy, pandas, scikit-learn). 
  • Deep expertise in statistical modelling, probability theory, Monte Carlo methods, and optimization techniques. 
  • Experience building propensity models, scoring systems, or recommendation engines tied to measurable business outcomes. 
  • Ability to convey complex quantitative concepts to non-technical stakeholders with precision and brevity. 
  • Strong understanding of investment products, portfolio theory, and brokerage operations. 
  • Passion for investments with an entrepreneurial and business oriented mindset. 

 

Preferred qualifications, capabilities and skills 

 

  • Familiarity with cloud platforms (AWS, GCP, or Azure) for scalable data processing and model deployment. 
  • Knowledge of regulatory considerations relevant to brokerage and personal investing. 
  • Experience within model risk management or model governance frameworks. 
  • Prior experience in brokerage, wealth management, or asset management environments. 
  • Fluent in other European languages (beyond English) 
J.P. Morgan Personal Investing offers award-winning investments products and digital wealth management services to over 275,000 investors in the UK and with ambitious plans to expand internationally. We built the business with innovation as a core part of our ethos to give consumers the confidence and clarity to make informed investment decisions and achieve their financial goals.