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CCB Risk Program Associate

at J.P. Morgan

Back to all Data Science / AI / ML jobs
J.P. Morgan logo
Bulge Bracket Investment Banks

CCB Risk Program Associate

at J.P. Morgan

JuniorNo visa sponsorshipData Science/AI/ML

Posted 19 days ago

No clicks

Compensation
Not specified

Currency: Not specified

City
Wilmington
Country
United States

The Portfolio Risk Modeling team seeks an associate to develop forecasting models for Chase credit card portfolios used in stress testing, loss reserves, and business planning. You will work on a large distributed simulation and forecasting codebase, perform feature engineering, selection, and training of machine learning models on massive transaction datasets. The role requires collaboration with business partners in loss forecasting, finance and technology, communicating results and insights to stakeholders and senior leadership. A master’s in a quantitative field and proficiency in Python or Scala are required; experience with Spark/Hive and big-data model design is preferred.

Location: Wilmington, DE, United States

The Portfolio Risk Modeling team within CCB Risk Modeling group is responsible for end-to-end development of best in class forecasting model suite for Chase credit card portfolios to support stress testing, loss reserve, and business planning exercises. 

 

Job Responsibilities:

  • You will work on a large and cleanly structured codebase designed for large-scale distributed simulation and forecasting.
  • collaborate with business partners in loss forecasting, finance and technology, effectively communicate model results, analytical findings, and insights to them and senior leadership team to support business and or technical decisions.
  • Perform machine learning tasks such as feature engineering, feature selection, and developing and training machine learning algorithms using cutting-edge technology to extract predictive models/patterns from billions of transactions’ amounts of data.
  • Collaborate with business teams to identify opportunities, collect business needs, and provide guidance on leveraging the machine learning solutions.
  • Interact with a broader audience in the firm to share knowledge, disseminate findings, and provide domain expertise

 

Job requirements, capabilities and skills:

  • Master’s degree in Computer Science, Mathematics, Statistics, Econometrics, Physics, Engineering, or a related quantitative discipline is required.
  • Proven proficiency in programming languages for large-scale data analysis, such as Python or Scala.
  • A strong interest in how models work, the reasons why particular models work or not work on particular problems, and the practical aspects of how new models are designed.

Preferred qualifications, capabilities and skills:

  • PhD in a quantitative field with publications in top journals, preferably in machine learning.
  • Experience with model design in a big data environment making use of distributed/parallel processing via Hadoop, particularly Spark and Hive

 

You will develop forecasting models for Chase credit card portfolios for stress testing, loss reserves, and business planning.

CCB Risk Program Associate

at J.P. Morgan

Back to all Data Science / AI / ML jobs
J.P. Morgan logo
Bulge Bracket Investment Banks

CCB Risk Program Associate

at J.P. Morgan

JuniorNo visa sponsorshipData Science/AI/ML

Posted 19 days ago

No clicks

Compensation
Not specified

Currency: Not specified

City
Wilmington
Country
United States

The Portfolio Risk Modeling team seeks an associate to develop forecasting models for Chase credit card portfolios used in stress testing, loss reserves, and business planning. You will work on a large distributed simulation and forecasting codebase, perform feature engineering, selection, and training of machine learning models on massive transaction datasets. The role requires collaboration with business partners in loss forecasting, finance and technology, communicating results and insights to stakeholders and senior leadership. A master’s in a quantitative field and proficiency in Python or Scala are required; experience with Spark/Hive and big-data model design is preferred.

Location: Wilmington, DE, United States

The Portfolio Risk Modeling team within CCB Risk Modeling group is responsible for end-to-end development of best in class forecasting model suite for Chase credit card portfolios to support stress testing, loss reserve, and business planning exercises. 

 

Job Responsibilities:

  • You will work on a large and cleanly structured codebase designed for large-scale distributed simulation and forecasting.
  • collaborate with business partners in loss forecasting, finance and technology, effectively communicate model results, analytical findings, and insights to them and senior leadership team to support business and or technical decisions.
  • Perform machine learning tasks such as feature engineering, feature selection, and developing and training machine learning algorithms using cutting-edge technology to extract predictive models/patterns from billions of transactions’ amounts of data.
  • Collaborate with business teams to identify opportunities, collect business needs, and provide guidance on leveraging the machine learning solutions.
  • Interact with a broader audience in the firm to share knowledge, disseminate findings, and provide domain expertise

 

Job requirements, capabilities and skills:

  • Master’s degree in Computer Science, Mathematics, Statistics, Econometrics, Physics, Engineering, or a related quantitative discipline is required.
  • Proven proficiency in programming languages for large-scale data analysis, such as Python or Scala.
  • A strong interest in how models work, the reasons why particular models work or not work on particular problems, and the practical aspects of how new models are designed.

Preferred qualifications, capabilities and skills:

  • PhD in a quantitative field with publications in top journals, preferably in machine learning.
  • Experience with model design in a big data environment making use of distributed/parallel processing via Hadoop, particularly Spark and Hive

 

You will develop forecasting models for Chase credit card portfolios for stress testing, loss reserves, and business planning.