CCB Risk Modeling AI ML Sr. Associate
Columbus, NE - USA
Job Summary
The CCB Risk Modeling team is seeking talented professionals with expertise in machine learning explainable AI (XAI) and responsible AI practices with a focus on credit decision and fraud modeling applications. Our work centers on explainability fairness and algorithmic bias understanding how modern AI systems reason and make decisions across ML systems next-generation LLMs and agentic workflows. The ideal candidate will drive these initiatives across model development tooling and cross-functional collaboration ensuring AI/ML solutions meet ethical standards and regulatory expectations.
Key Responsibilities
- Model Development:Design and develop machine learning models to drive impactful decisions across credit decisions and fraud modeling covering the entire customer lifecycle including acquisition account management transaction authorization and collections.
- Advanced Machine Learning Techniques:Apply state-of-the-art machine learning methodologies including deep learning architecture transformer-based models and LLMs on big data platforms to tackle complex business challenges.
- Explainability & Fairness:Develop and maintain tools and frameworks that enhance AI/ML model explainability and fairness ensuring transparency and ethical use of models.
- Strategic Collaboration:Work closely with senior management to develop and implement ambitious innovative modeling solutions ensuring their successful deployment into production environments.
- Cross-Functional Partnership:Collaborate with diverse teams including risk technology model governance and research throughout the entire modeling lifecyclefrom development and review to deployment and operational use.
Basic Qualifications
- Ph.D. or Masters degree from a reputable institution in a quantitative discipline such as Computer Science Mathematics Statistics Econometrics or Engineering.
- 2 years of experience with data analysis in Python.
- Proven track record in designing building and deploying high-quality machine learning models in production environments demonstrating a strong ability to translate theoretical concepts into practical applications.
- In-depth knowledge of advanced machine learning algorithms including logistic regression XGBoost Deep Neural Networks (CNN and RNN) clustering and recommendation systems with expertise in model design hyperparameter tuning and responsible deployment practices.
- Demonstrated experience in model interpretability and explainability for complex models such as XGBoost and GBM; experience extending these methods to deep learning architectures (CNNs RNNs transformers) is a strong plus.
- Familiarity with large language models (LLMs) and their applications including experience in fine-tuning prompt engineering and responsible deployment with appropriate safeguards monitoring and auditability.
- Proficiency in Python TensorFlow PyTorch Spark or Scala coupled with experience in big data technologies such as Hadoop AWS and Hive and familiarity with MLOps tooling that supports model monitoring drift detection and end-to-end auditability.
Preferred Qualifications
- Strong expertise interest and track record of performing cutting-edge research on Explainable AI
(XAI) and LLM.
- Demonstrated expertise in data wrangling and model building on a distributed Spark computation environment (with stability scalability and efficiency). GPU experience is desired.
- Strong ownership and execution; proven experience in implementing models in production.
Required Experience:
Senior IC
About Company
JPMorganChase, one of the oldest financial institutions, offers innovative financial solutions to millions of consumers, small businesses and many of the world’s most prominent corporate, institutional and government clients under the J.P. Morgan and Chase brands. Our history spans ov ... View more