Compliance - Quant Modeling Senior Associate
Company: JPMorganChase
Location: Jersey City
Posted on: April 2, 2026
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Job Description:
Description Bring your expertise to JPMorgan Chase. As part of
Risk Management and Compliance, you are at the center of keeping
JPMorgan Chase strong and resilient. You help the firm grow its
business in a responsible way by anticipating new and emerging
risks, and using your expert judgement to solve real-world
challenges that impact our company, customers and communities. Our
culture in Risk Management and Compliance is all about thinking
outside the box, challenging the status quo and striving to be
best-in-class. As a Data Scientist Vice President within the
Compliance, Conduct Operational Risk (CCOR) Data Analytics team,
you will be responsible for devising and developing Proofs of
Concept (POCs) and deployable models using AI/Gen AI/ ML
techniques, algorithms and other statistical and numerical methods.
You will need to be able to extract and work with large volumes of
data (both structured and unstructured) from multiple sources,
transforming it into an analysis-ready format to develop the data
pipeline. Additionally, you are expected to independently formulate
methodologies, and quantitative and analytical tasks, from business
problems. Job Responsibilities Analyze complex/unstructured data to
understand the business problem and use case Analyze business
requirements, design, and develop appropriate methodology Develop
deployable, scalable and effective models/ analytical methods as
part of technology managed system or as a self-served application
of a business user Work collaboratively and creatively with other
data scientists, technology partners, risk professionals, model
validation teams, etc. Prepare technical documentation of
quantitative models for internal model risk and governance review
Required qualifications, capabilities, and skills 6 years of
related experience in Python, R or Scala with Bachelor of Science
degree in Computer Science, Physical Sciences, Econometrics,
Statistics, or other any quantitative discipline. Demonstrable
theoretical and application knowledge of AL/ ML, Gen AI and
Statistical Models Demonstrable hands-on experience with
Transformer or other deep learning architectures in real
applications Demonstrable hands-on experience with using or fine
tuning multimodal LLM in real business applications with scale and
performance Demonstrable hands-on experience and familiarity with
any or all of the following packages, algorithms, and/or
alternatives, including Graph Learning Packages : (NetworkX,
Torch-Geometric, Graphframes, Graphistry),ML Packages (Pandas,
Scikit-Learn, XGBoost, catboost, lightgbm, automl, Optuna,
Hyperopt), Visualization Packages (Matplotlib, Seaborn, Geopandas),
Algorithm (Ensemble Louvian / Hierarchical Clustering, Label
Propagation, Connected Component Analysis, Graph Neural net (Graph
Attention Network), Page Rank, Centrality Analysis, Tree based
Analysis, Outlier Detection Methods, Zero Shot/ Few Shot learning)
Demonstrable experience with graph analytics, graph-based learning,
and graph representation/visualization Experience in graph
Database: TigerGraph, Neo4j Experience in Query Language: Hive,
Cypher (Graph Query Language) Experience in developing and
operationalization of data pipelines Familiarity and experience of
assimilating large amounts of data from multiple databases and
utilize them for creating actionable outcome; Adhering to a
standardized analysis and project methodology; and documenting
quantitative analysis Experience with processes, controls and
governance of a highly regulated environment; Self-starter and
strong influencing skills with strong communication skills
Preferred qualifications, capabilities, and skills Hands-on
professional experience in software development especially with
analytical & computationally intensive systems, digital
transformations leveraging cloud technologies (AWS, GCP, Azure,
Databricks etc.). Experience with EKS or AKS provisioning is a plus
Post graduate degrees such as Master’s Degree, PhD, etc. is
preferred Real life exposure to Agile SDLC, ModelOps and /Or Design
Thinking is desirable. Working knowledge of C/C#/C++ or others is a
plus Experience in financial services industry especially in
Operational Risk Management, Anti-Money Laundering & Know Your
Customer, Trade Surveillance model development
Keywords: JPMorganChase, Union City , Compliance - Quant Modeling Senior Associate, IT / Software / Systems , Jersey City, New Jersey