Risk Analyst [multiple Positions Available]

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

This role focuses on performing statistical data analysis on time series data for Market Risk management, specifically for Value at Risk (VaR) calculations and Counterparty Credit Risk management. It involves building analytical tools, extracting and analyzing large datasets, validating data using financial product knowledge, and collaborating with technology teams to onboard new data sources. The goal is to ensure data quality and integrity for risk measurement and reporting, and to support regulatory and audit processes.

What you'd actually do

  1. Perform statistical data analysis to ensure accuracy of the time series data used in firmwide Value at Risk (VaR) calculation for Market Risk management.
  2. Analyze Average Daily Trading Volume (ADTV) data for data quality issues to be addressed in the process of establishing the Gross Market Concentration (GMC) limit and calculating the Strategic Stress Exposure (SSE) for Counterparty Credit Risk management.
  3. Build analytical and visualization tools for identifying trends and patterns, anomalies and spurious data including spikes, gaps, cyclicality and oscillation to improve data quality and integrity.
  4. Extract, assemble, organize and analyze large amounts of data from multiple and disparate sources by employing advanced techniques to scale up data management activities with efficiency and accuracy.
  5. Validate time series data by leveraging knowledge of financial products and risk factors in Equities, Fixed Income, FX, and Commodities, conducting research on market events, and interacting with trading desks.

Skills

Required

  • Performing risk calculation and sensitivity analysis across Equities, Fixed Income, FX, and Commodities asset classes using Python and Excel, applying greeks, and leveraging financial product knowledge of futures, options, credit default swaps, and securitized products
  • Estimating financial instrument profit and loss and conducting Value at Risk (VaR) impact analysis using VaR modeling methods, including variance-covariance, historical simulation, and Monte Carlo simulation
  • Conducting backtesting and stress testing using Python including Scikit-learn and R including dplyr and ggplot2 to validate and explain significant changes in portfolio risk resulting from movements in market data
  • Analyzing financial datasets using Python, SQL, and Excel and ensuring their integrity by applying statistical techniques including correlation analysis, linear regression, and outlier detection algorithms including z-score analysis and interquartile range (IQR) analysis
  • Evaluating counterparty credit risk by analyzing exposure concentrations across multiple dimensions, including issuers, regions, industry sectors, and products
  • Developing numerical programs for financial data analytics using Python and Python libraries including NumPy, Pandas, SciPy, Seaborn, and Matplotlib to process, model, and visualize market data
  • Programming SQL operations, including multi-table joins, nested queries, and analytic functions and optimizing query performance to process and analyze datasets from multiple sources
  • Performing data analysis and developing reports using Excel functions, including Index, Match, Data, Analysis add-ons, Pivot Tables, and dynamic charts
  • Identifying variance drivers to explain complex changes in financial datasets and delivering actionable insights to support decision-making within risk organizations
  • Creating key performance metrics by applying statistical analysis to measure the significance of data quality issues affecting risk measures
  • Supporting regulatory exams by providing requested data and detailed analyses leveraging SQL and Excel Macros to extract, process, and report information
  • Identifying and implementing process improvements to strengthen controls and enhance operational efficiency and data integrity

What the JD emphasized

  • statistical data analysis
  • time series data
  • data quality
  • risk management
  • financial products
  • market events