Quant Analytics Associate Sr - Dart

JPMorgan Chase JPMorgan Chase · Banking · Plano, TX +1 · Consumer & Community Banking

Senior Quantitative Analytics Associate role focused on designing and delivering automated business solutions using data pipelines, advanced analytics (forecasting, anomaly detection), and machine learning for operations within a financial institution. Responsibilities include end-to-end MIS solution delivery, ELT/ETL pipeline development, dashboard creation, and applying ML for operational optimization.

What you'd actually do

  1. Own end-to-end MIS solution delivery: requirements gathering, metric definition, source data acquisition, modeling, transformation, validation, and visualization.
  2. Design and build reliable ELT/ETL pipelines in Python/SQL; implement orchestration, version control, and CI/CD to ensure repeatability and resilience.
  3. Create executive-ready dashboards and self-service data marts (e.g., Tableau) with intuitive UX and clear metric definitions.
  4. Apply advanced analytics (forecasting/time series, anomaly detection, segmentation, queuing/capacity planning) to optimize operational performance
  5. Implement data quality frameworks (unit/integration tests, validation checks, anomaly monitoring), define SLAs/SLOs, and maintain runbooks.

Skills

Required

  • 5+ years of hands-on analytics experience delivering measurable business improvements
  • Bachelor’s degree in a quantitative or technical field
  • Expert-level SQL
  • strong Python (pandas, NumPy; unit testing with pytest; structured logging; packaging)
  • Proven experience building automated data pipelines
  • operating in data lake/cloud environments (Snowflake; AWS services such as S3, Glue, Lambda; or equivalent)
  • Strong data visualization experience (Tableau or equivalent)
  • Working knowledge of machine learning and applied statistics for operations use cases (time series forecasting, supervised/unsupervised methods, feature engineering)
  • Familiarity with data wrangling tools (e.g., Alteryx)
  • as applicable, R for statistical analysis
  • Excellent verbal and written communication skills
  • Demonstrated ability to collaborate across functions and levels

Nice to have

  • Banking industry experience and domain knowledge in Consumer & Community Bank (CCB) Operations
  • Experience with experimentation and causal methods (A/B testing design, uplift modeling, causal inference frameworks)
  • Modern data engineering practices: orchestration (Airflow or equivalent), transformation frameworks (dbt), API integrations, and containerization (Docker) or comparable tooling
  • Performance and cost optimization in cloud data platforms
  • Exposure to risk and control frameworks; model documentation; audit and lineage standards
  • Certifications (e.g., AWS Data/Analytics, Snowflake, Tableau)

What the JD emphasized

  • operations analytics
  • MIS
  • complex environments
  • advanced analytics
  • machine learning
  • operations use cases
  • regulated environments

Other signals

  • automation
  • data pipelines
  • advanced analytics
  • ML for operations