Quant Analytics Senior Associate

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Consumer & Community Banking

Quant Analytics Senior Associate at JPMorgan Chase focusing on pricing initiatives within the Consumer & Community Banking Data & Analytics team. The role involves quantitative problem-solving, analytical research, and leading a team, while pragmatically using GenAI/LLMs as complementary tools to classical/statistical/graph analytical methods for core pricing strategy.

What you'd actually do

  1. Deliver effective quantitative problem solving and analytical research for key pricing initiatives
  2. Apply deep understanding of business and data analytical techniques to research and experimentation
  3. Lead, mentor, hire, and develop a high-performing team of analytics professionals, promoting scientific rigor, ethical AI, and continuous learning
  4. Maintain a pragmatic approach to GenAI/LLMs as complementary tools, prioritizing classical/statistical/graph analytical methods for core pricing strategy workstreams
  5. Partner with cross-functional teams, including Finance and Marketing, to drive impactful results

Skills

Required

  • Graduate or post-graduate degree in a quantitative discipline such as Computer Science, Statistics, Mathematics, Finance, Economics, Data Analytics, or Machine Learning
  • 6+ years of hands-on analytics experience in banking strategic analytics along with Python, SQL and visualization tool including Tableau & Alteryx.
  • Hands on experience in Python, SQL and visualization tool including Tableau with machine learning frameworks
  • Strong statistical and econometric foundation with hands-on experience in pricing analytics, including elasticity estimation, A/B testing, causal inference, and experimentation frameworks
  • Solid skills in advanced analytics with SAS, Python, or R language
  • Excellent communication skills to translate and explain complex models with clear reason codes, influencing cross-functional stakeholders and senior leadership
  • Exposure to enterprise AI enablement, LLM-assisted workflows, or analytics transformation programs
  • Ability to evaluate opportunities to apply AI, GenAI, or intelligent automation to improve investigative analysis, control documentation, operating procedures, knowledge retrieval, issue summarization, and workflow efficiency
  • Familiarity with supervised learning, anomaly detection, semi-supervised learning, clustering, feature stores, calibration/threshold optimization, imbalanced learning, and pricing sensitivity evaluation

Nice to have

  • Proficient in big data ETL processes for structured and unstructured databases
  • Professional experience with AWS, Spark/EMR, ChatGPT, Confluence, and Snowflake
  • Exposure to enterprise AI enablement, LLM-assisted workflows, or analytics transformation programs and workflows.
  • People leadership: recruiting, coaching, performance management, and fostering an inclusive, high-accountability culture.
  • Good understanding of IT processes and databases, with ability to work directly with data owners and custodians

What the JD emphasized

  • ethical AI

Other signals

  • Leverages AI/GenAI as complementary tools
  • Prioritizes classical/statistical/graph analytical methods
  • Evaluates opportunities to apply AI/GenAI