Data Scientist - Sr Associate

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

Develops, trains, and deploys ML models for fraud prevention, researches and implements novel architectures like Graph Networks, Agentic AI, and LLMs, and builds/tests AI agents. Utilizes Databricks and PySpark for data pipelines and dashboards, monitors model performance, and leads technical strategy. Requires 5+ years of experience in financial institutions, proficiency in Python, SQL/PySpark, deep learning frameworks, and AWS.

What you'd actually do

  1. Develop, train, and deploy machine learning models for fraud prevention and risk management.
  2. Research and implement novel architectures, including Graph Networks, Agentic AI, and Large Language Models.
  3. Build and test AI agents, iterating designs to enhance functionality and user experience. Conduct rigorous testing to ensure reliability and effectiveness of AI solutions.
  4. Use tools like Databricks and PySpark to create data pipelines and dashboards that support AI-driven insights and decision-making.
  5. Monitor and optimize model performance in real-world environments, adapting to evolving fraud patterns.

Skills

Required

  • Master’s degree in Computer Science, Mathematics, Statistics, Economics, or a related quantitative field, or equivalent work experience.
  • Minimal 5-year of experience in developing and managing predictive risk models in financial institutions.
  • Deep understanding of machine learning theory and algorithms, with hands-on experience in both classical and deep learning methods.
  • Proficient in Python, SQL or PySpark with experience in deep learning frameworks such as PyTorch or TensorFlow, and classical machine learning tools like XGBoost or Scikit-learn.
  • Experience working with large datasets and building data pipelines using Databricks, PySpark, or similar technologies.
  • Experience working in AWS cloud environments.
  • Ability to build and test AI agents, iterate designs, and conduct rigorous testing for reliability and effectiveness.

Nice to have

  • Knowledge of graph analytics including GSQL will be an added bonus.
  • Experience or strong interest in Graph Analytics and Agentic AI.
  • Knowledge of GSQL.
  • Deep technical understanding of the mathematics behind algorithms, not just library usage.
  • Product-first mindset, with a focus on the role models play in the user experience and overall product responsibility.
  • Versatility in handling both tabular and non-tabular data using classical machine learning (e.g., trees/forests) and modern deep learning techniques.
  • Driven by impact and energized by the responsibility of having your models make decisions on live financial transactions.
  • Demonstrated ability to build scalable, reusable solutions that contribute to firmwide capabilities and long-term strategic goals.

What the JD emphasized

  • minimal 5-year of experience in developing and managing predictive risk models in financial institutions
  • Ability to build and test AI agents, iterate designs, and conduct rigorous testing for reliability and effectiveness.

Other signals

  • develop, train, and deploy machine learning models
  • Build and test AI agents
  • implement novel architectures, including Graph Networks, Agentic AI, and Large Language Models