Data Scientist Senior Associate

JPMC Candidate Experience page
Bengaluru, IN

Join a world-class data science team at JPMorgan Chase and help shape the future of our Chief Administrative Office. As a leader in applied AI and machine learning, you’ll have the opportunity to work on high-impact projects that influence the way we do business across multiple domains. Collaborate with talented colleagues, leverage cutting-edge technologies, and see your work make a tangible difference. We value curiosity, technical excellence, and a passion for solving complex problems. If you’re ready to accelerate your career and drive meaningful change, we want to hear from you. 


As a Data Scientist Senior Associate in the Chief Data & Analytics Office, you will lead the development and deployment of innovative AI and machine learning solutions. You will collaborate with cross-functional teams to address complex business challenges, drive adoption of modern ML practices, and ensure responsible AI governance. You will have the opportunity to work with state-of-the-art technologies and contribute to a culture of technical excellence and continuous learning. 

 

Job responsibilities: 

  • Lead the hands-on design, development, and deployment of advanced AI, GenAI, and large language model solutions. 
  • Serve as a subject matter expert on a wide range of machine learning techniques and optimizations. 
  • Collaborate with product, engineering, and business teams to deliver scalable, production-ready AI systems. 
  • Conduct experiments using the latest ML technologies, analyze results, and tune models for optimal performance. 
  • Own end-to-end code development in Python for both proof-of-concept and production-ready solutions. 
  • Integrate generative AI within the ML platform using state-of-the-art techniques. 
  • Drive adoption of modern ML infrastructure, tools, and best practices. 
  • Optimize system accuracy and performance by identifying and resolving inefficiencies. 
  • Communicate technical concepts and results to both technical and business stakeholders. 
  • Ensure responsible AI practices, model governance, and compliance with regulatory standards. 
  • Mentor and guide other AI engineers and scientists, fostering a culture of continuous learning. 

 

Required qualifications, capabilities, and skills: 

  • Master’s or PhD in Computer Science, Engineering, Mathematics, or a related quantitative field. 
  • Minimum 7 years of hands-on experience in applied machine learning, including generative AI, large language models, or foundation models. 
  • At least 5 years of experience programming in Python; experience with ML frameworks such as PyTorch or TensorFlow. 
  • Proven experience designing, training, and deploying large-scale ML/AI models in production environments. 
  • Deep understanding of prompt engineering, agentic workflows, and orchestration frameworks. 
  • Experience with cloud platforms (AWS, Azure, GCP) and distributed systems (Kubernetes, Ray, Slurm). 
  • Solid grasp of MLOps tools and practices (MLflow, model monitoring, CI/CD for ML). 
  • Strong communication skills with the ability to explain complex technical concepts to diverse audiences. 
  • Demonstrated leadership in working effectively with engineers, product managers, and other ML practitioners. 
  • Experience applying data science and ML techniques to solve business problems and passion for detail, follow-through, and technical excellence.

     

 

Preferred qualifications, capabilities, and skills: 

  • Experience with high-performance computing and GPU infrastructure (e.g., NVIDIA DCGM, Triton Inference). 
  • Familiarity with big data processing tools and cloud data services. 
  • Advanced knowledge in reinforcement learning, meta learning, or related advanced ML areas. 
  • Experience with search/ranking, recommender systems, or graph techniques. 
  • Background in financial services or regulated industries. 
  • Experience with building and deploying ML models on cloud platforms such as AWS Sagemaker, EKS, etc. 
  • Published research or contributions to open-source GenAI/LLM projects. 
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