We have an opportunity to impact your career and provide an adventure where you can push the limits of what's possible.
As a Data Scientist Lead at JPMorgan Chase within Asset and Wealth Management, you are an integral part of an agile team that works to enhance, build, and deliver trusted market-leading technology products in a secure, stable, and scalable way. As a core technical contributor, you will have opportunity to research, experiment, develop, and productionize high-quality machine learning models, services, and platforms to make a significant business impact. You will also design and implement highly scalable and reliable data processing pipelines and perform analysis and insights to promote and optimize business results.
Job responsibilities
Designs, deploys and manages prompt-based models on LLMs for various NLP tasks in the financial services domainConducts research on prompt engineering techniques to improve the performance of prompt-based models within the financial services field, exploring and utilizing LLM orchestration and agentic AI libraries.Collaborates with cross-functional teams to identify requirements and develop solutions to meet business needs within the organizationCommunicates effectively with both technical and non-technical stakeholdersBuilds and maintains data pipelines and data processing workflows for prompt engineering on LLMs utilizing cloud services for scalability and efficiency.Develops and maintains tools and framework for prompt-based model training, evaluation and optimizationAnalyzes and interprets data to evaluate model performance to identify areas of improvement
Required qualifications, capabilities, and skills
Formal training or certification on software engineering concepts and 5+ years applied experienceExperience with prompt design and implementation or chatbot applicationStrong programming skills in Python with experience in PyTorch or TensorFlowExperience building data pipelines for both structured and unstructured data processing.Experience in developing APIs and integrating NLP or LLM models into software applicationsHands-on experience with cloud platforms (AWS or Azure) for AI/ML deployment and data processing.Excellent problem-solving and the ability to communicate ideas and results to stakeholders and leadership in a clear and concise mannerBasic knowledge of deployment processes, including experience with GIT and version control systemsFamiliarity with LLM orchestration and agentic AI librariesHands on experience with MLOps tools and practices, ensuring seamless integration of machine learning models into production environment
Preferred qualifications, capabilities, and skillsFamiliarity with model fine-tuning techniques such as DPO and RLHF.Knowledge of Java, SparkKnowledge of financial products and services including trading, investment and risk management