You will join an industry-leading team building production-grade AI-powered software, from intelligent retrieval and automation systems to generative AI tools that augment financial advisors, investors, and operations teams.
As a Software Engineer III at JPMorganChase within Applied AI and Machine Learning, you will build, deliver, and continuously improve real software that solves real problems. You will partner closely with financial advisors, client service, product, operations, and risk and control teams to translate ambiguous needs into measurable outcomes, and you will help scale responsible, well-governed AI capabilities across multiple use cases.
Job responsibilities
- Prepare and manage data for AI products by sourcing, understanding, and curating structured and unstructured datasets for generative AI and machine learning applications.
- Build and maintain data pipelines supporting retrieval-augmented generation and analytics, including ingestion, parsing, chunking, metadata tagging, indexing, and transformations.
- Diagnose and resolve data issues by identifying root causes (for example, missing data, duplicates, schema changes, and inconsistent definitions) and coordinating remediation with upstream teams.
- Implement data quality checks, profiling, validation, reconciliation, and monitoring to detect issues early and prevent production regressions.
- Support governance and controls by following data handling requirements (access, retention, privacy, and security) and documenting sources, definitions, and assumptions.
- Collaborate with stakeholders to translate business needs into scoped technical approaches with measurable success criteria.
- Develop with modern generative AI techniques, including retrieval-augmented generation, prompt design, agentic workflows, evaluation frameworks, and safety guardrails.
- Use AI-assisted development tools as part of your daily workflow and contribute to team best practices for AI-augmented engineering.
- Communicate system behavior, trade-offs, and business impact clearly to both technical and non-technical audiences.
- Document designs, experiments, and decisions rigorously, including validation evidence and reproducibility details.
- Build reusable tooling and infrastructure (shared libraries, evaluation harnesses, prompt libraries, and pipelines) to scale AI delivery across use cases.
Required qualifications, capabilities and skills
Preferred qualifications, capabilities and skills
- Exposure to distributed data processing patterns (for example, Spark).
- Familiarity with deep learning frameworks and ecosystems (for example, PyTorch, TensorFlow, and Hugging Face).
- Knowledge of financial markets, wealth management products, or advisor and client workflows.
- Demonstrated builder mindset through open-source contributions or personal projects in AI and machine learning.