
Search by job, company or skills

Leverage your problem-solving skills to thrive in a fast-paced environment and drive customer-centric strategies. As a leader in solutioning, collaborate closely with the Sales teams to deliver tailor-made product solutions that meet clients needs. Ignite your passion for product innovation by leading customer-centric development, inspiring solutions, and shaping the future with your strategic vision and influence. You will lead innovation through the development of products and features that delight customers. As a leader on the team, you leverage your advanced capabilities to challenge traditional approaches, remove barriers to success, and foster a culture of continuous innovation that helps inspire cross-functional teams create groundbreaking solutions that address customer needs.
As a Product Manager in Chief Data & Analytics Office - Fusion Platform Team, you are an integral part of a team that defines and configures complex solutions for key client relationships and prospect opportunities in partnership with Sales. You are responsible for acting as the voice of the customer by understanding their needs and communicating feedback to the Product teams. The Agent Platform Engineer role sits inside the Product Agent Solutions Team the Forward Deployed Engineering function within CDAO (Chief Data & Analytics Office). This team is the tip of the spear for agentic AI adoption across the firm. We partner directly with Line of Business engineering teams, get in the code with them, and do not leave until a production agent ships and if you want to build AI systems that actually run in production at one of the world's most complex regulated environments, this is the role.
As anAgent Platform Engineer, you are first and foremost a builder. You write code, design agent architectures, and solve the hard integration problems that stand between a working agent prototype and a production system serving internal clients in a regulated environment. You are not a Product Manager, not a deck builder, and not a facilitator - you are an engineer who can also think in systems and communicate with senior stakeholders. You will work within the Agent Builder ecosystem contributing to reference implementations, debugging real integration failures, and developing the reusable patterns that scale agent adoption across the firm. This role demands both breadth (platform fluency across the full agent stack) and depth (the ability to architect a multi-agent system and write the code to prove it works).
Job responsibilities
Contribute to the Agent Deployment Risk Framework - translate governance requirements into engineering constraints that ship as code, not documentation. Maintain personal technical depth as the agent stack evolves - MCP, tool-calling patterns, multi-modal inputs, model gateway integration, and evaluation frameworks.
Required qualifications, capabilities, and skills
Strong written and verbal communication - you can explain an agent architecture to a senior engineer and to a business MD, without changing the truth in between.
Preferred qualifications, capabilities, and skills
JPMorgan Chase Bank, N.A., doing business as Chase Bank or often as Chase, is an American national bank headquartered in New York City, that constitutes the consumer and commercial banking subsidiary of the U.S. multinational banking and financial services holding company, JPMorgan Chase
Job ID: 150537251
Skills:
Python, agent security concerns, GenAI application development, chunking strategy, agent-based architectures, LangGraph, async patterns, LLM APIs, RAG pipelines, multi-step reasoning loops, agent-to-agent communication patterns, AI ML systems, LangChain, tool schemas, MCP servers, embedding models, retrieval evaluation, SDK extension, AutoGen, vector stores, MCP Model Context Protocol, Production Monitoring, tool-calling orchestration, framework-level engineering
Skills:
Python, GenAI application development, tool surface exposure, chunking strategy, cloud-native AI infrastructure, agent-based architectures, LangGraph, async patterns, LLM APIs, RAG pipelines, agent-to-agent communication patterns, multi-step reasoning loops, AI ML systems, LangChain, CrewAI, tool schemas, MCP servers, embedding models, retrieval evaluation, SDK extension, AutoGen, vector stores, MCP Model Context Protocol, Production Monitoring, tool-calling orchestration, framework-level engineering
We don’t charge any money for job offers