Agentic AI/ML Engineer
Quick Summary
FieldAI’s Irvine team is where embodied AI meets real robots, real sensors, and real field deployments. Based in the heart of Southern California’s robotics ecosystem, we build risk-aware, reliable,
As an Agentic AI/ML Engineer, you will build agentic solutions that turn FieldAI’s data and tooling into actionable support and insights. Your work has a dual focus: creating internal agents that accelerate engineering and operational workflows, and building customer-facing agentic experiences that help users gain insights from their deployments.
A critical foundation of this work is the AI Ops platform you will help build—developing core infrastructure for orchestration, tool integration, memory, evaluation, and observability. This is a hands-on engineering role where you will prototype, evaluate, and deploy agent-native solutions that directly multiply the impact of our teams, customers, and technology.
This role is critical to how we scale. As our fleet, customer base, and team continue to grow, the agentic solutions and AI Ops infrastructure you build will enable us to support more customers, surface deeper insights, and operate more efficiently without scaling headcount linearly. Your work will directly amplify the effectiveness of engineers, field teams, and customers, making this a high-impact opportunity to contribute to FieldAI's next phase of growth.
This is a fixed-term engineering role intended for early-career candidates, including recent graduates and engineers with up to approximately one year of professional experience. The initial engagement is expected to last 3–6 months, with the possibility of extension or conversion to a full-time position based on performance, business needs, and organizational priorities.
Design and build agentic workflows that leverage tool use, memory, planning, and orchestration to automate repetitive tasks and enable natural-language access to internal and customer-facing data.
Contribute to FieldAI's AI Ops platform by developing agent infrastructure for orchestration, evaluation, observability, and reliability. Apply these capabilities to create agent-native DevOps workflows that automate engineering, support, and operational processes.
Develop and optimize retrieval systems, including RAG pipelines, vector databases, and knowledge graph integrations, to provide agents with accurate, relevant, and scalable context.
Build evaluation frameworks and automated testing pipelines to measure agent quality, reliability, safety, latency, and business impact, and use those insights to continuously improve system performance.
Prototype, iterate, and deploy AI-powered tools that improve internal productivity and deliver actionable insights to customers.
Partner closely with engineering, product, field operations, and customer-facing teams to identify high-leverage opportunities for automation and agent-driven workflows.
BS, MS, or Ph.D. in Computer Science, Artificial Intelligence, Machine Learning, Robotics, or a related technical field, or equivalent hands-on experience. Recent graduates and candidates with up to approximately one year of professional experience are encouraged to apply.
Strong evidence of building and shipping AI or agentic systems through academic research, internships, hackathons, open-source contributions, or personal projects.
Solid understanding of modern agentic AI concepts, including tool use, memory, retrieval-augmented generation (RAG), planning, and multi-step reasoning, with experience applying these concepts in real-world projects.
Strong Python engineering skills, including writing clean, maintainable, testable, and performant code. Familiarity with software engineering best practices such as version control, containerization (Docker), CI/CD, and automated testing.
Hands-on experience with modern agent frameworks and orchestration systems such as LangGraph, LangChain, LlamaIndex, CrewAI, or similar technologies.
Experience building, evaluating, and improving AI systems through structured testing, benchmarking, observability, tracing, and monitoring frameworks.
Familiarity with retrieval and grounding techniques, including vector databases, semantic search, knowledge graphs, and other approaches used to improve agent accuracy and reliability.
Experience working with cloud platforms such as AWS, GCP, or Azure for deploying and operating AI/ML systems. Experience with robotics, edge computing, or on-device AI systems is a plus.
Demonstrated ownership and bias for action, with the ability to take an ambiguous problem, break it down into actionable steps, and deliver working solutions.
Strong collaboration and communication skills, including the ability to work across engineering, product, operations, and customer-facing teams to understand requirements and drive outcomes.
Curiosity, initiative, and a desire to learn quickly while contributing in a fast-paced, high-growth environment.
Experience building, operating, or contributing to AI infrastructure, evaluation systems, observability platforms, or data pipelines that support production AI applications.
Familiarity with advanced agentic patterns such as multi-agent systems, human-in-the-loop workflows, long-horizon planning, tool orchestration, or autonomous task execution.
Experience building AI-powered products, internal developer tools, copilots, assistants, or workflow automation systems used by real users.
Exposure to robotics, autonomy, edge computing, or large-scale operational systems.
Familiarity with observability and debugging tools for AI and robotic systems, such as Langfuse, MLflow, Weights & Biases, Foxglove, or similar platforms.
Contributions to open-source projects, research publications, technical blogs, competition results, or other publicly available work that demonstrates technical depth and initiative.
A portfolio of personal projects, hackathon submissions, or agentic applications you've designed and shipped independently. We love seeing what you've built.
Location & Eligibility
Listing Details
- Posted
- June 4, 2026
- First seen
- June 4, 2026
- Last seen
- June 4, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 79%
- Scored at
- June 4, 2026
Signal breakdown

Field AI develops field-proven embodied artificial intelligence (AI) technology, specifically Field Foundation Models™ (FFMs), to enable robots to operate autonomously in complex, real-world environments across various industries.
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