Staff AI Engineer – Agentic AI and Automaton

San Francisco, CA | Lehi, UT | Plano, TX

At Collective Health, we're transforming how employers and their people engage with their health benefits by seamlessly integrating cutting-edge technology, compassionate service, and world-class user experience design. About the Role:

We are looking for a seasoned Staff Engineer to lead the design and delivery of highly scalable, cloud-native backend, data, and AI systems with a strong focus on AI-driven automation and agentic workflows.

In this role, you will define the technical direction for the core TPA platform (Eligibility, Provider Data and others), enable intelligent, end-to-end workflows across systems, and drive the integration of AI into real-world business operations. You will operate at the intersection of backend architecture, data engineering, and applied AI, while mentoring engineers and influencing technical strategy across teams.

This is a hands-on leadership role for someone who thrives in ambiguous, high-impact problem spaces and can translate emerging AI capabilities into production-grade systems at scale.

What you'll do:

Set the technical vision and drive architecture for scalable, cloud-native backend, data, and AI systems

Design and build API-first and event-driven systems supporting internal and external integrations (partners, EDI, downstream platforms)

Lead development of high-throughput data pipelines (batch + streaming) powering operational workflows and AI use cases

Design and implement AI-driven automation and agentic workflows to reduce manual operations and enable intelligent decisioning

Integrate LLM-based capabilities (search, summarization, copilots, workflow orchestration) into core platform services

Establish best practices for AI systems (prompting, evaluation, guardrails, observability, responsible AI)

Build and evolve integration layers across APIs, events, and file-based systems (including complex partner integrations)

Improve data quality, validation, lineage, and real-time visibility across critical business workflows

Drive adoption of AI-assisted development workflows (e.g., Cursor, Claude Code, GitHub Copilot) to accelerate engineering velocity and delivery

Partner with Product, Data, and Operations to translate complex workflows into scalable, intelligent systems

Lead small but nimble teams, cross-team initiatives, influencing technical roadmap and AI adoption and implementation strategy

Mentor sr. engineers and technical leads, raising the bar on system design, data engineering, and AI adoption

To be successful in this role, you'll need:

10+ years of experience building scalable, distributed backend systems and platforms

Strong expertise in Java/Spring Boot and/or Python, with deep understanding of microservices architecture

Proven experience designing and operating integration-heavy systems (APIs, event-driven systems, partner integrations)

Hands-on experience with cloud-native architectures and Implementation (AWS and/or GCP)

Strong experience building data pipelines and data-intensive systems (batch and/or streaming)

Deep understanding of data engineering principles (data modeling, quality, lineage, observability)

Experience working with complex data domains (e.g., transactional systems, EDI, or operational workflows)

Hands-on experience integrating AI/ML or LLM-based capabilities into production systems

Familiarity with RAG pipelines, embeddings, and vector-based retrieval systems

Solid understanding of event-driven architectures (Kafka, queues, SQS) and distributed systems design

Hands-on experience using AI-assisted development tools (e.g., Cursor, Claude Code, GitHub Copilot) to accelerate development

Strong understanding of AI-augmented engineering workflows, including prompt-driven development, testing acceleration, and iterative refinement

Proven ability to lead cross-team technical initiatives, influence architecture, and mentor senior engineers

Strong communication skills with the ability to connect technical decisions to business impact

Our Tech Stack:

Backend: Java / Spring Boot, Python

Cloud: AWS, GCP

Orchestration: Kubernetes, Docker

Databases: PostgreSQL

Frontend: React, Angular

AI Tooling: Claude Code, GitHub Copilot, Cursor, Gemini, and emerging AI platforms

Pay Transparency Statement

This is a hybrid position based out of one of our offices: San Francisco, CA, Plano, TX, or Lehi, UT. Hybrid employees are expected to be in the office two days per week. #LI-hybrid

The actual pay rate offered within the range will depend on factors including geographic location, qualifications, experience, and internal equity. In addition to the salary, you will be eligible for 330,000 stock options and benefits like health insurance, 401k, and paid time off . Learn more about our benefits at https://jobs.collectivehealth.com/benefits/ . #LI-LN1 San Francisco, CA Pay Range $200,000 — $250,000 USD Lehi, UT Pay Range $160,000 — $200,000 USD Plano, TX Pay Range $176,000 — $220,000 USD Why Join Us?

Mission-driven culture that values innovation, collaboration, and a commitment to excellence in healthcare

Impactful projects that shape the future of our organization

Opportunities for professional development through internal mobility opportunities, mentorship programs, and courses tailored to your interests

Flexible work arrangements and a supportive work-life balance

We are an equal opportunity employer and value diversity at our company. We do not discriminate on the basis of race, religion, color, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status. Collective Health is committed to providing support to candidates who require reasonable accommodation during the interview process. If you need assistance, please contact recruiting-accommodations@collectivehealth.com .

Privacy Notice

For more information about why we need your data and how we use it, please see our privacy policy: https://collectivehealth.com/privacy-policy/ .

Apply with uptayn.

Sign in free to open the apply link, get this role scored against your CV, and track your application.

uptayn
2026 · built quietly in Berlin.
uptayn = up + attain
Built for
  • Recent business grads
  • Engineers pivoting to ops
  • Consultants → startup
  • Second-job operators
Quiet by default
  • No tracking pixels
  • No LinkedIn login
  • No spam outreach
  • Just roles + your CV