7+ years in software engineering with a focus on applied AI/ML and distributed systems.
Bachelor's or Master's in Computer Science, Engineering, Data Science, or related field.
Expertise in designing and deploying generative AI systems and complex agent orchestration frameworks.
Proven ability to lead cross-functional AI initiatives and translate business objectives into system designs.
Strong proficiency in Python and familiarity with AI technologies such as vector databases and LLM APIs.
Experience in establishing prompt engineering best practices and organizational evaluation frameworks.
Familiarity with responsible AI principles and compliance in regulated environments.
Responsibilities
Architect comprehensive end-to-end AI systems with RAG pipelines and agent orchestration.
Define rigorous standards for prompt engineering and performance optimization strategies.
Lead deployment of AI systems ensuring observability and reliability in production environments.
Design scalable data ingestion architectures for diverse data sources and develop preprocessing pipelines.
Drive continuous improvement of AI systems through evaluation frameworks and user feedback analysis.
Collaborate with platform teams to ensure infrastructure readiness for AI workloads.
Mentor engineers through technical guidance and foster a culture of responsible AI development.
Benefits
Medical, dental, and vision benefits.
401(k) retirement savings plan.
Paid time off including company holidays and volunteer time off.
Paid parental and caregiver leave.
Short-term and long-term disability insurance.
Life insurance and other wellness opportunities.
Full Job Description
At Humana, applied artificial intelligence is central to driving intelligent automation that reduces administrative burden, enabling personalization that delivers tailored member experiences, and optimizing operational efficiency across the complex healthcare ecosystem. We are seeking an accomplished Lead Applied AI Engineer. This engineer will architect and deliver advanced AI systems. These systems will seamlessly integrate Generative AI capabilities and agents. They will integrate into secure, scalable healthcare platforms. These platforms handle millions of member interactions. They maintain the highest standards of data privacy and system reliability.
This highly technical and influential role defines technical standards for AI deployment across the organization. It ensures that AI systems are reliable through rigorous testing and monitoring, measurable through comprehensive metrics and evaluation frameworks. Additionally, it ensures compliance with healthcare regulations and ethical guidelines, and strategic alignment with enterprise architecture and business strategy. The Lead Applied AI Engineer will operate at the critical intersection of AI innovation and responsible healthcare technology, balancing the rapid pace of AI advancement with the careful, deliberate approach required in healthcare environments.
Key Responsibilities
Architect comprehensive end-to-end AI systems, including sophisticated RAG pipelines with multi-stage retrieval and re-ranking. These pipelines are designed with appropriate modularity, extensibility, and operational characteristics to support evolving business requirements. Additionally, the systems include complex agent orchestration systems that coordinate multiple specialized agents. Furthermore, they feature multi-model integrations that leverage different AI models for their respective strengths.
Define rigorous standards for prompt engineering, including templates, versioning, and testing methodologies. Establish comprehensive evaluation metrics that capture both technical performance and business value. Develop performance optimization strategies, including model selection criteria, caching approaches, and resource utilization patterns, that teams across the organization can adopt to accelerate AI delivery.
Lead deployment of AI systems into production environments with strong observability. This includes detailed logging and tracing. Comprehensive reliability is also crucial, featuring graceful degradation and circuit breakers. Monitoring is essential, with real-time dashboards and automated alerting. Additionally, robust incident response procedures are necessary. The goal is to ensure AI services meet stringent service level objectives required for healthcare applications.
Design scalable data ingestion architectures that can process diverse data sources, including structured databases, unstructured documents, and real-time streams. Implement efficient retrieval architectures using vector databases and hybrid search approaches. Develop data preprocessing pipelines that clean and enrich data for AI consumption. Establish data quality monitoring to ensure AI systems operate on high-quality inputs.
Drive quantitative evaluation and continuous improvement of AI systems through establishment of evaluation frameworks. Implement A/B testing capabilities, analyze user feedback and system telemetry, and systematically iterate on prompts, retrieval strategies, and model configurations. This progressive iteration improves system performance and user satisfaction over time.
Collaborate strategically with platform teams to ensure infrastructure readiness for demanding AI workloads. This includes ensuring GPU availability, appropriate networking configurations, and optimized data storage. Define requirements for AI-specific platform capabilities, such as model serving infrastructure and feature stores. Partner on integration of AI systems with enterprise services.
Mentor engineers at various levels through technical guidance, code reviews, architecture discussions, and career development support. Elevate AI engineering best practices across the organization through creation of documentation, delivery of training sessions, and establishment of communities of practice. Foster a culture of responsible AI development that prioritizes ethics, transparency, and user benefit.
Ensure AI solutions rigorously meet healthcare compliance requirements through comprehensive documentation of system behavior and decision logic. Implementation of ethical standards prevents algorithmic bias and ensures fairness across different populations. Adherence to regulatory frameworks, including HIPAA, FDA guidance for clinical decision support, and emerging AI-specific regulations, is also crucial.
Use your skills to make an impact
Required Qualifications
I have over 7 years of experience in software engineering with a strong focus on applied AI/ML. This experience includes building and operating distributed systems at scale, as well as developing full-stack architectures that combine backend services with modern web applications. My leadership of significant projects has delivered measurable business impact through AI capabilities.
We require a Bachelor's degree in Computer Science, Engineering, Data Science, or a related field. Alternatively, a candidate can demonstrate equivalent practical experience through significant technical leadership in AI projects, make recognized contributions to the AI engineering community, or achieve progressive career advancement into increasingly responsible AI technical leadership roles.
Demonstrated deep expertise designing and deploying production-grade generative AI systems. These systems included sophisticated RAG architectures with multi-hop retrieval and reasoning, as well as agent orchestration frameworks that coordinate multiple AI agents with tool use and memory. Additionally, they featured multi-model systems that combine different AI capabilities, and conversational AI systems that maintain context and handle complex dialogues.
Complex AI initiatives across multiple teams with different specializations. This involves translating high-level business objectives into concrete AI system designs and technical roadmaps. Additionally, I coordinate implementation across frontend, backend, data, and infrastructure teams. Finally, I drive projects from conception through production deployment and ongoing optimization.
I possess strong technical proficiency in Python, including advanced language features and design patterns. Additionally, I have extensive experience with modern web application frameworks, such as React and FastAPI, and am familiar with best practices for scalability and maintainability. Furthermore, I have deep knowledge of AI-specific technologies, including vector databases, embedding models, LLM APIs, and orchestration frameworks.
Demonstrated experience establishing organization-wide best practices for prompt engineering. These practices include systematic testing and version control, comprehensive evaluation frameworks that combine automated metrics with human assessment, model observability including tracking of costs and performance, and performance benchmarking methodologies. The latter enable data-driven optimization decisions.
Deep familiarity with responsible AI principles is essential, including fairness, accountability, transparency, and ethics. Understanding of governance considerations for AI systems is also crucial, including model risk management and validation requirements. Furthermore, practical experience addressing deployment challenges in regulated environments is necessary, including testing, documentation, change management, and ongoing monitoring requirements.
Preferred Qualifications
Include the technical direction across organizational boundaries. Proven mentoring and coaching abilities develop engineering talent. Strong cross-functional collaboration skills enable effective partnership with various stakeholders, including product management, data science, design, security, compliance, and business stakeholders.
Experience in healthcare industries
Additional Information
This is a Hybrid office position where employees primarily operate from the company office with occasional work from home to support focus work and work/life balance needs. Designated Tech Market locations for this role: New York City; Louisville, KY; Dallas, TX.
To ensure Home or Hybrid Home/Office employees' ability to work effectively, the self-provided internet service of Home or Hybrid Home/Office employees must meet the following criteria:
At minimum, a download speed of 25 Mbps and an upload speed of 10 Mbps is required; wireless, wired cable or DSL connection is suggested. Satellite, cellular and microwave connection can be used only if approved by leadership. Employees who live and work from Home in the state of California, Illinois, Montana, or South Dakota will be provided a bi-weekly payment for their internet expense. Humana will provide Home or Hybrid Home/Office employees with telephone equipment appropriate to meet the business requirements for their position/job. Work from a dedicated space lacking ongoing interruptions to protect member PHI / HIPAA information.
Scheduled Weekly Hours
40
Pay Range The compensation range below reflects a good faith estimate of starting base pay for full time (40 hours per week) employment at the time of posting. The pay range may be higher or lower based on geographic location and individual pay will vary based on demonstrated job related skills, knowledge, experience, education, certifications, etc.
$170,800 - $234,800 per year
This job is eligible for a bonus incentive plan. This incentive opportunity is based upon company and/or individual performance.
Description of Benefits Humana, Inc. and its affiliated subsidiaries (collectively, "Humana") offers competitive benefits that support whole-person well-being. Associate benefits are designed to encourage personal wellness and smart healthcare decisions for you and your family while also knowing your life extends outside of work. Among our benefits, Humana provides medical, dental and vision benefits, 401(k) retirement savings plan, time off (including paid time off, company and personal holidays, volunteer time off, paid parental and caregiver leave), short-term and long-term disability, life insurance and many other opportunities.