Associate Director, AI & ML Ops Lead -- Kite Commercial
Gilead · United States - North Carolina - Raleigh
Job description
At Gilead, we’re creating a healthier world for all people. For more than 35 years, we’ve tackled diseases such as HIV, viral hepatitis, COVID-19 and cancer – working relentlessly to develop therapies that help improve lives and to ensure access to these therapies across the globe. We continue to fight against the world’s biggest health challenges, and our mission requires collaboration, determination and a relentless drive to make a difference. Every member of Gilead’s team plays a critical role in the discovery and development of life-changing scientific innovations. Our employees are our greatest asset as we work to achieve our bold ambitions, and we’re looking for the next wave of passionate and ambitious people ready to make a direct impact. We believe every employee deserves a great leader. People Leaders are the cornerstone to the employee experience at Gilead and Kite. As a people leader now or in the future, you are the key driver in evolving our culture and creating an environment where every employee feels included, developed and empowered to fulfil their aspirations. Join Gilead and help create possible, together. Job Description The AI & MLOps Lead for Kite IT Sales & Digital is an incredible opportunity within the IT Data & AI CoE team to support the transformation of AI/ML for Kite’s Commercial line of business. This role focuses on designing, developing, and deploying data science solutions that drive impact for patients. It operates at the intersection of traditional ML engineering and autonomous AI, involving the development, deployment, and management of both classical machine learning systems and AI workflows that improve commercial efficiency across the global CGT portfolio. The primary focus will be collaborating with data scientists and GDDI teams to build production-grade analytics infrastructure on AWS and Databricks—from predictive patient identification models and field force alert engines to agentic workflows that autonomously surface insights and recommend actions. This position ensures that ML models and AI agent systems are reproducible, compliant, performant, and scalable throughout their lifecycle. A strong emphasis is placed on data quality, monitoring, governance, and agent-executable system design. This role will sit in Raleigh, NC. Responsibilities: ML & Data Engineering Model Lifecycle Management: Develop and maintain pipelines to transition models from experimentation to production, including packaging, CI/CD, automated testing, and deployment. Support model serving for patient identification, alignment prediction, next-best-action engines, and competitive intelligence models. Data Pipeline Development: Design robust batch and streaming data workflows; integrate, define, and manage feature sets, lineage, and reuse to support AI/ML initiatives. Production Operations & Monitoring: Ensure reliability and scalability of ML systems; implement effective logging, tracing, and alerting. Establish monitoring for model performance, data drift, bias, and service health. Monitor data quality across rare disease data feeds, where small population sizes amplify the impact of anomalies. Agentic AI & Agent Systems Engineering Agent Workflow Development: Collaborate with data scientists and commercial stakeholders to decompose complex business workflows into agent-executable workstreams. Define boundaries between agent execution and human data science judgment. Instruction Architecture & Prompt Engineering: Design and maintain prompt architectures, agent skills, memories, and context injection patterns. Author structured coding instructions that translate commercial analytics requirements into precise agent directives with clear acceptance criteria. Build agentic AI systems that autonomously detect anomalies in commercial data, such as competitive switching, patient discontinuation signals, and payer access changes. These systems generate hypotheses and push recommended actions to stakeholders and CRM systems. Token Economics & Cost Optimization: Optimize agent execution for cost efficiency—manage context window utilization, minimize token consumption, and design instruction patterns that reduce iteration cycles. Monitor token economics per workstream to balance capability with budget. Governance, Security & Compliance Model, Agent & Data Governance: Implement version control, approvals, documentation, and audit trails for datasets, code, models, and agent instructions. Ensure all AI/ML outputs are explainable, auditable, and compliant with HIPAA/PHI, GDPR, FDA promotional regulations, and REMS requirements. Enforce secrets management, role-based access control, network policies, and data protection for agents operating on sensitive healthcare and commercial data within the enterprise perimeter. Collaboration & Enablement Cross-functional Partnership: Work closely with data scientists, commercial analysts, and stakeholders across Brand, Market Access, Patient Services, and Field teams. Provide frameworks, templates, and guardrails that accelerate analytics delivery. Testing & Validation: Demonstrate a strong focus on testing by setting up frameworks for both traditional ML models and agent-generated code. Design validation pipelines with automated quality gates, including type checking, linting, integration tests, and contract tests. Documentation & Release Management: Develop clear, detailed guides, operational playbooks, and user instructions. Coordinate releases with commercial operations and IT; maintain runbooks, rollback strategies, and change tickets. Basic Qualifications: Bachelor's Degree and Ten Years’ Experience OR Masters' Degree and Eight Years’ Experience OR PhD and Two Years’ Experience Preferred Qualifications: Education: Bachelor’s or Master’s degree in Computer Science, Data Engineering, or a related field, or equivalent experience. Experience: 3–6+ years in MLOps, Data Engineering, or ML platform roles, with a proven track record of deploying ML solutions at scale. At least 2+ years building complex data science or large-scale analytics solutions. Programming: Proficiency in Python and SQL; familiarity with TypeScript/JavaScript or a systems language (Go, Rust). Experience with TDD, CI/CD pipelines, and code quality standards. CI/CD & Infrastructure: Experience with CI/CD tools (e.g., GitHub Actions), containerization (Docker), and cloud infrastructure concepts. ML Tools: Hands-on experience with model packaging and serving frameworks (e.g., SageMaker, Databricks MLflow), experiment tracking, and model registry tools. Data Technologies: Proficiency with Databricks distributed processing (Spark), data orchestration (Airflow), MLflow, etc. AI/Agent Tools: Hands-on experience with AI coding tools (Claude Code, GitHub Copilot, Cursor, or equivalent) and Cortex AI or comparable LLM serving platforms. Working understanding of how LLMs reason about code and familiarity with prompt engineering as an engineering discipline. Security & Compliance: Understanding of data privacy and security in healthcare; experience with secrets management, audit controls, and compliance frameworks (HIPAA, SOC 2, 21 CFR Part 11). Systems Thinking: Ability to design systems that scale across both Domain Experience: Knowledge of pharmaceutical commercial analytics in CGT or specialty pharma—HCP/HCO profiling and targeting, patient identification, call planning, demand forecasting, specialty pharmacy data, and omnichannel measurement. CGT Data Expertise: Experience with IQVIA (LAAD, Symphony, NPA), Veeva CRM, MMIT, Model N, specialty pharmacy dispense data, claims/RWD, and high-value-per-patient environments. Agent System Design: Experience designing multi-agent workflows, orchestration patterns, and autonomous systems for enterprise applications. Familiarity with MCP (Model Context Protocol) and agent interoperability frameworks. Performance & Scalability: Experience with high-throughput inference, b
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