CVS Health is a leading healthcare company operating CVS Specialty, CVS Pharmacy, CVS MinuteClinic, and CVS Caremark. In 2018, CVS combined forces with healthca
Senior Manager – AI Engineer
Location
Connecticut
Posted
2 days ago
Salary
$130.3K - $260.6K / year
Seniority
Senior
Job Description
Senior Manager – AI Engineer
CVS Health
• Define the technical vision and architecture for AI and ML solutions, including LLM based applications, conversational voice AI, chatbot platforms, and AI augmented BI systems • Oversee development of training data pipelines and datasets for fine tuning, evaluation, and inference at enterprise scale • Establish enterprise standards for model performance monitoring, drift detection, retraining, and lifecycle governance • Drive implementation of vector embeddings, semantic search, and AI orchestration frameworks • Provide engineering leadership for backend services (APIs, microservices) enabling scalable AI capabilities across the enterprise • Oversee development of scalable data pipelines supporting ingestion, transformation, and real time inference workloads • Drive integration of AI capabilities into enterprise platforms, including customer facing voice and chat systems and internal analytics environments • Ensure solutions meet enterprise standards for scalability, reliability, performance, and security • Define and govern model lifecycle management practices including versioning, deployment, rollback, and compliance • Lead the development of enterprise AI platforms and infrastructure for model hosting, orchestration, and scaling • Establish CI and CD standards and deployment frameworks for AI systems across engineering teams • Build and oversee observability layers to monitor system performance, model behavior, and operational health • Set direction for AI safety and responsible AI practices, including guardrails for bias mitigation, hallucination reduction, and policy adherence • Set and drive enterprise AI strategy aligned to technology vision, platform evolution, and long-term organizational priorities • Lead alignment across a highly matrixed organization, influencing engineering, product, analytics, and business leadership • Serve as a trusted advisor to executive leadership, communicating AI strategy, technical trade-offs, risks, and business impact • Own AI investment strategy, including prioritization, funding alignment, and resource allocation across initiatives • Drive enterprise-wide AI adoption by establishing scalable enablement models across engineering and business teams • Define and execute capability uplift strategies, including upskilling engineers, promoting best practices, and enabling self-service AI development • Champion innovation by introducing emerging AI technologies, tools, and solution patterns to accelerate experimentation and delivery • Establish and govern AI vendor and partner strategy, including evaluation, selection, negotiation, and performance oversight • Oversee SOW development and partner with product and finance leadership to manage budgets, forecasts, and investment planning • Act as the primary interface between engineering and executive leadership, ensuring transparency, accountability, and delivery outcomes • Influence enterprise architecture, engineering standards, and AI governance frameworks
Job Requirements
- Extensive experience leading engineering or AI and ML organizations within large scale enterprise environments
- Demonstrated ability to operate at a senior leadership level, influencing executive stakeholders and enterprise strategy
- Proven experience owning or driving technology investment strategy, budgeting, and resource allocation
- Experience leading transformation initiatives and driving adoption of emerging technologies across organizations
- Experience building and scaling engineering platforms, systems, or organizational capabilities
- Experience within healthcare, health insurance, or regulated healthcare environments, with strong understanding of compliance, data privacy, and domain specific challenges
- Deep expertise in software engineering fundamentals (SDLC, architecture, distributed systems design)
- Proficiency in one or more programming languages (Python, C#, Java, etc.)
- Experience building data pipelines and working with structured and unstructured data
- Hands on experience with AI and ML frameworks, platforms, or applied AI systems
- Strong understanding of APIs, microservices, and cloud-based architectures
- Experience with cloud platforms (Azure, AWS, or GCP)
- Familiarity with databases (SQL / NoSQL)
- Experience leading vendor strategy, including evaluation, selection, and delivery governance.
- Experience defining or leading enterprise AI strategy or platforms at scale (Preferred)
- Hands on experience with LLMs, prompt engineering, or fine-tuning models (Preferred)
- Experience building conversational AI (voice and chat) ecosystems (Preferred)
- Experience with AI augmented analytics or business intelligence platforms (Preferred)
- Experience with vector databases, embeddings, and semantic search (Preferred)
- Familiarity with MLOps, observability, and model monitoring frameworks (Preferred)
- Experience implementing responsible AI, governance, and risk management practices (Preferred)
- Experience operating at Director or VP level or equivalent leadership scope (Preferred)
- Experience in healthcare, analytics, or enterprise data platforms (Preferred)
- Exposure to tools such as Databricks, Spark, or real time analytics systems (Preferred)
Benefits
- medical, dental, and vision coverage
- paid time off
- retirement savings options
- wellness programs
- comprehensive benefits package
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