Associate Director, Commercial AI – Business Value Delivery

Merck Merck · Pharma · Telangana, India

This role focuses on delivering AI and Agentic AI solutions within the Commercial AI vertical of Digital Human Health. It involves translating business priorities into AI-powered products and agent-driven solutions, framing business problems, building value cases, aligning stakeholders, and driving adoption. The role emphasizes measurable value realization, governance, safety, and enterprise use, partnering with various teams including product, data science, and engineering. Key responsibilities include leading commercial analytics strategy, defining AI product vision, ensuring adoption, establishing portfolio governance, and mentoring engineers/data scientists. Technical expertise involves shaping AI/Agentic AI solution approaches, ensuring enterprise deployment practices, establishing guardrails, and evaluating vendor solutions.

What you'd actually do

  1. Frame business problems as clear decision statements with defined value hypotheses, success metrics (ROI, KPIs), and value realization cadence.
  2. Lead commercial analytics strategy across enterprise use cases for agentification (segmentation, NBE, forecasting, omnichannel, marketing effectiveness, field insights, HCP journey) using a business-first, evidence-led approach.
  3. Translate priorities into a value-driven AI roadmap—sequenced by impact, feasibility, and risk—with defined scope, success criteria, and adoption plans.
  4. Define AI product vision including problem statement, user personas, workflows, guardrails, and success metrics (operational + business impact).
  5. Own stakeholder alignment—influence senior leaders, manage trade-offs, and drive cross-functional/global accountability.

Skills

Required

  • 8+ years of relevant experience across software engineering, commercial analytics, ML engineering, and AI product engineering and delivery, with hands-on experience in production deployments at scale.
  • 4+ years leading teams and driving delivery across multiple stakeholders; proven ability to mentor and raise engineering standards.
  • Experience driving AI/GenAI adoption in a regulated or high-compliance environment, including privacy, auditability, and model risk management.
  • Familiarity with commercial data domains such as CRM, promotional, digital engagement, and related performance measurement.
  • Experience with experimentation design, measurement approaches, and operationalizing performance measurement at scale.
  • Prior experience assessing AI solution build and managing team and stakeholder delivery with strong governance.
  • Exposure to operating model design for AI products (intake-to-scale, lifecycle governance, enablement playbooks).
  • Demonstrated capability to establish reusable frameworks/SDKs, integration patterns, and scalable operating models for AI delivery.
  • Excellent stakeholder communication skills, with the ability to explain trade-offs, risks, and outcomes clearly to technical and non-technical audiences.
  • Analytics Strategy
  • Artificial Intelligence (AI)
  • Business Intelligence (BI)
  • Commercial Analytics
  • Computer Science
  • Corrective Action Management
  • Database Design
  • Data Engineering
  • Data Modeling
  • Data Privacy

What the JD emphasized

  • AI and Agentic AI solutions
  • AI-powered solutions
  • agent-driven solutions
  • AI/GenAI technical literacy
  • AI/Agentic AI solution approaches
  • LLM workflows
  • RAG patterns
  • tool/function calling
  • multi-agent patterns
  • LLMOps/MLOps
  • monitoring/observability
  • evaluation frameworks
  • drift/quality gates
  • guardrails and responsible AI controls
  • hallucination mitigation
  • data privacy-by-design
  • security considerations
  • auditability
  • model risk awareness
  • documentation
  • compliance alignment for a regulated environment
  • AI solution build
  • AI products
  • AI delivery

Other signals

  • delivering AI-powered solutions
  • AI products and agent-driven solutions
  • AI/Agentic AI solutions
  • AI/GenAI adoption
  • AI solution approaches
  • AI/Agentic AI solution approaches
  • LLMOps/MLOps
  • AI product engineering and delivery