Sr. Manager - AI Solutions Lead

Johnson & Johnson Johnson & Johnson · Pharma · PENJERLA, Telangana, India

Senior Manager, AI Solutions Lead at Johnson & Johnson, responsible for building and scaling production-grade full-stack GenAI solutions with a focus on backend systems, data, and AI/ML engineering. The role involves co-owning problem discovery with business leaders, leading end-to-end delivery of GenAI/ML products, setting engineering standards, and driving platform thinking. Key responsibilities include developing agentic GenAI applications, implementing LLMOps, ensuring enterprise standards for quality and compliance, and providing hands-on leadership across the SDLC.

What you'd actually do

  1. Co-own problem discovery with Product/Business: translate objectives into well-defined, testable problem statements, user journeys, and technical hypotheses.
  2. Lead end-to-end solution for GenAI products: APIs, services, data pipelines, orchestration, LLM integration, retrieval, tool-calling, and UI/UX touchpoints as needed.
  3. Build and scale agentic GenAI applications that solve multi-step workflows on cloud platforms such as AWS and Azure.
  4. Provide hands-on leadership across the SDLC: design reviews, coding standards, testing strategy, code reviews, security reviews, and operational readiness.
  5. Stay current with the latest advancements in Generative AI, cloud technologies, and ML/LLMOps practices, and proactively translate relevant insights into team and platform adoption.

Skills

Required

  • prompt engineering
  • LlamaIndex
  • Langchain
  • RAG
  • Agentic AI workflow
  • Knowledge graph
  • AI red teaming libraries
  • LLM monitoring and evaluation
  • software development lifecycle
  • writing production code
  • software development toolkits
  • devOps automation
  • Kubernetes
  • Airflow
  • Jenkins
  • Jira
  • Confluence
  • Git

Nice to have

  • AWS
  • Azure

What the JD emphasized

  • build and scale production-grade full-stack GenAI solutions
  • strong emphasis on backend systems, data, and AI/ML engineering
  • true partner to Business leaders
  • Lead end-to-end delivery of enterprise GenAI/ML products
  • set engineering standards for production readiness
  • strong technical leadership and mentorship
  • Co-own problem discovery
  • well-defined, testable problem statements
  • Challenge assumptions and requirements
  • Define and track success metrics
  • Communicate clearly
  • architectural trade-offs
  • Design for enterprise realities
  • compliance constraints
  • platform thinking
  • reusable components
  • agentic GenAI applications
  • multi-step workflows
  • robust LLM patterns
  • prompting, RAG, tool orchestration, validation, and evaluation
  • LLMOps and lifecycle governance
  • enterprise standards
  • Responsible AI, security, and compliance by design
  • robust CI/CD and standardized environments
  • operational excellence
  • observability, incident management, reliability practices, and cost optimization
  • novel project execution
  • development of algorithms that improve organizational performance and commercial effectiveness
  • Proven track record in designing and building GenAI solutions
  • strong expertise in prompt engineering, LlamaIndex, Langchain, RAG, Agentic AI workflow, Knowledge graph, AI red teaming libraries, LLM monitoring and evaluation
  • Over 7+ years of experience in the software development lifecycle as a developer, with a focus on writing production code.
  • Must have hands-on experience working with software development toolkits, and devOps automation like Kubernetes, Airflow, Jenkins, Jira, Confluence and Git.

Other signals

  • building and scaling production-grade full-stack GenAI solutions
  • lead end-to-end delivery of enterprise GenAI/ML products
  • set engineering standards for production readiness
  • lead end-to-end solution for GenAI products: APIs, services, data pipelines, orchestration, LLM integration, retrieval, tool-calling, and UI/UX touchpoints
  • Build and scale agentic GenAI applications