Lead Intelligent Solutions Engineer

Sarah Cannon Research InstituteUsa, TX
2d

About The Position

It’s More Than a Career, It’s a Mission. Our people are the foundation of our success. By joining our growing team at Sarah Cannon Research Institute (SCRI), a subsidiary of McKesson, you will have the opportunity to become part of one of the largest community-based cancer programs to advance oncology treatments and improve outcomes for cancer patients across the globe. We look for mission-driven candidates who have a desire to advance the fight against cancer and make a difference in the lives of patients diagnosed with cancer every day. Our Mission People who live with cancer – those who work to prevent it, fight it, and survive it – are at the heart of every decision we make. Bringing the most innovative medical minds together with the most passionate caregivers in their communities, we are transforming care and personalizing treatment. Through clinical excellence and cutting-edge research, SCRI is redefining cancer care around the world. The Lead Intelligent Solutions Engineer is a senior, hands‑on technical builder‑leader accountable for delivering AI and intelligent automation solutions end‑to‑end, from problem framing through production deployment and sustained value realization. This role personally designs, builds, and scales LLM‑ and agent‑based automations while owning solution architecture, technical quality, delivery outcomes, and enterprise standards. This position requires deep technical expertise, strong architectural judgment, and the ability to independently drive complex, ambiguous initiatives to completion. The role is not oversight‑only; it is focused on custom AI development, intelligent automation, and solution execution using large language models, agents, orchestration frameworks, and enterprise integrations. In addition, this role is expected to evangelize and engage the business, translating opportunities and problems into tangible, trusted, production‑ready AI solutions that measurably improve productivity, quality, cycle time, and decision‑making across SCRI.

Requirements

  • Bachelor's Degree required, Master's Degree preferred
  • Advanced knowledge of generative AI, machine learning, NLP, agentic frameworks, and AI solution architectures
  • Strong understanding of AI governance, MLOps, and enterprise risk management
  • Healthcare, life sciences, or clinical research technology domain knowledge.
  • Proven experience delivering complex, production‑grade AI and automation solutions as a hands‑on builder
  • Deep proficiency in prompt engineering and applying Generative AI to enterprise workflows
  • Strong programming skills (typically Python and/or JavaScript) with experience in APIs, data transformation, version control, and deployment practices
  • Demonstrated experience building agentic AI solutions, including RAG architectures, orchestration frameworks, and tool‑calling patterns
  • Experience with Microsoft AI ecosystem tools (e.g., Copilot Studio, Power Platform, Azure AI / Azure OpenAI) strongly preferred
  • Ability to rapidly prototype while maintaining enterprise‑grade security, reliability, and governance
  • Demonstrated ability to operate as a senior, end‑to-end AI solution architect while remaining hands‑on
  • Comfortable owning ambiguous, high‑visibility initiatives with minimal direction
  • Strong stakeholder influence skills; able to align technical decisions with business outcomes in a matrixed environment
  • Track record of translating concepts into shipped, adopted, enterprise solutions
  • Practices and adheres to the “Code of Conduct” philosophy and “Mission and Value Statement.”
  • During your employment with SCRI, you will be routinely assigned training requirements. You are expected to complete any training assignments by the due date.

Nice To Haves

  • Healthcare, life sciences, or clinical research domain experience
  • Experience delivering solutions in regulated, compliance‑driven environments

Responsibilities

  • Independently design, build, and maintain: AI prompts and prompt libraries LLM based agents and copilots Chatbots, automation scripts, and end to end intelligent workflows
  • Lead rapid prototyping and experimentation; convert successful pilots into scalable, production grade solutions
  • Own the day-to-day technical health of deployed solutions, including monitoring, troubleshooting, performance tuning, and reliability improvements
  • Build and maintain robust integrations with enterprise platforms using APIs, services, data pipelines, and workflow orchestration tools
  • Serve as the end-to-end AI solution architect for assigned initiatives, making architectural decisions and implementing them hands on
  • Define and standardize solution patterns for: Agent architectures (RAG, tool calling, multi agent orchestration) Integration and data flow design Environmental promotion and deployment strategies (dev/test/prod)
  • Own delivery planning with clearly defined value metrics, success criteria, and timelines
  • Proactively identify technical risks, trade offs, and dependencies and drive resolution
  • Lead execution for high‑impact, enterprise‑level AI and automation use cases, particularly complex or manual processes with measurable value potential
  • Translate loosely defined business problems into durable, production‑ready AI solutions
  • Partner closely with business owners to validate outputs, refine logic, and ensure solutions are adopted, trusted, and operationalized
  • Ensure all solutions comply with enterprise AI governance standards, ethical AI principles, and corporate policies
  • Design and implement secure‑by‑default solutions, including documentation, traceability, monitoring, and audit readiness
  • Anticipate and mitigate risks related to data privacy, access control, model behavior, hallucinations, bias, and operational resilience
  • Partner with architecture, security, and data governance teams to ensure compliant solution design, especially within regulated environments
  • Evangelize AI and intelligent automation capabilities across the organization by: Engaging business stakeholders Translating opportunities into concrete solution concepts Demonstrating value through working solutions
  • Produce high‑quality technical documentation, user guides, and SOPs
  • Lead hands‑on enablement sessions, workshops, and knowledge transfer to drive adoption
  • Act as a technical mentor and thought leader, influencing standards, patterns, and best practices across AI and automation initiatives
  • Collaborate with business and technology partners to continuously improve AI‑enhanced workflows
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