Applied AI Health Data System Engineer-Senior Manager

PwC
Detroit, United States of America
yesterday

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
$ 280K

Job location

Detroit, United States of America

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Systems Engineering
Automated Storage and Retrieval Systems
Azure
Encodings
Databases
Continuous Integration
Data as a Services
Data Systems
Data Warehousing
Python
Machine Learning
NoSQL
Program Design Languages
E2e Testing
Azure
Software Engineering
SQL Databases
Google Cloud Platform
Retrieval-Augmented Generation
Large Language Models
Snowflake
Prompt Engineering
Deep Learning
Keras
GIT
Pandas
Scikit Learn
Machine Learning Operations
Data Pipelines
Databricks

Job description

Examples of the skills, knowledge, and experiences you need to lead and deliver value at this level include but are not limited to:

  • Craft and convey clear, impactful and engaging messages that tell a holistic story.
  • Apply systems thinking to identify underlying problems and/or opportunities.
  • Validate outcomes with clients, share alternative perspectives, and act on client feedback.
  • Direct the team through complexity, demonstrating composure through ambiguous, challenging and uncertain situations.
  • Deepen and evolve your expertise with a focus on staying relevant.
  • Initiate open and honest coaching conversations at all levels.
  • Make difficult decisions and take action to resolve issues hindering team effectiveness.
  • Model and reinforce professional and technical standards (e.g. refer to specific PwC tax and audit guidance), the Firm's code of conduct, and independence requirements.

The Opportunity

As part of the Applied AI Health System Engineering team, you will lead the development of AI, GenAI, and ML solutions tailored to the complex needs of health system and health plans. As a Senior Manager, you will drive use case development across clinical decision support, population health risk stratification, clinical research, and operational efficiency - translating ambiguous healthcare challenges into production-grade AI solutions. You will architect and build production-grade RAG pipelines, MCP connections, agentic AI workflows, and MLOps frameworks, managing daily operations across global delivery teams while engaging health system leaders at the executive level to ensure measurable clinical and operational impact.

Responsibilities

  • Oversee the development of healthcare AI and GenAI solutions, including clinical use case design, analytical modeling, prompt engineering, and RAG pipeline development
  • Lead large healthcare data science engagements, innovating delivery processes and driving continuous improvement across use case development lifecycles
  • Maintain operational excellence while engaging health system clinical, financial, and operational leaders at a senior level to align AI initiatives with organizational priorities
  • Guide teams in processing clinical notes, claims data, ADT feeds, and other structured and unstructured healthcare data sources for use in AI and LLM-powered solutions
  • Manage daily operations of a global healthcare data science team, overseeing model development, MLOps practices, and model governance across client engagements
  • Contribute to the creation of healthcare AI proof of concepts, pilots, and production use cases spanning clinical decision support, revenue cycle, population health, research (including images and genomics) and operational optimization
  • Foster a collaborative environment across clinical, technical, and operational team members to solve complex health system data science challenges
  • Maintain excellence in client service and satisfaction, helping health system clients realize tangible value from AI and ML investments, * Managing daily operations of a global healthcare data science team on client engagements, reviewing developed models, providing feedback, andassistingin analysis of clinical and operational outcomes;
  • Directing data engineers and other data scientists to deliver efficient, HIPAA-compliant solutions that meet health system client requirements for clinical, financial, and operational AI use cases;
  • Leading and contributing to development of proof of concepts, pilots, and production use cases for health system clients - spanning clinical decision support, prior authorization automation, patient risk scoring, workforce optimization, and throughput modeling - while working in cross-functional teams;
  • Facilitating and conducting executive-level presentations to health system leadershipshowcasingGenAI and ML solution capabilities, use case development progress, model performance, and recommended next steps;
  • Structuring, writing, communicating, andfacilitatingclient presentations that translate complex AI and ML concepts into clear clinical and business value narratives for health system audiences; and,
  • Managing associates and senior associates through coaching, providing feedback, and guiding work performance, with an emphasis on developing healthcare domain knowledge alongside technical AI and ML capabilities.

Requirements

Growing as a strategic advisor, you leverage your influence, expertise, and network to deliver quality results. You motivate and coach others, coming together to solve complex problems. As you increase in autonomy, you apply sound judgment, recognising when to take action and when to escalate. You are expected to solve through complexity, ask thoughtful questions, and clearly communicate how things fit together. Your ability to develop and sustain high performing, diverse, and inclusive teams, and your commitment to excellence, contributes to the success of our Firm., * Bachelor's Degree

  • 12 years of experience, with meaningful exposure to healthcare data science, health IT, or AI solution development for health system clients
  • At least 6-7 years of experience at a health system

Preferred Knowledge/Skills

  • Demonstrates in-depth level abilities and/or a proven record of success managing the identification and addressing of health system needs
  • Domainexpertisein the healthcare value chain including but not limited toClaims,Pharmacy, Finance, Clinical Domains
  • Managing development teams in building healthcare AI and GenAI solutions, including analytical modeling, prompt engineering, Python-based development, testing, communication of results to clinical and operational stakeholders, front-end and back-end integration, and iterative use case development with health system clients;
  • Documenting and analyzing healthcare business processes - across clinical operations, and population health programs - toidentifyAI and GenAI opportunities, gather requirements, define initial hypotheses, and develop solution approaches tailored to health system workflows;
  • Collaborating with health system client teams - including clinicalinformatics, populationhealth, and IT leaders - to understand their business and clinical problems and select theappropriate models, LLMs, and approaches for AI/GenAI use cases;
  • Designing and solutioning AI/GenAI architectures for health system clients, including RAG-based clinical knowledge retrieval systems, agentic AI workflows for care management and revenue cycle automation, and custom LLM application builds withappropriate PHIsafeguards;
  • Managing teams to process healthcare unstructured and structured data - including clinical notes, discharge summaries, claims records, EHR data, and ADT feeds - for use as LLM context, including embedding of large clinical text corpora, generative SQL query development, and building connectors to EHR back-end databases, * Demonstrates in-depth abilities and/or a proven record of success learning and performing in functional and technical capacities within healthcare data science and AI, including the following areas:
  • Managing GenAI application development teams building healthcare-facing solutions, including back-end LLM orchestration, agentic workflow design, and front-end integration with clinical and operational portals;
  • Using Python (e.g., Pandas, Scikit-learn,Keras, Transformers) and common LLM development frameworks (e.g.,LangChain,LlamaIndex, Semantic Kernel) to build healthcare AI solutions; proficiency with relational storage (SQL, including clinical schemas and non-relational storage (NoSQL, vector databases such as Pinecone or Chroma for RAG pipelines);
  • Experience in analytical techniques including Machine Learning, Deep Learning, and Optimization applied to healthcare use cases such as risk stratification, readmission prediction, clinical coding automation, length-of-stay modeling, and staffing/scheduling optimization;
  • Vectorization and embedding of clinical text, prompt engineering for healthcare contexts, RAG (retrieval-augmented generation) workflow development for clinical knowledge retrieval, and design of agentic AI workflows for multi-step healthcare processes such as prior authorization, care gap identification, and revenue cycle task automation;
  • Hands-on experience with Azure (including Azure OpenAI Service, Azure Machine Learning, and Azure Health Data Services), AWS (SageMaker, Bedrock), and/or Google Cloud (Vertex AI) platforms, with an understanding of PHI-compliant deployment patterns and HIPAA-aligned cloud configurations;
  • Experience with data warehouse technology including Snowflake or Databricks
  • Experience working with Anthropic - Claude and Claude code to accelerate development and build applications
  • Experience with Git version control, unit/integration/end-to-end testing, CI/CD, andMLOpspractices including model monitoring, performance drift detection, and model governance frameworksappropriate forregulated healthcare environments.

What Sets You Apart

  • Demonstrated experience delivering production AI or GenAI use cases in a health system environment, with measurable clinical or financial outcomes
  • Hands-on experience building RAG pipelines or agentic AI workflows against clinical data sources, including EMR
  • Experience with MLOps platforms and model governance practices in regulated, PHI-handling environments
  • Ability to translate clinical and revenue cycle workflows into structured AI use case requirements and scalable solution designs
  • Familiarity with Azure OpenAI Service, AWS Bedrock, or Google Vertex AI in a HIPAA-compliant deployment context
  • Understanding of value-based care, population health program design, or clinical quality measurement and how AI accelerates outcomes in these areas

Benefits & conditions

The salary range for this position is: $124,000 - $280,000. Actual compensation within the range will be dependent upon the individual's skills, experience, qualifications and location, and applicable employment laws. All hired individuals are eligible for an annual discretionary bonus. PwC offers a wide range of benefits, including medical, dental, vision, 401k, holiday pay, vacation, personal and family sick leave, and more. To view our benefits at a glance, please visit the following link: https://pwc.to/benefits-at-a-glance

About the company

PwC provides services to 420 out of 500 Fortune 500 companies. The firm was formed in 1998 by a merger between Coopers & Lybrand and Price Waterhouse.

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