Huron helps its clients drive growth, enhance performance and sustain leadership in the markets they serve. We help healthcare organizations build innovation capabilities and accelerate key growth initiatives, enabling organizations to own the future, instead of being disrupted by it. Together, we empower clients to create sustainable growth, optimize internal processes and deliver better consumer outcomes.
Health systems, hospitals and medical clinics are under immense pressure to improve clinical outcomes and reduce the cost of providing patient care. Investing in new partnerships, clinical services and technology is not enough to create meaningful and substantive change. To succeed long-term, healthcare organizations must empower leaders, clinicians, employees, affiliates and communities to build cultures that foster innovation to achieve the best outcomes for patients.
Joining the Huron team means you’ll help our clients evolve and adapt to the rapidly changing healthcare environment and optimize existing business operations, improve clinical outcomes, create a more consumer-centric healthcare experience, and drive physician, patient and employee engagement across the enterprise.
Join our team as the expert you are now and create your future.
Turn structured and unstructured information into trusted, reusable "building blocks" (semantic layers, retrieval services, and agent-ready interfaces) that accelerate product innovation
Deliver transformational speed and leverage — faster time-to-insight, higher automation of knowledge work, and a foundation that scales AI safely and reliably as adoption grows
Unlock new capabilities across our business and create the foundation that drives deeper domain innovation and cross-domain collaboration
This is a hands-on technical architect who owns the design and delivery of core AI/context data capabilities. The role is responsible for end-to-end architecture decisions across the platform — unstructured ingestion, embeddings, retrieval, semantic layers, and governance — while partnering across engineering, product, and AI teams to ship production-grade AI data products. Leadership is through technical ownership, design authority, and cross-functional influence.
Architect and own the AI context platform
Design end-to-end platform architecture: ingestion → parsing/chunking → enrichment → embeddings → vector indexing → retrieval/serving
Define scalable patterns for incremental refresh, backfills, re-embeddings, deduplication, and lineage across unstructured sources
Set technical direction for retrieval quality (query strategies, hybrid search, metadata filtering, reranking) in partnership with AI engineers
Evaluate and select infrastructure, tooling, and cloud services to support platform needs across AWS/Azure/GCP environments
Design and deliver semantic and governed data products
Architect and implement semantic layers (metrics/entities) that power BI and agent reasoning consistently across the platform
Define data contracts and context contracts for AI inputs (schemas, metadata requirements, freshness, citation expectations)
Establish standards for discoverability, documentation, and reusability across datasets and indexes
Own the dbt or semantic layer tooling strategy and ensure consistent application across workstreams
Operational excellence
Own reliability and performance at the platform level: monitoring, alerting, SLAs/SLOs, runbooks, incident response, and postmortems
Drive cost and latency optimization across Snowflake, lakehouse, and vector infrastructure
Set engineering standards for CI/CD, testing, and evaluation (retrieval eval sets, regression tests, online telemetry)
AI safety, governance, and compliance
Implement security-by-design: RBAC/ABAC patterns, PII redaction, retention controls, audit logging, and safe access pathways for agent tools
Partner with Security/Legal/Compliance to define and enforce guardrails for AI access to enterprise knowledge
Own governance patterns for sensitive data handling across the platform
Lead through influence
Drive technical roadmap decomposition with product, AI, and application stakeholders
Facilitate architectural decisions across teams and functions, building alignment without direct authority
Set best practices and mentor engineers via design reviews, code reviews, and documentation
This role is expected to grow into direct people leadership over time. As the platform matures and the engineering team expands, the Architect will take on formal responsibility for leading a small team of engineers — owning hiring input, technical development, and delivery oversight. Candidates should be comfortable with that trajectory and motivated by the opportunity to build and shape a team from an early stage.
Ability to travel as needed up to 4 times per year.
8–12+ years in data engineering, data architecture, or platform roles with significant hands-on delivery
Expert SQL and strong Python (or Scala/Java); deep production engineering habits
Hands-on Snowflake expertise including advanced data modeling, pipeline design, performance tuning, and operating at scale in production
Proven experience designing cloud data architectures on AWS, Azure, or GCP — including storage, compute, orchestration, and networking considerations
Hands-on experience with vector search and embeddings (pgvector/Pinecone/Weaviate/OpenSearch/Elastic) and retrieval patterns (semantic retrieval, hybrid search, reranking)
Experience with dbt or comparable semantic layer tooling in a production environment
Demonstrated ability to lead cross-functional technical initiatives and drive alignment across teams
Strong written and verbal communication skills — able to present architecture decisions to both technical and non-technical audiences
Experience supporting LLM applications (RAG, agent tool interfaces, evaluation/observability)
Knowledge of knowledge graphs, semantic modeling, or metrics layers at scale
Experience in regulated environments and mature data governance programs
Familiarity with Iceberg, Delta Lake, or other open table formats in a lakehouse context
Prior experience in a formal or informal technical lead or staff engineer capacity
Measurable improvement in AI outcomes: higher retrieval precision/recall, better citation coverage, fewer "missing context" failures
Reduced latency/cost per retrieval and improved platform reliability (SLO attainment, lower MTTR)
Broad adoption of semantic definitions, context contracts, and platform standards across teams
Architecture decisions are well-documented, defensible, and enable downstream engineers to deliver faster
Platform design earns trust from Security, Compliance, and business stakeholders
Business-curious and domain-eager: Proactively learns healthcare processes, terminology, and KPIs — can speak credibly with SMEs and business leaders, not just translate requirements but help shape the right questions and success measures
Stakeholder-first collaborator: Builds strong relationships with stakeholders, SMEs, and consultants; clarifies goals, constraints, and tradeoffs early; communicates progress and risks clearly; sets realistic expectations around timelines, scope, and quality
Consultative problem-solver: Approaches requests with a "diagnose before prescribe" mindset — asks smart questions, proposes options, and guides teams toward durable solutions rather than one-off fixes
Influence without authority: Leads through expertise and trust — drives alignment, facilitates decisions, and unblocks teams across functions without relying on positional authority
High ownership and follow-through: Treats reliability, documentation, and operational readiness as part of the work; finishes what they start; holds a high bar for production quality
Clear communicator for mixed audiences: Can go deep with engineers and explain concepts plainly to non-technical partners; writes crisp architecture docs, designs, and runbooks
Pragmatic builder mindset: Biases toward shipping value in iterations, validating with users, and improving based on feedback — balancing innovation with maintainability and risk
Comfortable with ambiguity: Thrives in early-stage or evolving spaces, adapts quickly, and turns unclear goals into actionable architectural plans
Integrity and stewardship: Handles sensitive data responsibly, advocates for secure-by-design patterns, and enables the business to move fast without cutting corners on governance
The estimated base salary for this job is $140,000 - $190,000 USD. The range represents a good faith estimate of the range that Huron reasonably expects to pay for this job at the time of the job posting. The actual salary paid to an individual will vary based on multiple factors, including but not limited to specific skills or certifications, years of experience, market changes, and required travel. This job is also eligible to participate in Huron’s annual incentive compensation program, which reflects Huron’s pay for performance philosophy. Inclusive of annual incentive compensation opportunity, the total estimated compensation range for this job is $161,000 - $237,500 USD. The job is also eligible to participate in Huron’s benefit plans which include medical, dental and vision coverage and other wellness programs. The salary range information provided is in accordance with applicable state and local laws regarding salary transparency that are currently in effect and may be implemented in the future.
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Huron Chicago, Illinois, USA Office
550 W. Van Buren Street, Chicago, IL, United States, 60607
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