Principal Data Platform Engineer

MedRisk LLCConshohocken, PA
7h

About The Position

The Principal Data Platform Engineer is a senior individual contributor who defines and owns the technical vision, architecture, and evolution of the enterprise data platform. This role is responsible for platform-wide design decisions that enable trusted analytics, business intelligence, and AI/ML use cases at scale. Serving as the technical leader for data platform and data engineering capabilities, this role designs and governs scalable, reliable, and well-modeled data assets that support analytics, data science, and AI workloads. The Principal Data Platform Engineer partners closely with delivery leadership and hands-on practitioners across the Data and AI organization to ensure the platform balances near-term delivery needs with long-term scalability, reliability, and maintainability. Operating across multiple scrum teams, this role acts as a force multiplier by establishing standards, reusable patterns, and self-service capabilities that improve data quality, accelerate delivery, and increase the overall effectiveness of analytics and AI initiatives.

Requirements

  • Bachelor’s degree in Computer Science, Engineering, Data Science, or a related field, or equivalent practical experience.
  • 10+ years of experience designing and building modern data platforms in production environments.
  • Deep expertise in data architecture, data modeling, and distributed data processing for analytics and AI/ML use cases.
  • Strong experience with modern cloud data platforms, including managing and optimizing compute, storage, networking, security, and cost governance; Microsoft Fabric and Power BI experience is highly valued.
  • Proven ability to design platforms that support both BI/analytics workloads and ML/AI pipelines at scale.
  • Experience influencing architecture and standards across multiple teams without direct people management responsibility.
  • Strong understanding of data quality, observability, governance, and reliability practices in enterprise environments.
  • Adept at partnering with CloudOps, Security, IT, AI Engineering, and Data Engineering teams to ensure the cloud platform supports both current and future needs.
  • Excellent communication skills with the ability to engage both technical and non-technical stakeholders.

Responsibilities

  • Own the technical architecture and long-term roadmap of the enterprise data platform supporting both Analytics/BI and AI/ML workloads.
  • Design and evolve data ingestion, transformation, and orchestration patterns that support scalable, reliable, and auditable data pipelines.
  • Define and enforce standards for data modeling, including curated analytical datasets, semantic models, and ML-ready / feature-ready datasets.
  • Lead platform and architectural design reviews across multiple cross-functional scrum teams, influencing solutions without direct authority.
  • Establish platform patterns for data quality, observability, lineage, and reliability to ensure trust in downstream analytics and AI systems.
  • Partner with AI Engineers and Data Scientists to enable efficient feature engineering, model training, and inference through well-designed data assets.
  • Serve as the technical authority for Microsoft Fabric, Power BI, and associated data platform components, ensuring best practices are consistently applied.
  • Enable self-service analytics and data science by delivering reusable data products, documentation, and clear consumption contracts.
  • Mentor data engineering team members, raising the overall technical maturity of the organization.
  • Balance immediate delivery needs with long-term platform scalability, performance, and maintainability considerations.
  • Evaluate and recommend new platform capabilities, tools, and architectural approaches aligned with organizational strategy.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service