Job Description
Title: Senior Data & AI Platform Engineer
Location: 100% remote
Rate: Open all inclusive on W2
Duration: 6 Months Contract
Visa: GC / GC EAD / Citizen
Job Description:
Client is seeking a Senior Data & AI Platform Engineer, supporting a premier national transportation leader. This pivotal role is designed for a technical visionary who will architect and scale a unified, self-service data ecosystem using a modern Databricks lakehouse architecture. You will bridge the gap between complex data engineering and advanced AI, leading the design of automated pipelines, MLOps frameworks, and API-first integrations while mentoring a talented team of engineers. This is a unique opportunity to modernize critical infrastructure and drive data-driven innovation for an organization that connects communities across America.
Key Responsibilities
Architectural Leadership: Lead the evolution of a scalable Data & AI platform, integrating Databricks, SAP (Datasphere/S/4), and Denodo virtualization into a governed, self-service ecosystem.
Solution Delivery: Act as a hands-on lead developer for complex data pipelines, feature stores, and API-driven integrations that power enterprise-wide analytics and digital experiences.
MLOps & Automation: Design and implement production-grade MLOps pipelines, including versioning, CI/CD, and monitoring to accelerate the deployment of intelligent models.
Engineering Excellence: Establish and enforce standards for ingestion, transformation, and "governance-as-code" controls embedded directly into technical workflows.
Mentorship: Foster a culture of excellence by providing technical guidance, code reviews, and professional development for junior and mid-level engineers.
Strategic Collaboration: Partner with architects, product owners, and governance leads to align technical solutions with the broader enterprise data roadmap.
Qualifications & Skills:
Education: Bachelor’s degree in Computer Science, Data Engineering, or a related technical field (equivalent experience considered).
Experience: 4–6 years of deep technical experience in data engineering, software development, or data architecture.
Technical Proficiency: Advanced expertise in Python and SQL with significant experience in Apache Spark and modern Lakehouse architectures (Databricks preferred).
AI/ML Expertise: Proven experience building MLOps pipelines and internal platform services such as feature stores or semantic layers.
Modern Infrastructure: Strong understanding of API-first and event-driven architectures, secure service-to-service communication, and RBAC security.
Agile Leadership: Demonstrated ability to lead multi-functional teams through technical challenges within a scaled Agile environment.
Soft Skills: Exceptional communication and problem-solving abilities, with the capacity to explain complex technical concepts to diverse stakeholders.
Job Responsibilities
Architectural Leadership: Lead the evolution of a scalable Data & AI platform, integrating Databricks, SAP (Datasphere/S/4), and Denodo virtualization into a governed, self-service ecosystem.
Solution Delivery: Act as a hands-on lead developer for complex data pipelines, feature stores, and API-driven integrations that power enterprise-wide analytics and digital experiences.
MLOps & Automation: Design and implement production-grade MLOps pipelines, including versioning, CI/CD, and monitoring to accelerate the deployment of intelligent models.
Engineering Excellence: Establish and enforce standards for ingestion, transformation, and "governance-as-code" controls embedded directly into technical workflows.
Mentorship: Foster a culture of excellence by providing technical guidance, code reviews, and professional development for junior and mid-level engineers.
Strategic Collaboration: Partner with architects, product owners, and governance leads to align technical solutions with the broader enterprise data roadmap.
Skills
Work Location
Sign in to browse authentic reviews, anonymous ratings and salary data before you apply.