Sunrise Systems, Inc. is seeking an AI Data Engineer to support their AI-powered data analytics platform. The role involves advancing data engineering pipelines, developing AI agents, and ensuring quality analytics across various business areas.
Responsibilities:
- Responsible to support the client AI-powered data analytics platform. This individual will contribute to advance data engineering pipelines, AI agent development, and cross-functional quality analytics across different areas of the business such as quality, product engineering, reliability, field service and business strategy
- Deep expertise designing and deploying agentic AI systems using agentic frameworks and orchestrators to reason across manufacturing, quality, and post‐market data, execute multi‐step analysis, self‐correct, and drive decisions with limited human intervention
- Production‐grade experience using Claude LLMs within orchestrated agent workflows, including prompt management, tool calling, structured outputs, guardrails, and audit‐ready logging
- Strong expertise building AI‐driven data pipelines that transform unstructured medical device data (complaints, CAPAs, investigations, service notes, SOPs, PDFs, emails) into structured, analytics‐ and review‐ready datasets
- Experience developing orchestrated AI pipelines for entity extraction, event classification, failure mode standardization, trend tagging, risk categorization, and summarization aligned to quality and manufacturing taxonomies
- Solid foundation in predictive modeling, clustering, time‐series analysis, anomaly detection, and statistical methods applied to manufacturing processes, defects, equipment signals, and failure trends
- Advanced proficiency with Databricks, Spark, SQL, Delta Lake, and Python to ingest, structure, and analyze large‐scale manufacturing, quality, and post‐market data, supporting downstream analytics and AI systems
- Demonstrated ability to correlate complaints, NCRs, CAPAs, and service data with upstream manufacturing signals using data‐driven root cause and investigation approaches
- Hands‐on experience integrating and analyzing data from SAP Tahiti, Salesforce, TrackWise, and QMS platforms while maintaining traceability, data integrity, and compliance in regulated environments
Requirements:
- Education Master's Data Engr or Computer Science
- AI Engineering
- Anthropic Claude AI
- MCP Server Customization
- Microsoft Azure Databricks
- SalesForce
- SAP Tahiti
- Trackwise
- Deep expertise designing and deploying agentic AI systems using agentic frameworks and orchestrators to reason across manufacturing, quality, and post‐market data, execute multi‐step analysis, self‐correct, and drive decisions with limited human intervention
- Production‐grade experience using Claude LLMs within orchestrated agent workflows, including prompt management, tool calling, structured outputs, guardrails, and audit‐ready logging
- Strong expertise building AI‐driven data pipelines that transform unstructured medical device data (complaints, CAPAs, investigations, service notes, SOPs, PDFs, emails) into structured, analytics‐ and review‐ready datasets
- Experience developing orchestrated AI pipelines for entity extraction, event classification, failure mode standardization, trend tagging, risk categorization, and summarization aligned to quality and manufacturing taxonomies
- Solid foundation in predictive modeling, clustering, time‐series analysis, anomaly detection, and statistical methods applied to manufacturing processes, defects, equipment signals, and failure trends
- Advanced proficiency with Databricks, Spark, SQL, Delta Lake, and Python to ingest, structure, and analyze large‐scale manufacturing, quality, and post‐market data, supporting downstream analytics and AI systems
- Demonstrated ability to correlate complaints, NCRs, CAPAs, and service data with upstream manufacturing signals using data‐driven root cause and investigation approaches
- Hands‐on experience integrating and analyzing data from SAP Tahiti, Salesforce, TrackWise, and QMS platforms while maintaining traceability, data integrity, and compliance in regulated environments
- Microsoft Power Business Intelligence (BI)
- Speech to Text tools
- Text to Speech Tools