Trusted Global Partner of Custom Polymer Solutions
Data Engineer, Microsoft Fabric
Location
Rhode Island
Posted
63 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Engineer, Microsoft Fabric
Teknor Apex Company
• Lead the architecture and development of complex data integration solutions using Microsoft Fabric • Design bidirectional data flows between Fabric and manufacturing systems (Infor M3, Salesforce, Anaplan, OPLIT) • Build advanced ETL pipelines that can handle diverse business data patterns, with preference for manufacturing operations data • Implement real-time and batch processing for enterprise operations data, KPIs, and business metrics • Create data lakehouse architectures optimized for manufacturing analytics and reporting • Develop custom connectors and API integrations for specialized manufacturing equipment and systems • Mentor junior team members and establish data engineering best practices • Collaborate with business stakeholders across various departments to translate requirements into technical solutions • Ensure data governance, security, and compliance within enterprise data environments
Job Requirements
- 2+ years of hands-on experience with Microsoft Fabric Data Factory, Synapse Analytics, and lakehouse architecture
- 4+ years of extensive experience building complex data pipelines and orchestration
- Deep understanding of manufacturing data patterns, production systems, and operational metrics
- Advanced skills in data modeling, pipeline optimization, and performance tuning
- Expert-level proficiency in SQL, Python, and PySpark for manufacturing data transformations
- Advanced experience with REST APIs, webhooks, and real-time data streaming
- Bachelor's degree in Engineering, Computer Science, or related technical field
- Manufacturing industry experience preferred with understanding of production operations, quality systems, and supply chain processes
Benefits
- Health insurance
- Retirement plans
- Paid time off
- Flexible work arrangements
- Professional development
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Data Engineer, Analytics Data Engineering
DropboxDropbox is the one place to keep life organized and keep work moving.
• Help define company data assets (data model) • Help define and design data integrations, data quality frameworks and design and evaluate open source/vendor tools for data lineage • Work closely with Dropbox business units and engineering teams to develop strategy for long term Data Platform architecture to be efficient, reliable and scalable • Conceptualize and own the data architecture for multiple large-scale projects, while evaluating design and operational cost-benefit tradeoffs within systems • Collaborate with engineers, product managers, and data scientists to understand data needs, representing key data insights in a meaningful way • Design, build, and launch collections of sophisticated data models and visualizations that support multiple use cases across different products or domains • Optimize pipelines, dashboards, frameworks, and systems to facilitate easier development of data artifacts
• Define company data assets (data model) • Define and design data integrations, data quality frameworks and design and evaluate open source/vendor tools for data lineage • Work closely with Dropbox business units and engineering teams to develop strategy for long term Data Platform architecture to be efficient, reliable and scalable • Conceptualize and own the data architecture for multiple large-scale projects, while evaluating design and operational cost-benefit tradeoffs within systems • Collaborate with engineers, product managers, and data scientists to understand data needs, representing key data insights in a meaningful way • Design, build, and launch collections of sophisticated data models and visualizations that support multiple use cases across different products or domains • Optimize pipelines, dashboards, frameworks, and systems to facilitate easier development of data artifacts
• Lead the design and implementation of shared, reusable data models, defining shared fact tables, conformed dimensions, and a semantic/metrics layer that serves as the single source of truth across analytics functions • Drive standardization of data engineering practices across ADE and functional analytics teams, including pipeline patterns, CI/CD workflows, naming conventions, and data modeling standards • Partner with Data Infrastructure to modernize orchestration, improve pipeline decomposition, and establish secure dev/test environments with production data access • Architect and implement a shift-left data governance strategy, working with upstream data producers to establish data contracts, SLOs, and code-enforced quality gates that catch issues before production • Collaborate with Data Science leads and Product Management to translate metric definitions into reliable, certified data pipelines that power executive dashboards, WBR reporting, and growth measurement • Reduce operational burden by improving pipeline granularity, observability, and failure recovery, establishing runbooks and alerting standards that make on-call sustainable • Evaluate and integrate AI-native tooling into the data development lifecycle, enabling conversational data exploration with guardrails and AI-assisted pipeline development
Data Engineer, Analytics Data Engineering
DropboxDropbox is the one place to keep life organized and keep work moving.
• Help define company data assets (data model), Spark, SparkSQL jobs to populate data models • Help define and design data integrations, data quality frameworks and design and evaluate open source/vendor tools for data lineage • Work closely with Dropbox business units and engineering teams to develop strategy for long term Data Platform architecture to be efficient, reliable and scalable • Conceptualize and own the data architecture for multiple large-scale projects, while evaluating design and operational cost-benefit tradeoffs within systems • Collaborate with engineers, product managers, and data scientists to understand data needs, representing key data insights in a meaningful way • Design, build, and launch collections of sophisticated data models and visualizations that support multiple use cases across different products or domains • Optimize pipelines, dashboards, frameworks, and systems to facilitate easier development of data artifacts

