Design and automate scalable ETL/ELT pipelines across relational, event, and unstructured sources; implement data governance, metadata and quality frameworks; architect cloud and distributed storage solutions; optimize physical data models and performance; integrate heterogeneous systems (Snowflake, Fabric, SAP, graph DBs); test, monitor, and modernize data infrastructure to support analytics.
We are looking for a talented Data Architect to join our team specializing in Systems/Information Technology for Cummins, Inc. as part of DBU Data & Analytics, Remote.
In this role, you will make an impact in the following ways:
- Design and automate scalable data ingestion and transformation pipelines across relational, event-based, and unstructured sources.
- Build and maintain frameworks to monitor, detect, and resolve data quality and integrity issues. Implement data governance practices, including metadata management, data access, and retention policies.
- Architect and guide development of reliable, efficient, and scalable ETL/ELT data pipelines with monitoring and alerting.
- Design physical data models and optimize database structures, indexing, and relationships for performance.
- Test, optimize, and troubleshoot data pipelines to ensure stability and performance.
- Develop and manage large-scale data storage solutions using distributed and cloud platforms (e.g., data lakes, Hadoop, NoSQL databases).
- Drive automation and modernization of data infrastructure and integration processes to support agile analytics initiatives.
To be successful in this role you will need the following:
- Data Extraction - Build scalable, automated ETL pipelines that deliver accurate, timely data. Choose the right tools and optimize transformations for performance and usability.
- Programming - Write clean, well-documented, and testable code using best practices. Leverage version control and automation to ensure reliability and efficiency
- Solution Validation Testing - Follow SDLC standards to thoroughly test and validate all solutions. Ensure outputs meet business requirements and perform correctly in production.
- Data Quality - Proactively monitor and resolve data issues. Establish strong governance practices to maintain data accuracy and trust across the organization.
Education/Experience:
- College, university, or equivalent degree in relevant technical discipline, or relevant equivalent experience required.
- This position may require licensing for compliance with export controls or sanctions regulations.
- Intermediate experience in a relevant discipline area is required. Knowledge of the latest technologies and trends in data engineering are highly preferred and includes:
- Familiarity analyzing complex business systems, industry requirements, and/or data regulations
- Background in processing and managing large data sets
- Design and development for a Big Data platform using open source and third-party tools
- SPARK, Scala/Java, Map-Reduce, Hive, Hbase, and Kafka or equivalent college coursework
- SQL query language
- Clustered compute cloud-based implementation experience
- Experience developing applications requiring large file movement for a Cloud-based environment and other data extraction tools and methods from a variety of sources
- Experience in building analytical solutions
Intermediate experiences in the following are preferred:
- Experience with IoT technology
- Experience in Agile software development
Additional Responsibilities:
Preferred Job Specific Skills – Data Architect
- Dimensional Modeling Mastery — Deep expertise in designing enterprise‑scale dimensional models (star, snowflake, constellation) with strong command of fact table grain definition, surrogate key strategies, slowly changing dimensions (Types 1–6), bridge tables, and late‑arriving data handling.
- Advanced SQL Engineering — Highly proficient in writing complex, high‑performance SQL, including window functions, CTE‑driven transformations, query plan analysis, cost‑based optimization, partitioning strategies, and performance tuning across large, distributed datasets.
- Snowflake Architecture & Engineering — Hands‑on experience with Snowflake internals including micro‑partitioning, clustering keys, result‑set caching layers, warehouse sizing/auto‑suspend tuning, Snowpipe/Streams/Tasks orchestration, Time Travel, Zero‑Copy Cloning, and secure data sharing patterns.
- Graph Database & Cypher Proficiency — Strong experience with Neo4j or equivalent graph platforms, including graph schema design, Cypher query optimization, graph algorithms (PageRank, community detection, pathfinding), and integration of graph workloads with analytical and relational systems.
- Microsoft Fabric Ecosystem — Practical experience with Fabric Lakehouse architecture, Delta Lake optimization, Data Engineering pipelines, Data Factory orchestration, KQL‑based Real‑Time Analytics, semantic model creation, and integration with Power BI and OneLake governance.
- SAP S/4HANA Data Structures —Familiarity of SAP S/4HANA data models (FI/CO, MM, SD, PP), CDS views, OData services, SLT/SDI/ODP‑based extraction patterns, and harmonization of SAP transactional data into cloud‑based analytical platforms.
- Cloud Data Architecture — Strong understanding of distributed data processing, ELT/ETL orchestration, event‑driven ingestion (Kafka/Event Hub), metadata‑driven frameworks, schema evolution, and data lifecycle management across cloud environments (Azure preferred).
- Data Governance & Metadata Management — Experience implementing enterprise data catalogs, lineage tracking, data quality rules, master data integration, and security models (RBAC/ABAC, row‑level and column‑level security).
- Performance Engineering & Optimization — Ability to diagnose bottlenecks across compute, storage, and network layers; optimize workloads for cost and performance; and design scalable, fault‑tolerant data architectures.
- Cross‑Platform Integration — Experience integrating heterogeneous systems (SAP, Snowflake, Fabric, graph DBs, APIs, streaming platforms) into unified analytical ecosystems with strong focus on interoperability and data consistency.
Compensation:
Please note that the salary range provided is a good faith estimate on the applicable range. The final salary offer will be determined after considering relevant factors, including a candidate’s qualifications and experience, where appropriate.
Premium Range:
Minimum: $123,030
Maximum: $150,370
About UsCummins is an equal opportunity employer. Our policy is to provide equal employment opportunities to all qualified persons without regard to race, sex, color, disability, national origin, age, religion, union affiliation, sexual orientation, veteran status, citizenship, gender identity, or other status protected by law.Similar Jobs
Big Data • Cloud • Productivity • Software • Database • Analytics • Automation
The Staff Data Architect will enhance Jellyfish's data platform through architectural design, automation, advanced observability, and efficient data governance, while collaborating across teams.
Top Skills:
AirflowBigQueryDagsterDatabricksPrefectPythonSnowflakeSQLTerraform
Artificial Intelligence • Fintech • Healthtech • Software
Lead the design and execution of a new enterprise data platform, ensuring metrics reliability and supporting AI-driven products, while mentoring engineers and collaborating across teams.
Top Skills:
AirflowCdcDbtFivetranKafkaLiquibaseOpenmetadataPythonSnowflakeSQLStreaming/Event Driven Architectures
Fintech • Insurance • Financial Services
Lead enterprise-wide data architecture strategy and delivery, including data modeling, integration, governance, security, and cloud platform adoption. Partner with executives and business units to align data roadmaps, evaluate emerging technologies (including Gen-AI), mentor architecture and engineering teams, and ensure scalable, secure, high-performance data solutions across the organization.
Top Skills:
AWSAzureAzure Data FactoryCopilotDatabricksGCPGen-AiMs-FabricPower BISnowflake
What you need to know about the Colorado Tech Scene
With a business-friendly climate and research universities like CU Boulder and Colorado State, Colorado has made a name for itself as a startup ecosystem. The state boasts a skilled workforce and high quality of life thanks to its affordable housing, vibrant cultural scene and unparalleled opportunities for outdoor recreation. Colorado is also home to the National Renewable Energy Laboratory, helping cement its status as a hub for renewable energy innovation.
Key Facts About Colorado Tech
- Number of Tech Workers: 260,000; 8.5% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Lockheed Martin, Century Link, Comcast, BAE Systems, Level 3
- Key Industries: Software, artificial intelligence, aerospace, e-commerce, fintech, healthtech
- Funding Landscape: $4.9 billion in VC funding in 2024 (Pitchbook)
- Notable Investors: Access Venture Partners, Ridgeline Ventures, Techstars, Blackhorn Ventures
- Research Centers and Universities: Colorado School of Mines, University of Colorado Boulder, University of Denver, Colorado State University, Mesa Laboratory, Space Science Institute, National Center for Atmospheric Research, National Renewable Energy Laboratory, Gottlieb Institute



