2

Geospatial Data Engineer Remote Jobs in Wisconsin

Staff Data Architect (Remote)

Menomonee Falls, WI · On-site +1

$64 - $82.25/hr

Influence and guide source data design by partnering with product and engineering teams to ensure data quality, ownership, and governance are embedded at the point of origination, before data ...

We augment Qooxdoo to enable dynamic site generation and extend the core components to provide a richer data analytics experience. We are looking for people with both a passion for visual perfection ...

Senior Director - Client Data Solutions

Wauwatosa, WI · On-site +1

$103K - $139.90K/yr

Role: Remote - United States Work set up: Monday to Friday - FTE Skills: Are you Strong experience in Data engineering / Data platforms & integrations? Do you have the ability to Identify most ...

Senior Director - Client Data Solutions

Wauwatosa, WI · Remote

$103K - $139.90K/yr

Role: Remote - United States Work set up: Monday to Friday - FTE Skills: Are you Strong experience in Data engineering / Data platforms & integrations? Do you have the ability to Identify most ...

next page

Showing results 1-20

Geospatial Data Engineer Remote information

What are the key skills and qualifications needed to thrive as a Geospatial Data Engineer in a remote role, and why are they important?

To thrive as a Geospatial Data Engineer (Remote), you need a strong background in GIS, geospatial analysis, and computer science, often supported by a related degree and experience with spatial databases. Proficiency with tools like Python, SQL, PostGIS, ArcGIS, and cloud platforms is typically required, along with relevant certifications such as GISP. Excellent problem-solving, communication, and self-management skills are essential for collaborating across distributed teams and delivering results independently. These skills ensure effective management of complex geospatial datasets, seamless integration of spatial data solutions, and success in a remote work environment.

What are the typical challenges faced by remote Geospatial Data Engineers when collaborating with distributed teams?

Remote Geospatial Data Engineers often navigate challenges such as coordinating across different time zones, ensuring data consistency, and maintaining effective communication with team members who may have varying technical backgrounds. Utilizing collaborative tools like version control systems and cloud-based platforms helps streamline workflows, but clear documentation and regular check-ins are essential to prevent misunderstandings. Building strong relationships virtually and proactively addressing technical or logistical issues can greatly enhance productivity and teamwork in a remote setting.

What is a Geospatial Data Engineer?

A Geospatial Data Engineer is a technology professional who designs, develops, and manages systems for collecting, storing, analyzing, and visualizing geospatial (location-based) data. They work with geographic information systems (GIS), spatial databases, and cloud platforms to process large datasets from sources like satellites, drones, and sensors. In a remote setting, they collaborate with teams online to build and maintain geospatial data pipelines and support decision-making for industries such as urban planning, environmental science, and logistics.

What is the difference between Geospatial Data Engineer Remote vs GIS Analyst?

AspectGeospatial Data Engineer RemoteGIS Analyst
Required CredentialsBachelor's in GIS, Geography, Computer Science; experience with GIS software and programmingBachelor's in Geography, GIS, or related field; proficiency in GIS tools
Work EnvironmentRemote, often collaborative with teams across locationsTypically office-based or hybrid; fieldwork possible
Employer & Industry UsageTech companies, government agencies, environmental firmsUrban planning, government, environmental consulting
Common Search & ComparisonOften compared for GIS and data engineering roles in remote settings

The main difference between a Geospatial Data Engineer Remote and a GIS Analyst lies in their focus and skill set. Geospatial Data Engineers primarily develop and maintain data pipelines and infrastructure, often requiring programming skills, while GIS Analysts focus on spatial data analysis and map creation. Both roles may work remotely and share similar educational backgrounds, but their daily tasks and technical expertise differ significantly.

What are the most commonly searched types of Geospatial Data Engineer jobs in Wisconsin? The most popular types of Geospatial Data Engineer jobs in Wisconsin are:
What are popular job titles related to Geospatial Data Engineer Remote jobs in Wisconsin? For Geospatial Data Engineer Remote jobs in Wisconsin, the most frequently searched job titles are:
What job categories do people searching Geospatial Data Engineer Remote jobs in Wisconsin look for? The top searched job categories for Geospatial Data Engineer Remote jobs in Wisconsin are:
What cities in Wisconsin are hiring for Geospatial Data Engineer Remote jobs? Cities in Wisconsin with the most Geospatial Data Engineer Remote job openings:
Staff Data Architect (Remote)

Staff Data Architect (Remote)

KOHLS

Menomonee Falls, WI • On-site, Remote

$64 - $82.25/hr

Other

Posted 26 days ago


Kohl's rating

5.8

Company rating: 5.8 out of 10

Based on 1,434 frontline employees who took The Breakroom Quiz

11th of 21 rated department stores


Job description

As a Staff Data Architect, you will serve as a senior technical leader responsible for defining and evolving enterprise data architecture to ensure data is trusted, well-governed, and scalable across domains. You will influence how data is designed and produced from the point of origination through consumption, enabling consistency, reuse, and transparency across the data ecosystem.

This role is central to solidifying our data-as-a-product mindset. The Staff Data Architect will define enterprise standards, steward canonical data models, and establish data contracts that embed governance directly into design and delivery workflows. Success in this role is measured by increased data reuse, clarity of ownership, and observable end to end data lineage, leading to higher trust in enterprise data products.

What You’ll Do

  • Define and steward enterprise data architecture standards including data models, data contracts, domain ownership & quality expectations, and design patterns that ensure consistency and reuse across domains.

  • Own and maintain enterprise data models (e.g., Customer, Product, Order, Inventory), ensuring clear definitions, documented lineage, and reuse across analytical, operational, and agentic use cases.

  • Influence and guide source data design by partnering with product and engineering teams to ensure data quality, ownership, and governance are embedded at the point of origination, before data propagates throughout the enterprise.

  • Embed governance by design by integrating metadata capture, lineage, and validation into engineering workflows through automation rather than manual review processes.

  • Produce and maintain architecture artifacts including data models, lineage views, integration maps, and architectural decision records. Lead design reviews to ensure architectural integrity and visibility of decisions across teams.

  • Influence and mentor teams across domains, helping engineers and analysts apply best practices for scalable, maintainable, and reusable data design.

  • Shape the enterprise data strategy by evaluating tooling and approaches for metadata management, lineage, and automation, and guiding rationalization of legacy or duplicative data assets.

  • Partner with product managers, software engineers, data engineers, designers, data scientists, and analytics teams to deliver scalable, reusable, and well-governed data solutions that meet business goals

  • Partner with enterprise architects and platform teams to align data solutions with broader cloud, analytics, and technology strategies

  • Additional tasks may be assigned

What Skills You Have

Required

  • Bachelor’s or Master’s degree in Computer Science, Information Systems, Data Engineering, or a related field, or equivalent practical experience.

  • 7+ years of experience in data architecture, data engineering, or enterprise data management within large, complex environments.

  • Deep expertise in data modeling (conceptual, logical, and physical), including experience defining and stewarding canonical enterprise data models across domains.

  • Strong understanding of distributed data architectures and modern cloud data platforms (e.g., GCP, BigQuery, Kafka, Spark), with emphasis on architectural design and patterns rather than day-to-day pipeline ownership.

  • Experience defining and operationalizing data contracts, schema standards, and data design conventions that drive consistency, reuse, and data quality.

  • Hands-on experience with metadata, lineage, and governance tooling (e.g., DataHub, data catalogs, schema registries, or equivalent), and embedding these capabilities into engineering workflows.

  • Proficiency in SQL and Python, with sufficient technical depth to review designs, evaluate tradeoffs, and partner effectively with engineering teams.

  • Demonstrated ability to influence without authority, align cross-functional teams, and communicate complex architectural concepts clearly to both technical and non-technical audiences.

  • Proven experience mentoring engineers and architects and raising the overall quality and consistency of data design across teams.

Nice to Have

  • Experience working in domain-oriented or federated data ownership models (e.g., data mesh or similar patterns).

  • Familiarity with CI/CD-based governance, automated validation, and schema evolution strategies.

  • Experience supporting analytics, machine learning, or AI workloads that depend on well-modeled, trusted data.

  • Background in retail, e-commerce, or large-scale consumer data environments.


What Kohl's employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom