Company Overview
GroundWork Renewables is the solar industry’s trusted full-stack performance partner. A Certified B Corporation and ISO-accredited testing provider, we deliver precise MET data and PV module insights—helping developers, EPCs, and asset owners reduce risk, improve forecasting, and maximize value throughout the project lifecycle. Our services have enabled 1,000+ solar measurement campaigns, helping project developers secure billions in financing by reducing uncertainty with trusted resource data.
Position Summary
GroundWork seeks a Data Engineer to design, build, and maintain the internal data infrastructure, pipelines, and tools that make laboratory measurement data reliably available to the lab team. This role sits at the intersection of database engineering, data pipeline development, internal tool and application development, and data quality assurance, ensuring that high-integrity datasets are ingested, managed, and surfaced through modern, scalable systems that support the lab's own analysis and operations. The ideal candidate combines strong technical skills in database engineering, data modeling, and software development with familiarity with solar energy measurement, accredited laboratory environments, and regulatory data standards.
As a Data Engineer, you will work closely with GroundWork’s engineering, laboratory, and operations teams to prioritize, design, and deliver robust data pipelines and systems that meet the needs of the laboratory's internal users. You will leverage AI-assisted development tools to accelerate the delivery of internal tools and data pipelines, while maintaining the rigor and traceability required in a laboratory and regulatory context. This role requires a technically versatile individual who can work across disciplines to drive data reliability, accessibility, and operational excellence.
Key Responsibilties
● Technical Subject Matter Expertise: Design, implement, and maintain relational and time-series databases for lab instrument data, environmental measurements, and operational records. Develop and manage ETL/ELT pipelines to ingest, transform, and store data from IoT sensors, measurement hardware, and remote sensing platforms. Build and deploy internal data access tools and applications using modern frameworks (e.g., Streamlit, FastAPI, React, or similar) to enable lab staff to query, visualize, and export lab data. Apply AI-assisted development tools (e.g., GitHub Copilot, Cursor, Claude) to accelerate software delivery while maintaining code quality and auditability appropriate for a laboratory environment.
● Data Quality Assurance & Control: Develop and enforce QA/QC protocols to validate incoming data from lab instruments and field sensors in accordance with applicable regulatory and accreditation standards (e.g., ISO 17025 or similar). Implement automated checks, flagging routines, statistical validation, and audit trails to detect anomalies, missing data, and calibration drift. Maintain defensible data records that satisfy chain-of-custody and traceability requirements. Ensure data integrity from acquisition through delivery to downstream consumers.
● Database Architecture & Optimization: Architect and optimize database schemas for performance, scalability, and ease of access. Evaluate and recommend appropriate database technologies (SQL, NoSQL, time-series) based on data volume, query patterns, and the lab's analysis and reporting requirements.
● Stakeholder Collaboration: Partner with lab engineers, metrology staff, and operations to understand data access requirements and translate them into technical solutions. Serve as the primary point of contact for the lab's internal data availability and reporting needs.
● Internal Tool & Application Development: Design and build internal data access tools, dashboards, and reporting interfaces using modern full-stack frameworks (e.g., React, FastAPI, Streamlit, Plotly Dash). Leverage AI-assisted development environments (e.g., GitHub Copilot, Cursor, Claude Code, or similar) to accelerate development cycles while ensuring maintainability, security, and compliance with lab data governance requirements. Enable non-technical lab staff to explore, filter, and export lab datasets through intuitive interfaces without requiring direct database access.
● Data Governance & Documentation: Maintain comprehensive data dictionaries, schema documentation, and data lineage records consistent with laboratory quality management systems. Contribute to laboratory SOPs and data management plans. Stay current with emerging data engineering technologies, AI tooling, and laboratory informatics practices to continuously improve the lab’s data infrastructure.
Qualifications
● Experience: Minimum of 3 years of experience in data engineering, database engineering, ETL/ELT pipeline development, or a related technical discipline, preferably in a laboratory, engineering, or renewable energy context. Experience designing and operating production data pipelines and infrastructure is required. Experience in photovoltaic (PV) testing, solar energy measurement, or a physical laboratory environment is highly preferred.
● Education: Bachelor’s degree in computer science, software engineering, information systems, data science, or a related field; advanced degree or relevant certifications preferred.
● Skills:
● Proficiency in SQL and experience with relational databases (PostgreSQL, MySQL, or similar); familiarity with time-series or NoSQL databases a plus.
● Proficiency in Python (pandas, SQLAlchemy, FastAPI, or similar) for data engineering, scripting, and backend service development.
● Hands-on experience designing and operating ETL/ELT data pipelines and workflow orchestration tools (e.g., Apache Airflow, Dagster, Prefect, or similar), including scheduling, dependency management, and pipeline monitoring.
● Experience building web applications or data dashboards using tools such as Streamlit, Dash, FastAPI, React, or modern AI-assisted development environments (e.g., GitHub Copilot, Cursor, Claude Code); ability to deliver functional, user-facing tools rapidly using AI pair-programming workflows.
● Experience implementing QA/QC workflows for instrument or sensor data, including anomaly detection, validation rules, statistical flagging, and audit logging; familiarity with laboratory quality management standards (e.g., ISO 17025, GLP, or similar regulatory frameworks) is a strong plus.
● Excellent communication skills; ability to translate complex technical data concepts for non-technical stakeholders including lab engineers and business analysts.
● Familiarity with version control (Git), CI/CD practices, and cloud data platforms (AWS, Azure, or GCP); experience with containerization (Docker) is a plus.
● Demonstrated experience using AI-assisted development tools (e.g., GitHub Copilot, Cursor, Claude Code, or similar) to write, debug, and refactor code; comfort evaluating AI-generated outputs for correctness, security, and suitability in a regulated laboratory data environment.
● Understanding of laboratory informatics concepts and data management in accredited or regulated settings; experience with LIMS (Laboratory Information Management Systems) or similar platforms is a plus.
Approach to Work
● Aligns with our values: Trustworthy, Caring, Knowledgeable, Trailblazing, Nimble and Meticulous.
● Works collaboratively and directly with remote multi-functional teams and clients.
● Presents a positive, ‘can-do’ attitude while working in a multi-project work environment.
● Self-motivated, punctual, organized, and able to perform work with limited supervision.
● Able to solve practical problems and deal with a variety of concrete variables in situations where only limited standardization exists.
● Able to communicate verbally and in writing in a clear, concise, and professional manner.
GroundWork is a Certified B Corporation and proud equal opportunity employer. We believe a diverse, equitable, and just team makes our work better, and our field a better place to be. We are committed to building a workplace where people feel welcomed, valued, and supported. We hire, promote, and develop people based on their skills, experience, and potential. We do not discriminate based on age, race, ethnicity, religion, color, sex, national origin, marital status, sexual orientation, gender identity, veteran status, disability, pregnancy status, or any other characteristic protected by law. We are a fair chance employer. We’re committed to building a team that reflects the communities we serve, and we’re actively developing the programs to get us there.
This work is ongoing. If you need a reasonable accommodation at any point in the application or interview process, just let us know.
Job Type: Full-time
Pay: $90,000.00 - $100,000.00 per year
Benefits:
- 401(k)
- Dental insurance
- Flexible spending account
- Health insurance
- Health savings account
- Life insurance
- Paid time off
- Parental leave
- Professional development assistance
- Vision insurance
Experience:
- Data Engineering: 3 years (Required)
Ability to Commute:
- Albuquerque, NM 87106 (Required)
Work Location: In person