Software Engineer, Public Sector
Listed on 2026-02-21
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Software Development
Cloud Engineer - Software, DevOps
Location: St. Louis
Scale AI is seeking highly skilled and motivated Software Engineers to join our dynamic Federal Engineering team. As a part of this team, you will play a critical role in delivering high-impact AI‑powered mission solutions for government customers. Our scalable and high‑performance platform forms the foundation for these solutions, and your expertise will be instrumental in designing and implementing systems that can handle billions of data points with exceptional performance.
Youwill:
- Design and implement scalable backend systems for Federal customers, leveraging Scale's modern and cloud‑native AI infrastructure
- Collaborate with cross‑functional teams to define and execute the vision for backend solutions, ensuring they meet the unique needs of government agencies operating in secure environments
- Develop distributed systems, data‑intensive applications, and machine learning infrastructure to enable real impact for mission owners
- Build robust and reliable backend systems that can serve as standalone products, empowering customers to accelerate their own AI ambitions
- Participate actively in customer engagements, working closely with stakeholders to understand requirements and deliver innovative solutions
- Contribute to the platform roadmap and product strategy for Scale AI's Federal business, playing a key role in shaping the future direction of our offerings
- This role will require an active TS/SCI security clearance or the ability to obtain a security clearance
- Full Stack Development:
Proficiency in both front‑end and back‑end development, including experience with modern web frameworks, programming languages, and databases - Cloud‑Native Technologies:
Familiarity with cloud platforms (e.g., AWS, Azure, GCP) and experience in developing and deploying applications in a cloud‑native environment. Understanding of containerization (e.g., Docker) and container orchestration (e.g., Kubernetes) is a plus - Data Engineering:
Knowledge of ETL processes and experience building data pipelines to integrate and process diverse data sources. Understanding of data modeling, warehousing, and governance principles - Machine Learning Infrastructure:
Familiarity with ML frameworks (e.g., Tensor Flow, PyTorch) and experience designing and implementing ML infrastructure, including model serving, monitoring, and deployment strategies - Problem Solving:
Strong analytical and problem‑solving skills to understand complex challenges and devise effective solutions. Ability to think critically and identify root causes - Collaboration and Communication:
Excellent interpersonal and communication skills to collaborate with cross‑functional teams, stakeholders, and customers. Ability to clearly articulate technical concepts to non‑technical audiences - Adaptability and Learning Agility:
Willingness to embrace new technologies, learn new skills, and adapt to evolving project requirements. Ability to quickly grasp and apply new concepts and stay up‑to‑date with emerging trends
Compensation packages include base salary, equity, and benefits. The base salary range for this full‑time position varies by location:
- San Francisco, New York: $248,000 – $357,000 USD
- Washington DC: $223,000 – $320,000 USD
- St Louis: $186,000 – $267,000 USD
Benefits include comprehensive health, dental and vision coverage, retirement benefits, a learning and development stipend, generous PTO, and additional perks such as a commuter stipend.
Our policy requires a 90‑day waiting period before reconsidering candidates for the same role. We comply with the United States Department of Labor’s Pay Transparency provision. We are an inclusive and equal‑opportunity workplace and provide reasonable accommodations to applicants with disabilities.
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