Description
We are a software engineering team with expertise in enabling ML models in production. Our customers rely on us for frontier AI capabilities running on hardware they control, often with constrained GPU resources and limited direct access.
We treat models like any other software: continuously tested, continually delivered, packaged for reproducible deployment, and built for long-term maintainability. You will own services end-to-end, and work across the full stack, from inference engines, GPU scheduling to deployment pipelines, observability, and integration with Palantir's platform.
Join us if you want to solve problems at the intersection of infrastructure and machine learning that directly enable critical customers.
Technologies We Use
- Different backend languages, including Java, Rust, Python and Go
- Model serving engines for GPU-accelerated inference
- Docker and Kubernetes for containerization and orchestration
- Industry-standard build tooling, including Gradle and GitHub
Core Responsibilities
- Building high-performance model serving infrastructure that integrates with security models, hardware constraints, and different inference engines
- Designing intelligent request handling including authentication, rate limiting, concurrency control, and audit logging for multi-tenant model access
- Building and maintaining packaging and deployment pipelines enabling fast, secure, and reliable model rollouts across on-premises and air-gapped environments
- Developing observability for production AI systems to enable easy service monitoring and fast incident triage and resolution
- Debugging complex issues and performance problems throughout the stack, including open source inference engines, container runtimes, and GPU drivers, in environments you cannot always access directly
- Designing and running testing and benchmarking infrastructure that validates model deployments across varying GPU hardware before they reach production
- Working with product teams and customers to understand requirements, debug production issues, and deliver the models and capabilities they need
- Integrating hosted model infrastructure with Palantir's deployment, configuration, and identity systems
What We Value
- Ownership mindset and bias toward quality. Our software runs in environments where direct access for debugging is limited or unavailable.
- High empathy for customer needs and drive to deliver reliable, easy-to-use models
- Ability to work effectively across multiple languages and layers of the stack, from backend services and ML tooling to container orchestration and deployment configuration
- Strong debugging skills and motivation to trace problems from application code through containers, orchestration, and hardware
- Curiosity about emerging AI capabilities and the ability to quickly evaluate and integrate new models and technologies as the landscape evolves
- Active US Security clearance, or eligibility and willingness to obtain a US Security clearance is beneficial, but not necessary
What We Require
- 4+ years of professional software engineering experience building and operating production systems
- Engineering background in Computer Science, Mathematics, Software Engineering, Physics, or similar field
- Strong coding skills with demonstrated proficiency in programming languages, such as Java, C++, Python, Rust, or similar languages. Familiarity with the Python ML ecosystem is valuable.
- Experience with containers, Kubernetes, and deploying backend services in production environments
- Strong written and verbal communication skills and ability to iterate quickly with teammates, incorporating feedback and holding a high bar for quality
Additional Information The salary range for this position is estimated to be $145,000 - $200,000/year. Total compensation for this position may also include Restricted Stock units, sign-on bonus and other potential future incentives. Further note that total compensation for this position will be determined by each individual's relevant qualifications, work experience, skills, and other factors. This estimate excludes the value of any potential sign-on bonus; the value of any benefits offered; and the potential future value of any long-term incentives.