Senior Software Engineer, Coding
Role details
Job location
Tech stack
Job description
For cash compensation, we set standard ranges for all U.S.-based roles based on function, level, and geographic location, benchmarked against similar stage growth companies. In order to be compliant with local legislation, as well as to provide greater transparency to candidates, we share salary ranges on all job postings regardless of desired hiring location. Final offer amounts are determined by multiple factors, including geographic location as well as candidate experience and expertise, and may vary from the amounts listed above., As a Senior Software Engineer on our Coding Pod, you'll lead the design and development of the data infrastructure that powers frontier AI coding models. This team sits at the intersection of applied machine learning, distributed systems, and developer tooling-building the large-scale benchmark datasets, evaluation frameworks, and execution environments that determine how state-of-the-art coding models are trained and measured.
You'll own critical platform investments end-to-end, from architecting scalable data pipelines and evaluation systems to establishing technical standards for dataset quality, reliability, and developer workflows. Working closely with ML researchers, product managers, and engineers, you'll translate ambiguous research goals into production-ready systems that accelerate model development and improve evaluation quality.
This is an opportunity to shape the infrastructure behind next-generation AI coding systems while solving challenging distributed systems, data engineering, and developer platform problems at scale., * Architect and build scalable data infrastructure that powers the generation, transformation, validation, and delivery of large-scale coding datasets.
- Design end-to-end evaluation systems, including automated grading, benchmarking, human-in-the-loop review, and quality assurance workflows.
- Lead the technical design of developer-facing tooling and integrations with engineering ecosystems (GitHub, CI/CD systems, coding agents, containerized execution environments).
- Build reliable backend services and APIs that support dataset generation, evaluation pipelines, and experiment infrastructure.
- Drive architectural decisions around distributed systems, workflow orchestration, execution environments, and data quality.
- Partner closely with ML researchers to translate evolving evaluation methodologies into scalable engineering systems.
- Improve platform reliability, observability, and performance through monitoring, debugging, and operational excellence.
- Mentor engineers through technical design reviews, code reviews, and architectural guidance while helping raise the engineering bar across the team.
- Identify opportunities to standardize reusable infrastructure, tooling, and evaluation frameworks that accelerate future model development.
Requirements
- 6+ years of professional software engineering experience building backend systems, data infrastructure, or distributed platforms.
- Strong programming skills in Python, TypeScript, Java, or similar languages.
- Experience designing and operating large-scale data pipelines, distributed systems, or workflow orchestration platforms.
- Strong system design skills, with experience making architectural decisions around scalability, reliability, observability, and maintainability.
- Experience building cloud-native systems using AWS, GCP, or similar cloud platforms.
- Familiarity with containerized execution environments (Docker, Kubernetes) and distributed job processing.
- Strong understanding of relational and/or NoSQL databases, data modeling, and storage systems.
- Ability to navigate ambiguity and translate evolving research or product requirements into scalable engineering solutions.
- Excellent communication skills and a track record of partnering effectively with researchers, product managers, and cross-functional engineering teams.
- Experience mentoring engineers and leading technical projects from design through production., * Experience building ML data infrastructure, evaluation frameworks, benchmarking systems, or dataset generation pipelines.
- Experience with coding agents, AI-assisted software development tools, or developer productivity platforms.
- Familiarity with GitHub APIs, developer ecosystems, CI/CD platforms, or code execution environments.
- Experience with workflow orchestration frameworks such as Airflow, Temporal, Dagster, or similar distributed job systems.
- Experience building automated testing, grading, or code execution platforms.
- Background working on infrastructure, platform engineering, or developer tooling in high-growth environments.
- Familiarity with LLM evaluation, coding benchmarks, or agentic software engineering systems.
- Passion for advancing AI-powered software development through scalable engineering infrastructure.
Benefits & conditions
Pulled from the full job description
- Referral program
- Paid parental leave
- Food provided
- Parental leave
- Health insurance
- 401(k) matching
- Paid time off, Financial Wellness: 401(k) match, competitive compensation, financial coaching
Family Support: Paid parental leave, fertility benefits, parental coaching
Wellbeing: Medical, dental, and vision, mental health support, $500 wellness stipend
Growth: $2,000 learning stipend, ongoing development
Office: Commuting support, free lunch, and gym in our SF office
Time Off: Flexible PTO, 15 holidays + 2 flex days
Connection: Team outings & referral bonuses Compensation Range: $225K - $250K