Here at Humanoid, we believe in a future where robots amplify human potential. That’s why we’ve set out on a mission to build the world’s most capable, commercially-scalable, and safe humanoid robots. We’re bringing that mission to life with HMND‑01 Alpha – our rapidly developed humanoid platform now running in real industrial pilots – and we’re growing the team to take it even further.
We are looking for Staff Software Engineer to join our Data team based in London, UK.
Responsibilities
- Build the Capability Factory – an internal platform designed for everyone from software engineers to non-technical operators, enabling the entire organization to teach HMND robots new skills at scale, from raw data all the way to deployed capabilities.
- Curate, preprocess, and manage large-scale datasets for humanoid robot training – a corpus of robot telemetry growing toward petabyte scale.
- Design and operate highly scalable data pipelines and the compute infrastructure that powers them, ensuring reliability and throughput as data volume and team demands grow.
- Ensure the quality, accuracy, and consistency of training data across multiple concurrent projects and robot platforms.
- Collaborate with machine learning teams to shape the Capability Factory, streamline MLOps, and build the evaluation workflows that close the loop between training runs and real-world robot performance.
- Build data warehouse solutions and BI dashboards that give stakeholders across the organization clear visibility into data collection, model progress, and operational health.
- Establish and uphold best practices for data management – versioning, access control, security, and compliance.
What You’ll Do
- 5+ years of software engineering experience, with a track record of owning and delivering complex systems end-to-end, not just contributing to them.
- Strong backend engineering – designing and operating production-grade APIs and services: clean data modeling, reliable error handling, performance under load.
- Data engineering at PB+ scale – building and maintaining pipelines that move, transform, and validate large volumes of data reliably; understanding of batch and streaming processing patterns, data quality, and schema evolution.
- Workflow orchestration at scale – designing and operating multi-step automated pipelines with retries, observability, and graceful failure handling.
- Distributed systems fundamentals – you understand how things break at scale: eventual consistency, idempotency, backpressure, job scheduling, and failure modes in distributed compute and storage.
- Cloud infrastructure fluency – you have shipped and operated real systems on a major cloud provider; you think about cost, reliability, and security as first-class concerns, not afterthoughts.
- Container orchestration – deploying and operating workloads on Kubernetes at a level where you can debug scheduling issues, design resource allocation, and reason about cluster health without guidance.
- Full-stack range – comfortable building both the backend and the frontend of an internal product; you can own a feature from database schema to UI without handing off.
- Production ownership mindset – you’ve been on-call, triaged incidents under pressure, and improved systems after postmortems. You take reliability personally.
Nice to have
- ML infrastructure or MLOps experience – understanding of how training jobs run, how model artifacts are managed, and what makes an evaluation pipeline trustworthy; you’ve worked alongside or directly supported ML researchers.
- Distributed compute frameworks – experience with large-scale parallel data processing, whether for data transformation, model training, or evaluation.
- Domain knowledge in robotics or embodied AI – familiarity with robot data formats, sensor telemetry, or the sim-to-real evaluation loop is a significant head start.
- BI and data warehouse experience – building data models and dashboards that translate raw operational data into decisions for non-technical stakeholders.
- Dual-cloud or multi-cloud storage – experience reasoning about cost, latency, and consistency tradeoffs across storage providers.
- Frontend product sense – beyond just shipping features, you have opinions about what makes an internal tool actually usable by non-engineers.
- Competitive equity: stock options with meaningful upside as we scale.
- 30+ days time off, including 23 days annual leave, all UK bank holidays, and additional company closure days (including Christmas–New Year shutdown).
- Private healthcare, including virtual and in-person care.
- Pension scheme with 8% total contribution (5% employee, 3% employer) on full earnings.
- Free daily breakfast, catered lunch, and snacks in-office.
- Work at the frontier – collaborate daily with world-class engineers, researchers, and product experts building the next generation of AI and humanoid robotics.
- Real ownership – direct access to founding leadership, meaningful input on product direction, and the ability to drive key initiatives from day one.
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