Samsara
Staff ML Engineer- ML Infrastructure
Rol remoto de Safety AI con fit claro de ubicación del candidato.
PublicadoAgregado recientemente
Países elegibles1 país aceptado
Señal de seniorityLead
Modelo de trabajoRemoto
Ubicaciones aceptadas para candidatos
Estados Unidos
Resumen del rol
Staff ML Engineer- ML Infrastructure
Requisitos y responsabilidades
Contenido del rol extraído en secciones para revisar más rápido.
Details
- You want to impact the industries that run our world: The software, firmware, and hardware you build will result in real-world impact—helping to keep the lights on, get food into grocery stores, and most importantly, ensure workers return home safely.
- You want to build for scale: With over 2.3 million IoT devices deployed to our global customers, you will work on a range of new and mature technologies driving scalable innovation for customers across industries driving the world's physical operations.
- You are a life-long learner: We have ambitious goals. Every Samsarian has a growth mindset as we work with a wide range of technologies, challenges, and customers that push us to learn on the go.
- You believe customers are more than a number: Samsara engineers enjoy a rare closeness to the end user and you will have the opportunity to participate in customer interviews, collaborate with customer success and product managers, and use metrics to ensure our work is translating into better customer outcomes.
- You are a team player: Working on our Samsara Engineering teams requires a mix of independent effort and collaboration. Motivated by our mission, we’re all racing toward our connected operations vision, and we intend to win—together.
In this role, you will:
- Design, build, and operate Samsara’s end-to-end ML platform (training, experimentation, batch/online inference, edge) used by multiple Safety AI product teams.
- Evolve shared training and experimentation infrastructure (orchestration, clusters, environments) and standardize tracking, evaluation, and regression testing for fast, safe iteration.
In this role, you will:
- Partner with product and applied ML teams to ship ML-powered features (CV models, EcoDriving insights, LLM-based reporting) that improve safety, reliability, and cost efficiency.
- Lead throughput and cost modeling for new ML features—from exploration to production-scale capacity planning—to inform roadmap and go/no-go decisions.
- Drive experiment design and evaluation, defining success metrics, structuring A/B or offline tests, and turning results into product and technical decisions.
In this role, you will:
- Design and operate scalable online and batch inference systems (Ray, Spark), including deployment patterns, observability, SLOs, and unified training-to-production workflows.
- Partner with firmware and edge teams to package, validate, and deploy models to Samsara devices, and build feedback loops from edge to cloud for continuous improvement.
In this role, you will:
- Own reliability, observability, and security for ML systems across cloud and edge, including on-call practices, incident response, and infrastructure hardening.
- Own or co-own end-to-end technical delivery for high-priority or high-risk initiatives, from modeling and system design through production rollout.
In this role, you will:
- Provide Staff+/Senior-Staff technical leadership on ML infrastructure architecture and strategy, influencing cross-team decisions and mentoring engineers and applied scientists.
- Drive strong developer experience through documentation, office hours, and best practices, while contributing to and representing Samsara in open source communities (Ray, Spark, RayDP).
- Champion and role model Samsara’s cultural principles: Focus on Customer Success, Build for the Long Term, Adopt a Growth Mindset, Be Inclusive, Win as a Team.
In this role, you will:
- 10+ years of overall experience in machine learning engineering or related fields, with a strong track record of building and operating large-scale ML systems.
- Strong experience with distributed computing frameworks such as Ray and/or Spark.
- Hands-on experience with cloud infrastructure (AWS), containers/Kubernetes, and production observability tooling.
- Proven experience building or supporting ML platforms (training, experimentation, or inference) used by multiple teams.
- Solid understanding of ML fundamentals including evaluation, experiment design, and model iteration in production environments.
In this role, you will:
- Experience shipping ML-powered features end-to-end, from design through production and iteration, with measurable impact on product or business metrics.
- Background in computer vision and/or LLM-based systems in production environments.
- Experience with edge or on-device ML and collaboration with firmware or embedded teams.
- Familiarity with model lifecycle systems (model registry, deployment, monitoring, rollback, drift detection).
- Experience working in environments with strong security and compliance requirements.
- Demonstrated ability to lead across teams and influence technical direction at Staff+ scope.
- A strong sense of ownership and a desire for end-to-end autonomy—from platform design to real-world impact.
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