Senior MLOps Engineer
Quick Summary
About Bonsai Robotics Bonsai Robotics develops affordable, vision-based autonomy that makes off-road equipment smarter, safer, and more productive. We are redefining outdoor autonomy with Bonsai Intelligence, a connected platform that’s inspired by biology to see, think, and act with precision like…
ML Infrastructure & Data Pipelines Build and maintain scalable data pipelines for 2D/3D detection, segmentation, instance segmentation, and depth estimation Develop data workflows across multi-camera systems and lidar stored in MCAP format Own…
4–7+ years industry experience in MLOps, ML infrastructure, data engineering or applied ML engineering Strong Python development skills. Experience building robust data pipelines for large-scale vision or lidar datasets.
Bonsai Robotics develops affordable, vision-based autonomy that makes off-road equipment smarter, safer, and more productive. We are redefining outdoor autonomy with Bonsai Intelligence, a connected platform that’s inspired by biology to see, think, and act with precision like a human. We bring together advanced perception, embodied AI, integrations with equipment manufacturers, and our compact, modular Amiga vehicles to deliver reliable automation to the world’s most demanding field operations—reducing costs and increasing operational efficiencies.
About the Role
~1 min readWe’re looking for an MLOps engineer who thrives in real-world robotics environments and can own the entire machine learning lifecycle—from data ingestion and labeling to training, evaluation, and performance monitoring. You’ll support a perception stack spanning 2D / 3D object detection, semantic and instance segmentation, depth estimation, and multi-sensor fusion across camera and lidar.
Responsibilities
~1 min read- Build and maintain scalable data pipelines for 2D/3D detection, segmentation, instance segmentation, and depth estimation
- Develop data workflows across multi-camera systems and lidar stored in MCAP format
- Own dataset versioning, metadata tracking, and reproducibility systems.
- Improve training throughput using distributed systems (Ray, PyTorch Lightning, custom launchers).
- Optimize data formats and loaders for large-scale vision and lidar datasets.
- Build automated tools for dataset selection, active learning, hard-sample mining, and outlier detection.
- Maintain dashboards and automated checks for dataset health, label quality, class balance, and environment coverage.
- Partner with field teams to prioritize data collection runs and close the loop between field issues and dataset refreshes.
- Manage internal labelers and external labeling vendors.
- Define annotation standards for camera and lidar tasks.
- Build QA workflows, reviewer interfaces, and automated label-consistency checks.
- Identify systematic labeling errors and drive corrective processes.
- Build pipelines for continuous evaluation using telemetry from vehicles in the field.
- Monitor model drift, identify edge cases, and manage regression tests across “golden” datasets.
- Track on-vehicle performance signals to flag data needs, degradations, or unexpected behavior.
- Work closely with perception engineers on calibration, sensor models, data schemas, and on-vehicle inference constraints.
- Coordinate with autonomy and perception teams to align ML outputs with navigation needs.
- Work with platform team to integrate ML pipelines into core platform infrastructure
- Partner with fleet operations to review real-world performance and prioritize new data collection.
Requirements
~1 min read- 4–7+ years industry experience in MLOps, ML infrastructure, data engineering or applied ML engineering
- Strong Python development skills.
- Experience building robust data pipelines for large-scale vision or lidar datasets.
- Experience managing and operating cloud infrastructure (e.g., AWS EC2, S3, IAM, autoscaling, spot fleets).
- Familiarity with ML lifecycle tooling (MLflow, Weights & Biases, Metaflow, Airflow, Ray, etc.).
- Experience managing labeling workflows or working directly with annotation vendors.
- Strong debugging instincts across the full stack—from data issues to training failures to evaluation anomalies.
Nice to Have
~1 min read- Experience with PyTorch, CUDA, and common CV/3D libraries.
- Experience with multi-sensor fusion, BEV architectures, or 3D perception.
- Familiarity with MCAP, ROS2, Foxglove, and real-time robotics systems.
- Experience with autonomous vehicle pipelines or industrial/agricultural robotics.
- Background in active learning or automated label-quality scoring.
- Experience building synthetic data augmentations or simulator-driven dataset expansion.
- Experience building auto-labeling pipelines
Bonsai Robotics is an Equal Employment Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, creed, religion, sex, sexual orientation, national origin or nationality, ancestry, age, disability, gender identity or expression, marital status or any other category protected by law.
Location & Eligibility
Listing Details
- First seen
- May 6, 2026
- Last seen
- May 8, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 52%
- Scored at
- May 6, 2026
Signal breakdown
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